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Critical Review
Characterizing Properties and Environmental Behaviors of Dissolved Organic Matter Using Two-Dimensional Correlation Spectroscopic Analysis Wei Chen, Chun-Ying Teng, Chen Qian, and Han-Qing Yu Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.9b01103 • Publication Date (Web): 18 Apr 2019 Downloaded from http://pubs.acs.org on April 18, 2019
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Environmental Science & Technology
Characterizing Properties and Environmental Behaviors of Dissolved Organic Matter Using Two-Dimensional Correlation Spectroscopic Analysis
Wei Chena, b, Chun-Ying Tenga, Chen Qianb, Han-Qing Yub, *
aSchool
of Metallurgy and Environment, Central South University, Changsha 410083, China
bCAS
Key Laboratory of Urban Pollutant Conversion, Department of Applied Chemistry, University of Science and Technology of China, Hefei 230026, China
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ABSTRACT: Dissolved organic matter (DOM) exists ubiquitously in environments
2
and plays critical roles in pollutant mitigation, transformation and organic
3
geochemical cycling. Understanding its properties and environmental behaviors is
4
critically important to develop water treatment processes and environmental
5
remediation strategies. Generalized two-dimensional correlation spectroscopy
6
(2DCOS), which has numerous advantages including enhancing spectral resolution
7
and discerning specific order of structural change under an external perturbation,
8
could be used as a powerful tool to interpret a wide range of spectroscopic signatures
9
relating to DOM. A suite of spectroscopic signatures, such as UV-Vis, fluorescence,
10
infrared, and Raman spectra that can be analyzed by 2DCOS, is able to provide
11
additional structural information hiding behind the conventional one-dimensional
12
spectra. In this paper, the most recent advances in 2DCOS applications for analyzing
13
DOM-related environmental processes are reviewed, and the state-of-the-art novel
14
spectroscopic techniques in 2DCOS are highlighted. Furthermore, the main
15
limitations and requirements of current approaches for exploring DOM-related
16
environmental processes and how these limitations and drawbacks can be addressed
17
are explored. Finally, suggestions and new approaches are proposed to significantly
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advance the development of 2DCOS in analyzing the properties and behaviors of
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DOM in natural and engineered environments.
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1. INTRODUCTION
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Dissolved organic matter (DOM) is the active organic species and plays the most vital
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roles in environmental and biological processes.1 DOM contains various chemical
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structures, including carboxyl, phenol, quinonyl, aldehyde, ester, ketone, hydroxyl,
25
amino, glycosyl and other functional groups. Thus, DOM takes part in numerous
26
processes such as electron transfer reactions, adsorption, chelation, and microbial
27
metabolisms.2 Interactions of DOM with exogenous nanoparticles, heavy metals, and
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organic pollutants in environments can affect the distribution, migration, toxicity,
29
bioavailability, and environmental fates of these species.3 Therefore, understanding
30
the environmental processes of DOM is critically important for the development of
31
water treatment processes and remediation strategies.4, 5 So far, a variety of techniques
32
have been developed to interpret DOM behaviors, and spectroscopic method is one of
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the most efficient tools owing to its unique advantages such as chemical identification
34
and high sensitivity. The applicability of spectroscopic method has been greatly
35
improved with the integration of two-dimensional correlation analysis.
36
First proposed by Noda in 1986, two-dimensional correlation spectroscopy
37
(2DCOS) has become a routine analytical technique in spectroscopic studies. In
38
2DCOS, subtle key information can be sorted out from systematic variations of
39
spectral signals observed with a variety probes under various forms of external
40
perturbations.6,
41
fluorescence, Fourier-transformed infrared (FTIR), Raman, nuclear magnetic
7
A wide range of spectroscopic signatures, such as UV-Vis,
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resonance and X-ray spectra, can be analyzed by 2DCOS. Such an approach can
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provide additional structural change information hiding behind the conventional
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one-dimensional spectra. 2DCOS technique has considerable advantages, including
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enhancing spectral resolution by extending spectra along the second dimension and
46
discerning relative directions and specific orders of structural variations. There are
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various types of perturbations available to induce spectral variation for 2DCOS
48
analysis, e.g., mechanical, electrical, thermal, chemical, and biological stimulations.
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The application of this versatile 2DCOS technique has been successfully expanded to
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the environmental field since 2009,8 especially in physiochemical and biological
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processes relating to DOM species. Furthermore, new improvements of 2DCOS
52
analyses have been carried out in order to specifically deal with complex
53
environmental samples.
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Since there is an increasing trend in the area of the exploration of environmental
55
processes with the aid of 2DCOS techniques, it is therefore necessary to critically
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summarize and appraise the development of 2DCOS techniques in environmental
57
applications. There are some reviews about the applications and some recent
58
developments of 2DCOS techniques for various fields.9-11 Also, the advantages of the
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2DCOS approaches used for DOM study have been summarized.12, 13 However, all of
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the existing reviews about DOM characterization or 2DCOS applications fail to
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provide a whole picture of DOM properties/environmental behaviors. As a result,
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evaluation on the applications of 2DCOS techniques in characterizing DOM
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properties and environmental behaviors from various processes is still missing. 4 ACS Paragon Plus Environment
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In this paper, we summarize the state-of-the-art novel spectroscopic techniques in
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2DCOS, and review the most recent advances of 2DCOS applications in the studies of
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environmental behaviors of DOM. We discuss the main limitations and requirements
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of current analytical approaches for the exploration of environmental/microbial
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processes and how these limitations and drawbacks can be addressed, and make
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suggestions where new approaches are needed to significantly advance the
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development of 2DCOS in analyzing DOM-related samples in environments.
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2. 2DCOS APPROACH
73 74
2.1 Generalized 2DCOS. The background and the computational schemes of
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generalized 2DCOS have been previously detailed elsewhere.9,
76
summary of the pertinent procedure is provided (Figure 1).
14
Here a brief
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As shown in Figure 1, in 2DCOS analysis, the sequentially sampled spectra of the
78
system Y(xi, pk) are obtained as a function of a spectral variable detected by an
79
electro-magnetic probe (x, representing wavelength, wavenumber, frequency, and so
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on) and an external perturbation variable (p, representing time, temperature, etc.).
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Specifically, the spectral data are evenly spaced during the interval between p1 and pm.
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A set of dynamic spectra 𝑌(xi, pk) is defined as:
83
𝑌(𝑥𝑖, 𝑝𝑘) =
for 1 ≤ 𝑘 ≤ 𝑚 {𝑌(𝑥 , 𝑝0) - 𝑌(𝑥 )otherwise 𝑖
𝑘
𝑖
(1)
84
where 𝑌(𝑥𝑖) denotes to the reference spectrum, typically the m-averaged spectrum
85
without a prior knowledge of the reference state. Thus, the portion of the dynamic 5 ACS Paragon Plus Environment
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spectra within the observation interval is essentially equivalent to the mean-centered
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spectra.
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1
𝑚
𝑌(𝑥𝑖) = 𝑚∑𝑘
𝑌(𝑥𝑖, 𝑝𝑘)
(2)
=1
89
A pair of data matrixes regarding correlation intensities, i.e., synchronous (Ф)
90
and asynchronous (Ψ) correlation spectra, is generated through the discrete
91
Hilbert-Noda transform: 1
𝑚
1
𝑚
92
Ф(𝑥1,𝑥2) = 𝑚 ― 1∑𝑘 = 1𝑌(𝑥1, 𝑝𝑘) ∙ 𝑌(𝑥2, 𝑝𝑘)
93
Ψ(𝑥1,𝑥2) = 𝑚 ― 1∑𝑘 = 1𝑌(𝑥1, 𝑝𝑘) ∙ ∑𝑘 = 1N𝑖𝑘𝑌(𝑥2, 𝑝𝑘)
94 95
𝑚
(3) (4)
where the term Nik is the Hilbert-Noda transformation matrix element, given by N𝑖𝑘 =
{
0 1 π(𝑘 ― 𝑖)
if 𝑖 = 𝑘 otherwise
(5)
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The synchronous and asynchronous 2DCOS maps are generated from the data
97
matrixes, and the spectral coordinates, intensities and signs of correlation peaks in the
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2DCOS maps can be interpreted by a set of well-established principles.14
99
Synchronous spectra, corresponding to the real part of the cross-correlation function,
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represent the directionality of spectral intensity changes of two spectral variables, x1
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and x2, along the perturbation variable pk. Synchronous 2DCOS map consists of
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auto-peaks located along the main diagonal of the map and cross-peaks symmetrically
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located at the off-diagonal positions. In the synchronous map, auto-peaks are
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non-negative, and their values are related to the susceptibility of spectral intensity
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changes. Cross-peak indicates the coordinated changes of spectral intensities observed
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at spectral coordinates x1 and x2. The sign of the cross-peak becomes positive if the
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increasing or decreasing. In reverse, if the direction is opposite, the sign of Ф(𝑥1,𝑥2)
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becomes negative. Asynchronous spectra originate from the imaginary part of the
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cross-correlation function with only cross-peaks, and represent the out-of-phase or
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sequential changes of spectral intensities induced by the perturbation. If Ψ(𝑥1,𝑥2) =
112
0, the variations of spectral intensities at x1 and x2 are completely synchronized. If the
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signs of Ф(𝑥1,𝑥2) and Ψ(𝑥1,𝑥2) are the same, the overall spectral intensity change
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at x1 occurs predominantly prior to that at x2 along the perturbation variable axis. This
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order is reversed when signs are different. In addition, if Ф(𝑥1,𝑥2) = 0, the sequential
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order of intensity variations becomes indeterminate. It should be noted that 2DCOS
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map only gives the sequential order of spectral intensity variations, but not the order
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of the distributed presence of species contributing to the spectral signals.
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To better demonstrate the basic properties of 2DCOS method, a set of model
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spectra were used for 2DCOS analysis. Figure 2a shows the simulated IR spectra
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evolving under the influence of an arbitrary external perturbation, e.g., contact time
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during a chemical reaction process. The absorption intensities at peaks 1650, 1625,
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1560, and 1420 cm-1 were sensitive to the perturbation variable (time), and their
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values changing with time are shown in Figure 2b. Specifically, the peaks at 1650 and
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1625 cm-1 were too close to be distinguished from the conventional one-dimensional
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spectra. Three stages were divided along the time variable: the intensity of peak 1420
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cm-1 decreased firstly, then the intensities of peaks 1650 and 1560 cm-1 increased
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simultaneously, followed by an intensity increase at peak 1625 cm-1 at the later stage.
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Figures 2c and d show the typical synchronous and asynchronous 2DCOS maps 7 ACS Paragon Plus Environment
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generated from the simulated IR spectra, respectively. The negative sign at the
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cross-peak (1560, 1420 cm-1) in the synchronous map (Figure 2c) suggested opposite
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intensity change of these two peaks, and peaks 1650/1625 and 1560 cm-1 changed in
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the same direction judged by the positive signs at the corresponding cross-peaks. The
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peaks at 1650 and 1625 cm-1 can be clearly divided in the asynchronous map,
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suggesting an enhanced spectral resolution by 2DCOS. Intensity variations at peaks
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1650 and 1560 cm-1 occurred simultaneously as there was no cross-peak. Judged by
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the signs of cross-peaks in the 2DCOS maps, the sequential order of intensity change
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was 1420 → (1650, 1560) → 1625 cm-1. These results are consistent with that in
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Figure 2b, demonstrating the capability of 2DCOS method for the identification of
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subtle spectral intensity variations. These features in 2DCOS analysis make it an
141
elegant tool for the interpretation of complicated environmental processes, in which
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the spectral information is substantially interwoven.
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Even if generalized 2DCOS technique can give enhanced spectral resolution and
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the sequential order of peak intensity change, some key information is untapped yet
145
on the correlation between the external perturbations and different structural
146
variations in environmental samples. Therefore, some derivative tools based on
147
2DCOS concepts have been developed to further broaden the utility of 2DCOS
148
analysis.10
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2.2 Hetero-2DCOS. In generalized 2DCOS studies, the intensity variations of
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two peaks from a single spectral probe in a specific system are examined to verify the
151
presence of simultaneous or sequential changes along an external perturbation. There 8 ACS Paragon Plus Environment
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are various kinds of probes and perturbations reflecting specific aspects of the system.
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If there is an underlying relationship between the responses or perturbation patterns, it
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can also be compared and revealed by a derived 2D correlation analysis, which is also
155
called hetero-2DCOS. Hetero-2DCOS provides complementary information about the
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correlation on the structural responses of the system to the perturbations.15, 16 There
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are three types of hetero-2DCOS methods, i.e., hetero-perturbation, hetero-sample,
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and hetero-spectral correlation analyses. The last one is the most popularly used form.
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Hetero-perturbation 2DCOS compares the spectral responses of the system under
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different external stimulations, such as time versus temperature, verifying similarity
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and difference of such external effects on the system. Hetero-sample 2DCOS explores
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the correlation between samples with different treatments using identical spectral
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probe and perturbation, and uncovers the effect of treatment that cause sample
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difference. Hetero-spectral 2DCOS analysis integrates spectral signals from two
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different types of probes in a system under the same external perturbation.17, 18 Two
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sets of dynamic spectra 𝐴(xi, pk) and 𝐵(yi, pk) are compared along the perturbation
167
variable p to generate hetero-spectral 2DCOS maps, given by 1
𝑚
1
𝑚
168
Ф(𝑥1,𝑦2) = 𝑚 ― 1∑𝑘 = 1𝐴(𝑥1, 𝑝𝑘) ∙ 𝐵(𝑦2, 𝑝𝑘)
169
Ψ(𝑥1,𝑦2) = 𝑚 ― 1∑𝑘 = 1𝐴(𝑥1, 𝑝𝑘) ∙ ∑𝑘 = 1N𝑖𝑘𝐵(𝑦2, 𝑝𝑘)
170
𝑚
(6) (7)
Correlation between two complementary spectral signals can help to better
171
understand the structural variation of a system under the perturbation.16,
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Moreover, the signals are now not limited to spectroscopy, and other types of probes
173
such as chromatography, microscopy and astronomy are also applicable. In general, 9 ACS Paragon Plus Environment
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hetero-2DCOS provides a comprehensive insight into the perturbation-response
175
correlation. Specifically, the chemical components of DOM based on their reactivity
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can be classified along the selected perturbation such as salinity using
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hetero-2DCOS.13
178
2.3 Moving-Window 2DCOS. In the case of several overlapped spectral
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responses along the perturbation variable, e.g., multiple phase transitions during a
180
broad temperature range, determination of sequential order may become ambiguous
181
by conventional 2DCOS analysis. Segmentation of dataset into several intervals could
182
simplify the analysis, but the results may be subjective and somehow arbitrary
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without an appropriate selection of the segmentation range. Moving-window (MW)
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2DCOS is therefore designed as a systematic approach for identifying the
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characteristic region of spectral variations along the perturbation variable axis.21 In
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MW2DCOS, the data matrix containing N dynamic spectrums is split into a subset
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with 2n+1 spectra along the perturbation variable, and 2n+1 is the window size. The
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subset is analyzed by the standard 2DCOS analysis. Then, a diagonal slice spectrum
189
corresponding to the auto-correlation intensity is generated from the synchronous
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2DCOS map. By incrementing the window position along the perturbation axis step
191
by step, a total number of N-2n diagonal slice spectrums can be obtained. MW2DCOS
192
map is drawn as a waterfall plot of the diagonal slice spectrum versus the perturbation
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variable, which can be used to identify the specific region of pronounced spectral
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intensity variation along the perturbation for unambiguous interpretation. MW2DCOS
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has been widely used in the identification of temperature and pressure-dependent 10 ACS Paragon Plus Environment
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Environmental Science & Technology
structural transition of polymers.
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To reveal the correlation strength of synchronous and asynchronous spectra, an
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alternative form of MW2DCOS analysis is proposed, namely perturbation-correlation
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moving-window two-dimensional (PCMW2D) analysis.22 In the case of PCMW2D,
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the spectral intensity variation within a small window at a given spectral coordinate is
201
correlated against the perturbation variable rather than the intensity variation at
202
another spectral coordinate. Then, the window position is incremented to yield
203
waterfall plots. Similar to 2DCOS, PCMW2D analysis also yields the synchronous
204
and asynchronous maps, both of which are useful for the identification of pronounced
205
spectral intensity variation ranges and their spreads. Furthermore, this approach is
206
capable of monitoring the complicated spectral variations along the perturbation
207
direction and determining the transition points and regions. Therefore, PCMW2D is
208
especially an ideal approach for investigating complicated environmental processes.
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2.4 Other Techniques for 2DCOS Analysis. With an increasing attention paid
210
on the applications of 2DCOS to various fields, some new concepts of 2DCOS have
211
been proposed recently (Figure 3). The probes, perturbations, and samples can be
212
various objects, and diverse data processing methods, including hetero correlation,
213
multiple perturbation, waterfall plots and data pretreatment, are designed. Specifically,
214
chemometric-combined 2DCOS, orthogonal sample design (OSD), projection 2D, and
215
2D co-distribution spectroscopy (2DCDS) have been developed for specific purposes,
216
highlighting the obscured subtle spectral features by attenuating the dominant signals
217
and eliminating unwanted features from congested 2DCOS matrix. Combination of 11 ACS Paragon Plus Environment
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principle component analysis (PCA) and 2DCOS can help to confirm trends in each
219
analysis of the data set and provide complementary information about sample
220
composition.23 OSD is designed to explore intermolecular interaction between two
221
solutes dissolved in the same solvent using concentration as the external
222
perturbation.24 Projection 2D correlation analysis is able to simplify highly congested
223
2D correlation spectra based on mathematical matrix projection to selectively remove
224
the unwanted portion of the spectral data.25 2DCDS focuses on the signal features
225
regarding the distributed appearance of species rather than the traditionally analyzed
226
deviation patterns from the reference spectrum by 2DCOS under perturbation.26 The
227
sequential order of presence of species can thus be determined, which is specifically
228
useful for the analysis of intermediates in chemical reactions. 2DCDS can be used
229
complementally to make up the deficiency of traditional 2DCOS in directly
230
identifying the formation of intermediate species.
231
Practically, the perturbation-induced spectral responses of different bands could
232
be varied distinctively, thus weak but important signals may be hidden behind those
233
more dominant contributions. Although traditional 2DCOS aids to enhance the
234
spectral resolution by spreading the spectra along the second dimension, it also suffers
235
from the effect of localized strong responses, and weaker correlation peaks may
236
become imperceptible if very strong neighboring correlation peaks exist in the
237
2DCOS map. Therefore, pretreatment of data matrix prior to 2DCOS analysis is
238
desirable to eliminate the effect of spectral variation magnitude and to extract pure
239
correlative information. For this purpose, various methods are developed, including 12 ACS Paragon Plus Environment
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PCA reconstruction, eigenvalue, quadrature signal correction, Pareto scaling, double
241
correlation, null-space projection, self-deconvolution, etc.27 After pretreatment, the
242
features of 2DCOS maps can be very much simplified, and peak positions can be
243
more accurately identified.
244
Up to now, generalized 2DCOS, hetero-2DCOS and MW2DCOS are the most
245
frequently used methods in DOM studies. The newly developed techniques derived
246
from 2DCOS methods have shown promising applications in specific areas of
247
materials and chemistry. By analogy, they may also be used to explore the properties
248
and environmental behaviors of DOM in environmental processes. For instance,
249
2DCDS may be able to determine the sequential appearances of spectral bands to
250
identify intermediate species in environmental processes, and the OSD method could
251
be used to examine the intermolecular interactions between DOM and exogenous
252
substances. Furthermore, some advanced pretreatment methods can eliminate the
253
unwanted artificial interferences and magnify the signals in DOM-involved
254
environmental interactions.
255 256
3. APPLICATIONS OF 2DCOS IN EXPLORING DOM PROPERTIES
257 258
The chemical composition and distribution of DOM can be significantly altered
259
during the complicated environmental processes in natural and artificial systems, such
260
as evolution, biochemical reaction, and spatial location transformation. An insightful
261
characterization of the chemical nature of DOM can help to clarify these 13 ACS Paragon Plus Environment
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environmental processes. Since DOM contains a variety of organic functional groups,
263
its spectrum is the integration of various characteristic absorption/luminescence
264
signatures of these functional groups, which would cause severe overlap. Thus, only
265
limited structural information can be obtained from the conventional one-dimension
266
spectra. As a receipt for unearthing the mystery of structural variation information
267
hiding behind the conventional spectra, 2DCOS has been widely used to understand
268
the physiochemical properties as well as dynamics of DOM at the molecular level, as
269
it changes when subjected to external perturbations. Table 1 summarizes the
270
investigations about DOM properties using 2DCOS techniques.
271
3.1 Protonation, Thermal, and Redox Properties of DOM. DOM structure is
272
very sensitive to ambient pH conditions because it contains various functional groups
273
susceptive to protons. The heterogeneous distributions of proton binding sites were
274
observed in fulvic-, humic-, tryptophan-, and tyrosine-like moieties of sub-fractions of
275
fulvic acid through synchronous fluorescence spectroscopy combined with PCA and
276
2DCOS analyses, and the binding of protons to tryptophan-like was preferential.28 As
277
revealed by the attenuated total reflection (ATR) FTIR spectra coupled with 2DCOS
278
analysis, the C=O groups in DOM had the fastest response to pH variation, while
279
polysaccharide C-O and aromatic C=C groups responded the latest.29 Moreover,
280
variation of rainwater DOM fluorescence induced by changes in rainfall intensity and
281
pH suggested that a decrease in areas affected by acid rain in South China possibly
282
resulted in the apparent compositional changes of DOM fluorescence.30
283
Temperature variation caused by climate change, seasonal variation and latitudes 14 ACS Paragon Plus Environment
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also affects the physicochemical compositions of DOM, resulting in difference in the
285
environmental behaviors of DOM-related pollutants. The temperature-dependent
286
structural variation of soil/sediment DOM was examined with the combination of
287
fluorescence excitation-emission matrix coupled with parallel factor analysis
288
(EEM-PARAFAC) and synchronous fluorescence 2DCOS analysis. The results show
289
that the thermal-induced transition priority of DOM structure was protein-like
290
component > fulvic-like component > humic-like component.31 In addition, the
291
reversible redox sites in solid-phase humic substances were explored by
292
electrochemical in situ FTIR and 2DCOS analysis, which showed the presence of
293
quinone radicals and dianion intermediates in the redox process and quinone-type
294
groups as the predominant redox active sites in DOM.32
295
3.2 Origin Variation. There are significant differences in DOM structure as a
296
result of spatial location variation due to the change of DOM origins. Application of
297
2DCOS to the 13C NMR and FTIR spectra of high molecular-weight DOM from the
298
bay salinity transect revealed three major components of the DOM, i.e.,
299
heteropolysaccharide compounds, carboxyl-rich compounds, and amide/amino sugar
300
compounds, with totally different biogeochemical reactivities.33 An increase in the
301
contents of polysaccharides to the high molecular-weight DOM components was
302
observed along the salinity transect, suggesting the transformation of DOM structure
303
from plant-derived carbohydrates to marine-produced carbohydrates.23
304
On the other hand, the fluorescent components of DOM and their spatial
305
variations along the urban river can be captured by integration of PCA and 15 ACS Paragon Plus Environment
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synchronous fluorescence 2DCOS. The results showed that the variations of DOM
307
components along the river flow could be attributed to different origins of DOM in
308
the rural, town, and urban regions.34 In addition, the depth-dependent variations of
309
sedimentary DOM composition and metal binding heterogeneity in a eutrophic lake
310
could be quantified with the help of EEM-PARAFAC and 2DCOS analyses. The
311
analytical results suggested that humic-like component was preferentially biodegraded
312
over fulvic-like component, and the composition/release of DOM in sediments was
313
highly affected by short-range ordered mineral sorption.35
314
3.3 Degradation/Composting of DOM. Tracing the compositional change of
315
DOM is essential to understand the degradation/composting process of organic wastes.
316
The evolution of DOM in composting of biogas residue was examined by FTIR
317
spectroscopy coupled with 2DCOS analysis. It was found that the functional groups
318
of C equivalent to C/C=N and amide III were preferentially degraded, while the
319
aromatic C=C groups were hardly degraded.36 The chemical changes of DOM during
320
anaerobic digestion of dewatered sewage sludge and the biodrying process could also
321
be analyzed by FTIR-2DCOS, providing new insights into the degradation
322
characteristics of individual organic matters in sludge treatment.37, 38 Moreover, the
323
evolution of DOM from composting municipal solid wastes suggested that the
324
degradation
325
substances > proteinaceous compounds > cellulose, hemicellulose and lignin.39
326
Particularly, high soil organic carbon content in the chemical and manure treatments
327
during long term fertilization could be attributed to the formation of noncrystalline
of
DOM
components
followed
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order
of
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micro-particles such as allophane and imogolite.40 Additionally, 2DCOS integrated
329
with size exclusion chromatography (SEC) provided clues about the correlation
330
between the molecular weight and polarity of DOM fractions during heterogeneous
331
composting.41
332
2DCOS was capable of tracing the formation of furfural-like intermediates and
333
humic-like products in the simulated formation process of humic-like substances
334
based on the maillard reaction.42 As confirmed by FTIR-2DCOS, destruction of the
335
aromatic structures in the DOM was related to the removal of the anti-estrogenic
336
activity by ozonation in the tertiary treatment process of domestic wastewater.43 On
337
the other hand, the spectral responses relating to chemical structure of humic
338
substances in photodegradation can be probed using 2DCOS based on the absorption
339
and synchronous fluorescence spectra.44 Moreover, the compositional change of
340
DOM in landfill leachates regarding hydrophobicity and polarity as a result of aging
341
showed that the tyrosine-like, humic-like, and fulvic-like substances were the most
342
sensitive moieties.45 EEM-PARAFAC coupled with 2DCOS can offer a better
343
understanding about the key components in DOM and their changes in a partial
344
nitrification sequencing batch biofilm reactor.46 In addition, the dynamics of DOM
345
composition from batch activated sludge bioreactors at different salinities could be
346
revealed, and opposite sequences in fluorescence changes were observed between the
347
low- and the high-saline bioreactors.47
348
The applications of 2DCOS analysis to various spectral signatures of DOM help
349
to better understand the chemical structure, thermal/pH responses, redox activity, 17 ACS Paragon Plus Environment
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350
origin, and composting of DOM, and thus provide significant implications for a
351
comprehensive knowledge about DOM properties. It is noteworthy that these
352
properties may be related to each other. For instance, the protonation/deprotonation
353
state of DOM may affect its redox activity. However, current studies focus on one
354
aspect of DOM properties independently, while the relationship among different
355
DOM properties remains unknown. In 2DCOS techniques, hetero-perturbation
356
analysis may provide some insights on this topic. On the other hand, fluorescence and
357
FTIR spectroscopy are the most commonly used probes for 2DCOS analysis in DOM
358
studies. Since 2DCOS is generally applicable to a wide range of analytical probes in
359
addition to spectroscopy, the integration of 2DCOS analysis with other modern probes,
360
such as dynamic light scattering and chromatography, would provide additional
361
chemical codes regarding DOM characteristics, which remains to be validated.
362 363
4.
364
EXOGENOUS SUBSTANCES
2DCOS ANALYSIS ON THE INTERACTION BETWEEN DOM AND
365 366
4.1 Interaction between DOM and Particles. The occurrence of exogenous particles,
367
such as nanoparticles (NPs), transparent exopolymer particles, and microplastics, has
368
significant impacts on the ecosystem’s characteristics.4,
369
surface properties, biogeochemical cycles and environmental functions of these
370
particles are greatly affected by the ubiquitously existing DOM species in aquatic and
371
terrestrial environments. Therefore, various techniques associated with 2DCOS 18 ACS Paragon Plus Environment
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Meanwhile, the stability,
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372
analysis have been developed to untangle the complex interactions between particles
373
and organic DOM species.
374
Since the adsorption of DOM to particles is a heterogeneous process, an online
375
spectral monitoring platform is usually required. Chen et al. designed an ATR-FTIR
376
probe based on a silver halide fiber which allowed increased reflection times so as to
377
enhance spectral signals to persistently monitor the adsorption process of humic acid
378
(HA) onto TiO2 NPs (Figure 4).29 The 2DCOS results showed that the C=O bonds
379
from carboxylate, amide, quinone, or ketone groups and C-O bonds from phenol,
380
aliphatic C-OH, and polysaccharide groups of HA were involved in the interaction
381
between HA and TiO2 NPs. Through SEC-2DCOS and EEM-PARAFAC, the
382
heterogeneous adsorption behaviors of humic substances on TiO2 and ZnO NPs with
383
respect to molecular sizes were also investigated. In this case, the fluorescent
384
components associated with larger molecular sizes in humic substances showed
385
preferential adsorption.49 While in the interactions between bacterial ghosts and TiO2
386
NPs, the functionalities in proteins of bacterial ghosts preferentially interacted with
387
TiO2 NPs.50 2DCOS analysis also suggested that the protein structures of DOM were
388
more favorable for its heterogeneous adsorption onto graphene oxide and reduced
389
graphene oxide.51
390
The effect of cyanobacterial DOM on the stability of ZnO NPs in eutrophic
391
shallow lakes was studied by ATR-FTIR-2DCOS. The results confirmed that both
392
electrostatic attraction and surface complexation were involved in DOM adsorption
393
on ZnO NPs, and DOM adsorption enhanced the stability of ZnO NPs.52 Additionally, 19 ACS Paragon Plus Environment
Environmental Science & Technology
394
EEM-PARAFAC coupled with FTIR-2DCOS analyses were employed to explore the
395
interaction between HA and polystyrene microplastics. The microplastics with smaller
396
sizes could interact with the aromatic moieties of HA via π-π conjugation, and be
397
entrapped in the HA polymers by the carboxyl groups and C=O bonds, constituting a
398
highly conjugated co-polymer with increased electron density.53 A flow-cell
399
ATR-FTIR setup was designed and coupled with 2DCOS analysis to investigate the
400
adhesion of Shewanella oneidensis MR-1 cells onto goethite mineral surfaces, and
401
bacterial phosphate-moieties were found to play an important role in the formation of
402
mono- and bi-dentate inner-sphere complexes, whereas carboxylic groups on cell
403
surface had a minor contribution to its adhesion.54
404
4.2 Coordination of DOM with Heavy Metals. Insight into the interaction
405
between heavy metals with DOM is beneficial for a better understanding on the
406
toxicity and migration of heavy metals, and thus providing further guidance for heavy
407
metal-containing wastewater treatment.55 In recent years, a variety of studies have
408
been conducted to investigate the heavy metal-DOM interactions using 2DCOS
409
techniques.
410
Copper is among the most typical heavy metals and the coordination of DOM
411
with Cu has been extensively studied. A comprehensive illustration of the interaction
412
process between DOM and Cu has been revealed through 2DCOS.55-57 Specifically, a
413
series of heterogeneous binding sites in HA and their subsequent subtle changes
414
during the molecular interactions were elucidated through fluorescence/FTIR
415
hetero-spectral 2DCOS.56 As shown in Figure 5, the transformation sequence of HA 20 ACS Paragon Plus Environment
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416
groups in aquatic systems during copper binding process and the structural
417
relationship between the fluorescent groups and the corresponding IR groups in HA
418
were clarified. This might open a door to visit the geochemical cycling process of
419
copper in natural environments. Furthermore, the biosorption process of copper onto
420
aerobic granular sludge-derived biochar was evaluated in the presence of effluent
421
organic matter, and a successive fluorescence quenching was observed in various
422
DOM fractions with increasing Cu(II) concentration.58
423
The binding behavior of DOM with Pb(II) in soil sorption process was
424
characterized by EEM-PARAFAC and synchronous fluorescence 2DCOS analysis,
425
and the humic-like fraction showed a superior affinity towards Pb(II) over the
426
protein-like fraction in DOM.59 Additionally, carboxylic and phenolic groups in HA
427
were the predominant binding sites to Pb, and carboxylic groups exhibited a stronger
428
binding ability to Pb compared with phenolic groups, as evidenced by fluorescence
429
and log-transformed UV-Vis absorption spectroscopy coupled with 2DCOS
430
analysis.60
431
2DCOS is also able to accurately simulate the migration and transformation of
432
Cr(VI) in soil environments in the presence of HA.61 According to the FTIR-2DCOS
433
results, HA functional groups located at aromatic domains participated in the reaction
434
with Cr(VI) in the order of chelated carboxyl > phenol > polysaccharide > methyl.62
435
The heterogeneous binding of DOM with mercury in lake sediments was investigated
436
using fluorescence quenching with 2DCOS, demonstrating the impact of different
437
sources of DOM on metal migration.63 With synchronous fluorescence 2DCOS and 21 ACS Paragon Plus Environment
Environmental Science & Technology
438
FTIR spectroscopy, comparative evaluation of the role of DOM in biosorption of
439
Ni(II) onto aerobic/anaerobic granular sludge was carried out, and the sequence of
440
structural change in DOM induced by Ni(II) was examined.64 Furthermore,
441
application of EEM-PARAFAC and FTIR-2DCOS revealed that divalent Ca2+ and
442
Mg2+ had a strong binding capability with phenolic -OH, aromatic C=C, and
443
polysaccharide C-O groups in DOM, while the monovalent electrolyte exhibited
444
negligible association with these groups. The results indicated that electrolyte cations
445
with an elevated concentration in natural ecosystems may increase roles in
446
Microcystis bloom formation.65
447
As revealed by 2DCOS, functional groups in soil DOM relating to multiple heavy
448
metal binding, such as Cu, Cd and Al, can be modified by fertilization treatments.
449
This result provided implications for the reduced bioavailability of heavy metals in
450
organic fertilized soils.40,
451
deriving from compost and rice straw were compared using EEM-PARAFAC and
452
FTIR-2DCOS analyses, and Cu exhibited a stronger binding affinity towards DOM
453
than Cd, while the phenol-OH, carboxyl and amide groups gave different responses to
454
DOM with different origins.67 Moreover, the binding results of copper and zinc
455
towards DOM, which were extracted from macrophyte- and algal-dominant sediments
456
in a eutrophic shallow lake, showed that more aromatic functional groups and binding
457
sites were responsible for higher binding ability.68 In addition, the complexation
458
characteristics of leachate-derived dissolved organic nitrogen with Mo, Co, Cr, and Ni
459
were investigated using fluorescence and FTIR hetero-spectral 2DCOS, and the
57, 66
The binding characteristics of Cd and Cu to DOM
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460
amines formed strong complexes with Mo, Co, Cr, and Ni, while the proteinaceous
461
matter interacted with the metals Cr and Ni.69
462
4.3 Complexation of DOM with Organic Pollutants. Discharge and occurrence
463
of exogenous organic pollutants, such as antibiotics and pesticides, pose potential
464
threats to the ecological system and human health. DOM may interact with these
465
organic pollutants, and as a result change their migration, toxicity, as well as
466
environmental fate. Thus, prediction of the environmental risks of these organic
467
pollutants is critically important, which drives the research in their environmental
468
behaviors moving forward.
469
An in situ ATR-FTIR-2DCOS approached was developed to study the sorption
470
process of enrofloxacin onto montmorillonite and the impact of DOM on
471
enrofloxacin-montmorillonite interaction.70 The interaction mechanism was mainly
472
cation exchange at acidic condition, charge neutralization at neutral condition, and
473
proton transfer at alkaline condition.70 While electrostatic interaction was the
474
predominant driving force for the interaction between DOM and enrofloxacin, in
475
which H-donor–acceptor interaction and π-π interaction may also be involved.70 The
476
results facilitated the understanding on the mineral–aqueous solution interfacial
477
behaviors of organic contaminants in the presence of DOM.
478
The complexation of tetracycline antibiotics with algae- and macrophyte-derived
479
DOM was probed by a multi-spectroscopic 2DCOS analysis, which suggested that
480
amide, aromatics, and aliphatics in DOM were participated in the complexation.71
481
Moreover, interaction between sodium dodecyl sulfate surfactant and DOM was 23 ACS Paragon Plus Environment
Environmental Science & Technology
482
validated by EEM-PARAFAC and 2DCOS, and the results showed that HA could not
483
interact with the surfactant but change the binding behaviors of protein-like species.72
484
Furthermore, from EEM-PARAFAC and 2DCOS analyses, soil DOM components
485
was also found to significantly affect the bioavailability, mobility and migration of
486
atrazine pesticide, which was widely used in agriculture.73 Synchronous fluorescence
487
and FTIR spectroscopy coupled with 2DCOS, hetero-2DCOS and PCMW2D analyses
488
were applied to investigate the environmental behaviors of ionic liquids impacted by
489
DOM. This work provided a comprehensive view of the structural changes of DOM
490
during binding with long-chain ionic liquids.74 The interaction between DOM and
491
4-chlorophenol was investigated using fluorescence EEM-PARAFAC coupled with
492
2DCOS, and sequential quenching of DOM fractions during the interaction process
493
was observed.75 With 2DCOS analysis, the production and structural variation of
494
DOM in an aerobic granular sludge system under the stress of 2,4-dichlorophenol was
495
evaluated, and fluorescence 2DCOS showed a potential application in the released
496
DOM assessment in the exposure of toxic compounds in wastewater treatment.76 In
497
addition, the binding process of soil DOM with roxarsone, a widely used
498
organoarsenic feed additive, was revealed by FTIR and fluorescence 2DCOS analyses.
499
It was found that roxarsone interacted with DOM through the hydroxyl, amide II,
500
carboxyl, aliphatic CH, and -NO2 groups, yielding stable DOM- roxarsone
501
complexes.77 Furthermore, through 2DCOS analysis of the ATR-FTIR spectra,
502
DOM-induced membrane fouling was examined, and the results demonstrated the
503
existence of interaction between humic substances and protein components in DOM 24 ACS Paragon Plus Environment
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on/inside the membrane during fouling.78
505
The complex interaction processes between DOM and exogenous substances,
506
including nanoparticles, heavy metals, and organic pollutants, can be clearly revealed
507
under the guidance of 2DCOS analysis (Table 2). Knowledge on the interaction
508
mechanism between DOM and exogenous substances helps to better understand the
509
toxicity, migration, transformation, and environmental fates of these substances when
510
exposed to environment. It should be noted that the interaction processes are closely
511
related to the properties of DOM, i.e., DOM with different origins, pH/thermal
512
responses, or redox reactivities may show distinctive interaction affinities. Moreover,
513
different exogenous substances may coexist and show synergistic or competing
514
effects on the interaction with DOM. Therefore, much attention should be paid on the
515
structural variation of DOM under multiple perturbations, especially in the case of
516
combined pollution. This is beneficial for the development of treatment strategies for
517
the emerging pollutants. Hetero-correlation analysis as derived from 2DCOS may be
518
promising in exploring these complicated and combined processes as it is able to
519
decipher multiple spectral datasets arising from diverse analytical probes, sample
520
systems, and perturbations.
521 522
5. CONCLUSIONS AND OUTLOOK
523 524
During the past decades, there are rapid developments and applications of various
525
types of techniques for the structural characterization of DOM, which contribute to an 25 ACS Paragon Plus Environment
Environmental Science & Technology
526
improved understanding of environmental processes relating to these species.
527
However, there remains much work left because the characterization of environmental
528
process is very challenging due to the high complexity and heterogeneity of DOM,
529
thus sometimes resulting in controversies on the environmental behaviors of DOM.
530
Compared with other pure samples with known molecular formula as analyzed by
531
2DCOS methods in the fields of materials and chemistry, DOM is a heterogeneous
532
mixture of various organic components. Moreover, the perturbations in DOM-related
533
environmental processes are much more complicated. Thus, the dynamic spectral
534
change of DOM may be resulted from more than one external perturbation. When the
535
2DCOS methods are applied to explore the DOM-related environmental processes,
536
the following aspects should be taken into account: (1) the origins of DOM and their
537
physiochemical properties, (2) multiple external perturbations such as temperature,
538
time, spatial position, and concentration, (3) hydrodynamic conditions, and (4)
539
analytical methods and procedures. Therefore, it is critically important to expand
540
2DCOS techniques and develop novel techniques that allow for an accurate
541
discrimination of DOM composition at the molecular level and monitoring of their
542
structural variations in environmental processes. With such knowledge a direct link to
543
the interaction mechanism can be achieved, which contributes to better insights to
544
understand these complex and challenging environmental processes.
545
Great efforts have been made with 2DCOS techniques involving UV-Vis,
546
fluorescence, and IR spectroscopy for their applications in characterizing DOM
547
-related environmental processes. With the help of 2DCOS analysis, further structure 26 ACS Paragon Plus Environment
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548
information and the variations regarding DOM from the complex spectra in
549
complicated environmental processes can be extracted. However, there are some
550
inherent limitations in 2DCOS and thus very careful attention should be paid when
551
using 2DCOS to interpret the environmental behaviors of DOM. It should be noted
552
that 2DCOS technique provides a connection between perturbation and spectral
553
response only, but further evidences are needed to judge the causal relationship
554
between the two variables. That is, 2DCOS can identify the co-variance of DOM
555
signals induced by perturbations, but cannot actually prove that the variance is
556
directly resulted from the process responsible for each variable independently. For
557
instance, a biological response over time can induce signal changes detected by
558
various analytical instruments, and 2DCOS can identify the co-variance of the
559
measurements, but fails to determine if they are attributed to a specific process,
560
because changes may also occur fortuitously. Moreover, very subtle changes in the
561
dynamic spectra can be magnified by 2DCOS, thus, the selection of the reference
562
spectra and the elimination of interfering signals should be cautious. Additionally, the
563
sequential order judgment may become controversial if the perturbation variable is
564
improperly selected.79, 80
565
To strengthen these approaches in the future, some requirements and challenges
566
in the application of 2DCOS techniques should be considered: (1) capability of online
567
monitoring to reveal the evolution of environmental processes (e.g., modification of
568
sampling equipment); (2) emphasis of obscured subtle spectral features and
569
attenuation of the overwhelmingly dominant signals (e.g., integration of 2DCOS with 27 ACS Paragon Plus Environment
Environmental Science & Technology
570
chemometrics); (3) elimination of unwanted spectral signatures (with the aid of
571
mathematics); (4) good repeatability/reliability of the analytical results; (5)
572
improvement of detection sensitivity; and (6) reduction in analysis time and
573
simplification of analytical procedure by designing appropriate software. Addressing
574
these issues can definitely improve the availability of 2DCOS methods for the
575
interpretation of DOM structural variations, so as to achieve more comprehensive
576
knowledge about their environmental processes.
577
In summary, 2DCOS methods have a great potential in exploring environmental
578
processes with unique advantages. Particularly, the flexibility of platforms for
579
perturbation-induced structural variation recognition makes it possible for real-time
580
measurement of the environmental processes, and the anti-interference nature allows
581
for the accurate differentiation and quantification of different DOM components.
582
Moreover, with the basis of generalized 2DCOS method, it can also be applied to
583
analyze the dynamic data of other probes (such as chromatography), not limited to
584
spectra, which may reflect the properties and environmental behaviors of DOM from
585
another point of view. Finally, integration of 2DCOS with other analytical methods,
586
such as multivariate curve resolution analysis and microspectroscopic imaging, is
587
beneficial for unearthing the mystery of complex and heterogeneous environmental
588
processes with high temporal/spatial resolution and designing favorable water
589
treatment and remediation strategies.
590 591
AUTHOR INFORMATION
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*Corresponding author: Prof. Han-Qing Yu, E–mail:
[email protected] 593 594
ACKNOWLEDGEMENTS
595
The authors thank the National Key R&D Program of China (2018YFC0406303),
596
the National Natural Science Foundation of China (21707167, 51538011, 21590812
597
and 51821006) and the Fundamental Research Funds for the Central Universities of
598
Central South University for supporting this work.
599 600
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Table 1. Summary of DOM properties reported in 2DCOS studies. Property
pH response
Method
Highlight
Fluorescence +
Tryptophan-like component bind to
PCA&2DCOS
protons preferentially
ATR-FTIR + 2DCOS
Fluorescence 2DCOS
C=O groups had the fastest response
Acid rain changed the apparent
The transition priority of DOM
response
2DCOS
structure was determined
Electrochemical FTIR
Quinone-type groups were the
+ 2DCOS
predominant redox active sites
Origin
NMR + FTIR+
along the salinity transect
Fluorescence 2DCOS
DOM components varied along the
+ PCA
river flow
EEM + Fluorescence
DOM composition in sediment was
2DCOS
highly affected by mineral sorption
2DCOS
Degradation/ Composting
polysaccharide content increased
2DCOS
EEM + FTIR +
Evolution of DOM was clarified molecular weight and polarity
SEC + 2DCOS EEM + SEC + 2DCOS
29
30
composition of DOM
EEM + Fluorescence
13C
28
to pH variation
Thermal
Redox
Ref.
31
32
23, 33
34
35
36-40
41
evolution characteristics Formation of humic substances
Fluorescence/UV-Vis/
Characterization of DOM
FTIR + 2DCOS
degradation
39 ACS Paragon Plus Environment
42
43-47
Environmental Science & Technology
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Table 2. Summary of the interaction processes between DOM and exogenous substances probed by 2DCOS. Exogenous substance
Particles
Contents
Features
TiO2/ZnO NPs,
Heterogeneous process;
graphenes, microplastics,
preferential functional groups
minerals
dependent of particle type
Heavy
Cu, Pb, Cr, Ni, Cd, Zn,
metals
Mo, Co, etc.
surfactant, ionic liquids,
pollutants
disinfection byproducts,
27, 47-52
DOM groups bind to heavy metals in order; binding
38, 53-67
affinity differs
Antibiotics, pesticides, Organic
Ref.
Electrostatic and covalent interaction; complex compounds were formed
addictive
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Figure captions
Figure 1. General scheme of 2DCOS analysis procedure.
Figure 2. (a) Simulated IR spectra of a system with contact time as the perturbation. (b) Intensity changes of four peaks (1650, 1625, 1560, and 1420 cm-1) with time. (c-d) Synchronous (c) and asynchronous (d) 2DCOS maps. Color changing from blue to red indicates correlation intensity changing from negative to positive.
Figure 3. Diverse concepts of 2DCOS methods based on correlation analysis.
Figure 4. Adsorption of HA onto TiO2 NPs.29 (a) schematic illustration of the ATR-FTIR measurement. (b-c) synchronous and asynchronous 2DCOS maps generated from the dynamic ATR-FTIR spectra during adsorption.
Figure 5. Hetero-spectral 2DCOS plots generated from the dynamic synchronous fluorescence and IR spectra of HA upon copper addition.56 (a) synchronous map; (b) asynchronous map; (c) illustration of HA-copper binding affinity. Colors in a and b from blue to red represent signs from negative to positive.
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Figure 1. General scheme of 2DCOS analysis procedure.
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Figure 2. (a) Simulated IR spectra of a system with contact time as the perturbation. (b) Intensity changes of four peaks (1650, 1625, 1560, and 1420 cm-1) with time. (c-d) Synchronous (c) and asynchronous (d) 2DCOS maps. Color changing from blue to red indicates correlation intensity changing from negative to positive.
43 ACS Paragon Plus Environment
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Figure 3. Diverse concepts of 2DCOS methods based on correlation analysis.
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Figure 4. Adsorption of HA onto TiO2 NPs.29 (a) schematic illustration of the ATR-FTIR measurement. (b-c) synchronous and asynchronous 2DCOS maps generated from the dynamic ATR-FTIR spectra during adsorption.
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Figure 5. Hetero-spectral 2DCOS plots generated from the dynamic synchronous fluorescence and IR spectra of HA upon copper addition.56 (a) synchronous map; (b) asynchronous map; (c) illustration of HA-copper binding affinity. Colors in a and b from blue to red represent signs from negative to positive.
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Table of Contents (TOC) art
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