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Characterization of Natural and Affected Environments
Widespread micropollutant monitoring in the Hudson River Estuary reveals spatiotemporal micropollutant clusters and their sources Corey Carpenter, and Damian E. Helbling Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.8b00945 • Publication Date (Web): 09 May 2018 Downloaded from http://pubs.acs.org on May 9, 2018
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Environmental Science & Technology
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Widespread micropollutant monitoring in the Hudson River Estuary
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reveals spatiotemporal micropollutant clusters and their sources
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Corey M. G. Carpenter and Damian E. Helbling*
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School of Civil and Environmental Engineering, Cornell University, Ithaca, NY, USA
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*Corresponding author:
[email protected], phone: +1 607 255 5146, fax: +1 607 255
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9004
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WORD COUNT. Title, abstract, and full manuscript (5865) + Figure 1 (300 words) + Figure 2
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(300 words) + Figure 3 (300 words) + Figure 4 (300 words) = 7065 words
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Abstract
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The objective of this study was to identify sources of micropollutants in the Hudson River
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Estuary (HRE). We collected 127 grab samples at seventeen sites along the HRE over two years
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and screened for up to 200 micropollutants. We quantified 168 of the micropollutants in at least
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one of the samples. Atrazine, gabapentin, metolachlor, and sucralose were measured in every
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sample. We used data-driven unsupervised methods to cluster the micropollutants based on their
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spatiotemporal occurrence and normalized-concentration patterns. Three major clusters of
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micropollutants were identified: ubiquitous and mixed-use (core micropollutants); sourced from
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sewage treatment plant outfalls (STP micropollutants); and derived from diffuse upstream
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sources (diffuse micropollutants). Each of these clusters was further refined into sub-clusters that
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were linked to specific sources based on relationships identified through geospatial analysis of
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watershed features. Evaluation of cumulative loadings of each sub-cluster revealed that the
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Mohawk River and Rondout Creek are major contributors of most core micropollutants and STP
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micropollutants and the upper HRE is a major contributor of diffuse micropollutants. These data
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provide the first comprehensive evaluation of micropollutants in the HRE and define distinct
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spatiotemporal micropollutant clusters that are linked to sources and conserved across surface
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water systems around the world.
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Environmental Science & Technology
Introduction
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Data from monitoring studies have routinely confirmed the occurrence of 100s of organic
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micropollutants in surface water systems around the world.1 The main targets of monitoring
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studies have been pharmaceuticals,2 personal care products,3 illicit drugs,4 pesticides,5 industrial
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chemicals,6 or other anthropogenic organic chemicals that have known or putative toxic effects
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on aquatic ecosystems or exposed human populations.7–9 The potential sources of
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micropollutants are varied, with much attention focused on sewage treatment plant (STP)
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outfalls,3 combined sewer overflows,10 industrial discharges,11 stormwater outfalls,12 and diffuse
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runoff from agricultural and urban landscapes,13 while many other potential sources are being
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explored.14
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Recently, long-term monitoring data characterizing micropollutant occurrence at the
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watershed scale has been used to identify key insights into sources of micropollutants. For
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example, mass balance and multivariate analyses revealed three types of micropollutant sources
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in a Minnesota River including diffuse runoff, STP outfalls, and mixed pathways (diffuse runoff
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and STP outfalls).15 Long-term longitudinal sampling along the Rhine River was used to identify
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several previously unknown sources of micropollutants, particularly from tributaries and
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industrial sources.16 A geospatial analysis of poly- and perfluoroalkyl substances (PFASs)
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revealed that PFASs were found at higher concentrations in more urban areas and different types
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of PFASs were associated with different point sources such as airports, textile mills, and metal
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smelting.17 Lastly, the U.S. Geological Survey (USGS) conducted a national-scale
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micropollutant monitoring survey and used a statistical approach to reveal significant
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relationships between contaminant summary statistics and wastewater discharge and urban
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development.18 These examples demonstrate powerful ways in which geospatial data can be
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combined with micropollutant occurrence data to improve our fundamental understanding of
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micropollutant sources.
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The primary goal of this research was to assess the relative contributions of various
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sources of micropollutants in the Hudson River Estuary (HRE). The HRE provides drinking
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water to more than 100,000 people as a surface water source and is an important waterway for
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recreational and commercial activities. A recent study surveyed the occurrence of 16
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pharmaceutical compounds in the HRE,19 but no previous study has combined a comprehensive
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micropollutant screening with geospatial analyses to identify the relative contributions of various
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sources of micropollutants in the HRE. We hypothesized that groups of micropollutants would
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cluster together based on their spatiotemporal occurrence or concentration patterns, and that
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those clusters would associate with specific upstream sources. To test this hypothesis, we
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collected grab samples at seventeen sites along the HRE during the 2016 and 2017 recreational
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seasons (May – October). Samples were analyzed to quantify the occurrence of up to 200
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micropollutants identified in surface waters around the world. We used ArcGIS to develop maps
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of the watershed that include geospatial references for likely micropollutant sources. We used
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data-driven unsupervised methods to explore the complexity of micropollutant occurrence,
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including hierarchical clustering to identify groups of micropollutants with similar
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spatiotemporal occurrence and normalized-concentration patterns. We were able to categorize
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the resulting micropollutant clusters based on their likely sources, link the clusters to various
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geospatial features, and assess the relative contributions of specific sources and tributaries to
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micropollutant occurrence in the HRE. We finally used a statistical approach to discover a
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contamination event and identify micropollutants that are suitable indicators of overall
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micropollutant occurrence and concentrations.
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Material and Methods
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Study area. The HRE catchment area is a large mixed-use watershed located in eastern New
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York State with an area of approximately 34,300 km2 and a population of over 2.5 million. A
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map of the study area, the locations of seventeen sampling sites, and a delineation of tributary
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watersheds is provided in Figure 1. Samples were collected from sites between the Mohawk
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River and the Tappan Zee Bridge; specific sites are described in Table S1 of the Supporting
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Information (SI).
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Sample collection. The sample locations were selected to target STP outfalls and tributaries that
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are expected to be major sources of micropollutants in the HRE. Grab samples were collected in
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collaboration with Riverkeeper,20 an organization dedicated to monitoring and protecting the
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waters of the HRE, during nine sampling events over the 2016 and 2017 recreational seasons
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(see Table S2 for a complete list of the sampling dates and times). Samples were collected in 1L
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amber, trace clean glass bottles and stored in an ice bath on the sampling vessel for up to three
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days. The samples were then shipped on ice in a cooler to our laboratory at the end of each
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sampling campaign, and stored at 4°C until sample preparation. The total sample holding time
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prior to sample preparation and analysis was always between one and four days. A full
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description of the sampling procedure is provided in the SI. The sample sites included three STP
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outfalls (Orangetown, O_STP; West Point, W_STP; and Rondout Creek, R_STP), four sites at
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the mouth of tributaries (Pocantico River, PR_M; Cedar Pond Brook, CB_M; Furnace Brook,
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FB_M; and Annesville Creek, AC_M), eight sites inside tributaries (Rondout Creek: RC_U
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(upstream), RC_D (downstream); Esopus Creek: EC_U, EC_D; Catskill Creek: CC_U, CC_D;
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Normans Kill, NK; and the Mohawk River, MR), and two control sites that were sampled in the
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mid-channel of the HRE at the northern (Upper Hudson River, UHR) and southern (Lower
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Hudson River, LHR) ends of the study boundaries. The STP outfall samples were collected from
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the upwelling or directly adjacent to STP outfall pipes and thus contain a mixture of STP effluent
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and river water. Two samples were lost during sample shipment, therefore a total of 127 samples
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were processed and analyzed. It must be noted that data derived from grab samples do not
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necessarily reflect the expected dynamics of micropollutant occurrence or concentration in
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surface water systems.21 However, a series of grab samples can be analyzed to provide robust
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estimates of the likelihood of occurrence and average concentrations of specific micropollutants
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at a particular sample site. We further note that no field blanks were collected during this study,
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though the sampling procedure was explicitly designed to limit contamination in the field. We
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converted measured micropollutant concentrations to loads using river flow data obtained from
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USGS stream gages under the assumption that the water columns were well-mixed.22 The lower
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portion of the HRE is a partially-mixed estuary with significant vertical stratification.23
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Therefore, we only estimated loads from samples collected inside of tributaries that are located
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in the upper portion of the HRE where vertical stratification is not expected. USGS streamflow
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rates are provided in Table S3.
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Sample preparation and analysis. The samples were prepared using a mixed-bed solid-phase
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extraction (SPE) method to concentrate the samples as previously described.24 We then used high
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performance liquid chromatography (HPLC) coupled to high-resolution mass spectrometry (MS)
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to quantify the occurrence of 200 diverse micropollutants which have been previously detected
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or are likely to occur in surface waters.24,25 The analytical HPLC-MS/MS method was previously
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developed and validated for a broad range of micropollutants.24,26 These methods are
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summarized in the SI and the target micropollutants, their respective use-class, structure,
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physiochemical properties, analytical data, and limits of quantification (LOQs) are provided in
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Tables S4-S5.
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Geospatial analysis. Mapping and geospatial analyses were conducted in ArcGIS v10.4. We
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used publically available data to produce maps of the HRE catchment area for geospatial
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references including land cover (Figure S1) and STP outfalls (Figure S2). The geospatial data
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sources are summarized in Table S7.
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Statistical analysis. Statistical analyses were conducted using R Statistical Software v3.3.
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Micropollutant clusters were determined using hierarchical clustering with the hclust function,
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Ward’s agglomeration method, and either binary or Euclidean distance matrixes. Micropollutant
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data were converted into binary occurrence data (91%) in STP
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outfall samples and was defined as the STP exclusive sub-cluster of micropollutants. This sub-
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cluster is also defined as containing micropollutants with the highest concentrations relative to
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the other spatiotemporal occurrence clusters and sub-clusters (p0.05, paired WRS). This suggests that the sources of sub-
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cluster A micropollutants, like the diffuse micropollutants cluster, cannot be exclusively
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attributed to STP outfalls. We conclude that the micropollutants in sub-cluster A are
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predominantly used in agriculture or on urban landscapes and are attributed to diffuse upstream
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sources.15,29
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The normalized concentration patterns of sub-cluster A micropollutants also separated the
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tributary sample sites into two main groups. The first group of tributary sample sites consists of
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UHR, EC, and CC and the second group consists of RC, MR, NK, and the five samples sites
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located in the lower HRE (LHR, PR_M, CB_M, FB_M, and AC_M). We examined the major
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differences in land cover in the watersheds of these groups of tributaries. Our geospatial analysis
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revealed that the watersheds of the former group has a significantly (p