Open Access Article
Sooyeol
Kim
a,
Lauren C.
Kennedy
a,
Marlene K.
Wolfe
ab,
Craig S.
Criddle
a,
Dorothea H.
Duong
c,
Aaron
Topol
c,
Bradley J.
White
c,
Rose S.
Kantor
d,
Kara L.
Nelson
d,
Joshua A.
Steele
e,
Kylie
Langlois
e,
John F.
Griffith
e,
Amity G.
Zimmer-Faust
e,
Sandra L.
McLellan
f,
Melissa K.
Schussman
f,
Michelle
Ammerman
g,
Krista R.
Wigginton
g,
Kevin M.
Bakker
h and
Alexandria B.
Boehm
*a
aDept of Civil and Environmental Engineering, Stanford University, Stanford, CA 94305, USA. E-mail: aboehm@stanford.edu
bRollins School of Public Health, Emory University, Atlanta, GA 30329, USA
cVerily Life Sciences, South San Francisco, CA 94080, USA
dDept of Civil and Environmental Engineering, University of California, Berkeley, CA 94720, USA
eSouthern California Coastal Water Research Project, Costa Mesa, CA 92626, USA
fSchool of Freshwater Sciences, University of Wisconsin-Milwaukee, Milwaukee, WI 53204, USA
gDepartment of Civil and Environmental Engineering, University of Michigan, Ann Arbor, MI 48109, USA
hDepartment of Epidemiology, University of Michigan, Ann Arbor, MI 48109, USA
First published on 15th February 2022
Wastewater-based epidemiology has gained attention throughout the world for detection of SARS-CoV-2 RNA in wastewater to supplement clinical testing. Raw wastewater consists of small particles, or solids, suspended in liquid. Methods have been developed to measure SARS-CoV-2 RNA in the liquid and the solid fraction of wastewater, with some studies reporting higher concentrations in the solid fraction. To investigate this relationship further, six laboratories collaborated to conduct a study across five publicly owned treatment works (POTWs) where both primary settled solids obtained from primary clarifiers and raw wastewater influent samples were collected and quantified for SARS-CoV-2 RNA. Settled solids and influent samples were processed by participating laboratories using their respective methods and retrospectively paired based on date of collection. SARS-CoV-2 RNA concentrations, on a mass equivalent basis, were higher in settled solids than in influent by approximately three orders of magnitude. Concentrations in matched settled solids and influent were positively and significantly correlated at all five POTWs. RNA concentrations in both settled solids and influent were correlated to COVID-19 incidence rates in the sewersheds and thus representative of disease occurrence; the settled solids methods appeared to produce a comparable relationship between SARS-CoV-2 RNA concentration measurements and incidence rates across all POTWs. Settled solids and influent methods showed comparable sensitivity, N gene detection frequency, and calculated empirical incidence rate lower limits. Analysis of settled solids for SARS-CoV-2 RNA has the advantage of using less sample volume to achieve similar sensitivity to influent methods.
Water impactWastewater is composed of solid and liquid fractions. We show that SARS-CoV-2 RNA is preferentially associated with the solid fraction where it is enriched by three orders of magnitude relative to the liquid fraction. The results from this study inform the design of wastewater monitoring programs aimed to better understand the incidence and epidemiology of COVID-19. |
Raw wastewater consists of liquid and solid fractions; the solid fraction consists of small particles that are suspended in wastewater as it moves through wastewater conveyance systems and into treatment plants. SARS-CoV-2 RNA has been quantified in both the liquid and solid fractions of wastewater.8,15–17 Sewage can be collected from publicly owned treatment works (POTWs) or from access points in the piped sewage network including at the building scale and assayed for virus nucleic acids.18 The solid fraction can be settled from raw sewage using Imhoff cones19 or collected from a primary clarifier, a POTW unit process that allows solids to settle as part of the treatment train. Hereafter, we refer to this solid fraction as “solids”.
Ye et al.20 previously showed that enveloped viruses partition to the solid fraction over the liquid fraction of wastewater to a greater extent than non-enveloped viruses. Motivated by this finding that solids naturally concentrate enveloped viruses, studies have compared the concentration of SARS-CoV-2 RNA in the liquid and solid components of wastewater. Li et al.16 compared the liquid and solid fraction of wastewater influent, using polyethylene glycol (PEG) precipitation to concentrate viruses from the liquid fraction and performing direct extraction from the solid fraction. They found that the solid to liquid SARS-CoV-2 RNA concentration ratios ranged from 103.6 to 104.3 mL g−1. Similarly, D'Aoust et al.15 found higher SARS-CoV-2 RNA detection frequency in the solid fraction of post-grit wastewater concentrated with PEG precipitation, compared to the liquid fraction concentrated via membrane filtration. Graham et al.8 compared the liquid fraction of influent and solids collected from primary clarifiers at two different POTWs. They used a PEG viral concentration method for liquid influent and direct extraction for dewatered primary settled solids and found solids to liquid SARS-CoV-2 RNA concentration ratios of ∼103 mL g−1. Consistent with these findings, Ni et al.17 applied amplicon sequencing to enumerate SARS-CoV-2 genomes in sewage and noted that the solid fraction contained a considerable proportion of the viral RNA.
In this study, we compare SARS-CoV-2 RNA concentrations recovered from paired raw wastewater influent (referred to as influent in this manuscript) and settled solids (referred to as solids in this manuscript) from five different POTWs in the United States. This work is a collaborative effort among different laboratories that have retrospectively paired SARS-CoV-2 RNA data from influent and solids, some of which have been published previously.7,21 These data were collected as part of ongoing wastewater monitoring programs. The goal of this work is to further document differences and relationships between SARS-CoV-2-RNA measurements from the solid and liquid fraction of wastewater. We evaluate concentration ratio on a mass equivalent basis, detection frequency, and correlation with COVID-19 incident case data quantified by clinical testing. This study analyzes the largest number of both solids and influent samples across multiple POTWs, to the best of our knowledge, and is a retrospective integration of multiple data sets that were collected from ongoing monitoring efforts occurring across diverse laboratories, which reflect current realistic best practices for wastewater monitoring. The results from this work will aid decision makers interested in utilizing SARS-CoV-2 wastewater-based epidemiology in selecting the appropriate sample matrix for their needs.
000, 130
000, 250
000, 470
000, and 1
800
000 people in their sewersheds, respectively. All influent samples were 24 hour composites. Solid samples were taken from the primary clarifier at each POTW. Further details on sampling procedures are outlined in Table S1.† Some of the POTWs add chemicals to their waste streams upstream of sample collection for odor control or improved treatment efficiency. The POTWs estimated the residence time of their primary clarifiers to be approximately between 1 to 6 hours (Table S2†). Samples were collected at different intervals from April 2020 to September 2021 at cadences from daily to every other week. Influent and solids samples were matched in that they were collected on the same day. A subset of OS solids and JI influent data were previously published (Table 1).7,21 Here, additional OS solids and JI influent data beyond what was published previously are included.
| POTW | Start date | End date | Frequency | Number of samples analyzed in this study |
|---|---|---|---|---|
| SB | 4 May 2020 | 20 Nov 2020 | 3/week–1/two weeks | 27 |
| AA | 22 July 2021 | 23 Sep 2021 | 3/week | 27 |
| OS | 8 Dec 2020 | 12 Jul 2021 | 1/week–7/week | 101 |
| JI | 4 Aug 2020 | 26 May 2021 | 2/week–1/week | 38 |
| OC | 22 Jun 2020 | 25 Nov 2020 | 2/week–1/week | 23 |
Below we provide overviews of the pre-analytical processing, nucleic-acid (NA) extraction, and RNA target quantification methods used to measure SARS-CoV-2 RNA concentrations in these samples. Pre-analytical methods include all procedures used to prepare the sample for NA extraction. Analyses were carried out in six different laboratories: two processed solids samples, three influent, and one processed both. The methods varied among laboratories, but have all been described in detail in peer-reviewed publications, so brief methods are provided below with greater details in the ESI,† with major differences summarized in Tables S3 and S4.† The environmental microbiology minimum information (EMMI) guidelines were followed for reporting of data.22
:
5 dilution. The higher adjusted value from the comparison was used. The concentration per reaction was converted to copies per volume of wastewater using dimensional analysis.
For AA, daily laboratory-confirmed COVID-19 incident cases from residents of the city of Ann Arbor were obtained from the county health department and normalized by the city population; the sewershed is approximately defined by the city limits and it was assumed that the city level incidence rate well approximated that of the sewershed. For all other POTWs, daily counts of laboratory-confirmed COVID-19 cases with georeferenced residential address within a POTW service area shapefile were provided by the state public health department. All case data are reported as a function of the date of symptom onset (AA) or episode date (earliest of specimen collection or symptom onset date) (all other POTW). A 7 day centered moving average was calculated and used in subsequent analyses. Incidence rate was calculated using the estimated population served by each POTW.
Nonparametric Kendall's tau and Kruskal–Wallis tests were used to assess association and significant difference between measurements, respectively, among influent and solid samples as data were neither normally nor log-normally distributed based on Shapiro–Wilk tests. To account for technical variability of wastewater measurements, Kendall's tau was calculated using 1000 bootstrap resampling when standard deviations for the measurement were available. JI influent PMMoV, and subset of OS influent N and PMMoV were not reported with errors; therefore, raw measurement values were used without bootstrapping. Each bootstrap replicate was sampled randomly from a uniform distribution between the upper and lower bounds on the measurement. Median tau and empirical p-values were determined using the bootstrapped values.25 For measurements reported as non-detects (NDs), a number between zero and the lower measurement limit sampled from a uniform distribution was substituted for further analysis. Here we use the term “lower measurement limit” to represent the laboratory reported lower limit of quantification or detection (see ESI†). For the influent methods, each sample had a different lower measurement limit depending on the volume processed. χ2 and Fisher's exact tests compared the frequency of non-detects.
Linear regression was used on log-transformed data to derive slopes and y-intercepts describing empirical relationships between COVID-19 laboratory-confirmed incidence rates and measured SARS-CoV-2 gene concentrations, and between matched solids and influent measurements. Half the lower measurement limit was substituted for NDs. The lowest detectable COVID-19 incidence rate was estimated using the empirical relationships between incidence rate and SARS-CoV-2 RNA concentration at each POTW and calculating the incidence rate corresponding to the lower measurement limit reported by each participating laboratory using the predict.lm function.
The lower measurement limits of RNA targets for solids were, on average, between ∼900 cp g−1 (OS) and ∼6800 cp g−1 (AA); for influent they ranged, on average, from ∼0.4 cp mL−1 (JI) to ∼27 cp mL−1 (SB) (Table S6†). These lower measurement limits are estimates as the exact lower measurement limit varied among samples processed since different volumes or masses were processed depending on the sample (see ESI†). As such, some measured concentrations could be lower than the reported average lower measurement limits.
log units), and OS and JI had lower PMMoV than other POTWs in influent (by 1–1.5
log units). The median ratio of PMMoV concentrations in matched solids to influent samples across all POTWs was 6 × 103 mL g−1 (n = 207, 9 influent samples with no PMMoV measurements were omitted; range 4 × 102 mL g−1 to 3 × 105 mL g−1). Ratios were statistically different between POTWs with JI having the highest median ratio (median = 3 × 104 mL g−1) and SB and OC the lowest (median = 1 × 103 mL g−1) (Kruskal–Wallis P < 10−15) (Table S7†).
In solids, N1, N2, and N gene targets were measured; the N target is located in approximately the same location in the SARS-CoV-2 genome as the N1 target.27 SARS-CoV-2 RNA gene concentrations in solids ranged from ND to 2.4 × 106 cp g−1 dry weight (N1 or N) and ND to 2.1 × 106 cp g−1 dry weight (N2). Across influent samples, SARS-CoV-2 RNA concentrations ranged from ND to 7.3 × 102 cp mL−1 (N1) and from ND to 1.2 × 103 cp mL−1 (N2) (Fig. S2†). Across all solids measurements, N1 and N2 were strongly and positively correlated (R2 = 0.99, slope = 1.1, p-value < 10−15) (Fig. S3†). Similarly, across all influent measurements, N1 and N2 were strongly and positively correlated (R2 = 0.94, slope = 0.6, p-value < 10−15) (Fig. S4†). Therefore, further analyses focused on the N assay for OS solids and the N1 assay for all other samples (Fig. 1). All wastewater data presented in the paper is publicly available through the Stanford Digital Repository (https://purl.stanford.edu/kd763fh7892).
![]() | ||
| Fig. 1 Time series of (top to bottom) SARS-CoV-2 targets N1 or N measured in solids (cp g−1 dry weight), concentration measured in influent (cp mL−1), and laboratory-confirmed SARS-CoV-2 incidence rate for each of the five POTWs over their respective duration of sample collection. N was measured for OS solids and N1 for all other data sets. Note that the SARS-CoV-2 concentrations are displayed in log10-scale format for ease of visualization. Each wastewater data point represents SARS-CoV-2 RNA concentration for a single sample as reported by the respective laboratory. Replication was performed differently for each lab (see ESI†). Samples above the lower measurement limit are shown as filled circles. Samples that resulted in ND, shown as empty circles, were substituted with a value half of the sample's lower measurement limit. Lines for solids and influent are locally weighted scatterplot smoothing (lowess) with value of α that minimizes the residual for each dataset (Table S8†).34 Lines for clinical are 7 day centered smoothed averages. The same time series with normalization by PMMoV can be found in the ESI† (Fig. S5). | ||
| POTW | n | 25th percentile (mL g−1) | Median (mL g−1) | 75th percentile (mL g−1) |
|---|---|---|---|---|
| SB | 27 | 860 | 1400 | 3600 |
| AA | 27 | 380 | 1100 | 2000 |
| OS | 101 | 130 | 280 | 530 |
| JI | 38 | 4700 | 10 000 |
20 000 |
| OC | 23 | 3100 | 5500 | 7500 |
![]() | ||
| Fig. 2 SARS-CoV-2 RNA concentrations in matched solid and influent samples. N1 concentration was used for this analysis, with the exception of OS solids where concentration of N was used. Each data point represents SARS-CoV-2 RNA concentration for a single sample as reported by the respective laboratory. Replication was performed differently for each lab (see ESI†). All data above its lower measurement limit are shown as filled circles. Data points with ND in influent are shown as an empty upright triangle, points with ND in solids are shown as an empty upside-down triangle, and points where both were ND are shown as empty overlapped upright and upside-down triangles. NDs have been substituted as half of the sample's lower measurement limit. Note that the data are displayed in log10-scale format for ease of visualization. | ||
Detection frequency was calculated for matched solids and influent samples, along with empirical incidence rate lower limit for all samples (Table 3). Overall detection frequency of N1 or N was 96% for solids and 90% for influent: there were eight of 216 solids samples and twenty-one of 216 influent samples that resulted in ND for N1 or N. The frequency of NDs in solids and influent were not significantly different (chi-square test or fisher exact test, p > 0.05). Detection limit in terms of incidence rate was similar between solids and influent at all POTWs: in solids, the limit ranged from 0.7 to 20 out of 100
000, and in influent, the limit ranged from 0.9 to 18 out of 100
000. Over the duration of the study, the lowest 7 day smoothed incident rates observed in each plant ranged from 0.4 to 12 cases per 100
000 at OS and SB, respectively.
000) corresponding to the average SARS-CoV-2 RNA lower measurement limit as modeled using linear regression. Errors on the detection limit represent the standard error on the prediction
| SB | AA | OS | JI | OC | ||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Solid | Influent | Solid | Influent | Solid | Influent | Solid | Influent | Solid | Influent | |
| Frequency | 27/27 | 27/27 | 23/27 | 19/27 | 97/101 | 91/101 | 38/38 | 37/38 | 23/23 | 21/23 |
Limit (#/100 000) |
20 ± 4 | 18 ± 1 | 11 ± 1 | 13 ± 1 | 0.7 ± 0.1 | 0.9 ± 0.1 | 5 ± 2 | 5 ± 1 | 3 ± 1 | 8 ± 2 |
log10 increase in SARS-CoV-2 N1 or N cp g−1, there was between 0.02 and 0.75
log10 increase in incidence rate; there was a similar positive log10 increase when data were normalized by PMMoV (Fig. S5,†Table 5). The data from all five POTWs appear to fall on a single line (Fig. 3) when plotted as COVID-19 incidence rate versus SARS-CoV-2 RNA concentration (median tau = 0.64, p < 0.001) or SARS-CoV-2 RNA concentration normalized by PMMoV (median tau = 0.58, p < 0.001); when data are pooled and analyzed together, the slope of the regression suggests that a 1
log10 increase in SARS-CoV-2 N1 or N cp g−1 corresponds to a 0.62 (± 0.02 standard error) log10 increase in incidence rate (R2 = 0.70, p-value < 10−15); for concentration normalized by PMMoV, there is a 0.64 (± 0.03 standard error) log10 increase in COVID-19 incidence (R2 = 0.61, p-value < 10−15).
| Plant | Solid | Influent | ||
|---|---|---|---|---|
| N1 or N | N1/PMMoV or N/PMMoV | N1 or N | N1/PMMoV or N/PMMoV | |
| All | 0.64 | 0.58 | 0.24 | −0.03 (p-value = 1) |
| SB | 0.07 | 0.11 | 0.33 | 0.21 |
| AA | 0.37 | 0.46 | 0.40 | 0.34 |
| OS | 0.52 | 0.61 | 0.60 | 0.47 |
| JI | 0.36 | 0.20 | 0.52 | 0.48 |
| OC | 0.56 | 0.54 | 0.51 | 0.68 |
| Plant | Linear regression | m | b | R 2 | p-Value |
|---|---|---|---|---|---|
| SB | Raw | 0.02 ± 0.06 | −3.79 ± 0.30 | −0.03 | 0.73 |
| Normalized | 0.02 ± 0.05 | −3.58 ± 0.24 | −0.03 | 0.66 | |
| AA | Raw | 0.18 ± 0.04 | −4.65 ± 0.19 | 0.39 | <10−3 |
| Normalized | 0.20 ± 0.04 | −2.97 ± 0.17 | 0.51 | <10−4 | |
| OS | Raw | 0.75 ± 0.04 | −7.36 ± 0.15 | 0.66 | <10−15 |
| Normalized | 0.68 ± 0.03 | −1.30 ± 0.13 | 0.75 | <10−15 | |
| JI | Raw | 0.37 ± 0.10 | −5.59 ± 0.54 | 0.16 | <10−3 |
| Normalized | 0.27 ± 0.11 | −2.72 ± 0.40 | 0.08 | 0.02 | |
| OC | Raw | 0.51 ± 0.09 | −6.31 ± 0.47 | 0.52 | <10−4 |
| Normalized | 0.48 ± 0.08 | −1.79 ± 0.35 | 0.54 | <10−5 |
log10 increase in N1 concentration, there is between a 0.18 and 0.62
log10 increase in incidence rate across different POTWs. There was a similar positive log10 increase when data was normalized by PMMoV (Fig. S6,†Table 6). When data from the five POTWs are pooled and analyzed together, there is a positive association between incidence rate and SARS-CoV-2 RNA concentration (tau = 0.24, p < 0.001); but not for concentration normalized by PMMoV (tau = −0.03, p = 1) (Fig. 3). Linear regressions suggest a 1
log increase in N was associated with a 0.49 ± 0.06
log increase in incidence rate (R2 = 0.22, p < 10−14); for N normalized by PMMoV a 1
log increase in N1/PMMoV corresponds to a 0.03 reduction in incidence rate (slope = −0.03 ± 0.05, R2 = −0.003, p = 0.58).
| Plant | Linear regression | m | b | R 2 | p-Value |
|---|---|---|---|---|---|
| SB | Raw | 0.18 ± 0.09 | −4.00 ± 0.14 | 0.12 | 0.04 |
| Normalized | 0.09 ± 0.07 | −3.29 ± 0.30 | 0.03 | 0.18 | |
| AA | Raw | 0.18 ± 0.05 | −4.12 ± 0.07 | 0.31 | <10−2 |
| Normalized | 0.28 ± 0.07 | −2.74 ± 0.28 | 0.36 | <10−3 | |
| OS | Raw | 0.62 ± 0.05 | −5.40 ± 0.07 | 0.57 | <10−15 |
| Normalized | 0.37 ± 0.05 | −3.39 ± 0.17 | 0.32 | <10−10 | |
| JI | Raw | 0.42 ± 0.06 | −4.12 ± 0.08 | 0.50 | <10−7 |
| Normalized | 0.29 ± 0.07 | −2.74 ± 0.24 | 0.29 | <10−3 | |
| OC | Raw | 0.48 ± 0.08 | −4.42 ± 0.14 | 0.53 | <10−5 |
| Normalized | 0.42 ± 0.05 | −1.81 ± 0.21 | 0.74 | <10−9 |
The settled solids collected in this study for analysis entered the POTWs as solids suspended in the influent, and then settled as primary sludge in the primary clarifier. The suspended solids content of influent is typically on the order of 102 mg L−1. Assuming that the concentration of SARS-CoV-2 RNA in settled solids (in units of cp g−1) is representative of its concentration in suspended solids, and that solids contain three orders of magnitude more SARS-CoV-2 RNA than influent on a per mass basis, the concentration of suspended solids in influent contributes only 10% to the total amount of SARS-CoV-2 RNA in influent. Therefore, the majority of SARS-CoV-2 RNA measured in influent is from the liquid phase (defined as wastewater with solids removed) even when suspended solids are retained in the measurement method. If small particles that remain suspended in the wastewater after passing through the primary clarifier contain more SARS-CoV-2 RNA per gram than those that settle, then 10% may be an underestimate, but there is no published data to date that indicate whether or how SARS-CoV-2 RNA preferentially associates with wastewater solid particles of different sizes. This calculation illustrates that in order to take advantage of the fact that viral RNA is enriched in the solid fraction of wastewater to improve measurement sensitivity, efforts to include more solids than those already suspended in wastewater are needed.
The ratio of concentrations in solids and influent can be conceptualized as an empirical partitioning coefficient Kd, assuming the majority of SARS-CoV-2 measured in influent is present in the liquid phase (defined as wastewater with solids removed). Kd varied among samples and POTWs. Partitioning characteristics may be influenced by properties of the solid and liquid matrix in the mixture. For example, partitioning of organic chemicals is controlled in part by the organic carbon and mineral content of the solid matrix, the ionic strength of the liquid, pH, and temperature.28 Given the complex and variable nature of wastewater, it is not surprising that Kd varies in matched samples among and between POTWs. To investigate how Kd varies as a function of the solids characteristics, we compared Kd to PMMoV in solids. Here we used PMMoV as a proxy for the fecal strength of the solids, and therefore as a measure of organic content of the solids. We found that Kd is positively and significantly associated with solids PMMoV concentration (Kendall's tau = 0.4, p < 10−14). Additional work will be needed to better understand what controls partitioning of viruses to solids in wastewater and whether a partitioning model, which requires an equilibrium assumption, is appropriate.
We also must consider the possibility that Kd is affected by the approaches used to obtain and measure SARS-CoV-2 RNA in the solid and liquid matrices. All of the solids approaches were similar in their pre-analytical and NA extraction approaches because RNA is already concentrated in a small volume of sample: dewatered solids were suspended in a solution, and NA were extracted directly from a small volume (<1 ml) of this solution using commercial NA extraction kits. In contrast, the influent approaches had diverse pre-analytical and NA extraction steps that involved collecting and concentrating SARS-CoV-2 RNA from a large (>20 ml) volume of liquid. Kd might be lower when influent SARS-CoV-2 is measured with an approach that is more efficient at recovering SARS-CoV-2 RNA from influent than others. Interestingly, the lowest Kd values were observed at OS, the only plant that used the 4S method. To determine how influent methods compare and whether the low Kd values observed at OS can be attributed to the method used to measure SARS-CoV-2 RNA in the influent, additional measurements of SARS-CoV-2 RNA in matched solids and influent using the 4S and other influent methods would need to be collected. It is also necessary to acknowledge that although we did our best to match solids and influent samples while taking advantage of ongoing wastewater-based epidemiology sampling efforts, the matching approach is imperfect. For example, solids samples are akin to a 1 to 24 hour composite samples, depending on the collection approach, based on estimations of solids residence time of primary clarifiers provided by POTW staff. On the other hand the influent samples were 24 hour composite samples. In the future, researchers could investigate partitioning of SARS-CoV-2 RNA or other viruses by collecting a large volume of influent that is then split into (1) a sample to be processed using an influent method, and (2) a sample to be settled in an Imhoff cone19 then processed using a solids method. It is important to acknowledge that samples were archived and stored in different ways for different durations; this may also have impacted the enumeration of SARS-CoV-2 RNA; however, each lab followed best practices using storage methods that they have tested previously.11,23,33
In order to compare the sensitivity of the solids and influent measurements, we determined the COVID-19 incidence rate below which we expect the measurements to yield non-detects. This was accomplished by deriving an empirical relationship between SARS-CoV-2 RNA concentrations and incidence rates at each POTW for solids and influent measurements then calculating the incidence rate corresponding with the average lower measurement limit for the method. Solids and influent methods yielded similar sensitivity across POTWs. Both were able to detect SARS-CoV-2 RNA when incidence rates were between ∼1 and ∼10/100
000. Influent and solids measurements were the most sensitive at OS where they could detect <1/100
000 incidence rate. It is not clear at the present time what sensitivity is needed for wastewater monitoring to be informative for pandemic response. Given that the size of the sewersheds range from 105 to 106 people, it appears wastewater monitoring using these methods can reliably identify when there are between 1 and 100 incident laboratory-confirmed COVID-19 cases in the sewershed, depending on the POTW. The lower measurement limits of these methods may be reduced further, should public health officials determine that a lower incidence rate threshold is needed to guide public health recommendations.
In a previous study, we suggested that methods for detecting SARS-CoV-2 RNA in wastewater at POTWs should be representative, comparable, sensitive, and scalable in order to provide actionable insight on COVID-19 incidence.21Representative means that the measurements correlate with COVID-19 incidence. In this study, measurements in solids and influent both are positively associated with COVID-19 incidence, and the positive association held when SARS-CoV-2 measurements were normalized by PMMoV. The magnitude of association varied across POTWs similar to results reported by others.7,21,25,34 The weakest association was observed at SB for both solids and influent. The reasons why associations were weakest at this POTW are unknown, but could be due to the relatively static COVID-19 incidence, which changed by less than one order of magnitude over the duration of sampling or because COVID-19 case data were unreliable early in the pandemic when many of the SB samples were collected. It is also important to note that COVID-19 case data likely under-represent the actual number of infections in the sewersheds35 and this may vary among locations and across times, which would affect the associations between incidence rate and wastewater concentrations of SARS-CoV-2 RNA. The apparent power-law relationship between SARS-CoV-2 RNA concentrations and incidence rates is consistent with under-reporting of COVID-19 cases when incidence rates are high.14 In this study, we did not see evidence that addition of chemicals in the POTW treatment train upstream of sample collection had an impact on sample analysis; all POTWs showed positive association with COVID-19 incidence regardless of chemical additions. However, we would need more replication of POTWs, with and without chemical addition, in order to make definitive claims. In addition, both grab solid samples and composite solid samples from clarifiers with diverse residence times had a positive association with COVID-19 incidence rate, suggesting that SARS-CoV-2 RNA concentrations in solids correlates well to incidence rates regardless of collection method. Future work can be conducted to investigate whether clarifier residence time or sampling method (grab vs. composite) modifies the relationship between incidence rates and RNA concentrations.
Comparable means that samples measured at different POTWs and by different labs can be combined and compared to infer relative incidence rates across communities within POTW service areas. Solids data from the five POTWs from different regions of the United States appear to collapse on a single curve when plotted as incidence rate versus SARS-CoV-2 RNA concentration suggesting that a 1
log10 increase on SARS-CoV-2 concentrations corresponded to a 0.6
log10 increase in incidence rates; this relationship is similar to those published by Wolfe et al.21,25 using different solids data sets that were obtained using different approaches and laboratories. This previous work showed how measurements of SARS-CoV-2 RNA in solids obtained using different pre-analytical methods could be scaled by PMMoV to be comparable.21 Influent data from the five POTWs do not visually appear to fall on the same curve when plotted as incidence rate versus SARS-CoV-2 RNA concentration, perhaps because the different influent methods are not themselves comparable. Different influent methods likely recover different fractions of the SARS-CoV-2 signal;34 at the same incidence rate, a higher wastewater concentration was reported for OS, the only POTW monitored with the 4S method. When influent data from different methods were scaled by PMMoV, the data again did not appear to fall on a single curve. Based on the results of the present study and previous work, solids measurements appear to be comparable. However, the influent measurements presented herein were not comparable. Additional work is needed to better understand how to scale influent measurements obtained from different POTWs or how to normalize diverse influent methods so that they can be compared and used to infer relative incidence rates across sewersheds.
Sensitive describes the lower detection limits of the methods. Numerically, the lowest measurable concentration for the solids methods are higher than the influent methods, but it is inappropriate to compare these numbers directly because they have different units and the target preferentially associates to the solid phase. For the solids methods, the smallest lower measurement limits were obtained from methods that merged the largest number of wells during digital PCR: OS merged ten wells, JI, SB, OC merged six wells, and AA used three wells. Decreasing the lower measurement limit within the solids methods is possible and can be accomplished by increasing the mass of solids suspended per mL in the DNA/RNA shield solution prior to extraction or increasing the number of wells merged. The challenge with the former is that increasing solids concentrations can increase inhibition of the RT-PCR while the challenge with the latter is increasing reagent costs. Within the influent methods, the smallest lower measurement limit was achieved using the JI membrane filtration method and the largest lower measurement limit was achieved using the SB membrane filtration method (both with digital PCR) due to different effective volume processed. Decreasing the lower measurement limits of the influent methods is possible and would require increasing the volume of influent processed in the pre-analytical methods, or increasing the number of merged wells during digital PCR. OS influent samples were the only samples processed by qPCR, and the lower measurement limit could potentially be decreased by using digital PCR. Increasing the influent volume processed may increase inhibition of the RT-PCR and can be difficult or impossible using dead-end filtration due to filter clogging. Wastewater is a complex and variable matrix with a wide range of RT and PCR inhibitory substances including organic and inorganic molecules.36,37 Future work to characterize and alleviate RT and PCR inhibition using different NA extraction kits, inhibitor removal kits, or mastermixes as well as testing methods that concentrate fewer PCR inhibitory substances, is warranted to improve sensitivity of both solids and influent methods.
Scalable means that methods are amenable to automation and high-throughput processing with the use of automated instruments and liquid handling robots that generate results quickly (i.e., on the day of receiving a sample). The solids methods implemented in this study are scalable; the OS data were generated using automated NA extraction systems, liquid handling robots, and digital PCR methods with results available the same day as sample collection. Measurement of percent solids of each sample may be hard to automate but can be skipped if the final reported RNA concentration is normalized by PMMoV concentration. The influent methods used in this study were not executed in an automated, high throughput format and may be difficult to scale. All require volumes greater than 10 mL and include time and staff-intensive filtration or flocculation steps. The limited influent methods that are scalable use small volumes (at most 10 mL),38 which limits the sensitivity of the methods.
Footnote |
| † Electronic supplementary information (ESI) available. See DOI: 10.1039/d1ew00826a |
| This journal is © The Royal Society of Chemistry 2022 |