Title: Ken Hyer, U'S' Geological Survey
1Bacterial Source Tracking Methods Comparison and
Field Application
Ken Hyer, U.S. Geological Survey Richmond, VA
2VA Dept of Conservation and Recreation
VA Dept of Conservation and Recreation
WV Department of Environmental Protection
WV Department of Environmental Protection
WV Department of Agriculture
WV Department of Agriculture
Fairfax County, VA
3Objectives for Talk
- Describe a methods comparison study that
evaluated 7 source tracking methods. - Describe a field application of BST and the
associated quality control activities.
4Bacteria Source Tracking
5BST Methods Comparison Study
- Sampling in Berkeley County, West Virginia.
- Involves researchers from across the nation and 3
different USGS district offices (Melvin Mathes of
WV and Don Stoeckel of Ohio). - Five Genotypic Methods (and investigators)
- Ribotyping using two different enzyme sets
- (George Lukasik, Mansour Samadpour)
- Pulsed-field Gel Electrophoresis
- (West Virginia Department of Agriculture)
- rep-PCR using two different primer sets
- (Howard Kator, Don Stoeckel)
- Two Phenotypic Methods (and investigators)
- Antibiotic Resistance Analysis (Bruce Wiggins)
- Carbon Substrate Utilization (Chuck Hagedorn)
6BST Methods Comparison Study
- Prominent sources of fecal pollution being
considered (based on NRCS input for Berkeley
County) - Humans
- Cattle (beef and dairy)
- Chickens
- Swine
- Horses
- Dogs
- Canada Geese
- Deer
7Methods Comparison - Study Design
- Collect feces from at least 20 individuals per
source. - Isolate and confirm a library of known E. coli
from the fecal samples - Total of 70-100 confirmed E. coli per source
- Total known library size of 900 isolates
- Prepare a blind sample set comprised of 200
isolates that included three subsets - 26 Replicates from the known library
- 150 Fresh isolates from the 9 prominent sources
- 24 Fresh isolates from sources that were not in
the original known library (mice, cats, raccoons,
etc.)
8Methods Comparison - Study Design
- Each researcher identified the source of each
blind isolate. - Results were scored and the following were
considered for each method - Accuracy of isolate identification
- Precision (reproducibility of replicate isolate
analyses) - Robustness (isolates from sources not in the
library are identified as unknown)
9Methods Comparison - Results
- In a general sense, we found that
- -In this study, under these conditions
- -Most methods did not perform as well as we
expected, based on published literature. - -Detailed study manuscript is in press at
Environmental Science and Technology.
10Results - Replicates
- The first 3 methods used discriminant analysis
(DA), the other 4 used direct matching
techniques. - In scoring the replicates, the response unknown
was considered incorrect (all isolates were in
the known library). - For each method, considering an 8-way source
classification - -ARA 6 of 26 (23 correct)
- -CUP 6 of 25 (24 correct)
- -RT-HindIII 3 of 23 (13 correct)
- -RT-EcoR1 14 of 26 (54 correct)
- -PFGE 24 of 24 (100 correct)
- -BOX-PCR 17 of 26 (65 correct)
- -REP-PCR 10 of 23 (43 correct)
11Results - Accuracy
- For the accuracy subset, the response unknown
was considered neutral (neither correct nor
incorrect) thus the number of isolates
attempted is very important. - For each method, considering an 8-way source
classification - -ARA 36 of 150 (24 correct)
- -CUP 20 of 143 (14 correct)
- -RT-HindIII 19 of 147 (13 correct)
- -RT-EcoR1 7 of 8 (88 correct)
- -PFGE 15 of 40 (38 correct)
- -BOX-PCR 32 of 149 (21 correct)
- -REP-PCR 23 of 93 (25 correct)
12Results - Ringers
- In scoring the ringers, the response unknown
was considered the only correct response because
none of these isolates were in the library. - None of the DA methods attempted to identify and
reject ringers. - For each method, considering an 8-way source
classification - -ARA 0 of 24 (0 correct)
- -CUP 0 of 24 (0 correct)
- -RT-HindIII 0 of 24 (0 correct)
- -RT-EcoR1 24 of 24 (100 correct)
- -PFGE 16 of 24 (67 correct)
- -BOX-PCR 0 of 24 (0 correct)
- -REP-PCR 8 of 24 (33 correct)
13Reasons For Method Underperformance
- Inadequate library size or structure
- Temporal component in the source-library
collection - Presence of many repetitive subtypes (transient
strains) - Different statistical analyses may be needed
- Regardless of these possible reasons, the study
clearly demonstrates the need for QA/QC and
proofing of methods.
14Methods Comparison - Conclusions
- This is only one of several ongoing comparison
studies. It demonstrates that under these study
conditions, none of these methods are performing
at the levels we anticipated. - We can offer these recommendations
- -Perform considerable QA/QC in your BST work!
This may include (1) analyzing blind collections
of known isolates, (2) use of multiple BST
methods, and (3) the use of other tracers to
support the BST work. - -Perform your QA/QC in such a way that you can
detect if your method is working or failing.
15Example of an Applied Study
16Study Design
- Field Data Collection
- Water-sample collection
- Baseflow
- Stormflow
- Continuum
- Source sample collection
- Bacteria Source Tracking Analysis (Ribotyping)
17Results of MSTBy Individual Contributor
18Seasonal Patterns in MST DataComparison of Warm
and Cool Seasons
19Validation of MSTHuman Signature
20Validation of MSTPoultry Signature
21Comparison of MST ResultsComparison of Accotink
Creek and Four Mile Run
Accotink Creek, BST Results
Four Mile Run, BST Results
(N279)
(N278)
22Take Home Messages
- Perform considerable QA/QC to ensure that you
have confidence in your results. - Many different tools that can be applied to
quality assure your BST data. - Under appropriate conditions, it appears BST can
be used to successfully identify bacterial
sources.
23USGS Contact Information
Ken Hyer 1730 E. Parham Rd Richmond, VA
23228 Email kenhyer_at_usgs.gov Phone
804-261-2636 On the web http//va.water.usgs.gov/