Title: Powerpoint template for scientific posters (Swarthmore College)
1Development and Application of a
Performance-based System Approach Framework Using
Comparisons of Macroinvertebrate Field and
Laboratory Protocols Mike Miller and Alison
Colby, Wisconsin Dept. of Natural Resources,
Madison, WI Jerry Diamond, Sam Stribling, and
Colin Hill, Tetra Tech, Inc. Owing Mills, MD and
Kurt Schmude, Univ. of WI-Superior, Superior, WI
-
- For this study a total of 300 macroinvertebrate
samples were collected from 48 streams. Of
these, 36 samples have been processed and are
used in the analyses presented here. - To Evaluate Laboratory Sample Processing
Procedures, Sub-samples Were Analyzed by a Second
Lab to Measure - Sub-sample sorting bias
- Specimen enumeration precision
- Taxonomic identification precision
- To Measure the Precision Within and Between Field
Sample-Collectors - 2 people each collected 2 replicate samples
within the same reaches of multiple small and
large least-impacted reference streams. - To Measure the Precision of Single Habitat Vs
Multiple Habitat Sampling Methods - 2 people each collected 2 riffle samples and 2
multi-habitat samples from a number of small
and large least-impacted reference streams
Preliminary Results (Con.)
Preliminary Results (Con.)
- A performance-based system (PBS) approach is a
process that can be used to measure quality
control characteristics of various aspects of
field sampling and laboratory analyses. This
information can then be used to identify sources
of error in these processes, and if necessary,
take corrective actions to improve resulting data
quality. The National Water Quality Monitoring
Councils (NWQMC) Methods and Data Comparability
Board has been promoting the use of a PBS
approach to objectively set data quality
objectives (DQOs) and document the rigor of field
and laboratory methods. While the utility of PBS
has been described (Refs 2, 3), there are few
published examples of the application of PBS to
field or lab biological sampling and analytical
methods (Ref 1, 4). The Wisconsin Department of
Natural Resources in cooperation with the Methods
Board is piloting the use of a PBS-approach to
evaluate, and if necessary, refine field and lab
methods for the collection, sub-sampling, and
identification of aquatic macroinvertebrate
samples used to assess the condition of streams
in Wisconsin. The findings of this pilot project
will be used to provide a framework and example
of how a PBS-approach can be applied to
biological sampling and aquatic resource
assessment. -
Materials and Methods
Introduction
The Influence of Laboratory Sub-Sample Size
(100-, 300-, 500-organism) on Sample Variance
Taxonomic Identification Enumeration Precision
-Determined by
Percent Difference in Enumeration (PDE)
Percent Taxonomic Disagreement (PTD)
Field sampling precision, Sampler A, multihabitat
(n8 pairs of samples and replicates)
Subsample size
Coefficient of variability (CV)
Field sampling precision, Sampler B, multihabitat
(n10 pairs of samples and replicates )
Subsample size
Coefficient of variability (CV)
Target MQO PTD 15 Target MQO PDE 5
Study Area Wisconsin Driftless Area Ecoregion
Preliminary Results Laboratory Sorting Bias -
Determined by Percent Sorting Efficiency (PSE)
Comparison of Variance Within and Between Field
Sample Collectors and Single and Multi-Habitat
Samples
- Additional Analyses
- Measure the sensitivity of single and
multi-habitat sampling in detecting stream
stressors sedimentation and eutrophication - Evaluate the sensitivity of laboratory sub-sample
size in detecting stream quality 100, 300, and
500 organism sub-samples are being processed - Evaluate the level of taxonomic identification
family level versus lowest practical level
(genus-species).
Within-sampler variability (precision), Sampler
A, 300-organism subsamples (n4 sample pairs)
Coefficient of variability (CV)
- Literature cited
- Barbour, M. T., J. Gerritsen, G. E. Griffith, R.
Frydenborg, E. McCarron, J. S. White, M. L.
Bastian. 1996. A framework for biological
criteria for Florida streams using benthic
macroinvertebrates. J. N. Am. Benthol. Soc.
15179-184. - Diamond, J. M., M. T. Barbour, J. B. Stribling.
1996. Characterizing and comparing bioassessment
methods and their results a perspective. J. N.
Am. Benthol. Soc. 15(4)713-727. - ITFM. 1995. The strategy for improving
water-quality monitoring in the United States.
Final report of the Intergovernmental Task Force
on Monitoring Water Quality (ITFM). Office of
Water Dara Coordination, U.S. Geological Survey,
Reston, VA. OFR 95-742. - Stribling, J. B., S. R. Moulton II, G. T.
Lester. 2003. Determining the quality of
taxonomic data. J. N. Am. Benthol. Soc.
22(4)621-631.
Within-sampler variability (precision), Sampler
B, 300-organism subsamples (n5 sample pairs)
Coefficient of variability (CV)
Target Measurement Quality Objective (MQO) PSE
90
Target MQO To be determined
Members of the NWQMC-Methods Board