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Detecting Specific Populations in Mixtures

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Abstract

Mixed stock analysis (MSA) estimates the relative contributions of distinct populations in a mixture of organisms. Increasingly, MSA is used to judge the presence or absence of specific populations in specific mixture samples. This is commonly done by inspecting the bootstrap confidence interval of the contribution of interest. This method has a number of statistical deficiencies, including almost zero power to detect small contributions even if the population has perfect identifiability. We introduce a more powerful method based on the likelihood ratio test and compare both methods in a simulation demonstration using a 17 population baseline of sockeye salmon, Oncorhynchus nerka, from the Kenai River, Alaska, watershed. Power to detect a nonzero contribution will vary with the population(s) identifiability relative to the rest of the baseline, the contribution size, mixture sample size, and analysis method. The demonstration shows that the likelihood ratio method is always more powerful than the bootstrap method, the two methods only being equal when both display 100% power. Power declines for both methods as contribution declines, but it declines faster and goes to zero for the bootstrap method. Power declines quickly for both methods as population identifiability declines, though the likelihood ratio test is able to capitalize on the presence of 'perfect identification' characteristics, such as private alleles. Given the baseline-specific nature of detection power, researchers are encouraged to conduct a priori power analyses similar to the current demonstration when planning their applications.

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References

  • Aitchison, J.A. 1992. On criteria for measures of compositional difference. Math. Geol. 24: 365–379.

    Article  Google Scholar 

  • Banks, M.A. & W. Eichert. 2000. WHICHRUN (Version 3.2) a computer program for population assignment of individuals based on multilocus genotype data. J. Hered. 91: 87–89.

    Article  CAS  Google Scholar 

  • Begg, G.A., K.D. Friedland & J.B. Pearce. 1999. Stock identification-its role in stock assessment and fisheries management. Fish. Res. 43: 1–3.

    Google Scholar 

  • Cornuet, J.M., S. Piry, G. Luikart, A. Estoup & M. Solignac. 1999. New methods employing multilocus genotypes to select or exclude populations as origins of individuals. Genetics 153: 1989–2000.

    CAS  Google Scholar 

  • Davison, A.C. & D.V. Hinkley. 1997. Bootstrap Methods and their Application, Cambridge University Press, Cambridge, UK. 582 pp.

    Google Scholar 

  • Debevec, E.M., R.B. Gates, M.Masuda, J.J. Pella, J.H. Reynolds & L.W. Seeb. 2000. SPAM (version 3.2): Statistics Program for Analyzing Mixtures. J. Hered. 91: 509–511.

    Article  CAS  Google Scholar 

  • Fournier, D.A., T.D. Beacham, B.E. Ridell & C.A. Busack. 1984. Estimating stock composition in mixed stock fisheries using morphometric, meristic, and electrophoretic characteristics. Can. J. Fish. Aquat. Sci. 41: 400–408.

    Google Scholar 

  • Hoenig, J.M. & D.M. Heisey. 2001. The abuse of power: The pervasive fallacy of power calculations of data analysis. Amer. Stat. 55: 19–25.

    Google Scholar 

  • Ihssen, P.E., H.E. Booke, J.M. Casselman, J.M. McGlade, N.R. Payne & F.M. Utter. 1981. Stock identification: Materials and methods. Can. J. Fish. Aquat. Sci. 38: 1838–1855.

    Google Scholar 

  • Lunneborg, C.E. 2000. Data Analysis by Resampling: Concepts and Applications, Duxbury Press, Pacific Grove, CA, U.S.A. 568 pp.

    Google Scholar 

  • Marshall, S., D. Bernard, R. Conrad, B. Cross, D. McBride, A. McGregor, S. McPherson, G. Oliver, S. Sharr & B. Van Allen. 1987. Application of scale patterns analysis to the management of Alaska's sockeye salmon (Onchorhynchus nerka) fisheries. pp. 207–326. In: H.D. Smith, L. Margolis & C.C. Wood (ed.) Sockeye Salmon (Oncorhynchus nerka) Population Biology and Future Management, Canadian Special Pub. on Fish. and Aquat. Sci. 96.

  • Millar, R.B. 1987. Maximum likelihood estimation of mixed stock fishery composition. Can. J. Fish. Aquat. Sci. 44: 583–590.

    Google Scholar 

  • Milner, G.B., D.J. Teel, F.M. Utter & C.L. Burley. 1981. Columbia River stock identification study: Validation of genetic method. Final report of research (FY80) financed by Bonneville Power Administration Contract DE-A179-80BP18488, National Marine Fisheries Service, Northwest and Alaska Fisheries Center, Seattle, WA. 35 pp.

    Google Scholar 

  • Moles, A. & K. Jensen. 2000. Prevalence of the sockeye salmon brain parasite Myxobolus arcticus in selected Alaska streams. Alaska Fish. Res. Bull. 6: 85–93.

    Google Scholar 

  • Pearce, J.M., B.J. Pierson, S.L. Talbot, D.V. Derksen, D. Kraege & K.T. Scribner. 2000. A genetic evaluation of morphology used to identify harvested Canada geese. J. Wild. Manag. 64: 863–874.

    Google Scholar 

  • Pella, J.J. & M. Masuda. 2001. Bayesian methods for stockmixture analysis from genetic characters. Fish. Bull. 99: 151–167.

    Google Scholar 

  • Pella, J.J. & G.B. Milner. 1987. Use of genetic marks in stock composition analysis. pp. 247–276. In: N. Ryman & F. Utter (ed.) Population Genetics and Fishery Management, Washington Sea Grant Program, Seattle, WA.

    Google Scholar 

  • Redner, R.A. & H.F. Walker. 1984. Mixture densities, maximum likelihood and the E Malgorithm. Soc. Indust. Appl. Math. Rev. 26: 195–239.

    Google Scholar 

  • Reynolds, J.H. 2001. SPAM version 3.5: User's guide addendum. Addendum to special publication No. 15, Alaska Dept. of Fish and Game, Commercial Fisheries Division, Gene Conservation Lab, 333 Raspberry Rd., Anchorage, AK, 99518-1599 (available: www.cf.adfg.state.ak.us/geninfo/research/genetics/ Software/SpamPage.htm).

    Google Scholar 

  • Reynolds, J.H. & W.D. Templin. 2003. Testing component contributions in finite discrete mixtures: detecting specific populations in mixed stock fisheries. pp. 2873–2878. In: Proceedings of the Joint Statistical Meetings, New York, NewYork, Aug. 11-15, 2002. Am.Stat. Assoc., Alexandria,VA.

    Google Scholar 

  • Ruzzante, D.E., C.T. Taggart, S. Lang & D. Cook. 2000. Mixed-stock analysis of Atlantic cod near the Gulf of St. Lawrence based on microsatellite DNA. Ecol. Appl. 10: 1090–1109.

    Google Scholar 

  • Seeb, L.W. & P.A. Crane. 1999. Allozymes and mitochondrial NDA discriminate Asian and North American populations of chum salmon in mixed-stock fisheries along the south coast of the Alaska Peninsula. Trans. Amer. Fish. Soc. 128: 88–103.

    CAS  Google Scholar 

  • Seeb, L.W., C. Habicht, W.D. Templin, K.E. Tarbox, R.Z. Davis, L.K. Brannian & J.E. Seeb 2000. Genetic diversity of sockeye salmon of Cook Inlet, Alaska, and its application to management of populations affected by the Exxon Valdez Oil Spill. Trans. Amer. Fish. Soc. 129: 1223–1249.

    Article  Google Scholar 

  • Shaklee, J.B., F.W. Allendorf, D.C. Morizot & G.S. Whitt. 1990. Gene nomenclature for protein-coding loci in fish. Trans. Amer. Fish. Soc. 119: 2–15.

    Article  CAS  Google Scholar 

  • Shaklee, J.B., T.D. Beacham, L. Seeb & B.A. White. 1999. Managing fisheries using genetic data: Case studies from four species of Pacific salmon. Fish. Res. 43: 45–78.

    Article  Google Scholar 

  • Smouse, P.E., R.S. Waples & J.A. Tworek. 1990. A genetic mixture analysis for use with incomplete source population data. Can. J. Fish. Aquat. Sci. 47: 620–634.

    Google Scholar 

  • Stuart, A., J.K. Ord & S. Arnold. 1999. Kendall's Advanced Theory of Statistics Vol 2A: Classical Inference and the Linear Model, 6th edition, Oxford University Press, New York, NY, U.S.A. 885 pp.

    Google Scholar 

  • Urawa, S., K. Nagasawa, L. Margolis & A. Moles. 1998. Stock identification of chinook salmon (Onchorhynchus tshawytscha) in the North Pacific Ocean and Bering Sea by parasite tags. Nor. Pacific Anadro. Fish. Com. Bull. 1: 199–204.

    Google Scholar 

  • Weir, B.S. 1996. Genetic data analysis II, Sinauer Associates, Sunderland, MA, U.S.A. 445 pp.

    Google Scholar 

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Reynolds, J.H., Templin, W.D. Detecting Specific Populations in Mixtures. Environmental Biology of Fishes 69, 233–243 (2004). https://doi.org/10.1023/B:EBFI.0000022877.38588.f1

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