Effects of library size variance, sparsity, and compositionality on the analysis of microbiome data
Sophie Weiss(University of California, Riverside), Rob Knight(University of California San Diego), Jesse Zaneveld(University of Washington Bothell), Amanda Birmingham(University of California San Diego), Kyle Bittinger(University of Pennsylvania), Zhenjiang Zech Xu(Nanchang University), Amnon Amir(University of California San Diego), Catherine Lozupone(Colorado School of Public Health), Shyamal D. Peddada(University of Pittsburgh), Antonio González(University of California San Diego), Yoshiki Vázquez‐Baeza(University of Colorado Boulder)
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