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Mi-Mic: a Novel Multi-layer Statistical Test for Microbiota-disease Associations

Overview
Journal Genome Biol
Specialties Biology
Genetics
Date 2024 May 1
PMID 38693546
Authors
Affiliations
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Abstract

mi-Mic, a novel approach for microbiome differential abundance analysis, tackles the key challenges of such statistical tests: a large number of tests, sparsity, varying abundance scales, and taxonomic relationships. mi-Mic first converts microbial counts to a cladogram of means. It then applies a priori tests on the upper levels of the cladogram to detect overall relationships. Finally, it performs a Mann-Whitney test on paths that are consistently significant along the cladogram or on the leaves. mi-Mic has much higher true to false positives ratios than existing tests, as measured by a new real-to-shuffle positive score.

Citing Articles

mi-Mic: a novel multi-layer statistical test for microbiota-disease associations.

Shtossel O, Finkelstein S, Louzoun Y Genome Biol. 2024; 25(1):113.

PMID: 38693546 PMC: 11064322. DOI: 10.1186/s13059-024-03256-0.

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