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mbDenoise: microbiome data denoising using zero-inflated probabilistic principal components analysis

Yanyan Zeng, Jing Li, Chaochun Wei, Hongyu Zhao, Tao Wang

2022Genome biology33 citationsDOIOpen Access PDF

Abstract

The analysis of microbiome data has several technical challenges. In particular, count matrices contain a large proportion of zeros, some of which are biological, whereas others are technical. Furthermore, the measurements suffer from unequal sequencing depth, overdispersion, and data redundancy. These nuisance factors introduce substantial noise. We propose an accurate and robust method, mbDenoise, for denoising microbiome data. Assuming a zero-inflated probabilistic PCA (ZIPPCA) model, mbDenoise uses variational approximation to learn the latent structure and recovers the true abundance levels using the posterior, borrowing information across samples and taxa. mbDenoise outperforms state-of-the-art methods to extract the signal for downstream analyses.

Topics & Concepts

BiologyPrincipal component analysisHuman geneticsComputational biologyProbabilistic logicMicrobiomeEvolutionary biologyZero (linguistics)GeneticsPattern recognition (psychology)StatisticsArtificial intelligenceComputer scienceMathematicsLinguisticsPhilosophyGeneMetabolomics and Mass Spectrometry StudiesGut microbiota and healthCell Image Analysis Techniques
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