| Literature DB >> 32184368 |
Xiaoquan Su1,2, Gongchao Jing3,2, Zheng Sun3,2, Lu Liu3,2, Zhenjiang Xu4,5, Daniel McDonald4, Zengbin Wang3,2, Honglei Wang3, Antonio Gonzalez4,5, Yufeng Zhang3, Shi Huang3,2, Gavin Huttley6, Rob Knight7,5, Jian Xu1,2.
Abstract
Microbiome-based disease classification depends on well-validated disease-specific models or a priori organismal markers. These are lacking for many diseases. Here, we present an alternative, search-based strategy for disease detection and classification, which detects diseased samples via their outlier novelty versus a database of samples from healthy subjects and then compares these to databases of samples from patients. Our strategy's precision, sensitivity, and speed outperform model-based approaches. In addition, it is more robust to platform heterogeneity and to contamination in 16S rRNA gene amplicon data sets. This search-based strategy shows promise as an important first step in microbiome big-data-based diagnosis.IMPORTANCE Here, we present a search-based strategy for disease detection and classification, which detects diseased samples via their outlier novelty versus a database of samples from healthy subjects and then compares them to databases of samples from patients. This approach enables the identification of microbiome states associated with disease even in the presence of different cohorts, multiple sequencing platforms, or significant contamination.Entities:
Keywords: disease detection and classification; microbiome; search
Year: 2020 PMID: 32184368 DOI: 10.1128/mSystems.00150-20
Source DB: PubMed Journal: mSystems ISSN: 2379-5077 Impact factor: 6.496