StrainPanDA: linked reconstruction of strain composition and gene content profiles via pangenome-based decomposition of metagenomic data
            
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                                    更新:2022-06-28 16:51:00                浏览:986次
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                摘要
                Background:Microbial strains of variable functional capacities co-exist in microbiomes. Current bioinformatics methods of strain analysis cannot provide the direct linkage between strain composition and their gene contents from metagenomic data.
Methods:Here we present StrainPanDA (Strain-level Pangenome Decomposition Analysis), a novel method that uses the pangenome coverage profile of multiple metagenomic samples to simultaneously reconstruct the composition and gene content variation of co-existing strains in microbial communities.
Results:We systematically validate the accuracy and robustness of StrainPanDA using synthetic datasets. To demonstrate the power of gene-centric strain profiling, we then apply StrainPanDA to analyze the gut microbiome samples of infants, as well as patients treated with fecal microbiota transplantation. We show that the linked reconstruction of strain composition and gene content profiles is critical for understanding the relationship between microbial adaptation and strain-specific functions (e.g., nutrient utilization, pathogenicity).
Conclusions:StrainPanDA can be applied to metagenomic datasets to detect association between molecular functions and microbial/host phenotypes to formulate testable hypotheses and gain novel biological insights at the strain or subspecies level.
 
             
            
                关键词
                strain,decomposition,gene content,pangenome,metagenomic
             
            
            
                    稿件作者
                    
                        
                                    
                                                                                                                        
                                    谭宇翔
                                    中国科学院深圳先进技术研究院合成生物学研究所
                                
                                    
                                        
                                                                            
                                    戴磊
                                    中国科学院深圳先进技术研究院合成生物学研究所
                                
                                             
                          
    
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