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检测微生物群落中的多维共排斥模式。

Detection of multi-dimensional co-exclusion patterns in microbial communities.

机构信息

Department of Pharmacology and Toxicology, University of Texas Medical Branch-Galveston, Galveston, USA.

Sealy Center for Structural Biology and Molecular Biophysics, University of Texas Medical Branch-Galveston, Galveston, USA.

出版信息

Bioinformatics. 2018 Nov 1;34(21):3695-3701. doi: 10.1093/bioinformatics/bty414.

Abstract

MOTIVATION

Identification of complex relationships among members of microbial communities is key to understand and control the microbiota. Co-exclusion is arguably one of the most important patterns reflecting micro-organisms' intolerance to each other's presence. Knowing these relations opens an opportunity to manipulate microbiotas, personalize anti-microbial and probiotic treatments as well as guide microbiota transplantation. The co-exclusion pattern however, cannot be appropriately described by a linear function nor its strength be estimated using covariance or (negative) Pearson and Spearman correlation coefficients. This manuscript proposes a way to quantify the strength and evaluate the statistical significance of co-exclusion patterns between two, three or more variables describing a microbiota and allows one to extend analysis beyond micro-organism abundance by including other microbiome associated measurements such as, pH, temperature etc., as well as estimate the expected numbers of false positive co-exclusion patterns in a co-exclusion network.

RESULTS

The implemented computational pipeline (CoEx) tested against 2380 microbial profiles (samples) from The Human Microbiome Project resulted in body-site specific pairwise co-exclusion patterns.

AVAILABILITY AND IMPLEMENTATION

C++ source code for calculation of the score and P-value for two, three and four dimensional co-exclusion patterns as well as source code and executable files for the CoEx pipeline are available at https://scsb.utmb.edu/labgroups/fofanov/co-exclusion_in_microbial_communities.asp.

SUPPLEMENTARY INFORMATION

Supplementary data are available at Bioinformatics online.

摘要

动机

识别微生物群落成员之间的复杂关系是理解和控制微生物群的关键。共排斥可以说是反映微生物之间不能容忍彼此存在的最重要模式之一。了解这些关系为操纵微生物群、个性化抗菌和益生菌治疗以及指导微生物群移植提供了机会。然而,共排斥模式不能用线性函数来适当描述,也不能用协方差或(负)皮尔逊和斯皮尔曼相关系数来估计其强度。本文提出了一种方法来量化两个、三个或更多描述微生物群的变量之间的共排斥模式的强度,并评估其统计显著性,允许通过包括其他与微生物组相关的测量值(如 pH、温度等)来扩展分析,超出微生物丰度的范围,并估计在共排斥网络中假阳性共排斥模式的预期数量。

结果

针对人类微生物组计划中的 2380 个微生物图谱(样本)进行测试的实施计算管道(CoEx)导致了特定于身体部位的成对共排斥模式。

可用性和实现

用于计算二维、三维和四维共排斥模式的得分和 P 值的 C++源代码以及 CoEx 管道的源代码和可执行文件可在 https://scsb.utmb.edu/labgroups/fofanov/co-exclusion_in_microbial_communities.asp 获得。

补充信息

补充数据可在生物信息学在线获得。

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