摘要
背景:在微生物群落中,重点物种比其他物种对生态系统的表现和动态有更大的影响,从研究结果可以看出,失去肠道微生物群会引起一些特定的疾病。一些正在进行的研究旨在查明微生物群落结构与人类疾病之间的联系。方法:本文介绍了一种有效的关键物种识别方法,该方法采用了一种新的扩展强度(SI)算法。由于现有关键物种识别算法的准确性难以评价微生物群落的高多样性和未栽培状态,我们模拟了具有已知交互作用的微生物群落横断面数据,并采用广义Lotka-Volterra(GLV)模型建立了标准密钥等级。随后,利用仿真数据将SI算法与现有方法进行了比较,得到了明显优于其他方法的SI算法性能。此外,我们还将此方法应用于肠道微生物群数据集中,并对一些与体重有潜在关联的微生物进行了鉴定。我们首先组装了三个相关度量来计算物种间的相关性。然后应用网络反褶积消除间接相关。最后,利用分子生态网络分析(MENA)构建共现网络.实验结果表明,SI算法在识别肠道微生物群中与体重高度相关的物种方面具有良好的性能。结果:这一结果为肠道微生物学的调控提供了有效的指标,从而使基因治疗和其他基因水平的治疗对减肥和其他肠道相关疾病的治疗成为可能。
关键词: 微生物群落,重点物种,横断面数据,广义Lotka-Volterra,共现网络,网络反褶积。
Current Gene Therapy
Title:Identifying Keystone Species in the Microbial Community Based on Cross- Sectional Data
Volume: 18 Issue: 5
关键词: 微生物群落,重点物种,横断面数据,广义Lotka-Volterra,共现网络,网络反褶积。
摘要: Background: In microbial communities, the keystone species have a greater impact on the performance and dynamics of ecosystem than that of other species, in which we can see from the results that losing gut microbiome causes some specific diseases. A number of ongoing studies aim at identifying links between microbial community structure and human diseases.
Method: In this paper, we have introduced a valid keystone species identification method, in which a new Spread Intensity (SI) algorithm is used. Because the accuracies of current keystone species identification algorithms are difficult to evaluate for the high diversity and uncultivated status of microbial communities, we simulated cross-sectional data of microbial communities with known interactions and set up standard keystoneness rankings using Generalized Lotka-Volterra (GLV) model. Subsequently, we compared the SI algorithm with existing methods by using simulated data and obtained an obvious better performance of SI algorithm than other methods. Also, we applied this method to gut microbiota datasets and identified some microbes having the potential association with body weight. We first assembled three correlation metrics to calculate the interspecies correlation. Then we applied network deconvolution to remove indirect correlations. Finally, we used Molecular Ecological Network Analysis (MENA) to construct the co-occurrence network. According to experimental results, SI algorithm has an excellent performance in identifying highly correlated species in gut microbiome to body weight.
Result: This result provides an effective indicator for modulating gut microbiota and thus enables the gene therapy and other gene-level treatments for losing-weight and other gut-associated diseases.
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Cite this article as:
Identifying Keystone Species in the Microbial Community Based on Cross- Sectional Data, Current Gene Therapy 2018; 18 (5) . https://dx.doi.org/10.2174/1566523218666181008155734
DOI https://dx.doi.org/10.2174/1566523218666181008155734 |
Print ISSN 1566-5232 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-5631 |
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