GA-Based Selection of Vaginal Microbiome Features Associated with Bacterial Vaginosis.

Joi Carter, Daniel Beck, Henry Williams, James Foster, Gerry Dozier
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引用次数: 7

Abstract

In this paper, we successfully apply GEFeS (Genetic & Evolutionary Feature Selection) to identify the key features in the human vaginal microbiome and in patient meta-data that are associated with bacterial vaginosis (BV). The vaginal microbiome is the community of bacteria found in a patient, and meta-data include behavioral practices and demographic information. Bacterial vaginosis is a disease that afflicts nearly one third of all women, but the current diagnostics are crude at best. We describe two types of classifies for BV diagnosis, and show that each is associated with one of two treatments. Our results show that the classifiers associated with the 'Treat Any Symptom' version have better performances that the classifier associated with the 'Treat Based on N-Score Value'. Our long term objective is to develop a more accurate and objective diagnosis and treatment of BV.

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与细菌性阴道病相关的基于ga的阴道微生物组特征选择。
在本文中,我们成功地应用GEFeS(遗传和进化特征选择)来识别人类阴道微生物组和患者元数据中与细菌性阴道病(BV)相关的关键特征。阴道微生物群是在患者体内发现的细菌群落,元数据包括行为习惯和人口统计信息。细菌性阴道病是一种折磨着近三分之一女性的疾病,但目前的诊断充其量是粗略的。我们描述了细菌性阴道炎诊断的两种类型,并表明每种类型都与两种治疗方法中的一种相关。我们的结果表明,与“治疗任何症状”版本相关的分类器比与“基于N-Score值治疗”相关的分类器具有更好的性能。我们的长期目标是开发更准确和客观的细菌性阴道炎诊断和治疗方法。
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