首页> 美国卫生研究院文献>Bioscience and Microflora >Identification of Human Intestinal Microbiota of 92 Men by Data Mining for 5Characteristics i.e. Age BMI Smoking Habit Cessation Period ofPrevious Smokers and Drinking Habit
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Identification of Human Intestinal Microbiota of 92 Men by Data Mining for 5Characteristics i.e. Age BMI Smoking Habit Cessation Period ofPrevious Smokers and Drinking Habit

机译:通过5次数据挖掘识别92名男性的人体肠道菌群年龄体重指数吸烟习惯戒烟期以前的吸烟者和饮酒习惯

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摘要

The intestinal microbiota compositions of 92 men living in Japan were identified following consumption of identical meals for 3 days. Fecal samples were analyzed by terminal restriction fragment length polymorphism with 4 primer-restriction enzyme systems, and the 120 obtained operational taxonomic units (OTUs) were analyzed by Data mining software focusing on the following 5 characteristics, namely, age, body mass index, present smoking habit, cessation period of previous smokers and drinking habit, according to the answers of the subjects. After performing Data mining analyses with each characteristic, the details of the constructed Decision trees precisely identified the subjects or discriminated them into various suitable groups. Through the pathways to reach the groups, practical roles of the related OTUs and their quantities were clearly recognized. Compared with the other identification methods for OTUs such as bicluster analyses, correlation coefficients and principal component analyses, the clear difference of this Data mining technique was that it set aside most OTUs and emphasized only some closely related ones. For example for a selected characteristic, such as smoking habit, only 7 OTUs out of 120 were able to identify all smokers, and the remaining 113 OTUs were thought of as data noise for smoking. Data mining analyses were affirmed as an effective method of subject discrimination for various physiological constitutions. The species ofbacteria that were closely related to heavy smokers, i.e., HaeIII-291,were also discussed.
机译:食用三餐相同的食物后,确定了92位居住在日本的男性的肠道菌群组成。通过4种引物-限制性内切酶系统,通过末端限制性片段长度多态性分析粪便样品,并通过数据挖掘软件对120个获得的操作分类单位(OTU)进行分析,重点关注以下5个特征,即年龄,体重指数,根据受试者的回答,吸烟习惯,戒烟时间和饮酒习惯。在对每个特征进行数据挖掘分析之后,所构建的决策树的细节可以精确地识别主题或将它们区分为各种合适的组。通过到达各个小组的途径,明确认识到相关OTU的实际作用及其数量。与其他的OTU识别方法(例如bicluster分析,相关系数和主成分分析)相比,此数据挖掘技术的明显区别在于,它保留了大多数OTU并仅强调了一些紧密相关的OTU。例如,对于选定的特征(例如吸烟习惯),在120个人中只有7个OTU能够识别所有吸烟者,其余113个OTU被认为是吸烟的数据噪声。数据挖掘分析被确认为对各种生理构造进行主题区分的有效方法。的种类与大量吸烟者密切相关的细菌,即HaeIII-291,还进行了讨论。

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