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Applying Data Mining to Classify Age by Intestinal Microbiota in 92 Healthy Men Using a Combination of SeveralRestriction Enzymes for T-RFLP Experiments

机译:应用数据挖掘结合多种方法对92名健康男性的肠道菌群进行年龄分类T-RFLP实验的限制性酶

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摘要

The composition of the intestinal microbiota was measured following consumption of identical meals for 3 days in 92 Japanese men, and terminal restriction fragment length polymorphism (T-RFLP) was used to analyze their feces. The obtained operational taxonomic units (OTUs) and the subjects’ ages were classified by using Data mining (DM) software that compared these data with continuous data and for 5 partitions for age divided at 5 years intervals between the ages of 30 and 50. The DM provided Decision trees in which the selected OTUs were closely related to the ages of the subjects. DM was also used to compare the OTUs from the T-RFLP data with seven restriction enzymes (two enzymes of 516f-BslI and 516f-HaeIII, two enzymes of 27f-MspI and 27f-AluI, three enzymes of 35f-HhaI, 35f-MspI and 35f-AluI) and their various combinations. The OTUs delivered from the five enzyme-digested partitions were analyzed to classify their age clusters. For use in future DM processing, we discussed the enzymes that were effective for accurate classification. We selected two OTUs (HA624 and HA995) that were useful for classifying the subject’s ages. Depending on the 16S rRNA sequences of the OTUs, Ruminicoccus obeum clones 1-4 were present in 18 of 36 bacterial candidates in the older age group-related OTU (HA624). On the other hand, Ruminicoccus obeum clones 1-33 were present in 65 of 269 candidates in the younger age group-related OUT (HA995).
机译:在92名日本男性中,同餐进食3天后,测量了肠道菌群的组成,并使用末端限制性片段长度多态性(T-RFLP)分析了他们的粪便。使用数据挖掘(DM)软件对获得的操作分类单位(OTU)和受试者的年龄进行分类,该软件将这些数据与连续数据进行比较,并以30岁和50岁之间5年间隔划分的5个分区进行年龄划分。 DM提供了决策树,其中所选的OTU与受试者的年龄密切相关。 DM还用于比较T-RFLP数据中的OTU与7种限制酶(516f-BslI和516f-HaeIII的两种酶,27f-MspI和27f-AluI的两种酶,35f-HhaI,35f- MspI和35f-AluI)及其各种组合。分析了从五个酶消化的分区递送的OTU,以对其年龄群进行分类。为了在将来的DM处理中使用,我们讨论了对准确分类有效的酶。我们选择了两个OTU(HA624和HA995),可用于对受试者的年龄进行分类。根据OTU的16S rRNA序列,在与老年人群相关的OTU(HA624)中的36个细菌候选物中有18个存在Ruminicoccus obeum克隆1-4。另一方面,在与年龄段相关的较年轻OUT(HA995)的269名候选人中,有65名存在Ruminicoccus obeum克隆1-33。

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