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Systematic evaluation of supervised classifiers for fecal microbiota-based prediction of colorectal cancer

机译:基于粪便微生物群的大肠癌预测的监督分类器的系统评价

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摘要

Predicting colorectal cancer (CRC) based on fecal microbiota presents a promising method for non-invasive screening of CRC, but the optimization of classification models remains an unaddressed question. The purpose of this study was to systematically evaluate the effectiveness of different supervised machine-learning models in predicting CRC in two independent eastern and western populations. The structures of intestinal microflora in feces in Chinese population (N = 141) were determined by 454 FLX pyrosequencing, and different supervised classifiers were employed to predict CRC based on fecal microbiota operational taxonomic unit (OTUs). As a result, Bayes Net and Random Forest displayed higher accuracies than other algorithms in both populations, although Bayes Net was found with a lower false negative rate than that of Random Forest. Gut microbiota-based prediction was more accurate than the standard fecal occult blood test (FOBT), and the combination of both approaches further improved the prediction accuracy. Moreover, when unclassified OTUs were used as input, the BayesDMNB text algorithm achieved higher accuracy in the Chinese population (AUC=0.994). Taken together, our results suggest that Bayes Net classification model combined with unclassified OTUs may present an accurate method for predicting CRC based on the compositions of gut microbiota.
机译:基于粪便微生物群预测结直肠癌(CRC)为无创性CRC筛查提供了一种有前途的方法,但是分类模型的优化仍然是一个尚未解决的问题。本研究的目的是系统地评估不同的有监督机器学习模型在预测两个独立的东西部人口中CRC的有效性。通过454 FLX焦磷酸测序确定中国人口(N = 141)粪便中肠道菌群的结构,并根据粪便微生物群操作分类单位(OTU),采用不同的监督分类器预测CRC。结果,尽管发现贝叶斯网的误报率低于随机森林,但贝叶斯网和随机森林在两个种群中均显示出比其他算法更高的准确性。基于肠道菌群的预测比标准的粪便潜血测试(FOBT)更准确,两种方法的结合进一步提高了预测准确性。此外,当使用未分类的OTU作为输入时,BayesDMNB文本算法在中国人口中获得了更高的准确性(AUC = 0.994)。两者合计,我们的结果表明,结合未分类的OTU的Bayes Net分类模型可能会提供一种基于肠道菌群组成预测CRC的准确方法。

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