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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >Detection of Colorectal Carcinoma Based on Microbiota Analysis Using Generalized Regression Neural Networks and Nonlinear Feature Selection
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Detection of Colorectal Carcinoma Based on Microbiota Analysis Using Generalized Regression Neural Networks and Nonlinear Feature Selection

机译:广义回归神经网络基于微生物群分析的基于微生物群分析的癌细胞检测和非线性特征选择

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摘要

To obtain a screening tool for colorectal cancer (CRC) based on gut microbiota, we seek here to identify an optimal classifier for CRC detection as well as a novel nonlinear feature selection method for determining the most discriminative microbial species. In this study, the intestinal microflora in feces of 141 patients were modeled using general regression neural networks (GRNNs) combined with the proposed feature selection method. The proposed model led to slightly higher accuracy (AUC = 0.911) than previous studies (AUC < 0.87). The results show that the Clostridium scindens and Bifidobacterium angulatum are indicators of healthy gut flora and CRC happens to reduce these bacterial species. In addition, Fusobacterium gonidiaformans was found to be closely correlated with the CRC. The occurrence of colorectal adenoma was not sufficiently discriminatory based on fecal microbiota implicating that the change of colonic flora happens in the advanced phase of CRC development rather than initial adenoma. Integrating the proposed model with fecal occult blood test (FOBT), the CRC detection accuracy remained nearly unchanged (AUC = 0.915). The performance of the proposed method is validated using independent cohorts from America and Austria. Our results suggest that the proposed feature selection method combined with GRNN is potentially an accurate method for CRC detection.
机译:为了基于肠道微生物群获得结直肠癌(CRC)的筛选工具,我们在此寻求识别用于CRC检测的最佳分类器,以及用于确定最辨别性微生物物种的新型非线性特征选择方法。在这项研究中,使用一般回归神经网络(GRNNS)建模了141名患者的肠道微氟氯,与所提出的特征选择方法相结合。所提出的模型的精度略高于略高(AUC = 0.911)(AUC <0.87)。结果表明,梭菌芯片和双歧杆菌性心动图是健康肠道菌群的指示剂,CRC恰好降低这些细菌种类。此外,发现牙突果实血管曲线形式与CRC密切相关。基于粪便微生物群的结肠直肠腺瘤的发生并不具有足够的鉴别性,归因于CRC发育的提前阶段发生结肠菌群的变化而不是初始腺瘤。将提出的模型与粪便隐匿性血液检测(FOBT)集成,CRC检测精度仍然几乎保持不变(AUC = 0.915)。使用来自美国和奥地利的独立队列验证了所提出的方法的性能。我们的研究结果表明,所提出的特征选择方法与GRNN结合的可能是CRC检测的准确方法。

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