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首页> 外文期刊>BMJ Open Gastroenterology >Gut microbiome identifies risk for colorectal polyps
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Gut microbiome identifies risk for colorectal polyps

机译:肠道微生物组可确定大肠息肉的风险

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Objective To characterise the gut microbiome in subjects with and without polyps and evaluate the potential of the microbiome as a non-invasive biomarker to screen for risk of colorectal cancer (CRC).Design Presurgery rectal swab, home collected stool, and sigmoid biopsy samples were obtained from 231 subjects undergoing screening or surveillance colonoscopy. 16S rRNA analysis was performed on 552 samples (231 rectal swab, 183 stool, 138 biopsy) and operational taxonomic units (OTU) were identified using UPARSE. Non-parametric statistical methods were used to identify OTUs that were significantly different between subjects with and without polyps. These informative OTUs were then used to build classifiers to predict the presence of polyps using advanced machine learning models.Results We obtained clinical data on 218 subjects (87 females, 131 males) of which 193 were White, 21 African-American, and 4 Asian-American. Colonoscopy detected polyps in 56% of subjects. Modelling of the non-invasive home stool samples resulted in a classification accuracy 75% for Na?ve Bayes and Neural Network models using informative OTUs. A na?ve holdout analysis performed on home stool samples resulted in an average false negative rate of 11.5% for the Na?ve Bayes and Neural Network models, which was reduced to 5% when the two models were combined.Conclusion Gut microbiome analysis combined with advanced machine learning represents a promising approach to screen patients for the presence of polyps, with the potential to optimise the use of colonoscopy, reduce morbidity and mortality associated with CRC, and reduce associated healthcare costs.
机译:目的对有或没有息肉的受试者的肠道微生物组进行表征,并评估该微生物组作为筛查结直肠癌(CRC)风险的非侵入性生物标志物的潜力。设计术前直肠拭子,家中采集的粪便和乙状结肠活检样本从231名接受筛查或监视结肠镜检查的受试者中获得。在552个样本(231个直肠拭子,183个粪便,138个活检样本)上进行了16S rRNA分析,并使用UPARSE确定了操作分类单位(OTU)。非参数统计方法被用来识别在有或没有息肉的受试者之间显着不同的OTU。结果,我们使用先进的机器学习模型将这些信息丰富的OTU用于构建分类器,以预测息肉的存在。结果我们获得了218位受试者(87位女性,131位男性)的临床数据,其中193位是白人,21位非裔美国人和4位亚裔-美国人。结肠镜检查在56%的受试者中检测到息肉。对无创家庭粪便样本进行建模后,使用信息丰富的OTU对朴素贝叶斯和神经网络模型进行分类的准确度> 75%。朴素贝叶斯和神经网络模型对家用粪便样本进行的朴素保留分析得出的平均假阴性率为11.5%,当将这两种模型结合使用时,该比率降低至5%。结论肠道微生物组分析先进的机器学习技术代表了一种有前途的筛查息肉的方法,可以优化结肠镜检查的使用,降低与CRC相关的发病率和死亡率,并降低相关的医疗费用。

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