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Predicting the risk for colorectal cancer with personal characteristics and fecal immunochemical test

机译:通过个人特征和粪便免疫化学测试预测大肠癌的风险

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We aimed to predict colorectal cancer (CRC) based on the demographic features and clinical correlates of personal symptoms and signs from Tianjin community-based CRC screening data. A total of 891,199 residents who were aged 60 to 74 and were screened in 2012 were enrolled. The Lasso logistic regression model was used to identify the predictors for CRC. Predictive validity was assessed by the receiver operating characteristic (ROC) curve. Bootstrapping method was also performed to validate this prediction model. CRC was best predicted by a model that included age, sex, education level, occupations, diarrhea, constipation, colon mucosa and bleeding, gallbladder disease, a stressful life event, family history of CRC, and a positive fecal immunochemical test (FIT). The area under curve (AUC) for the questionnaire with a FIT was 84% (95% CI: 82%–86%), followed by 76% (95% CI: 74%–79%) for a FIT alone, and 73% (95% CI: 71%–76%) for the questionnaire alone. With 500 bootstrap replications, the estimated optimism (<0.005) shows good discrimination in validation of prediction model. A risk prediction model for CRC based on a series of symptoms and signs related to enteric diseases in combination with a FIT was developed from first round of screening . The results of the current study are useful for increasing the awareness of high-risk subjects and for individual-risk-guided invitations or strategies to achieve mass screening for CRC.
机译:我们旨在根据人口统计特征和基于天津社区CRC筛查数据的个人症状和体征的临床相关性来预测结直肠癌(CRC)。入选2012年接受筛查的891,199名年龄在60至74岁之间的居民。 Lasso logistic回归模型用于识别CRC的预测因子。预测有效性通过接收器工作特性(ROC)曲线进行评估。还执行了自举方法来验证该预测模型。可以通过以下模型对CRC进行最佳预测:年龄,性别,文化程度,职业,腹泻,便秘,结肠粘膜和出血,胆囊疾病,应激性生活事件,CRC家族史以及粪便免疫化学试验(FIT)阳性。 FIT问卷的曲线下面积(AUC)为84%(95%CI:82%–86%),其次是单独FIT的76%(95%CI:74%–79%),和73 %(95%CI:71%–76%)。使用500个引导程序复制,估计的乐观度(<0.005)在预测模型的验证中显示出良好的区分能力。从第一轮筛选开始,建立了基于一系列与肠道疾病相关的症状和体征并结合FIT的CRC风险预测模型。本研究的结果对于提高对高风险受试者的认识以及对个人风险指导的邀请或实现CRC大规模筛查的策略是有用的。

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