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Machine Learning‐Assisted Evaluation of Circulating DNA Quantitative Analysis for Cancer Screening

机译:机器学习辅助评估癌症筛查循环DNA定量分析

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While the utility of circulating cell‐free DNA (cfDNA) in cancer screening and early detection have recently been investigated by testing genetic and epigenetic alterations, here, an original approach by examining cfDNA quantitative and structural features is developed. First, the potential of cfDNA quantitative and structural parameters is independently demonstrated in cell culture, murine, and human plasma models. Subsequently, these variables are evaluated in a large retrospective cohort of 289 healthy individuals and 983 patients with various cancer types; after age resampling, this evaluation is done independently and the variables are combined using a machine learning approach. Implementation of a decision tree prediction model for the detection and classification of healthy and cancer patients shows unprecedented performance for 0, I, and II colorectal cancer stages (specificity, 0.89 and sensitivity, 0.72). Consequently, the methodological proof of concept of using both quantitative and structural biomarkers, and classification with a machine learning method are highlighted, as an efficient strategy for cancer screening. It is foreseen that the classification rate may even be improved by the addition of such biomarkers to fragmentomics, methylation, or the detection of genetic alterations. The optimization of such a multianalyte strategy with this machine learning method is therefore warranted.
机译:虽然循环在癌症筛查和早期检测无细胞DNA(cfDNA)的效用最近已通过测试遗传和外遗传改变的调查,在这里,通过检查cfDNA定量和结构特征的原始的方法显影。首先,cfDNA定量和结构参数的电位被独立地证实在细胞培养中,鼠和人血浆模型。随后,这些变量在289个健康人和983例各种癌症类型的大型回顾性队列评估;年龄重采样后,这种评价是独立进行和变量使用机器学习的方法相结合。为健康和癌症患者显示了检测和分类前所未有的性能的决策树预测模型为0,I的实现中,第一和第二结直肠癌阶段(特异性,0.89和灵敏度,0.72)。因此,使用定量和生物标志物的结构和分类用机器学习方法的概念的方法证明被突出显示,作为用于癌症筛查的有效策略。可以预见的是,分类率甚至可以通过加入此类生物标志物的至fragmentomics,甲基化,或遗传改变的检测得到改善。因此这种机器学习方法如此多分析策略的优化是必要的。
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