Prediction model for malignant pulmonary nodules based on cfMeDIP-seq and machine learning.
Jian QiBo HongRui TaoRuifang SunHuanhu ZhangXiaopeng ZhangJie JiShujie WangYanzhe LiuQingmei DengHongzhi WangDahai ZhaoJinfu NiePublished in: Cancer science (2021)
Cell-free methylated DNA immunoprecipitation and high-throughput sequencing (cfMeDIP-seq) is a new bisulfite-free technique, which can detect the whole-genome methylation of blood cell-free DNA (cfDNA). Using this technique, we identified differentially methylated regions (DMR) of cfDNA between lung tumors and normal controls. Based on the top 300 DMR, we built a random forest prediction model, which was able to distinguish malignant lung tumors from normal controls with high sensitivity and specificity of 91.0% and 93.3% (AUROC curve of 0.963). In summary, we reported a non-invasive prediction model that had good ability to distinguish malignant pulmonary nodules.