医学
恶性肿瘤
肺癌
组学
医学诊断
癌症
肺癌筛查
肿瘤科
内科学
生物信息学
放射科
重症监护医学
生物
作者
Mengmeng Zhao,Gang Xue,Bingxi He,Jiajun Deng,Tingting Wang,Yifan Zhong,Shenghui Li,Yang Wang,Yiming He,Tao Chen,Jun Zhang,Ziyue Yan,Xinlei Hu,Liuning Guo,Wendong Qu,Yongxiang Song,Minglei Yang,Guofang Zhao,Bentong Yu,Minjie Ma
标识
DOI:10.1038/s41467-024-55594-z
摘要
Diagnosing lung cancer from indeterminate pulmonary nodules (IPLs) remains challenging. In this multi-institutional study involving 2032 participants with IPLs, we integrate the clinical, radiomic with circulating cell-free DNA fragmentomic features in 5-methylcytosine (5mC)-enriched regions to establish a multiomics model (clinic-RadmC) for predicting the malignancy risk of IPLs. The clinic-RadmC yields an area-under-the-curve (AUC) of 0.923 on the external test set, outperforming the single-omics models, and models that only combine clinical features with radiomic, or fragmentomic features in 5mC-enriched regions (p < 0.050 for all). The superiority of the clinic-RadmC maintains well even after adjusting for clinic-radiological variables. Furthermore, the clinic-RadmC-guided strategy could reduce the unnecessary invasive procedures for benign IPLs by 10.9% ~ 35%, and avoid the delayed treatment for lung cancer by 3.1% ~ 38.8%. In summary, our study indicates that the clinic-RadmC provides a more effective and noninvasive tool for optimizing lung cancer diagnoses, thus facilitating the precision interventions. Diagnosis of lung cancer from indeterminate pulmonary nodules remains challenging. Here, the authors develop a multi-omics signature to identify oncogenic nodules, and prevent unnecessary procedures.
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