Nature Communications (Jan 2025)

Integrated multiomics signatures to optimize the accurate diagnosis of lung cancer

  • 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,
  • Lunxu Liu,
  • Xiwen Sun,
  • Yunlang She,
  • Dan Xie,
  • Deping Zhao,
  • Chang Chen

DOI
https://doi.org/10.1038/s41467-024-55594-z
Journal volume & issue
Vol. 16, no. 1
pp. 1 – 16

Abstract

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Abstract 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.