Leveraging cfDNA fragmentomic features in a stacked ensemble model for early detection of esophageal squamous cell carcinoma

利用堆叠集成模型中的 cfDNA 片段组学特征来早期检测食管鳞状细胞癌

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作者:Zichen Jiao, Xiaoqiang Zhang, Yulong Xuan, Xiaoming Shi, Zirui Zhang, Ao Yu, Ningyou Li, Shanshan Yang, Xiaofeng He, Gefei Zhao, Ruowei Yang, Jianqun Chen, Xuxiaochen Wu, Hua Bao, Fufeng Wang, Wei Ren, Hongwei Liang, Qihan Chen, Tao Wang

Abstract

In this study, we develop a stacked ensemble model that utilizes cell-free DNA (cfDNA) fragmentomics for the early detection of esophageal squamous cell carcinoma (ESCC). This model incorporates four distinct fragmentomics features derived from whole-genome sequencing (WGS) and advanced machine learning algorithms for robust analysis. It is validated across both an independent validation cohort and an external cohort to ensure its generalizability and effectiveness. Notably, the model maintains its robustness in low-coverage sequencing environments, demonstrating its potentials in clinical settings with limited sequencing resources. With its remarkable sensitivity and specificity, this approach promises to significantly improve the early diagnosis and management of ESCC. This study represents a substantial step forward in the application of cfDNA fragmentomics in cancer diagnostics, emphasizing the need for further research to fully establish its clinical efficacy.

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