医学
基因组
队列
头颈部鳞状细胞癌
基底细胞
肿瘤科
诊断准确性
生物标志物
计算生物学
唾液
头颈部
口腔
内科学
病理
队列研究
接收机工作特性
微生物群
活检
癌症
气体分析呼吸
生物信息学
诊断生物标志物
放射科
呼气
癌
作者
Yilan Sun,Xinrong Hu,J Jungong Han,Yujue Wang,Jun Luo,Jiayi Yu,Yixiang Duan,Xu Wang,Jiannan Liu
标识
DOI:10.1038/s41746-026-02527-3
摘要
Oral squamous cell carcinoma (OSCC) remains the most common head and neck malignancy, for which early detection is critical yet challenging with current invasive methods. This study aimed to establish a comprehensive diagnostic framework for OSCC by integrating proton transfer reaction-time-of-flight mass spectrometry (PTR-TOF-MS) breath analysis and metagenomic sequencing with artificial intelligence (AI). Exhaled breath and saliva samples were collected from participants in a discovery cohort (n = 222) and an external validation cohort (n = 83). Samples were analyzed using PTR-TOF-MS and metagenomic sequencing, and multimodal diagnostic models were constructed and trained on the discovery cohort data. We identified OSCC-specific biomarkers, including methanethiol and Fusobacterium nucleatum, and developed an interactive online platform (https://bio.futurecnn.com/) enabling real-time predictions and biomarker interpretability. The AI-driven diagnostic model achieved excellent accuracy (ROC-AUC: 0.92) in distinguishing OSCC patients from healthy controls in the external set. This approach offers a practical, noninvasive solution for OSCC screening and establishes an adaptable framework for other breath-based diagnostics.
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