化学
气体分析呼吸
糖尿病酮症酸中毒
生物标志物
糖尿病
诊断生物标志物
代谢组学
生物标志物发现
代谢物
挥发性有机化合物
仿形(计算机编程)
内科学
诊断准确性
计算生物学
代谢物分析
作者
Tingting Fan,Yueying Zhang,Fangmeng Liu,Yong Liu,Shixiang Sun,Xiaoran Ding,C H Zhang,C H Zhang,Xiaoteng Jia,Bin Wang,Peng Sun,Chao Zhang,Chuan Zhang,Guangjie Lu
标识
DOI:10.1021/acs.analchem.5c07225
摘要
Diabetes mellitus (DM) screening remains a major global health concern, with over 60% of cases undiagnosed. While breath analysis offers a noninvasive alternative to blood-based methods, current studies focus solely on acetone and lack diagnostic specificity. Here, we report an integrated diagnostic strategy combining metabolomics-driven biomarker discovery, portable solid electrolyte gas sensors (SEGS), and cellular-level metabolic investigation. Using GC-MS profiling of 130 DM patients and 122 healthy controls, we identified nine discriminative volatile organic compounds (VOCs). A random forest (RF) model achieves a cross-validated AUC of 0.93. The SEGS analyzer detects target VOCs at ppb levels within 30 s, enabling point-of-care (POC) screening. Clinical validation demonstrates 100% accuracy (n = 10) for diabetic ketoacidosis (DKA) detection and 83.3% (n = 30) for DM. Insulin-resistant (IR) cell models uncover breath VOCs' association with nonvolatile metabolite (NVM) pathways, supporting biological interpretability. This work establishes a biologically interpretable, clinically validated, and field-deployable diagnostic platform for scalable, low-cost DM screening in community and resource-limited settings.
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