Metabolomic machine learning predictor for diagnosis and prognosis of gastric cancer.
Yangzi ChenBohong WangYizi ZhaoXinxin ShaoMingshuo WangFuhai MaLaishou YangMeng NiePeng JinKe YaoHaibin SongShenghan LouHang WangTianshu YangYantao TianPeng HanZe-Ping HuPublished in: Nature communications (2024)
Gastric cancer (GC) represents a significant burden of cancer-related mortality worldwide, underscoring an urgent need for the development of early detection strategies and precise postoperative interventions. However, the identification of non-invasive biomarkers for early diagnosis and patient risk stratification remains underexplored. Here, we conduct a targeted metabolomics analysis of 702 plasma samples from multi-center participants to elucidate the GC metabolic reprogramming. Our machine learning analysis reveals a 10-metabolite GC diagnostic model, which is validated in an external test set with a sensitivity of 0.905, outperforming conventional methods leveraging cancer protein markers (sensitivity < 0.40). Additionally, our machine learning-derived prognostic model demonstrates superior performance to traditional models utilizing clinical parameters and effectively stratifies patients into different risk groups to guide precision interventions. Collectively, our findings reveal the metabolic landscape of GC and identify two distinct biomarker panels that enable early detection and prognosis prediction respectively, thus facilitating precision medicine in GC.
Keyphrases
- machine learning
- gas chromatography
- end stage renal disease
- artificial intelligence
- mass spectrometry
- physical activity
- big data
- chronic kidney disease
- newly diagnosed
- ejection fraction
- risk factors
- single cell
- squamous cell carcinoma
- prognostic factors
- papillary thyroid
- genome wide
- cardiovascular disease
- type diabetes
- coronary artery disease
- dna methylation
- drug delivery
- protein protein
- liquid chromatography
- lymph node metastasis
- amino acid