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Development and Validation of the Early Gastric Carcinoma Prediction Model in Post-Eradication Patients with Intestinal Metaplasia.

Cancers 2025 Vol.17(13)

Lin W, Zhang G, Chen H, Huang W, Xu G, Zheng Y, Gao C, Zheng J, Li D, Wang W

📝 환자 설명용 한 줄

: Gastric cancer (GC) remains a major global health challenge, with rising incidence among patients post- () eradication, particularly those with persistent intestinal metaplasia (IM).

🔬 핵심 임상 통계 (초록에서 자동 추출 — 원문 검증 권장)
  • 95% CI 0.70-0.80

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BibTeX ↓ RIS ↓
APA Lin W, Zhang G, et al. (2025). Development and Validation of the Early Gastric Carcinoma Prediction Model in Post-Eradication Patients with Intestinal Metaplasia.. Cancers, 17(13). https://doi.org/10.3390/cancers17132158
MLA Lin W, et al.. "Development and Validation of the Early Gastric Carcinoma Prediction Model in Post-Eradication Patients with Intestinal Metaplasia.." Cancers, vol. 17, no. 13, 2025.
PMID 40647458

Abstract

: Gastric cancer (GC) remains a major global health challenge, with rising incidence among patients post- () eradication, particularly those with persistent intestinal metaplasia (IM). Current risk stratification tools are limited in this high-risk population. : To develop, validate, and externally test a machine learning-based prediction model-termed the Early Gastric Cancer Model (EGCM)-for identifying early gastric cancer (EGC) risk in H. pylori-eradicated patients with IM, and to implement it as a web-based clinical tool. : This retrospective, dual-center study enrolled 214 H. pylori-eradicated patients with histologically confirmed IM from 900 Hospital and Fujian Provincial People's Hospital. The dataset was split into a training cohort (70%) and an internal validation cohort (30%), with an external test cohort from the second center. A total of 21 machine learning algorithms were screened using cross-validation and hyperparameter optimization. Boruta and SHAP analyses were employed for feature selection, and the final EGCM was constructed using the top five predictors: atrophy range, xanthoma, map-like redness (MLR), MLR range, and age. Model performance was evaluated via ROC curves, precision-recall curves, calibration plots, and decision curve analysis (DCA), and compared against conventional inflammatory biomarkers such as NLR and PLR. : The CatBoost algorithm demonstrated the best overall performance, achieving an AUC of 0.743 (95% CI: 0.70-0.80) in internal validation and 0.905 in the external test set. The EGCM exhibited superior discrimination compared to individual inflammatory markers ( < 0.01). Calibration analysis confirmed strong agreement between predicted and observed outcomes. DCA showed the EGCM yielded greater net clinical benefit. A web calculator was developed to facilitate clinical application. : The EGCM is a validated, interpretable, and practical tool for stratifying EGC risk in H. pylori-eradicated IM patients across multiple centers. Its integration into clinical practice could improve surveillance precision and early cancer detection.

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