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Objective Submucosal infiltration of less than 200 μm is considered an indication for endoscopic surgery in cases of superficial esophageal cancer and precancerous lesions. This study aims to identify the risk factors associated with submucosal infiltration exceeding 200 micrometers in early esophageal cancer and precancerous lesions, as well as to establish and validate an accompanying predictive model. Methods Risk factors were identified through least absolute shrinkage and selection operator (LASSO) and multivariate logistic regression. Various machine learning (ML) classification models were tested to develop and evaluate the most effective predictive model, with Shapley Additive Explanations (SHAP) employed for model visualization. Results Predictive factors for early esophageal invasion into the submucosa included endoscopic ultrasonography or magnifying endoscopy> SM1( P <0.001,OR = 3.972,95%CI 2.161–7.478), esophageal wall thickening( P <0.001,OR = 12.924,95%CI,5.299–33.96), intake of pickled foods( P =0.04,OR = 1.837,95%CI,1.03–3.307), platelet-lymphocyte ratio( P <0.001,OR = 0.284,95%CI,0.137–0.556), tumor size( P <0.027,OR = 2.369,95%CI,1.128–5.267), the percentage of circumferential mucosal defect( P <0.001,OR = 5.286,95%CI,2.671–10.723), and preoperative pathological type( P <0.001,OR = 4.079,95%CI,2.254–7.476). The logistic regression model constructed from the identified risk factors was found to be the optimal model, demonstrating high efficacy with an area under the curve (AUC) of 0.922 in the training set, 0.899 in the validation set, and 0.850 in the test set. Conclusion A logistic regression model complemented by SHAP visualizations effectively identifies early esophageal cancer reaching 200 micrometers into the submucosa. Supplementary Information The online version contains supplementary material available at 10.1186/s12876-024-03442-1.
Objective Submucosal infiltration of less than 200 μm is considered an indication for endoscopic surgery in cases of superficial esophageal cancer and precancerous lesions. This study aims to identify the risk factors associated with submucosal infiltration exceeding 200 micrometers in early esophageal cancer and precancerous lesions, as well as to establish and validate an accompanying predictive model. Methods Risk factors were identified through least absolute shrinkage and selection operator (LASSO) and multivariate logistic regression. Various machine learning (ML) classification models were tested to develop and evaluate the most effective predictive model, with Shapley Additive Explanations (SHAP) employed for model visualization. Results Predictive factors for early esophageal invasion into the submucosa included endoscopic ultrasonography or magnifying endoscopy> SM1( P <0.001,OR = 3.972,95%CI 2.161–7.478), esophageal wall thickening( P <0.001,OR = 12.924,95%CI,5.299–33.96), intake of pickled foods( P =0.04,OR = 1.837,95%CI,1.03–3.307), platelet-lymphocyte ratio( P <0.001,OR = 0.284,95%CI,0.137–0.556), tumor size( P <0.027,OR = 2.369,95%CI,1.128–5.267), the percentage of circumferential mucosal defect( P <0.001,OR = 5.286,95%CI,2.671–10.723), and preoperative pathological type( P <0.001,OR = 4.079,95%CI,2.254–7.476). The logistic regression model constructed from the identified risk factors was found to be the optimal model, demonstrating high efficacy with an area under the curve (AUC) of 0.922 in the training set, 0.899 in the validation set, and 0.850 in the test set. Conclusion A logistic regression model complemented by SHAP visualizations effectively identifies early esophageal cancer reaching 200 micrometers into the submucosa. Supplementary Information The online version contains supplementary material available at 10.1186/s12876-024-03442-1.
Background Esophageal stricture is a common complication following endoscopic submucosal dissection (ESD). This study aims to examine additional lifestyle factors contributing to post-ESD esophageal stricture and to propose guidelines for postoperative lifestyle management. Methods The least absolute shrinkage and selection operator (LASSO) logistic regression was employed to identify risk factors and construct nomograms, utilizing external 5-fold cross-validation to validate the results. Additionally, the Shapley additive explanations (SHAP) model was used for visualization. Results The identified risk factors for esophageal stricture include: operative duration (P = 0.008, OR = 1.837, 95% CI: 1.421–10.652), thickening of the esophageal wall (P = 0.027, OR = 3.448, 95% CI: 1.148–10.576), circumferential range (P < 0.001, OR = 6.026, 95% CI: 2.187–18.425), depth of infiltration (P < 0.001, OR = 4.940, 95% CI: 1.893–13.371), neutrophil-to-lymphocyte ratio (NLR) (P = 0.003, OR = 5.010, 95% CI: 1.755–15.156), intake of high-temperature food after surgery (P = 0.014, OR = 3.600, 95% CI: 1.314–10.261), and swallowing training (P = 0.047, OR = 3.140, 95% CI: 1.035–10.134). The area under the curve (AUC) for the training set of the predictive model is 0.924, while the AUC for the validation set is 0.904, and for the test set, it is 0.873. Conclusion reducing the intake of hot foods and engaging in swallowing training for a minimum of 3–6 months, can significantly reduce the incidence of esophageal stricture.
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