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  • Machine learning-based intr...
    Dong, Jingjing; wang, Kang; He, Jingquan; Guo, Qi; Min, Haodi; Tang, Donge; Zhang, Zeyu; Zhang, Cantong; Zheng, Fengping; Li, Yixi; Xu, Huixuan; Wang, Gang; Luan, Shaodong; Yin, Lianghong; Zhang, Xinzhou; Dai, Yong

    Computer methods and programs in biomedicine, 10/2023, Letnik: 240
    Journal Article

    •A risk prediction for IDH in HD-patients can be an important tool for clinical work.•LightGBM model plays as an interpretable and best-performing model for the task.•IDH-A and IDH-B model can usefully complement each other for risk prediction. Intradialytic hypotension (IDH) is closely associated with adverse clinical outcomes in HD-patients. An IDH predictor model is important for IDH risk screening and clinical decision-making. In this study, we used Machine learning (ML) to develop IDH model for risk prediction in HD patients. 62,227 dialysis sessions were randomly partitioned into training data (70%), test data (20%), and validation data (10%). IDH-A model based on twenty-seven variables was constructed for risk prediction for the next HD treatment. IDH-B model based on ten variables from 64,870 dialysis sessions was developed for risk assessment before each HD treatment. Light Gradient Boosting Machine (LightGBM), Linear Discriminant Analysis, support vector machines, XGBoost, TabNet, and multilayer perceptron were used to develop the predictor model. In IDH-A model, we identified the LightGBM method as the best-performing and interpretable model with C- statistics of 0.82 in Fall30Nadir90 definitions, which was higher than those obtained using the other models (P<0.01). In other IDH standards of Nadir90, Nadir100, Fall20, Fall30, and Fall20Nadir90, the LightGBM method had a performance with C- statistics ranged 0.77 to 0.89. As a complementary application, the LightGBM model in IDH-B model achieved C- statistics of 0.68 in Fall30Nadir90 definitions and 0.69 to 0.78 in the other five IDH standards, which were also higher than the other methods, respectively. Use ML, we identified the LightGBM method as the good-performing and interpretable model. We identified the top variables as the high-risk factors for IDH incident in HD-patient. IDH-A and IDH-B model can usefully complement each other for risk prediction and further facilitate timely intervention through applied into different clinical setting. Display omitted