Liming Yang’s research while affiliated with Peking University and other places

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Publications (2)


Development and validation of a preliminary clinical support system for measuring the probability of incident 2-year (pre)frailty among community-dwelling older adults: A prospective cohort study
  • Article

June 2023

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34 Reads

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5 Citations

International Journal of Medical Informatics

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Liming Yang

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Zhuming Shi

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[...]

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Cuili Wang

Objective: To develop the wed-based system for predicting risk of (pre)frailty among community-dwelling older adults. Materials and methods: (Pre)frailty was determined by physical frailty phenotype scale. A total of 2802 robust older adults aged ≥60 years from the China Health and Retirement Longitudinal Study (CHARLS) 2013-2015 survey were randomly assigned to derivation or internal validation cohort at a ratio of 8:2. Logistic regression, Random Forest, Support Vector Machine and eXtreme Gradient Boosting (XGBoost) were used to construct (pre)frailty prediction models. The Grid search and 5-fold cross validation were combined to find the optimal parameters. All models were evaluated externally using the temporal validation method via the CHARLS 2011-2013 survey. The (pre)frailty predictive system was web-based and built upon representational state transfer application program interfaces. Results: The incidence of (pre)frailty was 34.2 % in derivation cohort, 34.8 % in internal validation cohort, and 32.4 % in external validation cohort. The XGBoost model achieved better prediction performance in derivation and internal validation cohorts, and all models had similar performance in external validation cohort. For internal validation cohort, XGBoost model showed acceptable discrimination (AUC: 0.701, 95 % CI: [0.655-0.746]), calibration (p-value of Hosmer-Lemeshow test > 0.05; good agreement on calibration plot), overall performance (Brier score: 0.200), and clinical usefulness (decision curve analysis: more net benefit than default strategies within the threshold of 0.15-0.80). The top 3 of 14 important predictors generally available in community were age, waist circumference and cognitive function. We embedded XGBoost model into the server and this (pre)frailty predictive system is accessible at http://www.frailtyprediction.com.cn. A nomogram was also conducted to enhance the practical use. Conclusions: A user-friendly web-based system was developed with good performance to assist healthcare providers to measure the probability of being (pre)frail among community-dwelling older adults in the next two years, facilitating the early identification of high-risk population of (pre)frailty. Further research is needed to validate this preliminary system across more controlled cohorts.


Citations (1)


... Five machine learning methods, namely Logistic Regression, ExtraTrees classifier, Bagging classifier, XGBoost, and RF, were applied to develop the risk models based on the training set. Further, a Grid Search with 5-fold cross validation was employed to find all possible combinations of hyperparameters for each ML model [24]. Then, each model's performance was conducted by confusion matrix, AUC, accuracy, precision, specificity, Recall and F1 scores. ...

Reference:

Using Machine Learning Model for Predicting Risk of Memory Decline: A Cross Sectional Study
Development and validation of a preliminary clinical support system for measuring the probability of incident 2-year (pre)frailty among community-dwelling older adults: A prospective cohort study
  • Citing Article
  • June 2023

International Journal of Medical Informatics