A Predictive Scheme for Longitudinal Health Screening Data based on Different Feature Ensemble and Machine Learning Techniques: A Case Study on the Diagnostic Risk Factor Assessment of Metabolic Syndrome for CKD Stages 3a to 3b
學年 112
學期 2
出版(發表)日期 2024-04-17
作品名稱 A Predictive Scheme for Longitudinal Health Screening Data based on Different Feature Ensemble and Machine Learning Techniques: A Case Study on the Diagnostic Risk Factor Assessment of Metabolic Syndrome for CKD Stages 3a to 3b
作品名稱(其他語言)
著者 Ming-Shu Chen, Tzu-Chi Liu, Mao-Jhen Jhou, Chih-Te Yang, Chi-Jie Lu
單位
出版者
著錄名稱、卷期、頁數 Diagnostics 2024, 14(8), 825
摘要 Longitudinal data, while often limited, contain valuable insights into features impacting clinical outcomes. To predict the progression of chronic kidney disease (CKD) in patients with metabolic syndrome, particularly those transitioning from stage 3a to 3b, where data are scarce, utilizing feature ensemble techniques can be advantageous. It can effectively identify crucial risk factors, influencing CKD progression, thereby enhancing model performance. Machine learning (ML) methods have gained popularity due to their ability to perform feature selection and handle complex feature interactions more effectively than traditional approaches. However, different ML methods yield varying feature importance information. This study proposes a multiphase hybrid risk factor evaluation scheme to consider the diverse feature information generated by ML methods. The scheme incorporates variable ensemble rules (VERs) to combine feature importance information, thereby aiding in the identification of important features influencing CKD progression and supporting clinical decision making. In the proposed scheme, we employ six ML models—Lasso, RF, MARS, LightGBM, XGBoost, and CatBoost—each renowned for its distinct feature selection mechanisms and widespread usage in clinical studies. By implementing our proposed scheme, thirteen features affecting CKD progression are identified, and a promising AUC score of 0.883 can be achieved when constructing a model with them.
關鍵字 chronic kidney disease; metabolic syndrome; feature ensemble; machine learning; longitudinal data; health screening
語言 en
ISSN
期刊性質 國外
收錄於 SCI Scopus
產學合作
通訊作者 Chi-Jie Lu
審稿制度
國別 CHE
公開徵稿
出版型式 ,電子版
SDGS 良好健康和福祉