The 30-days hospital readmission risk in diabetic patients: predictive modeling with machine learning classifiers

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作者
Yujuan Shang
Kui Jiang
Lei Wang
Zheqing Zhang
Siwei Zhou
Yun Liu
Jiancheng Dong
Huiqun Wu
机构
[1] Medical School of Nantong University,Department of Medical Informatics
[2] Children’s Hospital of Fudan University,Department of Statistics and Data Management
[3] the First Affiliated Hospital,Department of Information
[4] Nanjing Medical University,Department of Medical Informatics, School of Biomedical Engineering and Informatics
[5] Nanjing Medical University,undefined
来源
BMC Medical Informatics and Decision Making | / 21卷
关键词
Prediction model; Readmission; Diabetes; Machine learning;
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