A data analytics approach to building a clinical decision support system for diabetic retinopathy: Developing and deploying a model ensemble

Decision Support Systems - Tập 101 - Trang 12-27 - 2017
Saeed Piri1, Dursun Delen2, Tieming Liu1, Hamed M. Zolbanin3
1Department of Industrial Engineering and Management, College of Engineering, Architecture and Technology, Oklahoma State University, Stillwater, OK 74078, United States
2Department of Management Science and Information Systems, Spears School of Business, Oklahoma State University, Tulsa, OK 74106, United States
3Department of Information Systems and Operations Management, Miller School of Business, Ball State University, Muncie, IN 47306, United States

Tài liệu tham khảo

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