Transfer learning techniques for medical image analysis: A review

Biocybernetics and Biomedical Engineering - Tập 42 Số 1 - Trang 79-107 - 2022
Padmavathi Kora1, Chui Ping Ooi2, Oliver Faust3, U. Raghavendra4, Anjan Gudigar4, Wai Yee Chan5, K. Meenakshi1, K. Swaraja1, Paweł Pławiak6,7, U. Rajendra Acharya8,9,10,2
1Gokaraju Rangaraju Institute of Engineering & Technology, Hyderabad, India
2School of Science and Technology, Singapore University of Social Sciences, Singapore
3Engineering and Mathematics, Sheffield Hallam University, Sheffield, UK
4Department of Instrumentation and Control Engineering, Manipal Institute of Technology, Manipal Academy of Higher Education, Manipal, India
5Department of Biomedical Imaging, Universiti Malaya Research Imaging Centre, Faculty of Medicine, Universiti Malaya, Malaysia
6Department of Computer Science, Faculty of Computer Science and Telecommunications, Cracow University of Technology, Krakow, Poland
7Institute of Theoretical and Applied Informatics, Polish Academy of Sciences, Gliwice, Poland
8Department of Biomedical Informatics and Medical Engineering, Asia University, Taichung, Taiwan
9International Research Organization for Advanced Science and Technology (IROAST), Kumamoto University, Kumamoto, Japan
10School of Engineering, Ngee Ann Polytechnic, Clementi, Singapore

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