A systematic review of trustworthy and explainable artificial intelligence in healthcare: Assessment of quality, bias risk, and data fusion
A. S. Albahri(Mustansiriyah University), Muhammet Deveci(Naval Academy), Noor S. Baqer(Ministry of Higher Education and Scientific Research), Ashish Gupta(Queensland University of Technology), Asma Salhi(Wesley Research Institute), Ali M. Duhaim(Thi Qar University), A. H. Alamoodi(Sultan Idris Education University), Chun Ouyang(Queensland University of Technology), Alhamzah Alnoor(Southern Technical University), Mohammed A. Fadhel(Thi Qar University), Laith Alzubaidi(Queensland University of Technology), Yuantong Gu(Queensland University of Technology), José Santamaría(Universidad de Jaén), O. S. Albahri(Mustansiriyah University), Jinshuai Bai(Queensland University of Technology)
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