| Literature DB >> 33776178 |
Roohallah Alizadehsani1, Mohamad Roshanzamir2, Sadiq Hussain3, Abbas Khosravi1, Afsaneh Koohestani1, Mohammad Hossein Zangooei4, Moloud Abdar1, Adham Beykikhoshk5, Afshin Shoeibi6,7, Assef Zare8, Maryam Panahiazar9, Saeid Nahavandi1, Dipti Srinivasan10, Amir F Atiya11, U Rajendra Acharya12,13,14.
Abstract
Understanding the data and reaching accurate conclusions are of paramount importance in the present era of big data. Machine learning and probability theory methods have been widely used for this purpose in various fields. One critically important yet less explored aspect is capturing and analyzing uncertainties in the data and model. Proper quantification of uncertainty helps to provide valuable information to obtain accurate diagnosis. This paper reviewed related studies conducted in the last 30 years (from 1991 to 2020) in handling uncertainties in medical data using probability theory and machine learning techniques. Medical data is more prone to uncertainty due to the presence of noise in the data. So, it is very important to have clean medical data without any noise to get accurate diagnosis. The sources of noise in the medical data need to be known to address this issue. Based on the medical data obtained by the physician, diagnosis of disease, and treatment plan are prescribed. Hence, the uncertainty is growing in healthcare and there is limited knowledge to address these problems. Our findings indicate that there are few challenges to be addressed in handling the uncertainty in medical raw data and new models. In this work, we have summarized various methods employed to overcome this problem. Nowadays, various novel deep learning techniques have been proposed to deal with such uncertainties and improve the performance in decision making.Entities:
Keywords: Bayesian inference; Classification; Fuzzy systems; Machine learning; Monte Carlo simulation; Uncertainty
Year: 2021 PMID: 33776178 PMCID: PMC7982279 DOI: 10.1007/s10479-021-04006-2
Source DB: PubMed Journal: Ann Oper Res ISSN: 0254-5330 Impact factor: 4.820