2022
DOI: 10.1007/s12652-021-03612-z
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Artificial intelligence in disease diagnosis: a systematic literature review, synthesizing framework and future research agenda

Abstract: Artificial intelligence can assist providers in a variety of patient care and intelligent health systems. Artificial intelligence techniques ranging from machine learning to deep learning are prevalent in healthcare for disease diagnosis, drug discovery, and patient risk identification. Numerous medical data sources are required to perfectly diagnose diseases using artificial intelligence techniques, such as ultrasound, magnetic resonance imaging, mammography, genomics, computed tomography scan, etc. Furthermo… Show more

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Cited by 424 publications
(238 citation statements)
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References 149 publications
(200 reference statements)
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“…This will help various financial institutions collect information about share prices so they can advise their clients on how to maximize earnings and reduce losses. In addition, it pushes the research community on a new path by illustrating how online algorithms can be combined with various technical markers and the ramifications of modifying various parameters [ 102 , 113 ].…”
Section: Resultsmentioning
confidence: 99%
“…This will help various financial institutions collect information about share prices so they can advise their clients on how to maximize earnings and reduce losses. In addition, it pushes the research community on a new path by illustrating how online algorithms can be combined with various technical markers and the ramifications of modifying various parameters [ 102 , 113 ].…”
Section: Resultsmentioning
confidence: 99%
“…Ans: Hyperspectral data have certain restrictions, as cited in Section 1 . Statistical classifiers initially addressed them, but the operations and analysis became much easier and more accurate after the invention of ML/DL strategies in a machine-dependent way [ 155 , 156 ]. The general advantages that researchers were provided by the ML/DL algorithms while dealing with HSIs are as follows: (i) easy dealing with high-dimensional data, that is, troubles of Hughes phenomenon removed [ 115 , 125 ]; (ii) equally manipulative to labeled and unlabeled samples [ 99 , 150 ]; (iii) precise and the meticulous choice of features [ 51 , 127 ]; (iv) high-end-precise models to deal with real hypercubes, hence top-notch classification accuracy [ 119 , 154 ]; v) removes overfitting, noises, and other hurdles to a much greater extent [ 120 , 147 ]; (vi) embedded spatial-spectral feature extraction and selection units [ 119 , 133 ]; (vii) mimics human brain to solve multiclass problems [ 136 , 138 ].…”
Section: Discussionmentioning
confidence: 99%
“…We believe that having standardized, reproducible and trustable CAD tools would ease their inclusion in patient’s clinical management practices. In fact, although thousands of AI-based tools have been developed with the potential of smoothing disease detection or outcome prediction, their real practical application is lagging [ 11 , 80 , 81 ]. The stability of Clinica methods for data preprocessing well couples with the flexibility of the procedures proposed by MONAI, setting up a highly versatile system for CAD development.…”
Section: Discussionmentioning
confidence: 99%