2019
DOI: 10.1016/s2589-7500(19)30108-6
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Automated deep learning design for medical image classification by health-care professionals with no coding experience: a feasibility study

Abstract: Background Deep learning has the potential to transform health care; however, substantial expertise is required to train such models. We sought to evaluate the utility of automated deep learning software to develop medical image diagnostic classifiers by health-care professionals with no coding-and no deep learning-expertise. MethodsWe used five publicly available open-source datasets: retinal fundus images (MESSIDOR); optical coherence tomography (OCT) images (Guangzhou Medical University and Shiley Eye Insti… Show more

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Cited by 226 publications
(135 citation statements)
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References 26 publications
(34 reference statements)
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“…The full potential of ML/DL systems (which essentially constitutes software as a medical device) in actual healthcare settings can only be realized by addressing regulatory and policy challenges. The literature suggests that the regulatory guidelines are needed for both medical ML/DL systems and their integration in actual clinical settings [131]. Therefore, the integration of AIempowered ML/DL systems in the actual clinical environment should be in compliance with the policies and regulations defined by the government and regulatory agencies.…”
Section: ) Regulatory and Policy Challengesmentioning
confidence: 99%
“…The full potential of ML/DL systems (which essentially constitutes software as a medical device) in actual healthcare settings can only be realized by addressing regulatory and policy challenges. The literature suggests that the regulatory guidelines are needed for both medical ML/DL systems and their integration in actual clinical settings [131]. Therefore, the integration of AIempowered ML/DL systems in the actual clinical environment should be in compliance with the policies and regulations defined by the government and regulatory agencies.…”
Section: ) Regulatory and Policy Challengesmentioning
confidence: 99%
“…For deep learning, various neural architecture search (NAS) approaches have been proposed to automate the network engineering process [251] , [278] , [279] . First successful applications have recently been reported in medical imaging [252] , [280] , [281] , suggesting NAS holds great potential also for bioimage analysis.…”
Section: Discussionmentioning
confidence: 99%
“…Deep learning exploits the technique of multiple nonlinear processing of layers for supervised or unsupervised learning and tries to learn from hierarchical descriptions of data. Deep learning has been applied to industries from automated driving to medical devices [41]. Wuest et al distinguished supervised and unsupervised machine learning algorithms.…”
Section: Machine Learning Algorithmsmentioning
confidence: 99%