2021
DOI: 10.53759/0088/jbsha202101014
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A Critical Analysis of Biomedical Image Classification on Deep Learning

Abstract: In computer-aided diagnostic technologies, deep convolutional neural image compression classifications are a crucial method. Conventional methods rely primarily on form, colouring, or feature descriptors, and also their configurations, the majority of which would be problem-specific that has been depicted to be supplementary in image data, resulting in a framework that cannot symbolize high problem entities and has poor prototype generalization capability. Emerging Deep Learning (DL) techniques have made it po… Show more

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“…Expert systems. Lastly, the clinical expertise of medical practitioners may help increase the fairness of algorithms [96,99,100]. For example, reinforcement learning techniques can suggest several near-equivalent actions, then we can rely on clinicians to decide what actions can lead to the fairest outcome [22].…”
Section: Post-processingmentioning
confidence: 99%
“…Expert systems. Lastly, the clinical expertise of medical practitioners may help increase the fairness of algorithms [96,99,100]. For example, reinforcement learning techniques can suggest several near-equivalent actions, then we can rely on clinicians to decide what actions can lead to the fairest outcome [22].…”
Section: Post-processingmentioning
confidence: 99%