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The combination of medical imaging and deep learning has significantly improved diagnostic and prognostic capabilities in the healthcare domain. Nevertheless, the inherent complexity of deep learning models poses challenges in understanding their decision-making processes. Interpretability and visualization techniques have emerged as crucial tools to unravel the black-box nature of these models, providing insights into their inner workings and enhancing trust in their predictions. This survey paper comprehensively examines various interpretation and visualization techniques applied to deep learning models in medical imaging. The paper reviews methodologies, discusses their applications, and evaluates their effectiveness in enhancing the interpretability, reliability, and clinical relevance of deep learning models in medical image analysis.
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Deepshikha Bhati
Kent State University
Fnu Neha
Kent State University
Md Amiruzzaman
Kent State University
Kent State University
West Chester University
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Bhati et al. (Mon,) studied this question.
synapsesocial.com/papers/68e5c971b6db64358755fb36 — DOI: https://doi.org/10.20944/preprints202408.0765.v1