CVLGIVJan 12, 2020

Bridging the gap between AI and Healthcare sides: towards developing clinically relevant AI-powered diagnosis systems

arXiv:2001.03923v233 citations
AI Analysis

This addresses the problem of integrating AI into healthcare for clinicians and researchers, though it is incremental in bridging existing gaps.

The paper tackled the challenge of applying AI-based computer-aided diagnosis in clinical settings by identifying gaps between AI and healthcare through a workshop and survey, confirming the clinical relevance of pathology-aware GANs for data augmentation and physician training.

Despite the success of Convolutional Neural Network-based Computer-Aided Diagnosis research, its clinical applications remain challenging. Accordingly, developing medical Artificial Intelligence (AI) fitting into a clinical environment requires identifying/bridging the gap between AI and Healthcare sides. Since the biggest problem in Medical Imaging lies in data paucity, confirming the clinical relevance for diagnosis of research-proven image augmentation techniques is essential. Therefore, we hold a clinically valuable AI-envisioning workshop among Japanese Medical Imaging experts, physicians, and generalists in Healthcare/Informatics. Then, a questionnaire survey for physicians evaluates our pathology-aware Generative Adversarial Network (GAN)-based image augmentation projects in terms of Data Augmentation and physician training. The workshop reveals the intrinsic gap between AI/Healthcare sides and solutions on Why (i.e., clinical significance/interpretation) and How (i.e., data acquisition, commercial deployment, and safety/feeling safe). This analysis confirms our pathology-aware GANs' clinical relevance as a clinical decision support system and non-expert physician training tool. Our findings would play a key role in connecting inter-disciplinary research and clinical applications, not limited to the Japanese medical context and pathology-aware GANs.

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