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Explainable AI for medical imaging: Explaining pneumothorax diagnoses with Bayesian Teaching

机译:用于医学成像的可解释AI:用贝叶斯教学解释气胸瘤诊断

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Limited expert time is a key bottleneck in medical imaging. Due to advances in image classification, AI can now serve as decision-support for medical experts, with the potential for great gains in radiologist productivity and, by extension, public health. However, these gains are contingent on building and maintaining experts' trust in the AI agents. Explainable AI may build such trust by helping medical experts to understand the AI decision processes behind diagnostic judgements. Here we introduce and evaluate explanations based on Bayesian Teaching, a formal account of explanation rooted in the cognitive science of human learning. We find that medical experts exposed to explanations generated by Bayesian Teaching successfully predict the AI's diagnostic decisions and are more likely to certify the AI for cases when the AI is correct than when it is wrong, indicating appropriate trust. These results show that Explainable AI can be used to support human-AI collaboration in medical imaging.
机译:有限的专业时间是医学成像的关键瓶颈。由于图像分类的进步,AI现在可以作为医疗专家的决策支持,潜在的放射科生产力和扩展,公共卫生的潜力。然而,这些收益取决于建筑物和维护专家对AI代理商的信任。可解释的ai可以通过帮助医学专家了解诊断判断背后的AI决策过程来构建这种信任。在这里,我们介绍和评估基于贝叶斯教学的解释,一个正式的解释,植根于人类学习的认知科学。我们发现,贝叶斯教学引发的解释中,拜耳教学引发的医学专家成功预测了AI的诊断决策,并且当AI正确的情况时,案件的案件更有可能认证AI,这表明适当的信任。这些结果表明,可解释的AI可用于支持医学成像中的人AI协作。

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