一个更可解释的多发性硬化分类器

Valentine Wargnier-Dauchelle, T. Grenier, F. Durand-Dubief, F. Cotton, M. Sdika
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引用次数: 4

摘要

在过去的几年里,深度学习证明了它在医学成像诊断或分割方面的有效性。然而,要在诊所中充分整合,这些方法必须既达到良好的性能,又使地区从业者相信它们的可解释性。因此,可解释模型应该像领域专家那样根据临床相关信息做出决策。基于这个目的,我们提出了一个更可解释的分类器,专注于最广泛的自身免疫性神经炎症疾病:多发性硬化症。这种疾病的特点是在MRI(磁共振图像)上可见脑损伤,这是诊断的基础。使用集成梯度归因,我们表明使用脑组织概率图代替原始MR图像作为深度网络输入达到了一个更准确和可解释的分类器,其决策高度基于病变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A More Interpretable Classifier For Multiple Sclerosis
Over the past years, deep learning proved its effectiveness in medical imaging for diagnosis or segmentation. Nevertheless, to be fully integrated in clinics, these methods must both reach good performances and convince area practitioners about their interpretability. Thus, an interpretable model should make its decision on clinical relevant information as a domain expert would. With this purpose, we propose a more interpretable classifier focusing on the most widespread autoimmune neuroinflammatory disease: multiple sclerosis. This disease is characterized by brain lesions visible on MRI (Magnetic Resonance Images) on which diagnosis is based. Using Integrated Gradients attributions, we show that the utilization of brain tissue probability maps instead of raw MR images as deep network input reaches a more accurate and interpretable classifier with decision highly based on lesions.
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