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Global and Local Interpretability for Cardiac MRI Classification

机译:心脏MRI分类的全局和局部可解释性

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Deep learning methods for classifying medical images have demonstrated impressive accuracy in a wide range of tasks but often these models are hard to interpret, limiting their applicability in clinical practice. In this work we introduce a convolutional neural network model for identifying disease in temporal sequences of cardiac MR segmentations which is interpretable in terms of clinically familiar measurements. The model is based around a variational autoencoder, reducing the input into a low-dimensional latent space in which classification occurs. We then use the recently developed 'concept activation vector' technique to associate concepts which are diagnostically meaningful (eg. clinical biomarkers such as 'low left-ventricular ejection fraction') to certain vectors in the latent space. These concepts are then qualitatively inspected by observing the change in the image domain resulting from interpolations in the latent space in the direction of these vectors. As a result, when the model classifies images it is also capable of providing naturally interpretable concepts relevant to that classification and demonstrating the meaning of those concepts in the image domain. Our approach is demonstrated on the UK Biobank cardiac MRI dataset where we detect the presence of coronary artery disease.
机译:用于对医学图像进行分类的深度学习方法已在许多任务中显示出令人印象深刻的准确性,但这些模型通常难以解释,从而限制了它们在临床实践中的适用性。在这项工作中,我们介绍了一种用于在心脏MR分割的时间序列中识别疾病的卷积神经网络模型,这可以通过临床上熟悉的测量方法来解释。该模型基于可变自动编码器,可将输入减少到发生分类的低维潜在空间中。然后,我们使用最近开发的“概念激活向量”技术将具有诊断意义的概念(例如临床生物标志物,例如“左心室射血分数低”)与潜在空间中的某些向量相关联。然后,通过观察潜在空间中沿这些矢量方向进行插值而产生的图像域变化,对这些概念进行定性检查。结果,当模型对图像进行分类时,它还能够提供与该分类相关的自然可解释的概念,并在图像域中证明这些概念的含义。我们的方法在UK Biobank心脏MRI数据集上得到了证明,在该数据集中我们检测了冠状动脉疾病的存在。

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