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Quantifying the uncertainty of deep learning-based computer-aided diagnosis for patient safety : Current Directions in Biomedical Engineering

机译:量化基于深度学习的患者安全计算机辅助诊断的不确定性:生物医学工程的当前方向

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In this work, we discuss epistemic uncertainty estimation obtained by Bayesian inference in diagnostic classifiers and show that the prediction uncertainty highly correlates with goodness of prediction. We train the ResNet-18 image classifier on a dataset of 84,484 optical coherence tomography scans showing four different retinal conditions. Dropout is added before every building block of ResNet, creating an approximation to a Bayesian classifier. Monte Carlo sampling is applied with dropout at test time for uncertainty estimation. In Monte Carlo experiments, multiple forward passes are performed to get a distribution of the class labels. The variance and the entropy of the distribution is used as metrics for uncertainty. Our results show strong correlation with ρ = 0.99 between prediction uncertainty and prediction error. Mean uncertainty of incorrectly diagnosed cases was significantly higher than mean uncertainty of correctly diagnosed cases. Modeling of the prediction uncertainty in computer-aided diagnosis with deep learning yields more reliable results and is therefore expected to increase patient safety. This will help to transfer such systems into clinical routine and to increase the acceptance of machine learning in diagnosis from the standpoint of physicians and patients.
机译:在这项工作中,我们讨论了在诊断分类器中通过贝叶斯推理获得的认知不确定性估计,并表明预测不确定性与预测的良好程度高度相关。我们在显示484种不同视网膜情况的84,484光学相干断层扫描的数据集上训练ResNet-18图像分类器。在ResNet的每个构建块之前添加了Dropout,从而创建了贝叶斯分类器的近似值。蒙特卡洛采样在测试时与压差一起应用,以进行不确定性估计。在蒙特卡洛实验中,执行多次前向通过以获得类标签的分布。分布的方差和熵用作不确定性的度量。我们的结果表明,预测不确定性和预测误差之间的相关性与ρ= 0.99有很强的相关性。错误诊断病例的平均不确定度明显高于正确诊断病例的平均不确定度。通过深度学习对计算机辅助诊断中的预测不确定性进行建模可获得更可靠的结果,因此有望提高患者安全性。从医生和患者的角度来看,这将有助于将此类系统转换为临床程序,并增加机器学习在诊断中的接受度。

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