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Well-Calibrated Regression Uncertainty in Medical Imaging with Deep Learning

机译:深入学习的医学成像中校准的回归不确定性

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The consideration of predictive uncertainty in medical imaging with deep learning is of utmost importance. We apply estimation of predictive uncertainty by variational Bayesian inference with Monte Carlo dropout to regression tasks and show why predictive uncertainty is systematically underestimated. We suggest using $ sigma $ {em scaling} with a single scalar value; a simple, yet effective calibration method for both aleatoric and epistemic uncertainty. The performance of our approach is evaluated on a variety of common medical regression data sets using different state-of-the-art convolutional network architectures. In all experiments, $sigma $ scaling is able to reliably recalibrate predictive uncertainty. It is easy to implement and maintains the accuracy. Well-calibrated uncertainty in regression allows robust rejection of unreliable predictions or detection of out-of-distribution samples.
机译:深入学习中医学成像的预测不确定性的思考至关重要。我们通过变分贝叶斯推论对回归任务的变差贝叶斯推论来估计预测性不确定性,并显示为什么系统低估了预测性不确定性。我们建议使用$ sigma $ { em缩放},单个标量值;一种简单但有效的校准方法,可实现炼术和认知不确定性。我们的方法的性能是在使用不同的最先进的卷积网络架构的各种常见医学回归数据集。在所有实验中,$ sigma $缩放能够可靠地重新校准预测性不确定性。它易于实施并保持准确性。回归中的良好的不确定性允许鲁棒拒绝不可靠的预测或检测分布外样品。

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