Recently, deep learning has achieved remarkable successes in medical image analysis. Although deep neural networks generate clinically important predictions, they have inherent uncertainty. Such uncertainty is a major barrier to report these predictions with confidence. In this paper, we propose a novel yet simple Bayesian inference approach called SoftDropConnect (SDC) to quantify the network uncertainty in medical imaging tasks with gliomas segmentation and metastases classification as initial examples. Our key idea is that during training and testing SDC modulates network parameters continuously so as to allow affected information processing channels still in operation, instead of disabling them as Dropout or DropConnet does. When compared with three popular Bayesian inference methods including Bayes By Backprop, Dropout, and DropConnect, our SDC method (SDC-W after optimization) outperforms the three competing methods with a substantial margin. Quantitatively, our proposed method generates substantial improvements in prediction accuracy (by 3.4%, 2.5%, and 6.7% respectively for whole tumor segmentation in terms of dice score; and by 11.7%, 3.9%, and 8.7% respectively for brain metastases classification) and greatly reduced epistemic and aleatoric uncertainties. Our approach promises to deliver better diagnostic performance and make medical AI imaging more explainable and trustworthy.
翻译:最近,深层次的学习在医学图像分析方面取得了显著的成功。虽然深层神经网络产生了临床上重要的预测,但它们具有内在的不确定性。这种不确定性是令人有信心地报告这些预测的一个主要障碍。在本文中,我们提出了一种创新的、简单贝叶斯式的推论方法,叫做SoftDropconnect(SDC),用微粒分解和转移分类作为初步例子,量化医学成像任务中的网络不确定性。我们的主要想法是,在培训和测试SDC调节网络参数时,持续地使受影响的信息处理渠道能够继续运作,而不是像丢弃或丢弃孔网那样使其无法正常运行。与三种流行的巴伊斯式推论方法相比,包括Bayes Bayes Backprocroad, dropout, 和Droppleconnect(SDC-W),我们SDC方法(SDC-W)比三种竞合方法高出相当大的余地。从数量上看,我们建议的方法在预测准确性方面产生了大幅度的改进(3.4%、2.5%和6.7 % ),用整个肿瘤分解分解的方法分别降低了了我们的诊断和诊断性方法。