Automatic segmentation of lung lesions in computer tomography has the potential to ease the burden of clinicians during the Covid-19 pandemic. Yet predictive deep learning models are not trusted in the clinical routine due to failing silently in out-of-distribution (OOD) data. We propose a lightweight OOD detection method that exploits the Mahalanobis distance in the feature space. The proposed approach can be seamlessly integrated into state-of-the-art segmentation pipelines without requiring changes in model architecture or training procedure, and can therefore be used to assess the suitability of pre-trained models to new data. We validate our method with a patch-based nnU-Net architecture trained with a multi-institutional dataset and find that it effectively detects samples that the model segments incorrectly.
翻译:在Covid-19大流行期间,计算机断层造影中肺损伤的自动分离有可能减轻临床医生的负担;然而,预测性的深层次学习模型由于在分配外数据方面无动于衷而不能被信任在临床常规中;我们建议了一种轻量OOD检测方法,利用特征空间的Mahalanobis距离;拟议方法可以无缝地融入最新断层管道,而不需要改变模型结构或培训程序,因此可以用来评估预先培训的模型是否适合新数据;我们用一个经过多机构数据集培训的补丁型的NNU网络结构验证了我们的方法,发现它有效地检测了模型中不正确的样本。