The wide range of research in deep learning-based medical image segmentation pushed the boundaries in a multitude of applications. A clinically relevant problem that received less attention is the handling of scans with irregular anatomy, e.g., after organ resection. State-of-the-art segmentation models often lead to organ hallucinations, i.e., false-positive predictions of organs, which cannot be alleviated by oversampling or post-processing. Motivated by the increasing need to develop robust deep learning models, we propose HALOS for abdominal organ segmentation in MR images that handles cases after organ resection surgery. To this end, we combine missing organ classification and multi-organ segmentation tasks into a multi-task model, yielding a classification-assisted segmentation pipeline. The segmentation network learns to incorporate knowledge about organ existence via feature fusion modules. Extensive experiments on a small labeled test set and large-scale UK Biobank data demonstrate the effectiveness of our approach in terms of higher segmentation Dice scores and near-to-zero false positive prediction rate.
翻译:深入学习医学图象分解的广泛研究在多种应用中拉开了界限。临床上一个不太受到注意的问题是处理非正常解剖的扫描,例如器官切除后。 艺术状态分解模型往往会导致器官幻觉,即器官的假阳性预测,不能通过过度采样或后处理来减轻。由于日益需要开发强有力的深层学习模型,我们建议HALLOS在器官切除手术后处理病例的MR图象中进行腹部器官分解。为此,我们将缺失的器官分类和多机分解任务结合到多功能模型中,产生一种分类辅助分解管道。分解网络学会通过特征融合模块吸收器官存在知识。在小型标签测试集和大型英国生物银行数据方面进行的广泛实验,显示了我们在更高分解Dice分数和近零至零度假阳性预测率方面的做法的有效性。</s>