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Incorporating Task-Specific Structural Knowledge into CNNs for Brain Midline Shift Detection

机译:将特定于特定的结构知识纳入CNN,用于脑中线移位检测

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Midline shift (MLS) is a well-established factor used for outcome prediction in traumatic brain injury, stroke and brain tumors. The importance of automatic estimation of MLS was recently highlighted by ACR Data Science Institute. In this paper we introduce a novel deep learning based approach for the problem of MLS detection, which exploits task-specific structural knowledge. We evaluate our method on a large dataset containing heterogeneous images with significant MLS and show that its mean error approaches the inter-expert variability. Finally, we show the robustness of our approach by validating it on an external dataset, acquired during routine clinical practice.
机译:中线移位(MLS)是用于创伤性脑损伤,中风和脑肿瘤的结果预测的良好因素。 ACR数据科学研究所最近突出了MLS自动估计的重要性。在本文中,我们介绍了一种新的基于深度学习的MLS检测问题方法,这利用了特定于任务的结构知识。我们在包含具有重要MLS的异构图像的大型数据集上评估我们的方法,并表明其平均误差接近专业间变异性。最后,我们通过在外部数据集中验证,我们展示了我们方法的鲁棒性,在常规临床实践中获得。

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