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Automated segmentation of chronic stroke lesions using LINDA: Lesion Identification with Neighborhood Data Analysis

机译:使用LINDA自动分割慢性中风病变:通过邻域数据分析进行病变识别

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摘要

The gold standard for identifying stroke lesions is manual tracing, a method that is known to be observer dependent and time consuming, thus impractical for big data studies. We propose LINDA (Lesion Identification with Neighborhood Data Analysis), an automated segmentation algorithm capable of learning the relationship between existing manual segmentations and a single T1-weighted MRI. A dataset of 60 left hemispheric chronic stroke patients is used to build the method and test it with k-fold and leave-one-out procedures. With respect to manual tracings, predicted lesion maps showed a mean dice overlap of 0.696±0.16, Hausdorff distance of 17.9±9.8mm, and average displacement of 2.54±1.38mm. The manual and predicted lesion volumes correlated at r=0.961. An additional dataset of 45 patients was utilized to test LINDA with independent data, achieving high accuracy rates and confirming its cross-institutional applicability. To investigate the cost of moving from manual tracings to automated segmentation, we performed comparative lesion-to-symptom mapping (LSM) on five behavioral scores. Predicted and manual lesions produced similar neuro-cognitive maps, albeit with some discussed discrepancies. Of note, region-wise LSM was more robust to the prediction error than voxel-wise LSM. Our results show that, while several limitations exist, our current results compete with or exceed the state-of-the-art, producing consistent predictions, very low failure rates, and transferable knowledge between labs. This work also establishes a new viewpoint on evaluating automated methods not only with segmentation accuracy but also with brain-behavior relationships. LINDA is made available online with trained models from over 100 patients.
机译:识别中风病灶的金标准是手动追踪,该方法依赖于观察者且耗时,因此在大数据研究中不切实际。我们提出LINDA(具有邻域数据分析功能的病变识别),这是一种自动分割算法,能够学习现有手动分割与单个T1加权MRI之间的关系。使用60位左半球慢性中风患者的数据集来构建该方法,并使用k倍和留一法进行测试。关于手动跟踪,预测的病灶图显示平均骰子重叠为0.696±0.16,Hausdorff距离为17.9±9.8mm,平均位移为2.54±1.38mm。手动和预测的病变体积在r = 0.961时相关。另有45名患者的数据集被用于以独立数据测试LINDA,达到了较高的准确率并确认了其跨机构的适用性。为了调查从手动跟踪过渡到自动分段的成本,我们对五个行为评分进行了病灶到症状的映射(LSM)。尽管存在一些讨论的差异,但预测的和手动的病变会产生相似的神经认知图。值得注意的是,区域级LSM比体素级LSM对预测误差的鲁棒性更高。我们的结果表明,尽管存在一些局限性,但我们当前的结果可以与现有技术相媲美或超过其最新水平,从而产生一致的预测,极低的故障率以及实验室之间可转让的知识。这项工作还建立了一种评估自动化方法的新观点,该方法不仅具有分割精度,而且还具有脑与行为的关系。可以在线访问LINDA,其中包含来自100多个患者的训练有素的模型。

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