论文标题

基于归一化的术后小脑损害的自动检测和分割

Automatic Detection and Segmentation of Postoperative Cerebellar Damage Based on Normalization

论文作者

Zhang, Silu, McAfee, Stuart, Patay, Zoltan, Scoggins, Matthew

论文摘要

手术切除是小儿后窝肿瘤治疗的常见程序。但是,手术损伤通常是不可避免的,并且与术后并发症的关联尚不清楚。小脑损伤的可靠定位和衡量标准是研究损坏的小脑区域与术后神经系统结局之间的关系。现有的小脑归一化方法在术后扫描上不可靠,因此目前依靠手动标记来测量手术损伤的方法。在这项工作中,我们开发了一种可靠的算法,以使用术后3D T1磁共振成像自动检测并测量手术引起的小脑损伤。在我们提出的方法中,首先使用用于术后扫描的贝叶斯算法对正常的脑组织进行分割。接下来,通过将整个脑模板的非线性注册到天然空间的非线性注册来隔离小脑。然后使用从上一步得出的解剖学信息将隔离的小脑归一化到空间无偏的地图集(西装)空间。最后,通过比较标准化小脑和西装模板,在地图集空间中检测到损坏。我们根据人类期望的检查,评估了153例诊断患有髓母细胞瘤的患者的术后扫描损伤检测工具。我们还设计了一个模拟,以在不干预的情况下测试所提出的方法。我们的结果表明,所提出的方法在各种情况下具有出色的性能。

Surgical resection is a common procedure in the treatment of pediatric posterior fossa tumors. However, surgical damage is often unavoidable and its association with postoperative complications is not well understood. A reliable localization and measure of cerebellar damage is fundamental to study the relationship between the damaged cerebellar regions and postoperative neurological outcomes. Existing cerebellum normalization methods are not reliable on postoperative scans, therefore current approaches to measure surgical damage rely on manual labelling. In this work, we develop a robust algorithm to automatically detect and measure cerebellum damage due to surgery using postoperative 3D T1 magnetic resonance imaging. In our proposed approach, normal brain tissues are first segmented using a Bayesian algorithm customized for postoperative scans. Next, the cerebellum is isolated by nonlinear registration of a whole brain template to the native space. The isolated cerebellum is then normalized into the spatially unbiased atlas (SUIT) space using anatomical information derived from the previous step. Finally, the damage is detected in the atlas space by comparing the normalized cerebellum and the SUIT template. We evaluated our damage detection tool on postoperative scans of 153 patients diagnosed with medulloblastoma based on inspection by human expects. We also designed a simulation to test the proposed approach without human intervention. Our results show that the proposed approach has superior performance on various scenarios.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源