Siddhesh P Thakur, Jimit Doshi, Sarthak Pati, Sung Min Ha, Chiharu Sako, Sanjay Talbar, Uday Kulkarni, Christos Davatzikos, Guray Erus, Spyridon Bakas
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引用次数: 0
摘要
颅骨剥离是计算神经成像中重要的预处理步骤,直接影响后续分析。现有的颅骨剥离方法主要针对非病理性影响的大脑。因此,当应用于具有清晰可辨的病理(如脑肿瘤)的脑磁共振成像(MRI)扫描时,它们可能表现不佳。此外,尽管多参数MRI (mpMRI)扫描通常用于疑似脑肿瘤的患者,但现有方法仅侧重于使用t1加权MRI扫描。在这里,我们对已建立的用于语义分割的3D深度学习架构(即DeepMedic, 3D U-Net, FCN)的公开实现进行了性能评估,特别关注识别颅骨剥离方法,该方法在脑肿瘤扫描中表现良好,并且具有低计算足迹。我们已经确定了1796个mpMRI脑肿瘤扫描的回顾性数据集,具有相应的人工检查和验证的金标准脑组织分割,这些数据是在宾夕法尼亚大学医院的不同获取协议下在标准临床实践中获得的。我们的定量评估确定DeepMedic是表现最好的方法(Dice = 97.9, Hausdorf f = 95 = 2.68)。我们通过癌症成像表型学工具包(CaPTk)平台发布了这个预训练模型。
Skull-Stripping of Glioblastoma MRI Scans Using 3D Deep Learning.
Skull-stripping is an essential pre-processing step in computational neuro-imaging directly impacting subsequent analyses. Existing skull-stripping methods have primarily targeted non-pathologicallyaffected brains. Accordingly, they may perform suboptimally when applied on brain Magnetic Resonance Imaging (MRI) scans that have clearly discernible pathologies, such as brain tumors. Furthermore, existing methods focus on using only T1-weighted MRI scans, even though multi-parametric MRI (mpMRI) scans are routinely acquired for patients with suspected brain tumors. Here we present a performance evaluation of publicly available implementations of established 3D Deep Learning architectures for semantic segmentation (namely DeepMedic, 3D U-Net, FCN), with a particular focus on identifying a skull-stripping approach that performs well on brain tumor scans, and also has a low computational footprint. We have identified a retrospective dataset of 1,796 mpMRI brain tumor scans, with corresponding manually-inspected and verified gold-standard brain tissue segmentations, acquired during standard clinical practice under varying acquisition protocols at the Hospital of the University of Pennsylvania. Our quantitative evaluation identified DeepMedic as the best performing method (Dice = 97.9, Hausdorf f95 = 2.68). We release this pre-trained model through the Cancer Imaging Phenomics Toolkit (CaPTk) platform.