论文标题
在7T MRI的多发性硬化症患者中自动检测皮质病变
Automated Detection of Cortical Lesions in Multiple Sclerosis Patients with 7T MRI
论文作者
论文摘要
多发性硬化症患者(MS)对皮质病变(CL)的自动检测是一项具有挑战性的任务,尽管其临床相关性,但受到的关注很少。准确检测小且稀缺的病变需要专门的序列以及高或超高的场MRI。对于基于7T多模式结构MRI的监督培训,两名专家生成了60名2014 CLS患者的地面真相分割口罩。我们实施了一个简化的3D U-NET,具有三个分辨率级别(3D U-NET-)。通过增加任务的复杂性(增加脑组织分割),而在训练过程中随机降低输入通道,我们与基线相比提高了性能。考虑到最小病变大小为0.75μl,我们达到了病变的皮质病变检测率为67%,假阳性率为42%。但是,据报道为假阳性的病变中有393个(24%)被专家确认为潜在的或确定的病变。这表明所提出的方法在CL手动分割的繁琐过程中支持专家的潜力。
The automated detection of cortical lesions (CLs) in patients with multiple sclerosis (MS) is a challenging task that, despite its clinical relevance, has received very little attention. Accurate detection of the small and scarce lesions requires specialized sequences and high or ultra-high field MRI. For supervised training based on multimodal structural MRI at 7T, two experts generated ground truth segmentation masks of 60 patients with 2014 CLs. We implemented a simplified 3D U-Net with three resolution levels (3D U-Net-). By increasing the complexity of the task (adding brain tissue segmentation), while randomly dropping input channels during training, we improved the performance compared to the baseline. Considering a minimum lesion size of 0.75 μL, we achieved a lesion-wise cortical lesion detection rate of 67% and a false positive rate of 42%. However, 393 (24%) of the lesions reported as false positives were post-hoc confirmed as potential or definite lesions by an expert. This indicates the potential of the proposed method to support experts in the tedious process of CL manual segmentation.