Ceballos-Arroyo Alberto M, Nguyen Hieu T, Zhu Fangrui, Yadav Shrikanth M, Kim Jisoo, Qin Lei, Young Geoffrey, Jiang Huaizu
Northeastern University.
Brigham and Women's Hospital.
Med Image Comput Comput Assist Interv. 2024 Oct;15005:754-765. doi: 10.1007/978-3-031-72086-4_71. Epub 2024 Oct 4.
Manual detection of intracranial aneurysms (IAs) in computed tomography (CT) scans is a complex, time-consuming task even for expert clinicians, and automating the process is no less challenging. Critical difficulties associated with detecting aneurysms include their small (yet varied) size compared to scans and a high potential for false positive (FP) predictions. To address these issues, we propose a 3D, multi-scale neural architecture that detects aneurysms via a deformable attention mechanism that operates on vessel distance maps derived from vessel segmentations and 3D features extracted from the layers of a convolutional network. Likewise, we reformulate aneurysm segmentation as bounding cuboid prediction using binary cross entropy and three localization losses (location, size, IoU). Given three validation sets comprised of 152/138/38 CT scans and containing 126/101/58 aneurysms, we achieved a Sensitivity of 91.3%/97.0%/74.1% @ FP rates 0.53/0.56/0.87, with Sensitivity around 80% on small aneurysms. Manual inspection of outputs by experts showed our model only tends to miss aneurysms located in unusual locations. Code and model weights are available online.
即使对于专业临床医生而言,在计算机断层扫描(CT)中手动检测颅内动脉瘤(IA)也是一项复杂且耗时的任务,而实现该过程的自动化同样具有挑战性。与动脉瘤检测相关的关键难题包括:与扫描图像相比,动脉瘤尺寸较小(且大小各异),以及假阳性(FP)预测的可能性很高。为了解决这些问题,我们提出了一种三维多尺度神经架构,该架构通过可变形注意力机制检测动脉瘤,该机制作用于从血管分割得到的血管距离图以及从卷积网络各层提取的三维特征。同样,我们将动脉瘤分割重新定义为使用二元交叉熵和三种定位损失(位置、大小、交并比)的边界长方体预测。在由152/138/38例CT扫描组成且包含126/101/58个动脉瘤的三个验证集上,我们在FP率为0.53/0.56/0.87时实现了91.3%/97.0%/74.1%的灵敏度,对于小动脉瘤,灵敏度约为80%。专家对输出结果的人工检查表明,我们的模型仅倾向于遗漏位于不寻常位置的动脉瘤。代码和模型权重可在线获取。