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StrokeNet:一种颅内动脉瘤分割和破裂风险预测的自动化方法。

StrokeNet: An automated approach for segmentation and rupture risk prediction of intracranial aneurysm.

机构信息

SMILES LAB, Department of Computer Science and Engineering, Oakland University, Rochester, MI, 48309, USA.

SMILES LAB, Department of Computer Science and Engineering, Oakland University, Rochester, MI, 48309, USA.

出版信息

Comput Med Imaging Graph. 2023 Sep;108:102271. doi: 10.1016/j.compmedimag.2023.102271. Epub 2023 Jul 22.

Abstract

Intracranial Aneurysms (IA) present a complex challenge for neurosurgeons as the risks associated with surgical intervention, such as Subarachnoid Hemorrhage (SAH) mortality and morbidity, may outweigh the benefits of aneurysmal occlusion in some cases. Hence, there is a critical need for developing techniques that assist physicians in assessing the risk of aneurysm rupture to determine which aneurysms require treatment. However, a reliable IA rupture risk prediction technique is currently unavailable. To address this issue, this study proposes a novel approach for aneurysm segmentation and multidisciplinary rupture prediction using 2D Digital Subtraction Angiography (DSA) images. The proposed method involves training a fully connected convolutional neural network (CNN) to segment aneurysm regions in DSA images, followed by extracting and fusing different features using a multidisciplinary approach, including deep features, geometrical features, Fourier descriptor, and shear pressure on the aneurysm wall. The proposed method also adopts a fast correlation-based filter approach to drop highly correlated features from the set of fused features. Finally, the selected fused features are passed through a Decision Tree classifier to predict the rupture severity of the associated aneurysm into four classes: Mild, Moderate, Severe, and Critical. The proposed method is evaluated on a newly developed DSA image dataset and on public datasets to assess its generalizability. The system's performance is also evaluated on DSA images annotated by expert neurosurgeons for the rupture risk assessment of the segmented aneurysm. The proposed system outperforms existing state-of-the-art segmentation methods, achieving an 85 % accuracy against annotated DSA images for the risk assessment of aneurysmal rupture.

摘要

颅内动脉瘤 (IA) 给神经外科医生带来了复杂的挑战,因为手术干预相关的风险,如蛛网膜下腔出血 (SAH) 死亡率和发病率,在某些情况下可能超过动脉瘤闭塞的益处。因此,迫切需要开发技术来帮助医生评估动脉瘤破裂的风险,以确定哪些动脉瘤需要治疗。然而,目前还没有可靠的 IA 破裂风险预测技术。针对这一问题,本研究提出了一种使用二维数字减影血管造影 (DSA) 图像进行动脉瘤分割和多学科破裂预测的新方法。该方法涉及训练全连接卷积神经网络 (CNN) 来分割 DSA 图像中的动脉瘤区域,然后采用多学科方法提取和融合不同特征,包括深度特征、几何特征、Fourier 描述符和动脉瘤壁上的剪切压力。所提出的方法还采用了快速相关滤波器方法从融合特征集中删除高度相关的特征。最后,选择融合特征通过决策树分类器将相关动脉瘤的破裂严重程度预测为四个等级:轻度、中度、重度和重度。所提出的方法在新开发的 DSA 图像数据集和公共数据集上进行评估,以评估其泛化能力。还评估了系统在专家神经外科医生注释的 DSA 图像上的性能,用于分割动脉瘤的破裂风险评估。所提出的系统在动脉瘤破裂风险评估方面优于现有的最先进的分割方法,对注释的 DSA 图像的准确率达到 85%。

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