论文标题

通过有监督的血管表面分类,情态不可知的颅内动脉瘤检测

Modality agnostic intracranial aneurysm detection through supervised vascular surface classification

论文作者

Bizjak, Žiga, Likar, Boštjan, Pernuš, Franjo, Špiclin, Žiga

论文摘要

颅内动脉瘤(IAS)通常是无症状的,因此经常在3D DSA,CTA和MRA等血管造影扫描中偶然发现。熟练的放射科医生通过视觉检测达到了88%的敏感性,考虑到普通人群中IAS的患病率为3-5%,这似乎不足。经过血管造影扫描训练和执行的深度学习模型似乎最适合IA检测,但是,目前跨不同方式的表现不足以用于临床应用。本文提出了一种新型的情态意义方法,用于检测IAS。首先,从血管造影中大致提取了血管结构的三角形表面。出于IA检测目的,将提取的表面随机分割成局部斑块,然后训练了基于深神经网络(DNN)的翻译,旋转和比例不变分类器。测试阶段是通过模仿几个随机位置的表面提取和分割的,然后将训练的DNN模型应用于分类,并将结果汇​​总到整个血管表面的IA检测热图中。为了训练和验证,提取的轮廓呈现给熟练的神经外科医生,后者标记了IAS的位置。使用基于57个DSA,5个CTA和5 MRA的3倍交叉验证对DNN进行训练和测试,并显示98.6%的灵敏度,每个图像为0.2假阳性检测。实验结果表明,与基于最新强度的方法相比,提出的方法不仅显着提高了检测敏感性和特异性,而且还是模态不可知论,因此更适合于临床应用。

Intracranial aneurysms (IAs) are generally asymptomatic and thus often discovered incidentally on angiographic scans like 3D DSA, CTA and MRA. Skilled radiologists achieved a sensitivity of 88% by means of visual detection, which seems inadequate considering that prevalence of IAs in general population is 3-5%. Deep learning models trained and executed on angiographic scans seem best-suited for IA detection, however, reported performances across different modalities is currently insufficient for clinical application. This paper presents a novel modality agnostic method for detection of IAs. First the triangulated surfaces of vascular structures were roughly extracted from the angiograms. For IA detection purpose, the extracted surfaces were randomly parcellated into local patches and then a translation, rotation and scale invariant classifier based on deep neural network (DNN) was trained. Test stage proceeded by mimicking the surface extraction and parcellation at several random locations, then the trained DNN model was applied for classification, and the results aggregated into IA detection heatmaps across entire vascular surface. For training and validation the extracted contours were presented to skilled neurosurgeon, who marked the locations of IAs. The DNN was trained and tested using three-fold cross-validation based on 57 DSAs, 5 CTAs and 5 MRAs and showed a 98.6% sensitivity at 0.2 false positive detections per image. Experimental results show that proposed approach not only significantly improved detection sensitivity and specificity compared to state-of-the-art intensity based methods, but is also modality agnostic and thus better suited for clinical application.

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