Department of Radiology, The 2nd Affiliated Hospital of Guangzhou Medical University, Guangzhou 510260, China.
Department of Radiology, Research Institute for Translation Medicine on Molecular Function and Artificial Intelligence Imaging, The First People's Hospital of Foshan, Foshan 528000, China.
J Healthc Eng. 2021 Oct 31;2021:6024352. doi: 10.1155/2021/6024352. eCollection 2021.
Circle of Willis (CoW) is the most critical collateral pathway that supports the redistribution of blood supply in the brain. The variation of CoW is closely correlated with cerebral hemodynamic and cerebral vessel-related diseases. But what is responsible for CoW variation remains unclear. Moreover, the visual evaluation for CoW variation is highly time-consuming. In the present study, based on the computer tomography angiography (CTA) dataset from 255 patients, the correlation between the CoW variations with age, gender, and cerebral or cervical artery stenosis was investigated. A multitask convolutional neural network (CNN) was used to segment cerebral arteries automatically. The results showed the prevalence of variation of the anterior communicating artery (Aco) was higher in the normal senior group than in the normal young group and in females than in males. The changes in the prevalence of variations of individual segments were not demonstrated in the population with stenosis of the afferent and efferent arteries, so the critical factors for variation are related to genetic or physiological factors rather than pathological lesions. Using the multitask CNN model, complete cerebral and cervical arteries could be segmented and reconstructed in 120 seconds, and an average Dice coefficient of 78.2% was achieved. The segmentation accuracy for precommunicating part of anterior cerebral artery and posterior cerebral artery, the posterior communicating arteries, and Aco in CoW was 100%, 99.2%, 94%, and 69%, respectively. Artificial intelligence (AI) can be considered as an adjunct tool for detecting the CoW, particularly related to reducing workload and improving the accuracy of the visual evaluation. The study will serve as a basis for the following research to determine an individual's risk of stroke with the aid of AI.
Willis 环(CoW)是支持大脑血液供应重新分布的最重要的侧支通路。CoW 的变异与脑血流动力学和与血管相关的疾病密切相关。但是,导致 CoW 变异的原因尚不清楚。此外,CoW 变异的视觉评估非常耗时。在本研究中,基于 255 名患者的计算机断层血管造影(CTA)数据集,研究了 CoW 变异与年龄、性别以及脑或颈内动脉狭窄之间的相关性。使用多任务卷积神经网络(CNN)自动分割脑动脉。结果表明,正常老年人组前交通动脉(Aco)变异的患病率高于正常年轻人组,女性高于男性。在动脉流入和流出狭窄的人群中,各段变异的患病率变化并未显示出来,因此,变异的关键因素与遗传或生理因素有关,而与病理损伤无关。使用多任务 CNN 模型,可以在 120 秒内完成完整的脑和颈内动脉的分割和重建,平均 Dice 系数达到 78.2%。CoW 中前交通动脉和大脑前动脉前段、后交通动脉和 Aco 的分割准确率分别为 100%、99.2%、94%和 69%。人工智能(AI)可以被认为是检测 CoW 的辅助工具,特别是在减少工作量和提高视觉评估的准确性方面。本研究将为以下研究提供依据,通过人工智能确定个体的中风风险。