Segmentation of the Hyperdense Artery Sign on Noncontrast CT in Ischemic Stroke Using Artificial Intelligence.

IF 3.1 3区 医学 Q2 CLINICAL NEUROLOGY
Pyeong Eun Kim, Sue Young Ha, Myungjae Lee, Nakhoon Kim, Wi-Sun Ryu, Leonard Sunwoo, Beom Joon Kim
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引用次数: 0

Abstract

Background and purpose: We developed and validated an automated hyperdense artery sign (HAS) segmentation algorithm for the distal internal carotid artery and middle cerebral artery on noncontrast brain computed tomography (NCCT) using a multicenter dataset with independent annotation performed by two experts.

Methods: For training and external validation, we included patients with ischemic stroke who underwent concurrent NCCT and CT angiography between May 2011 and December 2022 at six hospitals and one hospital, respectively. For clinical validation, nonoverlapping patients admitted within 24 hours of onset were consecutively included between December 2020 and April 2023 from six hospitals. The model was trained using the 2D U-Net deep-learning architecture with manual annotation by two experts. We constructed models trained on datasets annotated individually by each expert, and an ensemble model using shuffled annotations by both experts. The performance of the models was compared using the area under the receiver operating characteristic curve (AUROC), sensitivity, and specificity.

Results: This study included 673, 365, and 774 patients in the training/internal validation, external validation, and clinical validation datasets, respectively, who were aged 68.8±13.2, 67.8±13.4, and 68.8±13.6 years (mean±standard deviation) and comprised 55.0%, 59.5%, and 57.6% males. The ensemble model achieved higher AUROC and sensitivity than the models trained on annotations by a single expert in the external validation. For the clinical validation dataset, the ensemble model exhibited an AUROC of 0.846 (95% confidence interval [CI], 0.819-0.871), sensitivity of 76.8% (95% CI, 65.1%-86.1%), and specificity of 88.5% (95% CI, 85.9%-90.8%). The predicted volume of the clot was correlated with the infarct volume in follow-up diffusion-weighted imaging (r=0.42, p<0.001).

Conclusions: Our new algorithm can rapidly and accurately identify the HAS, and so can facilitate the screening of potential patients requiring intervention.

Abstract Image

Abstract Image

Abstract Image

基于人工智能的缺血性卒中非对比CT高密度动脉征象分割。
背景和目的:我们开发并验证了一种自动高密度动脉征象(HAS)分割算法,该算法用于非对比脑计算机断层扫描(NCCT)上的颈内动脉远端和大脑中动脉,使用多中心数据集,由两位专家进行独立注释。方法:为了进行培训和外部验证,我们纳入了2011年5月至2022年12月期间分别在6家医院和1家医院同时接受NCCT和CT血管造影的缺血性卒中患者。为了临床验证,从2020年12月至2023年4月连续纳入6家医院24小时内入院的非重叠患者。模型采用2D U-Net深度学习架构进行训练,由两位专家手工标注。我们构建了由每个专家单独注释的数据集训练的模型,以及使用两个专家的洗牌注释的集成模型。采用受试者工作特征曲线下面积(AUROC)、灵敏度和特异性对模型的性能进行比较。结果:本研究纳入训练/内部验证、外部验证和临床验证数据集的患者分别为673例、365例和774例,年龄分别为68.8±13.2岁、67.8±13.4岁和68.8±13.6岁(平均±标准差),男性占55.0%、59.5%和57.6%。在外部验证中,集成模型的AUROC和灵敏度都高于单个专家对标注进行训练的模型。对于临床验证数据集,集合模型的AUROC为0.846(95%可信区间[CI], 0.819-0.871),敏感性为76.8% (95% CI, 65.1%-86.1%),特异性为88.5% (95% CI, 85.9%-90.8%)。在后续弥散加权成像中,预测的血栓体积与梗死体积相关(r=0.42, p)。结论:我们的新算法可以快速准确地识别HAS,从而有助于筛选需要干预的潜在患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Clinical Neurology
Journal of Clinical Neurology 医学-临床神经学
CiteScore
4.50
自引率
6.50%
发文量
0
审稿时长
>12 weeks
期刊介绍: The JCN aims to publish the cutting-edge research from around the world. The JCN covers clinical and translational research for physicians and researchers in the field of neurology. Encompassing the entire neurological diseases, our main focus is on the common disorders including stroke, epilepsy, Parkinson''s disease, dementia, multiple sclerosis, headache, and peripheral neuropathy. Any authors affiliated with an accredited biomedical institution may submit manuscripts of original articles, review articles, and letters to the editor. The JCN will allow clinical neurologists to enrich their knowledge of patient management, education, and clinical or experimental research, and hence their professionalism.
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