Ke Tian, Zhenyao Chang, Yi Yang, Peng Liu, Mahmud Mossa-Basha, Michael R Levitt, Dihua Zhai, Danyang Liu, Hao Li, Yang Liu, Jinhao Zhang, Cijian Cao, Chengcheng Zhu, Peng Jiang, Qingyuan Liu, Hongwei He, Yuanqing Xia
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This study aimed to develop and validate a deep-learning model using computed tomography angiography (CTA) for classifying irregular shapes and measuring UIA size.</p><p><strong>Methods: </strong>CTA and 3DRA of UIA patients from a referral hospital were included as a derivation set, with images from multiple medical centers as an external test set. Senior investigators manually measured irregular shape and aneurysm size on 3DRA as the ground truth. Convolutional neural network (CNN) models were employed to develop the CTA-based model for irregular shape classification and size measurement. Model performance for UIA size and irregular shape classification was evaluated by intraclass correlation coefficient (ICC) and area under the curve (AUC), respectively. Junior clinicians' performance in irregular shape classification was compared before and after using the model.</p><p><strong>Results: </strong>The derivation set included CTA images from 307 patients with 365 UIAs. The test set included 305 patients with 350 UIAs. The AUC for irregular shape classification of this model in the test set was 0.87, and the ICC of aneurysm size measurement was 0.92, compared with 3DRA. With the model's help, junior clinicians' performance for irregular shape classification was significantly improved (AUC 0.86 before vs 0.97 after, P<0.001).</p><p><strong>Conclusion: </strong>This study provided a deep-learning model based on CTA for irregular shape classification and size measurement of UIAs with high accuracy and external validity. 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引用次数: 0
摘要
背景:人工智能可以帮助识别不规则的形状和大小,对于治疗未破裂的颅内动脉瘤(UIAs)至关重要。然而,现有的人工智能工具缺乏可靠的UIA形状不规则分类和针对金标准三维旋转血管造影(3DRA)的验证。本研究旨在开发和验证使用计算机断层血管造影(CTA)进行不规则形状分类和测量UIA大小的深度学习模型。方法:将来自转诊医院的UIA患者的CTA和3DRA作为衍生集,将来自多个医疗中心的图像作为外部测试集。高级调查人员在3DRA上手动测量不规则形状和动脉瘤大小作为地面事实。采用卷积神经网络(CNN)模型建立基于cta的不规则形状分类和尺寸测量模型。分别用类内相关系数(ICC)和曲线下面积(AUC)评价模型对UIA大小和不规则形状分类的性能。比较应用该模型前后初级临床医生在不规则形状分类中的表现。结果:衍生集包括307例患者365例UIAs的CTA图像。测试集包括305例患者,350例uia。与3DRA相比,该模型在测试集中不规则形状分类的AUC为0.87,动脉瘤尺寸测量的ICC为0.92。在该模型的帮助下,初级临床医生在不规则形状分类方面的表现明显提高(AUC为0.86 vs 0.97)。结论:本研究提供了一种基于CTA的深度学习模型,用于uia不规则形状分类和尺寸测量,具有较高的准确性和外部效度。该模型可用于提高阅读器的性能。
CTA-based deep-learning integrated model for identifying irregular shape and aneurysm size of unruptured intracranial aneurysms.
Background: Artificial intelligence can help to identify irregular shapes and sizes, crucial for managing unruptured intracranial aneurysms (UIAs). However, existing artificial intelligence tools lack reliable classification of UIA shape irregularity and validation against gold-standard three-dimensional rotational angiography (3DRA). This study aimed to develop and validate a deep-learning model using computed tomography angiography (CTA) for classifying irregular shapes and measuring UIA size.
Methods: CTA and 3DRA of UIA patients from a referral hospital were included as a derivation set, with images from multiple medical centers as an external test set. Senior investigators manually measured irregular shape and aneurysm size on 3DRA as the ground truth. Convolutional neural network (CNN) models were employed to develop the CTA-based model for irregular shape classification and size measurement. Model performance for UIA size and irregular shape classification was evaluated by intraclass correlation coefficient (ICC) and area under the curve (AUC), respectively. Junior clinicians' performance in irregular shape classification was compared before and after using the model.
Results: The derivation set included CTA images from 307 patients with 365 UIAs. The test set included 305 patients with 350 UIAs. The AUC for irregular shape classification of this model in the test set was 0.87, and the ICC of aneurysm size measurement was 0.92, compared with 3DRA. With the model's help, junior clinicians' performance for irregular shape classification was significantly improved (AUC 0.86 before vs 0.97 after, P<0.001).
Conclusion: This study provided a deep-learning model based on CTA for irregular shape classification and size measurement of UIAs with high accuracy and external validity. The model can be used to improve reader performance.
期刊介绍:
The Journal of NeuroInterventional Surgery (JNIS) is a leading peer review journal for scientific research and literature pertaining to the field of neurointerventional surgery. The journal launch follows growing professional interest in neurointerventional techniques for the treatment of a range of neurological and vascular problems including stroke, aneurysms, brain tumors, and spinal compression.The journal is owned by SNIS and is also the official journal of the Interventional Chapter of the Australian and New Zealand Society of Neuroradiology (ANZSNR), the Canadian Interventional Neuro Group, the Hong Kong Neurological Society (HKNS) and the Neuroradiological Society of Taiwan.