Using machine learning to predict carotid artery symptoms from CT angiography: A radiomics and deep learning approach

IF 1.8 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Elizabeth P.V. Le , Mark Y.Z. Wong , Leonardo Rundo , Jason M. Tarkin , Nicholas R. Evans , Jonathan R. Weir-McCall , Mohammed M. Chowdhury , Patrick A. Coughlin , Holly Pavey , Fulvio Zaccagna , Chris Wall , Rouchelle Sriranjan , Andrej Corovic , Yuan Huang , Elizabeth A. Warburton , Evis Sala , Michael Roberts , Carola-Bibiane Schönlieb , James H.F. Rudd
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引用次数: 0

Abstract

Purpose

To assess radiomics and deep learning (DL) methods in identifying symptomatic Carotid Artery Disease (CAD) from carotid CT angiography (CTA) images. We further compare the performance of these novel methods to the conventional calcium score.

Methods

Carotid CT angiography (CTA) images from symptomatic patients (ischaemic stroke/transient ischaemic attack within the last 3 months) and asymptomatic patients were analysed. Carotid arteries were classified into culprit, non-culprit and asymptomatic. The calcium score was assessed using the Agatston method. 93 radiomic features were extracted from regions-of-interest drawn on 14 consecutive CTA slices. For DL, convolutional neural networks (CNNs) with and without transfer learning were trained directly on CTA slices. Predictive performance was assessed over 5-fold cross validated AUC scores. SHAP and GRAD-CAM algorithms were used for explainability.

Results

132 carotid arteries were analysed (41 culprit, 41 non-culprit, and 50 asymptomatic). For asymptomatic vs symptomatic arteries, radiomics attained a mean AUC of 0.96(± 0.02), followed by DL 0.86(± 0.06) and then calcium 0.79(± 0.08). For culprit vs non-culprit arteries, radiomics achieved a mean AUC of 0.75(± 0.09), followed by DL 0.67(± 0.10) and then calcium 0.60(± 0.02). For multi-class classification, the mean AUCs were 0.95(± 0.07), 0.79(± 0.05), and 0.71(± 0.07) for radiomics, DL and calcium, respectively. Explainability revealed consistent patterns in the most important radiomic features.

Conclusions

Our study highlights the potential of novel image analysis techniques in extracting quantitative information beyond calcification in the identification of CAD. Though further work is required, the transition of these novel techniques into clinical practice may eventually facilitate better stroke risk stratification.

利用机器学习从 CT 血管造影预测颈动脉症状:放射组学和深度学习方法
目的评估放射组学和深度学习(DL)方法从颈动脉 CT 血管造影(CTA)图像中识别无症状颈动脉疾病(CAD)的能力。我们进一步比较了这些新方法与传统钙评分的性能。方法 分析了有症状患者(过去 3 个月内缺血性中风/短暂性脑缺血发作)和无症状患者的颈动脉 CT 血管造影 (CTA) 图像。颈动脉被分为罪魁祸首型、非罪魁祸首型和无症状型。采用阿加特斯通方法评估钙化评分。从 14 个连续 CTA 切片上绘制的感兴趣区提取 93 个放射学特征。对于 DL,有无迁移学习的卷积神经网络(CNN)直接在 CTA 切片上进行训练。预测性能通过 5 倍交叉验证的 AUC 分数进行评估。结果 分析了 132 条颈动脉(41 条罪魁祸首动脉、41 条非罪魁祸首动脉和 50 条无症状动脉)。对于无症状动脉与有症状动脉,放射组学的平均 AUC 为 0.96(± 0.02),其次是 DL 0.86(± 0.06),然后是钙 0.79(± 0.08)。对于罪魁祸首与非罪魁祸首动脉,放射组学的平均 AUC 为 0.75(±0.09),其次是 DL 0.67(±0.10),然后是钙 0.60(±0.02)。在多类分类中,放射组学、DL 和钙的平均 AUC 分别为 0.95(± 0.07)、0.79(± 0.05)和 0.71(± 0.07)。我们的研究强调了新型图像分析技术在提取钙化以外的定量信息以识别 CAD 方面的潜力。尽管还需要进一步的工作,但将这些新技术应用于临床实践最终可能会促进更好的中风风险分层。
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来源期刊
European Journal of Radiology Open
European Journal of Radiology Open Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.10
自引率
5.00%
发文量
55
审稿时长
51 days
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