Luo Sha, Wen Li, Jing Yang, Xu Jingxu, Huang Chencui, Dong Zhang, Wang Guangxian
Department of Radiology, Xinqiao Hospital, The Second Affiliated Hospital of Army Medical University, Chongqing, China.
Huiying Medical Technology Co., Ltd., Beijing, China.
Front Neurol. 2024 Jun 19;15:1398225. doi: 10.3389/fneur.2024.1398225. eCollection 2024.
It is vital to accurately and promptly distinguish unstable from stable intracranial aneurysms (IAs) to facilitate treatment optimization and avoid unnecessary treatment. The aim of this study is to develop a simple and effective predictive model for the clinical evaluation of the stability of IAs.
In total, 1,053 patients with 1,239 IAs were randomly divided the dataset into training (70%) and internal validation (30%) datasets. One hundred and ninety seven patients with 229 IAs from another hospital were evaluated as an external validation dataset. The prediction models were developed using machine learning based on clinical information, manual parameters, and radiomic features. In addition, a simple model for predicting the stability of IAs was developed, and a nomogram was drawn for clinical use.
Fourteen machine learning models exhibited excellent classification performance. Logistic regression Model E (clinical information, manual parameters, and radiomic shape features) had the highest AUC of 0.963 (95% CI 0.943-0.980). Compared to manual parameters, radiomic features did not significantly improve the identification of unstable IAs. In the external validation dataset, the simplified model demonstrated excellent performance (AUC = 0.950) using only five manual parameters.
Machine learning models have excellent potential in the classification of unstable IAs. The manual parameters from CTA images are sufficient for developing a simple and effective model for identifying unstable IAs.
准确、及时地区分颅内动脉瘤(IA)的稳定性与不稳定性对于优化治疗和避免不必要的治疗至关重要。本研究的目的是开发一种简单有效的预测模型,用于IA稳定性的临床评估。
总共1053例患有1239个IA的患者被随机将数据集分为训练集(70%)和内部验证集(30%)。将来自另一家医院的197例患有229个IA的患者作为外部验证数据集进行评估。基于临床信息、手动参数和影像组学特征,使用机器学习开发预测模型。此外,还开发了一个用于预测IA稳定性的简单模型,并绘制了列线图以供临床使用。
14种机器学习模型表现出优异的分类性能。逻辑回归模型E(临床信息、手动参数和影像组学形状特征)的AUC最高,为0.963(95%CI 0.943-0.980)。与手动参数相比,影像组学特征并未显著改善对不稳定IA的识别。在外部验证数据集中,简化模型仅使用五个手动参数就表现出优异的性能(AUC = 0.950)。
机器学习模型在不稳定IA的分类方面具有优异的潜力。CTA图像中的手动参数足以开发一个简单有效的模型来识别不稳定IA。