Beijing Neurosurgical Institute, Capital Medical University, Beijing, China.
Department of Interventional Neuroradiology, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.
Aging (Albany NY). 2021 May 10;13(9):13195-13210. doi: 10.18632/aging.203001.
We aimed to develop and validate a morphology-based radiomics signature nomogram for assessing the risk of intracranial aneurysm (IA) rupture. A total of 254 aneurysms in 105 patients with subarachnoid hemorrhage and multiple intracranial aneurysms from three centers were retrospectively reviewed and randomly divided into the derivation and validation cohorts. Radiomics morphological features were automatically extracted from digital subtraction angiography and selected by the least absolute shrinkage and selection operator algorithm to develop a radiomics signature. A radiomics signature-based nomogram was developed by incorporating the signature and traditional morphological features. The performance of calibration, discrimination, and clinical usefulness of the nomogram was assessed. Ten radiomics morphological features were selected to build the radiomics signature model, which showed better discrimination with an area under the curve (AUC) equal to 0.814 and 0.835 in the derivation and validation cohorts compared with 0.747 and 0.666 in the traditional model, which only include traditional morphological features. When radiomics signature and traditional morphological features were combined, the AUC increased to 0.842 and 0.849 in the derivation and validation cohorts, thus showing better performance in assessing aneurysm rupture risk. This novel model could be useful for decision-making and risk stratification for patients with IAs.
我们旨在开发和验证一种基于形态学的放射组学特征列线图,用于评估颅内动脉瘤(IA)破裂的风险。回顾性分析了来自三个中心的 105 例蛛网膜下腔出血和多发性颅内动脉瘤患者的 254 个动脉瘤,将其随机分为推导队列和验证队列。从数字减影血管造影中自动提取放射组学形态学特征,并通过最小绝对收缩和选择算子算法进行选择,以开发放射组学特征。通过将特征和传统形态学特征相结合,开发了基于放射组学特征的列线图。评估了列线图的校准、判别和临床实用性。选择了 10 个放射组学形态学特征来构建放射组学特征模型,与仅包含传统形态学特征的传统模型相比,该模型在推导和验证队列中的曲线下面积(AUC)分别为 0.814 和 0.835,具有更好的判别能力,而传统模型的 AUC 分别为 0.747 和 0.666。当将放射组学特征和传统形态学特征结合时,AUC 分别增加到推导和验证队列中的 0.842 和 0.849,因此在评估动脉瘤破裂风险方面表现出更好的性能。这种新模型可能对 IA 患者的决策和风险分层有用。