Medical Physics Unit, Gemelli Molise Hospital, Università Cattolica del Sacro Cuore, 86100, Campobasso, Italy.
Radiation Oncology Unit, Gemelli Molise Hospital, Università Cattolica del Sacro Cuore, Campobasso, Italy.
Radiol Med. 2022 Jul;127(7):743-753. doi: 10.1007/s11547-022-01505-5. Epub 2022 Jun 9.
Radiomics is a quantitative method able to analyze a high-throughput extraction of minable imaging features. Herein, we aim to develop a CT angiography-based radiomics analysis and machine learning model for carotid plaques to discriminate vulnerable from no vulnerable plaques.
Thirty consecutive patients with carotid atherosclerosis were enrolled in this pilot study. At surgery, a binary classification of plaques was adopted ("hard" vs "soft"). Feature extraction was performed using the R software package Moddicom. Pairwise feature interdependencies were evaluated using the Spearman rank correlation coefficient. A univariate analysis was performed to assess the association between each feature and the plaque classification and chose top-ranked features. The feature predictive value was investigated using binary logistic regression. A stepwise backward elimination procedure was performed to minimize the Akaike information criterion (AIC). The final significant features were used to build the models for binary classification of carotid plaques, including logistic regression (LR), support vector machine (SVM), and classification and regression tree analysis (CART). All models were cross-validated using fivefold cross validation. Class-specific accuracy, precision, recall and F-measure evaluation metrics were used to quantify classifier output quality.
A total of 230 radiomics features were extracted from each plaque. Pairwise Spearman correlation between features reported a high level of correlations, with more than 80% correlating with at least one other feature at |ρ|> 0.8. After a stepwise backward elimination procedure, the entropy and volume features were found to be the most significantly associated with the two plaque groups (p < 0.001), with AUCs of 0.92 and 0.96, respectively. The best performance was registered by the SVM classifier with the RBF kernel, with accuracy, precision, recall and F-score equal to 86.7, 92.9, 81.3 and 86.7%, respectively. The CART classification tree model for the entropy and volume features model achieved 86.7% well-classified plaques and an AUC of 0.987.
This pilot study highlighted the potential of CTA-based radiomics and machine learning to discriminate plaque composition. This new approach has the potential to provide a reliable method to improve risk stratification in patients with carotid atherosclerosis.
放射组学是一种能够分析高通量挖掘成像特征的定量方法。在此,我们旨在开发一种基于 CT 血管造影的放射组学分析和机器学习模型,以区分易损斑块和非易损斑块。
本研究纳入了 30 例连续的颈动脉粥样硬化患者。在手术中,采用二元分类法(“硬”与“软”)对斑块进行分类。特征提取使用 R 软件包 Moddicom 完成。采用 Spearman 秩相关系数评估特征之间的两两相关性。进行单变量分析以评估每个特征与斑块分类之间的关联,并选择排名靠前的特征。使用二元逻辑回归评估特征的预测价值。采用逐步向后消除法以最小化赤池信息量准则(AIC)。最后,使用有统计学意义的特征建立颈动脉斑块的二元分类模型,包括逻辑回归(LR)、支持向量机(SVM)和分类回归树分析(CART)。所有模型均采用五重交叉验证进行交叉验证。使用类特异性准确性、精度、召回率和 F1 度量评估指标来量化分类器的输出质量。
从每个斑块中提取了 230 个放射组学特征。特征之间的两两 Spearman 相关性报告显示高度相关,超过 80%的特征与至少一个其他特征的相关性大于 |ρ|>0.8。经过逐步向后消除法,发现熵和体积特征与两组斑块的相关性最大(p<0.001),其 AUC 分别为 0.92 和 0.96。基于 RBF 核的 SVM 分类器表现最佳,其准确性、精度、召回率和 F 分数分别为 86.7%、92.9%、81.3%和 86.7%。基于熵和体积特征的 CART 分类树模型对分类良好的斑块的准确率为 86.7%,AUC 为 0.987。
本研究初步证实了基于 CTA 的放射组学和机器学习在区分斑块成分方面的潜力。这种新方法有可能为颈动脉粥样硬化患者的风险分层提供一种可靠的方法。