Lo Iacono Francesca, Maragna Riccardo, Pontone Gianluca, Corino Valentina D A
Department of Electronics, Information and Bioengineering, Politecnico di Milano, Milan, Italy.
Department of Perioperative Cardiology and Cardiovascular Imaging, Centro Cardiologico Monzino IRCCS, Milan, Italy.
Front Radiol. 2023 Jun 16;3:1193046. doi: 10.3389/fradi.2023.1193046. eCollection 2023.
Cardiac amyloidosis (CA) shares similar clinical and imaging characteristics (e.g., hypertrophic phenotype) with aortic stenosis (AS), but its prognosis is generally worse than severe AS alone. Recent studies suggest that the presence of CA is frequent (1 out of 8 patients) in patients with severe AS. The coexistence of the two diseases complicates the prognosis and therapeutic management of both conditions. Thus, there is an urgent need to standardize and optimize the diagnostic process of CA and AS. The aim of this study is to develop a robust and reliable radiomics-based pipeline to differentiate the two pathologies.
Thirty patients were included in the study, equally divided between CA and AS. For each patient, a cardiac computed tomography (CCT) was analyzed by extracting 107 radiomics features from the LV wall. Feature robustness was evaluated by means of geometrical transformations to the ROIs and intra-class correlation coefficient (ICC) computation. Various correlation thresholds (0.80, 0.85, 0.90, 0.95, 1), feature selection methods [-value, least absolute shrinkage and selection operator (LASSO), semi-supervised LASSO, principal component analysis (PCA), semi-supervised PCA, sequential forwards selection] and machine learning classifiers (k-nearest neighbors, support vector machine, decision tree, logistic regression and gradient boosting) were assessed using a leave-one-out cross-validation. Data augmentation was performed using the synthetic minority oversampling technique. Finally, explainability analysis was performed by using the SHapley Additive exPlanations (SHAP) method.
Ninety-two radiomic features were selected as robust and used in the further steps. Best performances of classification were obtained using a correlation threshold of 0.95, PCA (keeping 95% of the variance, corresponding to 9 PCs) and support vector machine classifier reaching an accuracy, sensitivity and specificity of 0.93. Four PCs were found to be mainly dependent on textural features, two on first-order statistics and three on shape and size features.
These preliminary results show that radiomics might be used as non-invasive tool able to differentiate CA from AS using clinical routine available images.
心脏淀粉样变性(CA)与主动脉瓣狭窄(AS)具有相似的临床和影像学特征(如肥厚型表型),但其预后通常比单纯严重AS更差。最近的研究表明,严重AS患者中CA的发生率较高(8例患者中有1例)。这两种疾病的共存使两种疾病的预后和治疗管理变得复杂。因此,迫切需要规范和优化CA和AS的诊断流程。本研究的目的是开发一种强大且可靠的基于放射组学的流程,以区分这两种病理情况。
本研究纳入30例患者,CA组和AS组各15例。对每位患者的心脏计算机断层扫描(CCT)进行分析,从左心室壁提取107个放射组学特征。通过对感兴趣区域(ROI)进行几何变换和计算组内相关系数(ICC)来评估特征的稳健性。使用留一法交叉验证评估各种相关阈值(0.80、0.85、0.90、0.95、1)、特征选择方法(-值、最小绝对收缩和选择算子(LASSO)、半监督LASSO、主成分分析(PCA)、半监督PCA、顺序向前选择)和机器学习分类器(k近邻、支持向量机、决策树、逻辑回归和梯度提升)。使用合成少数过采样技术进行数据增强。最后,使用Shapley加性解释(SHAP)方法进行可解释性分析。
92个放射组学特征被选为稳健特征并用于后续步骤。使用0.95的相关阈值、PCA(保留95%的方差,对应9个主成分)和支持向量机分类器获得了最佳分类性能,准确率达到敏感性和特异性为0.93。发现4个主成分主要依赖于纹理特征,2个依赖于一阶统计量,3个依赖于形状和大小特征。
这些初步结果表明,放射组学可作为一种非侵入性工具,能够利用临床常规可用图像区分CA和AS。