Automated Classification of Atherosclerosis in Coronary Computed Tomography Angiography Images Based on Radiomics Study Using Automatic Machine Learning

M. M. Yunus, A. Sabarudin, Nurul Izzah Hamid, A. K. M. Yusof, P. Nohuddin, M. Karim
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引用次数: 2

Abstract

Coronary computed tomography angiography (CCTA) has been recognized as a widely used non-invasive coronary imaging approach, which provides the assessment of luminal stenosis. However, the current interpretation of CCTA images still depends on qualitative assessment, which is prone to subjective variability and considered time-consuming. Multiple studies were conducted, venturing into the application of machine learning models specifically used for the classification of atherosclerotic plaques. Hence, this experimental study was designed to classify the atherosclerotic plaques from CCTA images using Auto-WEKA. In this study, there were 202 patients’ original CCTA images collected retrospectively from Institut Jantung Negara (IJN). Semi-auto segmentation of three main coronary arteries was performed on the axial view of CCTA multi-slice images which resulted in a sum of 606 Volume of Interest (VOI). The radiomic features included the first-order, second-order, and shape-order features were extracted from each VOI and acted as an input dataset for the automated machine learning (AutoML) tool which was Auto-WEKA to perform the classification as either normal, calcified, mixed, or non-calcified atherosclerotic plaques. In this study, the best classifier suggested among 39 machine learning methods tested by Auto-WEKA was the random forest. The classification performance was evaluated in terms of multi-class classification of confusion matrix, recall (sensitivity), precision (PPV), F-measure, inverse F-measure, accuracy, and receiver operating characteristics (ROC) curve as well as area under the curve (AUC). Overall, the results showed the highest accuracy of 87% (F-measure: 0.69; Inverse F-Measure: 0.92; AUC: 0.9278) in classifying the calcified plaques using the best classifiers suggested by Auto-WEKA compared to normal, non-calcified and mixed plaques. For the normal plaques, it showed the accuracy of 83% (F-measure: 0.85; Inverse F-Measure: 0.80; AUC: 0.9172), while the non-calcified and mixed plaques showed the accuracy of 77% (F-measure: 0.43; Inverse F-Measure: 0.85; AUC: 0.7911) and 80% (F-measure: 0.54; Inverse F-Measure: 0.87; AUC: 0.7986), respectively. In conclusion, Auto-WEKA showed promising results in obtaining the best classifier among 39 machine learning for the classification of the calcified plaques compared to normal, non-calcified, and mixed plaques based on a CCTA-based radiomic dataset.
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基于自动机器学习的放射组学研究在冠状动脉ct血管造影图像中的动脉粥样硬化自动分类
冠状动脉计算机断层血管造影(CCTA)被认为是一种广泛使用的无创冠状动脉成像方法,可用于评估管腔狭窄。然而,目前CCTA图像的解释仍然依赖于定性评估,这很容易主观变化,并且被认为是耗时的。进行了多项研究,冒险应用专门用于动脉粥样硬化斑块分类的机器学习模型。因此,本实验研究旨在使用Auto-WEKA对CCTA图像中的动脉粥样硬化斑块进行分类。在本研究中,回顾性收集了202例患者的原始CCTA图像。在CCTA多层图像轴位上对三条主要冠状动脉进行半自动分割,得到606的感兴趣体积(Volume of Interest, VOI)。从每个VOI中提取放射学特征,包括一阶、二阶和形状顺序特征,并作为自动机器学习(AutoML)工具的输入数据集,该工具是Auto-WEKA,用于执行正常、钙化、混合或非钙化动脉粥样硬化斑块的分类。在本研究中,Auto-WEKA测试的39种机器学习方法中,建议的最佳分类器是随机森林。从混淆矩阵的多类分类、召回率(灵敏度)、精密度(PPV)、f -测度、反f -测度、准确度、受试者工作特征(ROC)曲线和曲线下面积(AUC)等方面对分类性能进行评价。总体而言,结果显示最高准确度为87% (F-measure: 0.69;反f值:0.92;AUC: 0.9278),使用Auto-WEKA建议的最佳分类器对钙化斑块进行分类,与正常斑块、非钙化斑块和混合斑块进行比较。对于正常斑块,其准确度为83% (F-measure: 0.85;反f值:0.80;AUC: 0.9172),而非钙化斑块和混合斑块的准确率为77% (F-measure: 0.43;反f值:0.85;AUC: 0.7911)和80% (F-measure: 0.54;反f值:0.87;AUC: 0.7986)。综上所述,Auto-WEKA在39个机器学习中获得了最好的分类器,用于基于ccta的放射性数据集对钙化斑块与正常、非钙化斑块和混合斑块进行分类。
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