Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:2266-2269. doi: 10.1109/EMBC46164.2021.9630654.
Carotid artery disease is an inflammatory condition involving the deposition and accumulation of lipid species and leucocytes from blood into the arterial wall, which causes the narrowing of the carotid arteries on either side of the neck. Different imaging modalities can by implemented to determine the presence and the location of carotid artery stenosis, such as carotid ultrasound, computed tomography angiography (CTA), magnetic resonance angiography (MRA), or cerebral angiography. However, except of the presence and the degree of stenosis of the carotid arteries, the vulnerability of the carotid atherosclerotic plaques constitutes a significant factor for the progression of the disease and the presence of disease symptoms. In this study, our aim is to develop and present a machine learning model for the identification of high risk plaques using non imaging based features and non-invasive imaging based features. Firstly, we implemented statistical analysis to identify the most statistical significant features according to the defined output, and subsequently, we implemented different feature selection techniques and classification schemes for the development of our machine learning model. The overall methodology has been trained and tested using 208 cases of 107 cases of low risk plaques and 101 cases of high risk plaques. The highest accuracy of 0.76 was achieved using the relief feature selection technique and the support vector machine classification scheme. The innovative aspect of the proposed machine learning model is both the different categories of the utilized input features and the definition of the problem to be solved.
颈动脉疾病是一种炎症性疾病,涉及脂质物质和血液中的白细胞在动脉壁中的沉积和积累,导致颈部两侧颈动脉变窄。可以采用不同的成像方式来确定颈动脉狭窄的存在和位置,例如颈动脉超声、计算机断层血管造影(CTA)、磁共振血管造影(MRA)或脑血管造影。然而,除了颈动脉狭窄的存在和程度外,颈动脉粥样硬化斑块的脆弱性也是疾病进展和症状存在的一个重要因素。在这项研究中,我们的目的是开发和提出一种使用基于非成像和基于非侵入性成像的特征来识别高危斑块的机器学习模型。首先,我们实施了统计分析,根据定义的输出来识别最具统计学意义的特征,随后,我们实施了不同的特征选择技术和分类方案来开发我们的机器学习模型。整个方法学使用了 208 个病例进行了训练和测试,其中 107 个为低危斑块,101 个为高危斑块。使用 Relief 特征选择技术和支持向量机分类方案实现了最高的准确性 0.76。所提出的机器学习模型的创新之处在于所使用的输入特征的不同类别和要解决的问题的定义。