首页> 外文期刊>Journal of supercomputing >Prediction of cardiovascular risk by measuring carotid intima media thickness from an ultrasound image for type Ⅱ diabetic mellitus subjects using machine learning and transfer learning techniques
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Prediction of cardiovascular risk by measuring carotid intima media thickness from an ultrasound image for type Ⅱ diabetic mellitus subjects using machine learning and transfer learning techniques

机译:采用机器学习和转移学习技术测量Ⅱ型糖尿病患者Ⅱ型糖尿病患者的颈动脉内膜介质厚度预测心血管风险

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Cardiovascular disease (CVD) is a fatal disease that causes increased death in developing and developed nations. Among the various reasons, the increase in carotid intima media thickness (CIMT) is also a significant reason for CVD. It is expected to increase the death rate due to CVD up to 24.2 million by 2030. In previous studies, CIMT alone has been considered to identify the risk of CVD. In the proposed research, along with CIMT, the Framingham risk score (FRS) parameter was also calculated for both diabetic and normal subjects, which gives an accurate prediction of cardiovascular disease. CIMT was measured in 55 normal subjects and 55 diabetic subjects using a highly efficient ultrasound scanning device. Framingham risk score (FRS) was calculated for the 110 subjects based on the obtained demographic variables and biochemical parameters. The receiver operating characteristics (ROC) curve was plotted for CIMT with FRS which showed a sensitivity of 73% for CIMT. ROC curve plotted for FRS with fasting blood sugar and postprandial blood sugar showed a sensitivity of 80% and 81%, respectively. The performance was calculated based on different classification techniques. Results showed that support vector machine and multilayer perceptron classifier was classified with greater accuracy of 83.3% for 110 subjects. Further to improvise the analysis, the image data of the 110 subjects are augmented to 1809 image data and transfer learning techniques were applied using VGG16 and greater accuracy of 99% was achieved.
机译:心血管疾病(CVD)是一种致命的疾病,导致发展和发达国家的死亡增加。在各种原因中,颈动脉内膜厚度(CIMT)的增加也是CVD的重要原因。预计将增加2030年CVD的死亡率高达2420万辆。在以前的研究中,仅考虑了CIMT,以确定CVD的风险。在拟议的研究以及CIMT中,还针对糖尿病和正常受试者计算了FRAMINGHAM风险评分(FRS)参数,这给出了对心血管疾病的准确预测。使用高效的超声扫描装置在55例正常受试者和55个糖尿病受试者中测量CIMT。基于所获得的人口变量和生物化学参数计算110个受试者的框架风险评分(FRS)。接收器操作特性(ROC)曲线被绘制用于CIMT,FRS显示为CIMT的敏感性为73%。 ROC曲线绘制的FRS具有空腹血糖和餐后血糖显示出80%和81%的敏感性。基于不同的分类技术计算性能。结果表明,支撑载体机和多层Perceptron分类器被分类为110个受试者的更高精度为83.3%。此外,为了提高分析,110个受试者的图像数据增加到1809个图像数据,并且使用VGG16施加转移学习技术,实现了99%的更高精度。

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