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Automated IMT estimation and BMI correlation using a low-quality carotid ultrasound image database from India

机译:使用来自印度的低质量颈动脉超声图像数据库自动化IMT估计和BMI相关性

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This paper presents AtheroEdgeLowRes (AELR), an extention of AtheroEdge™ from AtheroPoint™, and a solution to carotid ultrasound IMT measurement in low-resolution and overall low quality images. The images were collected using a low-end ultrasound machine during a screening study in India. We aim to demonstrate the accuracy and reproducibility of the AELR system by benchmarking it against an expert Reader's manual tracing and to show the correlation between the automatically measured intima media thickness (IMT) and the subjects' cardiovascular risk factors (i.e. body mass index - BMI). We introduced an innovative penalty function (PF) to our dual-snake segmentation technique, necessary due to the low image resolution. We processed 512 images from 256 patients, and correlated the AELR IMT values with the patients' age and BMI. AELR processed all 512 images, and the IMT measurement error was 0.011±0.099 mm with the PF correction and 0.173±0.127 mm without. AELR IMT values correlated with the Reader's values (r = 0.883) and also correlated with the subject's BMI and age. The AELR system showed accuracy and reproducibility levels that make it suitable to be used in large epidemiological and screening studies in emerging countries.
机译:本文呈现AtheroEdgeLowRes(AELR),AtheroEdge从AtheroPoint的一个推广™™,并且在低的分辨率和总体低质量图像到颈动脉超声波IMT测量的溶液。在印度筛选研究期间使用低端超声机收集图像。我们的目标是通过对专家读者的手动跟踪基准测试并显示自动测量的内部介质厚度(IMT)与受试者的心血管危险因素(即体重指数 - BMI之间的相关性来证明AELR系统的准确性和再现性)。由于图像分辨率低,我们向我们的双蛇分割技术引入了一种创新的惩罚功能(PF)。我们从256名患者处理了512个图像,并将AELR IMT值与患者的年龄和BMI相关联。 AELR处理了所有512个图像,IMT测量误差为0.011±0.099 mm,PF校正和0.173±0.127 mm,没有。 AELR IMT值与读卡器的值相关(R = 0.883),也与受试者的BMI和年龄相关联。 AELR系统显示出准确性和可重复性水平,使其适合于新兴国家的大型流行病学和筛查研究。

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