A Machine Learning Approach to Carotid Wall Localization in A-mode Ultrasound

Shivendra Singh, A. Sahani
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引用次数: 3

Abstract

ARTSENS is being developed as a fully automated ultrasound based imageless system to facilitate mass screening of patients for early detection of atherosclerosis especially in low- and middle- income countries. ARTSENS uses a single element ultrasound transducer and thus makes its measurement on basis of observations on A-line. Positioning the single element transducer on the carotid artery and automatic identification of proximal and distal walls are a major challenge in this device. In this paper, we explore various machine learning methods namely – logistic regression, support vector machine and Adaboost, on selectively extracted features. The algorithms were trained on data from 60 subjects and tested on data from 40 subjects. Adaboost algorithm performed the best among the three logging a 91.66% accuracy.
A型超声颈动脉壁定位的机器学习方法
正在开发的ARTSENS是一种全自动超声无图像系统,用于促进动脉粥样硬化早期发现患者的大规模筛查,特别是在低收入和中等收入国家。ARTSENS使用单元件超声换能器,因此根据a线的观察结果进行测量。将单元件传感器定位在颈动脉上并自动识别近端和远端壁是该装置的主要挑战。在本文中,我们在选择性提取的特征上探索了各种机器学习方法,即逻辑回归,支持向量机和Adaboost。这些算法在60个受试者的数据上进行了训练,并在40个受试者的数据上进行了测试。Adaboost算法在三种算法中表现最好,准确率为91.66%。
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