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<title>Automatic detection of the intima-media thickness in ultrasound images of the common carotid artery using neural networks</title>
<creator>Menchon Lara, Rosa María</creator>
<creator>Bastida Jumilla, María Consuelo</creator>
<creator>Morales Sánchez, Juan</creator>
<creator>Sancho Gómez, José Luis</creator>
<description>Atherosclerosis is the leading underlying pathologic process that results in cardiovascular diseases, which represents the main cause of death and disability in the world. The atherosclerotic process is a complex degenerative condition mainly affecting the medium- and large-size arteries, which begins in childhood and may remain unnoticed during decades. The intima-media thickness (IMT) of the common carotid artery (CCA) has emerged as one of the most powerful tool for the evaluation of preclinical atherosclerosis. IMT is measured by means of B-mode ultrasound images, which is a non-invasive and relatively low-cost technique. This paper proposes an effective image segmentation method for the IMT measurement in an automatic way. With this purpose, segmentation is posed as a pattern recognition problem, and a combination of artificial neural networks has been trained to solve this task. In particular, multi-layer perceptrons trained under the scaled conjugate gradient algorithm have been used. The suggested approach is tested on a set of 60 longitudinal ultrasound images of the CCA by comparing the automatic segmentation with four manual tracings. Moreover, the intra- and inter-observer errors have also been assessed. Despite of the simplicity of our approach, several quantitative statistical evaluations have shown its accuracy and robustness.</description>
<date>2024-02-07</date>
<date>2024-02-07</date>
<date>2013</date>
<type>info:eu-repo/semantics/article</type>
<identifier>Med Biol Eng Comput, 52, 169–181 (2014)</identifier>
<identifier>0140-0118</identifier>
<identifier>https://uvadoc.uva.es/handle/10324/65875</identifier>
<identifier>10.1007/s11517-013-1128-4</identifier>
<identifier>169</identifier>
<identifier>2</identifier>
<identifier>181</identifier>
<identifier>Medical &amp; Biological Engineering &amp; Computing</identifier>
<identifier>52</identifier>
<identifier>1741-0444</identifier>
<language>eng</language>
<rights>info:eu-repo/semantics/restrictedAccess</rights>
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