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A Semi-supervised Approach for Early Identifying the Abnormal Carotid Arteries Using a Modified Variational Autoencoder

机译:一种半监督使用改进的变分性Autalencoder早期鉴定异常颈动脉的方法

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Carotid artery lesions could be the pathology of subclinical atherosclerosis and hence lead to the onset of stroke. Early detection of abnormal carotid artery might help to better identify individuals susceptible to stroke. Considering the carotid artery ultrasonography is time-consuming and costly, the object of this paper is to establish a model to detect the status of carotid artery for preliminary screening of stroke, according to the simple physiological examination and survey information. However, most of the previous studies were based on the linear regression or the traditional machine learning methods, those suffer from two limitations. One is the limited labeled samples, and the other one is the missing data. To address these issues, we firstly propose a semi-supervised approach based on a modified variational autoencoder (VAE) to identify the abnormal carotid arteries. In this paper, a mixture of mean and K th nearest neighbours (MKNN) and a modified VAE were used for missing data imputation. The experimental results demonstrate that the proposed method can not only handle the missing values, but also outperform four widely used supervised approaches. Therefore, we can conclude that this semi-supervised model is a promising way to identify the abnormal carotid arteries.
机译:颈动脉病变可能是亚临床动脉粥样硬化的病理学,因此导致卒中的发作。早期检测异常颈动脉可能有助于更好地识别易受中风的个体。考虑到颈动脉超声检查是耗时且昂贵的,本文的目的是建立一种模型,以检测颈动脉的状态,根据简单的生理检查和调查信息。然而,以前的大多数研究基于线性回归或传统的机器学习方法,这些方法遭受了两个局限性。一个是有限标记的样本,另一个是缺失的数据。为了解决这些问题,我们首先提出了一种基于修饰的变分性AutoEncoder(VAE)的半监督方法,以鉴定异常的颈动脉。在本文中,使用平均值和k个最近的邻居(MKNN)和修饰的VAE的混合物用于缺少数据载口。实验结果表明,所提出的方法不仅可以处理缺失的值,而且还优于四种广泛使用的监督方法。因此,我们可以得出结论,这种半监督模型是识别颈动脉异常的有希望的方法。

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