基于超声技术的多类SVM分类器白内障客观分类新方法

M. Caixinha, E. Velte, Mário J. Santos, Jaime B. Santos
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引用次数: 22

摘要

在本工作中,超声a扫描信号从健康和白内障猪晶体。根据采集到的信号重构b模图像。随后从b模图像构造参数化Nakagami图像。从透镜的中心区域获得声学和光谱参数。从b扫描和Nakagami图像中提取图像纹理参数。从75个健康晶状体和135个白内障晶状体中提取97个参数。有白内障的晶状体被分为两组:初期和晚期白内障,分别对应于在白内障诱导液中浸泡60分钟和120分钟的时间。得到的参数进行主成分分析(PCA)特征选择,并通过多类支持向量机(SVM)进行分类。本文表明,多类支持向量机可以有效地进行白内障严重程度的分类,总体分类准确率为89%,分类正确率为93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New approach for objective cataract classification based on ultrasound techniques using multiclass SVM classifiers
In the present work, ultrasound A-scan signals were acquired from healthy and cataractous porcine lenses. B-mode images were reconstructed from the collected signals. The parametric Nakagami images were subsequently constructed from the B-mode images. Acoustical and spectral parameters were obtained from the central region of the lens. Image textural parameters were extracted from the B-scan and Nakagami images. Ninety-seven parameters were extracted from a total of 75 healthy and 135 cataractous lenses. Lenses with cataract were split in two groups: incipient and advanced cataract, corresponding to a 60 and 120 minutes of immersion time in a cataract induction solution, respectively. The obtained parameters were subjected to feature selection with Principal Component Analysis (PCA) and used for classification through a multiclass Support Vector Machine (SVM). This paper shows that multiclass SVM can perform effectively the classification of the cataract severity, with an overall performance of 89%, classifying correctly 93% of the features.
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