基于BPNN分类器的小波包特征检测子宫肌瘤

N. Sriraam, D. Nithyashri, L. Vinodashri, P. Niranjan
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引用次数: 10

摘要

子宫肌瘤也被称为平滑肌瘤,是女性生殖道壁内最常见的肿瘤。这种异常主要发生在育龄妇女中,雌激素的分泌是显著的。最关键的因素是肌瘤的存在会导致不孕和反复流产。近年来,超声成像被认为是诊断子宫相关疾病的一种合适的工具。本文提出了一种基于小波特征和神经网络分类器的子宫肌瘤自动检测方法。基于用户自定义的ROI,采用三级小波包分解计算垂直和水平系数。为了区分正常子宫和子宫肌瘤图像,采用前馈反向传播神经网络(BPNN)分类器进行分类,并从灵敏度、特异性和分类精度三个方面对分类效果进行了评价。从实验研究中观察到,分类准确率达到95.1%,表明该方案适合临床评价
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of uterine fibroids using wavelet packet features with BPNN classifier
Uterine fibroids also referred as leiomymas are the most common tumors persist within the wall of the female genital tract. This abnormality is predominant among woman of childbearing age where the secretion of estrogen hormone is significant. The most crucial factor is that the presence of fibroid can cause infertility and repeated miscarriage. In the recent years, ultrasonic imaging found to be an appropriate tool for diagnosis of uterus related disorders. This paper presents an automated detection of uterine fibroid by using wavelet features and a neural network classifier. Based on user-defined ROI, a three level wavelet packet decomposition is applied to calculate the vertical and horizontal coefficients. In order to distinguish the normal and fibroid uterus images, a feed forward backpropogation neural network(BPNN) classifier is used and the performance are evaluated in terms of sensitivity, specificity and classification accuracy. It is observed from the experimental study that a classification accuracy of 95.1% is achieved which indicates the suitability of the proposed scheme for clinical evaluation
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