Hearing loss classification via stationary wavelet entropy and genetic algorithm

Xujing Yao, Hei-Ran Cheong
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引用次数: 2

Abstract

The accompanying symptoms of hearing loss is slow and sensory, which makes detecting hearing loss of huge significance to the medical diagnosis and scientific research field. To improve the efficiency of hearing loss classification, we conducted a research on a dataset obtained from magnetic resonance imaging and presented a novel computer aided system based on stationary wavelet entropy, k-fold cross validation, single-hidden-layer feedforward neural network and genetic algorithm. Firstly, the features are extracted from each hearing loss image via stationary wavelet entropy. Then, we used the genetic algorithm to train the single-hidden-layer feedforward neural network. The system reaches an overall sensitivity of 89.89±2.50%, which means the model gives much better performance than manual interpretation.
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基于平稳小波熵和遗传算法的听力损失分类
听力损失的伴随症状是缓慢的和感觉的,这使得检测听力损失在医学诊断和科学研究领域具有重要意义。为提高听力损失分类效率,以磁共振成像数据集为研究对象,提出了一种基于平稳小波熵、k-fold交叉验证、单隐层前馈神经网络和遗传算法的计算机辅助分类系统。首先,利用平稳小波熵对每张听力损失图像进行特征提取;然后,利用遗传算法对单隐层前馈神经网络进行训练。该系统的总体灵敏度为89.89±2.50%,比人工解译的效果要好得多。
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