首页> 外文会议>33rd Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Binary particle swarm optimization for feature selection in detection of infants with hypothyroidism
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Binary particle swarm optimization for feature selection in detection of infants with hypothyroidism

机译:二元粒子群算法在甲状腺功能减退症婴儿检测中的特征选择

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摘要

Hypothyroidism in infants is caused by the insufficient production of hormones by the thyroid gland. Due to stress in the chest cavity as a result of the enlarged liver, their cry signals are unique and can be distinguished from the healthy infant cries. This study investigates the effect of feature selection with Binary Particle Swarm Optimization on the performance of MultiLayer Perceptron classifier in discriminating between the healthy infants and infants with hypothyroidism from their cry signals. The feature extraction process was performed on the Mel Frequency Cepstral coefficients. Performance of the MLP classifier was examined by varying the number of coefficients. It was found that the BPSO enhances the classification accuracy while reducing the computation load of the MLP classifier. The highest classification accuracy of 99.65% was achieved for the MLP classifier, with 36 filter banks, 5 hidden nodes and 11 BPS optimised MFC coefficients.
机译:婴儿甲状腺功能低下症是由甲状腺分泌的激素不足引起的。由于肝脏肿大导致胸腔承受压力,它们的哭声信号是独特的,可以与健康的婴儿哭声区分开。这项研究调查了使用二进制粒子群优化进行特征选择对多层感知器分类器在区分健康婴儿和甲状腺功能减退婴儿的啼哭信号中的性能的影响。特征提取过程是在梅尔频率倒谱系数上执行的。通过更改系数的数量来检查MLP分类器的性能。发现BPSO在降低MLP分类器的计算负荷的同时,提高了分类精度。 MLP分类器具有36个滤波器组,5个隐藏节点和11个BPS优化MFC系数,可实现99.65%的最高分类精度。

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