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Examination of static and 50 Hz electric field effects on tissues by using a hybrid genetic algorithm and neural network

机译:通过混合遗传算法和神经网络检查静态和50 Hz电场对组织的影响

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摘要

The effects of electric fields on tissue are the main subject of many investigations. The importance of this subject comes from the electrical properties of the cell membrane and its sensitivity to changes in electrical conditions. Permeability of membranes to various ions can change by the effect of an electric field depending on their conductivity. The performances of cells and tissues change due to differences between the membrane's permeability to various ions and molecules. The aim of this study was to determine lipid peroxidation and superoxide dismutase (SOD) levels in spleen and testis tissues exposed to different intensities and exposure periods of static and 50 Hz alternating electric fields. The increase in SOD and thiobarbituric acid reactive substance levels of spleen and testis tissues was found to depend significantly on the type of electric field and the exposure period. The experimental results are applied to a hybrid genetic algorithm and neural network as learning data and the training of the feedforward neural network is realized. At the end of this training, without applying electric field to tissues, the determination of the effects of the electric field on tissues by using a computer is predicted by the neural network. After the experiments, the prediction of the. hybrid genetic algorithm and neural network approach is on average 99.25%-99.99%.
机译:电场对组织的影响是许多研究的主要主题。该主题的重要性来自细胞膜的电特性及其对电条件变化的敏感性。膜对各种离子的渗透性可以通过电场的作用而改变,这取决于它们的电导率。细胞和组织的性能由于膜对各种离子和分子的渗透性之间的差异而改变。这项研究的目的是确定暴露于不同强度和静态和50 Hz交流电场暴露时间的脾脏和睾丸组织中的脂质过氧化和超氧化物歧化酶(SOD)水平。发现脾脏和睾丸组织中SOD和硫代巴比妥酸反应性物质的含量显着取决于电场类型和暴露时间。将实验结果应用于混合遗传算法和神经网络作为学习数据,实现了前馈神经网络的训练。在该训练结束时,在不向组织施加电场的情况下,通过神经网络预测通过使用计算机确定电场对组织的影响。经过实验,得到了预测。混合遗传算法和神经网络方法的平均比例为99.25%-99.99%。

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