利用遗传算法和人工神经网络预防日本脑炎的研究

R. Mehra, K.S. Pachpor, K. Kottilingam, A. Saranya
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引用次数: 6

摘要

日本脑炎主要影响儿童。流行国家的大多数成年人在儿童期感染后具有自然免疫力,但任何年龄的人都可能受到影响。这项工作涉及那些受影响的人的数据。第一步是研究所获得的数据,找出日本脑炎与正常病毒性发热相比所存在的独特和相似的症状。机器学习算法被用来完成这项工作。采用遗传算法对输入数据进行优化和生成最适合的字符串。为了获得精确的结果和证明,还使用了Attribute Selection算法。这项工作的主要目标是在最初阶段提高对该疾病的预防意识。利用遗传算法和属性选择算法,从患者身上提取生物测试的基本特征。遗传算法提高了优化问题的质量,并利用带有因子分析的属性选择算法得到近似的结果。使用这些算法的改进百分比为96%。采用OpenCV颜色变化检测和人工神经网络(ANN)检测脑细胞的颜色变化和感染信息。结果优于现有的方法来检测细胞是否被寄生或未感染。使用该算法的改进百分比为99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Initiative To Prevent Japanese Encephalitis Using Genetic Algorithm And Artificial Neural Network
Japanese Encephalitis primarily affects children. Most adults in endemic countries have natural immunity after childhood infection, but individuals of any age may be affected. This work deals with the data of those who are affected. The primary step is studying the data obtained to Figure out the unique and similar symptoms which are present in Japanese Encephalitis in comparison with normal Viral Fever. Machine Learning algorithms are used to carry out this work. The Genetic Algorithm is used for optimization and generation of fittest string for the input data. To obtain precise results along with the justification, the Attribute Selection algorithm is also used. The main objective of the work is to create preventive awareness of the disease at the initial stage. Extract the essential features of biotest from the affected person, which is taken into consideration with the genetic algorithm and Attribute Selection algorithm. Genetic algorithms give higher quality for the optimized problem and produce an approximate result using the Attribute Selection algorithm with factor analysis. The percentage of improvement on using these algorithms is 96%. OpenCV color change detection and Artificial Neural Network (ANN) is used to detect the change in the color and infection information of the Brain cell. The results outperform with the existing methodologies to detect whether the cell is parasitized or uninfected. The percentage of omprovement on using this algorithm is 99%.
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