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首页> 外文期刊>Neural computing & applications >Analyzing genetic diseases using multimedia processing techniques associative decision tree-based learning and Hopfield dynamic neural networks from medical images
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Analyzing genetic diseases using multimedia processing techniques associative decision tree-based learning and Hopfield dynamic neural networks from medical images

机译:利用多媒体加工技术遗传疾病从医学图像中使用多媒体处理技术联想决策树的学习和Hopfield动态神经网络

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摘要

Genetic diseases are the most common next-generation diseases because of the improper mutation of the genes and DNA.These genetic diseases are failed to predict with an accurate manner in the beginning stage by using the particular genes and related information. So, the genetic diseases are identified in the medical systems by utilizing the hybridization of multimedia techniques such as big data and related soft computing techniques.Initially, the genetic disease-related medical images are collected from healthcare sectors, and from the genetic image, various genetic data are collected from the large amount of datasets in which the major challenge is too high dimensionality that increases the complexity of the genetic disease prediction system. So, in this paper the complexity of the system is reduced by using the associative decision tree-based learning and Hopfield dynamic neural networks (HDNN). After collecting the data from the various resources, the immune clonal selection algorithm approach is used to remove inconsistent data and minimize the dimensionality of data. The selected features are trained by the proposed associative decision tree approach which helps to compare with the testing features using the HDNN that successfully recognize the genetic disease-based features effectively. The excellence of the system is measured with the aid of the experimental outcomes that are corresponding to the forecasting methods such as greedy algorithm, rough set method and artificial bee colony, and the comparison is made with the avail of the accuracy, sensitivity and specificity.
机译:由于基因和DNA的突变不当,遗传疾病是最常见的下一代疾病。通过使用特定基因和相关信息,这些遗传疾病未能在开始阶段以准确的方式预测。因此,通过利用多媒体技术(如大数据和相关软计算技术)的杂交在医疗系统中鉴定了遗传疾病。最大地,从医疗部门和遗传形象中收集遗传疾病相关的医学图像。从大量数据集收集遗传数据,其中主要挑战过高的维度过高,这增加了遗传疾病预测系统的复杂性。因此,在本文中,通过使用基于联想决策树的学习和Hopfield动态神经网络(HDNN)来减少系统的复杂性。从各种资源收集数据后,使用免疫克隆选择算法方法用于消除不一致的数据并最小化数据的维度。所选择的特征是由所提出的关联决策树方法训练,有助于使用成功识别基于遗传疾病的特征的HDNN与测试特征进行比较。借助于对应于贪婪算法,粗糙集法和人造蜂菌落等预测方法的实验结果来测量系统的卓越,并且通过可用的准确性,灵敏度和特异性进行比较。

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