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A neuro-genetic model to predict hepatitis disease risk

机译:预测肝炎疾病风险的神经遗传模型

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摘要

In the present scenario, large quantity of data is generated in the field of medicine. This data contain valuable information which can be utilized in decision making. Machine learning is an active area which may be useful to healthcare experts. Hepatitis disease is a common disease in the world, which may cause damage to hepatocytes. Machine learning techniques can be implemented to reduce the risk of Hepatitis. Our study has demonstrated an intelligent hybrid system for the efficient risk prediction of Hepatitis disease. We developed an intelligent combination of Genetic search algorithm and Multilayer Perceptron technique named MLP-GS. Our proposed system model was analyzed and computed with the help of several performance parameters like Accuracy, Root Mean-Squared Error, Precision, Recall and F-Measure. It was observed that MLP-GS model performs better on Hepatitis data.
机译:在当前情况下,在医学领域中会生成大量数据。该数据包含可用于决策的有价值的信息。机器学习是一个活跃的领域,可能对医疗保健专家有用。肝炎疾病是世界上常见的疾病,可能引起肝细胞损害。可以实施机器学习技术以降低患肝炎的风险。我们的研究表明,智能混合系统可有效预测肝炎疾病的风险。我们开发了遗传搜索算法和称为MLP-GS的多层感知器技术的智能组合。我们提出的系统模型是在几个性能参数(如准确度,均方根误差,精度,召回率和F量度)的帮助下进行分析和计算的。据观察,MLP-GS模型在肝炎数据上表现更好。

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