提供一种结合两种神经网络算法和一种遗传算法的诊断模型

Farshad Minaei, Hassan Dosti, Ebrahim Salimi Turk, Amin Golabpour
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引用次数: 0

摘要

技术的进步可以增加机器学习算法在预测疾病方面的应用。该病的早期诊断可降低社区一级的死亡率和发病率。材料与方法:本文采用人工神经网络与元启发式算法相结合的方法,构建了一个用于妊娠期糖尿病诊断的临床决策支持系统。本研究选择遗传、蚁群、粒子群优化和布谷鸟搜索四种元创新算法与人工神经网络相结合。然后对这四种算法进行了比较。数据集包含768条记录和8个因变量。该数据集有200条缺失记录,因此研究记录的数量减少到568条。结果:采用10-Fold法将数据分为训练和测试两组。然后,将神经遗传网络、反神经群体网络、神经网络-粒子群优化和神经网络-布谷鸟搜索四种算法对数据进行训练,并通过测试集进行评估。准确度为95.02。同时,用两个相似的任务对算法的最终输出进行了检验,结果表明所提出的模型效果更好。结论:本研究表明两种神经网络与遗传算法相结合可以为疾病诊断提供合适的预测模型。
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Provide a Diagnostic Model Using a Combination of Two Neural Network Algorithms and a Genetic Algorithm
Introduction: Improvement of technology can increase the use of machine learning algorithms in predicting diseases. Early diagnosis of the disease can reduce mortality and morbidity at the community level.Material and Methods: In this paper, a clinical decision support system for the diagnosis of gestational diabetes is presented by combining artificial neural network and meta-heuristic algorithm. In this study, four meta-innovative algorithms of genetics, ant colony, particle Swarm optimization and cuckoo search were selected to be combined with artificial neural network. Then these four algorithms were compared with each other. The data set contains 768 records and 8 dependent variables. This data set has 200 missing records, so the number of study records was reduced to 568 records.Results: The data were divided into two sets of training and testing by 10-Fold method. Then, all four algorithms of neural-genetic network, ant-neural colony network, neural network-particle Swarm optimization and neural network-cuckoo search on the data The trainings were performed and then evaluated by the test set. And the accuracy of 95.02 was obtained. Also, the final output of the algorithm was examined with two similar tasks and it was shown that the proposed model worked better.Conclusion: In this study showed that the combination of two neural network and genetic algorithms can provide a suitable predictive model for disease diagnosis.
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