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A comprehensive study on thyroid diagnosis by neural networks and swarm intelligence

机译:神经网络和群体智能技术对甲状腺诊断的综合研究

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Diagnosis of the thyroid function abnormalities may take much precious time of the patient. So, a computer aided diagnosis system can guide physicians in diagnosis and can save time of the patient. In this study, seven different types of neural networks were implemented in order to realize more robust and reliable networks on thyroid diagnosis. The particle swarm optimization and artificial bee colony algorithms are well known optimization algorithms and the migrating birds optimization algorithm is a recently introduced optimization algorithm based on swarm intelligence. Finally, the designed feed forward multilayer neural network was re-trained by using these metaheuristic algorithms. A dataset in UCI machine learning repository web site was used. The results show that our accuracy values outperform the similar studies.
机译:甲状腺功能异常的诊断可能会花费患者很多宝贵的时间。因此,计算机辅助诊断系统可以指导医生进行诊断,并且可以节省患者的时间。在这项研究中,实施了七种不同类型的神经网络,以实现更强大,更可靠的甲状腺诊断网络。粒子群优化和人工蜂群算法是众所周知的优化算法,而迁徙鸟类优化算法是最近引入的基于群智能的优化算法。最后,使用这些元启发式算法对设计的前馈多层神经网络进行了重新训练。使用了UCI机器学习存储库网站中的数据集。结果表明,我们的准确性值优于类似的研究。

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