Predicting recurrent aphthous ulceration using genetic algorithms-optimized neural networks.

Q2 Biochemistry, Genetics and Molecular Biology
Najla S Dar-Odeh, Othman M Alsmadi, Faris Bakri, Zaer Abu-Hammour, Asem A Shehabi, Mahmoud K Al-Omiri, Shatha M K Abu-Hammad, Hamzeh Al-Mashni, Mohammad B Saeed, Wael Muqbil, Osama A Abu-Hammad
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引用次数: 17

Abstract

Objective: To construct and optimize a neural network that is capable of predicting the occurrence of recurrent aphthous ulceration (RAU) based on a set of appropriate input data.

Participants and methods: Artificial neural networks (ANN) software employing genetic algorithms to optimize the architecture neural networks was used. Input and output data of 86 participants (predisposing factors and status of the participants with regards to recurrent aphthous ulceration) were used to construct and train the neural networks. The optimized neural networks were then tested using untrained data of a further 10 participants.

Results: THE OPTIMIZED NEURAL NETWORK, WHICH PRODUCED THE MOST ACCURATE PREDICTIONS FOR THE PRESENCE OR ABSENCE OF RECURRENT APHTHOUS ULCERATION WAS FOUND TO EMPLOY: gender, hematological (with or without ferritin) and mycological data of the participants, frequency of tooth brushing, and consumption of vegetables and fruits.

Conclusions: FACTORS APPEARING TO BE RELATED TO RECURRENT APHTHOUS ULCERATION AND APPROPRIATE FOR USE AS INPUT DATA TO CONSTRUCT ANNS THAT PREDICT RECURRENT APHTHOUS ULCERATION WERE FOUND TO INCLUDE THE FOLLOWING: gender, hemoglobin, serum vitamin B12, serum ferritin, red cell folate, salivary candidal colony count, frequency of tooth brushing, and the number of fruits or vegetables consumed daily.

Abstract Image

Abstract Image

利用遗传算法优化的神经网络预测复发性口疮溃疡。
目的:基于一组合适的输入数据,构建并优化预测复发性阿弗他溃疡(RAU)发生的神经网络。参与者和方法:采用人工神经网络(ANN)软件,采用遗传算法优化神经网络结构。利用86名受试者的输入输出数据(受试者对复发性阿弗他溃疡的易感因素和状态)构建并训练神经网络。然后使用另外10名参与者的未经训练的数据对优化后的神经网络进行测试。结果:优化后的神经网络对复发性阿弗顿溃疡的存在与否做出了最准确的预测,结果发现:参与者的性别、血液学(含或不含铁蛋白)和真菌学数据、刷牙频率以及蔬菜和水果的摄入量。结论:与复发性阿弗口疮溃疡相关的因素,以及用于构建预测复发性阿弗口疮溃疡的人工神经网络的输入数据,包括:性别、血红蛋白、血清维生素B12、血清铁蛋白、红细胞叶酸、唾液念珠菌菌落计数、刷牙频率和每天食用水果或蔬菜的数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances and Applications in Bioinformatics and Chemistry
Advances and Applications in Bioinformatics and Chemistry Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (miscellaneous)
CiteScore
6.50
自引率
0.00%
发文量
7
审稿时长
16 weeks
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