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Hybrid models based on genetic algorithm and deep learning algorithms for nutritional Anemia disease classification

机译:基于遗传算法的混合模型和营养贫血病分类的深层学习算法

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Deep learning algorithms are an important part of disease prediction and diagnosis by analyzing health data. If not diagnosed and treated early, symptoms of nutritional anemia can be seen as a common laboratory finding of dyspnea, dizziness, lack of concentration, pale skin color, and life-threatening diseases. In the literature, several data mining techniques have been used for the prediction of nutritional anemia, especially, for the iron deficiency anemia. However, each algorithm does not perform well for every data, and therefore new techniques need to be developed. It is because the characteristics of each dataset are different and their dataset sizes, that is, the number of records and the number of parameters are different. In this study, we propose two hybrid models using genetic algorithm (GA) and deep learning algorithms of Stacked Autoencoder (SAE) and Convolutional Neural Network (CNN) for the prediction of HGB-anemia, nutritional anemia, (iron deficiency anemia, B12 deficiency anemia, and folate deficiency anemia), and patients without anemia. In the proposed GA-SAE and GA-CNN models, the hyperparameters of SAE and CNN algorithms are optimized using GA since it is not easy to determine suitable values of deep learning algorithms. Accuracy, F-score, precision, and sensitivity criteria were used to evaluate the prediction and classification performances of the proposed algorithms. As a result of the experimental evaluations using the dataset, the performance of the proposed GA-CNN algorithm whose layers trained separately and sequentially was found to be better than the performance of the studies proposed in the literature, by a 98.50% accuracy.
机译:深入学习算法是通过分析健康数据来疾病预测和诊断的重要组成部分。如果早期诊断和治疗,营养贫血症状可以被视为常见的实验室发现呼吸困难,头晕,浓度缺乏浓度,苍白的肤色和危及生命的疾病。在文献中,已经用于预测营养贫血的几种数据挖掘技术,特别是对于缺铁性贫血。但是,每种算法都不适用于每个数据,因此需要开发新技术。这是因为每个数据集的特征是不同的,并且它们的数据集大小,即记录的数量和参数的数量是不同的。在这项研究中,我们提出了使用遗传算法(GA)和堆叠的AutoEncoder(SAE)和卷积神经网络(CNN)的深层学习算法来提出两个混合模型,用于预测HGB-贫血,营养贫血,(缺铁性贫血,B12缺乏贫血和叶酸缺乏症患者,患者没有贫血。在所提出的GA-SAE和GA-CNN模型中,SAE和CNN算法的超顺使用GA优化,因为不容易确定深度学习算法的合适值。准确性,F分数,精度和敏感性标准用于评估所提出的算法的预测和分类性能。由于使用DATASET的实验评估,发现分别和顺序培训的层的所提出的GA-CNN算法的性能优于文献中提出的研究的性能,精度为98.50%。

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