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Training Neural Networks as Experimental Models: Classifying Biomedical Datasets for Sickle Cell Disease

机译:将神经网络训练为实验模型:对镰状细胞病的生物医学数据集进行分类

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This paper discusses the use of various type of neural network architectures for the classification of medical data. Extensive research has indicated that neural networks generate significant improvements when used for the preprocessing of medical time-series data signals and have assisted in obtaining high accuracy in the classification of medical data. Up to date, most of hospitals and healthcare sectors in the United Kingdom are using manual approach for analysing patient input for sickle cell disease, which depends on clinician's experience that can lead to time consuming and stress to patients. The results obtained from a range of models during our experiments have shown that the proposed Back-propagation trained feed-forward neural network classifier generated significantly better outcomes over the other range of classifiers. Using the Receiver Operating Characteristic curve, experiments results showed the following outcomes for our models, in order of best to worst: Back-propagation trained feed-forward neural net classifier: 0.989, Functional Link Neural Network: 0.972, in comparison to the Radial basis neural Network Classifiers with areas of 0.875, and the Voted Perception classifier 0.766. A Linear Neural Network was used as baseline classifier to illustrate the importance of the previous models, producing an area of 0.849, followed by a random guessing model with an area of 0.524.
机译:本文讨论了使用各种类型的神经网络体系结构对医学数据进行分类。广泛的研究表明,神经网络在用于医学时间序列数据信号的预处理时会产生重大改进,并有助于获得医学数据分类的高精度。迄今为止,英国大多数医院和医疗保健部门都在使用手动方法来分析镰状细胞病患者的病情,这取决于临床医生的经验,这可能会导致浪费时间并给患者带来压力。在我们的实验过程中,从一系列模型中获得的结果表明,与其他范围的分类器相比,拟议的反向传播训练前馈神经网络分类器产生了明显更好的结果。使用接收器工作特性曲线,实验结果显示了我们的模型的以下结果,从好到坏依次为:反向传播训练的前馈神经网络分类器:0.989,功能链接神经网络:0.972,与径向基准相比神经网络分类器,面积为0.875,投票感知分类器为0.766。线性神经网络被用作基线分类器,以说明先前模型的重要性,产生的面积为0.849,然后是面积为0.524的随机猜测模型。

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