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An artificial neural network approach for classification of vector-borne diseases

机译:基于人工神经网络的媒介传播疾病分类方法

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Vector-Borne diseases are quite prevalent in India and cause a large number of deaths when they get aggravated, in turn leading to epidemics. It is quite easy to get infected by these diseases, which have very similar symptoms, most of which manifest after days. Technology, today, can provide a helping hand in the correct diagnosis of these diseases. In this paper, we take up three diseases prevalent in India: malaria, dengue and chikungunya. The proposed method uses an Artificial Neural Network (ANN) based backpropagation algorithm for training and testing. A number of gradient optimization techniques are used like Adaptive Moment Estimation, RMSProp, Adagrad, Classical Momentum and Nesterov accelerated gradient. The final probability of the most probable of the three diseases is given, based on the symptoms entered. Using backpropagation algorithm, an accuracy of 99.7% was achieved.
机译:Vector-Borne疾病在印度相当普遍,当加重病情时会导致大量死亡,进而导致流行病。很容易被这些疾病所感染,这些疾病具有非常相似的症状,大多数症状会在几天后显现出来。今天的技术可以为正确诊断这些疾病提供帮助。在本文中,我们研究了印度流行的三种疾病:疟疾,登革热和基孔肯雅热。所提出的方法使用基于人工神经网络(ANN)的反向传播算法进行训练和测试。使用了许多梯度优化技术,例如自适应矩估计,RMSProp,Adagrad,古典动量和Nesterov加速梯度。根据输入的症状,给出了三种疾病中最可能发生的最终概率。使用反向传播算法,精度达到了99.7%。

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