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Vector Borne Disease Outbreak Prediction by Machine Learning

机译:矢量疾病爆发预测机器学习

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Vector Borne Disease is a form of illness which is caused by parasites, viruses and bacteria. The infection is transferred through blood-feeding arthropods such as mosquitoes, fleas ticks etc. Every year from diseases such as yellow fever, Malaria more than 700,000 deaths occur. These diseases are most common in tropical and subtropical areas and affect the underprivileged populations. Deep learning an essential part of Artificial Intelligence provides an uncanny power to systems to construct a complex network using layers of perceptrons which mimic the human neurons. This network Combined with algorithms of Machine Learning may serve as one of the most powerful tool in healthcare to classify and analyze huge amount of medical data and predict future trends through Supervised Learning. The paper we focused on effective prediction of the vector borne disease outbreak (Multiclass Classification) of three diseases (Chikungunya, Malaria, Dengue) across the Indian-subcontinent. We have examined and refined our model over data collected across India in 2013-2017. We have put forward a Convolutional Neural Network outbreak risk prediction algorithm using contrasting data. To our finest understanding, none of the previous works have centered on contrasting data in area of analysis of medical data. The prediction accuracy of our suggested CNN algorithm is 88%.
机译:向量传承疾病是一种由寄生虫,病毒和细菌引起的疾病的形式。感染通过血液喂养节肢动物如蚊子,跳蚤蜱等转移。每年从黄热病如疾病,疟疾发生超过70万人死亡。这些疾病在热带和亚热带地区最常见,影响弱势群体。深度学习人工智能的重要组成部分为系统提供了一种不可思议的权力,以使用模仿人神经元的图像层构建复杂网络。该网络与机器学习的算法相结合可以作为医疗保健中最强大的工具之一,以通过监督学习来分类和分析大量的医疗数据并预测未来趋势。我们专注于在印度次大陆跨越三种疾病(Chikungunya,疟疾,登革热)的载体传播疾病爆发(多标菌分类)的有效预测。我们已审查并在2013-2017次在印度收集的数据进行了型号。我们已经使用对比度提出了一种卷积神经网络爆发风险预测算法。为了我们最好的理解,以前的作品都没有集中在医疗数据分析区域中的对比数据。我们建议的CNN算法的预测准确性为88%。

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