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Classification of Pediatric Pneumonia Prediction Approaches

机译:儿科肺炎预测方法分类

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Pneumonia is a highly dangerous and infectious illness that affects one or both lungs. It affects 7% of the population worldwide and results in 3 million pediatric deaths annually. There is a dearth in the research involving prediction of pediatric pneumonia when compared to adult pneumonia. Machine learning methods like Convolutional Neural Networks, Multi-layer Perceptron, Recurrent Neural Networks and typical classification and regression techniques have been used for adults. In this paper, we are doing a classification and comparative analysis of all these approaches, so as to allow future researchers to apply appropriate techniques as per their needs and available resources in their pediatric pneumonia research.
机译:肺炎是一种非常危险和传染性的疾病,影响了一种或两种肺部。它影响全世界7%的人口,每年产生300万儿科死亡。与成人肺炎相比,涉及对儿科肺炎预测的研究有一种缺乏的研究。机器学习方法,如卷积神经网络,多层,复发性神经网络和典型分类和回归技术已被用于成人。在本文中,我们正在对所有这些方法进行分类和比较分析,以便允许未来的研究人员根据其需要和可用资源进行适当的技术,并在其儿科肺炎研究中使用资源。

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