A new approach for Pneumonia diagnosis using Convolutional Neural Networks

Leonardo Alvarado, Pedro Illaisaca, Remigio Hurtado
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Abstract

Convolutional Neural Networks (CNN) can be used as an efficient tool for detecting diseases between different types of medical imaging in a fast and reliable way, so that the article focuses on pneumonia disease, as yearly about 2.56 million people die in consequence of this illness. This paper illustrate the importance of data preprocessing as an effective approach for producing better results since raw data repercute in the training time, in consequence, it require more computational time to complete a determined machine learning problem. One of the main focal point is to introduce a novel and effective method to work with large amount of data and how it can be preprocessed for getting almost ideal results with a minimal lost of information due preprocessing. As the main result, the solution mentioned can help radiology and medical personnel to diagnose X-Ray images. Regarding the dataset, its name is Chest X-Ray Image Dataset, it's a public dataset of Kaggle and contains 5856 JPEG images organized in three directories. As future work, this model can be used to work with other types of Medical Images due to its adaptability.
基于卷积神经网络的肺炎诊断新方法
卷积神经网络(CNN)可以作为一种有效的工具,快速可靠地在不同类型的医学成像之间检测疾病,因此本文的重点是肺炎疾病,因为每年约有256万人死于这种疾病。本文说明了数据预处理作为产生更好结果的有效方法的重要性,因为原始数据在训练时间内会重复,因此需要更多的计算时间来完成确定的机器学习问题。其中一个主要焦点是介绍一种新颖有效的方法来处理大量数据,以及如何在预处理过程中以最小的信息丢失获得几乎理想的结果。主要结果是,该解决方案可以帮助放射科和医务人员诊断x射线图像。关于数据集,它的名字是胸部x射线图像数据集,它是Kaggle的一个公共数据集,包含5856张JPEG图像,组织在三个目录中。在未来的工作中,由于该模型的适应性,可以用于其他类型的医学图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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