Pneumonia Detection System Using Deep Learning

Abdul Rahman Bin Salam -, Ibaad Mohammed Hameeduddin -, Mohammed Faizan Hussain -, Hajira Sabuhi -
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Abstract

Artificial intelligence and machine learning are increasingly being applied in medicine, particularly in biomedical imaging and diagnostic procedures. Machine learning algorithms are being used to process chest X-ray images, enhancing consistency and accuracy in reporting. The research focuses on using deep learning algorithms based on convolutional neural networks to build a processing model for detecting pneumonia-related changes in chest X-rays and classifying them into two groups based on detection results. This approach aims to improve decision-making and accuracy in medical imaging.
基于深度学习的肺炎检测系统
人工智能和机器学习越来越多地应用于医学,特别是在生物医学成像和诊断程序中。机器学习算法被用于处理胸部x射线图像,提高报告的一致性和准确性。研究重点是利用基于卷积神经网络的深度学习算法,构建检测胸部x光片肺炎相关变化的处理模型,并根据检测结果将其分为两组。该方法旨在提高医学成像的决策和准确性。
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