基于CNN的基于深度学习的肺部疾病分类和预测

Meragana Venu Madhavi, Devineni Vignatha, Pendem Eakshith Roop, Kasukurthi Aravinda, Peddi Anudeep
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引用次数: 0

摘要

冠状病毒攻击,也被称为COVID-19,是当今影响人类的最致命和最具破坏性的疾病之一。由于社区传播,这种冠状病毒感染已经蔓延到整个地球。通过早期发现疾病,即使在无症状的情况下,通过适当的诊断,患者的死亡率也可能降低。因此,有必要建立一个自主检测系统,以其快速和精确的发现来阻止冠状病毒的传播。通常通过胸部x光和计算机断层扫描(CT)等扫描检测COVID-19患者并给予初步预测。医学领域的深度学习方法被用来发现隐藏的模式。为了进行预测,使用卷积神经网络(CNN)提取胸部x射线图像特征。为了增强健康计划,使用模式创建在患者数据中生成预测。将胸部x线图像特征融合到CNN模型训练中,提供分类的进展。模型性能评价的测试阶段考虑了广义数据。与现有的最先进的分类方法相比,基于cnn的技术在分类和疾病预测方面表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel classification and prediction of CNN based lung disease using deep learning
Corona virus attack, also known as COVID-19, is one of the most fatal and devastating diseases that affects people today. This Corona virus infection has spread over the entire planet due to community transmission. By early illness discovery, even in asymptomatic settings, via proper diagnosis, the patient's mortality rate may be reduced. Thus, it is necessary to build an autonomous detection system that, with its quick and precise findings, stops the corona virus from spreading. COVID-19 recipients are usually detected and given an initial prediction using scans, like chest X-rays and Computed Tomography (CT). Deep learning methods from the medical realm are used to find hidden patterns. In order to make predictions, chest x-ray picture features are extracted with the use of a convolutional neural network (CNN). In order to enhance the health plan, predictions are produced in the patient data using pattern creation. The chest X-ray image characteristics are fused to the CNN model training to provide progress in classification. The testing stage of the model performance evaluation takes into account generalized data. As compared to existing classification state-of-the-art approaches, the suggested CNN-based techniques perform better in terms of classification and illness prediction.
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