CNN-XGboost肺炎疾病分类模型的改进

Polish journal of radiology Pub Date : 2023-10-25 eCollection Date: 2023-01-01 DOI:10.5114/pjr.2023.132533
Yousra Hedhoud, Tahar Mekhaznia, Mohamed Amroune
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引用次数: 0

摘要

目的:x线图像被视为急诊诊断的重要组成部分。它们经常被深度学习应用程序用于疾病预测,尤其是胸部病变。肺炎是一种由细菌或病毒引起的致命胸部疾病,它会产生胸腔积液,液体在肺部积聚,导致呼吸困难。与计算机断层扫描或磁共振成像等其他方式相比,利用x射线成像检测肺炎有几个优点。x射线为筛查和诊断肺炎提供了一种成本效益高且易于获得的方法,可以更快地进行评估和及时干预。然而,胸部x线图像的解释取决于放射科医生的能力。在这项研究中,我们的目标是提出新的因素,导致更好地解释胸部x线图像的肺炎检测,特别是区分病毒性和细菌性肺炎。材料和方法:我们提出了一种基于卷积神经网络(cnn)和极端梯度增强(XGboost)的肺炎分类解释模型。实验研究通过各种场景进行处理,使用Python作为编程语言和从广州妇女儿童医疗中心获得的公共数据库。结果:结果表明,在短短7秒内,准确率达到87%,从而与现有的类似工作相比,其有效性得到了认可。结论:本研究提供了一种基于CNN和XGboost的病毒性肺炎和细菌性肺炎图像分类模型。由于缺乏适当的数据,这项工作是一项具有挑战性的任务。实验过程的准确度为87%,特异性为89%,灵敏度为85%。
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An improvement of the CNN-XGboost model for pneumonia disease classification.

Purpose: X-ray images are viewed as a vital component in emergency diagnosis. They are often used by deep learning applications for disease prediction, especially for thoracic pathologies. Pneumonia, a fatal thoracic disease induced by bacteria or viruses, generates a pleural effusion where fluids are accumulated inside lungs, leading to breathing difficulty. The utilization of X-ray imaging for pneumonia detection offers several advantages over other modalities such as computed tomography scans or magnetic resonance imaging. X-rays provide a cost-effective and easily accessible method for screening and diagnosing pneumonia, allowing for quicker assessment and timely intervention. However, interpretation of chest X-ray images depends on the radiologist's competency. Within this study, we aim to suggest new elements leading to good interpretation of chest X-ray images for pneumonia detection, especially for distinguishing between viral and bacterial pneumonia.

Material and methods: We proposed an interpretation model based on convolutional neural networks (CNNs) and extreme gradient boosting (XGboost) for pneumonia classification. The experimental study is processed through various scenarios, using Python as a programming language and a public database obtained from Guangzhou Women and Children's Medical Centre.

Results: The results demonstrate an acceptable accuracy of 87% within a mere 7 seconds, thereby endorsing its effectiveness compared to similar existing works.

Conclusions: Our study provides a model based on CNN and XGboost to classify images of viral and bacterial pneumonia. The work is a challenging task due to the lack of appropriate data. The experimental process allows a better accuracy of 87%, a specificity of 89%, and a sensitivity of 85%.

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