Hedhoud Yousra, Mekhaznia Tahar, Amroune Mohamed
Tebessi University, Tebessa, Algeria.
LAMIS Laboratory, Cheikh Larbi Tebessi University, Tebessa, Algeria.
Pol J Radiol. 2023 Oct 25;88:e483-e493. doi: 10.5114/pjr.2023.132533. eCollection 2023.
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.
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.
The results demonstrate an acceptable accuracy of 87% within a mere 7 seconds, thereby endorsing its effectiveness compared to similar existing works.
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%.
X线图像被视为急诊诊断的重要组成部分。它们常用于深度学习应用中的疾病预测,尤其是用于胸部疾病的预测。肺炎是一种由细菌或病毒引起的致命性胸部疾病,会导致胸腔积液,即肺部内积聚液体,进而导致呼吸困难。与计算机断层扫描或磁共振成像等其他检查方式相比,利用X线成像检测肺炎具有诸多优势。X线提供了一种经济高效且易于获取的肺炎筛查和诊断方法,能够实现更快的评估和及时的干预。然而,胸部X线图像的解读取决于放射科医生的能力。在本研究中,我们旨在提出有助于对胸部X线图像进行良好解读以检测肺炎的新要素,特别是用于区分病毒性肺炎和细菌性肺炎。
我们提出了一种基于卷积神经网络(CNN)和极端梯度提升(XGboost)的肺炎分类解读模型。实验研究通过各种场景进行,使用Python作为编程语言,并使用从广州妇女儿童医疗中心获取的公共数据库。
结果表明,该模型在短短7秒内就能达到87%的可接受准确率,从而证明了其与现有类似研究相比的有效性。
我们的研究提供了一种基于CNN和XGboost的模型来对病毒性和细菌性肺炎的图像进行分类。由于缺乏合适的数据,这项工作是一项具有挑战性的任务。实验过程实现了87%的更高准确率、89%的特异性和85%的灵敏度。