Radiological Sciences Department, College of Applied Medical Sciences, Najran University, Saudi Arabia.
Al-Hussein Bin Talal University, Princess Aisha Bint Al Hussein College for Nursing and Health Sciences, Jordan.
Biomed Res Int. 2022 Jul 21;2022:5260231. doi: 10.1155/2022/5260231. eCollection 2022.
Pneumonia is a common lung disease that is the leading cause of death worldwide. It primarily affects children, accounting for 18% of all deaths in children under the age of five, the elderly, and patients with other diseases. There is a variety of imaging diagnosis techniques available today. While many of them are becoming more accurate, chest radiographs are still the most common method for detecting pulmonary infections due to cost and speed. A convolutional neural network (CNN) model has been developed to classify chest X-rays in JPEG format into normal, bacterial pneumonia, and viral pneumonia. The model was trained using data from an open Kaggle database. The data augmentation technique was used to improve the model's performance. A web application built with NextJS and hosted on AWS has also been designed. The model that was optimized using the data augmentation technique had slightly better precision than the original model. This model was used to create a web application that can process an image and provide a prediction to the user. A classification model was developed that generates a prediction with 78 percent accuracy. The precision of this calculation could be improved by increasing the epoch, among other subjects. With the help of artificial intelligence, this research study was aimed at demonstrating to the general public that deep-learning models can be created to assist health professionals in the early detection of pneumonia.
肺炎是一种常见的肺部疾病,是全球范围内导致死亡的主要原因。它主要影响儿童,占五岁以下儿童所有死亡人数的 18%,以及老年人和患有其他疾病的患者。目前有多种成像诊断技术。虽然其中许多技术变得越来越准确,但由于成本和速度的原因,胸部 X 光仍然是检测肺部感染的最常见方法。已经开发了一种卷积神经网络 (CNN) 模型,用于将 JPEG 格式的胸部 X 光分类为正常、细菌性肺炎和病毒性肺炎。该模型使用来自开放的 Kaggle 数据库的数据进行训练。使用数据增强技术来提高模型的性能。还设计了一个使用 NextJS 构建并托管在 AWS 上的 Web 应用程序。使用数据增强技术优化的模型比原始模型具有略高的精度。该模型用于创建一个可以处理图像并向用户提供预测的 Web 应用程序。开发了一个分类模型,其预测准确率为 78%。通过增加 epoch 等其他方法,可以提高此计算的精度。本研究旨在借助人工智能向公众展示,深度学习模型可以创建来帮助医疗保健专业人员早期发现肺炎。