Department of Information Technology, College of Computer, Qassim University, Buraydah, Saudi Arabia.
Curr Med Imaging. 2021;17(1):109-119. doi: 10.2174/1573405616666200604163954.
Scanning a patient's lungs to detect Coronavirus 2019 (COVID-19) may lead to similar imaging of other chest diseases. Thus, a multidisciplinary approach is strongly required to confirm the diagnosis. There are only a few works targeted at pathological x-ray images. Most of the works only target single disease detection which is not good enough. Some works have been provided for all classes. However, the results suffer due to lack of data for rare classes and data unbalancing problem.
Due to the rise in COVID-19 cases, medical facilities in many countries are overwhelmed and there is a need for an intelligent system to detect it. Few works have been done regarding the detection of the coronavirus but there are many cases where it can be misclassified as some techniques are not efficient and can only identify specific diseases. This work is a deep learning- based model to distinguish COVID-19 cases from other chest diseases.
A Deep Neural Network model provides a significant contribution in terms of detecting COVID-19 and provides an effective analysis of chest-related diseases taking into account both age and gender. Our model achieves 87% accuracy in terms of GAN-based synthetic data and presents four different types of deep learning-based models that provide comparable results to other state-of-the-art techniques.
The healthcare industry may face unfavorable consequences if the gap in the identification of all types of pneumonia is not filled with effective automation.
扫描患者肺部以检测 2019 年冠状病毒(COVID-19)可能会导致对其他胸部疾病的类似成像。因此,强烈需要多学科方法来确认诊断。只有少数针对病理 X 射线图像的研究。大多数研究仅针对单一疾病检测,这还不够好。有些作品涵盖了所有类别。然而,由于稀有类别的数据缺乏和数据不平衡问题,结果受到影响。
由于 COVID-19 病例的增加,许多国家的医疗设施不堪重负,需要一个智能系统来检测它。针对冠状病毒的检测已经做了一些工作,但由于某些技术效率不高,只能识别特定疾病,因此存在很多误诊的情况。这项工作是一个基于深度学习的模型,用于区分 COVID-19 病例和其他胸部疾病。
深度神经网络模型在检测 COVID-19 方面做出了重大贡献,并考虑到年龄和性别,对胸部相关疾病进行了有效的分析。在基于 GAN 的合成数据方面,我们的模型实现了 87%的准确率,并提出了四种不同类型的基于深度学习的模型,与其他最先进的技术提供了可比的结果。
如果不通过有效的自动化来填补所有类型肺炎识别方面的差距,医疗保健行业可能会面临不利的后果。