Detection of Post COVID-Pneumonia Using Histogram Equalization, CLAHE Deep Learning Techniques: Deep Learning

IF 3.4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Inteligencia Artificial-Iberoamerical Journal of Artificial Intelligence Pub Date : 2023-09-06 DOI:10.4114/intartif.vol26iss72pp137-145
Vinodhini M, Sujatha Rajkumar, Mure Vamsi Kalyan Reddy, Vaishnav Janesh
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Abstract

Pneumonia, also known as bronchitis, is caused by bacteria, viruses, or fungi. Pneumonia can be fatal to an infected person because the lungs cannot exchange air. The disease primarily affects infants and people over the age of 65. Every year, nearly 4 million people are killed by the disease, which affects an estimated 420 million people. It is critical to detect and diagnose this condition as soon as possible. Diagnosing the condition using the patient's x-ray is the most effective method. Experienced radiologists will use a chest x-ray of the affected patient to make this informed decision. Recently, coronavirus is a contagious viral disease caused by the SARSCoV2 virus. This virus affects the human respiratory system. The virus also causes pneumonia (COVID pneumonia), which is far more dangerous than normal pneumonia. The main purpose of this task is to study and compare several deep learning enhancement techniques applied to medical x-ray and CT scan images for the detection of COVID19 (pneumonia). A convolutional neural network (CNN) is used to design a model that can distinguish between COVID19 pneumonia and normal pneumonia. In addition, image enhancement techniques (histogram equalization (HE), contrast-limited adaptive histogram equalization (CLAHE)) have been processed against the dataset to find more efficient methods and models for detecting pneumonia. A dataset of 6432 CXRs were used - 576 COVID pneumonia CXRs, 1583 normal pneumonia CXRs, and 4273 healthy lung CXRs. Based on the results, it was observed that the equalized histogram and the equalized dataset of CLAHE run faster than the original dataset. This requires a computer-aided diagnosis (CAD) system that can distinguish between COVID pneumonia, normal pneumonia, and healthy lungs. In addition, the improved VGG16 achieved 96% accuracy in the detection of X-ray images of COVID19 - pneumonia.
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基于直方图均衡化、CLAHE深度学习技术的新型冠状病毒肺炎检测:深度学习
肺炎,也被称为支气管炎,是由细菌、病毒或真菌引起的。肺炎对感染者来说是致命的,因为肺部不能交换空气。这种疾病主要影响婴儿和65岁以上的人。每年有近400万人死于这种疾病,估计有4.2亿人受到影响。尽早发现和诊断这种情况至关重要。使用病人的x光片诊断病情是最有效的方法。经验丰富的放射科医生会使用受影响患者的胸部x光片来做出明智的决定。冠状病毒是由SARSCoV2病毒引起的一种传染性病毒性疾病。这种病毒影响人的呼吸系统。这种病毒还会导致肺炎(COVID -肺炎),这比普通肺炎要危险得多。本任务的主要目的是研究和比较几种应用于医学x射线和CT扫描图像的深度学习增强技术,以检测covid - 19(肺炎)。利用卷积神经网络(CNN)设计了一个能够区分covid - 19肺炎和正常肺炎的模型。此外,针对数据集处理图像增强技术(直方图均衡化(HE),对比度有限的自适应直方图均衡化(CLAHE)),以找到更有效的肺炎检测方法和模型。使用了6432个cxr数据集- 576个COVID -肺炎cxr, 1583个正常肺炎cxr和4273个健康肺cxr。结果表明,CLAHE的均衡化直方图和均衡化数据集的运行速度都快于原始数据集。这需要能够区分COVID - 19肺炎、正常肺炎和健康肺部的计算机辅助诊断(CAD)系统。此外,改进后的VGG16对covid - 19肺炎x射线图像的检测准确率达到96%。
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来源期刊
CiteScore
2.00
自引率
0.00%
发文量
15
审稿时长
8 weeks
期刊介绍: Inteligencia Artificial is a quarterly journal promoted and sponsored by the Spanish Association for Artificial Intelligence. The journal publishes high-quality original research papers reporting theoretical or applied advances in all branches of Artificial Intelligence. The journal publishes high-quality original research papers reporting theoretical or applied advances in all branches of Artificial Intelligence. Particularly, the Journal welcomes: New approaches, techniques or methods to solve AI problems, which should include demonstrations of effectiveness oor improvement over existing methods. These demonstrations must be reproducible. Integration of different technologies or approaches to solve wide problems or belonging different areas. AI applications, which should describe in detail the problem or the scenario and the proposed solution, emphasizing its novelty and present a evaluation of the AI techniques that are applied. In addition to rapid publication and dissemination of unsolicited contributions, the journal is also committed to producing monographs, surveys or special issues on topics, methods or techniques of special relevance to the AI community. Inteligencia Artificial welcomes submissions written in English, Spaninsh or Portuguese. But at least, a title, summary and keywords in english should be included in each contribution.
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