Background and Objective: Artificial intelligence (AI) methods coupled with biomedical analysis has a critical role during pandemics as it helps to release the overwhelming pressure from healthcare systems and physicians. As the ongoing COVID-19 crisis worsens in countries having dense populations and inadequate testing kits like Brazil and India, radiological imaging can act as an important diagnostic tool to accurately classify covid-19 patients and prescribe the necessary treatment in due time. With this motivation, we present our study based on deep learning architecture for detecting covid-19 infected lungs using chest X-rays. Dataset: We collected a total of 2470 images for three different class labels, namely, healthy lungs, ordinary pneumonia, and covid-19 infected pneumonia, out of which 470 X-ray images belong to the covid-19 category. Methods: We first pre-process all the images using histogram equalization techniques and segment them using U-net architecture. VGG-16 network is then used for feature extraction from the pre-processed images which is further sampled by SMOTE oversampling technique to achieve a balanced dataset. Finally, the class-balanced features are classified using a support vector machine (SVM) classifier with 10-fold cross-validation and the accuracy is evaluated. Result and Conclusion: Our novel approach combining well-known pre-processing techniques, feature extraction methods, and dataset balancing method, lead us to an outstanding rate of recognition of 98% for COVID-19 images over a dataset of 2470 X-ray images. Our model is therefore fit to be utilized in healthcare facilities for screening purposes.
翻译:背景和目标:人工智能(AI)方法加上生物医学分析在大流行病期间起着关键作用,因为它有助于释放保健系统和医生的巨大压力。由于巴西和印度等人口稠密和测试包不足的国家正在经历COVID-19危机,巴西和印度等人口密集和测试包不足的国家的COVID-19危机正在恶化,因此放射成像可以作为一种重要的诊断工具,精确地对 Covid-19 病人进行分类,并适时规定必要的治疗。有了这个动机,我们根据利用胸透透透透透透透透透透透透透三类标签的深层学习结构,提出我们的研究报告。 数据集:我们共收集了3个不同类标签的2470图像,即健康的肺部、普通肺炎和 Covid-19 受感染的肺部,其中470个X光透透透透透透透的图像属于covid-19类别。方法:我们首先使用直方图平准处理所有图像,然后使用U-net结构。 VGGG-16网络从预处理的模型中提取特征,然后由SMOTE透透透透透透透视技术取样,以取得平衡的数据。最后数据集技术。最后, 类平衡性特征特征特征是使用一种支持的X-25的DNA分析工具,因此,我们对28的图像的图像的精确分析工具进行了分类的精确分析方法。