Sharma Arun, Rani Sheeba, Gupta Dinesh
Translational Bioinformatics Group, International Centre for Genetic Engineering and Biotechnology (ICGEB), Aruna Asaf Ali Marg, New Delhi 110067, India.
Int J Biomed Imaging. 2020 Oct 6;2020:8889023. doi: 10.1155/2020/8889023. eCollection 2020.
The ongoing pandemic of coronavirus disease 2019 (COVID-19) has led to global health and healthcare crisis, apart from the tremendous socioeconomic effects. One of the significant challenges in this crisis is to identify and monitor the COVID-19 patients quickly and efficiently to facilitate timely decisions for their treatment, monitoring, and management. Research efforts are on to develop less time-consuming methods to replace or to supplement RT-PCR-based methods. The present study is aimed at creating efficient deep learning models, trained with chest X-ray images, for rapid screening of COVID-19 patients. We used publicly available PA chest X-ray images of adult COVID-19 patients for the development of Artificial Intelligence (AI)-based classification models for COVID-19 and other major infectious diseases. To increase the dataset size and develop generalized models, we performed 25 different types of augmentations on the original images. Furthermore, we utilized the transfer learning approach for the training and testing of the classification models. The combination of two best-performing models (each trained on 286 images, rotated through 120° or 140° angle) displayed the highest prediction accuracy for normal, COVID-19, non-COVID-19, pneumonia, and tuberculosis images. AI-based classification models trained through the transfer learning approach can efficiently classify the chest X-ray images representing studied diseases. Our method is more efficient than previously published methods. It is one step ahead towards the implementation of AI-based methods for classification problems in biomedical imaging related to COVID-19.
2019年冠状病毒病(COVID-19)的持续大流行,除了造成巨大的社会经济影响外,还引发了全球健康和医疗危机。这场危机中的重大挑战之一,是快速有效地识别和监测COVID-19患者,以便为其治疗、监测和管理做出及时决策。目前正在进行研究,以开发耗时更短的方法来替代或补充基于逆转录聚合酶链反应(RT-PCR)的方法。本研究旨在创建高效的深度学习模型,利用胸部X光图像进行训练,以快速筛查COVID-19患者。我们使用成年COVID-19患者的公开可用的后前位胸部X光图像,来开发基于人工智能(AI)的COVID-19和其他主要传染病的分类模型。为了增加数据集的规模并开发通用模型,我们对原始图像进行了25种不同类型的增强处理。此外,我们利用迁移学习方法对分类模型进行训练和测试。两个性能最佳的模型(每个模型在286张图像上进行训练,旋转角度为120°或140°)的组合,对正常、COVID-19、非COVID-19、肺炎和肺结核图像显示出最高的预测准确率。通过迁移学习方法训练的基于AI的分类模型,可以有效地对代表所研究疾病的胸部X光图像进行分类。我们的方法比先前发表的方法更有效。在实施基于AI的方法解决与COVID-19相关的生物医学成像分类问题方面,我们向前迈进了一步。