论文标题
建立有效而有效的深度学习模型,用于在X射线图像中检测到COVID-19
Towards an Effective and Efficient Deep Learning Model for COVID-19 Patterns Detection in X-ray Images
论文作者
论文摘要
如今,面对Covid-19的大流行是人类物种最突出的挑战之一。减慢病毒传播的关键因素是受感染患者的快速诊断和隔离。 COVID-19鉴定的标准方法,即逆转录聚合酶链反应方法,是由于大流行而导致的,并且供不应求。因此,研究人员一直在寻找替代性筛查方法,并将深度学习应用于患者的胸部X射线射线,一直显示出令人鼓舞的结果。尽管它们取得了成功,但这些方法的计算成本仍然很高,这在其可及性和可用性方面造成了困难。因此,这项工作的主要目标是在记忆和处理时间方面提出一种准确而有效的方法,以解决胸部X射线中的Covid-19筛选问题。方法:为了实现定义的目标,我们利用并扩展了深人造神经网络的有效网络家族,这些家族以其高精度和其他应用中的足迹较低而闻名。我们还通过分层分类器来利用问题的基本分类法。 13,569张X射线图像的数据集分为健康的非旋转-19肺炎,而Covid-19患者则用于训练拟议的方法和其他5种相互竞争的体系结构。最后,使用三类的231张图像来评估方法的质量。结果:结果表明,所提出的方法能够产生高质量的模型,总体准确性为93.9%,即19.9%,灵敏度为96.8%,阳性预测为100%,而比其他测试结构的参数少5到30倍。在声称深度学习可以帮助医生在X射线图像中检测COVID-19的任务之前,仍然需要更大,更异质的数据库进行验证。
Confronting the pandemic of COVID-19, is nowadays one of the most prominent challenges of the human species. A key factor in slowing down the virus propagation is the rapid diagnosis and isolation of infected patients. The standard method for COVID-19 identification, the Reverse transcription polymerase chain reaction method, is time-consuming and in short supply due to the pandemic. Thus, researchers have been looking for alternative screening methods and deep learning applied to chest X-rays of patients has been showing promising results. Despite their success, the computational cost of these methods remains high, which imposes difficulties to their accessibility and availability. Thus, the main goal of this work is to propose an accurate yet efficient method in terms of memory and processing time for the problem of COVID-19 screening in chest X-rays. Methods: To achieve the defined objective we exploit and extend the EfficientNet family of deep artificial neural networks which are known for their high accuracy and low footprints in other applications. We also exploit the underlying taxonomy of the problem with a hierarchical classifier. A dataset of 13,569 X-ray images divided into healthy, non-COVID-19 pneumonia, and COVID-19 patients is used to train the proposed approaches and other 5 competing architectures. Finally, 231 images of the three classes were used to assess the quality of the methods. Results: The results show that the proposed approach was able to produce a high-quality model, with an overall accuracy of 93.9%, COVID-19, sensitivity of 96.8% and positive prediction of 100%, while having from 5 to 30 times fewer parameters than other than the other tested architectures. Larger and more heterogeneous databases are still needed for validation before claiming that deep learning can assist physicians in the task of detecting COVID-19 in X-ray images.