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使用多级分类快速准确地检测 COVID-19 以及其他 14 种胸部病症:算法开发和验证研究。

Fast and Accurate Detection of COVID-19 Along With 14 Other Chest Pathologies Using a Multi-Level Classification: Algorithm Development and Validation Study.

机构信息

Department of Information Technology, College of Computer, Qassim University, Buraydah, Saudi Arabia.

Department of Computer Science, Kent State University, Kent, OH, United States.

出版信息

J Med Internet Res. 2021 Feb 10;23(2):e23693. doi: 10.2196/23693.

Abstract

BACKGROUND

COVID-19 has spread very rapidly, and it is important to build a system that can detect it in order to help an overwhelmed health care system. Many research studies on chest diseases rely on the strengths of deep learning techniques. Although some of these studies used state-of-the-art techniques and were able to deliver promising results, these techniques are not very useful if they can detect only one type of disease without detecting the others.

OBJECTIVE

The main objective of this study was to achieve a fast and more accurate diagnosis of COVID-19. This study proposes a diagnostic technique that classifies COVID-19 x-ray images from normal x-ray images and those specific to 14 other chest diseases.

METHODS

In this paper, we propose a novel, multilevel pipeline, based on deep learning models, to detect COVID-19 along with other chest diseases based on x-ray images. This pipeline reduces the burden of a single network to classify a large number of classes. The deep learning models used in this study were pretrained on the ImageNet dataset, and transfer learning was used for fast training. The lungs and heart were segmented from the whole x-ray images and passed onto the first classifier that checks whether the x-ray is normal, COVID-19 affected, or characteristic of another chest disease. If it is neither a COVID-19 x-ray image nor a normal one, then the second classifier comes into action and classifies the image as one of the other 14 diseases.

RESULTS

We show how our model uses state-of-the-art deep neural networks to achieve classification accuracy for COVID-19 along with 14 other chest diseases and normal cases based on x-ray images, which is competitive with currently used state-of-the-art models. Due to the lack of data in some classes such as COVID-19, we applied 10-fold cross-validation through the ResNet50 model. Our classification technique thus achieved an average training accuracy of 96.04% and test accuracy of 92.52% for the first level of classification (ie, 3 classes). For the second level of classification (ie, 14 classes), our technique achieved a maximum training accuracy of 88.52% and test accuracy of 66.634% by using ResNet50. We also found that when all the 16 classes were classified at once, the overall accuracy for COVID-19 detection decreased, which in the case of ResNet50 was 88.92% for training data and 71.905% for test data.

CONCLUSIONS

Our proposed pipeline can detect COVID-19 with a higher accuracy along with detecting 14 other chest diseases based on x-ray images. This is achieved by dividing the classification task into multiple steps rather than classifying them collectively.

摘要

背景

COVID-19 传播速度非常快,建立一个能够进行检测的系统非常重要,以便帮助不堪重负的医疗系统。许多关于胸部疾病的研究都依赖于深度学习技术的优势。尽管其中一些研究使用了最先进的技术并能够提供有希望的结果,但如果这些技术不能检测到其他类型的疾病,而只能检测到一种疾病,那么这些技术就不是很有用。

目的

本研究的主要目的是实现 COVID-19 的快速和更准确的诊断。本研究提出了一种诊断技术,用于对 COVID-19 胸片与正常胸片以及 14 种其他胸部疾病的胸片进行分类。

方法

在本文中,我们提出了一种新颖的、基于深度学习模型的多层次管道,用于根据 X 射线图像检测 COVID-19 以及其他胸部疾病。该管道减轻了单个网络对大量类别的分类负担。本研究中使用的深度学习模型是在 ImageNet 数据集上进行预训练的,并使用迁移学习进行快速训练。从整个 X 射线图像中分割出肺和心脏,并将其传递给第一个分类器,该分类器检查 X 射线是否正常、COVID-19 受影响或是否为其他胸部疾病的特征。如果它既不是 COVID-19 X 射线图像也不是正常图像,那么第二个分类器就会启动,并将图像分类为其他 14 种疾病之一。

结果

我们展示了我们的模型如何使用最先进的深度神经网络来实现基于 X 射线图像的 COVID-19 以及 14 种其他胸部疾病和正常病例的分类准确性,这与当前使用的最先进模型具有竞争力。由于某些类别的数据不足,例如 COVID-19,我们通过 ResNet50 模型应用了 10 倍交叉验证。因此,我们的分类技术在第一级分类(即 3 类)中实现了平均训练准确率为 96.04%和测试准确率为 92.52%。对于第二级分类(即 14 类),我们的技术通过使用 ResNet50 实现了最高训练准确率为 88.52%和测试准确率为 66.634%。我们还发现,当同时对所有 16 个类别进行分类时,COVID-19 检测的整体准确性会降低,在 ResNet50 的情况下,训练数据的整体准确性为 88.92%,测试数据的整体准确性为 71.905%。

结论

我们提出的管道可以通过将分类任务分成多个步骤而不是集体分类来提高 COVID-19 检测的准确性,同时还可以检测 X 射线图像中的 14 种其他胸部疾病。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0a6d/7879720/85259ac9272a/jmir_v23i2e23693_fig1.jpg

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