多输入卷积神经网络用于 COVID-19 分类和胸部 X 光片关键区域筛查:模型开发与性能评估

JMIR bioinformatics and biotechnology Pub Date : 2022-10-04 eCollection Date: 2022-01-01 DOI:10.2196/36660
Zhongqiang Li, Zheng Li, Luke Yao, Qing Chen, Jian Zhang, Xin Li, Ji-Ming Feng, Yanping Li, Jian Xu
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引用次数: 0

摘要

背景:COVID-19 大流行正在成为最大的、前所未有的健康危机之一,而胸部 X 射线摄影(CXR)在诊断 COVID-19 方面发挥着至关重要的作用。然而,从 CXR 中提取和寻找有用的图像特征对放射科医生来说是一项繁重的工作:本研究旨在设计一种新型多输入(MI)卷积神经网络(CNN),用于对 COVID-19 进行分类,并从 CXR 中提取关键区域。我们还研究了输入数量对新型 MI-CNN 模型性能的影响:我们共使用了 6205 张 CXR 图像(包括 3021 张 COVID-19 CXR 和 3184 张正常 CXR)来测试 MI-CNN 模型。CXR 可被均匀分割成不同数量(2、4 和 16)的单个区域。每个区域可单独作为 MI-CNN 的输入之一。然后,这些 MI-CNN 输入的 CNN 特征将被融合用于 COVID-19 分类。更重要的是,可以通过评估测试数据集中相应区域准确分类的图像数量来评估每个 CXR 区域的贡献:结果:在整个图像和左右肺感兴趣区(LR-ROI)数据集中,MI-CNN 在 COVID-19 分类中都表现出了良好的效率。尤其是输入较多的 MI-CNN(2 输入、4 输入和 16 输入 MI-CNN)在识别 COVID-19 CXR 方面的效率要高于 1 输入 CNN。与全图像数据集相比,LR-ROI 数据集的准确率、灵敏度、特异性和精确度(超过 91%)均低约 4%。考虑到每个区域的贡献,性能下降的可能原因之一是非肺区域(如第 16 区域)对 COVID-19 分类提供了假阳性贡献。使用 LR-ROI 数据集的 MI-CNN 可以更准确地评估每个区域的贡献和 COVID-19 分类。此外,右肺区域对 COVID-19 CXR 分类的贡献率较高,而左肺区域对识别正常 CXR 的贡献率较高:总的来说,MI-CNN 可以随着输入数量的增加(如 16 输入 MI-CNN)而获得更高的准确率。这种方法可以帮助放射科医生识别 COVID-19 CXR,并筛选出与 COVID-19 分类相关的关键区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multiple-Inputs Convolutional Neural Network for COVID-19 Classification and Critical Region Screening From Chest X-ray Radiographs: Model Development and Performance Evaluation.

Multiple-Inputs Convolutional Neural Network for COVID-19 Classification and Critical Region Screening From Chest X-ray Radiographs: Model Development and Performance Evaluation.

Multiple-Inputs Convolutional Neural Network for COVID-19 Classification and Critical Region Screening From Chest X-ray Radiographs: Model Development and Performance Evaluation.

Multiple-Inputs Convolutional Neural Network for COVID-19 Classification and Critical Region Screening From Chest X-ray Radiographs: Model Development and Performance Evaluation.

Background: The COVID-19 pandemic is becoming one of the largest, unprecedented health crises, and chest X-ray radiography (CXR) plays a vital role in diagnosing COVID-19. However, extracting and finding useful image features from CXRs demand a heavy workload for radiologists.

Objective: The aim of this study was to design a novel multiple-inputs (MI) convolutional neural network (CNN) for the classification of COVID-19 and extraction of critical regions from CXRs. We also investigated the effect of the number of inputs on the performance of our new MI-CNN model.

Methods: A total of 6205 CXR images (including 3021 COVID-19 CXRs and 3184 normal CXRs) were used to test our MI-CNN models. CXRs could be evenly segmented into different numbers (2, 4, and 16) of individual regions. Each region could individually serve as one of the MI-CNN inputs. The CNN features of these MI-CNN inputs would then be fused for COVID-19 classification. More importantly, the contributions of each CXR region could be evaluated through assessing the number of images that were accurately classified by their corresponding regions in the testing data sets.

Results: In both the whole-image and left- and right-lung region of interest (LR-ROI) data sets, MI-CNNs demonstrated good efficiency for COVID-19 classification. In particular, MI-CNNs with more inputs (2-, 4-, and 16-input MI-CNNs) had better efficiency in recognizing COVID-19 CXRs than the 1-input CNN. Compared to the whole-image data sets, the efficiency of LR-ROI data sets showed approximately 4% lower accuracy, sensitivity, specificity, and precision (over 91%). In considering the contributions of each region, one of the possible reasons for this reduced performance was that nonlung regions (eg, region 16) provided false-positive contributions to COVID-19 classification. The MI-CNN with the LR-ROI data set could provide a more accurate evaluation of the contribution of each region and COVID-19 classification. Additionally, the right-lung regions had higher contributions to the classification of COVID-19 CXRs, whereas the left-lung regions had higher contributions to identifying normal CXRs.

Conclusions: Overall, MI-CNNs could achieve higher accuracy with an increasing number of inputs (eg, 16-input MI-CNN). This approach could assist radiologists in identifying COVID-19 CXRs and in screening the critical regions related to COVID-19 classifications.

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