一种深度学习系统,通过屏蔽肺部CT图像诊断COVID-19肺炎,以避免人工智能生成的COVID-19诊断包括肺外的数据

IF 0.8 Q4 ENGINEERING, BIOMEDICAL
T. Nagaoka, T. Kozuka, Takahiro Yamada, H. Habe, M. Nemoto, M. Tada, K. Abe, H. Handa, Hisashi Yoshida, Kazunari Ishii, Yuichi Kimura
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引用次数: 3

摘要

目的:本研究的目的是开发一种基于人工智能(AI)的新型系统,利用计算机断层扫描(CT)切片图像诊断冠状病毒病(COVID-19)。之前的研究表明,如果不关注肺部,人工智能就会使用肺外的信息来诊断COVID-19。如果将多个设施的CT训练数据和CT模型纳入其中,也可能导致人工智能诊断出与新冠病毒无关的特征。因此,本研究的目的是使用单个CT模型,评估来自单个设备的肺口罩图像和CT切片图像的组合,并使用人工智能仅根据与肺相关的信息区分COVID-19与其他类型的肺炎。方法:利用已有的AI结构,将肺罩图像叠加到图像特征输出上,可以排除肺周围以外的图像特征。该模型的结果还与仅提取肺区域的切片图像结果进行了比较。该系统采用了集成方法。对多个ai输出进行平均,根据CT切片图像区分COVID-19与其他类型肺炎。结果:该系统使用单个CT模型评估了在单个设施进行的132次COVID-19病例扫描和62次非COVID-19病例扫描。该系统的初始灵敏度、特异性和准确性分别为95%、53%和81%,阈值为0.50。将阈值设置为0.84,使敏感性和特异性分别达到76%和84%的临床可用值。结论:本研究开发的系统能够区分COVID-19肺炎与其他类型肺炎,具有足够的准确性,可用于临床实践。与之前的研究相比,尽管应用了更严格的条件,但这是在没有包括临床无意义区域图像的情况下完成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning System to Diagnose COVID-19 Pneumonia Using Masked Lung CT Images to Avoid AI-generated COVID-19 Diagnoses that Include Data outside the Lungs
Objective: The objective of the current study was to develop a novel, artificial intelligence (AI)-based system to diagnose coronavirus disease (COVID-19) using computed tomography (CT) slice images. Prior research has demonstrated that, if not focused on the lungs, AI diagnoses COVID-19 using information outside the lungs. The inclusion of CT training data from multiple facilities and CT models may also cause AI to diagnose COVID-19 with features that are irrelevant to COVID-19. Thus, the objective of the current study was to evaluate a combination of lung mask images and CT slice images from a single facility, using a single CT model, and use AI to differentiate COVID-19 from other types of pneumonia based solely on information related to the lungs. Method: By superimposing lung mask images on image feature output using an existing AI structure, it was possible to exclude image features other than those around the lungs. The results of this model were also compared with the slice image findings from which only the lung region was extracted. The system adopted an ensemble approach. The outputs of multiple AIs were averaged to differentiate COVID-19 cases from other types of pneumonia, based on CT slice images. Results: The system evaluated 132 scans of COVID-19 cases and 62 scans of non-COVID-19 cases taken at the single facility using a single CT model. The initial sensitivity, specificity, and accuracy of our system, using a threshold value of 0.50, was shown to be 95%, 53%, and 81%, respectively. Setting the threshold value to 0.84 adjusted the sensitivity and specificity to clinically usable values of 76% and 84%, respectively. Conclusion: The system developed in the current study was able to differentiate between pneumonia due to COVID-19 and other types of pneumonia with sufficient accuracy for use in clinical practice. This was accomplished without the inclusion of images of clinically meaningless regions and despite the application of more stringent conditions, compared to prior studies.
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来源期刊
Advanced Biomedical Engineering
Advanced Biomedical Engineering ENGINEERING, BIOMEDICAL-
CiteScore
1.40
自引率
10.00%
发文量
15
审稿时长
15 weeks
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