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利用胸部 X 光图像中的不变特征标志物对冠状病毒患者的肺功能进行早期评估。

Early assessment of lung function in coronavirus patients using invariant markers from chest X-rays images.

机构信息

BioImaging Laboratory, Department of Bioengineering, University of Louisville, Louisville, KY, USA.

College of Technological Innovation, Zayed University, Dubai, UAE.

出版信息

Sci Rep. 2021 Jun 8;11(1):12095. doi: 10.1038/s41598-021-91305-0.

Abstract

The primary goal of this manuscript is to develop a computer assisted diagnostic (CAD) system to assess pulmonary function and risk of mortality in patients with coronavirus disease 2019 (COVID-19). The CAD system processes chest X-ray data and provides accurate, objective imaging markers to assist in the determination of patients with a higher risk of death and thus are more likely to require mechanical ventilation and/or more intensive clinical care.To obtain an accurate stochastic model that has the ability to detect the severity of lung infection, we develop a second-order Markov-Gibbs random field (MGRF) invariant under rigid transformation (translation or rotation of the image) as well as scale (i.e., pixel size). The parameters of the MGRF model are learned automatically, given a training set of X-ray images with affected lung regions labeled. An X-ray input to the system undergoes pre-processing to correct for non-uniformity of illumination and to delimit the boundary of the lung, using either a fully-automated segmentation routine or manual delineation provided by the radiologist, prior to the diagnosis. The steps of the proposed methodology are: (i) estimate the Gibbs energy at several different radii to describe the inhomogeneity in lung infection; (ii) compute the cumulative distribution function (CDF) as a new representation to describe the local inhomogeneity in the infected region of lung; and (iii) input the CDFs to a new neural network-based fusion system to determine whether the severity of lung infection is low or high. This approach is tested on 200 clinical X-rays from 200 COVID-19 positive patients, 100 of whom died and 100 who recovered using multiple training/testing processes including leave-one-subject-out (LOSO), tenfold, fourfold, and twofold cross-validation tests. The Gibbs energy for lung pathology was estimated at three concentric rings of increasing radii. The accuracy and Dice similarity coefficient (DSC) of the system steadily improved as the radius increased. The overall CAD system combined the estimated Gibbs energy information from all radii and achieved a sensitivity, specificity, accuracy, and DSC of 100%, 97% ± 3%, 98% ± 2%, and 98% ± 2%, respectively, by twofold cross validation. Alternative classification algorithms, including support vector machine, random forest, naive Bayes classifier, K-nearest neighbors, and decision trees all produced inferior results compared to the proposed neural network used in this CAD system. The experiments demonstrate the feasibility of the proposed system as a novel tool to objectively assess disease severity and predict mortality in COVID-19 patients. The proposed tool can assist physicians to determine which patients might require more intensive clinical care, such a mechanical respiratory support.

摘要

本文的主要目标是开发一种计算机辅助诊断 (CAD) 系统,以评估 2019 年冠状病毒病 (COVID-19) 患者的肺功能和死亡风险。该 CAD 系统处理胸部 X 射线数据,并提供准确、客观的成像标志物,以帮助确定死亡风险较高的患者,因此更有可能需要机械通气和/或更强化的临床护理。为了获得能够检测肺部感染严重程度的准确随机模型,我们开发了一种二阶马尔可夫-吉布斯随机场 (MGRF),该模型在刚性变换(图像的平移或旋转)以及尺度(即像素大小)下是不变的。通过对具有受影响肺部区域标记的 X 射线图像的训练集进行学习,自动学习 MGRF 模型的参数。系统的 X 射线输入在诊断之前先经过预处理,以校正不均匀的光照并限定肺部边界,预处理可以使用全自动分割例程或放射科医生提供的手动勾画。所提出方法的步骤包括:(i) 估计几个不同半径处的吉布斯能量以描述肺部感染的不均匀性;(ii) 计算累积分布函数 (CDF) 作为新的表示形式以描述肺部感染区域的局部不均匀性;以及 (iii) 将 CDF 输入到基于新神经网络的融合系统中,以确定肺部感染的严重程度是低还是高。该方法在 200 名 COVID-19 阳性患者的 200 例临床 X 射线上进行了测试,其中 100 名死亡,100 名康复。通过包括留一法(LOSO)、十倍交叉验证、四倍交叉验证和两倍交叉验证在内的多种训练/测试过程进行了测试。在三个同心环上估计了肺部病理的吉布斯能量,半径越大,系统的准确性和骰子相似系数 (DSC) 越高。通过两倍交叉验证,综合所有半径的估计吉布斯能量信息的整体 CAD 系统实现了 100%的灵敏度、97%±3%的特异性、98%±2%的准确性和 98%±2%的 DSC。替代分类算法,包括支持向量机、随机森林、朴素贝叶斯分类器、K 最近邻和决策树,与本文中 CAD 系统中使用的提议神经网络相比,产生的结果均不如。实验证明了所提出系统作为一种客观评估疾病严重程度和预测 COVID-19 患者死亡率的新工具的可行性。该工具可以帮助医生确定哪些患者可能需要更强化的临床护理,例如机械通气支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a6f8/8187631/129eaac0972f/41598_2021_91305_Fig1_HTML.jpg

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