delta型COVID-19患者动态胸部ct变化分析及住院时间预测

Xiaoyan Xin, Wen Yang, Ying Wei, Jun Hu, Xin Peng, Yi Sun, Cong Long, Xin Zhang, Chao Du, F. Shi, Bing Zhang
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引用次数: 0

摘要

目的:新冠肺炎大流行期间住院率较高,住院时间(LOS)是衡量医疗资源配置的关键指标。本研究旨在阐明COVID-19患者在住院期间的特定动态纵向计算机断层扫描(CT)成像变化,并利用机器学习方法预测COVID-19患者合并Delta变体SARS-CoV-2的个体LOS。材料与方法:本回顾性研究于2021年7月14日至2021年8月20日招募了448例COVID-19患者,共进行了1761次CT扫描,平均住院时间为22.5±7.0天。从每次CT扫描中提取成像特征,包括CT形态特征和人工智能提取的特征。从每位患者的初次入院中获得临床特征。分析肺部感染分布及发展趋势。然后,将每次CT扫描作为一个独立样本,结合患者相应的临床特征,预测从当前CT扫描时间点到出院的LOS,构建预测患者LOS的模型。1761例随访CT数据在患者水平上随机分为训练集和测试集,比例为7:3。通过最小绝对收缩和选择算子选择85个最相关的临床和影像学特征,构建LOS预测模型。结果:获得肺部感染区占比、磨玻璃混浊(GGO)、实变及疯狂铺装型、支气管空气征等感染相关特征。它们的纵向变化表明,在早期阶段(0-3天至4-6天),强度变化显著,之后,除(- 470 ~ - 70)HU强度显著增加后又持续显著下降外,变化在统计上趋于微妙。双侧下叶,尤其是右下叶表现更为严重。与其他模型相比,结合临床、影像读数和AI特征构建的LOS预测模型在训练集和测试集上的R2最高,分别为0.854和0.463,Pearson相关系数分别为0.939和0.696,平均绝对误差最低,分别为2.405和4.426,均方误差最低,分别为9.176和34.728。结论:早期(0 ~ 3天~ 4 ~ 6天)及双侧下肺叶,尤其是右下肺叶的进展变化最为明显。根据感染相关特征随LOS(日)的纵向变化,GGO、实变、疯狂铺装型和支气管充气征是最主要的CT表现。结合临床、影像读取和人工智能特征的LOS预测模型取得了最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic chest computed tomography change analysis and prediction of length of stay for delta variant COVID-19 patients
OBJECTIVE: As hospital admission rate is high during the COVID-19 pandemic, hospital length of stay (LOS) is a key indicator of medical resource allocation. This study aimed to elucidate specific dynamic longitudinal computed tomography (CT) imaging changes for patients with COVID-19 over in-hospital and predict individual LOS of COVID-19 patients with Delta variant of SARS-CoV-2 using the machine learning method. MATERIALS AND METHODS: This retrospective study recruited 448 COVID-19 patients with a total of 1761 CT scans from July 14, 2021 to August 20, 2021 with an averaged hospital LOS of 22.5 ± 7.0 days. Imaging features were extracted from each CT scan, including CT morphological characteristics and artificial intelligence (AI) extracted features. Clinical features were obtained from each patient's initial admission. The infection distribution in lung fields and progression pattern tendency was analyzed. Then, to construct a model to predict patient LOS, each CT scan was considered as an independent sample to predict the LOS from the current CT scan time point to hospital discharge combining with the patients' corresponding clinical features. The 1761 follow-up CT data were randomly split into training set and testing set with a ratio of 7:3 at patient-level. A total of 85 most related clinical and imaging features selected by Least Absolute Shrinkage and Selection Operator were used to construct LOS prediction model. RESULTS: Infection-related features were obtained, such as the percentage of the infected region of lung, ground-glass opacity (GGO), consolidation and crazy-paving pattern, and air bronchograms. Their longitudinal changes show that the progression changes significantly in the earlier stages (0–3 days to 4–6 days), and then, changes tend to be statistically subtle, except for the intensity range between (−470 and −70) HU which exhibits a significant increase followed by a continuous significant decrease. Furthermore, the bilateral lower lobes, especially the right lower lobe, present more severe. Compared with other models, combining the clinical, imaging reading, and AI features to build the LOS prediction model achieved the highest R2 of 0.854 and 0.463, Pearson correlation coefficient of 0.939 and 0.696, and lowest mean absolute error of 2.405 and 4.426, and mean squared error of 9.176 and 34.728 on the training and testing set. CONCLUSION: The most obvious progression changes were significantly in the earlier stages (0–3 days to 4–6 days) and the bilateral lower lobes, especially the right lower lobe. GGO, consolidation, and crazy-paving pattern and air bronchograms are the most main CT findings according to the longitudinal changes of infection-related features with LOS (day). The LOS prediction model of combining clinical, imaging reading, and AI features achieved optimum performance.
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