Research Centre for Optimal Health, School of Life Sciences, University of Westminster, London, United Kingdom.
Calico Life Sciences LLC, South San Francisco, California, United States of America.
PLoS One. 2023 Apr 13;18(4):e0283506. doi: 10.1371/journal.pone.0283506. eCollection 2023.
The main drivers of COVID-19 disease severity and the impact of COVID-19 on long-term health after recovery are yet to be fully understood. Medical imaging studies investigating COVID-19 to date have mostly been limited to small datasets and post-hoc analyses of severe cases. The UK Biobank recruited recovered SARS-CoV-2 positive individuals (n = 967) and matched controls (n = 913) who were extensively imaged prior to the pandemic and underwent follow-up scanning. In this study, we investigated longitudinal changes in body composition, as well as the associations of pre-pandemic image-derived phenotypes with COVID-19 severity. Our longitudinal analysis, in a population of mostly mild cases, associated a decrease in lung volume with SARS-CoV-2 positivity. We also observed that increased visceral adipose tissue and liver fat, and reduced muscle volume, prior to COVID-19, were associated with COVID-19 disease severity. Finally, we trained a machine classifier with demographic, anthropometric and imaging traits, and showed that visceral fat, liver fat and muscle volume have prognostic value for COVID-19 disease severity beyond the standard demographic and anthropometric measurements. This combination of image-derived phenotypes from abdominal MRI scans and ensemble learning to predict risk may have future clinical utility in identifying populations at-risk for a severe COVID-19 outcome.
新冠疾病严重程度的主要驱动因素以及新冠对康复后长期健康的影响尚未得到充分理解。迄今为止,针对新冠的医学影像学研究大多局限于小数据集和对重症病例的事后分析。英国生物银行招募了康复的 SARS-CoV-2 阳性个体(n = 967)和匹配的对照个体(n = 913),他们在大流行前进行了广泛的成像,并进行了随访扫描。在这项研究中,我们调查了身体成分的纵向变化,以及流行前图像衍生表型与新冠严重程度的关联。我们在大多数轻症病例的人群中的纵向分析表明,肺容积减少与 SARS-CoV-2 阳性相关。我们还观察到,新冠前内脏脂肪组织和肝脏脂肪增加,肌肉体积减少,与新冠严重程度相关。最后,我们使用人口统计学、人体测量学和影像学特征训练了一个机器分类器,并表明内脏脂肪、肝脏脂肪和肌肉体积对新冠严重程度具有预测价值,超过了标准的人口统计学和人体测量学测量。这种来自腹部 MRI 扫描的图像衍生表型的组合以及用于预测风险的集成学习,可能在未来具有识别新冠严重后果高危人群的临床应用价值。