Waddell T, Namburete A I L, Duckworth P, Eichert N, Thomaides-Brears H, Cuthbertson D J, Despres J P, Brady M
Department of Engineering Science, The University of Oxford, Oxford, United Kingdom.
Perspectum Ltd., Oxford, United Kingdom.
Front Bioinform. 2023 May 24;3:1163430. doi: 10.3389/fbinf.2023.1163430. eCollection 2023.
Obesity is a significant risk factor for adverse outcomes following coronavirus infection (COVID-19). However, BMI fails to capture differences in the body fat distribution, the critical driver of metabolic health. Conventional statistical methodologies lack functionality to investigate the between fat distribution and disease outcomes. We applied Bayesian network (BN) modelling to explore the mechanistic link between body fat deposition and hospitalisation risk in 459 participants with COVID-19 (395 non-hospitalised and 64 hospitalised). MRI-derived measures of visceral adipose tissue (VAT), subcutaneous adipose tissue (SAT), and liver fat were included. Conditional probability queries were performed to estimate the probability of hospitalisation after fixing the value of specific network variables. The probability of hospitalisation was 18% higher in people living with obesity than those with normal weight, with elevated VAT being the primary determinant of obesity-related risk. Across all BMI categories, elevated VAT and liver fat (>10%) were associated with a 39% mean increase in the probability of hospitalisation. Among those with normal weight, reducing liver fat content from >10% to <5% reduced hospitalisation risk by 29%. Body fat distribution is a critical determinant of COVID-19 hospitalisation risk. BN modelling and probabilistic inferences assist our understanding of the mechanistic associations between imaging-derived phenotypes and COVID-19 hospitalisation risk.
肥胖是冠状病毒感染(COVID-19)后出现不良后果的一个重要风险因素。然而,体重指数(BMI)未能体现出身体脂肪分布的差异,而身体脂肪分布是代谢健康的关键驱动因素。传统的统计方法缺乏研究脂肪分布与疾病结局之间关系的功能。我们应用贝叶斯网络(BN)建模来探究459名COVID-19患者(395名未住院和64名住院)身体脂肪沉积与住院风险之间的机制联系。纳入了通过磁共振成像(MRI)得出的内脏脂肪组织(VAT)、皮下脂肪组织(SAT)和肝脏脂肪的测量值。进行条件概率查询以估计在固定特定网络变量值后住院的概率。肥胖者的住院概率比正常体重者高18%,VAT升高是肥胖相关风险的主要决定因素。在所有BMI类别中,VAT升高和肝脏脂肪含量>10%与住院概率平均增加39%相关。在正常体重者中,将肝脏脂肪含量从>10%降至<5%可使住院风险降低29%。身体脂肪分布是COVID-19住院风险的关键决定因素。BN建模和概率推断有助于我们理解影像学衍生表型与COVID-19住院风险之间的机制关联。