EpiChron Research Group, Aragon Health Sciences Institute (IACS), IIS Aragón, Miguel Servet University Hospital, 50009 Zaragoza, Spain.
Health Services Research on Chronic Patients Network (REDISSEC), ISCIII, 28029 Madrid, Spain.
Int J Environ Res Public Health. 2022 Mar 23;19(7):3808. doi: 10.3390/ijerph19073808.
Identifying the population at risk of COVID-19 infection severity is a priority for clinicians and health systems. Most studies to date have only focused on the effect of specific disorders on infection severity, without considering that patients usually present multiple chronic diseases and that these conditions tend to group together in the form of multimorbidity patterns. In this large-scale epidemiological study, including primary and hospital care information of 166,242 patients with confirmed COVID-19 infection from the Spanish region of Andalusia, we applied network analysis to identify multimorbidity profiles and analyze their impact on the risk of hospitalization and mortality. Our results showed that multimorbidity was a risk factor for COVID-19 severity and that this risk increased with the morbidity burden. Individuals with advanced cardio-metabolic profiles frequently presented the highest infection severity risk in both sexes. The pattern with the highest severity associated in men was present in almost 28.7% of those aged ≥ 80 years and included associations between cardiovascular, respiratory, and metabolic diseases; age-adjusted odds ratio (OR) 95% confidence interval (1.71 (1.44-2.02)). In women, similar patterns were also associated the most with infection severity, in 7% of 65-79-year-olds (1.44 (1.34-1.54)) and in 29% of ≥80-year-olds (1.35 (1.18-1.53)). Patients with mental health patterns also showed one of the highest risks of COVID-19 severity, especially in women. These findings strongly recommend the implementation of personalized approaches to patients with multimorbidity and SARS-CoV-2 infection, especially in the population with high morbidity burden.
确定 COVID-19 感染严重程度的高危人群是临床医生和卫生系统的当务之急。迄今为止,大多数研究仅关注特定疾病对感染严重程度的影响,而没有考虑到患者通常同时患有多种慢性疾病,并且这些疾病往往以多种合并症模式的形式聚集在一起。在这项大规模的流行病学研究中,我们纳入了来自西班牙安达卢西亚地区的 166242 例确诊 COVID-19 感染患者的初级保健和住院医疗信息,应用网络分析来确定多种合并症模式,并分析其对住院和死亡风险的影响。我们的研究结果表明,多种合并症是 COVID-19 严重程度的一个危险因素,而且这种风险随着合并症负担的增加而增加。患有先进的心血管代谢合并症的个体在两性中经常表现出最高的感染严重程度风险。在男性中与最高严重程度相关的模式在≥80 岁的人群中几乎有 28.7%存在,包括心血管、呼吸和代谢疾病之间的关联;年龄调整后的比值比(OR)95%置信区间(1.71(1.44-2.02))。在女性中,类似的模式也与感染严重程度最相关,在 65-79 岁的人群中占 7%(1.44(1.34-1.54)),在≥80 岁的人群中占 29%(1.35(1.18-1.53))。患有精神健康模式的患者也表现出 COVID-19 严重程度的最高风险之一,尤其是女性。这些发现强烈建议对患有多种合并症和 SARS-CoV-2 感染的患者实施个性化方法,尤其是在合并症负担高的人群中。