This study analyses outcomes in a sample of people with laboratory-confirmed SARS-CoV-2 infection from an entire region, separating nursing home residents from the general population, seeking to identify predictors of short-term mortality in a large cohort including patients who were and were not hospitalized. We have succeeded in identifying a set of comorbidities and baseline treatments related to death with a good predictive capacity for people from the general population.
To date, several meta-analyses have explored the relationship between COVID-19 and mortality [19, 20]. In all cases, a potential weakness is heterogeneity in the data, and all these analyses have focused on hospitalized patients, using laboratory test results, which were not uniformly selected and evaluated. Our study confirms previously published findings in that advanced age, male sex and comorbidities are associated with a higher risk of mortality. Additionally, the present study also identifies previous hospitalizations and some chronic baseline treatments as associated with death from COVID-19.
Most of the patients in the general population and nursing homes were elderly men with multiple comorbidities, in agreement with previous studies [2,3,4,5,6, 8]. It has been speculated that older patients with chronic diseases are more likely to die of COVID-19, because age-related alterations in immune function weaken the response to SARS-CoV-2 and hence worsen outcomes [21].
A higher proportion of men than women died and this could be partially explained by the stronger effect of older age among men. Circulating sex hormones in males and females might influence susceptibility to COVID-19 infection, as shown in a previous study, because they modulate the responses of adaptative and innate immunity [22].
Some recent meta-analyses have assessed the prevalence of comorbidities in patients with COVID-19; [2, 8, 19]; however, not all comorbidities have the same strength as a predictive risk factor for mortality. Our study showed that people with underlying cardiovascular disease or dementia are the two groups most likely to die.
The mechanisms underlying the association between cardiovascular disease and COVID-19 might be connected to infection-related demand ischemia that evolves into myocardial injury and dysfunction and there is evidence of direct viral infection of the myocardium [23]. Regarding dementia as one of the most powerful risk factors for death, our findings are consistent with other studies [24], and it is plausible that respiratory failure, frequent in COVID-19, masks the atypical symptoms in patients with dementia, leading to a failure to recognize the need for medical attention. Furthermore, in this sense patients with dementia and nursing home were admitted to the ICU to a lesser extent than general population because of resource limitation. On the other hand, the physical and cognitive impairment suffered by these patients with loneliness and lockdown worsens their prognosis, so the help of a geriatrician could be valuable.
Comorbidities such as COPD, diabetes, chronic liver disease and cancer were only significant in multivariate analyses for the general population. COPD, inflammation of the lung parenchyma and expiratory airflow limitation may cause respiratory failure, favoring virus superinfection with SARS-CoV-2 [25]. Diabetes is one of the most prevalent underlying conditions in COVID-19 patients. Although the mechanism is not entirely clear, it is suspected that the exacerbated proinflammatory cascade and impaired immune response are involved in this association [26,27,28]. Despite the low prevalence of chronic liver disease in our patients, consistent with the findings of other studies, this was also associated with higher mortality [29,30,31]. It seems that patients with this chronic disease are not at greater risk of acquiring the infection, but do have a poorer prognosis once infected.
Patients with cancer are more susceptible to infection because of their systemic immunosuppressive state caused by malignancy and also have a higher risk of mortality [32,33,34]. Patients with chronic kidney disease are also more vulnerable to COVID-19, and the already impaired kidney function may deteriorate [35, 36].
Hospital admission was associated with a poorer prognosis and higher mortality, as was admission in the previous month. This is clearly related to a more serious presentation of the infection, as reported for other infectious diseases [37].
Another important finding of our study was the protective role of some long-term medications, namely, anticoagulants and statins, as noted by other authors [38,39,40]. COVID-19 is an inflammatory and prothrombotic disease, and hence, chronic anticoagulation may well provide a real defense against thrombosis [40]. The potential beneficial effects of statins in COVID-19 could be due to their well-known anti-inflammatory properties and might regulate virus replication, exerting a protective effect [38, 39]. The use of statins and anticoagulants increase as age increases up to 89 years; from the age of 90 percentage decrease in both populations (general and nursing home). This decrease could be related to functional and cognitive deterioration of the elderly patients.
Routine prediction rules used in general wards and ICUs are not able to accurately assess the severity and/or mortality of COVID-19. New validated clinical predictions rules are required for patient stratification [9]. Our rules, based only on variables which are easily accessible and interpretable at the time of diagnosis, can identify seriously ill patients with COVID-19 who are at risk of death. Using data routinely collected in the medical record, we can distinguish patients at high risk (score > 11 for nursing home residents, or > 9 for the general population) from those at low risk. Patients at high risk should be hospitalized and closely monitored, while low-risk individuals could be treated as outpatients under surveillance. To our knowledge, this is the first such prediction rule that achieves this goal. It could help physicians to identify "high-risk groups". These groups should be prioritized if a vaccine becomes available, given the high mortality associated with COVID-19 in combination with these chronic conditions.
Strengths of this study include the large sample size, even for nursing home residents, homogeneity of the data, lack of reliance on data abstractors, avoiding potential bias, and development of predictive models following TRIPOD guidelines [41]. As for limitations of the study, we recognize that the analysis was restricted to a limited number of variables for which we were confident of the validity of the data and we have confirmed this validity. Furthermore, though all cases were COVID-19 positive, it was not verified that the cause of death was unequivocally the SARS-CoV-2 infection in all cases. Finally, this analysis focuses on one region, not the whole of our country or a larger geographical area, and therefore, other studies should be conducted to check the external validity of our models, and thereby, their generalizability.
In conclusion, this study provides for the first time two separate clinical prediction rules for COVID-19 positive individuals from the general population and from nursing homes, using factors related to mortality, that have fairly good predictive value and could be used by general practitioners as they require only basic patient information.