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Impact of prone positioning on patients with COVID-19 and ARDS on invasive mechanical ventilation: a multicenter cohort study

Impacto da pronação em pacientes com COVID-19 e SDRA em ventilação mecânica invasiva: estudo de coorte multicêntrico

Marieta C A Cunha1, Jociane Schardonga, Natiele Camponogara Righi2,3, Adriana Claudia Lunardi4, Guadalupe Nery de Sant’Anna4, Larissa Padrão Isensee4, Rafaella Fagundes Xavier4, Kaciane Roberta Brambatti2, José Eduardo Pompeu4, Fabiano Frâncio5, Luiza Martins Faria6, Rozana Astolfi Cardoso7, Antonio Marcos Vargas da Silva2, Camila de Christo Dorneles8, Roberta Weber Werle8, Juliana Carvalho Ferreira1, Rodrigo Della Méa Plentz2,3, Celso R F Carvalho4

DOI: 10.36416/1806-3756/e20210374

ABSTRACT

Objective: To identify factors that lead to a positive oxygenation response and predictive factors of mortality after prone positioning. Methods: This was a retrospective, multicenter, cohort study involving seven hospitals in Brazil. Inclusion criteria were being > 18 years of age with a suspected or confirmed diagnosis of COVID-19, being on invasive mechanical ventilation, having a PaO2/FIO2 ratio < 150 mmHg, and being submitted to prone positioning. After the first prone positioning session, a 20 mmHg improvement in the PaO2/FIO2 ratio was defined as a positive response. Results: The study involved 574 patients, 412 (72%) of whom responded positively to the first prone positioning session. Multiple logistic regression showed that responders had lower Simplified Acute Physiology Score III (SAPS III)/SOFA scores and lower D-dimer levels (p = 0.01; p = 0.04; and p = 0.04, respectively). It was suggested that initial SAPS III and initial PaO2/FIO2 were predictors of oxygenation response. The mortality rate was 69.3%. Increased risk of mortality was associated with age (OR = 1.04 [95 CI: 1.01-1.06]), time to first prone positioning session (OR = 1.18 [95 CI: 1.06-1.31]), number of sessions (OR = 1.31 [95% CI: 1.00-1.72]), proportion of pulmonary impairment (OR = 1.55 [95% CI: 1.02-2.35]), and immunosuppression (OR = 3.83 [95% CI: 1.35-10.86]). Conclusions: Our results show that most patients in our sample had a positive oxygenation response after the first prone positioning session. However, the mortality rate was high, probably due to the health status and the number of comorbidities of the patients, as well as the severity of their disease. Our results also suggest that SAPS III and the initial PaO2/FIO2 predict the oxygenation response; in addition, age, time to first prone positioning, number of sessions, pulmonary impairment, and immunosuppression can predict mortality.

Keywords: Respiratory distress syndrome; Coronavirus infections; Pulmonary medicine; COVID-19; Prone position; SARS-CoV-2.

RESUMO

Objetivo: Identificar fatores que levam a uma resposta positiva da oxigenação e fatores preditivos de mortalidade após a pronação. Métodos: Estudo de coorte retrospectivo multicêntrico envolvendo sete hospitais brasileiros. Os critérios de inclusão foram idade > 18 anos com diagnóstico suspeito ou confirmado de COVID-19, ventilação mecânica invasiva, relação PaO2/FIO2 < 150 mmHg e pronação. Após a primeira sessão de pronação, uma melhora de 20 mmHg na relação PaO2/FIO2 foi definida como resposta positiva. Resultados: O estudo envolveu 574 pacientes, dos quais 412 (72%) apresentaram resposta positiva à primeira sessão de pronação. A regressão logística múltipla mostrou que os respondedores apresentaram menores pontuações no Simplified Acute Physiology Score III (SAPS III) e no SOFA e menores níveis de dímero D (p = 0,01; p = 0,04; e p = 0,04, respectivamente). Sugeriu-se que a pontuação no SAPS III e a PaO2/FIO2 iniciais seriam preditores da resposta da oxigenação. A taxa de mortalidade foi de 69,3%. Maior risco de mortalidade foi associado à idade (OR = 1,04 [IC95%: 1,01-1,06]), tempo até a primeira sessão de pronação (OR = 1,18 [IC95%: 1,06-1,31]), número de sessões (OR = 1,31 [IC95%: 1,00-1,72]), porcentagem de comprometimento pulmonar (OR = 1,55 [IC95%: 1,02-2,35]) e imunossupressão (OR = 3,83 [IC95%: 1,35-10,86]). Conclusões: Nossos resultados mostram que a maioria dos pacientes de nossa amostra apresentou resposta positiva da oxigenação após a primeira sessão de pronação. No entanto, a taxa de mortalidade foi elevada, provavelmente em virtude do estado de saúde e número de comorbidades dos pacientes e da gravidade de sua doença. Nossos resultados também sugerem que a pontuação no SAPS III e a PaO2/FIO2 inicial predizem a resposta da oxigenação; além disso, idade, tempo até a primeira sessão de pronação, número de sessões, comprometimento pulmonar e imunossupressão podem predizer mortalidade.

Palavras-chave: Síndrome do desconforto respiratório; Infecções por coronavirus; Pneumologia; COVID-19; Decúbito ventral; SARS-CoV-2.

INTRODUCTION
 
In severe COVID-19 cases, there is a cytokine storm characterized by a hyperinflammatory state, interstitial edema, hypoxemic respiratory failure, pulmonary perfusion impairment, and multiple organ failure.(1) A significant proportion of individuals with COVID-19 presents a deficit in ventilation-perfusion similar to moderate-to-severe ARDS but with an atypical and heterogeneous pathological pattern.(2-5)
 
COVID-19-related ARDS presents a spectrum of clinical phenotypes that vary in degrees of pulmonary infiltration, concomitant thrombotic injury, and lung recruitability and compliance; therefore, heterogeneous respiratory mechanics. Thus, some patients are more or less likely to respond to prone positioning, and subgroups tend to have different behaviors and high mortality.(6)
 
Prone positioning has been recommended as rescue therapy by the WHO and the Surviving Sepsis Campaign in refractory hypoxemia due to COVID-19-related ARDS.(7-9) The main effects of prone positioning are improvement in chest wall compliance, uniformity of pleural pressure gradient, recruitment of dorsal regions, and changes in the distribution of alveolar units.(10)
 
The recommendation is the association of prone positioning with protective ventilatory strategies, using low VT (6 mL/kg of predicted weight), plateau pressure of the respiratory system (Pplat) < 30 cmH2O, and neuromuscular blocker infusion.(11,12) Furthermore, there is evidence that prone positioning provides better outcomes when applied earlier (within the first 48 h of disease onset) and maintained for at least 12-16 h.(1,9,11)
 
Since the beginning of the pandemic, researchers have shown that prone positioning is effective and safe in treating COVID-19-related ARDS. However, we sought to understand which patients would be more susceptible to a better response. The primary goal of the study was to identify factors that would lead to a positive oxygenation response after the use of the prone positioning maneuver. The secondary goal was to identify predictive factors of mortality.
 
METHODS
 
This retrospective multicenter study was conducted in seven Brazilian hospitals involving a cohort of 574 intubated, mechanically ventilated patients with severe COVID-19-related ARDS. The clinical research ethics committees of all hospitals involved approved the study (Protocol no. 31881520.3.1001.5335). Patient consent was waived because of the retrospective nature of the study.
 
Data collection was conducted between the 1st of June and the 30th of December, 2020. The authors had access to electronic medical records of their affiliated institutions. Data were collected using standardized forms, safeguarding the identification of each patient. The main goals were to identify predictive factors of oxygenation improvement and mortality among the patients placed in prone positioning.
 
Inclusion criteria were individuals having suspected or confirmed COVID-19, requiring invasive mechanical ventilation, presenting with severe ARDS (PaO2/FIO2 < 150 mmHg), and being ≥ 18 years of age. Confirmed diagnosis of COVID-19 was based on clinical symptoms and a positive RT-PCR test; highly suspected diagnosis of COVID-19 was based on presenting with a negative RT-PCR test but showing COVID-19 clinical signs such as flu-like symptoms, progressive dyspnea, compatible pulmonary radiological images, and positive epidemiology.
 
Patients with negative RT-PCR were included due to the high probability of false-negative results. However, patients who were submitted to prone positioning when awake, without invasive mechanical ventilation support, were excluded.
 
All patients were divided into two groups according to oxygenation response. The PaO2/FIO2 ratio was calculated before and after the first prone positioning session. Patients who presented an increase in the PaO2/FIO2 ratio ≥ 20 mmHg after the session were allocated in the responder group, whereas those with an increase < 20 mmHg after the session were allocated in the nonresponder group.
 
The overload caused by the initial peak of the disease in Brazil made laboratory sample collection unfeasible in due time. Therefore, it was not possible to perform blood gas analyses one hour after prone positioning, as recommended. The data considered in the study were the ones obtained closest to the beginning and end of the first prone positioning session. The patients included were followed until hospital discharge. The mortality outcome included the events that occurred during hospitalization.
 
Availability of study data
 
The datasets generated and analyzed during the current study are available in the Zenodo repository (https://zenodo.org/badge/DOI/10.5281/zenodo.4667698.svg).
 
Collected variables
 
The following data were collected: age, gender, race, comorbidities, and BMI. Pulmonary impairment was assessed by chest CT performed closer to the intubation period. According to the radiologist report in the medical records, the proportion of parenchymal impairment was classified as < 25%, 25-50%, 51-75%, or > 75%. Lung involvement was subclassified into I (< 25%), II (25-50%), III (51-75%), and IV (> 75%) to enable data analysis.
 
D-dimer levels were evaluated using the HemosIL HS-500 automated immunoassay (Instrumentation Laboratory Company, Bedford, MA, USA). The level considered for statistics was the one closest to the first prone positioning session if the patient had multiple measurements. The Simplified Acute Physiology Score III (SAPS III) and the SOFA score considered for analysis were collected at ICU admission.
 
The following comorbidities were reported: immunosuppression; arterial hypertension; diabetes; obesity; smoking and alcohol consumption; and neurological, hematological, respiratory, or cardiovascular diseases. Patients with a history of organ transplantation were considered immunosuppressed, as were those with chronic kidney disease, HIV/AIDS, and those undergoing cancer treatment.
 
Data on ventilator settings, respiratory mechanics (i.e., driving pressure, Pplat, and static compliance of the respiratory system), and arterial blood gas analysis were collected before and after the first prone positioning session. Time to first prone positioning session was defined as the time between the first intubation procedure and the first prone positioning session.
 
Total duration of the first prone positioning session (in h), number of sessions, and adverse effects were recorded. Patient outcomes were also recorded, including duration of invasive mechanical ventilation, length of ICU and hospital stay, reintubation, and survival.
 
Statistical analysis
 
Continuous and categorical variables were expressed as medians (interquartile ranges) and absolute and relative frequencies, respectively. Comparisons between the two groups (responders and nonresponders) were performed using an independent test or the Mann-Whitney test. Logistic regression was used in order to examine factors associated with the response to prone positioning and mortality. A forward stepwise regression was then performed to identify the clinical variables that correlated with the change of oxygenation level. After that, multicollinearity was assessed by examining the variance inflation factor (values > 2 were excluded). The results are presented as odds ratios and 95% confidence intervals. We used the IBM SPSS Statistics software package, version 26.0 (IBM Corp., Armonk, NY, USA) for statistical analysis. Significance was set at p < 0.05.
 
RESULTS
 
During the study period, 574 consecutive patients were included. The median age was 59 years. Male sex and White race were the most prevalent self-responses. The most common comorbidities in both groups were arterial hypertension and diabetes. Being overweight or obese was the third most prevalent comorbidity. The mean BMI was 29.4 kg/m2 (Table 1).


 
The mean overall SAPS III was 65, and the mean overall SOFA score was 9. The degree of pulmonary involvement on chest CT was high; most patients were classified as grade III (51-75%). The mean overall D-dimer level was 9.6 µg/m. SAPS III, SOFA score, and D-dimer levels were significantly lower in the responder group. In general, patients had Pplat < 30 cmH2O, and duration of prone positioning was greater than 12-16 h.
 
The median time to the first prone positioning session was 48 h (24-120 h) and 72 h (24-144 h) in the responder and nonresponder groups, respectively (p = 0.02). In general, patients required 2 (1-3) prone positioning sessions, and there was no difference in the number of sessions performed between the groups.
 
Most patients received vasoactive drugs and neuromuscular blockade infusion, and a small proportion required tracheostomy and/or reintubation during the follow-up period. The median length of ICU stay was 20 days and that of hospital stay was 27 days (Table 2).


 
Prone positioning and oxygenation improvement
 
The PaO2/FIO2 ratio improved in 412 patients (72%) after the first prone positioning session. The median difference in PaO2/FIO2 after the first prone positioning session was expressively greater in the responder group (84 [41-111] mmHg vs. −9.2 [−20.5 to 7.0] mmHg). As previously mentioned, SAPS III and SOFA scores, as well as D-dimer levels, were significantly lower in the responder group.
 
Among ventilator settings, the responder group presented lower RR, PaO2, and PaCO2 but no significant changes in arterial pH. In addition, the initial PaO2/FIO2 ratio was lower in the responder group. Regarding the nonresponder group, it was found that the time to the first prone positioning session was longer, and session duration was shorter.
 
The clinical variables related to oxygenation response studied were the following: SAPS III, number of sessions, static compliance of the respiratory system, baseline PaO2/FIO2 ratio, and D-dimer level. After multivariate logistic regression analysis, SAPS III and baseline PaO2/FIO2 ratio were significantly associated with oxygenation improvement (Table 3).


 
Prone positioning and mortality
 
More than half of the patients had an unfavorable outcome after prone positioning. Although no difference was observed between responders and nonresponders (p = 0.08), responders had lower mortality than did nonresponders (67.2% vs. 74.7%).
 
Mortality was associated with age, time to first prone positioning session, SOFA score, SAPS III, number of prone positioning sessions, extension of pulmonary impairment on chest CT, immunosuppression, initial arterial pH, and PaCO2. After multivariate logistic regression analysis, age, time to first session, number of sessions, extension of pulmonary impairment, immunosuppression, and initial arterial pH were independently associated with the risk of mortality (Table 3).
 
DISCUSSION
 
We performed a retrospective multicenter study involving seven Brazilian hospitals in a cohort of 574 intubated, mechanically ventilated patients with severe COVID-19-related ARDS. Our results showed that most patients (72%) had their oxygenation improved after the first prone positioning session, and this response was associated with SAPS III and PaO2/FIO2 ratio. We also observed a high mortality rate during ICU stays that was associated with age, time to the first prone positioning session, number of sessions, pulmonary impairment, and immunosuppression.
 
Patients were subdivided according to oxygenation improvement using a cutoff point of 20 in PaO2/FIO2. Although PaO2/FIO2 has been used to assess oxygenation response in patients with ARDS, no cutoff values have been well established. Most studies have used either an improvement of 10-20 mmHg in PaO2 or a 10-20% increase in PaO2/FIO2.(13) In addition, we identified that the responder group presented lower SAPS III and SOFA score, as well as lower D-dimer levels. The SAPS III and SOFA scores are systems for predicting mortality in patients admitted to the ICU. Also, elevated D-dimer levels in patients with COVID-19 are associated with hemostatic abnormalities and poor outcomes and could predict mortality risk. (6,14-16) Taken together, our results reinforce the clinical relevance of using SAPS III/SOFA score and D-dimer levels to predict mortality in patients with COVID-19-related ARDS.
 
We found no significant reductions in mortality when comparing responder and nonresponder groups (67.2 vs. 74.7%; p = 0.08). Other studies were also unable to determine this correlation in patients with COVID-19-related ARDS. However, a retrospective study of 648 intubated patients with COVID-19-related ARDS placed in prone positioning showed that oxygenation response could reduce mortality.(10) Our results suggest that age, previous immunosuppression, extension of pulmonary involvement, time to start the first prone positioning session, number of prone sessions, and baseline arterial pH are predictors of mortality.
 
Overall mortality was 69.3%. We hypothesize that our patients had worse outcomes due to their socioeconomic status and health condition as accessed by age, comorbidities, SAPS III/SOFA score, D-dimer levels, and extension of pulmonary impairment. Weiss et al.(7) found a mortality rate of 21.4% among 42 patients requiring invasive mechanical ventilation and submitted to prone positioning. The mean age of the patients was 58.5 years, and the mean SOFA score was 6.8 at ICU admission. On the other hand, a less socioeconomically favored population neighborhood in New York City had a mortality rate > 75%.(17) Therefore, it is necessary to consider that the present study represents a population lacking resources in an underdeveloped country.
 
The high mortality rate can also be attributed to the overloaded health care system during the first pandemic peak in Brazil. The mortality rate in Brazil was approximately 80% among 250,000 patients hospitalized with COVID-19 on mechanical ventilation. (18) In addition, the median time to perform the first prone positioning session was 48 h (24-120 h) in the responder group and 72 h (24-144 h) in the nonresponder group. We were unable to identify the reasons why it took some patients a long time to be placed in the prone position.
 
The study had several limitations. First, because it is a retrospective study, it was not possible to find all of the data in the electronic medical records for analysis. Second, this is an observational study, and, contrary to a clinical trial, the decision and timing of prone positioning could not be controlled. Moreover, it was not possible to assess the strategies adopted by the teams during the prone positioning maneuver. Third, other treatments to improve response to prone positioning, such as the use of extracorporeal membrane oxygenation, hemodialysis, and alveolar recruitment, were not performed. Finally, the criteria that we used to assess the response to prone positioning are not universal; therefore, comparisons with other studies should be carried out with caution.
 
Our study showed that most patients with COVID-19-related ARDS experienced improved oxygenation after prone positioning. However, the mortality rate was high, probably due to the poor health status of the patients, disease severity, and high number of comorbidities of the patients, as well as the severity of their disease. These results highlight the usefulness of prone positioning to improve gas exchange for patients with COVID-19, mainly when performed early and in subjects with a better health status.
 
AUTHOR CONTRIBUTIONS
 
MCAC, JS, NCR, ACL, GNS, and LPI: study design, conception, and planning; data collection; interpretation of evidence; and drafting and revision of the manuscript. KRB, JEP, FF, LMF, RAC, AMVS, CCD, and RWW: study conception and planning; data collection; interpretation of evidence; revision of the manuscript; and approval of the final version. JCF, RDMP, and CRFC: study design, conception, and planning; interpretation of evidence; and revision of the manuscript.
 
CONFLICT OF INTEREST
 
None declared.
 
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