The Minimal Effect of Zinc on the Survival of Hospitalized Patients With COVID-19
2020; Elsevier BV; Volume: 159; Issue: 1 Linguagem: Inglês
10.1016/j.chest.2020.06.082
ISSN1931-3543
AutoresJasper Seth Yao, Joseph Alexander Paguio, Edward Christopher Dee, Hanna Clementine Tan, Achintya Moulick, Carmelo Milazzo, Jerry Jurado, Nicolás Della Penna, Leo Anthony Celi,
Tópico(s)Tuberculosis Research and Epidemiology
ResumoZinc is an investigational agent against coronavirus disease 2019 (COVID-19) and has known preventative and therapeutic roles in other infections.1US National Library of MedicineClinicalTrials.gov.https://clinicaltrials.gov/Date accessed: April 30, 2020Google Scholar, 2Skalny A. Rink L. Ajsuvakova O. et al.Zinc and respiratory tract infections: perspectives for COVID-19 (review).Int J Mol Med. 2020; 46: 17-26PubMed Google Scholar, 3Jayawardena R. Sooriyaarachchi P. Chourdakis M. Jeewandara C. Ranasinghe P. Enhancing immunity in viral infections, with special emphasis on COVID-19: a review.Diabetes Metab Syndr Clin Res Rev. 2020; 14: 367-382Crossref PubMed Scopus (329) Google Scholar Zinc deficiency is associated with lower survival among older patients with pneumonia and predisposes to other viral infections.3Jayawardena R. Sooriyaarachchi P. Chourdakis M. Jeewandara C. Ranasinghe P. Enhancing immunity in viral infections, with special emphasis on COVID-19: a review.Diabetes Metab Syndr Clin Res Rev. 2020; 14: 367-382Crossref PubMed Scopus (329) Google Scholar Established risk factors for critical COVID-19, including older age, diabetes mellitus, and cardiovascular disease, are also associated with zinc deficiency.2Skalny A. Rink L. Ajsuvakova O. et al.Zinc and respiratory tract infections: perspectives for COVID-19 (review).Int J Mol Med. 2020; 46: 17-26PubMed Google Scholar The antiviral and immunomodulatory effects of zinc have made it a candidate against severe acute respiratory syndrome-coronavirus-2 (SARS-CoV-2) infection.2Skalny A. Rink L. Ajsuvakova O. et al.Zinc and respiratory tract infections: perspectives for COVID-19 (review).Int J Mol Med. 2020; 46: 17-26PubMed Google Scholar, 3Jayawardena R. Sooriyaarachchi P. Chourdakis M. Jeewandara C. Ranasinghe P. Enhancing immunity in viral infections, with special emphasis on COVID-19: a review.Diabetes Metab Syndr Clin Res Rev. 2020; 14: 367-382Crossref PubMed Scopus (329) Google Scholar, 4Rahman MT, Idid SZ. Can Zn be a critical element in COVID-19 treatment [published online ahead of print May 26, 2020]? Biol Trace Elem Res. https://doi.org/10.1007/s12011-020-02194-9Google Scholar Zinc may decrease the activity of the angiotensin converting enzyme 2, the receptor for SARS-CoV-2. Zinc T-cell modulation may downregulate the cytokine storm associated with severe COVID-19.2Skalny A. Rink L. Ajsuvakova O. et al.Zinc and respiratory tract infections: perspectives for COVID-19 (review).Int J Mol Med. 2020; 46: 17-26PubMed Google Scholar,4Rahman MT, Idid SZ. Can Zn be a critical element in COVID-19 treatment [published online ahead of print May 26, 2020]? Biol Trace Elem Res. https://doi.org/10.1007/s12011-020-02194-9Google Scholar These properties underlie the speculated efficacy of chloroquine, a zinc ionophore, and the derivative hydroxychloroquine, which are investigational agents in the worldwide World Health Organization SOLIDARITY trial.2Skalny A. Rink L. Ajsuvakova O. et al.Zinc and respiratory tract infections: perspectives for COVID-19 (review).Int J Mol Med. 2020; 46: 17-26PubMed Google Scholar,5World Health OrganizationPublic health emergency SOLIDARITY trial of treatments for COVID-19 infection in hospitalized patients. ISRCTN83971151. ISRCTN. 2020.http://www.isrctn.com/ISRCTN83971151Google Scholar,6US Food and Drug AdministrationEmergency use authorization.https://www.fda.gov/emergency-preparedness-and-response/mcm-legal-regulatory-and-policy-framework/emergency-use-authorizationDate accessed: June 2, 2020Google Scholar Furthermore, chloroquine may increase cellular zinc uptake, suggesting therapeutic benefit from the combination of the two agents.4Rahman MT, Idid SZ. Can Zn be a critical element in COVID-19 treatment [published online ahead of print May 26, 2020]? Biol Trace Elem Res. https://doi.org/10.1007/s12011-020-02194-9Google Scholar Despite zinc's low risk of adverse effects, zinc's role in the management of COVID-19 must be supported by clinical data.7Saper R.B. Rash R. Zinc: An essential micronutrient.Am Fam Physician. 2009; 79: 768-772PubMed Google Scholar Therefore, we investigated the role of zinc among hospitalized patients with COVID-19. In this single-institution retrospective study, we assessed the survival of hospitalized patients with COVID-19 treated with vs without zinc sulfate. This study was conducted in accordance with the amended Declaration of Helsinki. This study's protocol was approved and was granted a waiver of informed consent by the hospital board on April 15, 2020, based on its retrospective design and the lack of identifying information to be published, collected, or analyzed. Data of all patients with COVID-19 (N = 242) admitted at the Hoboken University Medical Center until April 11, 2020, were retrospectively collected on April 21, 2020. COVID-19 was confirmed in all patients using quantitative real-time reverse transcription polymerase chain reaction for SARS-CoV-2 RNA. Clinical severity was stratified based on World Health Organization8Diaz J.V. Baller A. Fischer W. Fletcher T. Clinical management of severe acute respiratory infection (SARI) when COVID-19 disease is suspected.https://www.who.int/docs/default-source/coronaviruse/clinical-management-of-novel-cov.pdf?sfvrsn=bc7da517_2Date accessed: April 17, 2020Google Scholar guidelines according to clinical, radiographic, and laboratory information from the first 24 h of admission. The primary outcome was days from admission to in-hospital mortality. Data for patients who did not meet the primary outcome were censored on April 21, 2020. Our primary analysis explored the causal association between zinc therapy and the survival of hospitalized patients with COVID-19. Inverse probability weighting (IPW) and a censorship model derived an effect estimate of zinc therapy on survival using the parameter defined as the average treatment effect on the treated (ATET). The lack of sufficient overlap or the positive probability of assignment to each treatment level precluded the estimation of the average treatment effect. Multivariable logistic regression modeled the propensity to receive zinc by assigning weights to established predictors of mortality and to variables which may influence a physician's decision to administer zinc. These included the following: age, sex, race, the presence of heart disease or COPD, and clinical severity on admission.9Richardson S. Hirsch J.S. Narasimhan M. et al.Presenting characteristics, comorbidities, and outcomes among 5700 patients hospitalized with COVID-19 in the New York City area.JAMA. 2020; 323: 2052-2059Crossref PubMed Scopus (5944) Google Scholar Survival analysis with a Weibull censorship distribution model used covariates in the propensity model and potentially efficacious treatments with relevant between-group differences (lopinavir/ritonavir, systemic corticosteroids, IL-6 receptor inhibitors, and therapeutic anticoagulation). To explore the additive effect of zinc therapy on various therapies, we performed subgroup analyses among patients who received hydroxychloroquine, lopinavir/ritonavir, steroids, and IL-6 receptor inhibitors. The χ2 test for balance assessed whether the distribution of covariates did not vary across treatment levels. Secondary analysis using multivariable Cox regression with IPW for zinc therapy further assessed the association between zinc therapy and the primary outcome. Zinc therapy and nine other covariates were chosen to avoid overfitting the model (listed in Results section). Analyses (two-sided α = 0.05) were performed using Stata/IC 16.1 (StataCorp). Of 242 patients, 81.0% received zinc sulfate at a total daily dose of 440 mg (100 mg elemental zinc). The median age of patients who received zinc was 65 years (interquartile range, 53-77), whereas that of the control group was 71 years (interquartile range, 58-84; P = .07); 86 (43.9%) were women in the zinc group compared with 18 (39.1%) among the control group (P = .60). In the zinc group, 40 (20.4%) had mild disease, 106 (54.1%) had severe disease, and 50 (25.5%) had critical disease. Among control subjects, 14 (30.4%), 21 (45.7%), and 11 (23.9%) had mild, severe, and critical disease, respectively (P = .30). Baseline clinical and treatment characteristics are summarized in Table 1.Table 1Baseline Clinical Characteristics of Patients With COVID-19 Who Received Zinc Sulfate Therapy vs Control SubjectsVariableZinc Sulfate Group (n = 196)Control Group (n = 46)Demographic characteristics Age, y65 (53-77)71 (58-84) Female86 (43.9)18 (39.1) BMI, kg/m228.8 (25.4-32.1)26.6 (22.2-29.4)Clinical severityaClinical severity was stratified based on clinical, radiographic, and laboratory information from the first 24 h of admission. Patients with critical disease were those who developed ARDS, septic shock, or multiorgan failure, or those who required mechanical ventilation or ICU admission. Patients were classified as having severe disease if their Spo2 on room air was ≤ 93%, if they required oxygen supplementation, or if their respiratory rate was ≥ 30 breaths/min without meeting any of the criteria for critical disease. Hospitalized patients were classified as having mild disease if their Spo2 was ≥ 94% on room air or if they did not require oxygen supplementation, while not meeting any of the criteria for severe or critical disease. Mild40 (20.4)14 (30.4) Severe106 (54.1)21 (45.7) Critical50 (25.5)11 (23.9)Comorbidities None40 (20.4)8 (17.4) Hypertension98 (50.0)29 (63.0) Diabetes mellitus II68 (34.7)18 (39.1) Cardiovascular disease33 (16.8)6 (13.0) Hypercholesterolemia68 (34.7)15 (32.6) Cancer8 (4.1)3 (6.5) COPD15 (7.7)7 (15.2) Chronic kidney disease19 (9.7)10 (21.7) Asthma23 (11.7)5 (10.9) Stroke5 (2.6)5 (10.9)Clinical outcomes Discharged to home75 (38.3)17 (37.0) ICU admission58 (29.6)7 (15.2) Mortality73 (37.2)21 (45.7)Vital signs in the first 24 h of admission Alert and oriented156 (79.6)34 (73.9) Confused40 (20.4)12 (26.1) Temperature, °C38.0 (37.3-38.9)37.4 (36.8-38.2) Respiratory rate, breaths/min22.0 (20.0-26.0)20 (20.0-24.0) Mean arterial pressure, mm Hg79.0 (72.0-89.0)78.5 (66.0-88.0) Heart rate, beats/min105 (93.8-115.0)98 (88.0-111.5) Spo2 on room air90.0 (84.0-94.0)92.0 (85.0-95.0)Therapies received Hydroxychloroquine191 (97.4)32 (69.6) Antibacterial agents191 (97.4)44 (95.7) Lopinavir/ritonavir114 (58.1)13 (28.3) Systemic corticosteroids56 (28.6)6 (13.0) IL-6 receptor inhibitor71 (36.2)9 (19.6) Therapeutic anticoagulation38 (19.4)4 (8.7)Values are No. of patients (%) or median (interquartile range). Spo2 = oxygen saturation as measured by pulse oximetry.a Clinical severity was stratified based on clinical, radiographic, and laboratory information from the first 24 h of admission. Patients with critical disease were those who developed ARDS, septic shock, or multiorgan failure, or those who required mechanical ventilation or ICU admission. Patients were classified as having severe disease if their Spo2 on room air was ≤ 93%, if they required oxygen supplementation, or if their respiratory rate was ≥ 30 breaths/min without meeting any of the criteria for critical disease. Hospitalized patients were classified as having mild disease if their Spo2 was ≥ 94% on room air or if they did not require oxygen supplementation, while not meeting any of the criteria for severe or critical disease. Open table in a new tab Values are No. of patients (%) or median (interquartile range). Spo2 = oxygen saturation as measured by pulse oximetry. In the zinc group, 73 patients (37.2%) met the primary outcome compared with 21 (45.7%) in the control group. In our primary analysis, the effect estimate of zinc therapy was an additional 0.84 days (ATET: 95% CI, −1.51 to 3.20; P = .48) (Table 2) of survival. However, this finding was imprecise. Subgroup analyses of severe and critical patients and of patients who received various therapies yielded results which were not statistically significant (Table 2). Postestimation χ2 test for balance did not reject the null hypothesis that the IPW model balanced covariates between treatment levels (P = .59).Table 2Inverse Probability Weighting With a Multivariate Logistic Regression Model for Treatment Propensity and Weibull Censorship Distribution Model for SurvivalPopulationWithout Zinc SulfateWith Zinc SulfatePO Mean95% CIP ValueATET95% CIP ValueEntire cohort5.873.94 to 7.81< .0010.84−1.51 to 3.20.48Severe and critical patients7.134.77 to 9.50< .001−1.18−3.68 to 1.32.35Patients given hydroxychloroquine7.115.01 to 9.21< .001−0.33−2.85 to 2.19.80Patients given lopinavir/ritonavir7.844.79 to 10.90< .001−0.42−3.92 to 3.08.82Patients given steroids5.073.03 to 7.11< .0012.03−0.77 to 4.84.16Patients given IL-6 receptor inhibitors8.205.57 to 10.82< .001−0.41−3.67 to 2.85.81Inverse probability weighting with a multivariate logistic regression model was used to measure the propensity to receive treatment with the following covariates: age, sex (male vs female), race (white vs nonwhite), the presence of heart disease or COPD, and clinical severity on admission. A subsequent survival analysis with a Weibull censorship distribution model was performed with patient characteristics in the propensity model and lopinavir/ritonavir, systemic corticosteroids, IL-6 receptor inhibitors, and therapeutic anticoagulation as covariates. ATET = average treatment effect on the treated; PO = potential outcomes. Open table in a new tab Inverse probability weighting with a multivariate logistic regression model was used to measure the propensity to receive treatment with the following covariates: age, sex (male vs female), race (white vs nonwhite), the presence of heart disease or COPD, and clinical severity on admission. A subsequent survival analysis with a Weibull censorship distribution model was performed with patient characteristics in the propensity model and lopinavir/ritonavir, systemic corticosteroids, IL-6 receptor inhibitors, and therapeutic anticoagulation as covariates. ATET = average treatment effect on the treated; PO = potential outcomes. On multivariate Cox regression with IPW, zinc sulfate was not significantly associated with a change in risk of in-hospital mortality (adjusted hazard ratio, 0.66; 95% CI, 0.41 to 1.07; P = .09) (Table 3). Older age, male sex, and higher clinical severity were significantly associated with an increased risk of in-hospital mortality (Table 3). Use of IL-6 receptor inhibitors was associated with reduced mortality (Table 3).Table 3Inverse Probability Weighting With Multivariate Cox Regression Defining aHRs of Mortality With Zinc Sulfate Therapy, Clinical Characteristics, and Therapies Received With Significant Between-Group Differences as CovariatesClinical Characteristics and TherapiesaHR95% CIP ValueZinc sulfate (yes vs no)0.660.41 to 1.07.09Age1.031.01 to 1.05.001Sex (male vs female)1.721.00 to 2.97.05Heart disease (yes vs no)0.940.43 to 2.07.88COPD (yes vs no)0.860.30 to 2.46.78Clinical severity (vs mild) Severe disease3.91.23 to 12.40.02 Critical disease39.6111.96 to 131.44< .001Lopinavir/ritonavir (yes vs no)1.000.63 to 1.58.99Steroids (yes vs no)1.300.71 to 2.37.40IL-6 receptor inhibitors (yes vs no)0.370.19 to 0.72.004Therapeutic anticoagulation (yes vs no)0.860.44 to 1.70.67aHR = adjusted hazard ratio. Open table in a new tab aHR = adjusted hazard ratio. Our analyses demonstrate the lack of a causal association between zinc and the survival of hospitalized patients with COVID-19. Similarly, subgroup analyses stratified by severity or additional therapies did not yield significant causal associations. Given this study's observational design, our findings must not be used to rule in or rule out the clinical benefit of zinc in the management of COVID-19. In addition, given the short period of observation, the effect estimate provides only a signal for a treatment effect, or the lack thereof, and must not be interpreted as the absolute number of days of survival among the treated.10Lederer D.J. Bell S.C. Branson R.D. et al.Control of confounding and reporting of results in causal inference studies.Ann Am Thorac Soc. 2019; 16: 22-28Crossref PubMed Scopus (376) Google Scholar Instead, our analyses may be used by prospective trials to determine the sample size necessary to assess survival benefit or may galvanize investigation using other outcomes of interest. Our analyses may reduce the effects of confounders and selection bias in nonrandomized data.10Lederer D.J. Bell S.C. Branson R.D. et al.Control of confounding and reporting of results in causal inference studies.Ann Am Thorac Soc. 2019; 16: 22-28Crossref PubMed Scopus (376) Google Scholar Our findings showing an increased mortality risk among older patients, men, and those with higher admission severity are consistent with findings of prior literature and support the use of our methodology.9Richardson S. Hirsch J.S. Narasimhan M. et al.Presenting characteristics, comorbidities, and outcomes among 5700 patients hospitalized with COVID-19 in the New York City area.JAMA. 2020; 323: 2052-2059Crossref PubMed Scopus (5944) Google Scholar Future studies should look into the efficacy of IL-6 receptor inhibitors, which in this cohort was associated with lower in-hospital mortality. This study is limited by its retrospective nature and the possibility of residual confounding. Given the single-center design, the sample size, and the larger proportion of patients given zinc sulfate, we are unable to rule out the possibility that the study was not powered to detect a small effect size––a limitation that motivated us to use ATET estimation to investigate the effect of zinc on COVID-19. Prospective randomized trials are needed to establish the utility of zinc in the management of COVID-19. Other contributions: We thank the COVID-19 frontliners in these trying times for keeping us all safe. Zinc and Coronavirus Disease 2019: Causal or Casual Association?CHESTVol. 159Issue 1PreviewWe read with interest the article by Yao et al1 this issue of CHEST whereby they have studied the effect of zinc supplementation in hospitalized patients of coronavirus disease 2019 (COVID-19) infection.1 In reference to the patient assessment parameters and results, one very important aspect needs attention. Although the authors have evaluated in detail the baseline clinical and treatment characteristics, they have no data pertaining to serum zinc levels before or after zinc supplementation. We do understand because this was a retrospective analysis with waiver of consent, but one should be cautious about the interpretation of results in this scenario. Full-Text PDF ResponseCHESTVol. 159Issue 1PreviewWe thank Dr Khurana et al for their thoughtful response to our letter1 and for pointing out the value of serum zinc levels. Our study assessed the association between zinc supplementation and survival among hospitalized patients with coronavirus disease 2019 (COVID-19), using a causal inference approach to retrospective data. Our institutions do not routinely measure serum zinc levels. Although our study population consisted of patients admitted to a single hospital, our study assessed the effect of zinc in the contexts in which it was routinely used in the inpatient setting at the peak of the COVID-19 pandemic in the United States. Full-Text PDF
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