Literature DB >> 35768681

Medications Associated with Lower Mortality in a SARS-CoV-2 Positive Cohort of 26,508 Veterans.

Christine M Hunt1,2,3, Jimmy T Efird4,5, Thomas S Redding3, Andrew D Thompson3, Ashlyn M Press3, Christina D Williams3,6,7, Christopher J Hostler8,9, Ayako Suzuki10,11.   

Abstract

BACKGROUND: Many severe acute respiratory syndrome coronavirus-2 (SARS-CoV-2) positive patients take commonly prescribed medications with properties which may affect mortality.
OBJECTIVE: Assess if common medications postulated to affect clinical outcomes are associated with mortality in SARS-CoV-2 positive patients in the Veterans Health Administration (VHA).
DESIGN: Observational national cohort analysis. PARTICIPANTS: Consecutive 26,508 SARS-CoV-2 positive Veterans (7% of 399,290 tested from March 1 to September 10, 2020) constitute the study cohort. MAIN MEASURES: The primary outcome was 30-day mortality from the first positive SARS-CoV-2 test date. In patients receiving medications or drug pairs within 2 weeks post-SARS-CoV-2 positive test, 30-day mortality was estimated as relative risk (RR) on the log-binomial scale or using multinomial models with and without adjusting for covariates. KEY
RESULTS: The 26,508 SARS-CoV-2 positive patients were predominantly male (89%) and White (59%), and 82% were overweight/obese. Medications associated with decreased 30-day mortality risk included the following: metformin (aRR, 0.33; 95% CI, 0.25-0.43), colchicine, angiotensin-converting-enzyme inhibitors (ACEi), angiotensin II receptor blockers, statins, vitamin D, antihistamines, alpha-blockers, anti-androgens, and nonsteroidal anti-inflammatory drugs (aRR, 0.69; 95% CI, 0.61-0.78). The effect of co-prescribed medications on 30-day mortality risk revealed the lowest risk for combined statins and metformin (aRR, 0.21; 95% CI, 0.15-0.31), followed by ACEi and statins (aRR, 0.25; 95% CI, 0.18-0.35), ACEi and metformin (aRR, 0.26; 95% CI, 0.17-0.40), antihistamines and NSAIDs (aRR, 0.41; 95% CI, 0.32-0.52), and in men, combined alpha-blockers and anti-androgens (aRR, 0.51; 95% CI, 0.42-0.64).
CONCLUSIONS: In this large national cohort, treatment of SARS-CoV-2 positive patients with individual or co-prescribed metformin and statins, ACEi and statins (or metformin) and other medications was associated with a markedly decreased 30-day mortality and can likely be continued safely. Clinical trials may assess their therapeutic benefit.
© 2022. This is a U.S. Government work and not under copyright protection in the US; foreign copyright protection may apply.

Entities:  

Keywords:  angiotensin-converting enzyme inhibitor; drug safety; metformin; mortality; severe acute respiratory syndrome coronavirus-2; statins

Year:  2022        PMID: 35768681      PMCID: PMC9243908          DOI: 10.1007/s11606-022-07701-3

Source DB:  PubMed          Journal:  J Gen Intern Med        ISSN: 0884-8734            Impact factor:   6.473


INTRODUCTION

Coronavirus disease-19 (COVID-19) has become a leading cause of US deaths with its high infectivity, inadequate COVID-19 vaccination rates, and dearth of highly effective treatments.[1,23-5] Despite concerted efforts to evaluate repurposed medications in the prevention and treatment of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), few agents have demonstrated efficacy in controlled clinical trials and/or received emergency use authorization. Among these, dexamethasone has the most consistent mortality benefit — decreasing mortality by approximately 30% in the RECOVERY Trial.[6] However, there are many safe, commonly prescribed medications that have mechanisms of action and pharmacology that suggest that they could be beneficial for the treatment of COVID-19. As the largest integrated US health care system, the Veterans Health Administration (VHA) includes extensive pharmacy data in its electronic health record database to assess the effect of licensed medications on SARS-CoV-2.[3,7,8] In a national observational VHA cohort, we compared the 30-day mortality of Veterans testing positive for SARS-CoV-2 with and without prescriptions for medications hypothesized to modulate outcomes (in the presence and absence of potential confounders and risk modifiers).[9] Medications which may modulate inflammation and/or cytokine release syndrome and affect COVID-19 mortality include the following: metformin, antihistamines, vitamin D, non-steroidal anti-inflammatory agents (NSAIDs), α-1 adrenergic receptor antagonists, statins, corticosteroids, and others.[10-27] By examining approved therapeutics with a biologic rationale to affect COVID-19 progression in a large national cohort, we anticipate identifying drugs which may be safely continued in SARS-CoV-2 and may favorably impact mortality.

METHODS

Study Design, Data Source, and Study Drug Selection

We previously developed a well-characterized patient cohort tested for SARS-CoV-2 using the COVID-19 shared data resource and related data in the Corporate Data Warehouse (CDW).[28] Prior to analysis, we identified eleven safe, commonly used licensed medications with a mechanism of action or pharmacologic effect hypothesized to decrease SARS-CoV-2 30-day mortality as our study medications: angiotensin-converting enzyme inhibitors (ACEis), angiotensin receptor blockers (ARBs), alpha-blockers, anti-androgens, antihistamines, colchicine, metformin, nicotine replacement products, statins, and vitamin D.[10-16] Inpatient or outpatient systemic administration of corticosteroids (e.g., dexamethasone) was treated as a covariate in our analysis. Our hypothesis was that drugs suggested to alleviate COVID-19 progression through various mechanisms may exert protective effects and reduce overall mortality after SARS-CoV-2-infection. We also hypothesized that drugs may exert synergistic protective effects when used in combinations. Our specific aims were as follows: 1) to evaluate the associations between post-infection study drug use and 30-day overall mortality while considering confounders; and 2) to compare the risk reduction in single drug use vs. combination use for selected drug pairs. The Durham Veterans Affairs (VA) Health Care System Institutional Review Board approved this study protocol.

Cohort Definition

Using the previously defined cohort,[28] we analyzed all the SARS-CoV-2 positive Veterans tested from March 1 to September 10, 2020. We included hospitalized and non-hospitalized patients, males and females, and all race/ethnicity categories for this analysis to increase the generalizability of the study findings. We report the first SARS-CoV-2 positive collection date as the index date and describe this first event only.

Study Variables Created for the SARS-COV-2 Cohort

Study Outcome

The primary outcome was 30-day overall mortality after the first positive SARS-CoV-2 test. The VA identifies deaths within and outside of the VA in the Corporate Data Warehouse through VA inpatient files, VA Beneficiary Identification and Records Locator System, Social Security Administration death files, and the Department of Defense.[29]

Predictor Variables

The primary predictors were use of the selected medications (listed in Supplementary Table 1). Using outpatient and inpatient prescription and dispense records, medication use was defined as drugs administered at least 50% of the time (≥7 days or a half of the survival time) within 2 weeks post-SARS-CoV-2 testing. Eleven individual binary variables were created accordingly. To assess synergistic drug effects, we created four categories (−/−, −/+, +/−, and +/+) for each pair. All medication use within the VHA and non-VHA medication use recorded in CDW were analyzed. Only VA hospitalizations were included. Most Veterans receiving antihypertensives, antiandrogens, metformin, statins, and vitamin D within 2 weeks post-SARS-CoV-2 testing also had these medications prescribed and dispensed prior to the positive SARS-CoV-2 test. However, antihistamines, NSAIDs, colchicine, and nicotine replacement were more frequently prescribed and dispensed after SARS-CoV-2 testing than before.

Covariates

Applying definitions used in our previous analysis,[28] we considered the following as covariates: age categories; sex; race; smoking status; alcohol use disorder; BMI categories; facility location; time of test, pre-test Charlson Comorbidity Index; and post-test hospitalization and systemic corticosteroid use (defined in the same manner as other primary predictors). We categorized patients by smoking status (i.e., current, former, or never); we used self-reported health factor data recorded preceding and closest to the positive SARS-CoV-2 test. Using International Classification of Diseases-10 codes, inpatient and outpatient diagnoses of key comorbidities, including alcohol use disorder, were recorded within 2 years before the index date. Briefly, locations of VA facilities and calendar month of diagnosis (i.e., SARS-CoV-2 test date) were included to adjust for geographic and temporal variations in infection rates, resources, and patient care. Charlson Comorbidity Index was included to adjust for baseline mortality risk.

Other Variables

Baseline comorbidities relevant to the VA population and length of hospital stay (days of the first hospitalization only) within 30 days of the SARS-CoV-2 test date were also defined for a descriptive analysis only.[27]

Statistical Analysis

Clinical characteristics were expressed as frequency and percentage for categorical variables and median and interquartile range (IQR) for continuous variables. Chi-square and Deuchler–Wilcoxon tests were used to compare the distribution of clinical characteristics between fatal and surviving cases.[30] To assess the associations between post-index drug use and 30-day mortality, individual models were developed to compute unadjusted and adjusted relative risk (aRR) and 95% confidence intervals (CIs) of 30-day overall mortality for each of eleven selected drugs, with final model adjusted for age categories, race, sex, region, month of diagnosis, BMI categories, current smoking, alcohol use disorder, Charlson Comorbidity Index score categories, post-test hospitalization and systemic corticosteroid administration. A weighted average of stratum-specific estimates on the log-binomial scale was used to approximate aRR.[31] This categorical method minimizes inflated effect sizes and non-collapsibility bias compared with adjusted odds ratios. To assess synergistic drug effects, we developed multinomial models to compare aRR and 95% CI of 30-day mortality between single drug use and combination drug use, having no drug use as a common referent group. Adjustment for multiplicity was performed by the Hochberg–Bonferroni procedure, accounting for a common referent group (based on the closure method).[32-34] This technique, also known as the Benjamini–Hochberg procedure, is designed to decrease the false discovery rate and minimize incorrectly rejecting the true null hypothesis (type I error).[35] Study results were rounded using the Goldilocks (Efron–Whittemore) method.[36] P-values <0.05 were considered statistically significant.

RESULTS

Demographics and Comorbidities

The study cohort consisted of 26,508 patients who tested positive for SARS-CoV-2 and were predominantly White (n=15,656; 59%), male (n=23,659; 89%), overweight or obese (n=21,790; 82%), with nearly half over age 60 (n=12,839; 48%) (Table 1). The group includes 9,815 [37%] Black and 4,453 [17%] Veterans of Latinx ethnicity, with fewer than 4% identified as Asian, American Indian/Alaska Native, Native Hawaiian/Other Pacific Islander, or Multiracial.
Table 1

Selected Characteristics of SARS-CoV-2 Positive US Veterans (N = 26,508)

CharacteristicN (%)
Age (years)

≤30

31–40

41–50

51–60

61–70

71–80

81–90

>90

1,598 (6)

3,584 (14)

3,433 (13)

5,054 (19)

5,730 (22)

4,964 (19)

1,608 (6)

   537 (2)

23,659 (89)

Male^
Race

White

Black

Asian

American Indian or Alaska Native

Native Hawaiian or other Pacific Islander

Multiracial

Latinx^

15,656 (59)

  9,815 (37)

     289 (1)

     218 (1)

     267 (1)

     263 (1)

  4,453 (17)

BMI (kg/m2)

Underweight (<18.5)

Normal (18.5–24.9)

Overweight (25–29.9)

Class-I obese (30–34.9)

Class-II obese (35–39.9)

Class-III obese (40–44.9)

Super obese (≥45)

Alcohol use disorder^

   360 (1)

4,458 (17)

8,665 (33)

7,478 (28)

3,529 (13)

1,360 (5)

   658 (2)

3,509 (13)

Smoker§

Never

Former

Current

Hospitalization^

13,098 (49)

10,444 (39)

  2,966 (11)

  7,845 (30)

Length of stay (days)
≤7~23,027 (87)
>7–141,701 (6)
>141,780 (7)
Mechanical ventilation^1,182 (4)
Location (USA)

Pacific-West/Mountain

Mid-West/Continental

South-East

North-East

  5,106 (19)

  5,363 (20)

11,331 (43)

  4,708 (18)

Time (Index, 3/1–9/10)

March

April

May

June

July

August

September

2,101 (8)

3,551 (13)

2,100 (8)

4,709 (18)

9,682 (37)

4,137 (16)

   228 (<1)

Charlson Comorbidity Index

0

1–2

3–4

5+

14,332 (54)

  8,416 (32)

  2,531 (10)

  1,229 (5)

Comorbidity^

Asthma

Atherosclerosis

Cancer

Chronic kidney disease

Chronic liver disease

Congestive heart failure

Chronic obstructive pulmonary disease

Diabetes (type II)

Hyperlipidemia

Hypertension

Mental illness

Sleep disorder

Substance abuse

  1,715 (6)

  6,700 (25)

  3,197 (12)

  4,035 (15)

     588 (2)

  2,971 (11)

  3,682 (14)

  8,653 (33)

13,908 (52)

14,694 (55)

12,935 (49)

  7,252 (27)

  5,651 (21)

Post-index medications

Angiotensin-converting enzyme inhibitors

Angiotensin II receptor blockers

Alpha-blockers

Anti-androgens*

Antihistamines

Colchicine

Corticosteroids (systemic, excluding inhalers)

Metformin

Nicotine replacement therapy

Nonsteroidal anti-inflammatory drugs

Statins

Vitamin D

  5,115 (19)

  2,709 (10)

  5,631 (21)

  1,788 (7)

  7,600 (29)

     402 (2)

  5,638 (21)

  3,956 (15)

     772 (3)

10,287 (39)

10,836 (41)

  1,019 (4)

^Referent is the complement group. ~Includes non-hospitalized participants with zero length of stay. §Cigarettes.

Chi-square test for independence (categorical), Deuchler–Wilcoxon test (continuous). BMI body mass index, d days, COVID-19 coronavirus disease 2019, IQR interquartile range, kg kilograms, LOS length of stay, m meters, SARS-CoV-2 severe acute respiratory syndrome coronavirus 2, USA United States of America, y years. *Men only

Selected Characteristics of SARS-CoV-2 Positive US Veterans (N = 26,508) ≤30 31–40 41–50 51–60 61–70 71–80 81–90 >90 1,598 (6) 3,584 (14) 3,433 (13) 5,054 (19) 5,730 (22) 4,964 (19) 1,608 (6) 537 (2) 23,659 (89) White Black Asian American Indian or Alaska Native Native Hawaiian or other Pacific Islander Multiracial Latinx^ 15,656 (59) 9,815 (37) 289 (1) 218 (1) 267 (1) 263 (1) 4,453 (17) Underweight (<18.5) Normal (18.5–24.9) Overweight (25–29.9) Class-I obese (30–34.9) Class-II obese (35–39.9) Class-III obese (40–44.9) Super obese (≥45) Alcohol use disorder^ 360 (1) 4,458 (17) 8,665 (33) 7,478 (28) 3,529 (13) 1,360 (5) 658 (2) 3,509 (13) Never Former Current Hospitalization^ 13,098 (49) 10,444 (39) 2,966 (11) 7,845 (30) Pacific-West/Mountain Mid-West/Continental South-East North-East 5,106 (19) 5,363 (20) 11,331 (43) 4,708 (18) March April May June July August September 2,101 (8) 3,551 (13) 2,100 (8) 4,709 (18) 9,682 (37) 4,137 (16) 228 (<1) 0 1–2 3–4 5+ 14,332 (54) 8,416 (32) 2,531 (10) 1,229 (5) Asthma Atherosclerosis Cancer Chronic kidney disease Chronic liver disease Congestive heart failure Chronic obstructive pulmonary disease Diabetes (type II) Hyperlipidemia Hypertension Mental illness Sleep disorder Substance abuse 1,715 (6) 6,700 (25) 3,197 (12) 4,035 (15) 588 (2) 2,971 (11) 3,682 (14) 8,653 (33) 13,908 (52) 14,694 (55) 12,935 (49) 7,252 (27) 5,651 (21) Angiotensin-converting enzyme inhibitors Angiotensin II receptor blockers Alpha-blockers Anti-androgens* Antihistamines Colchicine Corticosteroids (systemic, excluding inhalers) Metformin Nicotine replacement therapy Nonsteroidal anti-inflammatory drugs Statins Vitamin D 5,115 (19) 2,709 (10) 5,631 (21) 1,788 (7) 7,600 (29) 402 (2) 5,638 (21) 3,956 (15) 772 (3) 10,287 (39) 10,836 (41) 1,019 (4) ^Referent is the complement group. ~Includes non-hospitalized participants with zero length of stay. §Cigarettes. Chi-square test for independence (categorical), Deuchler–Wilcoxon test (continuous). BMI body mass index, d days, COVID-19 coronavirus disease 2019, IQR interquartile range, kg kilograms, LOS length of stay, m meters, SARS-CoV-2 severe acute respiratory syndrome coronavirus 2, USA United States of America, y years. *Men only After the SARS-CoV-2 positive test, 7,845 (30%) patients were hospitalized within 30 days (Table 2). The 6,732 survivors (27%) were hospitalized for a median of 6 days (interquartile range, or IQR=10 days), while the 1,612 (69%) who died within 30 days were hospitalized for a median of 9 days (IQR=9 days; p<0.0001). Baseline Charlson Comorbidity Index scores were greater among those dying versus surviving (<0.0001). Compared with survivors, common selected comorbidities which were significantly greater in those who died within 30 days included hypertension (77% vs. 54%), hyperlipidemia (65% vs. 52%), atherosclerosis (54% vs. 23%), type 2 diabetes (51% vs. 32%), and chronic kidney disease (CKD; 38% vs. 14%).
Table 2

Selected Characteristics of SARS-CoV-2 Positive US Veterans by Mortality Status (N = 26,508)

CharacteristicMortality status
Deadn (%)Median [IQR]Aliven (%)Median [IQR]P¥
N (%)1,612 (6)24,896 (94)---

Age (y)

≤30

31–40

41–50

51–60

61–70

71–80

81–90

>90

76 [16]59 [26]<.0001

    0 (0)

    3 (<1)

  25 (2)

  80 (5)

328 (20)

569 (35)

401 (25)

206 (13)

1,598 (6)

3,581 (14)

3,408 (14)

4,974 (20)

5,402 (22)

4,395 (18)

1,207 (5)

   331 (1)

<.0001
Male^1,575 (98)22,084 (89)<.0001
Race.055

White

Black

Asian

American Indian or Alaska Native

Native Hawaiian or other Pacific Islander

Multiracial

1,009 (63)

  547 (34)

    15 (1)

    16 (1)

    13 (1)

    12 (1)

14,647 (59)

  9,268 (37)

     274 (1)

     202 (1)

     254 (1)

     251 (1)

Latinx^154 (10)4,299 (17)<.0001

BMI (kg/m2)

Underweight (<18.5)

Normal (18.5–24.9)

Overweight (25–29.9)

Class-I obese (30–34.9)

Class-II obese (35–39.9)

Class-III obese (40–44.9)

Super obese (≥45)

27 [9]30 [8]<.0001

  73 (5)

489 (30)

490 (30)

304 (19)

159 (10)

  55 (3)

  42 (3)

   287 (1)

3,969 (16)

8,175 (33)

7,174 (29)

3,370 (14)

1,305 (5)

   616 (2)

<.0001
Alcohol use disorder^163 (10)3,346 (13)<.0001
Smoker§<.0001

Never

Former

Current

644 (40)

858 (53)

110 (7)

12,454 (50)

9,586 (39)

2,856 (11)

Hospitalization^1,113 (69)6,732 (27)<.0001

Length of stay (days)

≤7~

>7–14

>14

9 [9]6 [10]<.0001

946 (59)

388 (24)

278 (17)

22,081 (89)

  1,313 (5)

  1,502 (6)

<.0001
Mechanical ventilation^598 (37)584 (2)<.0001
Location (USA)<.0001

Pacific-West/Mountain

Mid-West/Continental

South-East

North-East

231 (14)

251 (16)

592 (37)

538 (33)

  4,875 (20)

  5,112 (21)

10,739 (43)

  4,170 (17)

Time (Index, 3/1–9/10)<.0001

March

April

May

June

July

August

September

253 (16)

445 (28)

190 (12)

205 (13)

315 (20)

192 (12)

12 (<1)

1,848 (7)

3,106 (12)

1,910 (8)

4,504 (18)

9,367 (38)

3,945 (16)

   216 (<1)

Charlson Comorbidity Index<.0001

0

1–2

3–4

5+

407 (25)

572 (35)

391 (24)

242 (15)

13,925 (56)

  7,844 (32)

  2,140 (9)

     987 (4)

Comorbidity^

Asthma

Atherosclerosis

Cancer

Chronic kidney disease

Chronic liver disease

Congestive heart failure

Chronic obstructive pulmonary disease

Diabetes (type II)

Hyperlipidemia

Hypertension

Mental illness

Sleep disorder

Substance abuse

    74 (5)

  872 (54)

  391 (24)

  612 (38)

    68 (4)

  452 (28)

  472 (29)

  813 (50)

1,047 (65)

1,242 (77)

  709 (44)

  416 (26)

  307 (19)

  1,641 (7)

  5,828 (23)

  2,806 (11)

  3,423 (14)

    520 (2)

  2,519 (10)

  3,210 (13)

  7,840 (31)

12,861 (52)

13,452 (54)

12,226 (49)

  6,836 (27)

  5,344 (21)

.0016

<.0001

<.0001

<.0001

<.0001

<.0001

<.0001

<.0001

<.0001

<.0001

<.0001

.15

.022

^Referent is the complement group. ~Includes non-hospitalized participants with zero length of stay. §Cigarettes. Chi-square test for independence (categorical), Deuchler–Wilcoxon test (continuous). BMI body mass index, d days, COVID-19 coronavirus disease 2019, IQR interquartile range, kg kilograms, LOS length of stay, m meters, SARS-CoV-2 severe acute respiratory syndrome coronavirus 2, USA United States of America, y years

Selected Characteristics of SARS-CoV-2 Positive US Veterans by Mortality Status (N = 26,508) Age (y) ≤30 31–40 41–50 51–60 61–70 71–80 81–90 >90 0 (0) 3 (<1) 25 (2) 80 (5) 328 (20) 569 (35) 401 (25) 206 (13) 1,598 (6) 3,581 (14) 3,408 (14) 4,974 (20) 5,402 (22) 4,395 (18) 1,207 (5) 331 (1) White Black Asian American Indian or Alaska Native Native Hawaiian or other Pacific Islander Multiracial 1,009 (63) 547 (34) 15 (1) 16 (1) 13 (1) 12 (1) 14,647 (59) 9,268 (37) 274 (1) 202 (1) 254 (1) 251 (1) BMI (kg/m2) Underweight (<18.5) Normal (18.5–24.9) Overweight (25–29.9) Class-I obese (30–34.9) Class-II obese (35–39.9) Class-III obese (40–44.9) Super obese (≥45) 73 (5) 489 (30) 490 (30) 304 (19) 159 (10) 55 (3) 42 (3) 287 (1) 3,969 (16) 8,175 (33) 7,174 (29) 3,370 (14) 1,305 (5) 616 (2) Never Former Current 644 (40) 858 (53) 110 (7) 12,454 (50) 9,586 (39) 2,856 (11) Length of stay (days) ≤7~ >7–14 >14 946 (59) 388 (24) 278 (17) 22,081 (89) 1,313 (5) 1,502 (6) Pacific-West/Mountain Mid-West/Continental South-East North-East 231 (14) 251 (16) 592 (37) 538 (33) 4,875 (20) 5,112 (21) 10,739 (43) 4,170 (17) March April May June July August September 253 (16) 445 (28) 190 (12) 205 (13) 315 (20) 192 (12) 12 (<1) 1,848 (7) 3,106 (12) 1,910 (8) 4,504 (18) 9,367 (38) 3,945 (16) 216 (<1) 0 1–2 3–4 5+ 407 (25) 572 (35) 391 (24) 242 (15) 13,925 (56) 7,844 (32) 2,140 (9) 987 (4) Asthma Atherosclerosis Cancer Chronic kidney disease Chronic liver disease Congestive heart failure Chronic obstructive pulmonary disease Diabetes (type II) Hyperlipidemia Hypertension Mental illness Sleep disorder Substance abuse 74 (5) 872 (54) 391 (24) 612 (38) 68 (4) 452 (28) 472 (29) 813 (50) 1,047 (65) 1,242 (77) 709 (44) 416 (26) 307 (19) 1,641 (7) 5,828 (23) 2,806 (11) 3,423 (14) 520 (2) 2,519 (10) 3,210 (13) 7,840 (31) 12,861 (52) 13,452 (54) 12,226 (49) 6,836 (27) 5,344 (21) .0016 <.0001 <.0001 <.0001 <.0001 <.0001 <.0001 <.0001 <.0001 <.0001 <.0001 .15 .022 ^Referent is the complement group. ~Includes non-hospitalized participants with zero length of stay. §Cigarettes. Chi-square test for independence (categorical), Deuchler–Wilcoxon test (continuous). BMI body mass index, d days, COVID-19 coronavirus disease 2019, IQR interquartile range, kg kilograms, LOS length of stay, m meters, SARS-CoV-2 severe acute respiratory syndrome coronavirus 2, USA United States of America, y years

Association of Analyzed Medications with 30-Day Mortality

Among those testing SARS-CoV-2 positive, the effect of eleven medications on the 30-day mortality was assessed as unadjusted and adjusted relative risk (aRR) (Table 3). All medications exhibited a decreased mortality risk in fully adjusted analyses. The largest decreases in mortality risk were observed for colchicine (aRR, 0.32; 95% CI, 0.15–0.67) and metformin (aRR, 0.33; 95% CI, 0.25–0.43), followed by angiotensin-converting-enzyme inhibitors (ACEi) (aRR, 0.43; 95% CI, 0.35–0.53), angiotensin II receptor blockers (ARBs) (aRR, 0.54; 95% CI, 0.43–0.69), vitamin D (aRR, 0.53; 95% CI, 0.37–0.77), statins (aRR, 0.54; 95% CI, 0.46–0.62), antihistamines (aRR, 0.57; 95% CI, 0.49–0.66), and alpha-blockers (aRR, 0.58; 95% CI, 0.51–0.66). Decreased risk was also seen for anti-androgens (aRR, 0.61; 95% CI,0.51–0.73, among male Veterans only) and nonsteroidal anti-inflammatory drugs (aRR, 0.69; 95% CI, 0.61–0.78). Nicotine replacement therapy exhibited a non-significant decreased risk of mortality (aRR, 0.60; 95% CI, 0.31–1.1).
Table 3

Adjusted Risk of Death Among SARS-CoV-2 Positive Veterans by Medication (N = 26,508)

Post-index medicationDead^n (%)Alive^n (%)Multiplicity-corrected aRR (95%CI)˅
UnadjustedAdjusted
N (%)1,612 (6)24,896 (94)
ACEi  155 (10)  4,960 (20).44 (.37–.54).43 (.35–.53)
ARBs  101 (6)  2,608 (10).59 (.47–.73).54 (.43–.69)
α-Blockers  357 (22)  5,274 (21)1.1 (.94–1.2).58 (.51–.66)
Anti-Androgens*  167 (11)  1,621 (7)1.5 (1.2–1.7).61 (.51–.73)
Antihistamines  260 (16)  7,340 (29).48 (.40–.57).57 (.49–.66)
Colchicine     9 (1)     393 (2).36 (.17–.78).32 (.15–.67)
Metformin    73 (5)  3,883 (16).27 (.20–.37).33 (.25–.43)
Nicotine    20 (1)     752 (3).42 (.26–.68).60 (.31–1.1)
NSAID  485 (30)  9,802 (39).68 (.61–.76).69 (.61–.78)
Statins  638 (40)10,198 (41).95 (.79–1.1).54 (.46–.62)
Vitamin D    43 (3)     976 (4).69 (.48–.98).53 (.37–.77)

Non-referent group of the indicated medication. ˅Confidence intervals corrected for multiplicity across indicated post-index medications using the Hochberg step-up procedure. ¶Main effect model for indicated medication, unadjusted for covariates. ‡Main effect model for indicated medication, adjusted for Age (≤60, 61–70, 71–80, >80), Alcohol Use Disorder (Yes, No), BMI (<18.5, 18.5–24.9, 25–29.9, ≥30), Charlson Comorbidity Index (0, 1–2, 3–4, 5+), Current Smoker (Yes, No), Hospitalization, Location (Pacific-Mountain, Mid-West/Continental, East Coast), Post-Index Corticosteroid use, Race (White, Black, Other Race), Sex (Male, Female), and Time (March, April–September). *Men only (N=23,656). ACEi angiotensin-converting-enzyme inhibitors; ARBs angiotensin II receptor blockers, aRR adjusted relative risk, BMI body mass index (kg/m2, kg = kilograms, m = meters), CI confidence interval, NSAID nonsteroidal anti-inflammatory drugs, SARS-CoV-2 severe acute respiratory syndrome coronavirus 2

Adjusted Risk of Death Among SARS-CoV-2 Positive Veterans by Medication (N = 26,508) Non-referent group of the indicated medication. ˅Confidence intervals corrected for multiplicity across indicated post-index medications using the Hochberg step-up procedure. ¶Main effect model for indicated medication, unadjusted for covariates. ‡Main effect model for indicated medication, adjusted for Age (≤60, 61–70, 71–80, >80), Alcohol Use Disorder (Yes, No), BMI (<18.5, 18.5–24.9, 25–29.9, ≥30), Charlson Comorbidity Index (0, 1–2, 3–4, 5+), Current Smoker (Yes, No), Hospitalization, Location (Pacific-Mountain, Mid-West/Continental, East Coast), Post-Index Corticosteroid use, Race (White, Black, Other Race), Sex (Male, Female), and Time (March, April–September). *Men only (N=23,656). ACEi angiotensin-converting-enzyme inhibitors; ARBs angiotensin II receptor blockers, aRR adjusted relative risk, BMI body mass index (kg/m2, kg = kilograms, m = meters), CI confidence interval, NSAID nonsteroidal anti-inflammatory drugs, SARS-CoV-2 severe acute respiratory syndrome coronavirus 2

Effect of Co-prescribed Medications on 30-Day Mortality Risk

We next analyzed the effect in SARS-CoV-2 positive patients of five commonly co-prescribed medications with differing mechanisms on 30-day mortality. The co-prescribed medications had a substantially lower mortality risk than either of the medications alone (Table 4). The mortality risk was lowest with the combination of statins and metformin (aRR, 0.21; 95% CI, 0.15–0.31), followed by ACEi and statins (aRR, 0.25; 95% CI, 0.18–0.35) and ACEi and metformin (aRR, 0.26; 95% CI, 0.17–0.40). Lower risk was also observed for combined antihistamines and NSAIDS (aRR, 0.41; 95% CI, 0.32–0.52), and in men, combined alpha-blockers and anti-androgens (aRR, 0.51; 95% CI, 0.42–0.64).
Table 4

Adjusted Risk of Death Among SARS-CoV-2 Positive Veterans by Medication

Medication (main effect)Dead^n (%)Alive^n (%)Multiplicity-CorrectedaRR (95%CI)˅
UnadjustedAdjusted
All patients (N = 26,508)
ACEiStatins

913 (57)

  61 (4)

544 (34)

  94 (6)

13,231 (53)

  1,467 (6)

  6,705 (27)

  3,493 (14)

1.0 Referent

.62 (.46–.82)

1.2 (1.02–1.3)

.41 (.33–.50)

1.0 Referent

.59 (.42–.84)

.60 (.53–.68)

.25 (.18–.35)

+
+
++
ACEiMetformin

1,415 (88)

  124 (8)

    42 (3)

    31 (2)

17,786 (71)

  3,227 (13)

  2,150 (9)

  1,733 (7)

1.0 Referent

.50 (.42–.60)

.26 (.19–.36)

.24 (.17–.34)

1.0 Referent

.42 (.34–.52)

.33 (.24–.46)

.26 (.17–.40)

+
+
++
AntihistamineNSAID

972 (60)

155 (10)

380 (24)

105 (7)

11,499 (46)

  3,595 (14)

  6,057 (24)

  3,745 (15)

1.0 Referent

.53 (.45–.63)

.76 (.67–.85)

.35 (.27–.45)

1.0 Referent

.60 (.50–.73)

.70 (.61–.80)

.41 (.32–.52)

+
+
++
StatinsMetformin

954 (59)

585 (36)

  20 (1)

  53 (3)

13,954 (56)

  7,059 (28)

    744 (3)

  3,139 (13)

1.0 Referent

1.2 (1.08–1.3)

.41 (.26–.65)

.26 (.19–.36)

1.0 Referent

.59 (.52–.67)

.49 (.29–.83)

.21 (.15–.31)

+
+
++
Men only (N = 23,659)
Alpha-blockerAnti-androgen

1,166 (74)

  242 (15)

    54 (3)

  113 (7)

16,577 (75)

  3,886 (18)

     420 (2)

  1,201 (5)

1.0 Referent

.89 (.78–1.02)

1.7 (1.3–2.2)

1.3 (1.09–1.6)

1.0 Referent

.59 (.51–.69)

.74 (.56–.987)

.51 (.42–.64)

+
+
++

Non-referent group of the indicated medication. ¶Main effect model unadjusted for covariates. ‡Main effect model adjusted for Age (≤60, 61–70, 71–80, >80), Alcohol Use Disorder (Yes, No), BMI (<18.5, 18.5–24.9, 25–29.9, ≥30), Charlson Comorbidity Index (0, 1–2, 3–4, 5+), Current Smoker (Yes, No), Hospitalization, Location (Pacific-Mountain, Mid-West/Continental, East Coast), Post-Index Corticosteroid use, Race (White, Black, Other Race), Sex (Male, Female), and Time (March, April–September). ˅Confidence intervals corrected for multiplicity across indicated post-index medications using the Hochberg step-up procedure, accounting for a common referent category within multinomial comparisons. ACEi angiotensin-converting enzyme inhibitors, aRR adjusted relative risk, BMI body mass index (kg/m2, kg = kilograms. m = meters), CI confidence interval, NSAID nonsteroidal anti-inflammatory drugs, SARS-CoV-2 severe acute respiratory syndrome coronavirus 2

Adjusted Risk of Death Among SARS-CoV-2 Positive Veterans by Medication 913 (57) 61 (4) 544 (34) 94 (6) 13,231 (53) 1,467 (6) 6,705 (27) 3,493 (14) 1.0 Referent .62 (.46–.82) 1.2 (1.02–1.3) .41 (.33–.50) 1.0 Referent .59 (.42–.84) .60 (.53–.68) .25 (.18–.35) 1,415 (88) 124 (8) 42 (3) 31 (2) 17,786 (71) 3,227 (13) 2,150 (9) 1,733 (7) 1.0 Referent .50 (.42–.60) .26 (.19–.36) .24 (.17–.34) 1.0 Referent .42 (.34–.52) .33 (.24–.46) .26 (.17–.40) 972 (60) 155 (10) 380 (24) 105 (7) 11,499 (46) 3,595 (14) 6,057 (24) 3,745 (15) 1.0 Referent .53 (.45–.63) .76 (.67–.85) .35 (.27–.45) 1.0 Referent .60 (.50–.73) .70 (.61–.80) .41 (.32–.52) 954 (59) 585 (36) 20 (1) 53 (3) 13,954 (56) 7,059 (28) 744 (3) 3,139 (13) 1.0 Referent 1.2 (1.08–1.3) .41 (.26–.65) .26 (.19–.36) 1.0 Referent .59 (.52–.67) .49 (.29–.83) .21 (.15–.31) 1,166 (74) 242 (15) 54 (3) 113 (7) 16,577 (75) 3,886 (18) 420 (2) 1,201 (5) 1.0 Referent .89 (.78–1.02) 1.7 (1.3–2.2) 1.3 (1.09–1.6) 1.0 Referent .59 (.51–.69) .74 (.56–.987) .51 (.42–.64) Non-referent group of the indicated medication. ¶Main effect model unadjusted for covariates. ‡Main effect model adjusted for Age (≤60, 61–70, 71–80, >80), Alcohol Use Disorder (Yes, No), BMI (<18.5, 18.5–24.9, 25–29.9, ≥30), Charlson Comorbidity Index (0, 1–2, 3–4, 5+), Current Smoker (Yes, No), Hospitalization, Location (Pacific-Mountain, Mid-West/Continental, East Coast), Post-Index Corticosteroid use, Race (White, Black, Other Race), Sex (Male, Female), and Time (March, April–September). ˅Confidence intervals corrected for multiplicity across indicated post-index medications using the Hochberg step-up procedure, accounting for a common referent category within multinomial comparisons. ACEi angiotensin-converting enzyme inhibitors, aRR adjusted relative risk, BMI body mass index (kg/m2, kg = kilograms. m = meters), CI confidence interval, NSAID nonsteroidal anti-inflammatory drugs, SARS-CoV-2 severe acute respiratory syndrome coronavirus 2

DISCUSSION

Of more than 26,000 SARS-CoV-2 positive Veterans in this diverse national cohort, most were male and White, and had overweight/obesity, with nearly half over age 60; one in three were Black and one in six Latinx. Compared with survivors, those who died had a significantly higher prevalence of hypertension, hyperlipidemia, atherosclerosis, diabetes, and chronic kidney disease. In SARS-CoV-2 positive individuals, we assessed the effect of study medications hypothesized to decrease mortality through effects on inflammation and other mechanisms. We found that metformin and colchicine, followed by ACEi and ARBs, were associated with the largest decreased risk of 30-day mortality. Vitamin D, statins, antihistamines, and alpha-blockers were associated with a moderate decrease in mortality risk, with a lesser effect observed for anti-androgens and NSAIDS. Nicotine replacement therapy showed a tendency toward a decreased mortality risk. We then examined the effect of commonly co-prescribed medications on 30-day mortality risk, combining medications with differing mechanisms of action. Compared with each medication alone, all drug pairs were associated with a further decrease in 30-day mortality risk. Combined statins and metformin were associated with the greatest decrease in mortality risk relative to those who received neither drugs, followed by ACEi and statins or metformin. Antihistamines and NSAIDS also significantly decreased mortality risk, while alpha-blockers and anti-androgens decreased mortality risk in men. Our findings suggest there may not be a need to discontinue use of these medications in patients receiving them when SARS-CoV-2 positive. In our study, many patients had indications for these study medications due to concomitant cardiovascular disease (CVD), CKD, or diabetes, which also increase the risk of severe COVID-19.[37-39] In a large VHA study to identify the prevalence of prediabetes, nearly three of four overweight or obese Veterans exhibited prediabetes or diabetes[40] — many of whom would likely benefit from use of metformin, statins, and ACEi, as recommended by the American Diabetes Association.[41,42] With the ongoing coronavirus disease-19 (COVID-19) pandemic and high VHA rates of comorbidities, these promising individual and combination therapies could be prospectively studied in pragmatic controlled clinical trials to assess their therapeutic benefit. Among those SARS-CoV-2 positive, the therapeutic benefit of the statin and metformin drug pair may arise from its anti-inflammatory and other effects. Statins decrease inflammatory markers, thrombogenicity, and inflammasome activation in monocytes, while improving endothelial dysfunction.[43,44] Metformin suppresses immune hyperactivation and reactive oxygen species, exhibits anti-microbial activity and decreased mortality in sepsis, in addition to improved glycemic control, and decreased insulin resistance.[45] Observational COVID-19 clinical studies report decreased mortality risk with use of metformin and statins independently.[11,18,22,46-49] In men in our study, a decreased 30-day mortality risk in SARS-CoV-2 positive Veterans was observed with combined alpha-blocker and anti-androgen therapy — which is commonly prescribed as a combination pill for benign prostatic hypertrophy. In severe COVID-19, inflammatory cytokines produced by macrophages can be increased by adrenaline; alpha-blockers prevent cytokine release and increase survival rate in observational analyses of COVID-19[50] as well as non-COVID-19-associated acute respiratory distress syndrome (ARDS) or pneumonia, compared with nonusers. In a randomized controlled trial of the potent anti-androgen proxalutamide or placebo in 645 hospitalized men and women, proxalutamide decreased mortality 77%, relative to placebo, and was generally well-tolerated.[51] These data suggest the value of examining a combined alpha-blocker and anti-androgen therapy in a controlled trial in SARS-COV-2 positive patients. Our study data on ACEi, ARBs, and NSAIDS were supported by multiple studies reporting an association with decreased mortality in COVID-19. In a meta-analysis of more than 100,000 patients in 52 studies (predominantly observational), more than 26,000 patients receiving ACEi or ARBs for hypertension exhibited a significantly decreased mortality rate compared with those not receiving these drugs.[17] In the OpenSAFELY observational cohort of nearly 2 million patients with osteoarthritis and rheumatoid arthritis, a lower adjusted risk of mortality was observed among the one in ten patients receiving NSAIDS with COVID-19, relative to those not on NSAIDS.[20] We also observed a decreased mortality risk in SARS-CoV-2 positive Veterans with colchicine and vitamin D treatment. However, published data on the effect of these drugs on COVID-19 mortality are conflicting. The large randomized controlled COLCORONA community trial of colchicine vs. placebo (randomizing more than 4500 patients) revealed no statistically significant difference in COVID-19-associated clinical events.[52] Similarly, while demonstrating benefit for influenza, vitamin D shows conflicting results in COVID-19 in several small randomized controlled trials, although a meta-analysis and systematic review reported vitamin D generally improved clinical outcomes.[24] We found that 30-day mortality risk was decreased with post-SARS-CoV-2 positive treatment with antihistamines; nicotine replacement therapy exhibited no effect on mortality risk. While there is limited data on antihistamines in SARS-CoV-2, antihistamines display antiviral effects in vitro and a decreased rate of infection was reported with diphenhydramine, hydroxyzine, and azelastine use in more than 200,000 patients tested for SARS-CoV-2.[53] In more than 80 nursing home patients receiving antihistamines and azithromycin with severe COVID-19, a fourfold lower mortality rate (6% vs 28%) was observed compared with data pooled from other nursing homes.[27] A randomized controlled trial of nicotine replacement therapy in COVID-19 is ongoing.[54] As a cholinergic agonist, nicotine inhibits inflammatory cytokines,[55,56] which could favorably affect SARS-CoV-2 outcomes. Additional data are awaited to support the use of antihistamines and nicotine replacement products in SARS-CoV-2. Our study’s strengths are its assessment of frequently prescribed licensed medications administered to SARS-CoV-2 positive patients which provides support that these drugs may not need to be discontinued and could be beneficial for reducing mortality. Its additional strengths include its national scope, large size, racially diverse population, and reliable pharmacy data. Assessing all positive SARS-CoV-2 cases in the more than nine million Veterans within our integrated healthcare system,[57] we completed a detailed evaluation of prescribed medications and comorbidities that could influence 30-day mortality in SARS-CoV-2 positive patients. As the study medications are prescribed for many of the most common comorbidities in the VHA, these results are both reassuring and relevant to clinical care, supporting greater use of metformin, statins, and ACEi/ARBs, when indicated. Despite accurate VHA medication dispensing data, our study is limited by the fact that we did not confirm adherence (i.e., this biases our results toward the null) and did not adjust for medications other than corticosteroids reported to decrease COVID-19 mortality (e.g., selective serotonin reuptake inhibitors, etc.), and over-the-counter medications were not fully recorded. However, with the low or absent medication co-payments in the VHA, medication adherence is increased relative to the general population.[58] As the VHA population is largely comprised of older males (with females constituting approximately 10%), our results may not be fully generalizable to other healthcare systems. While we adjusted our analyses for baseline comorbidities, the potential remains for residual confounding, effect modification, misclassification bias, and collider effects among variables. In conclusion, we observed a significantly decreased adjusted relative risk of 30-day mortality in SARS-CoV-2 positive patients receiving commonly prescribed medications postulated to have a favorable effect, including metformin, statins, ACEi, ARBs, alpha-blockers, anti-androgens, antihistamines, vitamin D, and NSAIDS. In assessing co-prescribed drugs, we found a markedly decreased 30-day mortality with combined metformin and statins; ACEi and statins (or metformin); and NSAIDS and antihistamines. In men, a lower 30-day mortality risk was observed with combined alpha-blockers and anti-androgens, a combination pill commonly prescribed for benign prostatic hypertrophy. Our findings suggest that these generally safe medications and drug pairs should not be discontinued in SARS-CoV-2 positive patients and could be beneficial for reducing mortality. Controlled clinical trials of promising therapies may assess their therapeutic benefit. (DOCX 31 kb)
  52 in total

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2.  Trends Over Time in the Risk of Adverse Outcomes Among Patients With Severe Acute Respiratory Syndrome Coronavirus 2 Infection.

Authors:  George N Ioannou; Ann M O'Hare; Kristin Berry; Vincent S Fan; Kristina Crothers; McKenna C Eastment; Emily Locke; Pamela Green; Javeed A Shah; Jason A Dominitz
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Authors:  Xiao-Jing Zhang; Juan-Juan Qin; Xu Cheng; Lijun Shen; Yan-Ci Zhao; Yufeng Yuan; Fang Lei; Ming-Ming Chen; Huilin Yang; Liangjie Bai; Xiaohui Song; Lijin Lin; Meng Xia; Feng Zhou; Jianghua Zhou; Zhi-Gang She; Lihua Zhu; Xinliang Ma; Qingbo Xu; Ping Ye; Guohua Chen; Liming Liu; Weiming Mao; Youqin Yan; Bing Xiao; Zhigang Lu; Gang Peng; Mingyu Liu; Jun Yang; Luyu Yang; Changjiang Zhang; Haofeng Lu; Xigang Xia; Daihong Wang; Xiaofeng Liao; Xiang Wei; Bing-Hong Zhang; Xin Zhang; Juan Yang; Guang-Nian Zhao; Peng Zhang; Peter P Liu; Rohit Loomba; Yan-Xiao Ji; Jiahong Xia; Yibin Wang; Jingjing Cai; Jiao Guo; Hongliang Li
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7.  Safety and efficacy of anti-il6-receptor tocilizumab use in severe and critical patients affected by coronavirus disease 2019: A comparative analysis.

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9.  Risk Factors for Hospitalization, Mechanical Ventilation, or Death Among 10 131 US Veterans With SARS-CoV-2 Infection.

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