Literature DB >> 33746047

Association of Clinical Factors and Recent Anti-Cancer Therapy with COVID-19 Severity among Patients with Cancer: A Report from the COVID-19 and Cancer Consortium.

P Grivas1, A R Khaki2, T M Wise-Draper3, B French4, C Hennessy4, C-Y Hsu4, Y Shyr4, X Li5, T K Choueiri6, C A Painter7, S Peters8, B I Rini4, M A Thompson9, S Mishra4, D R Rivera10, J D Acoba11, M Z Abidi12, Z Bakouny6, B Bashir13, T Bekaii-Saab14, S Berg15, E H Bernicker16, M A Bilen17, P Bindal18, R Bishnoi19, N Bouganim20, D W Bowles12, A Cabal21, P F Caimi22, D D Chism23, J Crowell24, C Curran6, A Desai25, B Dixon24, D B Doroshow26, E B Durbin27, A Elkrief20, D Farmakiotis28, A Fazio29, L A Fecher30, D B Flora24, C R Friese30, J Fu29, S M Gadgeel31, M D Galsky26, D M Gill32, M J Glover33, S Goyal34, P Grover3, S Gulati3, S Gupta35, S Halabi36, T R Halfdanarson25, B Halmos37, D J Hausrath5, J E Hawley38, E Hsu39, M Huynh-Le34, C Hwang31, C Jani40, A Jayaraj41, D B Johnson4, A Kasi42, H Khan28, V S Koshkin43, N M Kuderer44, D H Kwon43, P E Lammers45, A Li46, A Loaiza-Bonilla47, C A Low32, M B Lustberg48, G H Lyman49, R R McKay21, C McNair13, H Menon50, R A Mesa51, V Mico13, D Mundt9, G Nagaraj52, E S Nakasone49, J Nakayama53, A Nizam35, N L Nock22, C Park3, J M Patel18, K G Patel54, P Peddi55, N A Pennell35, A J Piper-Vallillo18, M Puc56, D Ravindranathan17, M E Reeves52, D Y Reuben57, L Rosenstein58, R P Rosovsky59, S M Rubinstein60, M Salazar51, A L Schmidt6, G K Schwartz38, M R Shah61, S A Shah33, C Shah19, J A Shaya21, S R K Singh31, M Smits62, K E Stockerl-Goldstein63, D G Stover48, M Streckfuss9, S Subbiah64, L Tachiki49, E Tadesse9, A Thakkar37, M D Tucker4, A K Verma37, D C Vinh20, M Weiss62, J T Wu33, E Wulff-Burchfield40, Z Xie25, P P Yu41, T Zhang36, A Y Zhou63, H Zhu65, L Zubiri59, D P Shah51, J L Warner4, G dL Lopes66.   

Abstract

BACKGROUND: Patients with cancer may be at high risk of adverse outcomes from SARS-CoV-2 infection. We analyzed a cohort of patients with cancer and COVID-19 reported to the COVID-19 and Cancer Consortium (CCC19) to identify prognostic clinical factors, including laboratory measurements and anti-cancer therapies. PATIENTS AND METHODS: Patients with active or historical cancer and a laboratory-confirmed SARS-CoV-2 diagnosis recorded between March 17-November 18, 2020 were included. The primary outcome was COVID-19 severity measured on an ordinal scale (uncomplicated, hospitalized, admitted to intensive care unit, mechanically ventilated, died within 30 days). Multivariable regression models included demographics, cancer status, anti-cancer therapy and timing, COVID-19-directed therapies, and laboratory measurements (among hospitalized patients).
RESULTS: 4,966 patients were included (median age 66 years, 51% female, 50% non-Hispanic white); 2,872 (58%) were hospitalized and 695 (14%) died; 61% had cancer that was present, diagnosed, or treated within the year prior to COVID-19 diagnosis. Older age, male sex, obesity, cardiovascular and pulmonary comorbidities, renal disease, diabetes mellitus, non-Hispanic Black race, Hispanic ethnicity, worse ECOG performance status, recent cytotoxic chemotherapy, and hematologic malignancy were associated with higher COVID-19 severity. Among hospitalized patients, low or high absolute lymphocyte count, high absolute neutrophil count, low platelet count, abnormal creatinine, troponin, LDH, and CRP were associated with higher COVID-19 severity. Patients diagnosed early in the COVID-19 pandemic (January-April 2020) had worse outcomes than those diagnosed later. Specific anti-cancer therapies (e.g. R-CHOP, platinum combined with etoposide, and DNA methyltransferase inhibitors) were associated with high 30-day all-cause mortality.
CONCLUSIONS: Clinical factors (e.g. older age, hematological malignancy, recent chemotherapy) and laboratory measurements were associated with poor outcomes among patients with cancer and COVID-19. Although further studies are needed, caution may be required in utilizing particular anti-cancer therapies.
Copyright © 2021. Published by Elsevier Ltd.

Entities:  

Keywords:  - Anti-cancer therapy; - Cancer; - Laboratory measurements; - Outcomes; - neoplasm; SARS-CoV2

Year:  2021        PMID: 33746047      PMCID: PMC7972830          DOI: 10.1016/j.annonc.2021.02.024

Source DB:  PubMed          Journal:  Ann Oncol        ISSN: 0923-7534            Impact factor:   32.976


Introduction

The severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) pandemic has resulted in at least 1.5 million deaths worldwide. , Patients with cancer may have increased risk for SARS-CoV-2 infection3, 4, 5 and worse outcomes.6, 7, 8, 9, 10, 11, 12, 13 Estimates of 30-day mortality associated with coronavirus 2019 (COVID-19) for patients with cancer range from 13% to 33%, , compared with 0.5% to 2% in the general population. , Patients with cancer comprise a heterogeneous population, and a better understanding of specific risk factors associated with poor outcomes may help guide clinical management. The COVID-19 and Cancer Consortium (CCC19) is an international consortium that collects data on patients with cancer and COVID-19. , , Studies from CCC19 and other cohorts have suggested that older age, male sex, smoking status, worse performance status (PS), presence of comorbidities, hematological malignancies, and active cancer are associated with more severe outcomes.6, 7, 8, 9 , Prior studies were limited by modest statistical power. There is also conflicting data regarding the impact of timing and modality of recent anticancer therapy on COVID-19 severity. , , In addition, few studies have investigated the role of laboratory measurements as possible prognostic indicators, particularly among patients with cancer hospitalized with COVID-19. Leveraging detailed information from almost 5000 patients with COVID-19 and cancer, we evaluated the hypothesis that specific demographic characteristics, clinical factors, and laboratory measurements would be associated with higher COVID-19 severity. We also explored the impact of specific anticancer therapies on COVID-19 severity and 30-day all-cause mortality.

Methods

Study design

CCC19 maintains a centralized multi-institution registry of patients with COVID-19 who have a current or past diagnosis of cancer. Details of the schema and data elements have been previously described. , Study data are collected and managed using REDCap software hosted at Vanderbilt University Medical Center. , Reports were accrued from 17 March to 18 November 2020 and included patients who had a laboratory-confirmed diagnosis of SARS-CoV-2 by PCR and/or serology. Patients with noninvasive cancers including nonmelanoma skin cancer, in situ carcinoma (except bladder carcinoma in situ), or precursor hematologic neoplasms (e.g. monoclonal gammopathy of undetermined significance) were excluded. Reports with low-quality data (quality score >4 using our previously defined metric; Supplementary Table S1, available at https://doi.org/10.1016/j.annonc.2021.02.024) or incomplete outcome ascertainment, resulting in unknown status of the primary outcome, were also excluded. This study was exempt from Institutional Review Board (IRB) review (VUMC IRB#200467) and was approved by IRBs at participating sites per respective institutional policy. This ongoing study is registered on ClinicalTrials.gov (NCT04354701).

Outcome definitions

The primary outcome was a five-level ordinal scale of COVID-19 severity based on a patient's most severe reported disease status: none of the following complications (hereafter, uncomplicated); admitted to the hospital, admitted to an intensive care unit (ICU), mechanically ventilated at any time after COVID-19 diagnosis; or died from any cause within 30 days of COVID-19 diagnosis. We performed a secondary analysis of 30-day all-cause mortality and a descriptive analysis of patterns of anticancer therapy received within 3 months of COVID-19 diagnosis.

Prognostic factors

Potential prognostic variables were identified a priori and included age; sex; race/ethnicity; country of patient residence (United States versus non-United States); month of COVID-19 diagnosis (January-April, May-August, September-November; year 2020); smoking status; obesity; cardiovascular and pulmonary comorbidities; renal disease; diabetes mellitus; Eastern Cooperative Oncology Group (ECOG) PS; type of malignancy (solid tumor, hematological neoplasm); cancer status at time of COVID-19 diagnosis; timing of the most recent anticancer therapy; modality of anticancer therapy received within 3 months of COVID-19 diagnosis; and anti-COVID-19 treatments. Cancer status was defined as remission or no evidence of disease versus active disease, with active further defined as responding to therapy, stable, or progressing. Timing of anticancer therapy was categorized as never treated, 0-4 weeks, 1-3 months, and >3 months prior to COVID-19 diagnosis. Anticancer modalities were defined as cytotoxic chemotherapy, immunotherapy, targeted therapy, endocrine therapy, locoregional therapy (radiation and/or surgery), and other (Supplementary Table S2, available at https://doi.org/10.1016/j.annonc.2021.02.024). Anti-COVID-19 treatments included hydroxychloroquine, corticosteroids, remdesivir, and other (Supplementary Table S3, available at https://doi.org/10.1016/j.annonc.2021.02.024). Survey respondents were instructed to report the earliest measured laboratory measurements during the COVID-19 disease course. Laboratory measurements included absolute lymphocyte count (ALC), absolute neutrophil count (ANC), platelet count, creatinine, D-dimer, troponin, lactate dehydrogenase (LDH), and C-reactive protein (CRP). Hematological measurements (ALC, ANC, platelets) were recorded as high, normal, or low; nonhematological measurements were defined as normal or abnormal. Except for low ALC, which was centrally defined as ALC <1500/μl, ascertainment of upper and lower limits of normal was left to the discretion of survey respondents.

Statistical methods

All statistical methods were specified before database lock (18 November 2020) and the subsequent initiation of the analysis. Standard descriptive statistics were used to summarize baseline prognostic factors overall and stratified by levels of the ordinal COVID-19 severity outcome. Adjusted odds ratios and 95% confidence intervals for COVID-19 severity and 30-day mortality were estimated from multivariable ordinal and binary logistic regression models, respectively. Exploratory analyses with smoothing splines were used to determine the association of age (as a continuous variable) with outcomes, which appeared nonlinear (Supplementary Figure S1, available at https://doi.org/10.1016/j.annonc.2021.02.024). A linear regression spline with a knot at 40 years, which allowed a different linear association less than and greater than 40 years, provided an adequate fit. All other covariates were categorical. For analyses among all patients, we included all prespecified covariates in a single model, given a sufficient number of events (and corresponding degrees of freedom) to enable full multivariable models. In the primary analysis for COVID-19 severity, we did not adjust for anti-COVID-19 treatments due to suspected confounding by indication; these were adjusted for in a sensitivity analysis. Results between minimally adjusted (age, sex, and race/ethnicity) and fully adjusted models, variance inflation factors, and clinical judgment were used to assess stability of the results. We considered interactions among specific comorbidities (cardiovascular, pulmonary, renal disease), specific anti-COVID-19 treatments (hydroxychloroquine, corticosteroids, other), specific anticancer therapies (cytotoxic chemotherapy, immunotherapy, targeted therapy), and between timing and modality of anticancer therapy. Associations of laboratory measurements with outcomes were assessed among hospitalized patients due to current common clinical practice to avoid a laboratory blood draw for outpatients. Because of the reduced sample size, we adjusted for a smaller set of potential clinical confounders: age, sex, race/ethnicity, country of patient residence, month of COVID-19 diagnosis, type of malignancy, cancer status, and active anticancer therapy. No interactions were considered for this analysis. Multiple imputation using additive regression, bootstrapping, and predictive mean matching was used to impute missing and unknown data for all variables included in the analysis, with the following exceptions: unknown ECOG PS and unknown cancer status were included as ‘unknown’ categories; and laboratory values were imputed only among hospitalized patients. Separate imputation models were developed for the full cohort (10 iterations; missingness rates were <5%) and the hospitalized cohort (20 iterations; missingness rates for laboratory values were >10%). We conducted an exploratory analysis of specific anticancer drug exposures, which are collected in optional free-text fields. Two curators (JLW and XL) independently abstracted the fields for all patients with systemic anticancer therapy reported (cytotoxic chemotherapy, immunotherapy, endocrine therapy, and/or targeted therapy) within 3 months prior to COVID-19 diagnosis; disagreements were resolved by consensus. Specific drugs were grouped by similar mechanisms of action (Supplementary Table S2, available at https://doi.org/10.1016/j.annonc.2021.02.024) based on consensus among authors. The results were visualized using UpSet plots. Analyses were performed in R version 4.0.3 (R Foundation for Statistical Computing, Vienna, Austria), including the Hmisc, rms, and UpSetR extension packages.

Results

A total of 6968 reports were evaluable in the REDCap database and 4966 were included in our analysis after exclusions (Supplementary Figure S2, available at https://doi.org/10.1016/j.annonc.2021.02.024). Among these patients, who had a median follow-up of 42 days [interquartile range (IQR) 22-90 days], 2872 (58%) were hospitalized during their COVID-19 course (Table 1 ). The median age of the entire cohort and hospitalized subgroup was 66 (IQR 56-76) and 70 (IQR 60-79) years, respectively. Approximately half of the patients were female and non-Hispanic white in each group, while non-Hispanic black patients represented 22% and 24%, respectively. Approximately 80% had solid tumors, 51% had cancer in remission, and 40% received anticancer therapy within 3 months of COVID-19 diagnosis. Altogether, 61% had cancer that was present, active, or treated within the past year. Additional baseline characteristics are summarized in Table 1.
Table 1

Baseline prognostic factors among all patients and hospitalized patients

All patients
Hospitalized patients
(n = 4966)(n = 2872)
Median agea, years (IQR)66 (56-76)70 (60-79)
Sex
 Female2527 (51)1323 (46)
 Male2436 (49)1546 (54)
 Missing/unknown3 (<1)3 (<1)
Race and ethnicityb
 Non-Hispanic white2485 (50)1371 (48)
 Non-Hispanic black1068 (22)697 (24)
 Hispanic722 (15)390 (14)
 Other578 (12)359 (12)
 Missing/unknown113 (2)55 (2)
Smoking status
 Never2615 (53)1356 (47)
 Ever2161 (44)1386 (48)
 Missing/unknown190 (4)130 (5)
Obesity status
 Not obese3220 (65)1909 (66)
 Obese1704 (34)944 (33)
 Missing/unknown42 (1)19 (1)
Comorbiditiesb
 Cardiovascular1582 (32)1175 (41)
 Pulmonary1091 (22)762 (27)
 Renal disease831 (17)644 (22)
 Diabetes mellitus1385 (28)994 (35)
 Missing/unknown56 (1)26 (1)
ECOG performance status
 01731 (35)725 (25)
 11296 (26)794 (28)
 ≥2806 (16)675 (24)
 Unknown1121 (23)671 (23)
 Missing12 (<1)7 (<1)
Type of malignancyb
 Solid tumor4021 (81)2260 (79)
 Hematological neoplasm1097 (22)717 (25)
Cancer status
 Remission or no evidence of disease2546 (51)1366 (48)
 Active and responding556 (11)293 (10)
 Active and stable813 (16)467 (16)
 Active and progressing613 (12)452 (16)
 Unknown426 (9)283 (10)
 Missing12 (<1)11 (<1)
Timing of anticancer therapy
 Never treated413 (8)252 (9)
 0-4 weeks1609 (32)907 (32)
 1-3 months375 (8)231 (8)
 >3 months2344 (47)1324 (46)
 Missing/unknown225 (5)158 (6)
Modality of active anticancer therapyb,c
 None2807 (57)1625 (57)
 Cytotoxic chemotherapy802 (16)491 (17)
 Immunotherapy248 (5)137 (5)
 Targeted therapy693 (14)426 (15)
 Endocrine therapy483 (10)229 (8)
 Locoregional therapy422 (8)249 (9)
 Other33 (1)18 (1)
 Missing/unknown176 (4)110 (4)
Anti-COVID-19 treatmentb
 None2816 (57)1048 (36)
 Remdesivir438 (9)435 (15)
 Hydroxychloroquine829 (17)796 (28)
 Corticosteroids708 (14)634 (22)
 Other1166 (23)1023 (36)
 Missing/unknown259 (5)143 (5)
Country of patient residence
 United States4739 (95)2714 (94)
 Outside United States227 (5)158 (6)
Month of COVID-19 diagnosis
 January-April1927 (39)1284 (45)
 May-August2508 (51)1325 (46)
 September-November433 (9)211 (7)
 Missing/unknown98 (2)52 (2)
Absolute lymphocyte countd
 Low1402 (49)
 Normal891 (31)
 High74 (3)
 Missing/unknown505 (18)
Absolute neutrophil countd
 Low217 (8)
 Normal1739 (61)
 High474 (17)
 Missing/unknown442 (15)
Platelet countd
 Low733 (26)
 Normal1675 (58)
 High119 (4)
 Missing/unknown345 (12)
Creatinined
 Normal1498 (52)
 Abnormal1049 (37)
 Missing/unknown325 (11)
D-dimerd
 Normal236 (8)
 Abnormal1321 (46)
 Missing/unknown1315 (46)
Troponind
 Normal983 (34)
 Abnormal608 (21)
 Missing/unknown1281 (45)
Lactate dehydrogenased
 Normal358 (12)
 Abnormal1128 (39)
 Missing/unknown1386 (48)
C-reactive proteind
 Normal137 (5)
 Abnormal1434 (50)
 Missing/unknown1301 (45)

Data presented as n (%) unless otherwise indicated. The ‘Missing/unknown’ category indicates either missingness due to nonresponse for optional survey questions or a response of unknown; an unknown category was provided for all survey questions.

COVID-19, coronavirus disease 2019; ECOG, Eastern Cooperative Oncology Group; IQR, interquartile range.

For patients younger than 18 years (n = 9), age was truncated to 18 years; for patients older than 89 years (n = 161), age was truncated to 90 years. Truncation was done in concordance with the Health Insurance Portability and Accountability Act of 1996 (HIPAA) and to reduce the risk of re-identifiability.

Percentages could sum to >100% because categories are not mutually exclusive.

Within 3 months of COVID-19 diagnosis.

Laboratory data were systemically not collected for nonhospitalized patients.

Baseline prognostic factors among all patients and hospitalized patients Data presented as n (%) unless otherwise indicated. The ‘Missing/unknown’ category indicates either missingness due to nonresponse for optional survey questions or a response of unknown; an unknown category was provided for all survey questions. COVID-19, coronavirus disease 2019; ECOG, Eastern Cooperative Oncology Group; IQR, interquartile range. For patients younger than 18 years (n = 9), age was truncated to 18 years; for patients older than 89 years (n = 161), age was truncated to 90 years. Truncation was done in concordance with the Health Insurance Portability and Accountability Act of 1996 (HIPAA) and to reduce the risk of re-identifiability. Percentages could sum to >100% because categories are not mutually exclusive. Within 3 months of COVID-19 diagnosis. Laboratory data were systemically not collected for nonhospitalized patients. Supplementary Table S4, available at https://doi.org/10.1016/j.annonc.2021.02.024, provides unadjusted rates of hospitalization and 30-day mortality. Of note, the 30-day mortality rate (95% CI) for patients diagnosed with COVID-19 during January-April, May-August, and September-November was 21% (20%-23%), 10% (9%-11%), and 7% (5%-10%), respectively.

COVID-19 severity

Of the 4966 patients, 2072 had an uncomplicated disease course (Table 2 ). For the 2894 patients with complications, 1675 were admitted to the hospital but did not require ICU care or mechanical ventilation and did not die. An additional 232 were admitted to the ICU without mechanical ventilation, 292 required mechanical ventilation, and 695 died within 30 days. Patients who died were older (median age 75 versus 61-69 years for other outcomes). Males had worse COVID-19 severity compared with females, as indicated by greater proportions of males among those who received mechanical ventilation or died. Table 2 and Supplementary Table S5, available at https://doi.org/10.1016/j.annonc.2021.02.024, provide summaries stratified by the ordinal outcome for the entire cohort and the hospitalized subgroup, respectively.
Table 2

Baseline prognostic factors stratified by levels of COVID-19 severitya among all patients

Prognostic factorNo complications
Admitted to hospital
Admitted to ICU
Received mechanical ventilation
Died within 30 days
(n = 2072, 42%)(n = 1675, 34%)(n = 232, 5%)(n = 292, 6%)(n = 695, 14%)
Median ageb, years (IQR)61 (50-70)69 (59-78)66.5 (58-76)66 (57-72.25)75 (66-83)
Sex
 Female1193 (58)832 (50)109 (47)111 (38)282 (41)
 Male879 (42)841 (50)123 (53)180 (62)413 (59)
 Missing/unknown0 (0)2 (<1)0 (0)1 (<1)0 (0)
Race and ethnicityc
 Non-Hispanic white1100 (53)802 (48)116 (50)125 (43)342 (49)
 Non-Hispanic black369 (18)389 (23)51 (22)76 (26)183 (26)
 Hispanic328 (16)239 (14)27 (12)46 (16)82 (12)
 Other217 (10)211 (13)36 (16)38 (13)76 (11)
 Missing/unknown58 (3)34 (2)2 (1)7 (2)12 (2)
Smoking status
 Never1248 (60)842 (50)105 (45)154 (53)266 (38)
 Ever764 (37)768 (46)113 (49)126 (43)390 (56)
 Missing/unknown60 (3)65 (4)14 (6)12 (4)39 (6)
Obesity status
 Not obese1293 (62)1125 (67)148 (64)165 (57)489 (70)
 Obese756 (36)538 (32)82 (35)125 (43)203 (29)
 Missing/unknown23 (1)12 (1)2 (1)2 (1)3 (<1)
Comorbiditiesc
 Cardiovascular393 (19)629 (38)96 (41)110 (38)354 (51)
 Pulmonary323 (16)414 (25)65 (28)67 (23)222 (32)
 Renal disease179 (9)331 (20)49 (21)63 (22)209 (30)
 Diabetes mellitus385 (19)540 (32)82 (35)113 (39)265 (38)
 Missing/unknown30 (1)15 (1)2 (1)4 (1)5 (1)
ECOG performance status
 01004 (48)476 (28)65 (28)96 (33)90 (13)
 1499 (24)490 (29)62 (27)79 (27)166 (24)
 ≥2115 (6)328 (20)50 (22)35 (12)278 (40)
 Unknown449 (22)378 (23)54 (23)80 (27)160 (23)
 Missing5 (<1)3 (<1)1 (<1)2 (1)1 (<1)
Type of malignancyc
 Solid tumor1744 (84)1361 (81)167 (72)213 (73)536 (77)
 Hematological neoplasm373 (18)368 (22)74 (32)91 (31)191 (27)
Cancer status
 Remission1173 (57)831 (50)125 (54)148 (51)269 (39)
 Active and responding262 (13)194 (12)17 (7)27 (9)56 (8)
 Active and stable344 (17)275 (16)38 (16)48 (16)108 (16)
 Active and progressing153 (7)243 (15)23 (10)32 (11)162 (23)
 Unknown139 (7)129 (8)29 (12)34 (12)95 (14)
 Missing1 (<1)3 (<1)0 (0)3 (1)5 (1)
Timing of anticancer therapy
 Never treated159 (8)144 (9)21 (9)26 (9)63 (9)
 0-4 weeks697 (34)530 (32)66 (28)96 (33)220 (32)
 1-3 months139 (7)130 (8)14 (6)15 (5)77 (11)
 >3 months1012 (49)793 (47)113 (49)137 (47)289 (42)
 Missing/unknown65 (3)78 (5)18 (8)18 (6)46 (7)
Modality of active anticancer therapyc,d
 None1171 (57)953 (57)142 (61)167 (57)374 (54)
 Cytotoxic chemotherapy305 (15)293 (17)29 (12)31 (11)144 (21)
 Immunotherapy108 (5)75 (4)15 (6)11 (4)39 (6)
 Targeted therapy264 (13)243 (15)34 (15)48 (16)104 (15)
 Endocrine therapy252 (12)149 (9)11 (5)24 (8)47 (7)
 Locoregional therapy173 (8)140 (8)20 (9)24 (8)65 (9)
 Other15 (1)9 (1)0 (0)2 (1)7 (1)
 Missing/unknown65 (3)63 (4)10 (4)14 (5)24 (3)
Anti-COVID-19 treatmentc
 None1752 (85)744 (44)54 (23)44 (15)222 (32)
 Remdesivir<5 (<1)210 (13)72 (31)69 (24)84 (12)
 Hydroxychloroquine32 (2)380 (23)57 (25)122 (42)238 (34)
 Corticosteroids73 (4)281 (17)92 (40)104 (36)158 (23)
 Other142 (7)465 (28)100 (43)175 (60)284 (41)
 Missing/unknown112 (5)84 (5)11 (5)14 (5)38 (5)
Country of patient residence
 United States2004 (97)1573 (94)221 (95)282 (97)659 (95)
 Outside United States68 (3)102 (6)11 (5)10 (3)36 (5)
Month of COVID-19 diagnosis
 January-April627 (30)651 (39)75 (32)163 (56)411 (59)
 May-August1177 (57)842 (50)129 (56)115 (39)245 (35)
 September-November222 (11)148 (9)26 (11)6 (2)31 (4)
 Missing/unknown46 (2)34 (2)2 (1)8 (3)8 (1)

Data presented as n (%) unless otherwise indicated. The ‘Missing/unknown’ category indicates either missingness due to nonresponse for optional survey questions or a response of unknown; an unknown category was provided for all survey questions.

COVID-19, coronavirus disease 2019; ECOG, Eastern Cooperative Oncology Group; ICU, intensive care unit; IQR, interquartile range.

Five-level ordinal scale based on a patient's most severe reported disease status. For example, patients who were admitted to the intensive care unit without mechanical ventilation and did not die within 30 days of COVID-19 diagnosis are classified as ‘admitted to intensive care unit’, whereas patients who were admitted to the intensive care unit with mechanical ventilation and did not die within 30 days of COVID-19 diagnosis are classified as ‘received mechanical ventilation’.

For patients younger than 18 years, age was truncated to 18 years; for patients older than 89 years, age was truncated to 90 years.

Percentages could sum to >100% because categories are not mutually exclusive.

Within 3 months of COVID-19 diagnosis.

Baseline prognostic factors stratified by levels of COVID-19 severitya among all patients Data presented as n (%) unless otherwise indicated. The ‘Missing/unknown’ category indicates either missingness due to nonresponse for optional survey questions or a response of unknown; an unknown category was provided for all survey questions. COVID-19, coronavirus disease 2019; ECOG, Eastern Cooperative Oncology Group; ICU, intensive care unit; IQR, interquartile range. Five-level ordinal scale based on a patient's most severe reported disease status. For example, patients who were admitted to the intensive care unit without mechanical ventilation and did not die within 30 days of COVID-19 diagnosis are classified as ‘admitted to intensive care unit’, whereas patients who were admitted to the intensive care unit with mechanical ventilation and did not die within 30 days of COVID-19 diagnosis are classified as ‘received mechanical ventilation’. For patients younger than 18 years, age was truncated to 18 years; for patients older than 89 years, age was truncated to 90 years. Percentages could sum to >100% because categories are not mutually exclusive. Within 3 months of COVID-19 diagnosis. Multivariable analysis revealed higher COVID-19 severity among patients older than 40 years, males, and non-Hispanic black and Hispanic patients compared with non-Hispanic white patients (Table 3 ). In addition, obesity, cardiovascular and pulmonary comorbidities, renal disease, diabetes mellitus, worse ECOG PS, and hematological malignancy were associated with higher COVID-19 severity. Active and progressing cancer, recent active cytotoxic chemotherapy, and COVID-19-directed treatments were also associated with higher severity. Notably, noncytotoxic systemic anticancer therapies including immunotherapy, targeted therapy, and endocrine therapy were not associated with higher COVID-19 severity. Of the 483 patients receiving endocrine therapy, 214 (44%) were in remission, which was a higher proportion than for those receiving cytotoxic chemotherapy (11%), targeted therapy (15%), or immunotherapy (6%).
Table 3

Adjusted associations of baseline prognostic factors with COVID-19 severity (primary) and 30-day all-cause mortality (secondary) among all patients

COVID-19 severity
30-day mortality
ORa (95% CI)ORb (95% CI)
Age, per decadec
 Age <40 years0.91 (0.72-1.15)0.58 (0.35-0.97)
 Age >40 years1.38 (1.31-1.45)1.75 (1.59-1.93)
Sex, male versus female1.47 (1.31-1.65)1.46 (1.20-1.77)
Race and ethnicity, versus non-Hispanic white
 Non-Hispanic black1.46 (1.27-1.68)1.38 (1.09-1.75)
 Hispanic1.38 (1.16-1.64)1.31 (0.96-1.80)
 Other1.27 (1.05-1.53)0.97 (0.70-1.36)
Smoking status, ever versus never1.10 (0.98-1.24)1.20 (0.98-1.46)
Obesity status, obese versus not obese1.14 (1.01-1.29)1.09 (0.88-1.35)
Cardiovascular comorbidities, yes versus no1.46 (1.29-1.67)1.17 (0.95-1.43)
Pulmonary comorbidities, yes versus no1.52 (1.33-1.74)1.34 (1.09-1.66)
Renal disease, yes versus no1.38 (1.19-1.60)1.31 (1.05-1.63)
Diabetes mellitus, yes versus no1.53 (1.35-1.73)1.23 (1.00-1.50)
ECOG performance status, versus 0
 11.42 (1.22-1.64)1.53 (1.14-2.05)
 ≥23.44 (2.88-4.10)4.48 (3.34-6.00)
 Unknown1.75 (1.50-2.04)2.04 (1.51-2.76)
Type of malignancy, versus solid tumor
 Hematological neoplasm1.70 (1.46-1.99)1.44 (1.10-1.87)
 Multipled1.21 (1.01-1.44)1.30 (1.00-1.70)
Cancer status, versus remission or no evidence of disease
 Active and responding0.84 (0.67-1.04)0.79 (0.52-1.18)
 Active and stable0.97 (0.81-1.16)1.06 (0.77-1.44)
 Active and progressing2.19 (1.80-2.67)2.88 (2.13-3.90)
 Unknown1.93 (1.55-2.41)2.19 (1.56-3.07)
Timing of anticancer therapy, versus >3 months
 Never treated1.05 (0.83-1.32)1.10 (0.75-1.62)
 0-4 weeks1.04 (0.79-1.36)1.10 (0.70-1.72)
 1-3 months1.03 (0.75-1.41)1.39 (0.84-2.29)
Modality of active anticancer therapye
 Cytotoxic chemotherapy, yes versus no1.28 (1.04-1.58)1.61 (1.15-2.24)
 Immunotherapy, yes versus no0.86 (0.64-1.16)0.91 (0.56-1.47)
 Targeted therapy, yes versus no1.09 (0.87-1.36)0.90 (0.63-1.31)
 Endocrine therapy, yes versus no0.79 (0.61-1.03)0.68 (0.43-1.09)
 Locoregional therapy, yes versus no1.18 (0.93-1.50)0.96 (0.65-1.42)
 Other, yes versus no0.97 (0.47-2.00)1.31 (0.44-3.94)
Anti-COVID-19 treatmentf
 Remdesivir, yes versus no1.55 (1.10-2.18)
 HCQ alone, yes versus no1.64 (1.16-2.32)
 Corticosteroids alone, yes versus no1.86 (1.35-2.56)
 Other alone, yes versus no1.64 (1.23-2.17)
 HCQ + corticosteroids, yes versus no1.91 (1.21-3.01)g
 HCQ + other, yes versus no2.98 (2.24-3.97)g
Country of residence, United States versus outside United States1.07 (0.81-1.41)0.85 (0.54-1.35)
Month of COVID-19 diagnosis, versus January-April
 May-August0.50 (0.45-0.57)0.43 (0.35-0.54)
 September-November0.42 (0.34-0.52)0.26 (0.16-0.41)

Models for COVID-19 severity and 30-day all-cause mortality include all variables listed, except where noted. There were no indications of model instability, except for timing of anticancer therapy (variance inflation factor 5.4); however, multicollinearity is not unexpected because timing and modality are both defined by receipt of anticancer therapy.

CI, confidence interval; COVID-19, coronavirus disease 2019; ECOG, Eastern Cooperative Oncology Group; HCQ, hydroxychloroquine; OR, odds ratio.

Odds ratios >1 indicate higher COVID-19 severity.

Odds ratios >1 indicate higher odds of 30-day all-cause mortality.

Obtained from a linear regression spline with a knot at age 40 years, such that odds ratios for ‘Age <40 years’ correspond to the per-decade difference in age for ages <40 years and odds ratios for ‘Age >40 years’ correspond to the per-decade difference in age for ages >40 years.

Includes two or more solid tumors or hematological neoplasms.

Within 3 months of COVID-19 diagnosis.

The model for COVID-19 severity did include anti-COVID-19 treatments due to suspected confounding by indication.

Interaction P = 0.19 (2 degrees of freedom).

Adjusted associations of baseline prognostic factors with COVID-19 severity (primary) and 30-day all-cause mortality (secondary) among all patients Models for COVID-19 severity and 30-day all-cause mortality include all variables listed, except where noted. There were no indications of model instability, except for timing of anticancer therapy (variance inflation factor 5.4); however, multicollinearity is not unexpected because timing and modality are both defined by receipt of anticancer therapy. CI, confidence interval; COVID-19, coronavirus disease 2019; ECOG, Eastern Cooperative Oncology Group; HCQ, hydroxychloroquine; OR, odds ratio. Odds ratios >1 indicate higher COVID-19 severity. Odds ratios >1 indicate higher odds of 30-day all-cause mortality. Obtained from a linear regression spline with a knot at age 40 years, such that odds ratios for ‘Age <40 years’ correspond to the per-decade difference in age for ages <40 years and odds ratios for ‘Age >40 years’ correspond to the per-decade difference in age for ages >40 years. Includes two or more solid tumors or hematological neoplasms. Within 3 months of COVID-19 diagnosis. The model for COVID-19 severity did include anti-COVID-19 treatments due to suspected confounding by indication. Interaction P = 0.19 (2 degrees of freedom). More recent diagnosis of COVID-19 compared with diagnosis earlier in the pandemic (between January and April) was associated with lower COVID-19 severity. Significant interactions were observed among anti-COVID-19 treatments (Supplementary Table S6, available at https://doi.org/10.1016/j.annonc.2021.02.024). However, there were no meaningful interactions among medical comorbidities, anticancer therapies, or between timing of anticancer therapy and modality of anticancer therapies (Supplementary Table S7, available at https://doi.org/10.1016/j.annonc.2021.02.024). Many characteristics associated with higher COVID-19 severity, including cytotoxic chemotherapy, were also associated with 30-day mortality (Table 3). Factors such as Hispanic ethnicity and cardiovascular comorbidities had a weaker association that was no longer statistically significant. COVID-19-directed treatments had a substantial attenuation of the association in the 30-day mortality analysis, although all retained statistical significance.

Laboratory measurements among hospitalized patients

Laboratory measurements collected during SARS-CoV-2 diagnosis were analyzed among the hospitalized subgroup of 2872 patients (Figure 1 , Supplementary Table S8, available at https://doi.org/10.1016/j.annonc.2021.02.024). High ALC; low ALC; high ANC; and low platelets; as well as abnormal levels of creatinine; troponin; or LDH; were each associated with higher COVID-19 severity and 30-day mortality. Abnormal CRP was associated with higher COVID-19 severity.
Figure 1

Adjusted odds ratios and 95% confidence intervals for laboratory measurements obtained from multivariable models for COVID-19 severity and 30-day all-cause mortality among hospitalized patients.

Odds ratios >1 indicate higher COVID-19 severity or higher odds of 30-day all-cause mortality. Adjusted for age, sex, race/ethnicity, country of patient residence, month of COVID-19 diagnosis, type of malignancy, cancer status, and active anticancer therapy. COVID-19, coronavirus disease 2019.

Adjusted odds ratios and 95% confidence intervals for laboratory measurements obtained from multivariable models for COVID-19 severity and 30-day all-cause mortality among hospitalized patients. Odds ratios >1 indicate higher COVID-19 severity or higher odds of 30-day all-cause mortality. Adjusted for age, sex, race/ethnicity, country of patient residence, month of COVID-19 diagnosis, type of malignancy, cancer status, and active anticancer therapy. COVID-19, coronavirus disease 2019.

Anticancer therapies

Of the 1803 patients receiving systemic anticancer therapy within 3 months of COVID-19 diagnosis, 1626 (90%) had extractable free-text drug exposure with 125 distinct drugs/classes reported. Most exposures (n = 856, 53%) were to a single drug or class; 357 (22%) patients received at least three drugs in combination. Drug/class exposures noted in at least 10 patients are shown in Figure 2 . The three treatment regimens with the lowest and highest observed 30-day and overall all-cause mortality are described in Table 4 . Platinum-etoposide, R-CHOP-like, and DNA methyltransferase inhibitor regimens were associated with the highest observed 30-day and overall all-cause mortality.
Figure 2

Visualization of the most prevalent cancer therapies and associated 30-day all-cause mortality.

Individual anticancer drug exposures and their combinations are shown in an UpSet plot, which is an alternative to the Venn diagram for the visualization of high-dimensional data. Each row represents the individual anticancer therapies recorded as being given within 3 months of COVID-19 diagnosis that were present in ≥10 cases; rows are colored by treatment modality. Each column represents the intersection of one or more drugs given in combination (i.e. as a regimen) in ≥10 cases. A column with a single dark circle represents a monotherapy regimen; columns with multiple dark circles connected by dark lines represent multiagent regimens. Bars are colored by mortality for the patients receiving the drug or the combination, with darker hues representing higher mortality. This information is also shown in tabular format in Supplementary Table 9, available at https://doi.org/10.1016/j.annonc.2021.02.024.

ADT, androgen-deprivation therapy; BCR-ABLi, BCR-ABL tyrosine kinase inhibitor; BRAFi, serine/threonine-protein kinase B-Raf inhibitor; BTKi, Bruton tyrosine kinase inhibitor; CDK4/6i, cyclin-dependent kinase 4 and 6 inhibitor; COVID-19, coronavirus disease 2019; DNMTi, DNA methyltransferase inhibitor; EGFRi, epidermal growth factor receptor tyrosine kinase inhibitor; ERBB2i, epidermal growth factor receptor 2 tyrosine kinase inhibitor; IMiD, immunomodulator; JAKi, Janus kinase inhibitor; MEKi, mitogen-activated protein kinase kinase inhibitor; NSAA, nonsteroid antiandrogen; OFS, ovarian function suppression; PARPi, poly (ADP-ribose) polymerase inhibitor; VEGFRi, vascular endothelial growth factor receptor inhibitor.

Table 4

Characteristics for exposures associated with the lowesta and highest observed mortality among patients treated with systemic anticancer therapy within 3 months of COVID-19 diagnosis

Lowest observed mortality
Highest observed mortality
AC-T-likeb
Dara-IMiD-Dex
OFS + AI
Platinum + Etoposide
R-CHOP-likec
DNMTi
(n = 17)(n = 10)(n = 12)(n = 10)(n = 22)(n = 12)
All-cause mortality
 30-day mortality0 (0)0 (0)0 (0)3 (30)8 (36)6 (50)
 Any mortality0 (0)1 (10)0 (0)4 (40)10 (45)6 (50)
Most common primary cancerBreast17 (100)MM10 (100)Breast11 (92)SCLC5 (50)DLBCL17 (77)MDS7 (58)
Median (IQR) age, years55 (49-62)69 (64-80.5)43.5 (41-46.5)66.5 (60-74.5)67.5 (45-79)67.5 (59-87)
ECOG PS 0-116 (94)5 (50)11 (92)6 (60)18 (82)7 (58)
Curative treatment intent17 (100)0 (0)d10 (83)2 (20)18 (82)1 (8)

Data presented as n (%) unless otherwise indicated.

AI, aromatase inhibitor; CDK4/6i, cyclin-dependent kinase 4 and 6 inhibitor; COVID-19, coronavirus disease 2019; Dara, daratumumab; DLBCL, diffuse large B-cell lymphoma; DNMTi, DNA methyltransferase inhibitor; ECOG PS, Eastern Cooperative Oncology Group performance status; IMiD, immunomodulatory imide drugs; IQR, interquartile range; MDS, myelodysplastic syndrome; MM, multiple myeloma; OFS, ovarian function suppression; PS, performance status; SCLC, small-cell lung cancer.

Not shown: somatostatin analogs, and CDK4/6i + fulvestrant.

Combination of anthracycline, cyclophosphamide, and taxane.

Combination of CD20 antibody, cyclophosphamide, anthracycline, vinca alkaloid, and corticosteroid.

All treatment for multiple myeloma except allogeneic stem cell transplant was considered palliative by definition.

Visualization of the most prevalent cancer therapies and associated 30-day all-cause mortality. Individual anticancer drug exposures and their combinations are shown in an UpSet plot, which is an alternative to the Venn diagram for the visualization of high-dimensional data. Each row represents the individual anticancer therapies recorded as being given within 3 months of COVID-19 diagnosis that were present in ≥10 cases; rows are colored by treatment modality. Each column represents the intersection of one or more drugs given in combination (i.e. as a regimen) in ≥10 cases. A column with a single dark circle represents a monotherapy regimen; columns with multiple dark circles connected by dark lines represent multiagent regimens. Bars are colored by mortality for the patients receiving the drug or the combination, with darker hues representing higher mortality. This information is also shown in tabular format in Supplementary Table 9, available at https://doi.org/10.1016/j.annonc.2021.02.024. ADT, androgen-deprivation therapy; BCR-ABLi, BCR-ABL tyrosine kinase inhibitor; BRAFi, serine/threonine-protein kinase B-Raf inhibitor; BTKi, Bruton tyrosine kinase inhibitor; CDK4/6i, cyclin-dependent kinase 4 and 6 inhibitor; COVID-19, coronavirus disease 2019; DNMTi, DNA methyltransferase inhibitor; EGFRi, epidermal growth factor receptor tyrosine kinase inhibitor; ERBB2i, epidermal growth factor receptor 2 tyrosine kinase inhibitor; IMiD, immunomodulator; JAKi, Janus kinase inhibitor; MEKi, mitogen-activated protein kinase kinase inhibitor; NSAA, nonsteroid antiandrogen; OFS, ovarian function suppression; PARPi, poly (ADP-ribose) polymerase inhibitor; VEGFRi, vascular endothelial growth factor receptor inhibitor. Characteristics for exposures associated with the lowesta and highest observed mortality among patients treated with systemic anticancer therapy within 3 months of COVID-19 diagnosis Data presented as n (%) unless otherwise indicated. AI, aromatase inhibitor; CDK4/6i, cyclin-dependent kinase 4 and 6 inhibitor; COVID-19, coronavirus disease 2019; Dara, daratumumab; DLBCL, diffuse large B-cell lymphoma; DNMTi, DNA methyltransferase inhibitor; ECOG PS, Eastern Cooperative Oncology Group performance status; IMiD, immunomodulatory imide drugs; IQR, interquartile range; MDS, myelodysplastic syndrome; MM, multiple myeloma; OFS, ovarian function suppression; PS, performance status; SCLC, small-cell lung cancer. Not shown: somatostatin analogs, and CDK4/6i + fulvestrant. Combination of anthracycline, cyclophosphamide, and taxane. Combination of CD20 antibody, cyclophosphamide, anthracycline, vinca alkaloid, and corticosteroid. All treatment for multiple myeloma except allogeneic stem cell transplant was considered palliative by definition.

Discussion

COVID-19 poses a substantial risk to patients with cancer. It is essential to understand factors associated with high risk of adverse outcomes to inform clinical decision making. In this study, we used a novel ordinal outcome of COVID-19 severity and a cohort of almost 5000 patients with cancer to identify demographic factors (age, male sex, race/ethnicity), clinical factors (comorbidities, ECOG PS, hematological malignancy, active and progressing cancer, recent cytotoxic chemotherapy), and laboratory measurements (high or low ALC; high ANC; low platelets; abnormal creatinine, troponin, or LDH) associated with higher COVID-19 severity. While these data can certainly inform providers regarding prognostic factors and risk stratification, and also significantly broaden our understanding in this important topic, our findings are hypothesis generating and might not directly modify daily clinical practice. Our findings confirm those from an earlier study from CCC19 and other studies.6, 7, 8, 9, 10 , In particular, older age and male sex have been identified as negative prognostic factors among patients with or without cancer, although our study is the first, to our knowledge, to demonstrate a nonlinear relationship between age and risk.6, 7, 8, 9, 10 , , We also noted higher COVID-19 severity for patients of non-Hispanic, non-white race/ethnicity and higher 30-day mortality for non-Hispanic black patients. These differences may suggest disparities in health care access, delivery, and research, especially in the context of our prior finding and a recent systematic review suggesting that non-Hispanic black patients were less likely to receive novel anti-COVID-19 treatments. , Future research from CCC19 is planned to investigate these disparities further. Among patients with cancer, hematological malignancies, , , active cancer, , 9, 10, 11 , and worse ECOG PS , , have been consistently associated with worse outcomes, which was also noted here. While prior studies observed a negative association between number of comorbidities and COVID-19 outcomes, , , few have investigated specific comorbidities as we included in our analysis. In previous studies among patients without cancer, low ALC, low platelets, and abnormal CRP and creatinine were identified among laboratory values associated with severe COVID-19. , Data among patients with cancer are limited, although prior studies suggested that abnormal CRP, LDH, and low ALC were associated with worse COVID-19 outcomes. , Our study included a broader range of routinely collected laboratory measurements and identified new parameters associated with higher COVID-19 severity. However, we did not collect laboratory values now recognized to be associated with COVID-19 severity (e.g. ferritin and procalcitonin); future efforts will include automated extraction of these and longitudinal values directly from electronic health records. Receipt of cytotoxic chemotherapy was associated with higher COVID-19 severity and 30-day mortality. However, there is substantial variability of anticancer regimens, such that no one regimen containing cytotoxics was received by >31 patients (Figure 2). Some regimens may be subject to unmeasured confounding, for example, extent of lung involvement in patients with lung cancer receiving platinum doublets. It was very concerning to note the high mortality among those receiving R-CHOP, especially because most received it with curative intent. While grade 5 toxicities with R-CHOP may occur, a mortality rate >40% is very high. Although the exact etiology remains unclear, this regimen is broadly immunosuppressive. In addition to B-cell lymphodepleting effects, rituximab is known to alter the T-cell compartment, which may contribute to cytokine storm. , On the contrary, the finding of relatively lower mortality among patients with multiple myeloma receiving daratumumab + IMiD + corticosteroid seems paradoxical given the high risk of infection in this patient population. Interestingly, inhibition of the CD38 pathway may reduce the inflammatory response. This relatively favorable prognosis is supported by several studies.37, 38, 39 Notably, immunotherapy alone was not associated with higher COVID-19 severity. This is in contrast to an earlier report in lung cancer, which was subsequently disproven after adjustment for smoking status from the same group. This finding is encouraging as immuno-therapeutics (specifically, immune checkpoint inhibitors) are the most prescribed regimen in our cohort and >40% of patients with advanced cancer may be eligible for immunotherapy. Similarly, endocrine therapy was not associated with higher COVID-19 severity, after adjustment for cancer status. There is a hypothetical possibility that antiandrogens could downregulate TMPRSS2 in the lung, limiting SARS-CoV-2 infection. , Further investigation is needed. The pandemic has substantially changed oncology practice in many deleterious ways, which may worsen cancer-related outcomes. , Since the beginning, clinicians have attempted to balance the risks and benefits of cancer therapy by developing consensus-based algorithms to assist decision making45, 46, 47, 48; our data could further guide the optimization and refinement of those algorithms. Our finding of lower COVID-19 severity later in the pandemic may also suggest an overall improvement in COVID-19 care. Alternative explanations for this finding include that certain areas may have been overwhelmed earlier in the pandemic and that patients prone to severe disease and death, particularly those in skilled nursing facilities, may have been infected early. Notably, only 9% of included patients were diagnosed with COVID-19 during September-November, so that the observed improvement in outcomes should not be extrapolated to the surge in November-December 2020. Ultimately, an individualized risk–benefit discussion is critical when choosing systemic treatment, balancing carefully risks of cancer progression, associated risk of anticancer therapy, and COVID-19 severity. While the majority of prior studies have suggested poor outcomes for patients with cancer and COVID-19, a recent study using a case-matched study design found patients with cancer and COVID-19 had similar outcomes to those without cancer, when matched by age, sex, and comorbidities. However, this study was limited to hospitalized patients in Manhattan, whereas our cohort includes any patient with cancer and COVID-19 and is diverse in multi-institutional representation. Notable strengths of our study include detailed and granular information directly collected by health care professionals on a large and geographically diverse patient population with comprehensive follow-up. The novel ordinal scale of COVID-19 severity extends our previous research beyond 30-day mortality to capture other relevant complications of COVID-19 disease, and is consistent with newly recommended analytical approaches. The analysis of anticancer therapy elucidated specific regimens associated with increased mortality, which warrants detailed exploration. Our study has several limitations, including those inherent to a retrospective, observational cohort study. Despite a robust data quality assurance system, survey-based data collection (voluntary, uncompensated) across multiple sites may result in selection biases, reporting errors, missing, and unknown data; the potential impact of these is mitigated by exclusion of low-quality reports and multiple imputation. Our results, particularly those for COVID-19 treatments, may be subject to confounding by indication and severity. Baseline laboratory measurements prior to COVID-19 diagnosis, which have been suggested to be associated with COVID-19 outcomes, were not collected due to the time-intensive nature of manually recording laboratories; automated data pulls from electronic health records may address this limitation in the future. Fixed dates are not captured due to the deidentified nature of the protocol; therefore time intervals are approximated at varying levels of granularity. We did not pursue subset analysis within individual cancer types, which is an area of future research. In conclusion, we confirmed high COVID-19 severity and mortality among patients with cancer, in particular for those of older age, male sex, non-Hispanic non-white race/ethnicity, worse ECOG PS, hematologic malignancy, and select laboratory measurements. Certain chemotherapy regimens were associated with high all-cause mortality. These findings can inform novel translational research, clinical trial designs, and clinical decision making for patients with cancer and COVID-19. Future planned work from CCC19 includes further investigation into health care disparities, outcomes for specific cancer subtypes, and impact of particular anticancer therapies.
  44 in total

Review 1.  Mild or Moderate Covid-19.

Authors:  Rajesh T Gandhi; John B Lynch; Carlos Del Rio
Journal:  N Engl J Med       Date:  2020-04-24       Impact factor: 91.245

2.  COVID-19 Severity and Outcomes in Patients With Cancer: A Matched Cohort Study.

Authors:  Gagandeep Brar; Laura C Pinheiro; Michael Shusterman; Brandon Swed; Evgeniya Reshetnyak; Orysya Soroka; Frank Chen; Samuel Yamshon; John Vaughn; Peter Martin; Doru Paul; Manuel Hidalgo; Manish A Shah
Journal:  J Clin Oncol       Date:  2020-09-28       Impact factor: 44.544

3.  Applying Lessons Learned From Low-Resource Settings to Prioritize Cancer Care in a Pandemic.

Authors:  Rebecca J DeBoer; Temidayo A Fadelu; Lawrence N Shulman; Katherine Van Loon
Journal:  JAMA Oncol       Date:  2020-09-01       Impact factor: 31.777

4.  Chemotherapy and COVID-19 Outcomes in Patients With Cancer.

Authors:  Justin Jee; Michael B Foote; Melissa Lumish; Aaron J Stonestrom; Beatriz Wills; Varun Narendra; Viswatej Avutu; Yonina R Murciano-Goroff; Jason E Chan; Andriy Derkach; John Philip; Rimma Belenkaya; Marina Kerpelev; Molly Maloy; Adam Watson; Chris Fong; Yelena Janjigian; Luis A Diaz; Kelly L Bolton; Melissa S Pessin
Journal:  J Clin Oncol       Date:  2020-08-14       Impact factor: 44.544

5.  UpSet: Visualization of Intersecting Sets.

Authors:  Alexander Lex; Nils Gehlenborg; Hendrik Strobelt; Romain Vuillemot; Hanspeter Pfister
Journal:  IEEE Trans Vis Comput Graph       Date:  2014-12       Impact factor: 4.579

6.  Androgen-deprivation therapies for prostate cancer and risk of infection by SARS-CoV-2: a population-based study (N = 4532).

Authors:  M Montopoli; S Zumerle; R Vettor; M Rugge; M Zorzi; C V Catapano; G M Carbone; A Cavalli; F Pagano; E Ragazzi; T Prayer-Galetti; A Alimonti
Journal:  Ann Oncol       Date:  2020-05-06       Impact factor: 32.976

7.  Clinical impact of COVID-19 on patients with cancer (CCC19): a cohort study.

Authors:  Nicole M Kuderer; Toni K Choueiri; Dimpy P Shah; Yu Shyr; Samuel M Rubinstein; Donna R Rivera; Sanjay Shete; Chih-Yuan Hsu; Aakash Desai; Gilberto de Lima Lopes; Petros Grivas; Corrie A Painter; Solange Peters; Michael A Thompson; Ziad Bakouny; Gerald Batist; Tanios Bekaii-Saab; Mehmet A Bilen; Nathaniel Bouganim; Mateo Bover Larroya; Daniel Castellano; Salvatore A Del Prete; Deborah B Doroshow; Pamela C Egan; Arielle Elkrief; Dimitrios Farmakiotis; Daniel Flora; Matthew D Galsky; Michael J Glover; Elizabeth A Griffiths; Anthony P Gulati; Shilpa Gupta; Navid Hafez; Thorvardur R Halfdanarson; Jessica E Hawley; Emily Hsu; Anup Kasi; Ali R Khaki; Christopher A Lemmon; Colleen Lewis; Barbara Logan; Tyler Masters; Rana R McKay; Ruben A Mesa; Alicia K Morgans; Mary F Mulcahy; Orestis A Panagiotou; Prakash Peddi; Nathan A Pennell; Kerry Reynolds; Lane R Rosen; Rachel Rosovsky; Mary Salazar; Andrew Schmidt; Sumit A Shah; Justin A Shaya; John Steinharter; Keith E Stockerl-Goldstein; Suki Subbiah; Donald C Vinh; Firas H Wehbe; Lisa B Weissmann; Julie Tsu-Yu Wu; Elizabeth Wulff-Burchfield; Zhuoer Xie; Albert Yeh; Peter P Yu; Alice Y Zhou; Leyre Zubiri; Sanjay Mishra; Gary H Lyman; Brian I Rini; Jeremy L Warner
Journal:  Lancet       Date:  2020-05-28       Impact factor: 79.321

8.  COVID-19 mortality in patients with cancer on chemotherapy or other anticancer treatments: a prospective cohort study.

Authors:  Lennard Yw Lee; Jean-Baptiste Cazier; Vasileios Angelis; Roland Arnold; Vartika Bisht; Naomi A Campton; Julia Chackathayil; Vinton Wt Cheng; Helen M Curley; Matthew W Fittall; Luke Freeman-Mills; Spyridon Gennatas; Anshita Goel; Simon Hartley; Daniel J Hughes; David Kerr; Alvin Jx Lee; Rebecca J Lee; Sophie E McGrath; Christopher P Middleton; Nirupa Murugaesu; Thomas Newsom-Davis; Alicia Fc Okines; Anna C Olsson-Brown; Claire Palles; Yi Pan; Ruth Pettengell; Thomas Powles; Emily A Protheroe; Karin Purshouse; Archana Sharma-Oates; Shivan Sivakumar; Ashley J Smith; Thomas Starkey; Chris D Turnbull; Csilla Várnai; Nadia Yousaf; Rachel Kerr; Gary Middleton
Journal:  Lancet       Date:  2020-05-28       Impact factor: 79.321

9.  COVID-19: consider cytokine storm syndromes and immunosuppression.

Authors:  Puja Mehta; Daniel F McAuley; Michael Brown; Emilie Sanchez; Rachel S Tattersall; Jessica J Manson
Journal:  Lancet       Date:  2020-03-16       Impact factor: 79.321

Review 10.  A minimal common outcome measure set for COVID-19 clinical research.

Authors: 
Journal:  Lancet Infect Dis       Date:  2020-06-12       Impact factor: 25.071

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  81 in total

1.  Functional antibody and T cell immunity following SARS-CoV-2 infection, including by variants of concern, in patients with cancer: the CAPTURE study.

Authors:  Annika Fendler; Lewis Au; Scott T C Shepherd; Fiona Byrne; Maddalena Cerrone; Laura Amanda Boos; Karolina Rzeniewicz; William Gordon; Benjamin Shum; Camille L Gerard; Barry Ward; Wenyi Xie; Andreas M Schmitt; Nalinie Joharatnam-Hogan; Georgina H Cornish; Martin Pule; Leila Mekkaoui; Kevin W Ng; Eleanor Carlyle; Kim Edmonds; Lyra Del Rosario; Sarah Sarker; Karla Lingard; Mary Mangwende; Lucy Holt; Hamid Ahmod; Richard Stone; Camila Gomes; Helen R Flynn; Ana Agua-Doce; Philip Hobson; Simon Caidan; Michael Howell; Mary Wu; Robert Goldstone; Margaret Crawford; Laura Cubitt; Harshil Patel; Mike Gavrielides; Emma Nye; Ambrosius P Snijders; James I MacRae; Jerome Nicod; Firza Gronthoud; Robyn L Shea; Christina Messiou; David Cunningham; Ian Chau; Naureen Starling; Nicholas Turner; Liam Welsh; Nicholas van As; Robin L Jones; Joanne Droney; Susana Banerjee; Kate C Tatham; Shaman Jhanji; Mary O'Brien; Olivia Curtis; Kevin Harrington; Shreerang Bhide; Jessica Bazin; Anna Robinson; Clemency Stephenson; Tim Slattery; Yasir Khan; Zayd Tippu; Isla Leslie; Spyridon Gennatas; Alicia Okines; Alison Reid; Kate Young; Andrew J S Furness; Lisa Pickering; Sonia Gandhi; Steve Gamblin; Charles Swanton; Emma Nicholson; Sacheen Kumar; Nadia Yousaf; Katalin A Wilkinson; Anthony Swerdlow; Ruth Harvey; George Kassiotis; James Larkin; Robert J Wilkinson; Samra Turajlic
Journal:  Nat Cancer       Date:  2021-10-27

2.  COVID-19 Vaccine Among Actively-Treated People With Cancer: A Glimpse Into the Known Unknowns?

Authors:  Astha Thakkar; Sanjay Mishra; Jeremy L Warner
Journal:  J Natl Cancer Inst       Date:  2022-02-07       Impact factor: 11.816

3.  Safety and Immunogenicity of mRNA Vaccines Against Severe Acute Respiratory Syndrome Coronavirus 2 in Patients With Lung Cancer Receiving Immune Checkpoint Inhibitors: A Multicenter Observational Study in Japan.

Authors:  Makoto Hibino; Kiyoaki Uryu; Takayuki Takeda; Yusuke Kunimatsu; Shinsuke Shiotsu; Junji Uchino; Soichi Hirai; Tadaaki Yamada; Asuka Okada; Yoshikazu Hasegawa; Osamu Hiranuma; Yusuke Chihara; Riko Kamada; Shunichi Tobe; Kazunari Maeda; Shigeto Horiuchi; Tetsuri Kondo; Koichi Takayama
Journal:  J Thorac Oncol       Date:  2022-06-22       Impact factor: 20.121

4.  Attitudes of Patients with Cancer towards Vaccinations-Results of Online Survey with Special Focus on the Vaccination against COVID-19.

Authors:  Anna Brodziak; Dawid Sigorski; Małgorzata Osmola; Michał Wilk; Angelika Gawlik-Urban; Joanna Kiszka; Katarzyna Machulska-Ciuraj; Paweł Sobczuk
Journal:  Vaccines (Basel)       Date:  2021-04-21

5.  Outcomes of COVID-19 in Patients With Cancer: Report From the National COVID Cohort Collaborative (N3C).

Authors:  Noha Sharafeldin; Benjamin Bates; Qianqian Song; Vithal Madhira; Yao Yan; Sharlene Dong; Eileen Lee; Nathaniel Kuhrt; Yu Raymond Shao; Feifan Liu; Timothy Bergquist; Justin Guinney; Jing Su; Umit Topaloglu
Journal:  J Clin Oncol       Date:  2021-06-04       Impact factor: 50.717

6.  CD8+ T cells contribute to survival in patients with COVID-19 and hematologic cancer.

Authors:  Erin M Bange; Nicholas A Han; Paul Wileyto; Justin Y Kim; Sigrid Gouma; James Robinson; Allison R Greenplate; Madeline A Hwee; Florence Porterfield; Olutosin Owoyemi; Karan Naik; Cathy Zheng; Michael Galantino; Ariel R Weisman; Caroline A G Ittner; Emily M Kugler; Amy E Baxter; Olutwatosin Oniyide; Roseline S Agyekum; Thomas G Dunn; Tiffanie K Jones; Heather M Giannini; Madison E Weirick; Christopher M McAllister; N Esther Babady; Anita Kumar; Adam J Widman; Susan DeWolf; Sawsan R Boutemine; Charlotte Roberts; Krista R Budzik; Susan Tollett; Carla Wright; Tara Perloff; Lova Sun; Divij Mathew; Josephine R Giles; Derek A Oldridge; Jennifer E Wu; Cécile Alanio; Sharon Adamski; Alfred L Garfall; Laura A Vella; Samuel J Kerr; Justine V Cohen; Randall A Oyer; Ryan Massa; Ivan P Maillard; Kara N Maxwell; John P Reilly; Peter G Maslak; Robert H Vonderheide; Jedd D Wolchok; Scott E Hensley; E John Wherry; Nuala J Meyer; Angela M DeMichele; Santosha A Vardhana; Ronac Mamtani; Alexander C Huang
Journal:  Nat Med       Date:  2021-05-20       Impact factor: 87.241

7.  SARS-CoV-2 Seropositivity and Seroconversion in Patients Undergoing Active Cancer-Directed Therapy.

Authors:  Lova Sun; Sanjna Surya; Noah G Goodman; Anh N Le; Gregory Kelly; Olutosin Owoyemi; Heena Desai; Cathy Zheng; Shannon DeLuca; Madeline L Good; Jasmin Hussain; Seth D Jeffries; Yolanda R Kry; Emily M Kugler; Maikel Mansour; John Ndicu; AnnaClaire Osei-Akoto; Timothy Prior; Stacy L Pundock; Lisa A Varughese; JoEllen Weaver; Abigail Doucette; Scott Dudek; Shefali Setia Verma; Sigrid Gouma; Madison E Weirick; Christopher M McAllister; Erin Bange; Peter Gabriel; Marylyn Ritchie; Daniel J Rader; Robert H Vonderheide; Lynn M Schuchter; Anurag Verma; Ivan Maillard; Ronac Mamtani; Scott E Hensley; Robert Gross; E Paul Wileyto; Alexander C Huang; Kara N Maxwell; Angela DeMichele
Journal:  JCO Oncol Pract       Date:  2021-06-16

8.  Immunogenicity of SARS-CoV-2 messenger RNA vaccines in patients with cancer.

Authors:  Alfredo Addeo; Pankil K Shah; Natacha Bordry; Robert D Hudson; Brenna Albracht; Mariagrazia Di Marco; Virginia Kaklamani; Pierre-Yves Dietrich; Barbara S Taylor; Pierre-Francois Simand; Darpan Patel; Jing Wang; Intidhar Labidi-Galy; Sara Fertani; Robin J Leach; Jose Sandoval; Ruben Mesa; Kate Lathrop; Nicolas Mach; Dimpy P Shah
Journal:  Cancer Cell       Date:  2021-06-18       Impact factor: 38.585

Review 9.  COVID-19 in immunocompromised populations: implications for prognosis and repurposing of immunotherapies.

Authors:  Jason D Goldman; Philip C Robinson; Thomas S Uldrick; Per Ljungman
Journal:  J Immunother Cancer       Date:  2021-06       Impact factor: 13.751

10.  COVID-19 Vaccination in Patients with Classic Kaposi's Sarcoma.

Authors:  Alice Indini; Athanasia Tourlaki; Francesco Grossi; Donatella Gambini; Lucia Brambilla
Journal:  Vaccines (Basel)       Date:  2021-06-10
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