Literature DB >> 34725454

COVID-19 severity and mortality in patients with CLL: an update of the international ERIC and Campus CLL study.

Thomas Chatzikonstantinou1,2, Anargyros Kapetanakis2, Lydia Scarfò3, Paolo Ghia4, Georgios Karakatsoulis2,5, David Allsup6, Alejandro Alonso Cabrero7,8, Martin Andres9, Darko Antic10,11, Mónica Baile12, Panagiotis Baliakas13,14, Dominique Bron15, Antonella Capasso16, Sofia Chatzileontiadou17, Raul Cordoba18, Juan-Gonzalo Correa19, Carolina Cuéllar-García20, Lorenzo De Paoli21, Maria Rosaria De Paolis22, Giovanni Del Poeta23, Christos Demosthenous1, Maria Dimou24, David Donaldson25, Michael Doubek26, Maria Efstathopoulou27, Barbara Eichhorst28, Shaimaa El-Ashwah29, Alicia Enrico30, Blanca Espinet31, Lucia Farina32, Angela Ferrari33, Myriam Foglietta34, Henrik Frederiksen35, Moritz Fürstenau28, José A García-Marco36, Rocío García-Serra37,38, Massimo Gentile39, Eva Gimeno40, Andreas Glenthøj41, Maria Gomes da Silva42, Odit Gutwein43,44, Yervand K Hakobyan45, Yair Herishanu46, José Ángel Hernández-Rivas47, Tobias Herold48, Idanna Innocenti49, Gilad Itchaki50, Ozren Jaksic51, Ann Janssens52, Оlga B Kalashnikova53, Elżbieta Kalicińska54, Linda Katharina Karlsson41, Arnon P Kater55, Sabina Kersting56, Jorge Labrador57, Deepesh Lad58, Luca Laurenti49,59, Mark-David Levin60, Enrico Lista61, Alberto Lopez-Garcia18, Lara Malerba62, Roberto Marasca63, Monia Marchetti64, Juan Marquet65, Mattias Mattsson13,66, Francesca R Mauro67, Ivana Milosevic68, Fatima Mirás69, Marta Morawska70,71, Marina Motta72, Talha Munir73, Roberta Murru74, Carsten U Niemann41, Raquel Nunes Rodrigues42, Jacopo Olivieri75, Lorella Orsucci76, Maria Papaioannou17, Miguel Arturo Pavlovsky77, Inga Piskunova78, Viola Maria Popov79, Francesca Maria Quaglia80, Giulia Quaresmini81, Kristian Qvist82, Gianluigi Reda83, Gian Matteo Rigolin84, Rosa Ruchlemer85, Gevorg Saghumyan45, Amit Shrestha86, Martin Šimkovič87, Martin Špaček88, Paolo Sportoletti89, Oana Stanca90, Niki Stavroyianni1, Tamar Tadmor91, Doreen Te Raa92, Sanne H Tonino93, Livio Trentin94, Ellen Van Der Spek95, Michel van Gelder96, Roel van Kampen97, Marzia Varettoni98, Andrea Visentin94, Candida Vitale99, Ewa Wasik-Szczepanek100, Tomasz Wróbel54, Lucrecia Yáñez San Segundo101, Mohamed Yassin102, Marta Coscia99, Alessandro Rambaldi81,103, Emili Montserrat19, Robin Foà67, Antonio Cuneo84, Kostas Stamatopoulos104.   

Abstract

Patients with chronic lymphocytic leukemia (CLL) may be more susceptible to Coronavirus disease 2019 (COVID-19) due to age, disease, and treatment-related immunosuppression. We aimed to assess risk factors of outcome and elucidate the impact of CLL-directed treatments on the course of COVID-19. We conducted a retrospective, international study, collectively including 941 patients with CLL and confirmed COVID-19. Data from the beginning of the pandemic until March 16, 2021, were collected from 91 centers. The risk factors of case fatality rate (CFR), disease severity, and overall survival (OS) were investigated. OS analysis was restricted to patients with severe COVID-19 (definition: hospitalization with need of oxygen or admission into an intensive care unit). CFR in patients with severe COVID-19 was 38.4%. OS was inferior for patients in all treatment categories compared to untreated (p < 0.001). Untreated patients had a lower risk of death (HR = 0.54, 95% CI:0.41-0.72). The risk of death was higher for older patients and those suffering from cardiac failure (HR = 1.03, 95% CI:1.02-1.04; HR = 1.79, 95% CI:1.04-3.07, respectively). Age, CLL-directed treatment, and cardiac failure were significant risk factors of OS. Untreated patients had a better chance of survival than those on treatment or recently treated.
© 2021. The Author(s).

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Year:  2021        PMID: 34725454      PMCID: PMC8559135          DOI: 10.1038/s41375-021-01450-8

Source DB:  PubMed          Journal:  Leukemia        ISSN: 0887-6924            Impact factor:   11.528


Introduction

The Coronavirus disease 2019 (COVID-19) has cost the lives of more than 3 million people worldwide, since the first cases were reported in December 2019 in Wuhan, China [1]. While the severity of the disease can vary greatly between infected individuals, older age, and specific comorbidities confer a worse prognosis. Obesity, diabetes mellitus, cardiovascular, respiratory diseases, and cancer are associated with poor outcome [2, 3]. Patients with hematological malignancies often experience severe disease and have high case fatality (CFR) and mortality rates. A meta-analysis of 3240 adult patients with a hematological malignancy reported a risk of death of 34% [4]. Moreover, in a study of 740 patients with hematological malignancies from Turkey the CFR was significantly higher when compared with age, sex, and comorbidity-matched controls (13.8% vs 6.8%) [5]. In a similar patient group from Italy, Passamonti et al. reported a standardized mortality ratio of 2.04 (95% CI 1.77–2.34) compared with the Italian general population with COVID-19 [6]. Chronic lymphocytic leukemia (CLL) is the most frequent adult hematological malignancy in the West, affecting particularly the elderly, with a median age at diagnosis of 72 years [7]. CLL is characterized by an impaired immune capacity due to a profound immune dysregulation reflected by hypogammaglobulinemia, qualitative and quantitative B- and T-cell defects, CD4+ lymphopenia, innate immune dysfunction, and neutropenia [8]. Antileukemic treatments can further weaken the immune response to common pathogens, rendering patients more susceptible to infections [9]. CLL immune defects may hinder the host from effectively controlling SARS-CoV-2 replication. Conversely, while patients with CLL might struggle to eliminate the virus, they may be less prone to a cytokine-induced inflammatory hyperactivation that can lead to acute respiratory distress syndrome, multiorgan damage, and death [10]. Early in the pandemic, reports from hospitalized patients showed that those with hematological malignancies were more susceptible to severe infection from SARS-CoV-2 and had higher CFR compared to the general population [11, 12]. In those studies, CLL was underrepresented and the impact of specific antileukemic treatments was not assessed. In a COVID-19 and CLL-specific cohort of 46 Italian patients, the Campus CLL group reported a CFR of 30.4% [13]. Following this report, ERIC, the European Research Initiative on CLL, and Campus CLL reported data from 190 patients [14]. Among hospitalized patients, the CFR was 32.5%. Age and number of comorbidities did not impact on overall survival (OS); patients on recent or ongoing treatment were more likely to have milder COVID-19 compared to untreated patients; finally, patients treated with the Bruton’s tyrosine kinase inhibitor (BTKi) ibrutinib were less likely to be hospitalized, prompting us to suggest a possible protective effect. Mato et al. reported the outcomes of 198 patients with COVID-19 and CLL mainly from the USA [15]. The overall CFR was 33%. No difference was observed between treated and untreated patients with regard to infection severity and mortality. Advanced age and specific comorbidities conferred a worse prognosis. BTKi did not show a protective effect; however, in most cases, they were held during the infection. The ERIC and US cohorts were also analyzed together with a Spanish cohort in a joint effort. The CFR was 30–34%. Age was the only risk factor of fatality in both cohorts, while the effect of CLL treatment on OS was inconsistent across cohorts. None of the CLL-directed treatments affected OS [16]. As SARS-CoV-2 is still surging across the globe, we significantly expanded our retrospective international multicenter cohort of patients with CLL and COVID-19. We aimed at reassessing the risk factors for COVID-19-related fatality and elucidate further the impact of CLL-directed treatments.

Methods

Data collection

This is a retrospective international multicenter study of the ERIC and the Campus CLL. It represents a continuation of a previous study conducted during the first wave of the pandemic [14]. Investigators at each center updated the information of their previous cases and added any new patients with COVID-19 and CLL/small lymphocytic lymphoma (SLL) or high-count CLL-like monoclonal B-cell lymphocytosis (MBL), a pre-CLL condition, also characterized by inherent immune compromise [17]. The establishment of CLL diagnosis, treatment decisions, review of medical history, and assessment of patient status were performed by the local teams following international guidelines [18]. The study was approved by the institutional ethics committees and data were processed and treated lawfully and fairly in a transparent manner that ensured appropriate security of the personal data, abiding by the General Data Protection Regulation. Informed consent was obtained from all patients that survived the infection. Data collection took place between March 28 and May 22, 2020 (first study) and between December 01, 2020, and March 16, 2021 (current study). Investigators reported all their patients with CLL or related conditions (SLL or MBL) who were diagnosed with COVID-19 from the beginning of the pandemic until the completion of the collection. Ninety-one institutions participated in the study providing information for a total of 1009 cases. After excluding cases with uncertain diagnosis (‘atypical CLL’) and those without a qRT-PCR positive test for SARS-CoV-2, we resulted in 941 patients to be studied, 190 of whom were included in the first study. The full list of participating countries is reported in Supplemental Table 1. Data extracted from the medical records included: baseline demographics; date of CLL diagnosis; IGHV gene somatic hypermutation status; cytogenetic status for chromosomes 11q, 13q 17p, and 12 determined by fluorescence in situ hybridization (at last assessment); TP53 gene mutation status assessed by Sanger sequencing or next-generation sequencing (at last assessment); CLL treatment status; presence, number, and type of comorbidities, date of COVID-19, COVID-19 symptoms, COVID-19 management, treatment, complications, and outcome. OS was defined as the time from suspected COVID-19 to death or last follow-up date. In keeping with international practice, patients were deemed to have COVID-19 if a qRT-PCR assay test from a throat or nose swab was positive for SARS-CoV-2. Severe COVID-19 was defined as hospitalization and need of oxygen or admission into an intensive care unit; nonsevere/mild COVID-19 was defined as confinement at home or hospitalization without need of oxygen. Patients diagnosed with COVID-19 from the start of the pandemic until June 30, 2020, were considered to belong to the 1st wave of SARS-CoV-2, while patients diagnosed from July 1st until the completion of data collection were designated to the 2nd wave. The cut-off was decided based on the disposition of cases in our cohort (Supplemental Fig. 1).

Statistical analysis

Median (IQR) is used to describe numeric variables while frequencies and percentages are used for categorical. Both univariate and multivariate analyses were carried out, having COVID-19 disease severity, CFR, or OS as outcomes. As potential risk factors, we examined clinico-biological characteristics (age, comorbidities, gender, IGHV gene somatic hypermutation status, TP53 aberrations), COVID-19 disease severity (where appropriate), CLL treatment status (at the time of COVID-19 and in the last 12 months), type of CLL treatment (at the time of COVID-19 and in the last 12 months), and measures taken for the management of COVID-19 (continued as planned, replaced with other, or stopped the treatment). Also, we compared CFR between the two waves. To this end, to reduce the impact of confounding factors, we firstly tested for differences of the above-mentioned risk factors between the two waves. The statistical analyses were carried out in either all patients or subsets of the dataset (only severe, only patients receiving BTKi at the time of COVID-19). In the analyses for CFR, patients who were still under medical care were excluded. The significance level was set to 5%. In post-hoc comparisons, the correction of Bonferroni was used. For COVID-19 disease severity and CFR, χ2 test or Fisher’s exact test (when necessary) were used for univariate analyses, while logistic regression was used for the multivariate. When necessary, we performed bias reduction techniques to the logistic model estimates by adjusting Firth’s logistic regression. Furthermore, for the comparison of CFR between the two waves, age was used as a confounder, since statistically significant older patients were identified in the first wave. For the comparisons of the numeric risk factors between the two waves, independent samples t-tests (Student’s or Welch’s) were conducted. The homogeneity of variance between the two groups was examined through Levene’s test. For the categorical risk factors, χ2 test or Fisher’s exact test were used. For OS, the log-rank test was used for the univariate analyses, and Cox regression was conducted for the multivariate. For the multivariate analyses, we performed a two-level variable selection approach. At first, we obtained the statistically significant risk factors through univariate analyses and used them as risk factors for a multivariate model. We further explored the multivariate model by performing backward elimination using p value. All statistical analyses were conducted using R 4.0.4. We used brglm package [19] for Firth’s logistic regression, survival [20], and survminer packages [21] for survival analysis and ggplot2 package [22] for data visualization (Kaplan–Meier curves and the line-plot).

Results

Patient characteristics

We included 941 patients with a median age of 69 years (IQR 61–77) at the time of SARS-CoV-2 infection. Most patients were diagnosed with CLL (887, 94.3%), while 38 and 16 patients were diagnosed with SLL and MBL, respectively. The majority (628/941, 66.7%) were male with a median number of comorbidities of 2. Baseline patient characteristics are shown in Table 1.
Table 1

Patient Characteristics.

Patient characteristicsResultsMissing
Age at COVID-19, years (median, IQR)69 (61–77)0 (0%)
GenderFemale313 (33.3%)0 (0%)
Male628 (66.7%)
DiagnosisCLL887 (94.3%)
MBL16 (1.7%)
SLL38 (4%)
Obesity (BMI > 30)151 (17.3%)70 (7.4%)
SmokingCurrent smoker73 (8.8%)112 (11.9%)
Ex-smoker222 (26.8%)
Never534 (64.4%)
Hypogammaglobulinemia (IgG < 550 mg/dL)352 (49.5%)230 (24.4%)
CIRS score (median, range)4 (0–32)76 (8.1%)
N of comorbidities (median, range)2 (0–11)0 (0%)
Other respiratory61 (6.5%)4 (0.4%)
Asthma21 (2.2%)4 (0.4%)
COPD61 (6.5%)4 (0.4%)
Cardiac Failure30 (3.2%)4 (0.4%)
Arrythmias87 (9.3%)4 (0.4%)
Coronary artery disease94 (10%)4 (0.4%)
Other cardiovascular83 (8.9%)4 (0.4%)
Hypertension440 (47%)4 (0.4%)
Diabetes173 (18.5%)4 (0.4%)
Chronic renal disease51 (5.4%)4 (0.4%)
Other hematological malignancies10 (1.1%)4 (0.4%)
Other non-hematological malignancies (excluding skin)75 (8%)4 (0.4%)

IQR interquartile range, CIRS cumulative illness rating scale, COPD chronic obstructive pulmonary disease, CLL chronic lymphocytic leukemia, SLL small lymphocytic lymphoma, MBL monoclonal B lymphocytosis.

Patient Characteristics. IQR interquartile range, CIRS cumulative illness rating scale, COPD chronic obstructive pulmonary disease, CLL chronic lymphocytic leukemia, SLL small lymphocytic lymphoma, MBL monoclonal B lymphocytosis. Regarding CLL history, 394 patients (41.9%) had never received treatment for CLL, while 547 (58.1%) had been treated with at least one line of treatment. Amongst treated patients, 320 (34%) were on treatment at the time of SARS-CoV-2 infection. The most common treatment category at the time of COVID-19 was BTKi monotherapy (56.3%), followed by venetoclax monotherapy (10.7%) and chemoimmunotherapy (9.1%). Detailed information about CLL-directed therapy is given in Table 2.
Table 2

CLL-directed treatment.

TreatmentCategoryNumberPercentageMissing
CLL treatment statusTreated54758.1%0 (0%)
Untreated39441.9%
Treated status in last 12 monthsTreated43246%2 (0.2%)
Untreated50754%
Treatment status for CLL at the time of COVID-19Treated32034%1 (0.1%)
Untreated62066%
Management of CLL treatmentContinued as planned10432.7%(0.6%)
Replaced with other20.6%
Stopped21266.7%
Total prior lines of treatment127550.7%5 (0.9%)
214927.5%
36011.1%
4336.1%
>4254.6%
Treatment at the time of COVID-19BTKi17956.3%2 (0.6%)
Venetoclax3410.7%
Venetoclax +Anti-CD20175.3%
PI3K inhibitors103.1%
PI3K inhibitors + Anti-CD2030.9%
Anti-CD2082.5%
Chemotherapy226.9%
Chemoimmunotherapy299.1%
BTKi + Venetoclax72.2%
BTKi + Venetoclax + Anti-CD2020.6%
Steroids only72.2%

PI3K Phosphatidylinositol-3 kinase, BTKi Bruton’s tyrosine kinase inhibitor.

CLL-directed treatment. PI3K Phosphatidylinositol-3 kinase, BTKi Bruton’s tyrosine kinase inhibitor.

COVID-19 manifestations and management

The majority of patients (887/941, 94.3%) were symptomatic at the time of documented SARS-COV-2 infection. Fever was the most common COVID-19 related symptom (Supplemental Table 2). In total, 237/941 (25.3%) patients were confined at home, while 695/941 (74.7%) patients were admitted to the hospital. Of the hospitalized patients, 177 (25.5%) were admitted to the ICU, 440 (63.3%) needed oxygen supplementation outside the ICU, and 78 (11.2%) were hospitalized without need of oxygen (Table 3).
Table 3

COVID-19 management, complications, and outcome.

NumberPercentageMissing
Measures taken for management of COVID-19Intensive care17719%9 (1%)
Hospitalization with need of oxygen44047.2%
Hospitalization without need of oxygen788.4%
Confinement at home only23725.4%
Disease severitySevere61766.2%9 (1%)
Nonsevere31533.8%
HospitalizationHospitalization69574.6%9 (1%)
Home23725.4%
Antiviral26635.7%195 (20.7%)
Hydroxycloroquine or similar20327.1%192 (20.4%)
Azithromycin26535.9%202 (21.5%)
Steroids51461.3%103 (10.9%)
Anti-IL6/IL6R8411.4%204 (21.7%)
Convalescent/ Hyperimmune plasma447.5%351 (37.3%)
Pneumonia65975.4%67 (7.1%)
Complications of COVID-19 infectionDIC70.9%167 (17.7%)
VTE486.2%
PE (only for 48 with VTE)4087%2 (4.2%)
Infection outcomeResolution64769%3 (0.3%)
Still under medical care343.6%
Death25727.4%

DIC disseminated intravascular coagulation, VTE venous thromboembolism, PE pulmonary embolism.

COVID-19 management, complications, and outcome. DIC disseminated intravascular coagulation, VTE venous thromboembolism, PE pulmonary embolism. Most hospitalized patients received pharmacologic treatment for COVID-19. Corticosteroids were the most commonly used treatment. In most cases (212/320, 66.2%), CLL-directed treatment was stopped during COVID-19 infection (Table 2). Signs of pneumonia were detected in 659/874 patients (75.4%). Forty-eight patients (6.2%) developed venous thromboembolism (40/48 pulmonary embolism) (Table 3).

COVID-19 severity

Age, CIRS score, hypogammaglobulinemia, and specific comorbidities (COPD, coronary artery disease, diabetes, chronic renal disease) were identified as risk factors of severity in the univariate analyses. In the multivariate model, age (OR = 1.04; 95% CI: 1.02–1.06; p < 0.001), hypogammaglobulinemia (OR = 1.69; 95% CI: 1.20–2.38; p = 0.002), and coronary artery disease (OR = 2.83; 95% CI: 1.37–6.61; p = 0.009) remained statistically significant (Supplemental Table 3). CLL treatment did not affect the severity of COVID-19. No difference was found in terms of severity between patients receiving BTKi at the time of COVID-19 versus untreated patients. Among 179 patients receiving BTKi at the time of COVID-19, age (OR = 1.04; 95% CI: 1.01–1.08; p = 0.017) and hypogammaglobulinemia (OR = 2.21; 95% CI: 1.13–4.36; p = 0.021) remained statistically significant predictors in the multivariate analysis (Supplemental Table 4).

Overall survival and risk factors of fatality

In total, the CFR for all patients was 27.3% (257/941) (Supplemental Fig. 2). In 647 patients (69%) the infection resolved, 34 were under medical care at the time of data collection and in 3 the infection outcome was missing (Table 3). The vast majority of deaths occurred in patients with severe COVID-19 (236/617). Only 15 deaths occurred amongst 315 patients with nonsevere COVID-19 (CFR: 4.8%). The baseline characteristics were similar between the two waves, except for age (p < 0.001) (Supplementary Tables 5, 6, and 7). The median age in the first wave was 71 years (with 39.9% older than 75 years) while in the second wave it was 68 years (with 27% older than 75 years). No difference in CFR was found between the first and second wave of COVID-19 in both all patients or only in patients with severe COVID-19, even after controlling for age (p = 0.78; p = 0.16, respectively) (Supplemental Tables 5 and 6). In order to avoid collection bias, we restricted the analysis for both infection outcome and OS to patients with severe COVID-19 infection. We also excluded patients who were still under medical care and those missing information about the infection outcome. The CFR for patients with severe COVID-19 was 38.4% (Supplemental Fig. 3). Through univariate analyses, age, unmutated IGHV gene somatic hypermutation status, specific comorbidities, and treatment status were observed as statistically significant risk factors for mortality. Age (OR = 1.04; 95% CI: 1.02–1.06; p < 0.001), cardiac failure (OR = 3.82; 95% CI: 1.31–13.94; p = 0.023) and treatment in the last 12 months (OR = 2.13; 95% CI: 1.44–3.20; p < 0.001) remained statistically significant in multivariate analysis (Table 4). We performed the same analysis including only the patients with severe COVID-19 that were reported from centers that participated in both studies. In the multivariate analysis, age and CLL treatment status remained statistically significant risk factors (Supplemental Table 8).
Table 4

Risk factors of infection outcome for patients with severe COVID-19 (n = 594).

Risk factorCategoriesInfection outcomeRRp value
ResolutionDeath
Age≥ 65240 (57.1%)180 (42.9%)1.330.02
<65118 (67.8%)56 (32.2%)
Age≥75104 (47.5%)115 (52.5%)1.63<0.001
<75254 (67.7%)121 (32.3%)
GenderMale117 (60.9%)75 (39.1%)0.980.89
Female241 (60%)161 (40%)
IGHV gene somatic hypermutation statusMutateda91 (66.4%)46 (33.6%)0.700.017
Unmutatedb91 (52.3%)83 (47.7%)
del(13q) (last assessment)Negative113(56.5%)87 (43.5%)1.140.37
Positive103 (61.7%)64 (38.3%)
del(11q) (last assessment)Negative185 (60.3%)122 (39.7%)0.830.3
Positive34 (52.3%)31 (47.7%)
trisomy 12 (last assessment)Negative176 (60.5%)115 (39.5%)0.870.45
Positive36 (54.5%)30 (45.5%)
del(17p) (last assessment)Negative206 (59.7%)139 (40.3%)0.750.09
Positive23 (46%)27 (54%)
TP53 mutation statusMutated18 (48.6%)19 (51.4%)1.230.37
Unmutated137 (58.1%)99 (41.9%)
del(17p) positive and/or TP53 mutationYes33 (50%)33 (50%)1.20.29
No130 (58.3%)93 (41.7%)
CIRS score≤6242 (65.4%)128 (34.6%)0.68<0.001
>687 (49.4%)89 (50.6%)
Other respiratoryYes24 (60%)16 (40%)1>0.99
No332 (60.1%)220 (39.9%)
AsthmaYes10 (66.7%)5 (33.3%)0.830.8
No346 (60%)231 (40%)
COPDYes22 (47.8%)24 (52.2%)1.350.11
No334 (61.2%)212 (38.8%)
Cardiac FailureYes5 (25%)15 (75%)1.940.002
No351 (61.4%)221 (38.6%)
ArrythmiasYes33 (57.9%)24 (42.1%)1.060.83
No323(60.4%)212(39.6)
Coronary artery diseaseYes32 (44.4%)40 (55.6%)1.470.006
No324 (62.3%)196 (37.7%)
Other cardiovascularYes32 (54.2%)27 (45.8%)1.170.4
No324 (60.8%)209 (39.2%)
HypertensionYes167 (56.8%)127 (43.2%)1.180.12
No189 (63.4%)109 (36.6%)
DiabetesYes80 (64%)45 (36%)0.880.37
No276 (59.1%)191 (40.9%)
Chronic renal diseaseYes15 (40.5%)22 (59.5%)1.540.019
No341 (61.4%)214 (38.6%)
Other hematological malignanciesYes5 (55.6%)4 (44.4%)1.160.75
No351 (60.2%)232 (39.8%)
Other non-hematological malignancies (excluding skin)Yes27 (61.4%)17 (38.6%)0.970.99
No329 (60%)219 (40%)
Obesity (BMI>30)Yes57 (61.3%)36 (38.7%)0.99>0.99
No280 (61.1%)178 (38.9%)
SmokingCurrent smoker25 (59.5%)17 (40.5%)0.58
Ex-smoker82 (57.7%)60 (42.3%)
Never212 (62.7%)126 (37.3%)
Hypogammaglobulinemia (IgG <550 mg/dL)Present133 (55.6%)106 (44.4%)1.330.017
Absent146 (67%)72 (33%)
CLL treatment statusTreated168 (49.9%)169 (50.1%)1.92<0.001
Untreated190 (73.9%)67 (26.1%)
CLL treatment status at the time of COVID-19Treated94 (47.7%)103 (52.3%)1.56<0.001
Untreated263 (66.4%)133 (33.6%)
Treated in last 12 monthsYes132 (48.4%)141 (51.6%)1.420.002
No116 (63.7%)66 (36.3%)
AntiviralYes140 (63.6%)80 (36.4%)1.070.65
No177 (66%)91 (34%)
Hydroxycloroquine or similarYes116 (67.1%)57 (32.9%)0.920.61
No200 (64.3%)111 (35.7%)
AzithromycinYes125 (69.4%)55 (30.6%)0.840.23
No187 (63.6%)107 (36.4%)
SteroidsYes264 (63%)155 (37%)1.040.88
No67 (64.4%)37 (35.6%)
Anti-IL6/IL6RYes55 (66.3%)28 (33.7%)0.950.87
NO257(64.6%)141 (35.4%)
CountryItaly108(61.7%)67(38.3%)0.09
Spain80(67.8%)38(32.2%)
Other170(56.5%)131(43.5%)

IGHV immunoglobulin heavy variable, CIRS cumulative illness rating scale, COPD chronic obstructive pulmonary disease, RR relative risk of death.

aMutated: < 98% germline identity.

bUnmutated: ≥98% germline identity.

Risk factors of infection outcome for patients with severe COVID-19 (n = 594). IGHV immunoglobulin heavy variable, CIRS cumulative illness rating scale, COPD chronic obstructive pulmonary disease, RR relative risk of death. aMutated: < 98% germline identity. bUnmutated: ≥98% germline identity. Univariate and multivariate analyses of risk factors of OS are outlined in Table 5. Older age (HR = 1.03; 95% CI: 1.02–1.04; p < 0.001), cardiac failure (HR = 1.79; 95% CI: 1.04–3.07; p = 0.035) and treatment status (HR = 0.54; 95% CI: 0.41–0.72; p < 0.001) appeared as statistically significant risk factors of OS in the multivariate analysis.
Table 5

Risk factors of OS.

Risk factorp value
Age (≥65 vs <65)0.01
Age (≥75 vs <75)<0.001
Gender (Male vs Female)0.56
IGHV gene somatic hypermutation status (unmutateda vs mutatedb)0.01
del(13q) (last assessment) (positive vs negative)0.46
del(11q) (last assessment) (positive vs negative)0.33
trisomy 12 (last assessment) (positive vs negative)0.59
del(17p) (last assessment) (positive vs negative)0.02
TP53 mutation status (unmutated vs mutated)0.18
del(17p) positive and/or TP53 mutation (yes vs no)0.1
CIRS score (> 6 vs ≤6)<0.001
Other respiratory (YES vs NO)0.82
Asthma (yes vs no)0.49
COPD (yes vs no)0.12
Cardiac Failure (yes vs no)<0.001
Arrythmias (yes vs no)0.38
Coronary artery disease (yes vs no)0.06
Other cardiovascular (yes vs no)0.16
Hypertension (yes vs no)0.1
Diabetes (yes vs no)0.52
Chronic renal disease (yes vs no)0.02
Other hematological malignancies (yes vs no)0.91
Other non-hematological malignancies (yes vs no)0.87
Obesity (BMI>30) (yes vs no)0.98
Smoking0.8
Hypogammaglobulinemia (IgG <550 mg/dL) (present vs absent)0.08
CLL treatment status (untreated vs treated)<0.001
CLL treatment during COVID-19 (treated vs untreated)<0.001
Treated in last 12 months (treated vs untreated)0.01
Multivariate analysis
Risk factorHR95% CI
Age (years)1.031.02–1.04<0.001
Cardiac failure (yes vs no)1.791.04–3.070.04
CLL treatment status (untreated vs treated)0.540.41–0.72<0.001

IGHV immunoglobulin heavy variable, CIRS cumulative illness rating scale, COPD chronic obstructive pulmonary disease.

aUnmutated: ≥98% germline identity.

bMutated: <98% germline identity.

Risk factors of OS. IGHV immunoglobulin heavy variable, CIRS cumulative illness rating scale, COPD chronic obstructive pulmonary disease. aUnmutated: ≥98% germline identity. bMutated: <98% germline identity. Comparison of OS between treated and untreated patients is depicted graphically in Fig. 1.
Fig. 1

Overall survival in patients with severe COVID-19.

Overall survival comparison between treated and untreated patients with CLL and severe COVID-19.

Overall survival in patients with severe COVID-19.

Overall survival comparison between treated and untreated patients with CLL and severe COVID-19.

CLL-directed treatment and COVID-19 outcome

We assessed the impact of specific treatment categories on COVID-19 outcome. Initially, we compared patients receiving BTKi at the time of SARS-COV-2 infection (n = 169) with patients receiving venetoclax at the same time (n = 31) and patients who had received chemoimmunotherapy in the last 12 months (n = 85). Then, in a second comparison, we kept the first two categories and replaced the third one with patients who had received any anti-CD20-based therapy (alone or in combination) in the last 12 months (n = 128). No statistically significant difference between the groups was noted in either analysis. Nonetheless, treated patients (in any treatment category) had a worse OS when compared to the untreated ones (p < 0.001) (Fig. 2 and Supplemental Fig. 4).
Fig. 2

Overall survival in patients with severe COVID-19 according to treatment.

Overall survival comparisons between patients treated with BTKi (at time of COVID-19), Venetoclax (at time of COVID-19), Chemoimmunotherapy in last 12 months, and Untreated.

Overall survival in patients with severe COVID-19 according to treatment.

Overall survival comparisons between patients treated with BTKi (at time of COVID-19), Venetoclax (at time of COVID-19), Chemoimmunotherapy in last 12 months, and Untreated. One hundred and ten patients with severe COVID-19 were being treated with BTKi monotherapy at the time of COVID-19. Thirty patients continued the BTKi treatment, while in 78 cases physicians chose to hold the drug. Patients who continued BTKi treatment did not have a statistically better outcome than those who discontinued the treatment (p = 0.08), while both groups had a worse outcome compared with untreated patients (p < 0.001) (Table 6).
Table 6

Outcome in patients with severe COVID-19.

CategoryInfection outcomep value
ResolutionDeath
Untreated190 (73.9%)67 (26.1%)<0.001
Continued BTKi20 (66.7%)10 (33.3%)
Stopped BTKi36 (46.2%)42 (53.8%)

No statistically significant difference between continued and stopped (p = 0.08).

BTKi Bruton’s tyrosine kinase inhibitor.

Outcome in patients with severe COVID-19. No statistically significant difference between continued and stopped (p = 0.08). BTKi Bruton’s tyrosine kinase inhibitor.

Discussion

We here present the largest cohort published to date of patients with CLL and COVID-19. In this homogeneous disease-specific series, age, history of cardiac failure, and CLL treatment were the main risk factors for a dismal outcome. In our study, the finding that older patients with CLL often have severe disease, higher CFRs, and lower survival time is in line with data derived from the general population, where COVID-19-related fatality and time to death positively correlated with age [3, 23, 24]. Relevant to add, similar results have been reported in a US study by Mato et al. showing that patients with CLL older than 75 years had a worse OS [15]. Older patients were also more likely to die in our first cohort, albeit without reaching statistical signifigance, which can be attributed to the smaller sample. In our original cohort including patients from the first wave of SARS-CoV-2 [14], higher CIRS score and certain comorbidities were linked with increased mortality, whereas in this updated cohort only cardiac failure remained a statistically significant comorbidity in the multivariate analysis. OS was unaffected by diabetes, respiratory diseases, and obesity, variables conferring a worse prognosis in COVID-19 patients when analyzed in the general population [2, 3]. Nonetheless, some caution is warranted regarding the precise impact of specific comorbidities on COVID-19 outcome in patients with CLL since information on their severity was not collected systematically. In this updated cohort, patients treated for CLL had a worse OS than untreated patients, while in both the report by Mato et al (198 patients, end point: outcome) and our previous report (190 patients, end point: severity), no difference was found between treated and untreated patients, probably due to the lower number of cases [14, 15]. Of note, when our previous cohort was combined with the Spanish cohort (281 patients), untreated patients had better OS than treated ones [16]. Thus, these apparent discrepancies may simply reflect the larger sample of our current analysis that allowed to identify a difference between the untreated and the treated, likely more immunosuppressed, patients. Untreated patients had a better outcome also when compared separately with patients in different treatment categories (BTKi, venetoclax, chemoimmunotherapy, or anti-CD20 containing regimens). Patients who continued BTKi treatment during COVID-19 infection did not appear to fare worse than those who stopped the drug with a potential benefit albeit not statistically significant, suggesting that BTKi continuation definitely is not harming patients and may potentially benefit them by preventing respiratory failure and death or by keeping CLL under control [25]. This is in line with the current recommendations indicating no need to hold BTKi at the time of a confirmed SARS-CoV-2 infection [26]. Patients treated with anti-CD20 antibodies, alone or in combination, had worse OS than untreated patients. This finding suggests that such treatment likely renders patients with CLL more susceptible to succumb to COVID-19 infection. That said, the small number of patients treated with the combination of anti-CD20 antibodies with novel agents in the present cohort hinders firm conclusions from being drawn regarding its precise impact on COVID-19 outcome. The CFR in the entire cohort was 27.4% and increased to 38.4% among patients with severe COVID-19. This indicates a remarkable consistency among different studies in patients with CLL and COVID-19 as well as in the different waves of the pandemic, confirming the unabated aggressiveness of the disease with time [14-16]. In the general population, the CFR in hospitalized patients appears lower compared to our cohort: indicatively, a meta-analysis of COVID-19 patients found a fatality rate of 17.1% and 40.5% for hospitalized and critically ill patients, respectively [27]. Similarly, in-hospital mortality of patients older than 75 years in a US study was 20.5% [28]. Nevertheless, the caveats of cross-study comparisons, the retrospective nature of our cohort, and the lack of a control group hinder any generalization about the true impact of CLL in COVID-19-related mortality. In the updated cohort, CLL-directed treatment was associated with a worse outcome. However, it had no impact on COVID-19 severity in either the orginal or the updated cohort. We suspect that investigators were more likely to be informed about patients on CLL-specific treatment with mild COVID-19 symptoms than untreated patients, since the former were followed up more closely and probably sought immediate guidance: thus, we may have missed more asymptomatic untreated patients. Dexamethasone and tocilizumab remain the only treatments that showed a mortality benefit in patients with COVID-19 [29, 30]. The impact of COVID-19 treatments in our cohort was not among the objectives, with information on the administered treatment for COVID-19 missing at least in part. Nonetheless, we observed that different types of therapies against COVID-19 did not affect the CFR. We acknowledge certain limitations in our study. As already mentioned, hospitalized and/or symptomatic patients were more likely to be captured in our cohort, while we probably missed some asymptomatic or mildly symptomatic patients who avoided undergoing testing and/or contacting their physician, especially during the first wave, when COVID-19 testing was not the rule. To avoid the caveats of a retrospective study and the lack of a control group in overestimating the mortality, we restricted the analysis to patients with severe disease and avoided broad generalizations about prevalence, morbidity, and mortality. Taking into account the multicenter, international design of the study, some heterogeneity in our patient population is to be expected as we included patients from different countries, diagnosed with COVID-19 during different waves of the pandemic and managed differently. Along this line, mirroring the course of the pandemic, some countries like Italy and Spain were overrepresented in the first wave, while the second wave featured more patients from other countries (e.g., Czech Republic and Greece). Finally, we recognize that differences in the quality of health care and weather could influence our results. Indeed, only a small number of cases were diagnosed during the summer and none of the patients in our cohort was vaccinated for SARS-CoV-2. In addition, the lack of any difference in CFRs between the two waves illustrates that CLL and treatment-related immunosuppression may overshadow other risk factors of outcome. Taken together, our findings suggest that in patients with CLL and COVID-19, older age confers a worse prognosis, with increased mortality. Untreated patients had a better chance of survival than those on treatment or recently treated. Supplemental information
  15 in total

1.  Delayed Diagnosis and Multi-TKI Intolerance: A Case Report of CML Concurrent With COVID-19.

Authors:  Chengxin Luan; Haixia Wang; Junjie Zhou; Xiaoyu Ma; Zhangbiao Long; Xin Cheng; Xiaowen Chen; Ruixiang Xia; Jian Ge
Journal:  Front Oncol       Date:  2022-06-08       Impact factor: 5.738

Review 2.  COVID-19 in Patients with Hematologic Malignancies: Clinical Manifestations, Persistence, and Immune Response.

Authors:  Ivan Gur; Amir Giladi; Yonathan Nachum Isenberg; Ami Neuberger; Anat Stern
Journal:  Acta Haematol       Date:  2022-03-02       Impact factor: 3.068

3.  COVID-19 vaccine response in chronic lymphocytic leukaemia is more than just seroconversion.

Authors:  Clare Sun
Journal:  Br J Haematol       Date:  2022-02-04       Impact factor: 8.615

4.  Patients with CLL have a lower risk of death from COVID-19 in the Omicron era.

Authors:  Carsten U Niemann; Caspar da Cunha-Bang; Marie Helleberg; Sisse R Ostrowski; Christian Brieghel
Journal:  Blood       Date:  2022-08-04       Impact factor: 25.476

5.  Outcome of SARS-CoV-2-Infected Polish Patients with Chronic Lymphocytic Leukemia.

Authors:  Bartosz Puła; Katarzyna Pruszczyk; Ewa Pietrusza; Marta Morawska; Weronika Piszczek; Elżbieta Kalicińska; Agnieszka Szeremet; Jagoda Tryc-Szponder; Ewa Wąsik-Szczepanek; Joanna Drozd-Sokołowska; Helena Krzemień; Aleksandra Rejus; Małgorzata Gajewska; Kamil Wiśniewski; Maciej Wysocki; Alan Majeranowski; Ewa Paszkiewicz-Kozik; Paweł Steckiewicz; Łukasz Szukalski; Łukasz Bołkun; Monika Długosz-Danecka; Krzysztof Giannopoulos; Krzysztof Jamroziak; Ewa Lech-Marańda; Iwona Hus
Journal:  Cancers (Basel)       Date:  2022-01-22       Impact factor: 6.639

6.  Impact of the SARS-CoV-2 pandemic on hematopoietic cell transplantation and cellular therapies in Europe 2020: a report from the EBMT activity survey.

Authors:  Jakob R Passweg; Helen Baldomero; Christian Chabannon; Selim Corbacioglu; Rafael de la Cámara; Harry Dolstra; Bertram Glass; Raffaella Greco; Mohamad Mohty; Bénédicte Neven; Régis Peffault de Latour; Zinaida Perić; John A Snowden; Ibrahim Yakoub-Agha; Anna Sureda; Nicolaus Kröger
Journal:  Bone Marrow Transplant       Date:  2022-02-22       Impact factor: 5.174

7.  Outcome of COVID-19 in Patients With Mantle Cell Lymphoma-Report From the European MCL Registry.

Authors:  Marie-Kristin Tilch; Carlo Visco; Sandra Kinda; Olivier Hermine; Milena Kohn; Caroline Besson; Sylvain Lamure; Rémy Duléry; Simone Ragaini; Toby A Eyre; Tom Van Meerten; Anke Ohler; Steffen Eckerle; Martin Dreyling; Georg Hess; Eva Giné; Maria Gomes da Silva
Journal:  Hemasphere       Date:  2022-04-08

8.  Current perspectives regarding SARS-CoV-2 vaccination in chronic lymphocytic leukemia.

Authors:  Stefano Molica; Constantine Tam; Aaron Polliack
Journal:  Hematol Oncol       Date:  2022-03-23       Impact factor: 4.850

Review 9.  Do reduced numbers of plasmacytoid dendritic cells contribute to the aggressive clinical course of COVID-19 in chronic lymphocytic leukaemia?

Authors:  Carl Inge Edvard Smith; Rula Zain; Anders Österborg; Marzia Palma; Marcus Buggert; Peter Bergman; Yenan Bryceson
Journal:  Scand J Immunol       Date:  2022-03-16       Impact factor: 3.889

Review 10.  How the COVID-19 Pandemic Reshaped the Management of Leukemia and Affected Patient Outcomes.

Authors:  Noha Sharafeldin; Benjamin Bates; Pankit Vachhani
Journal:  Curr Treat Options Oncol       Date:  2022-03-25
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