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Article

Cancers and COVID-19 Risk: A Mendelian Randomization Study

1
China-Australia Joint Research Centre for Infectious Diseases, School of Public Health, Xi’an Jiaotong University Health Science Centre, Xi’an 710061, China
2
Melbourne Sexual Health Centre, Alfred Health, Melbourne, VIC 3053, Australia
3
Central Clinical School, Faculty of Medicine, Nursing and Health Sciences, Monash University, Melbourne, VIC 3800, Australia
4
Department of Epidemiology and Biostatistics, College of Public Health, Zhengzhou University, Zhengzhou 450001, China
*
Author to whom correspondence should be addressed.
Cancers 2022, 14(9), 2086; https://doi.org/10.3390/cancers14092086
Submission received: 10 March 2022 / Revised: 8 April 2022 / Accepted: 13 April 2022 / Published: 22 April 2022
(This article belongs to the Collection The Impact of COVID-19 Infection in Cancer)

Abstract

:

Simple Summary

During the COVID-19 pandemic, cancer patients are regarded as a highly vulnerable population. Given the unavoidable bias and unmeasured confounders in observational studies, the causal effects of cancers on COVID-19 outcomes are largely unknown. In the study, we tried to evaluate the causal effects of cancers on COVID-19 outcomes using the Mendelian randomization (MR) approach. No strong evidence was observed to support a causal role of cancer in COVID-19 development. Previous observational correlations between cancers and COVID-19 outcomes were likely confounded. Large and well-conducted epidemiological studies are required to determine whether cancers causally contribute to increased risk of COVID-19.

Abstract

Observational studies have shown increased COVID-19 risk among cancer patients, but the causality has not been proven yet. Mendelian randomization analysis can use the genetic variants, independently of confounders, to obtain causal estimates which are considerably less confounded. We aimed to investigate the causal associations of cancers with COVID-19 outcomes using the MR analysis. The inverse-variance weighted (IVW) method was employed as the primary analysis. Sensitivity analyses and multivariable MR analyses were conducted. Notably, IVW analysis of univariable MR revealed that overall cancer and twelve site-specific cancers had no causal association with COVID-19 severity, hospitalization or susceptibility. The corresponding p-values for the casual associations were all statistically insignificant: overall cancer (p = 0.34; p = 0.42; p = 0.69), lung cancer (p = 0.60; p = 0.37; p = 0.96), breast cancer (p = 0.43; p = 0.74; p = 0.43), endometrial cancer (p = 0.79; p = 0.24; p = 0.83), prostate cancer (p = 0.54; p = 0.17; p = 0.58), thyroid cancer (p = 0.70; p = 0.80; p = 0.28), ovarian cancer (p = 0.62; p = 0.96; p = 0.93), melanoma (p = 0.79; p = 0.45; p = 0.82), small bowel cancer (p = 0.09; p = 0.08; p = 0.19), colorectal cancer (p = 0.85; p = 0.79; p = 0.30), oropharyngeal cancer (p = 0.31; not applicable, NA; p = 0.80), lymphoma (p = 0.51; NA; p = 0.37) and cervical cancer (p = 0.25; p = 0.32; p = 0.68). Sensitivity analyses and multivariable MR analyses yielded similar results. In conclusion, cancers might have no causal effect on increasing COVID-19 risk. Further large-scale population studies are needed to validate our findings.

1. Introduction

Coronavirus disease 2019 (COVID-19) is a global pandemic caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) [1]. As of April 2022, the cumulative cases and deaths of COVID-19 have reached over 500 million and 6 million, respectively [2]. Notably, COVID-19 individuals are mostly presented with mild and moderate infection, but can progress rapidly from asymptomatic to acute respiratory distress syndrome, multiple organ dysfunction syndrome and even death [3,4]. Therefore, identifying the potential risk factors for COVID-19 will be of significant value for public health and health policy.
Cancer patients are a vulnerable population during the COVID-19 pandemic [5,6]. Cancer represents a severe public health problem and is the second leading cause of death worldwide [7]. The Global Cancer Observatory estimated 19.3 million new cancer diagnoses and roughly 10.0 million cancer-associated deaths globally in 2020 [8]. Previous studies suggested that cancer patients showed higher prevalence, severe illness incidence, and mortality rate of COVID-19 compared with the non-cancer population [9,10,11]. However, a prospective cohort of 0.5 million people indicated that confounders—including socioeconomic status, age, and ethnicity—might interfere with the associations between COVID-19 and risk factors [12]. It was unclear whether the positive correlations between cancers and COVID-19 outcomes resulted from confounders or biases [13]. Furthermore, associations are correlative only; they do not imply causality.
Mendelian randomization, an epidemiological method, has been widely applied to assess the potential causal association between exposure and outcome [14,15]. According to Mendel’s law, genetic variants are randomly allocated at meiosis [16]. MR analysis, using genetic variants as instrumental variables (IVs), can minimize the influence of confounders or reverse causations [14]. Given the limitations of current research, we tried to evaluate the potential impact and the causal associations of cancers with COVID-19 outcomes using the MR method.

2. Materials and Methods

2.1. Study Design

Figure 1 outlines the overall design of investigating the causal associations between cancers and COVID-19 outcomes through MR study. Briefly, the MR method comprises two main steps: first, randomizing participants on the basis of IVs; then, assessing the causal associations between cancers and COVID-19 outcomes [14,17]. IVs should meet three key assumptions: (1) the IVs are robustly associated with cancers; (2) the IVs are not associated with confounders; and (3) the IVs should affect the outcomes of COVID-19 only through cancers, not via alternative pathways [17]. Previous MR studies have shown that some single nucleotide polymorphisms (SNPs) for cancers might be associated with confounders between cancers and COVID-19, such as educational attainment [18,19], body mass index (BMI) [20], income [18], alcohol consumption [21] and smoking [22,23]. Thus, we performed multivariable MR analyses to limit the effects of potential confounders.

2.2. Data Sources

The summary statistics in the genome-wide association studies (GWASs) for COVID-19 were sourced from the COVID-19 Host Genetics Initiative V5 [24], which excluded “23andMe” data. The COVID-19 GWAS data has been adjusted for age, gender, age2, age × gender, principal components and study-specific covariates by the original GWAS researchers. The COVID-19 outcomes included 1,683,768 participants (38,984 infection cases and 1,644,784 controls) for susceptibility, 1,887,658 participants (9986 hospitalized patients and 1,877,672 controls) for hospitalization, and 1,388,342 participants (5101 very serious respiratory confirmed patients and 1,383,241 controls) for severity, respectively. The uninfected individuals served as the controls. All cases were confirmed by laboratory, self-reported, or physician diagnosis. The severe cases were defined as patients who died or required respiratory support with COVID-19 infection [24].
The summary statistics of the GWASs for cancers were obtained from the UK biobank [25], International Lung Cancer Consortium (ILCCO) [26], Breast Cancer Association Consortium (BCAC) [27], Ovarian Cancer Association Consortium (OCAC) [28], Endometrial Cancer Association Consortium (ECAC) [29], Prostate Cancer Association Group to Investigate Cancer Associated Alterations in the Genome Consortium (PRACTICALC) [30] and the thyroid cancer study of Kohler et al. [31]. Overall cancer and 12 site-specific cancers were included: 336,272 participants for overall cancer, 27,209 participants for lung cancer, 18,313 participants for squamous cell lung cancer, 228,951 participants for breast cancer, 175,475 participants for estrogen receptor-positive (ER+) breast cancer, 127,442 participants for ER- breast cancer, 66,450 participants for ovarian cancer, 121,885 participants for endometrial cancer, 140,254 participants for prostate cancer, 1080 participants for thyroid cancer, 375,767 participants for melanoma, 337,159 participants for small bowel cancer, 377,673 participants for colorectal cancer, 372,510 participants for oropharyngeal cancer, 361,194 participants for lymphoma and 463,010 participants for cervical cancer.
Covariates for multivariable MR analyses were included: BMI (681,275 participants) [32], educational attainment (766,345 participants) [33], intelligence (269,867 participants) [34], average total household income before tax (income, 397,751 participants) [25], cigarettes per day (smoking, 337,334 participants) [35] and alcoholic drinks per week (alcohol consumption, 335,394 participants) [35]. All data came from the European population. Detailed information on data can be found in Table 1.
At the beginning of our study design, 24 site-specific cancers were considered. Overall cancer and 12 site-specific cancers were included, but another 12 types of cancer were not included due to insufficient SNPs (stomach cancer, pancreatic cancer, esophagus cancer, kidney cancer, liver cancer, biliary tract cancer, head and neck cancer, bladder cancer, testis cancer, brain cancer, multiple myeloma and bone cancer). In Table S1, we provide detailed information on cancers that failed to perform the MR study.

2.3. Selection of Instrumental Variables

Appropriate SNPs used as IVs must be robustly associated with cancers (p < 5 × 10−8). To ensure independence, SNPs were restricted by low linkage disequilibrium (LD, r2 < 0.001, window size = 10,000 kb) using clumping [14,36]. We excluded palindromic SNPs whose minor allele frequency (MAF) was less than 0.42. In addition, we calculated F-statistics for SNPs to measure instrumental strength. SNPs with an F-statistic less than 10 were removed [37]. Detailed information on selected SNPs can be found in Table S2. One SNP (rs11571818) of squamous cell lung cancer was removed (F-statistic: 7.94).

2.4. Statistical Analysis

In the univariable MR analysis, the IVW analysis was chosen as the primary approach to estimate the causal effects of cancers on COVID-19 outcomes [15,38]. We added the MR-Egger regression [39], weighted median [40], weighted mode [41] and MR pleiotropy residual sum and outlier (MR-PRESSO) [42] methods as supplements to sensitivity analyses. The third assumption (that IVs cannot affect the outcomes of COVID-19 through alternative pathways) was defined as independence from pleiotropy [14]. When performing MR analysis, results may be inaccurate due to the pleiotropy of these SNPs [36]. Therefore, we evaluated the potential pleiotropy via the MR-PRESSO approach. The MR-PRESSO approach could identify and correct possible outliers and estimate causal effects [42]. We evaluated the heterogeneity by Cochran’s Q test. The fixed-effect model was used if no heterogeneity was observed (p < 0.1); otherwise, a random-effect model was applied. In addition, we used the “leave-one-out” validation to determine whether a single SNP had a significant independent influence on the MR estimation.
We applied the random-effect IVW method to assess the causal effects of cancers on COVID-19 outcomes for the multivariable MR analyses, after controlling BMI, educational attainment, intelligence, smoking and alcohol consumption. Given the number of cancers and COVID-19 outcomes considered, a two-sided p-value using the Bonferroni correction (0.0033, 0.05/15 cancers) was used. 0.0033 < p < 0.05 was regarded as suggestive evidence for a potential association. The β (β = lnOR; OR, odds ratio) and its SE (standard error) were calculated to reflect effect sizes. All statistical analyses were conducted in R v4.0.1 (R Foundation, Vienna, Austria) with the packages “TwoSampleMR” and “MRPRESSO” [42,43].

3. Results

3.1. Cancers and COVID-19 Severity

A total of 1,388,342 participants (5101 very serious respiratory confirmed patients and 1,383,241 controls) were included for COVID-19 severity. Severe COVID-19 cases were defined as patients who died or required respiratory support with COVID-19 infection. The effects of each SNP in cancers on COVID-19 severity can be found in Figure S1. There was significant heterogeneity in the IVW analyses of prostate cancer (p = 0.07), ovarian cancer (p < 0.001), melanoma (p = 0.01) and cervical cancer (p = 0.08) (Table 2). Hence, we performed the random-effect model in their IVW analyses. IVW analysis suggested no causal effect of overall cancer (p = 0.34), lung cancer (p = 0.60), squamous cell lung cancer (p = 0.66), breast cancer (p = 0.43), ER+ breast cancer (p = 0.79), ER− breast cancer (p = 0.66), endometrial cancer (p = 0.79), prostate cancer (p = 0.54), thyroid cancer (p = 0.70), ovarian cancer (p = 0.62), melanoma (p = 0.79), small bowel cancer (p = 0.09), colorectal cancer (p = 0.85), oropharyngeal cancer (p = 0.31), lymphoma (p = 0.51) or cervical cancer (p = 0.25) on the COVID-19 severity (Table 2).
In the sensitivity analyses, the MR-PRESSO test indicated significant horizontal pleiotropy in the analyses of prostate cancer (p = 0.03) and ovarian cancer (p = 0.01) (Table 2). After removing the horizontal pleiotropy SNPs (rs12139208 for prostate cancer; rs115478735 for ovarian cancer), MR-PRESSO analysis suggested that prostate cancer and ovarian cancer had no causal association with COVID-19 severity (p = 0.60; p = 0.96). Although horizontal pleiotropy was observed in melanoma (p = 0.02), it showed no significant outlier. We conducted the “leave-one-out” analysis and found no potential SNP significantly biasing the results (Figure S4). Taken together, sensitivity analyses (MR-Egger, weighted median, weighted mode and MR-PRESSO) revealed that cancers had no causal association with COVID-19 severity (Table 2). Results of multivariable MR analyses also supported our findings (Table S3).

3.2. Cancers and COVID-19 Hospitalization

COVID-19 hospitalization analysis contained 1,887,658 participants (9986 hospitalization patients and 1,877,672 controls). Figure S2 represents the effects of each SNP in cancers on COVID-19 hospitalization. Significant heterogeneity was observed in the analyses of thyroid cancer (p = 0.06), ovarian cancer (p < 0.001) and cervical cancer (p = 0.04) (Table 3). The random-effect model was subsequently applied. IVW analysis revealed no causal effect of overall cancer (p = 0.42), lung cancer (p = 0.37), squamous cell lung cancer (p = 0.66), breast cancer (p = 0.74), ER+ breast cancer (p = 0.51), ER− breast cancer (p = 0.93), endometrial cancer (p = 0.24), prostate cancer (p = 0.17), thyroid cancer (p = 0.80), ovarian cancer (p = 0.96), melanoma (p = 0.45), small bowel cancer (p = 0.08), colorectal cancer (p = 0.79) or cervical cancer (p = 0.32) on COVID-19 hospitalization (Table 3).
In the sensitivity analyses, the MR-PRESSO test indicated significant horizontal pleiotropy in the analysis of ovarian cancer (p < 0.001; Table 3). After removing the horizontal pleiotropy SNPs (rs115478735 and rs71238846), ovarian cancer was still not significantly associated with COVID-19 hospitalization in the MR-PRESSO analysis (p = 0.78). The “leave-one-out” analysis showed no outliers (Figure S5). Although MR-Egger test indicated a potential association of thyroid cancer with COVID-19 hospitalization (p = 0.04), estimates in the three analyses (weighted median, weighted mode and MR-PRESSO; Table 3) directionally matched the result of IVW analysis. In the multivariable MR analyses (Table S4), potential association with COVID-19 hospitalization was observed in overall cancer (p = 0.01) and prostate cancer (p = 0.046) when adjusting for education attainment. A significant association was also found in small bowel cancer (p = 0.047) when adjusting for smoking. However, the associations of overall cancer, prostate cancer and small bowel cancer with COVID-19 hospitalization could not be replicated when intelligence (p = 0.18; p = 0.10; p = 0.23), income (p = 0.28; p = 0.06; p = 0.28) and alcohol consumption (p = 0.58; p = 0.11; p = 0.43) were adjusted (Table S4). Therefore, there was no strong evidence for a causal association of overall cancer, prostate cancer, or small bowel cancer with COVID-19 hospitalization.

3.3. Cancers and COVID-19 Susceptibility

A total of 1,683,768 participants (38,984 infection patients and 1,644,784 controls) were included for COVID-19 susceptibility. Figure S3 shows the effects of each SNP in cancers on COVID-19 susceptibility. There was significant heterogeneity in the IVW analyses of ER+ breast cancer (p = 0.02), prostate cancer (p = 0.06), thyroid cancer (p = 0.06), ovarian cancer (p < 0.001), melanoma (p = 0.05) and cervical cancer (p < 0.001) (Table 4). Thus, we performed the random-effect model for their IVW analyses. IVW analysis suggested no causal effect of overall cancer (p = 0.69), lung cancer (p = 0.96), squamous cell lung cancer (p = 0.08), breast cancer (p = 0.43), ER+ breast cancer (p = 0.30), ER− breast cancer (p = 0.18), endometrial cancer (p = 0.83), prostate cancer (p = 0.58), thyroid cancer (p = 0.28), ovarian cancer (p = 0.93), melanoma (p = 0.82), small bowel cancer (p = 0.19), colorectal cancer (p = 0.30), oropharyngeal cancer (p = 0.80), lymphoma (p = 0.37) or cervical cancer (p = 0.68) on COVID-19 susceptibility (Table 4).
In the sensitivity analyses, the MR-PRESSO test indicated significant horizontal pleiotropy in the analyses of ER+ breast cancer (p = 0.02) and ovarian cancer (p < 0.001) (Table 4). After removing the horizontal pleiotropy SNPs (rs4971059 for ER+ breast cancer, rs115478735 and rs71238846 for ovarian cancer), MR-PRESSO analysis suggested that ER+ breast cancer and ovarian cancer still had no causal association with COVID-19 susceptibility (p = 0.50; p = 0.39). The “leave-one-out” plot showed one potential instrumental outlier (rs6983267) for colorectal cancer (Figure S6M). However, results of multivariable MR analyses (Table S5) supported colorectal cancer having no significant causal effect on COVID-19 susceptibility. In summary, there was no strong evidence for a causal association of overall cancer or twelve site-specific cancers with COVID-19 susceptibility.

4. Discussion

During the COVID-19 pandemic, healthcare resources are extremely scarce, and there is an urgent need to allocate healthcare resources rationally [44]. Identifying individuals who are vulnerable to SARS-CoV-2 and those who are prone to severe illness is of great significance for optimizing the allocation of healthcare resources. Epidemiological studies have suggested that cancer is an independent adverse prognostic factor on COVID-19 outcomes [10,45], but causality has not been assessed. We used the MR analysis to evaluate the causal effects of overall cancer and twelve site-specific cancers (lung cancer, breast cancer, endometrial cancer, prostate cancer, thyroid cancer, ovarian cancer, melanoma, small bowel cancer, colorectal cancer, oropharyngeal cancer, lymphoma and cervical cancer) on COVID-19 outcomes (severity, hospitalization and susceptibility). The MR study on extensive international genetic consortia provided no strong evidence to support the causal role of cancer in COVID-19 development.
MR leverages the random allocation of genetic variants at conception, independently of confounders, to identify the causal effects that are substantially less confounded and not vulnerable to reverse causation [14,15]. We used SNPs as instrumental variables to conduct the MR study. Five analyses (IVW, MR-Egger, weighted median, weighted mode and MR-PRESSO) suggested no causal effect of overall cancer or twelve site-specific cancers on COVID-19 outcomes. Multivariate MR estimates (adjusted for BMI, education attainment, intelligence, income, smoking and alcohol consumption) were consistent with the results of five analyses. Besides UK biobank, we introduced other data to verify the results of this study (Table S6). Taken together, we concluded that cancers might have no causal effect on increasing COVID-19 risk, and these results were robust.
Although many studies have generally shown positive correlations of cancers with the risk of COVID-19 [10,45,46,47], some subsequent findings are inconsistent with previous studies. No statistically significant difference was found between the severe and non-severe COVID-19 group of cancer among non-Asian patients [48]. A meta-analysis involving 46,499 patients revealed that cancer was not a risk factor for COVID-19 death in elderly patients [49]. Moreover, another meta-analysis showed that colorectal cancer patients are not significantly susceptible to SARS-CoV-2 in the global population [50]. Interestingly, a recent meta-analysis suggested that no significantly increased risk of severe illness of COVID-19 was observed in patients with lung or stage IV cancer [51]. The conflicting results indicated that cancers might not be causally associated with COVID-19 outcomes.
Risk factors may be correlated with COVID-19 outcomes, but not as a causal association. Previous MR studies have shown that many traditional risk factors have no causal association with COVID-19 outcomes, such as decreased lung function, chronic obstructive pulmonary disease, blood pressure, type 2 diabetes, chronic kidney disease, coronary artery disease, stroke and nonalcoholic fatty liver disease [52,53,54,55]. However, BMI has been robustly correlated and causally associated with COVID-19 outcomes [54]. In fact, many studies have shown that there is a significant difference in the age distribution between cancer and non-cancer patients infected with COVID-19 [46,47,56]. In addition, the mortality rate of COVID-19 in cancer patients appears to be mainly determined by age, gender and comorbidities [57,58]. Therefore, the reported correlations of risk factors with COVID-19 outcomes might be confounded in observational studies, possibly due to confounders including BMI, age and gender. Notably, cancer patients should remain a key focus during the COVID-19 pandemic. Risk factors were clinically helpful in identifying critically ill patients of COVID-19, even without a causal association.
MR design is less confounding than observational study, but limitations of this MR study need to be acknowledged. First, some types of cancer—such as stomach cancer, pancreatic cancer, liver cancer and brain cancer—were not included in the study because of insufficient SNPs (Table S1). Potential causality for COVID-19 outcomes might be observed in other types of cancer. Second, our results are primarily based on participants of European descent, to reduce racial influence. The findings of our MR study might not apply to other ethnic groups. With racial minorities disproportionately affected by the pandemic [59,60], reliable research on non-European ancestry is urgently needed. Third, gender-specific cancers (breast cancer, endometrial cancer, prostate cancer, ovarian cancer and cervical cancer) were included. Although the original researchers have adjusted the COVID-19 GWAS data for gender, it might have a confounded impact. Lastly, data were extracted from vast genetic epidemiological networks, but our study failed to detect minimal effects.

5. Conclusions

Overall, we used MR analysis to evaluate the causal effects of overall cancer and twelve site-specific cancers on COVID-19 severity, hospitalization and susceptibility. Results of the MR study did not suggest strong evidence to support the causal associations of any examined cancer with COVID-19 outcomes. Previous observational correlations of cancers with COVID-19 outcomes were likely confounded. More large-scale epidemiological studies are needed to validate our findings.

Supplementary Materials

The following supporting information can be downloaded at https://www.mdpi.com/article/10.3390/cancers14092086/s1. Figure S1: The effects of each SNP in cancers on COVID-19 severity; Figure S2: The effects of each SNP in cancers on COVID-19 hospitalization; Figure S3: The effects of each SNP in cancers on COVID-19 susceptibility; Figure S4: The leave-one-out sensitivity analysis of the causal effects of cancers on COVID-19 severity; Figure S5: The leave-one-out sensitivity analysis of the causal effects of cancers on COVID-19 hospitalization; Figure S6: The leave-one-out sensitivity analysis of the causal effects of cancers on COVID-19 susceptibility; Table S1: Excluded cancers with insufficient SNPs; Table S2: Selected SNPs of included cancers; Table S3: Causal effects of cancers on COVID-19 severity estimated by multivariable Mendelian randomization; Table S4: Causal effects of cancers on COVID-19 hospitalization estimated by multivariable Mendelian randomization; Table S5: Causal effects of cancers on COVID-19 susceptibility estimated by multivariable Mendelian randomization; Table S6: Verification of the causal effects of cancers on COVID-19 outcomes.

Author Contributions

Conceptualization, Z.L. and L.Z.; methodology, Z.L.; validation, formal analysis, and investigation, Z.L.; writing—original draft and visualization, Z.L., Y.W., G.Z., M.W. and L.Z.; writing—review and editing, Z.L. and L.Z.; supervision and project administration, L.Z.; funding acquisition, L.Z. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by the Bill and Melinda Gates Foundation (INV-006104), National Natural Science Foundation of China (Grant number: 81950410639), Outstanding Young Scholars Support Program (Grant number: 3111500001), Xi’an Jiaotong University Basic Research and Profession Grant (Grant number: xtr022019003, xzy032020032), Epidemiology modeling and risk assessment grant (Grant number: 20200344), and Xi’an Jiaotong University Young Scholar Support Grant (Grant number: YX6J004).

Institutional Review Board Statement

The study was conducted according to the guidelines of the Declaration of Helsinki, and approved by the Institutional Review Board was waived because this was a retrospective study.

Informed Consent Statement

Participant consent was waived because this was a retrospective study.

Data Availability Statement

All relevant data are within the paper.

Acknowledgments

We thank all institutions for providing the publically available GWAS summary-level data used in this study.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Hu, B.; Guo, H.; Zhou, P.; Shi, Z.L. Characteristics of SARS-CoV-2 and COVID-19. Nat. Rev. Microbiol. 2021, 19, 141–154. [Google Scholar] [CrossRef] [PubMed]
  2. Dong, E.; Du, H.; Gardner, L. An interactive web-based dashboard to track COVID-19 in real time. Lancet Infect. Dis. 2020, 20, 533–534. [Google Scholar] [CrossRef]
  3. Zhou, F.; Yu, T.; Du, R.; Fan, G.; Liu, Y.; Liu, Z.; Xiang, J.; Wang, Y.; Song, B.; Gu, X.; et al. Clinical course and risk factors for mortality of adult inpatients with COVID-19 in Wuhan, China: A retrospective cohort study. Lancet 2020, 395, 1054–1062. [Google Scholar] [CrossRef]
  4. Wu, Z.; McGoogan, J.M. Characteristics of and Important Lessons From the Coronavirus Disease 2019 (COVID-19) Outbreak in China: Summary of a Report of 72314 Cases From the Chinese Center for Disease Control and Prevention. JAMA 2020, 323, 1239–1242. [Google Scholar] [CrossRef] [PubMed]
  5. Elkrief, A.; Wu, J.T.; Jani, C.; Enriquez, K.T.; Glover, M.; Shah, M.R.; Shaikh, H.G.; Beeghly-Fadiel, A.; French, B.; Jhawar, S.R.; et al. Learning through a Pandemic: The Current State of Knowledge on COVID-19 and Cancer. Cancer Discov. 2022, 12, 303–330. [Google Scholar] [CrossRef] [PubMed]
  6. Ali, J.K.; Riches, J.C. The Impact of the COVID-19 Pandemic on Oncology Care and Clinical Trials. Cancers 2021, 13, 5924. [Google Scholar] [CrossRef] [PubMed]
  7. Global Burden of Disease Cancer, C.; Kocarnik, J.M.; Compton, K.; Dean, F.E.; Fu, W.; Gaw, B.L.; Harvey, J.D.; Henrikson, H.J.; Lu, D.; Pennini, A.; et al. Cancer Incidence, Mortality, Years of Life Lost, Years Lived With Disability, and Disability-Adjusted Life Years for 29 Cancer Groups From 2010 to 2019: A Systematic Analysis for the Global Burden of Disease Study 2019. JAMA Oncol. 2021, 8, 420–444. [Google Scholar] [CrossRef]
  8. Sung, H.; Ferlay, J.; Siegel, R.L.; Laversanne, M.; Soerjomataram, I.; Jemal, A.; Bray, F. Global Cancer Statistics 2020: GLOBOCAN Estimates of Incidence and Mortality Worldwide for 36 Cancers in 185 Countries. CA Cancer J. Clin. 2021, 71, 209–249. [Google Scholar] [CrossRef]
  9. Kong, X.; Qi, Y.; Huang, J.; Zhao, Y.; Zhan, Y.; Qin, X.; Qi, Z.; Atanda, A.J.; Zhang, L.; Wang, J.; et al. Epidemiological and clinical characteristics of cancer patients with COVID-19: A systematic review and meta-analysis of global data. Cancer Lett. 2021, 508, 30–46. [Google Scholar] [CrossRef]
  10. Zhang, H.; Han, H.; He, T.; Labbe, K.E.; Hernandez, A.V.; Chen, H.; Velcheti, V.; Stebbing, J.; Wong, K.K. Clinical Characteristics and Outcomes of COVID-19-Infected Cancer Patients: A Systematic Review and Meta-Analysis. J. Natl. Cancer Inst. 2021, 113, 371–380. [Google Scholar] [CrossRef]
  11. Seth, G.; Sethi, S.; Bhattarai, S.; Saini, G.; Singh, C.B.; Aneja, R. SARS-CoV-2 Infection in Cancer Patients: Effects on Disease Outcomes and Patient Prognosis. Cancers 2020, 12, 3266. [Google Scholar] [CrossRef] [PubMed]
  12. Chadeau-Hyam, M.; Bodinier, B.; Elliott, J.; Whitaker, M.D.; Tzoulaki, I.; Vermeulen, R.; Kelly-Irving, M.; Delpierre, C.; Elliott, P. Risk factors for positive and negative COVID-19 tests: A cautious and in-depth analysis of UK biobank data. Int. J. Epidemiol. 2020, 49, 1454–1467. [Google Scholar] [CrossRef] [PubMed]
  13. Peron, J.; Dagonneau, T.; Conrad, A.; Pineau, F.; Calattini, S.; Freyer, G.; Perol, D.; Sajous, C.; Heiblig, M. COVID-19 Presentation and Outcomes among Cancer Patients: A Matched Case-Control Study. Cancers 2021, 13, 5283. [Google Scholar] [CrossRef]
  14. Emdin, C.A.; Khera, A.V.; Kathiresan, S. Mendelian Randomization. JAMA 2017, 318, 1925–1926. [Google Scholar] [CrossRef] [PubMed]
  15. Burgess, S.; Butterworth, A.; Thompson, S.G. Mendelian randomization analysis with multiple genetic variants using summarized data. Genet. Epidemiol. 2013, 37, 658–665. [Google Scholar] [CrossRef] [Green Version]
  16. Boef, A.G.; Dekkers, O.M.; le Cessie, S. Mendelian randomization studies: A review of the approaches used and the quality of reporting. Int. J. Epidemiol. 2015, 44, 496–511. [Google Scholar] [CrossRef]
  17. Davey Smith, G.; Hemani, G. Mendelian randomization: Genetic anchors for causal inference in epidemiological studies. Hum. Mol. Genet. 2014, 23, R89–R98. [Google Scholar] [CrossRef] [Green Version]
  18. Jian, Z.; Wang, M.; Jin, X.; Wei, X. Genetically Predicted Higher Educational Attainment Decreases the Risk of COVID-19 Susceptibility and Severity: A Mendelian Randomization Study. Front Public Health 2021, 9, 731–962. [Google Scholar] [CrossRef]
  19. Li, G.H.; Lam, S.K.; Wong, I.C.; Chu, J.K.; Cheung, C.L. Education Attainment, Intelligence and COVID-19: A Mendelian Randomization Study. J. Clin. Med. 2021, 10, 4870. [Google Scholar] [CrossRef]
  20. Freuer, D.; Linseisen, J.; Meisinger, C. Impact of body composition on COVID-19 susceptibility and severity: A two-sample multivariable Mendelian randomization study. Metabolism 2021, 118, 154732. [Google Scholar] [CrossRef]
  21. Fan, X.; Liu, Z.; Poulsen, K.L.; Wu, X.; Miyata, T.; Dasarathy, S.; Rotroff, D.M.; Nagy, L.E. Alcohol Consumption Is Associated with Poor Prognosis in Obese Patients with COVID-19: A Mendelian Randomization Study Using UK Biobank. Nutrients 2021, 13, 1592. [Google Scholar] [CrossRef] [PubMed]
  22. Rosoff, D.B.; Yoo, J.; Lohoff, F.W. Smoking is significantly associated with increased risk of COVID-19 and other respiratory infections. Commun. Biol. 2021, 4, 1230. [Google Scholar] [CrossRef] [PubMed]
  23. Rao, S.; Baranova, A.; Cao, H.; Chen, J.; Zhang, X.; Zhang, F. Genetic mechanisms of COVID-19 and its association with smoking and alcohol consumption. Brief Bioinform 2021, 22, bbab284. [Google Scholar] [CrossRef] [PubMed]
  24. Initiative, C.-H.G. The COVID-19 Host Genetics Initiative, a global initiative to elucidate the role of host genetic factors in susceptibility and severity of the SARS-CoV-2 virus pandemic. Eur. J. Hum. Genet. 2020, 28, 715–718. [Google Scholar] [CrossRef] [PubMed]
  25. Canela-Xandri, O.; Rawlik, K.; Tenesa, A. An atlas of genetic associations in UK Biobank. Nat. Genet. 2018, 50, 1593–1599. [Google Scholar] [CrossRef] [PubMed]
  26. Wang, Y.; McKay, J.D.; Rafnar, T.; Wang, Z.; Timofeeva, M.N.; Broderick, P.; Zong, X.; Laplana, M.; Wei, Y.; Han, Y.; et al. Corrigendum: Rare variants of large effect in BRCA2 and CHEK2 affect risk of lung cancer. Nat. Genet. 2017, 49, 651. [Google Scholar] [CrossRef] [Green Version]
  27. Michailidou, K.; Lindstrom, S.; Dennis, J.; Beesley, J.; Hui, S.; Kar, S.; Lemacon, A.; Soucy, P.; Glubb, D.; Rostamianfar, A.; et al. Association analysis identifies 65 new breast cancer risk loci. Nature 2017, 551, 92–94. [Google Scholar] [CrossRef] [Green Version]
  28. Phelan, C.M.; Kuchenbaecker, K.B.; Tyrer, J.P.; Kar, S.P.; Lawrenson, K.; Winham, S.J.; Dennis, J.; Pirie, A.; Riggan, M.J.; Chornokur, G.; et al. Identification of 12 new susceptibility loci for different histotypes of epithelial ovarian cancer. Nat. Genet. 2017, 49, 680–691. [Google Scholar] [CrossRef] [Green Version]
  29. O′Mara, T.A.; Glubb, D.M.; Amant, F.; Annibali, D.; Ashton, K.; Attia, J.; Auer, P.L.; Beckmann, M.W.; Black, A.; Bolla, M.K.; et al. Identification of nine new susceptibility loci for endometrial cancer. Nat. Commun. 2018, 9, 3166. [Google Scholar] [CrossRef]
  30. Schumacher, F.R.; Al Olama, A.A.; Berndt, S.I.; Benlloch, S.; Ahmed, M.; Saunders, E.J.; Dadaev, T.; Leongamornlert, D.; Anokian, E.; Cieza-Borrella, C.; et al. Association analyses of more than 140,000 men identify 63 new prostate cancer susceptibility loci. Nat. Genet. 2018, 50, 928–936. [Google Scholar] [CrossRef] [Green Version]
  31. Kohler, A.; Chen, B.; Gemignani, F.; Elisei, R.; Romei, C.; Figlioli, G.; Cipollini, M.; Cristaudo, A.; Bambi, F.; Hoffmann, P.; et al. Genome-wide association study on differentiated thyroid cancer. J. Clin. Endocrinol. Metab. 2013, 98, E1674–E1681. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  32. Yengo, L.; Sidorenko, J.; Kemper, K.E.; Zheng, Z.; Wood, A.R.; Weedon, M.N.; Frayling, T.M.; Hirschhorn, J.; Yang, J.; Visscher, P.M.; et al. Meta-analysis of genome-wide association studies for height and body mass index in approximately 700000 individuals of European ancestry. Hum. Mol. Genet. 2018, 27, 3641–3649. [Google Scholar] [CrossRef] [PubMed]
  33. Lee, J.J.; Wedow, R.; Okbay, A.; Kong, E.; Maghzian, O.; Zacher, M.; Nguyen-Viet, T.A.; Bowers, P.; Sidorenko, J.; Karlsson Linner, R.; et al. Gene discovery and polygenic prediction from a genome-wide association study of educational attainment in 1.1 million individuals. Nat. Genet. 2018, 50, 1112–1121. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  34. Savage, J.E.; Jansen, P.R.; Stringer, S.; Watanabe, K.; Bryois, J.; de Leeuw, C.A.; Nagel, M.; Awasthi, S.; Barr, P.B.; Coleman, J.R.I.; et al. Genome-wide association meta-analysis in 269,867 individuals identifies new genetic and functional links to intelligence. Nat. Genet. 2018, 50, 912–919. [Google Scholar] [CrossRef] [Green Version]
  35. Liu, M.; Jiang, Y.; Wedow, R.; Li, Y.; Brazel, D.M.; Chen, F.; Datta, G.; Davila-Velderrain, J.; McGuire, D.; Tian, C.; et al. Association studies of up to 1.2 million individuals yield new insights into the genetic etiology of tobacco and alcohol use. Nat. Genet. 2019, 51, 237–244. [Google Scholar] [CrossRef]
  36. Bowden, J.; Del Greco, M.F.; Minelli, C.; Davey Smith, G.; Sheehan, N.; Thompson, J. A framework for the investigation of pleiotropy in two-sample summary data Mendelian randomization. Stat. Med. 2017, 36, 1783–1802. [Google Scholar] [CrossRef] [Green Version]
  37. Bowden, J.; Del Greco, M.F.; Minelli, C.; Davey Smith, G.; Sheehan, N.A.; Thompson, J.R. Assessing the suitability of summary data for two-sample Mendelian randomization analyses using MR-Egger regression: The role of the I2 statistic. Int. J. Epidemiol. 2016, 45, 1961–1974. [Google Scholar] [CrossRef] [Green Version]
  38. Burgess, S.; Scott, R.A.; Timpson, N.J.; Davey Smith, G.; Thompson, S.G.; Consortium, E.-I. Using published data in Mendelian randomization: A blueprint for efficient identification of causal risk factors. Eur. J. Epidemiol. 2015, 30, 543–552. [Google Scholar] [CrossRef] [Green Version]
  39. Burgess, S.; Thompson, S.G. Interpreting findings from Mendelian randomization using the MR-Egger method. Eur. J. Epidemiol. 2017, 32, 377–389. [Google Scholar]
  40. Bowden, J.; Davey Smith, G.; Haycock, P.C.; Burgess, S. Consistent Estimation in Mendelian Randomization with Some Invalid Instruments Using a Weighted Median Estimator. Genet. Epidemiol. 2016, 40, 304–314. [Google Scholar] [CrossRef] [Green Version]
  41. Hartwig, F.P.; Davey Smith, G.; Bowden, J. Robust inference in summary data Mendelian randomization via the zero modal pleiotropy assumption. Int. J. Epidemiol. 2017, 46, 1985–1998. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  42. Verbanck, M.; Chen, C.Y.; Neale, B.; Do, R. Detection of widespread horizontal pleiotropy in causal relationships inferred from Mendelian randomization between complex traits and diseases. Nat. Genet. 2018, 50, 693–698. [Google Scholar] [CrossRef] [PubMed]
  43. Hemani, G.; Zheng, J.; Elsworth, B.; Wade, K.H.; Haberland, V.; Baird, D.; Laurin, C.; Burgess, S.; Bowden, J.; Langdon, R.; et al. The MR-Base platform supports systematic causal inference across the human phenome. Elife 2018, 7, e34408. [Google Scholar] [CrossRef] [PubMed]
  44. Kirkpatrick, J.N.; Hull, S.C.; Fedson, S.; Mullen, B.; Goodlin, S.J. Scarce-Resource Allocation and Patient Triage During the COVID-19 Pandemic: JACC Review Topic of the Week. J. Am. Coll Cardiol 2020, 76, 85–92. [Google Scholar] [CrossRef]
  45. Tian, Y.; Qiu, X.; Wang, C.; Zhao, J.; Jiang, X.; Niu, W.; Huang, J.; Zhang, F. Cancer associates with risk and severe events of COVID-19: A systematic review and meta-analysis. Int. J. Cancer 2021, 148, 363–374. [Google Scholar] [CrossRef]
  46. Xu, J.; Xiao, W.; Shi, L.; Wang, Y.; Yang, H. Is Cancer an Independent Risk Factor for Fatal Outcomes of Coronavirus Disease 2019 Patients? Arch. Med. Res. 2021, 52, 755–760. [Google Scholar] [CrossRef]
  47. Benderra, M.A.; Aparicio, A.; Leblanc, J.; Wassermann, D.; Kempf, E.; Galula, G.; Bernaux, M.; Canellas, A.; Moreau, T.; Bellamine, A.; et al. Clinical Characteristics, Care Trajectories and Mortality Rate of SARS-CoV-2 Infected Cancer Patients: A Multicenter Cohort Study. Cancers 2021, 13, 4749. [Google Scholar] [CrossRef]
  48. Puri, A.; He, L.; Giri, M.; Wu, C.; Zhao, Q. Comparison of comorbidities among severe and non-severe COVID-19 patients in Asian versus non-Asian populations: A systematic review and meta-analysis. Nurs. Open 2022, 9, 733–751. [Google Scholar] [CrossRef]
  49. Giannakoulis, V.G.; Papoutsi, E.; Siempos, I.I. Effect of Cancer on Clinical Outcomes of Patients With COVID-19: A Meta-Analysis of Patient Data. JCO Glob. Oncol. 2020, 6, 799–808. [Google Scholar] [CrossRef]
  50. Antikchi, M.H.; Neamatzadeh, H.; Ghelmani, Y.; Jafari-Nedooshan, J.; Dastgheib, S.A.; Kargar, S.; Noorishadkam, M.; Bahrami, R.; Jarahzadeh, M.H. The Risk and Prevalence of COVID-19 Infection in Colorectal Cancer Patients: A Systematic Review and Meta-analysis. J. Gastrointest Cancer 2021, 52, 73–79. [Google Scholar] [CrossRef]
  51. Han, S.; Zhuang, Q.; Chiang, J.; Tan, S.H.; Chua, G.W.Y.; Xie, C.; Chua, M.L.K.; Soon, Y.Y.; Yang, V.S. Impact of cancer diagnoses on the outcomes of patients with COVID-19: A systematic review and meta-analysis. BMJ Open 2022, 12, e044661. [Google Scholar] [CrossRef] [PubMed]
  52. Au Yeung, S.L.; Li, A.M.; He, B.; Kwok, K.O.; Schooling, C.M. Association of smoking, lung function, and COPD in COVID-19 risk: A 2 step Mendelian randomization study. Addiction 2022. [Google Scholar] [CrossRef] [PubMed]
  53. Au Yeung, S.L.; Zhao, J.V.; Schooling, C.M. Evaluation of glycemic traits in susceptibility to COVID-19 risk: A Mendelian randomization study. BMC Med. 2021, 19, 72. [Google Scholar] [CrossRef] [PubMed]
  54. Leong, A.; Cole, J.B.; Brenner, L.N.; Meigs, J.B.; Florez, J.C.; Mercader, J.M. Cardiometabolic risk factors for COVID-19 susceptibility and severity: A Mendelian randomization analysis. PLoS Med. 2021, 18, e1003553. [Google Scholar] [CrossRef]
  55. Li, J.; Tian, A.; Zhu, H.; Chen, L.; Wen, J.; Liu, W.; Chen, P. Mendelian Randomization Analysis Reveals No Causal Relationship Between Nonalcoholic Fatty Liver Disease and Severe COVID-19. Clin. Gastroenterol. Hepatol. 2022. [Google Scholar] [CrossRef]
  56. Bernard, A.; Cottenet, J.; Bonniaud, P.; Piroth, L.; Arveux, P.; Tubert-Bitter, P.; Quantin, C. Comparison of Cancer Patients to Non-Cancer Patients among COVID-19 Inpatients at a National Level. Cancers 2021, 13, 1436. [Google Scholar] [CrossRef]
  57. Lee, L.Y.; Cazier, J.B.; Angelis, V.; Arnold, R.; Bisht, V.; Campton, N.A.; Chackathayil, J.; Cheng, V.W.; Curley, H.M.; Fittall, M.W.; et al. COVID-19 mortality in patients with cancer on chemotherapy or other anticancer treatments: A prospective cohort study. Lancet 2020, 395, 1919–1926. [Google Scholar] [CrossRef]
  58. Wu, Q.; Luo, S.; Xie, X. The impact of anti-tumor approaches on the outcomes of cancer patients with COVID-19: A meta-analysis based on 52 cohorts incorporating 9231 participants. BMC Cancer 2022, 22, 241. [Google Scholar] [CrossRef]
  59. Lo, C.H.; Nguyen, L.H.; Drew, D.A.; Warner, E.T.; Joshi, A.D.; Graham, M.S.; Anyane-Yeboa, A.; Shebl, F.M.; Astley, C.M.; Figueiredo, J.C.; et al. Race, ethnicity, community-level socioeconomic factors, and risk of COVID-19 in the United States and the United Kingdom. EClinicalMedicine 2021, 38, 101029. [Google Scholar] [CrossRef]
  60. Lee, S.F.; Niksic, M.; Rachet, B.; Sanchez, M.J.; Luque-Fernandez, M.A. Socioeconomic Inequalities and Ethnicity Are Associated with a Positive COVID-19 Test among Cancer Patients in the UK Biobank Cohort. Cancers 2021, 13, 1514. [Google Scholar] [CrossRef]
Figure 1. The overall design of the Mendelian randomization study.
Figure 1. The overall design of the Mendelian randomization study.
Cancers 14 02086 g001
Table 1. Summary of the included data.
Table 1. Summary of the included data.
VariableCasesControlsSample SizeYearGWAS ID
COVID-19COVID-19 susceptibility38,9841,644,7841,683,7682021-
COVID-19 hospitalization99861,877,6721,887,6582021-
COVID-19 severity51011,383,2411,388,3422021-
CancerOverall cancer26,576309,696336,2722017ukb-a-307
Lung cancer11,34815,86127,2092014ieu-a-966
Squamous cell lung cancer327515,03818,3132014ieu-a-967
Breast cancer122,977105,974228,9512017ieu-a-1126
ER+ Breast cancer69,501105,974175,4752017ieu-a-1127
ER− Breast cancer21,468105,974127,4422017ieu-a-1128
Ovarian cancer25,50940,94166,4502017ieu-a-1120
Endometrial cancer12,906108,979121,8852018ebi-a-GCST006464
Prostate cancer79,14861,106140,2542018ieu-b-85
Thyroid cancer64943110802013ieu-a-1082
Melanoma3751372,016375,7672021ieu-b-4969
Small bowel cancer156337,003337,1592017ukb-a-56
Colorectal cancer5657372,016377,6732021ieu-b-4965
Oropharyngeal cancer494372,016372,5102021ieu-b-4968
Lymphoma1752359,442361,1942018ukb-d-C_LYMPHOMA
Cervical cancer3175459,835463,0102018ukb-b-918
CovariatesBMI--681,2752018ieu-b-40
Educational attainment--766,3452018ieu-a-1239
Intelligence--269,8672018ebi-a-GCST006250
Income--397,7512018ukb-b-7408
Smoking--337,3342019ieu-b-25
Alcohol consumption--335,3942019ieu-b-73
Table 2. Causal effects of cancers on COVID-19 severity estimated by univariable Mendelian randomization.
Table 2. Causal effects of cancers on COVID-19 severity estimated by univariable Mendelian randomization.
Cancer TypesNo. of SNPsIVWMR-EggerWeighted MedianWeighted ModeMR-PRESSOHeterogeneityPleiotropy
βSEpβSEpβSEpβSEpβSEppp
Overall cancer4−3.443.610.34112.35104.870.40−1.634.250.700.776.260.91−3.444.110.460.270.33
Lung cancer50.030.070.600.160.250.570.060.080.450.080.080.380.030.060.590.530.58
Squamous cell lung cancer2−0.050.120.66--------------
Breast cancer1090.040.050.430.050.110.610.070.080.390.050.090.560.050.050.310.350.23
ER+ Breast cancer81−0.010.050.790.040.110.700.090.070.200.100.080.240.00010.051.000.130.10
ER− Breast cancer270.030.060.66−0.200.170.25−0.030.090.73−0.070.110.560.030.060.630.290.35
Endometrial cancer120.020.090.79−0.080.360.840.010.130.960.310.260.260.020.090.800.360.38
Prostate cancer91−0.020.040.54−0.150.090.11−0.020.070.74−0.070.070.30−0.020.040.600.07 *0.03 $
Thyroid cancer249−0.0010.0020.70−0.0030.0030.29−0.0030.0030.32−0.0040.0040.27−0.0010.0020.700.330.33
Ovarian cancer90.080.160.62−0.080.410.840.060.110.570.110.120.400.0040.100.96<0.001 *0.01 $
Melanoma6−3.4512.830.79−6.5639.710.88−10.7610.130.29−17.5011.330.18−3.4512.830.800.01 *0.02 $
Small bowel cancer584.0348.790.09−11.30156.920.9543.10 61.670.4840.6079.890.6484.0331.590.060.790.76
Colorectal cancer7−1.055.440.85 1.4519.050.94−1.15 6.940.87−1.768.85 0.85−1.053.460.770.880.89
Oropharyngeal cancer2−52.1951.790.31------------0.95-
Lymphoma2−15.0422.770.51------------0.95-
Cervical cancer2−28.5824.700.25------------0.08 *-
* Significant heterogeneity (p < 0.1); $ significant horizontal pleiotropy (p < 0.05).
Table 3. Causal effects of cancers on COVID-19 hospitalization estimated by univariable Mendelian randomization.
Table 3. Causal effects of cancers on COVID-19 hospitalization estimated by univariable Mendelian randomization.
Cancer TypesNo. of SNPsIVWMR-EggerWeighted MedianWeighted ModeMR-PRESSOHeterogeneityPleiotropy
βSEpβSEpβSEpβSEpβSEppp
Overall cancer4−1.862.320.4222.7061.390.75−2.322.730.40−2.833.810.51−1.861.650.340.680.71
Lung cancer40.040.050.370.290.200.290.060.050.230.070.060.310.040.030.310.660.63
Squamous cell lung cancer2−0.040.08 0.66 ------------0.99 -
Breast cancer1060.010.030.74-0.0030.070.970.010.050.800.020.060.700.020.030.600.200.13
ER+ Breast cancer79−0.020.030.510.040.070.56−0.020.050.710.020.050.77−0.010.030.700.360.22
ER− Breast cancer25−0.0040.040.930.030.120.83−0.030.060.63−0.050.090.59-0.0050.040.900.580.60
Endometrial cancer120.060.050.240.430.210.070.070.080.340.030.110.770.060.060.280.360.37
Prostate cancer900.040.030.17−0.010.060.850.060.040.150.050.050.280.040.030.160.120.07
Thyroid cancer246−0.00030.0010.80−0.0040.0020.04 #−0.00050.0020.790.00020.0020.940.00030.00050.630.06 *0.08
Ovarian cancer90.010.110.96−0.200.280.520.010.080.940.010.080.850.010.040.78<0.001 *<0.001 $
Melanoma6−3.524.620.45−3.6216.930.84−10.086.000.09−11.147.970.22−3.525.600.560.200.26
Small bowel cancer278.9045.540.08------------0.83-
Colorectal cancer70.993.700.797.6713.800.602.914.620.534.045.770.510.992.480.700.850.85
Oropharyngeal cancer------------------
Lymphoma------------------
Cervical cancer2−19.9520.170.32------------0.04 *-
* Significant heterogeneity (p < 0.1); $ significant horizontal pleiotropy (p < 0.05); # potential association (p < 0.05).
Table 4. Causal effects of cancers on COVID-19 susceptibility estimated by univariable Mendelian randomization.
Table 4. Causal effects of cancers on COVID-19 susceptibility estimated by univariable Mendelian randomization.
Cancer TypesNo. of SNPsIVWMR-EggerWeighted MedianWeighted ModeMR-PRESSOHeterogeneityPleiotropy
βSEpβSEpβSEpβSEpβSEppp
Overall cancer40.471.150.69−3.2942.930.95−0.621.380.65−0.781.950.720.471.320.750.270.35
Lung cancer50.0010.020.960.030.080.770.020.030.540.020.030.56 0.000.020.950.540.59
Squamous cell lung cancer2−0.070.04 0.08 ------------0.77 -
Breast cancer109−0.010.020.43−0.010.040.85−0.020.030.44−0.030.030.43−0.010.020.570.260.23
ER+ Breast cancer81−0.020.020.300.010.040.78−0.020.020.38−0.030.03 0.36−0.010.020.500.02 *0.02 $
ER− Breast cancer27−0.030.020.18−0.080.060.19−0.030.030.27−0.050.04 0.24−0.030.020.220.390.46
Endometrial cancer12−0.010.030.830.040.110.69−0.010.030.69−0.020.05 0.69 −0.010.020.760.920.91
Prostate cancer91−0.010.010.58−0.040.030.16−0.030.020.16−0.030.02 0.17 −0.010.010.670.06 *0.05
Thyroid cancer2480.0010.00060.28−0.0000010.0011.000.00010.00090.940.00040.001 0.71 0.00060.00060.280.06 *0.05
Ovarian cancer9−0.010.090.93−0.140.220.54−0.010.040.740.02 0.04 0.68 −0.030.030.39<0.001 *<0.001 $
Melanoma6 0.763.280.829.848.38 0.31 −1.102.970.71−1.113.780.780.763.280.83 0.05 * 0.05
Small bowel cancer423.0917.710.19148.10 80.980.21 5.8520.890.78−2.5929.450.9423.0919.360.32 0.31 0.37
Colorectal cancer71.961.880.308.718.860.371.852.640.486.566.090.321.962.310.43 0.17 0.16
Oropharyngeal cancer2−3.8215.140.80------------0.77 -
Lymphoma2−6.056.790.37------------0.47 -
Cervical cancer2−7.0117.210.68------------<0.001 *-
* Significant heterogeneity (p < 0.1); $ significant horizontal pleiotropy (p < 0.05).
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Li, Z.; Wei, Y.; Zhu, G.; Wang, M.; Zhang, L. Cancers and COVID-19 Risk: A Mendelian Randomization Study. Cancers 2022, 14, 2086. https://doi.org/10.3390/cancers14092086

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Li Z, Wei Y, Zhu G, Wang M, Zhang L. Cancers and COVID-19 Risk: A Mendelian Randomization Study. Cancers. 2022; 14(9):2086. https://doi.org/10.3390/cancers14092086

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Li, Zengbin, Yudong Wei, Guixian Zhu, Mengjie Wang, and Lei Zhang. 2022. "Cancers and COVID-19 Risk: A Mendelian Randomization Study" Cancers 14, no. 9: 2086. https://doi.org/10.3390/cancers14092086

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