OBJECTIVE

Diabetes may unfavorably influence the outcome of coronavirus disease 19 (COVID-19), but the determinants of this effect are still poorly understood. In this monocentric study, we aimed at evaluating the impact of type 2 diabetes, comorbidities, plasma glucose levels, and antidiabetes medications on the survival of COVID-19 patients.

RESEARCH DESIGN AND METHODS

This was a case series involving 387 COVID-19 patients admitted to a single center in the region of Lombardy, the epicenter of the severe acute respiratory syndrome coronavirus 2 pandemic in Italy, between 20 February and 9 April 2020. Medical history, pharmacological treatments, laboratory findings, and clinical outcomes of patients without diabetes and patients with type 2 diabetes were compared. Cox proportional hazards analysis was applied to investigate risk factors associated with mortality.

RESULTS

Our samples included 90 patients (23.3%) with type 2 diabetes, who displayed double the mortality rate of subjects without diabetes (42.3% vs. 21.7%, P < 0.001). In spite of this, after correction for age and sex, risk of mortality was significantly associated with a history of hypertension (adjusted hazard ratio [aHR] 1.84, 95% CI 1.15–2.95; P = 0.011), coronary artery disease (aHR 1.56, 95% CI 1.04–2.35; P = 0.031), chronic kidney disease (aHR 2.07, 95% CI 1.27–3.38; P = 0.003), stroke (aHR 2.09, 95% CI 1.23–3.55; P = 0.006), and cancer (aHR 1.57, 95% CI 1.08–2.42; P = 0.04) but not with type 2 diabetes (P = 0.170). In patients with diabetes, elevated plasma glucose (aHR 1.22, 95% CI 1.04–1.44, per mmol/L; P = 0.015) and IL-6 levels at admission (aHR 2.47, 95% CI 1.28–4.78, per 1-SD increase; P = 0.007) as well as treatment with insulin (aHR 3.05, 95% CI 1.57–5.95; P = 0.001) and β-blockers (aHR 3.20, 95% CI 1.50–6.60; P = 0.001) were independently associated with increased mortality, whereas the use of dipeptidyl peptidase 4 inhibitors was significantly and independently associated with a lower risk of mortality (aHR 0.13, 95% CI 0.02–0.92; P = 0.042).

CONCLUSIONS

Plasma glucose levels at admission and antidiabetes drugs may influence the survival of COVID-19 patients affected by type 2 diabetes.

The novel severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), responsible for the acute respiratory syndrome known as coronavirus disease 19 (COVID-19), first emerged at the end of 2019 in Wuhan, China (1).

After its subsequent global spread, COVID-19 was officially declared a pandemic by the World Health Organization on 11 March 2020 (2). The first confirmed case of COVID-19 in Italy was diagnosed in Lombardy on 20 February 2020. Within a few weeks, several other cases, including a substantial number of critically ill patients, started being diagnosed in the surrounding geographical area (3).

According to the latest report of the Italian National Institute of Health (Istituto Superiore di Sanità), updated on 22 July 2020, 34,142 patients with a diagnosis of SARS-CoV-2 infection died in Italy, 16,776 (49.1%) of them in the region of Lombardy alone (4).

There is convincing evidence that diabetes may unfavorably influence the prognosis of patients with COVID-19 (5,6), as was previously reported in patients with diabetes affected by the closely related coronavirus-induced severe acute respiratory syndrome (SARS) and Middle East respiratory syndrome (MERS) (7,8). This is to be expected, as diabetes is one of the leading causes of morbidity and mortality worldwide and is itself known to prompt a dysregulation in the body’s immune response (912). Conversely, infections are an important cause of morbidity and death in patients with diabetes (13).

The dynamics of increased mortality in COVID-19 patients with diabetes are currently being investigated. Data from Wuhan indicate that COVID-19 patients with diabetes had worse outcomes, mainly attributable to older age and coexisting hypertension (14). Some reports showed an association between metabolic control and survival (15,16), while others found insulin therapy to correlate with worse clinical outcome (17). By contrast, other studies showed no impact of diabetes on the severity of illness and mortality after adjustment for confounding variables (14,18,19). Heterogeneity of study populations may have at least in part influenced the inconsistent results of literature.

In this single-center study carried out in a large research hospital in the south of Milan (Italy), we aimed at evaluating the relationship between diabetes and COVID-19 infection outcome, specifically analyzing the baseline comorbidities, the clinical features, and the possible impact of antidiabetes medications on risk of mortality in this clinical setting.

Study Design

This is a large case series involving 387 patients with diagnosis of COVID-19 infection admitted to the Humanitas Clinical and Research Hospital, IRCCS, between February 20 and 9 April 2020. The institutional ethics committee approved this study, and patients gave standard written informed consent to the use of their anonymized clinical data for research purposes.

Inclusion criteria were 1) age >18 years, 2) nasopharyngeal swab positive for SARS-CoV-2, 3) chest computed tomography (CT) scan suggestive for viral pneumonia, 4) fever and/or respiratory symptoms at the admission, and 5) completed hospital stay before end of study (discharged or deceased). Failure to meet any of the previous criteria was cause for exclusion from the study.

As primary end point of this study, we evaluated the predictive factors of COVID-19–related mortality in patients with type 2 diabetes; as secondary end point, we explored the determinants of mortality in the entire population of COVID-19 patients with diabetes and patients without diabetes. For this purpose, comorbidities, laboratory parameters, prescribed medications, and antidiabetes therapy were evaluated.

Some of the enrolled patients have already been involved in other studies evaluating different end points from the current study (2023).

Data Collection

We collected the following data from our electronic medical records system (wHospital): demographic information, medical and medication history, laboratory tests at admission, chest CT scans, inpatient treatment plan (including maximal supportive oxygen therapy), and clinical outcomes (discharged alive or deceased during hospital stay). Throughout this collection process, we were able to retrieve >95% of the required data for our entire study population.

At the admission, the nasopharyngeal specimens were obtained from the patients and stored in a viral-transport medium, and total RNA was then extracted and examined by RT-PCR according to the manufacturer’s procedure kit (Enlight).

Chest CT scans were evaluated by an experienced team of radiologists and classified as typical for COVID-19 based on radiological findings as previously described (24).

We also collected data from medical records about the following clinical conditions: hypertension, coronary artery disease (CAD), stroke, past or active cancer, chronic obstructive pulmonary disease (COPD), chronic kidney disease (CKD) associated with stages 3–5 kidney failure as defined by estimated glomerular filtration rate (eGFR) <60 mL/min/1.73 m2 (calculated by Chronic Kidney Disease Epidemiology Collaboration equation), and obesity (defined as BMI ≥30 kg/m2).

The following laboratory tests at admission were assessed for each patient: glycemia (mmol/L), creatinine (mg/dL), lymphocyte count (×103/mm3), interleukin-6 (IL-6) (pg/mL), d-dimer (ng/mL), lactate dehydrogenase (LDH) (units/L), ferritin (ng/mL), C-reactive protein (CRP) (mg/dL), and procalcitonin (PCT) (ng/mL).

Procedures

According to the guidelines of the Italian Society of Infectious Disease (25) and to the internal protocol of our hospital, all patients admitted with COVID-19 were treated with a standard therapy consisting of hydroxychloroquine, enoxaparin, antiviral agents (lopinavir/ritonavir), and antibiotics. Steroids were used as a second-line therapy in patients unresponsive to therapy or with disease progression despite treatment with hydroxychloroquine and antiviral agents.

At admission, all oral antidiabetes drugs were discontinued, with the exception of the dipeptidyl peptidase 4 inhibitors (DPP4-I) because of their acceptable safety profile (26), and the patients were prescribed a basal-bolus insulin scheme.

Statistical Analysis

We summarized all continuous variables calculating the mean or median with respective SDs or interquartile ranges (IQR). Categorical variables were expressed both in absolute numbers and their relative prevalence in percentages (%). Differences between groups were analyzed using the χ2 test or Fischer exact test for categorical variables and Student t test or Mann-Whitney U test for continuous variables, as appropriate.

For exploration of the risk factors associated with mortality in the entire population and in the subgroup of patients with type 2 diabetes, a Cox proportional hazards regression model was applied, crude and adjusted for age and sex. We then conducted a separate multivariate Cox analysis to test the independent impact of age ≥70 years, glycemia, CRP, d-dimer, and IL-6 on mortality in the entire population and in the subgroup of patients with type 2 diabetes. The cumulative rates of death were plotted by application of the Kaplan-Meier method.

Statistical analyses were performed with SPSS 13.0. A P value <0.05 was considered statistically significant.

Clinical Characteristics at Admission

Among the 498 consecutive patients admitted to our hospital during the study period, 387 (median age 66 years [IQR 54–76]), 258 male [66.7%]) fulfilled the inclusion criteria of this study and were enrolled.

According to their medical history, 90 (23.3%) patients in the study cohort had preexisting type 2 diabetes, 2 had type 1 diabetes (0.5%), and the remaining 295 (76.2%) did not have diabetes. Patients with type 1 diabetes were excluded from the analysis, eluding the purpose of our study focused on type 2 diabetes. Descriptive characteristics of the study population are reported in Table 1.

Table 1

Demographic, clinical characteristics, laboratory parameters, medications, and outcomes in 385 hospitalized patients with COVID-19 stratified according to the presence of diabetes

No diabetes (n = 295)Diabetes (n = 90)P
Male/female sex 193 (65.4)/102 (34.6) 65 (72.2)/25 (27.8) 0.230 
Age (years) 63 (52–74) 71 (64–78) <0.001 
Comorbidities    
 Hypertension 121 (41) 69 (76.7) <0.001 
 Obesity (BMI >30 kg/m299 (33.7) 43 (47.8) 0.117 
 CAD 50 (16.9) 35 (38.9) <0.001 
 CKD 15 (5.1) 17 (18.9) <0.001 
 COPD 20 (6.8) 14 (15.6) 0.010 
 Stroke 12 (4.1) 15 (16.7) <0.001 
 Cancer 43 (14.6) 19 (21.1) 0.140 
Laboratory findings    
 Glycemia (mmol/L) 5.7 ± 1.4 9.1 ± 3.4 <0.001 
 Creatinine (mg/dL) 0.95 ± 1.1 1.48 ± 1.9 0.001 
 eGFR (mL/min/1.73 m290.1 ± 26.4 72.4 ± 31.2 <0.001 
 Lymphocytes (×103/mm31.1 ± 0.5 1 ± 0.5 0.924 
 IL-6 (pg/mL) 60 ± 99 85 ± 67 0.125 
d-dimer (ng/mL) 1,090 ± 2,721 928 ± 1,681 0.621 
 LDH (units/L) 338 ± 152 333 ± 131 0.792 
 Ferritin (ng/mL) 634 ± 579 591 ± 505 0.574 
 CRP (mg/dL) 9.4 ± 7.7 11 ± 7.5 0.900 
 PCT (ng/mL) 0.51 ± 1.2 0.49 ± 0.8 0.905 
Medications    
 Lipid-lowering drugs 43 (14.6) 29 (32.2) <0.001 
 Antiplatelet/anticoagulant 66 (22.4) 41 (45.6) <0.001 
 ACE-I/ARB 72 (24.4) 40 (44.4) <0.001 
 Calcium channel blockers 26 (8.8) 28 (31.1) <0.001 
 β-Blockers 63 (21.3) 33 (36.6) 0.003 
 Diuretics 30 (10.1) 25 (27.7) <0.001 
O2 therapy    
 Supplemental O2 156 (52.8) 40 (44.4) 0.168 
 Noninvasive mechanical ventilation 38 (12.9) 24 (26.7) 0.002 
 Invasive ventilation 25 (8.5) 5 (5.6) 0.366 
Length of hospitalization (days) 8 (6–12) 9 (6–11.75) 0.600 
Mortality 64 (21.7) 38 (42.3) <0.001 
No diabetes (n = 295)Diabetes (n = 90)P
Male/female sex 193 (65.4)/102 (34.6) 65 (72.2)/25 (27.8) 0.230 
Age (years) 63 (52–74) 71 (64–78) <0.001 
Comorbidities    
 Hypertension 121 (41) 69 (76.7) <0.001 
 Obesity (BMI >30 kg/m299 (33.7) 43 (47.8) 0.117 
 CAD 50 (16.9) 35 (38.9) <0.001 
 CKD 15 (5.1) 17 (18.9) <0.001 
 COPD 20 (6.8) 14 (15.6) 0.010 
 Stroke 12 (4.1) 15 (16.7) <0.001 
 Cancer 43 (14.6) 19 (21.1) 0.140 
Laboratory findings    
 Glycemia (mmol/L) 5.7 ± 1.4 9.1 ± 3.4 <0.001 
 Creatinine (mg/dL) 0.95 ± 1.1 1.48 ± 1.9 0.001 
 eGFR (mL/min/1.73 m290.1 ± 26.4 72.4 ± 31.2 <0.001 
 Lymphocytes (×103/mm31.1 ± 0.5 1 ± 0.5 0.924 
 IL-6 (pg/mL) 60 ± 99 85 ± 67 0.125 
d-dimer (ng/mL) 1,090 ± 2,721 928 ± 1,681 0.621 
 LDH (units/L) 338 ± 152 333 ± 131 0.792 
 Ferritin (ng/mL) 634 ± 579 591 ± 505 0.574 
 CRP (mg/dL) 9.4 ± 7.7 11 ± 7.5 0.900 
 PCT (ng/mL) 0.51 ± 1.2 0.49 ± 0.8 0.905 
Medications    
 Lipid-lowering drugs 43 (14.6) 29 (32.2) <0.001 
 Antiplatelet/anticoagulant 66 (22.4) 41 (45.6) <0.001 
 ACE-I/ARB 72 (24.4) 40 (44.4) <0.001 
 Calcium channel blockers 26 (8.8) 28 (31.1) <0.001 
 β-Blockers 63 (21.3) 33 (36.6) 0.003 
 Diuretics 30 (10.1) 25 (27.7) <0.001 
O2 therapy    
 Supplemental O2 156 (52.8) 40 (44.4) 0.168 
 Noninvasive mechanical ventilation 38 (12.9) 24 (26.7) 0.002 
 Invasive ventilation 25 (8.5) 5 (5.6) 0.366 
Length of hospitalization (days) 8 (6–12) 9 (6–11.75) 0.600 
Mortality 64 (21.7) 38 (42.3) <0.001 

Categorical data n (%), and continuous data are means ± SD or median (IQR).

Patients with type 2 diabetes were older (median age 71 years old [IQR 64–78] vs. 63 years old [IQR 52–74], P < 0.001); had a higher prevalence of hypertension (76.7% vs. 41.0%, P < 0.001), CAD (38.9% vs. 16.9%, P < 0.001), CKD (18.9% vs. 5.1%, P < 0.001), COPD (15.6% vs. 6.8%, P = 0.010), and stroke (16.7% vs. 4.1%, P < 0.001); had higher plasma glucose (9.1 ± 3.4 vs. 5.7 ± 1.4 mmol/L, P < 0.001), higher serum creatinine (1.48 ± 1.9 vs. 0.95 ± 1.1 mg/dL, P = 0.001), and lower eGFR (72.4 ± 31.2 vs. 90.1 ± 26.4 mL/min/1.73 m2, P < 0.001); and were more likely to take lipid-lowering medications (P < 0.001), antiplatelet/anticoagulant (P < 0.001) and antihypertensive drugs (P from 0.003 to <0.001) compared with patients without diabetes, without any significant differences in regard to sex, inflammatory parameters, and prevalence of obesity and cancer.

In patients with type 2 diabetes, metformin was the most frequently administered antidiabetes medication, prescribed to 76.0% of the patients, followed by insulin (32.0%), DPP4-I (12.2%), sulfonylureas (11.1%), glucagon-like peptide 1 receptor agonists (GLP-1 RA) (6.7%), sodium–glucose cotransporter 2 inhibitors (SGLT2-I) (5.6%), and pioglitazone (1.1%).

Outcomes

All of the COVID-19 patients received a treatment comprising hydroxychloroquine, enoxaparin, antiviral agents (lopinavir/ritonavir), and antibiotics. A total of 102 (26.4%) patients were also treated with steroids, with no difference between patients without diabetes and patients with diabetes (P = 0.093).

A total of 196 (50.9%) patients received supplemental O2 during hospitalization, without significant difference between patients with diabetes and patients without diabetes (P = 0.168), while escalation to noninvasive mechanical ventilation occurred in 62 (16%) patients and was more frequent in patients with diabetes versus patients without diabetes (26.7% vs. 12.9%, P = 0.002). Invasive ventilation was required for 30 (7.7%) patients, without significant difference between the two groups (P = 0.366) (Table 1). The overall median length of stay was 8 days (range 1–31), with a comparable duration in the two groups (P = 0.600) (Table 1). The in-hospital mortality rate in patients with type 2 diabetes was double that of patients without diabetes (42.3% vs. 21.7%, P < 0.001) (Table 1).

The Kaplan-Meier survival curve of patients stratified by diabetes is shown in Fig. 1 (P = 0.002).

Figure 1

Survival curve of COVID-19 patients stratified by the presence of diabetes (P = 0.002).

Figure 1

Survival curve of COVID-19 patients stratified by the presence of diabetes (P = 0.002).

Close modal

Risk Factors Associated With Mortality in the Entire Study Population

In the univariate Cox analysis, age ≥70 years, diabetes, hypertension, CAD, CKD, stroke, cancer, and treatment with lipid-lowering drugs, calcium channel blockers, β-blockers, and diuretics, as well as all biochemical laboratory parameters except ferritin, were associated with a higher mortality rate (Table 2). After adjustment for age and sex, hypertension (adjusted hazard ratio [aHR] 1.84, 95% CI 1.15–2.95; P = 0.011), CAD (aHR 1.56, 95% CI 1.04–2.35; P = 0.031), CKD (aHR 2.07, 95% CI 1.27–3.38; P = 0.003), stroke (aHR 2.09, 95% CI 1.23–3.55; P = 0.006), cancer (aHR 1.57, 95% CI 1.08–2.42; P = 0.042), glycemia (aHR 1.007, 95% CI 1.004–1.010, per mmol/L; P < 0.001), creatinine (aHR 1.17, 95% CI 1.08–1.27, per mg/dL; P < 0.001), IL-6 (aHR 3.22, 95% CI 2.05–5.05, per 1-SD increase; P < 0.001), d-dimer (aHR 2.25, 95% CI 1.66–3.04, per 1-SD increase; P = 0.001), LDH (aHR 1.68, 95% CI 1.32–2.13, per 1-SD increase; P < 0.001), CRP (aHR 1.06, 95% CI 1.03–1.08, per mg/dL; P < 0.001), and PCT (aHR 1.07, 95% CI 1.03–1.10, per ng/mL; P < 0.001) retained a significant and independent association with a higher mortality risk, whereas the association with type 2 diabetes was lost (Table 2).

Table 2

Results of Cox regression analysis evaluating the determinants of COVID-related mortality risk in the entire population of 385 patients and in the subgroup of 90 patients with type 2 diabetes

All patients (n = 385)Patients with type 2 diabetes (n = 90)
Unadjusted HR (95% CI)Adjusted HR (95% CI)aUnadjusted HR (95% CI)Adjusted HR (95% CI)a
Age ≥70 years 5.73 (3.54–9.26)*  2.76 (1.30–5.86)*  
Sex (female vs. male) 0.94 (0.62–1.43)  1.06 (0.51–2.18)  
Diabetes 1.84 (1.23–2.76)* 1.33 (0.88–2.0) — — 
Hypertension 3.02 (1.92–4.76)* 1.84 (1.15–2.95)* 2.33 (0.91–5.97) 2.20 (0.85–5.70) 
Obesity (BMI >30 kg/m21.12 (0.69–1.82) 1.33 (0.81–2.18) 1.3 (0.6–2.7) 1.61 (0.72–3.60) 
CAD 2.58 (1.74–3.83)* 1.56 (1.04–2.35)* 1.93 (1.01–3.68)* 1.75 (0.90–3.38) 
CKD 3.10 (1.90–5.05)* 2.07 (1.27–3.38)* 2.2 (1.09–4.47)* 2.06 (1.01–4.21) 
Stroke 3.04 (1.81–5.13)* 2.09 (1.23–3.55)* 1.75 (0.84–3.61) 1.54 (0.74–3.23) 
COPD 1.41 (0.81–2.46) 0.95 (0.54–1.66) 1.53 (0.7–3.35) 1.18 (0.52–2.67) 
Cancer 2.58 (1.70–3.93)* 1.57 (1.08–2.42)* 1.67 (0.82–3.41) 1.16 (0.54–2.47) 
Lipid-lowering drugs 1.8 (1.2–2.7)* 1.1 (0.7–1.8) 1.3 (0.6–2.6) 1.3 (0.6–2.6) 
Antiplatelet/anticoagulant 1.4 (0.9–2.2) 0.8 (0.5–1.2) 1.1 (0.5–2.2) 1 (0.5–2.0) 
ACE-I/ARB 1.2 (0.8–1.9) 0.8 (0.5–1.3) 0.8 (0.4–1.6) 0.7 (0.3–1.4) 
Calcium channel blockers 1.8 (1.1–2.9)* 1.3 (0.8–2.0) 1.8 (0.9–3.6) 1.7 (0.8–3.6) 
β-Blockers 1.6 (1–2.4)* 1.2 (0.8–1.9) 3.1 (1.5–6.4)* 3.21 (1.5–6.6)* 
Diuretics 2 (1.2–3.1)* 1.3 (0.8–2.0) 1.6 (0.8–3.3) 1.4 (0.7–2.9) 
Insulin   3.34 (1.74–6.41)* 3.05 (1.57–5.95)* 
Metformin   0.43 (0.21–0.85)* 0.55 (0.27–1.11) 
Sulfonylureas   0.34 (0.08–1.42) 0.28 (0.06–1.20) 
DPP4-I   0.14 (0.02–1.01) 0.13 (0.02–0.92)* 
SGLT2-I   NA NA 
GLP-1 RA   NA NA 
Pioglitazone   NA NA 
Glycemia (mmol/L) 1.007 (1.003–1.010)* 1.007 (1.004–1.010)* 1.003 (0.998–1.008) 1.004 (0.999–1.010) 
Creatinine (mg/dL) 1.2 (1.1–1.3)* 1.17 (1.08–1.27)* 1 (0.9–1.2) 1.09 (0.96–1.24) 
Lymphocytes (×103/mm30.60 (0.40–0.89)* 0.74 (0.5–1.1) 0.28 (0.13–0.61)* 0.27 (0.11–0.64)* 
IL-6 (per 1-SD increase) 3.23 (2.16–4.84)* 3.22 (2.05–5.05)* 2.1 (1.21–3.64)* 2.02 (1.15–3.56)* 
d-dimer (per 1-SD increase) 2.49 (1.86–3.34)* 2.25 (1.66–3.04)* 1.54 (0.96–2.46) 1.32 (0.81–2.14) 
LDH (per 1-SD increase) 1.62 (1.27–2.05)* 1.68 (1.32–2.13)* 1.53 (1.01–2.33)* 1.56 (1.05–2.33)* 
Ferritin (per 1-SD increase) 1.33 (0.96–1.85) 1.42 (0.99–2) 1.58 (0.92–2.7) 1.71 (0.96–3.04) 
CRP (mg/dL) 1.05 (1.03–1.08)* 1.06 (1.03–1.08)* 1.04 (1.00–1.08)* 1.04 (0.99–1.09) 
PCT (ng/mL) 1.08 (1.06–1.11)* 1.07 (1.03–1.1)* 1.08 (1.02–1.15)* 1.28 (0.97–1.69) 
 Multivariate HR (95% CI) 
All patients Patients with type 2 diabetes 
Age ≥70 years 7.24 (2.76–19.00)* 3.23 (0.70–14.88) 
Glycemia (mmol/L) 1.006 (1.001–1.011)* 1.22 (1.04–1.44)* 
IL-6 (per 1-SD increase) 2.58 (1.44–4.63)* 2.47 (1.28–4.78)* 
d-dimer (per 1-SD increase) 2.03 (1.08–3.80)* 1.89 (0.81–4.39) 
CRP (mg/dL) 0.98 (0.92–1.05) 0.93 (0.85–1.01) 
All patients (n = 385)Patients with type 2 diabetes (n = 90)
Unadjusted HR (95% CI)Adjusted HR (95% CI)aUnadjusted HR (95% CI)Adjusted HR (95% CI)a
Age ≥70 years 5.73 (3.54–9.26)*  2.76 (1.30–5.86)*  
Sex (female vs. male) 0.94 (0.62–1.43)  1.06 (0.51–2.18)  
Diabetes 1.84 (1.23–2.76)* 1.33 (0.88–2.0) — — 
Hypertension 3.02 (1.92–4.76)* 1.84 (1.15–2.95)* 2.33 (0.91–5.97) 2.20 (0.85–5.70) 
Obesity (BMI >30 kg/m21.12 (0.69–1.82) 1.33 (0.81–2.18) 1.3 (0.6–2.7) 1.61 (0.72–3.60) 
CAD 2.58 (1.74–3.83)* 1.56 (1.04–2.35)* 1.93 (1.01–3.68)* 1.75 (0.90–3.38) 
CKD 3.10 (1.90–5.05)* 2.07 (1.27–3.38)* 2.2 (1.09–4.47)* 2.06 (1.01–4.21) 
Stroke 3.04 (1.81–5.13)* 2.09 (1.23–3.55)* 1.75 (0.84–3.61) 1.54 (0.74–3.23) 
COPD 1.41 (0.81–2.46) 0.95 (0.54–1.66) 1.53 (0.7–3.35) 1.18 (0.52–2.67) 
Cancer 2.58 (1.70–3.93)* 1.57 (1.08–2.42)* 1.67 (0.82–3.41) 1.16 (0.54–2.47) 
Lipid-lowering drugs 1.8 (1.2–2.7)* 1.1 (0.7–1.8) 1.3 (0.6–2.6) 1.3 (0.6–2.6) 
Antiplatelet/anticoagulant 1.4 (0.9–2.2) 0.8 (0.5–1.2) 1.1 (0.5–2.2) 1 (0.5–2.0) 
ACE-I/ARB 1.2 (0.8–1.9) 0.8 (0.5–1.3) 0.8 (0.4–1.6) 0.7 (0.3–1.4) 
Calcium channel blockers 1.8 (1.1–2.9)* 1.3 (0.8–2.0) 1.8 (0.9–3.6) 1.7 (0.8–3.6) 
β-Blockers 1.6 (1–2.4)* 1.2 (0.8–1.9) 3.1 (1.5–6.4)* 3.21 (1.5–6.6)* 
Diuretics 2 (1.2–3.1)* 1.3 (0.8–2.0) 1.6 (0.8–3.3) 1.4 (0.7–2.9) 
Insulin   3.34 (1.74–6.41)* 3.05 (1.57–5.95)* 
Metformin   0.43 (0.21–0.85)* 0.55 (0.27–1.11) 
Sulfonylureas   0.34 (0.08–1.42) 0.28 (0.06–1.20) 
DPP4-I   0.14 (0.02–1.01) 0.13 (0.02–0.92)* 
SGLT2-I   NA NA 
GLP-1 RA   NA NA 
Pioglitazone   NA NA 
Glycemia (mmol/L) 1.007 (1.003–1.010)* 1.007 (1.004–1.010)* 1.003 (0.998–1.008) 1.004 (0.999–1.010) 
Creatinine (mg/dL) 1.2 (1.1–1.3)* 1.17 (1.08–1.27)* 1 (0.9–1.2) 1.09 (0.96–1.24) 
Lymphocytes (×103/mm30.60 (0.40–0.89)* 0.74 (0.5–1.1) 0.28 (0.13–0.61)* 0.27 (0.11–0.64)* 
IL-6 (per 1-SD increase) 3.23 (2.16–4.84)* 3.22 (2.05–5.05)* 2.1 (1.21–3.64)* 2.02 (1.15–3.56)* 
d-dimer (per 1-SD increase) 2.49 (1.86–3.34)* 2.25 (1.66–3.04)* 1.54 (0.96–2.46) 1.32 (0.81–2.14) 
LDH (per 1-SD increase) 1.62 (1.27–2.05)* 1.68 (1.32–2.13)* 1.53 (1.01–2.33)* 1.56 (1.05–2.33)* 
Ferritin (per 1-SD increase) 1.33 (0.96–1.85) 1.42 (0.99–2) 1.58 (0.92–2.7) 1.71 (0.96–3.04) 
CRP (mg/dL) 1.05 (1.03–1.08)* 1.06 (1.03–1.08)* 1.04 (1.00–1.08)* 1.04 (0.99–1.09) 
PCT (ng/mL) 1.08 (1.06–1.11)* 1.07 (1.03–1.1)* 1.08 (1.02–1.15)* 1.28 (0.97–1.69) 
 Multivariate HR (95% CI) 
All patients Patients with type 2 diabetes 
Age ≥70 years 7.24 (2.76–19.00)* 3.23 (0.70–14.88) 
Glycemia (mmol/L) 1.006 (1.001–1.011)* 1.22 (1.04–1.44)* 
IL-6 (per 1-SD increase) 2.58 (1.44–4.63)* 2.47 (1.28–4.78)* 
d-dimer (per 1-SD increase) 2.03 (1.08–3.80)* 1.89 (0.81–4.39) 
CRP (mg/dL) 0.98 (0.92–1.05) 0.93 (0.85–1.01) 

HR, hazard ratio; NA, not assessed.

a

Adjusted for age and sex.

*

P < 0.05.

Not assessed because of small numbers (SGLT2-I n = 5, GLP-1 RA n = 6, pioglitazone n = 1).

In the multivariate analysis including biochemical laboratory parameters, age ≥70 years (HR 7.24, 95% CI 2.76–19.00; P < 0.001), high glycemia (HR 1.006, 95% CI 1.001–1.011, per mmol/L; P = 0.017), high IL-6 (HR 2.58, 95% CI 1.44–4.63, per 1-SD increase; P = 0.001), and d-dimer (HR 2.03, 95% CI 1.08–3.80, per 1-SD increase; P = 0.027) were significantly associated with higher risk of mortality (Table 2).

Risk Factors Associated With Mortality in Patients With Type 2 Diabetes

In the univariate Cox analysis, age ≥70 years, CAD, CKD, treatments with β-blockers or insulin, lower lymphocyte count, and higher IL-6, LDH, CRP, and PCT levels were associated with higher mortality, whereas the use of metformin or DPP4-I was associated with a lower mortality rate (Table 2). After adjustment for sex and age, β-blockers (aHR 3.21, 95% CI 1.50–6.60; P < 0.001), insulin (aHR 3.05, 95% CI 1.57–5.95; P < 0.001), lower lymphocyte count (aHR 0.27, 95% CI 0.11–0.64, per 103/mm3; P = 0.003), higher IL-6 (aHR 2.02, 95% CI 1.15–3.56, per 1-SD increase; P = 0.015), and LDH (aHR 1.56, 95% CI 1.05–2.33, per 1-SD increase; P = 0.029) were still significantly associated with higher mortality, whereas the use of DPP4-I was independently associated with a significant reduction of mortality risk (aHR 0.13, 95% CI 0.02–0.92; P = 0.042) (Table 2). With regard to comorbidity, there was a trend of association between CKD and mortality risk after adjustment for age and sex (aHR 2.06, 95% CI 1.01–4.21; P = 0.056) (Table 2).

In the multivariate analysis including biochemical parameters, higher glycemia (HR 1.22, 95% CI 1.04–1.44, per mmol/L; P = 0.015) and IL-6 (HR 2.47, 95% CI 1.28–4.78, per 1-SD increase; P = 0.007) were independent risk factors for mortality (Table 2).

In Table 3, we report the clinical features of patients with type 2 diabetes grouped by glucose-lowering drugs. The group treated with insulin was more likely to have higher levels of IL-6 (P = 0.026) and PCT (P = 0.034), a greater prevalence of CKD (P = 0.014), and requirement of invasive (P = 0.019) or noninvasive (P = 0.010) mechanical ventilation. Fewer patients in this group were prescribed ACE inhibitors (ACE-I)/angiotensin receptor blockers (ARB) (P = 0.012), metformin (P = 0.006), or DPP4-I (P = 0.012) than in the group not treated with insulin. DPP4-I users needed noninvasive mechanical ventilation less frequently (P = 0.029) compared with the nonusers. Notably, none of the DPP4-I users were taking insulin (P = 0.006 vs. non–DPP4-I users). No significant differences in age, glycemia, comorbidities, or inflammatory parameters were found between DPP4-I users and nonusers.

Table 3

Clinical features of 90 patients with type 2 diabetes stratified by glucose-lowering drugs

InsulinMetforminDPP4-ISulfonylureas
YesNoYesNoYesNoYesNo
n 29 61 69 21 11 79 10 80 
Sex (male) 21 (72.4) 44 (72.1) 50 (72.5) 15 (71.4) 10 (90.9) 55 (69.6) 6 (60) 59 (73.8) 
Age (years) 72 ± 10 70 ± 13 69 ± 13 75 ± 8 70 ± 13 71 ± 12 75 ± 8 70 ± 12 
Glycemia (mmol/L) 9.5 ± 4.3 8.9 ± 3.0 9.0 ± 3.2 9.4 ± 4.2 9.8 ± 3.2 9.0 ± 3.5 8.4 ± 2.8 9.2 ± 3.5 
Creatinine (mg/dL) 1.8 ± 2.3 1.3 ± 1.7 1.8 ± 2.5 1.3 ± 1.7 0.9 ± 0.4 1.5 ± 2 0.7 ± 0.2 1.5 ± 2 
Lymphocytes (×103/mm30.97 ± 0.5 1.13 ± 0.6 1.1 ± 0.6 1.0 ± 0.5 1.2 ± 0.3 1.0 ± 0.6 1.0 ± 0.5 1.1 ± 0.6 
IL-6 (pg/mL) 120 ± 80 72 ± 57 77 ± 60 114 ± 84 56 ± 41 90 ± 69 72 ± 38 88 ± 70 
d-dimer (ng/mL) 2,459 ± 8,150 969 ± 1,946 985 ± 1,862 3,102 ± 9,878 468 ± 176 1,574 ± 5,172 510 ± 330 1,554 ± 5,136 
LDH (units/L) 318 ± 97 365 ± 180 316 ± 107 391 ± 183 290 ± 88 340 ± 136 293 ± 60 338 ± 137 
Ferritin (ng/mL) 797 ± 846 550 ± 414 586 ± 465 778 ± 915 467 ± 449 649 ± 608 757 ± 512 615 ± 602 
CRP (mg/dL) 12.1 ± 9.1 11.2 ± 7.8 11.5 ± 8.1 11.6 ± 8.8 9.2 ± 6.7 11.8 ± 8.4 17.1 ± 8.0 10.8 ± 8.0 
PCT (ng/mL) 1.9 ± 6.2 0.4 ± 0.8 0.9 ± 4.0 0.7 ± 1.0 0.3 ± 0.3 1.0 ± 3.8 0.3 ± 0.2 1.0 ± 3.8 
Hypertension 23 (79.3) 46 (75.4) 50 (72.5) 19 (90.5) 6 (54.6) 63 (79.8) 8 (80) 61 (76.3) 
Obesity (BMI >30 kg/m215 (51.7) 28 (45.9) 33 (47.8) 10 (47.6) 3 (27.3) 40 (50.6) 5 (50) 38 (47.5) 
CAD 15 (51.7) 20 (32.8) 22 (31.9) 13 (61.9) 6 (54.6) 29 (36.7) 2 (20) 33 (41.3) 
CKD 9 (31.0) 8 (13.1) 8 (11.6) 9 (42.9) 2 (18.2) 15 (19.0) 17 (21.39 
COPD 5 (17.2) 9 (14.8) 10 (14.5) 4 (19.1) 2 (18.2) 12 (15.2) 2 (20) 12 (15.0) 
Stroke 4 (13.8) 11 (18.0) 11 (15.9) 4 (19.1) 15 (19.0) 15 (18.8) 
Cancer 9 (31.0) 10 (16.4) 13 (18.8) 6 (28.6) 19 (24.1) 4 (40) 15 (18.8) 
Mortality 19 (65.5) 19 (31.2) 25 (36.2) 13 (61.9) 1 (9.1) 37 (46.8) 3 (30) 35 (43.8) 
Length of stay (days) 7.3 ± 4.3 10.5 ± 5.3 10.0 ± 5.4 7.5 ± 3.8 12.7 ± 5.2 9.0 ± 5.1 12.5 ± 7.8 9.1 ± 4.7 
No O2 support 2 (6.9) 16 (26.2) 18 (26.1) 0 2 (18.2) 16 (20.3) 1 (10) 17 (21.3) 
O2 supplemental 10 (34.5) 30 (49.2) 32 (46.4) 8 (38.1) 6 (54.5) 34 (43) 5 (50) 35 (43.8) 
Noninvasive mechanical ventilation 13 (44.8) 12 (19.7) 15 (21.7) 10 (47.6) 2 (18.2) 23 (29.1) 3 (30) 22 (27.5) 
Invasive ventilation 4 (13.8) 3 (4.9) 4 (5.8) 3 (14.3) 1 (9.1) 6 (7.6) 1 (10) 6 (7.5) 
Lipid lowering 8 (28.6) 21 (35.6) 20 (30.3) 9 (42.9) 3 (30) 26 (33.8) 1 (10) 28 (36.4) 
Antiplatelet/anticoagulant 17 (60.7) 24 (40.7) 28 (42.4) 13 (61.9) 6 (60) 35 (45.5) 2 (20) 39 (50.6) 
ACE-I/ARB 7 (26.9) 33 (57.9) 31 (48.4) 9 (47.4) 4 (40) 36 (49.3) 5 (50) 35 (47.3) 
Calcium channel blockers 12 (46.2) 16 (28.1) 17 (26.6) 11 (57.9) 3 (30) 25 (34.2) 1 (10) 27 (36.5) 
β-Blockers 13 (50) 20 (35.1) 24 (37.5) 9 (47.4) 4 (40) 29 (39.7) 3 (33) 30 (40.5) 
Diuretics 10 (38.5) 15 (26.3) 17 (26.6) 8 (42.1) 2 (20) 23 (31.5) 25 (33) 
Insulin — — 11 (15.9) 18 (85.7) 0 29 (36.7) 2 (20) 27 (33.8) 
Metformin 11 (37.9) 58 (95.1) — — 10 (90.9) 59 (74.7) 8 (80) 61 (76.3) 
Sulfonylureas 2 (6.9) 8 (13.1) 8 (11.6) 2 (9.5) 10 (12.7) — — 
DPP4-I 0 11 (18.0) 10 (14.5) 1 (4.7) — — 11 (13.8) 
SGLT2-I 2 (6.9) 3 (4.9) 4 (5.8) 1 (4.8) 5 (6.3) 5 (6.3) 
GLP-1 RA 2 (6.9) 4 (6.6) 6 (8.7) 6 (7.6) 1 (10) 5 (6.3) 
Pioglitazone 1 (1.6) 1 (1.5) 1 (1.3) 1 (1.3) 
InsulinMetforminDPP4-ISulfonylureas
YesNoYesNoYesNoYesNo
n 29 61 69 21 11 79 10 80 
Sex (male) 21 (72.4) 44 (72.1) 50 (72.5) 15 (71.4) 10 (90.9) 55 (69.6) 6 (60) 59 (73.8) 
Age (years) 72 ± 10 70 ± 13 69 ± 13 75 ± 8 70 ± 13 71 ± 12 75 ± 8 70 ± 12 
Glycemia (mmol/L) 9.5 ± 4.3 8.9 ± 3.0 9.0 ± 3.2 9.4 ± 4.2 9.8 ± 3.2 9.0 ± 3.5 8.4 ± 2.8 9.2 ± 3.5 
Creatinine (mg/dL) 1.8 ± 2.3 1.3 ± 1.7 1.8 ± 2.5 1.3 ± 1.7 0.9 ± 0.4 1.5 ± 2 0.7 ± 0.2 1.5 ± 2 
Lymphocytes (×103/mm30.97 ± 0.5 1.13 ± 0.6 1.1 ± 0.6 1.0 ± 0.5 1.2 ± 0.3 1.0 ± 0.6 1.0 ± 0.5 1.1 ± 0.6 
IL-6 (pg/mL) 120 ± 80 72 ± 57 77 ± 60 114 ± 84 56 ± 41 90 ± 69 72 ± 38 88 ± 70 
d-dimer (ng/mL) 2,459 ± 8,150 969 ± 1,946 985 ± 1,862 3,102 ± 9,878 468 ± 176 1,574 ± 5,172 510 ± 330 1,554 ± 5,136 
LDH (units/L) 318 ± 97 365 ± 180 316 ± 107 391 ± 183 290 ± 88 340 ± 136 293 ± 60 338 ± 137 
Ferritin (ng/mL) 797 ± 846 550 ± 414 586 ± 465 778 ± 915 467 ± 449 649 ± 608 757 ± 512 615 ± 602 
CRP (mg/dL) 12.1 ± 9.1 11.2 ± 7.8 11.5 ± 8.1 11.6 ± 8.8 9.2 ± 6.7 11.8 ± 8.4 17.1 ± 8.0 10.8 ± 8.0 
PCT (ng/mL) 1.9 ± 6.2 0.4 ± 0.8 0.9 ± 4.0 0.7 ± 1.0 0.3 ± 0.3 1.0 ± 3.8 0.3 ± 0.2 1.0 ± 3.8 
Hypertension 23 (79.3) 46 (75.4) 50 (72.5) 19 (90.5) 6 (54.6) 63 (79.8) 8 (80) 61 (76.3) 
Obesity (BMI >30 kg/m215 (51.7) 28 (45.9) 33 (47.8) 10 (47.6) 3 (27.3) 40 (50.6) 5 (50) 38 (47.5) 
CAD 15 (51.7) 20 (32.8) 22 (31.9) 13 (61.9) 6 (54.6) 29 (36.7) 2 (20) 33 (41.3) 
CKD 9 (31.0) 8 (13.1) 8 (11.6) 9 (42.9) 2 (18.2) 15 (19.0) 17 (21.39 
COPD 5 (17.2) 9 (14.8) 10 (14.5) 4 (19.1) 2 (18.2) 12 (15.2) 2 (20) 12 (15.0) 
Stroke 4 (13.8) 11 (18.0) 11 (15.9) 4 (19.1) 15 (19.0) 15 (18.8) 
Cancer 9 (31.0) 10 (16.4) 13 (18.8) 6 (28.6) 19 (24.1) 4 (40) 15 (18.8) 
Mortality 19 (65.5) 19 (31.2) 25 (36.2) 13 (61.9) 1 (9.1) 37 (46.8) 3 (30) 35 (43.8) 
Length of stay (days) 7.3 ± 4.3 10.5 ± 5.3 10.0 ± 5.4 7.5 ± 3.8 12.7 ± 5.2 9.0 ± 5.1 12.5 ± 7.8 9.1 ± 4.7 
No O2 support 2 (6.9) 16 (26.2) 18 (26.1) 0 2 (18.2) 16 (20.3) 1 (10) 17 (21.3) 
O2 supplemental 10 (34.5) 30 (49.2) 32 (46.4) 8 (38.1) 6 (54.5) 34 (43) 5 (50) 35 (43.8) 
Noninvasive mechanical ventilation 13 (44.8) 12 (19.7) 15 (21.7) 10 (47.6) 2 (18.2) 23 (29.1) 3 (30) 22 (27.5) 
Invasive ventilation 4 (13.8) 3 (4.9) 4 (5.8) 3 (14.3) 1 (9.1) 6 (7.6) 1 (10) 6 (7.5) 
Lipid lowering 8 (28.6) 21 (35.6) 20 (30.3) 9 (42.9) 3 (30) 26 (33.8) 1 (10) 28 (36.4) 
Antiplatelet/anticoagulant 17 (60.7) 24 (40.7) 28 (42.4) 13 (61.9) 6 (60) 35 (45.5) 2 (20) 39 (50.6) 
ACE-I/ARB 7 (26.9) 33 (57.9) 31 (48.4) 9 (47.4) 4 (40) 36 (49.3) 5 (50) 35 (47.3) 
Calcium channel blockers 12 (46.2) 16 (28.1) 17 (26.6) 11 (57.9) 3 (30) 25 (34.2) 1 (10) 27 (36.5) 
β-Blockers 13 (50) 20 (35.1) 24 (37.5) 9 (47.4) 4 (40) 29 (39.7) 3 (33) 30 (40.5) 
Diuretics 10 (38.5) 15 (26.3) 17 (26.6) 8 (42.1) 2 (20) 23 (31.5) 25 (33) 
Insulin — — 11 (15.9) 18 (85.7) 0 29 (36.7) 2 (20) 27 (33.8) 
Metformin 11 (37.9) 58 (95.1) — — 10 (90.9) 59 (74.7) 8 (80) 61 (76.3) 
Sulfonylureas 2 (6.9) 8 (13.1) 8 (11.6) 2 (9.5) 10 (12.7) — — 
DPP4-I 0 11 (18.0) 10 (14.5) 1 (4.7) — — 11 (13.8) 
SGLT2-I 2 (6.9) 3 (4.9) 4 (5.8) 1 (4.8) 5 (6.3) 5 (6.3) 
GLP-1 RA 2 (6.9) 4 (6.6) 6 (8.7) 6 (7.6) 1 (10) 5 (6.3) 
Pioglitazone 1 (1.6) 1 (1.5) 1 (1.3) 1 (1.3) 

Statistically significant data (P < 0.05) appear in boldface type.

Our study focused on a SARS-CoV-2–positive population admitted to a single hospital located in the epicenter of the COVID-19 pandemic in Italy.

Prevalence of type 2 diabetes in this cohort was 23.3%, which is higher than that previously reported in publications from China (5,6,17) and similar to that in Europe (27,28) but lower than data from the U.S. (2931). Compared with subjects without diabetes of this study, the subset of patients with type 2 diabetes was older and burdened by a higher prevalence of comorbidities (i.e., hypertension, CAD, CKD, and stroke) and related polypharmacy, with many patients taking multiple medications (including antihypertensive, lipid-lowering, and antiplatelet/anticoagulants drugs).

These patient characteristics reflect Italian demographics, as Italy now hosts one of the oldest populations worldwide (databank.worldbank.org). This trend might also partly account for the mortality rates observed in our study.

Patients with type 2 diabetes were twice as likely to die compared with patients without diabetes, which is in accordance with findings in previous studies (5,6,27,28,31). However, the significant association between type 2 diabetes and mortality was lost after adjustment of models for age and sex, whereas cardiovascular diseases, CKD, and cancer were shown to be independent risk factors of mortality. These findings suggest that comorbidities not necessarily related to diabetes may be important predictors of mortality more than diabetes itself in patients with COVID-19. Nonetheless, it is reasonable to hypothesize that an altered glucose metabolism may have influenced the outcome of our patients with COVID-19. In fact, the analysis of biochemical predictors of mortality in the overall study population revealed that an initial higher plasma glucose level was significantly and independently correlated with a lower survival of COVID-19 patients. This finding is consistent with the result of a recent study showing that hyperglycemia at hospital admission was an independent factor associated with severe prognosis in subjects hospitalized for COVID-19 (32). One could argue that patients presenting with higher blood glucose levels at admission were those with already more severe SARS-CoV-2 infection, consistent with theories suggesting that inflammatory mediators may promote altered glucose homeostasis (12,33,34). As previously suggested, there is a bidirectional link between glucose metabolism and immune system (35), and our findings may equally reflect a direct effect of altered glucose homeostasis on the immune response to SARS-CoV-2, thereby influencing the outcome of COVID-19.

This study provided novel and insightful information on mortality trends in COVID-19 patients with type 2 diabetes. After adjustment for age and sex, cardiovascular comorbidities and cancer were no longer significantly associated with mortality in this subgroup. These results may suggest that chronic comorbidities present at admission are more related to advanced age of patients—rather than being correlated with type 2 diabetes. Nonetheless, we cannot completely exclude that vascular complications of diabetes may have predisposed the patients to an unfavorable progression of SARS-CoV-2 infection. Consistent with findings observed in other clinical settings (33,34), CKD tended to be associated with lower survival in patients with COVID-19, possibly because the vascular complications made patients more fragile by reducing their systemic functional reserve. This hypothesis is further supported by the higher mortality observed in β-blockers users; β-blockers are routinely prescribed in patients at higher cardiovascular risk.

Some studies suggested that diabetes, along with obesity, may promote an imbalance of the immune system favoring the rapid progression of pneumonia in infection triggered by other coronaviruses (7,8). A similar relationship appears to be emerging in COVID-19 (36,37). In particular, among patients with diabetes, nonsurvivors presented more abnormal inflammatory indexes, i.e., low lymphocyte count and higher IL-6, ferritin, CRP, PCT, and LDH levels (Supplementary Table 1), which are known to be associated with a poor prognosis in COVID-19 (1).

Another observation emerging from our study concerns the possible role played by antidiabetes medications in the clinical evolution of SARS-CoV-2 infection. One-third of patients with type 2 diabetes were on insulin therapy at admission, and these patients had a more severe evolution of COVID-19 with a more than tripled risk of mortality. Remarkably, the effect of insulin on mortality was independent of patients’ age and possibly reflected the direct effects of this therapy on immune response to SARS-CoV-2 infection (35). Nevertheless, the worse outcome in insulin users may be related to a more severe, poorly controlled, and long-standing underlying diabetes in which this treatment is usually prescribed (38).

A novel finding of this study was the better outcome in COVID-19 patients taking DDP4-I. Specifically, patients taking DPP4-I showed less severe pneumonia, as suggested by the lower use of noninvasive mechanical ventilation, and lower mortality risk. These findings are consistent with literature suggesting that DPP-4/CD26 may interact with the S1 domain of the viral spike glycoprotein (39), which has been established as SARS-CoV-2’s molecular link with the ACE-2 receptor expressed on the cells surface (40). The DPP4 inhibition may play a role in antagonizing the DPP4/CD26 inflammatory pathway, reducing COVID-19 virulence, and preventing the dangerous cytokine storm started at pulmonary levels, which is involved in disease progression (41,42).

Study Limitations

This study has some limitations, which are partly related to its retrospective nature. Firstly, data from patients who were still hospitalized during the study observation (“open case”) were not included in our analysis. Their inclusion would have probably increased the statistical robustness of our findings. Secondly, the small number of patients taking DPP4-I did not allow reliable analysis of the independent effects of these drugs on clinical outcome of COVID-19. Although age, sex, glycemia, and comorbidities were not significantly different between DPP4-I users and nonusers, we cannot exclude possible confounding factors related to the specific setting in which these drugs are prescribed. For instance, the lack of concurrent insulin therapy among DPPI-4 users may have influenced the lower mortality in this subgroup of COVID-19 patients. However, the better clinical outcome in DPP4-I users may add a positive contribution to the current debate on their effectiveness, supporting the need for further investigations. Thirdly, the lack of glycated hemoglobin measurements at admission and information on glucose homeostasis during hospitalization prevents us from providing more reliable evidence on the effect that glycemic control may have on clinical outcomes of COVID-19 and survival of patients, as previously reported (15). Finally, our data were sourced from a single center, in a metropolitan area, and may not be representative of the entire Italian population.

Conclusion

This study provides evidence that glucose level at hospital admission and ongoing antidiabetes drugs may influence the outcome of COVID-19 in patients with type 2 diabetes. Our results reinforce the role of diabetologists in the multidisciplinary management of patients with COVID-19.

See accompanying articles, pp. 2906 and 2999.

This article is featured in a podcast available at https://www.diabetesjournals.org/content/diabetes-core-update-podcasts.

This article contains supplementary material online at https://doi.org/10.2337/figshare.12980015.

This article is part of a special article collection available at https://care.diabetesjournals.org/collection/diabetes-and-COVID19.

Acknowledgments. The authors are grateful to all staff members of the Humanitas COVID-19 Task Force and to Dr. Nicole Mauer, Heidelberg Institute of Global Health, University of Heidelberg, Germany, for her support in editing and revising the manuscript.

Duality of Interest. No potential conflicts of interest relevant to this article were reported.

Author Contributions. M.M. conceived the study and wrote the manuscript. G.F., F.C., N.B., and E.B. researched data. E.M. contributed to the statistical analysis. G.F., N.B., and E.B. edited the manuscript. G.M. and A.G.L. reviewed the manuscript. M.M. is the guarantor of this work and, as such, had full access to all the data in the study and takes responsibility for the integrity of the data and the accuracy of the data analysis.

1.
Chen
N
,
Zhou
M
,
Dong
X
, et al
.
Epidemiological and clinical characteristics of 99 cases of 2019 novel coronavirus pneumonia in Wuhan, China: a descriptive study
.
Lancet
2020
;
395
:
507
513
2.
World Health Organization
.
WHO Director-General's Opening Remarks at the Media Briefing on COVID-19 - 11 March 2020. Accessed 5 May 2020
.
3.
Grasselli
G
,
Pesenti
A
,
Cecconi
M
.
Critical care utilization for the COVID-19 outbreak in Lombardy, Italy: early experience and forecast during an emergency response
.
JAMA
2020
;
323
:
1545
1546
4.
SARS-CoV-2 Surveillance Group
.
Characteristics of COVID-19 patients dying in Italy
.
5.
Guo
W
,
Li
M
,
Dong
Y
, et al
.
Diabetes is a risk factor for the progression and prognosis of COVID-19
.
Diabetes Metab Res Rev
.
31 March 2020:e3319. [Epub ahead of print]. DOI: 10.1002/dmrr.3319
6.
Yan
Y
,
Yang
Y
,
Wang
F
, et al
.
Clinical characteristics and outcomes of patients with severe covid-19 with diabetes
.
BMJ Open Diabetes Res Care
2020
;
8
:
e001343
7.
Yang
JK
,
Feng
Y
,
Yuan
MY
, et al
.
Plasma glucose levels and diabetes are independent predictors for mortality and morbidity in patients with SARS
.
Diabet Med
2006
;
23
:
623
628
8.
Kulcsar
KA
,
Coleman
CM
,
Beck
SE
,
Frieman
MB
.
Comorbid diabetes results in immune dysregulation and enhanced disease severity following MERS-CoV infection
.
JCI Insight
2019
;
4
:
e131774
9.
Zheng
Y
,
Ley
SH
,
Hu
FB
.
Global aetiology and epidemiology of type 2 diabetes mellitus and its complications
.
Nat Rev Endocrinol
2018
;
14
:
88
98
10.
Muller
LM
,
Gorter
KJ
,
Hak
E
, et al
.
Increased risk of common infections in patients with type 1 and type 2 diabetes mellitus
.
Clin Infect Dis
2005
;
41
:
281
288
11.
Joshi
N
,
Caputo
GM
,
Weitekamp
MR
,
Karchmer
AW
.
Infections in patients with diabetes mellitus
.
N Engl J Med
1999
;
341
:
1906
1912
12.
Hodgson
K
,
Morris
J
,
Bridson
T
,
Govan
B
,
Rush
C
,
Ketheesan
N
.
Immunological mechanisms contributing to the double burden of diabetes and intracellular bacterial infections
.
Immunology
2015
;
144
:
171
185
13.
Rao Kondapally Seshasai
S
,
Kaptoge
S
,
Thompson
A
, et al.;
Emerging Risk Factors Collaboration
.
Diabetes mellitus, fasting glucose, and risk of cause-specific death
.
N Engl J Med
2011
;
364
:
829
841
14.
Shi
Q
,
Zhang
X
,
Jiang
F
, et al
.
Clinical characteristics and risk factors for mortality of COVID-19 patients with diabetes in Wuhan, China: a two-center, retrospective study
.
Diabetes Care
2020
;
43
:
1382
1391
15.
Zhu
L
,
She
Z-G
,
Cheng
X
, et al
.
Association of blood glucose control and outcomes in patients with COVID-19 and pre-existing type 2 diabetes
.
Cell Metab
2020
;
31
:
1068
1077.e3
16.
Sardu
C
,
D’Onofrio
N
,
Balestrieri
ML
, et al
.
Outcomes in patients with hyperglycemia affected by COVID-19: can we do more on glycemic control
?
Diabetes Care
2020
;
43
:
1408
1415
17.
Chen
Y
,
Yang
D
,
Cheng
B
, et al
.
Clinical characteristics and outcomes of patients with diabetes and COVID-19 in association with glucose-lowering medication
.
Diabetes Care
2020
;
43
:
1399
1407
18.
Palaiodimos
L
,
Kokkinidis
DG
,
Li
W
, et al
.
Severe obesity, increasing age and male sex are independently associated with worse in-hospital outcomes, and higher in-hospital mortality, in a cohort of patients with COVID-19 in the Bronx, New York
.
Metabolism
2020
;
108
:
154262
19.
Cummings
MJ
,
Baldwin
MR
,
Abrams
D
, et al
.
Epidemiology, clinical course, and outcomes of critically ill adults with COVID-19 in New York City: a prospective cohort study
.
Lancet
2020
;
395
:
1763
1770
20.
Lodigiani
C
,
Iapichino
G
,
Carenzo
L
, et al.;
Humanitas COVID-19 Task Force
.
Venous and arterial thromboembolic complications in COVID-19 patients admitted to an academic hospital in Milan, Italy
.
Thromb Res
2020
;
191
:
9
14
21.
Cecconi
M
,
Piovani
D
,
Brunetta
E
, et al
.
Early predictors of clinical deterioration in a cohort of 239 patients hospitalized for covid-19 infection in Lombardy, Italy
.
J Clin Med
2020
;
9
:
1548
22.
Lania
A
,
Sandri
MT
,
Cellini
M
,
Mirani
M
,
Lavezzi
E
,
Mazziotti
G
.
Thyrotoxicosis in patients with COVID-19: the THYRCOV study
.
Eur J Endocrinol
2020
;
183
:
381
387
23.
Aghemo
A
,
Piovani
D
,
Parigi
TL
, et al.;
Humanitas COVID-19 Task Force
.
COVID-19 digestive system involvement and clinical outcomes in a large academic hospital in Milan, Italy
.
Clin Gastroenterol Hepatol
2020
;
18
:
2366
2368.e3
24.
Chung
M
,
Bernheim
A
,
Mei
X
, et al
.
CT imaging features of 2019 novel coronavirus (2019-nCoV)
.
Radiology
2020
;
295
:
202
207
25.
Lombardy Section Italian Society Infectious And Tropical Diseases
.
Vademecum for the treatment of people with COVID-19. Edition 2.0, 13 March 2020
.
Infez Med
2020
;
28
:
143
152
26.
Ling
J
,
Cheng
P
,
Ge
L
, et al
.
The efficacy and safety of dipeptidyl peptidase-4 inhibitors for type 2 diabetes: a Bayesian network meta-analysis of 58 randomized controlled trials
.
Acta Diabetol
2019
;
56
:
249
272
27.
Ciardullo
S
,
Zerbini
F
,
Perra
S
, et al
.
Impact of diabetes on COVID-19-related in-hospital mortality: a retrospective study from Northern Italy
.
J Endocrinol Invest
.
10 August 2020 [Epub ahead of print]. DOI: 10.1007/s40618-020-01382-7
28.
Iaccarino
G
,
Grassi
G
,
Borghi
C
,
Ferri
C
,
Salvetti
M
,
Volpe
M
;
SARS-RAS Investigators
.
Age and multimorbidity predict death among COVID-19 patients: results of the SARS-RAS study of the Italian Society of Hypertension
.
Hypertension
2020
;
76
:
366
372
29.
Suleyman
G
,
Fadel
RA
,
Malette
KM
, et al
.
Clinical characteristics and morbidity associated with coronavirus disease 2019 in a series of patients in metropolitan Detroit
.
JAMA Netw Open
2020
;
3
:
e2012270
30.
Richardson
S
,
Hirsch
JS
,
Narasimhan
M
, et al
.
Presenting characteristics, comorbidities, and outcomes among 5700 patients hospitalized with COVID-19 in the New York City area [published correction appears in JAMA 2020;323:2098]
.
JAMA
2020
;
323
:
2052
2059
31.
Fox
T
,
Ruddiman
K
,
Lo
KB
, et al
.
The relationship between diabetes and clinical outcomes in COVID-19: a single-center retrospective analysis
.
Acta Diabetol
.
17 August 2020 [Epub ahead of print]. DOI: 10.1007/s00592-020-01592-8
32.
Coppelli
A
,
Giannarelli
R
,
Aragona
M
, et al.;
Pisa COVID-19 Study Group
.
Hyperglycemia at hospital admission is associated with severity of the prognosis in patients hospitalized for COVID-19: the Pisa COVID-19 Study
.
Diabetes Care
2020
;
43
:
2345
2348
33.
Trevelin
SC
,
Carlos
D
,
Beretta
M
,
da Silva
JS
,
Cunha
FQ
.
Diabetes mellitus and sepsis: a challenging association
.
Shock
2017
;
47
:
276
287
34.
Zarbock
A
,
Gomez
H
,
Kellum
JA
.
Sepsis-induced acute kidney injury revisited: pathophysiology, prevention and future therapies
.
Curr Opin Crit Care
2014
;
20
:
588
595
35.
Daryabor
G
,
Atashzar
MR
,
Kabelitz
D
,
Meri
S
,
Kalantar
K
.
The effects of type 2 diabetes mellitus on organ metabolism and the immune system
.
Front Immunol
2020
;
11
:
1582
36.
Wu
C
,
Chen
X
,
Cai
Y
, et al
.
Risk factors associated with acute respiratory distress syndrome and death in patients with coronavirus disease 2019 pneumonia in Wuhan, China
.
JAMA Intern Med
2020
;
180
:
934
943
37.
Xu
Z
,
Shi
L
,
Wang
Y
, et al
.
Pathological findings of COVID-19 associated with acute respiratory distress syndrome
.
Lancet Respir Med
2020
;
8
:
420
422
38.
American Diabetes Association
.
9. Pharmacologic approaches to glycemic treatment: Standards of Medical Care in Diabetes—2020
.
Diabetes Care
2020
;
43
(
Suppl. 1
):
S98
S110
39.
Vankadari
N
,
Wilce
JA
.
Emerging WuHan (COVID-19) coronavirus: glycan shield and structure prediction of spike glycoprotein and its interaction with human CD26
.
Emerg Microbes Infect
2020
;
9
:
601
604
40.
Yan
R
,
Zhang
Y
,
Li
Y
,
Xia
L
,
Guo
Y
,
Zhou
Q
.
Structural basis for the recognition of SARS-CoV-2 by full-length human ACE2
.
Science
2020
;
367
:
1444
1448
41.
Iacobellis
G
.
COVID-19 and diabetes: can DPP4 inhibition play a role
?
Diabetes Res Clin Pract
2020
;
162
:
108125
42.
Dalan
R
.
Is DPP4 inhibition a comrade or adversary in COVID-19 infection
.
Diabetes Res Clin Pract
2020
;
164
:
108216
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