Literature DB >> 32802142

COVID-19: age, Interleukin-6, C-reactive protein, and lymphocytes as key clues from a multicentre retrospective study.

Aurora Jurado1, María C Martín2, Cristina Abad-Molina3, Antonio Orduña3, Alba Martínez4, Esther Ocaña4, Oscar Yarce1, Ana M Navas1, Antonio Trujillo1, Luis Fernández5, Esther Vergara5, Beatriz Rodríguez6, Bibiana Quirant7, Eva Martínez-Cáceres7, Manuel Hernández8, Janire Perurena-Prieto8, Juana Gil9, Sergi Cantenys9, Gema González-Martínez10, María T Martínez-Saavedra10, Ricardo Rojo11, Francisco M Marco12, Sergio Mora12, Jesús Ontañón13, Marcos López-Hoyos14, Gonzalo Ocejo-Vinyals14, Josefa Melero15, Marta Aguilar15, Delia Almeida16, Silvia Medina16, María C Vegas17, Yesenia Jiménez17, Álvaro Prada18, David Monzón18, Francisco Boix19, Vanesa Cunill20, Juan Molina1.   

Abstract

BACKGROUND: The SARS-CoV-2 infection has widely spread to become the greatest public health challenge to date, the COVID-19 pandemic. Different fatality rates among countries are probably due to non-standardized records being carried out by local health authorities. The Spanish case-fatality rate is 11.22%, far higher than those reported in Asia or by other European countries. A multicentre retrospective study of demographic, clinical, laboratory and immunological features of 584 Spanish COVID-19 hospitalized patients and their outcomes was performed. The use of renin-angiotensin system blockers was also analysed as a risk factor.
RESULTS: In this study, 27.4% of cases presented a mild course, 42.1% a moderate one and for 30.5% of cases, the course was severe. Ages ranged from 18 to 98 (average 63). Almost 60 % (59.8%) of patients were male. Interleukin 6 was higher as severity increased. On the other hand, CD8 lymphocyte count was significantly lower as severity grew and subpopulations CD4, CD8, CD19, and NK showed concordant lowering trends. Severity-related natural killer percent descents were evidenced just within aged cases. A significant severity-related decrease of CD4 lymphocytes was found in males. The use of angiotensin-converting enzyme inhibitors was associated with a better prognosis. The angiotensin II receptor blocker use was associated with a more severe course.
CONCLUSIONS: Age and age-related comorbidities, such as dyslipidaemia, hypertension or diabetes, determined more frequent severe forms of the disease in this study than in previous literature cohorts. Our cases are older than those so far reported and the clinical course of the disease is found to be impaired by age. Immunosenescence might be therefore a suitable explanation for the hampering of immune system effectors. The adaptive immunity would become exhausted and a strong but ineffective and almost deleterious innate response would account for COVID-19 severity. Angiotensin-converting enzyme inhibitors used by hypertensive patients have a protective effect in regards to COVID-19 severity in our series. Conversely, patients on angiotensin II receptor blockers showed a severer disease.
© The Author(s) 2020.

Entities:  

Keywords:  ACE2; C-reactive protein; COVID-19; Immunity; Immunosenescence; Interleukin-6; Lymphocytes; Renin-angiotensin system; Severe acute respiratory syndrome coronavirus 2; Spain

Year:  2020        PMID: 32802142      PMCID: PMC7426672          DOI: 10.1186/s12979-020-00194-w

Source DB:  PubMed          Journal:  Immun Ageing        ISSN: 1742-4933            Impact factor:   6.400


Background

SARS-CoV-2 infection has become widespread. Never before have we experienced a health emergency like this. At the time of writing, 6 months after the first diagnosed case [1] the virus has infected 12.270.172 people, with an overall case-fatality rate of 4.52% [2] far exceeding the 1% reported outside the epicentre by early studies [3]. It can be traced back to the end of February, when the pandemic started to rapidly expand, hitting some European countries the hardest, such as Spain, with case-fatality rates around 11.22%. We lack so far, an explanation to such big differences. They might be related to different local approaches for records and statistics of infected cases in each country. Absolute mortality rates are far higher in Spain than those reported in Asia or other European countries [4]. In 2002, during the SARS-CoV epidemic, a coronavirus was for the first time revealed to be highly pathogenic. Coronaviruses were until then considered to cause just mild infections, mainly in immunocompromised people [5]. SARS-CoV-2 has shown much higher infectivity than SARS-CoV, with a doubling time of 2.3–3.3 days, and a basic reproductive number (R0) of 5.7 [6]. SARS-CoV-2 can be considered especially challenging due to its several intrinsic and extrinsic characteristics. It has a highly variable prevalence and outcomes within countries depending on age, weather, and social habits. The angiotensin-converting enzyme 2 (ACE2) is the receptor for SARS-CoV-2 and plays a key role in human infection [7]. The ACE2 has two isoforms; a large one anchored to the cell membrane [8] and a small soluble isoform lacking anchorage to the membrane and circulates at low concentrations in blood [9]. It has been therefore suggested that the use of drugs increasing ACE2 expression, such as angiotensin-converting enzyme inhibitors (ACEI) and angiotensin II receptor blockers (ARB), could enhance infection [10]. On the other hand, increasing soluble ACE2 may be a therapeutic tool to competitively inhibit the virus [11]. Smoking can cause an increase in ACE2 expression and might, therefore, be a risk factor for SARS CoV2 infection [12]. Both innate and adaptive responses are involved in fighting against SARS-CoV-2 [13]. An accurate immune response is essential for infection resolution. An aberrant immune response might be the key to understanding the immunopathogenesis of SARS-CoV-2 infection. It seems that the progression to severe COVID-19 could be associated with a poor adaptive immune response [14] and with an innate immune response exacerbation, with an increase in plasma levels of both cytokines and pro-inflammatory chemokines [15]. Understanding the pathogenesis of the virus as well as identifying risk or severity factors for COVID-19, are key points for identifying disease evolution biomarkers, and taking immediate preventive actions. This study aimed to obtain, within the shortest possible time, a reliable snapshot of the demographic and clinical characteristics of COVID-19 patients admitted to Spanish hospitals during the first month of the pandemic and to reveal severity risk factors. This knowledge would help manage both clinical and health decisions.

Results

Baseline demographic characteristics, risk factors, and COVID-19 therapies

A total of 584 SARS-CoV-2 infected inpatients from 19 Spanish Hospitals were included. Twenty-seven percent (27.4%) of cases presented a mild disease, 42.1% a moderate one, and 30.5% a severe one. By data collection deadline, 278 patients have been discharged and 87 have died. The descriptive baseline characteristics of the population (valid n, frequencies, percentages, mean, median, standard deviation, and interquartile range) are shown in Table 1. Categorical variables stratified by severity are shown in Table 2.
Table 1

Baseline characteristics of the study population

Clinical and demographic characteristicsAll patients n = 584; (%)
Severity
 Mild160 (27.4)
 Moderate246 (42.1)
 Severe178 (30.5)
Gender
 Male349 (59.8)
 Female235 (40.2)
Hypertension293 (52.0)
RASBa intake
 no56 (21.1)
 yes209 (78.9)
Dyslipidemia159 (28.8)
Diabetes131 (23.7)
Immunodeficiency (primary or secundary)40 (6.8)
Ref.vbnMeanMedianSDcIQRd
Age58463.064.016.552–76
laboratory data on admission
 IL6e (pg/mL)< 4.4254113.741.0355.215.3–94.6
 CRPf (mg/L)< 10523111.3087.0093.7039–153.2
 ferritin (ng/mL)20–2502971108.60793.001524.30361–1417
 D-dimer (ng/mL)< 5004561885.10620.008214.20399–1169
 LDHg (U/L)120–246467334.10291.00186.90232–394
 days from onset to admission5487.207.005.104–10
 Leucocyte count (cells*103/μL)4–12.45707.576.395.604.82–9.00
 Neutrophil count (cells*103/μL)1.9–85705.654.623.703.30–7.12
 Lymphocyte count (cells*103/μL)0.9–55701.160.991.060.71–1.39
 Lymphocyte %19–4857018.2016.0211.409.7–23.5
 CD3 + CD4+ %25–655544.1044.8011.6037–51.3
 CD3 + CD4+ count (cells*103/μL)0.5–1.4540.540.430.380.26–0.69
 CD3 + CD8+ %12–405523.3624.409.8215.6–30.5
 CD4 + CD8+ count (cells*103/μL)0.25–1540.280.200.220.12–0.36
 CD19+ %5–205212.9011.5573.008.2–15.9
 CD19+ count (cells*103/μL)0.1–0.5510.130.100.090.06–0.20
 Natural Killer %5–205215.9015.158.708.66–20.65
 Natural Killer count (cells*103/μL)0.5–5510.170.140.120.08–0.20
 Immunoglobulin G650–160019961.6933.0131.3885–1006
 Immunoglobulin A40–35019230.9223.072.3178–248
 Immunoglobulin M50–30019103.190.039.872–129
Laboratory data at discharge
 IL6 (pg/mL)< 4.411799.569711.813.9–23.2
 CRP (mg/L)< 1029729.9613.0044.904.7–36
 ferritin (ng/mL)20–2502091263.566336518.34321–1137
 D- dimer (μg/L)< 5002713246.0059133,491.34360–1149
 LDH (U/L)120–246273342.542341142.00195–290
 days from admission to discharge14611.75116.977–15
 Leucocyte count (cells*103/μL)4–12.43267.426.43.884.01–8.40
 Neutrophil count (cells*103/μL)1.9–83265.174.13.792.98–6.00
 Lymphocyte count (cells*103/μL)0.9–53261.511.440.761–1.9
 Lymphocyte %19–4832623.4323.7511.7714.6–31.1
 CD3 + CD4+ %25–651448.0153.515.7149–58.24
 CD3 + CD8+ %12–401419.6718.510.0410–29.27
 CD19%5–201416.9710.9320.327.9–17
 Natural Killers %5–201413.02127.53sep-17

Abbreviations: RASBa Renin-angiotensin system blockers, Ref.vb Reference values, SDc Standard deviation, IQRd interquartile range, IL6e Interleukin 6, CRPf C-reactive protein, LDHg Lactate dehydrogenase

Table 2

Age, gender, comorbidities and RASB intake relationship with COVID-19 severity

MildModerateSevere
Age (p = 0.019)n (%)n (%)n (%)
 < 3010 (43.5)9 (39.1)4 (17.4)
 30–4526 (37.7)26 (37.7)17 (24.6)
 45–6041 (26.6)62 (40.3)51 (33.1)
 60–7557 (30.6)80 (43.0)49 (26.3)
 > 7526 (17.1)69 (45.4)57 (37.5)
Gender (p < 0.001)
 Male77 (22.1)144 (41.3)128 (36.7)
 Female83 (35.3)102 (43.4)50 (21.3)
Hypertension (p = 0.015)
 No91 (33.7)107 (39.6)72 (26.7)
 Yes67 (22.9)132 (45.1)94 (32.1)
Dyslipidemia (p = 0.006)
 No127 (32.2)159 (40.4)108 (27.4)
 Yes30 (18.9)75 (47.2)54 (34.0)
Diabetes (p = 0.003)
 No134 (31.8)175 (41.5)113 (26.8)
 Yes23 (17.6)59 (45.0)49 (37.4)
Immunodeficiency
 No283 (60.6)379 (81.0)273 (58.4)
 Yes8 (68.4)21 (102.6)11 (28.9)
RASBa intake
 No10 (17.9)32 (57.1)14 (25.0)
 Yes50 (23.9)91 (43.5)68 (34.0)
Mild-ModerateSevere
RASBa intaken (%)n (%)
 No42 (75)14 (25)
 Yes142 (67.9)67 (32.1)
ACEb intake (p = 0.046)
 No111 (65.3)59 (34.7)
 Yes71 (77.2)21 (22.8)
ARBc intake (p = 0.004)
 No95 (77.9)27 (22.1)
 Yes76 (60.8)49 (39.2)

Abbreviations: p Chi Squared p-values, RASBa Renin-angiotensin system blockers, ACEb Angiotensin-converting enzyme inhibitors, ARBc Angiotensin II receptor blockers

Baseline characteristics of the study population Abbreviations: RASBa Renin-angiotensin system blockers, Ref.vb Reference values, SDc Standard deviation, IQRd interquartile range, IL6e Interleukin 6, CRPf C-reactive protein, LDHg Lactate dehydrogenase Age, gender, comorbidities and RASB intake relationship with COVID-19 severity Abbreviations: p Chi Squared p-values, RASBa Renin-angiotensin system blockers, ACEb Angiotensin-converting enzyme inhibitors, ARBc Angiotensin II receptor blockers Almost 60 % (59.8%) of the cases were male. Ages in our cohort ranged from 18 to 98 years old, 63 years old as an average (SD 16.5). Concerning comorbidities, 52.0% were hypertensive, 78.9% of them were treated with blockers of the renin-angiotensin system (RASBs); 28 % 28.8% had dyslipidaemia and 23.7% suffered diabetes. Immunodeficiency was most often secondary to other processes, such as transplantation or chemotherapy treatment. These cases accounted for 6.8% (n = 40) as seen in Table 1. Hypertension, dyslipidaemia, and diabetes become more frequent with age (p < 0.001), (Table 3). These four risk factors showed strong interference (Fig. 1). Nevertheless, a predictive model could not be proposed due to frequent missing values.
Table 3

Influence of age and gender on comorbidities

AgeGender
< 3030–4545–6060–75> 75MaleFemale
n (%)n (%)n (%)n (%)n (%)n (%)n (%)
Hypertensionano21 (7.8)55 (20.4)97 (35.9)65 (24.1)32 (11.9)155 (57.4)115 (42.6)
yes1 (0.3)9 (3.1)50 (17.1)116 (39.6)117 (39.9)182 (62.1)111 (37.9)
Dyslipidaemiaano22 (5.6)59 (15.0)117 (29.7)108 (27.4)88 (22.3)227 (57.6)167 (42.4)
yes0 (0.0)3 (1.9)30 (18.9)68 (42.8)58 (36.5)103 (64.8)56 (35.2)
Diabetesano21 (5.0)58 (13.7)128 (30.3)114 (27.0)101 (23.9)241 (57.1)181 (42.9)
yes1 (0.8)6 (4.6)19 (14.5)63 (48.1)42 (32.1)88 67.2)43 (32.8)

aall Chi Squared p-values either vs age or gender were < 0.001

Fig. 1

Severity factors and comorbidities interactions. Pearson’s Chi Squared p-values

Influence of age and gender on comorbidities aall Chi Squared p-values either vs age or gender were < 0.001 Severity factors and comorbidities interactions. Pearson’s Chi Squared p-values Moderate and severe forms were found to be significantly associated with older age, specially over 75 (p = 0.019; OR = 2.179 (1.363–3.482)), male gender (p < 0.001; OR = 1.929(1.334–2.788)), dyslipidaemia (p = 0.006; OR = 2.045 (1.304–3.208)), hypertension (p = 0.015; OR = 1.715(1.182–2.486)) and diabetes (p = 0.003; OR = 2.184(1.332–3.583)). Severe cases over the age of 75 accounted for 37.5%. The use of renin-angiotensin system blockers (RASB) by hypertensive patients revealed no difference regarding mild, moderate, or severe forms of the disease. However, differences arose when considering patients who developed a more serious picture compared to those who had a mild-moderate course. Intake of RASB showed again no effect regarding COVID-19 severity. Meanwhile, when assessing the use of single RASBs, the intake of ACEI was associated with a better prognosis ((p = 0.046; Odds Ratio for severe COVID-19 was 0.56 with a 95% Confidence Interval (0.31–0.99)). On the contrary, the use of ARB was related to higher severity (p 0.004; Odds Ratio for severe COVID-19 was 2.26 with 95% Confidence Interval (1.29–3.96)) (Table 2). Once at hospital, 84.2% of inpatients received antibiotics; the most commonly prescribed ones were azithromycin combinations (71.3%); those treated with antimalarial drugs accounted for 71.7 and 65.8% received antivirals, being lopinavir/ritonavir being the most widely used. Around one-half of cases (50.2%), received combined therapy consisting of antibiotics, antimalarials, and antivirals (commonly named triple therapy). Immunosuppressant drugs were used in 18.3% of cases. Anti-cytokine therapy was used in 8.4%, mostly anti-IL-6R (Tocilizumab), and 17.3% were treated with either α or β interferon.

Laboratory parameters on admission and at discharge

On admission, means of laboratory parameters, IL-6, CRP, ferritin, D-dimer, LDH, leukocyte, and neutrophil counts, were above usual reference ranges (those ranges can slightly change within centres), in contrast to lymphocyte counts and percentages as well as lymphocyte subset counts, that are within the lower part of their ranges (Table 1). Higher severity was significantly associated with higher levels of IL-6, CRP, ferritin, D-dimer, LDH, leukocyte, and neutrophil counts, but with lower lymphocyte percentages and counts (Table 4). The mean percentages of lymphocyte subpopulations (n = 54) were within normal ranges. CD8 Lymphocyte count was found to be significantly higher in mild cases, similar trends were found for CD4, CD19, and NK cell counts. IgG and IgM values were as well inversely related to severity (Table 4).
Table 4

Age and Laboratory results. Association to COVID-19 severity and evolution from admission to discharge

Severity p-valueΔa-da p-valuenmeanmedianSDbIQRc
Age< 0.001(A)
 Mild16058.9661.0017.0849–70.5
 Moderate24664.0866.0016.0554–77
 Severe17865.2565.5015.9854–79
On admission
IL6d (pg/mL)< 0.001
  Mild7831.4017.6040.539–40.9
  Moderate9877.8643.10155.3019.5–87.3
  Severe78241.1687.45597.9230.4–239.7
CRPe (mg/L)< 0.001
  Mild13266.2144.4567.8317.45–85.2
  Moderate231108.8293.0083.2543.8–147
  Severe160152.14128.40107.9164.25–217.65
ferritin (ng/mL)< 0.001
  Mild80711.39491.45881.96201.65–874
  Moderate1331003.30775.00902.63390–1479
  Severe841653.651073.502404.04713.5–1796.5
D-dimer (ng/mL)< 0.001
  Mild1201083.58522.003684.33340.5–797
  Moderate2001442.13594.003878.02391.5–1025
  Severe1363243.72960.5013,804.06468.5–1586
LDHf (U/L)< 0.001
  Mild124252.55244.5075.01200–292.5
  Moderate208314.61292.50123.08240–372.5
  Severe135438.99401.00274.08279–524
Leucocyte count (cells*103/μL)< 0.001
  Mild1476.255.702.464.68–7.03
  Moderate2467.606.157.164.70–8.82
  Severe1778.657.894.735.50–10.3
Neutrophil count (cells*103/μL)< 0.001
  Mild1474.333.892.223.00–5.17
  Moderate2465.394.323.743.20–7.00
  Severe1777.106.404.134.30–8.71
Lymphocyte count (cells*103/μL)0.048
  Mild1471.291.100.760.86–1.57
  Moderate2461.130.970.850.73–1.33
  Severe1771.100.901.470.59–1.24
Lymphocyte %< 0.001
  Mild14722.0419.7011.1414.7–28.7
  Moderate24618.5517.1010.999.8–24.5
  Severe17714.6412.0011.017.5–18.1
CD3 + CD4+ %
  Mild841.3141.106.5636–47.1
  Moderate3545.8446.5012.5238.3–52.8
  Severe1241.0441.9011.2534.3–50.4
CD3 + CD4+ count (cells*103/μL)
  Mild80.740.710.460.32.35–1.1
  Moderate330.560.440.390.27–0.69
  Severe130.360.320.200.27–0.46
CD3 + CD8+ %
  Mild826.2327.004.2622.7–28.9
  Moderate3521.7420.3010.6612.09–30.5
  Severe1226.5728.309.1819.39–32.4
CD4 + CD8+ count (cells*103/μL)0.041(A)
  Mild80.450.410.280.20–0.70
  Moderate330.250.180.200.13–0.35
  Severe130.240.240.180.084–0.30
CD19+ %
  Mild811.5010.903.368.95–13
  Moderate3512.4710.606.997.3–16
  Severe915.9712.0010.6110.3–14.83
CD19+ count (cells*103/μL)
  Mild80.190.180.110.09–0.29
  Moderate330.120.090.090.06–0.20
  Severe100.160.100.080.06–0.12
Natural Killer %
  Mild815.5913.808.968.55–23.55
  Moderate3516.0615.508.3611.8–20.7
  Severe915.6711.4010.906.8–20.6
Natural Killer count (cells*103/μL)
  Mild80.230.160.150.12–0.37
  Moderate330.170.160.120.08–0.21
  Severe100.110.120.060.09–0.14
IgG (mg/dL)0.048
  Mild11006.001006.00.1006–1006
  Moderate13998.31934.00133.23915–1071
  Severe5857.20862.0076.43788–885
IgA (mg/dL)
  Mild1248.00248.00.248–248
  Moderate13234.00223.0086.48175–248
  Severe5219.40218.0028.98213–230
IgM (mg/dL)0.009
  Mild1129.00129.00.129–129
  Moderate13118.00121.0034.8888–141
  Severe559.2058.0013.8350–72
At discharge
IL6 (pg/mL)0.017
  Mild5521.1711.6028.514.77–23.2
  Moderate< 0.0015047.047.26126.461.88–13.4
  Severe12677.7524.862204.569.1–59.63
CRP (mg/L)< 0.001
  Mild11527.6914.3032.926.3–38.1
  Moderate13729.9313.9342.694–36
  Severe4535.868.0071.264–25.2
ferritin (ng/mL)< 0.001
  Mild77611.96386.00646.97245–793
  Moderate94778.67687.50599.84331–1178
  Severe383783.411085.9015,135.72571–1776
D-dimer (ng/mL)< 0.001
  Mild94705.22463.50937.24326–751
  Moderate1305219.08586.0048,290.67356–1040
  Severe< 0.001472870.131415.004230.08792–3912
LDH (U/L)< 0.0010.004
  Mild102238.22218.0078.79192–261
  Moderate124247.19235.5083.32192–271
  Severe47820.53286.002722.15242–400
Leucocyte count (cells*103/μL)< 0.0010.013
  Mild1276.265.802.594.78–7.21
  Moderate1467.466.903.085.30–9.20
  Severe5310.108.316.415.79–12.33
Neutrophil count (cells*103/μL)< 0.001
  Mild< 0.0011274.123.542.562.67–4.50
  Moderate1465.074.402.993.09–6.20
  Severe538.016.506.183.78–9.60
Lymphocyte count (cells*103/μL)< 0.001
  Mild1271.501.450.621.06–1.89
  Moderate1461.541.400.870.97–1.87
  Severe531.521.540.770.8–2.02
Lymphocyte %0.0060.007
  Mild12725.4726.109.3119.4–32.1
  Moderate14623.1222.6512.7313.7–30.3
  Severe5319.4118.4013.348.6–26.6
CD3 + CD4+ %
  Mild349.3354.0013.6134–60
  Moderate1147.6653.0016.8449–58.24
  Severe0
CD3 + CD8+ %
  Mild320.3320.0011.509–32
  Moderate1119.5017.0010.2210–29.27
  Severe0
CD19%
  Mild315.0017.006.248–20
  Moderate1117.5110.8622.977–15
  Severe0
Natural Killer %
  Mild313.6715.004.169–17
  Moderate1112.8511.008.387–17.3
  Severe0

Abbreviations: Severity p-values come from Kruskal-Wallis median test unless (A) marked, those p values come from One-Way ANOVA so far the parameter follows a normal distribution and its n > 30: Δa-da, differences between admission and discharge (Wilcoxons’ test for paired samples p-values); SDb Standard deviation, IQRc Interquartile range, IL6d Interleukin 6, CRPe C-reactive protein, LDHf Lactate dehydrogenase

Age and Laboratory results. Association to COVID-19 severity and evolution from admission to discharge Abbreviations: Severity p-values come from Kruskal-Wallis median test unless (A) marked, those p values come from One-Way ANOVA so far the parameter follows a normal distribution and its n > 30: Δa-da, differences between admission and discharge (Wilcoxons’ test for paired samples p-values); SDb Standard deviation, IQRc Interquartile range, IL6d Interleukin 6, CRPe C-reactive protein, LDHf Lactate dehydrogenase At discharge, IL-6, ferritin, D-dimer, LDH, leukocyte, and neutrophil counts remained significantly higher regarding severe cases compared to mild or moderate ones, opposite to lymphocyte percentage (Table 4). CRP values at discharge were close to normal ranges regardless of severity. When comparing laboratory data at discharge with those on admission, an overall return to reference ranges of most parameters was observed, with significantly lower mean values of IL-6, CRP, and LDH, as well as higher mean values of leukocyte counts, neutrophil counts, and lymphocyte counts and percentages. D-dimer and ferritin still remained high or became even higher values upon arrival (Table 4). Most of the differences in parameter levels amongst the severity groups were the same regardless of age (Fig. 2). It could be evidenced that lymphopenia and increased IL-6 were significant regardless of severity in all age groups but in patients under 30. CD8 population differences (both considering absolute count and percentage) were significant only within the 45–60 group (the largest one). The lymphocyte count decrease, which was seen globally, was only evidenced for 30–45 and 45–60 age ranges. NK percentage was higher in milder cases within older individuals (60–75). Severity-related decreases of IgM (p = 0.027), CD4 (p 0.007) and CD8 (p 0.008) lymphocytes were evidenced just in males (Fig. 3).
Fig. 2

Age related changes of laboratory parameters. Significant associations to severity. Oneway ANOVA (normal n < 30 parameters) and Kruskal Wallis (n < 30 or significant Kolmogorov Smirnov test for normal distribution parameters) p-values Abbreviations: CRP, C-reactive protein; LDH, lactate dehydrogenase, NK, Natural Killers. IgG, immunoglobulin G; IgA, immunoglobulin A; IgM, immunoglobulin M

Fig. 3

Gender related changes of laboratory parameters. Significant associations to severity. Oneway ANOVA (normal n < 30 parameters) and Kruskal Wallis (n < 30 or significant Kolmogorov Smirnov test for normal distribution parameters) p-values Abbreviations: CRP, C-reactive protein; LDH, lactate dehydrogenase, NK, Natural Killers. IgG, immunoglobulin G; IgA, immunoglobulin A; IgM, immunoglobulin M

Age related changes of laboratory parameters. Significant associations to severity. Oneway ANOVA (normal n < 30 parameters) and Kruskal Wallis (n < 30 or significant Kolmogorov Smirnov test for normal distribution parameters) p-values Abbreviations: CRP, C-reactive protein; LDH, lactate dehydrogenase, NK, Natural Killers. IgG, immunoglobulin G; IgA, immunoglobulin A; IgM, immunoglobulin M Gender related changes of laboratory parameters. Significant associations to severity. Oneway ANOVA (normal n < 30 parameters) and Kruskal Wallis (n < 30 or significant Kolmogorov Smirnov test for normal distribution parameters) p-values Abbreviations: CRP, C-reactive protein; LDH, lactate dehydrogenase, NK, Natural Killers. IgG, immunoglobulin G; IgA, immunoglobulin A; IgM, immunoglobulin M

Discussion

The COVID-19 pandemic became particularly virulent in Mediterranean countries such as Spain, both in terms of the number of affected people and the fatalities. This is the first report on Spanish COVID-19 inpatients; our aim was to outline illness demographic features, risk factors, and laboratory parameters, in relationship to disease severity. In our series, 27.4% of patients showed a mild course, 42.1% a moderate course, and 30.5% a severe one. Several works analyse severity in COVID-19 inpatients, almost all from Chinese hospitals. Those, including two multicentre studies, can be told to have a low severity profile in which severe cases ranged from 16 to 26% [16-19], except for the study of Zhou et al. [20], where critical cases reached 28%. It has been reported elsewhere that older patients or those with at least one previous comorbidity have a worse prognosis [16, 19–21]. There is, however, remarkable heterogeneity regarding these studies. The ages of the patients in our series were much higher than those previously published, with an average of 63 years. They can be found in literature, average cohort ages ranging from 36 to 58 years old [16–20, 22–24]. However, Grasselli et al. [25], in a multicentre Italian study focusing on patients admitted to the ICU, reports an average age of 63, similar to ours. In SARS-CoV-2 infection, the number of paediatric patients compared to adults is lower, with milder symptoms and better prognoses [26]. This fact highlights a possible immunosenescence effect on the evolution of the disease [27]. Immunosenescence refers to the age-associated decline of the immune system [28]. Immunosenescence is associated with adaptive immune changes and (less studied) in the innate immune system. These changes within B and T cell compartments do not affect the number of circulating lymphocytes but their repertoire and functionality. Immunosenescence processes include: decreased production of naïve lymphocytes, lymphocyte contracted repertoire, decreased proliferative and functional capacity of effector lymphocytes, increased population of memory lymphocytes, fibrotic changes in lymph node architecture, and cytokine production dysregulation. These phenomena result in a lower vaccination response and a greater infection susceptibility; thus, the infections often evolve more severely. More than 70% of influenza mortality occurs in people over 65 years and the RSV mortality rate within the elderly population is 18% [29]. Knowledge of the mechanisms behind these changes is crucial for vaccine development and for keeping the elderly safe. People over 60 accounts for 11% of the worldwide population and they are expected to reach 22% by 2050 [28]. In Spain, 19.4% of the population is over the age of 65 to date [30]. In our series, 18.15% of the cases were people aged 60 or above. Possibly due to ageing, frequencies for comorbidities such as hypertension or diabetes were higher in our series than those reported in previous studies [16, 17, 19–24, 31] and the prevalence of diabetes was greater than that recorded in the Spanish adult population (23.7% vs. 13.8%) [32]. Notwithstanding, the prevalence of hypertension mirrored that of the general adult Spanish population (overall, 42.6%; people over 60, 75.4%) [33]. Not only SARS-CoV-2, but most human coronaviruses strike the elderly and individuals with underlying comorbidities harder [34]. As in previous studies, cases were more often males [19, 20, 22, 24]. This fact is noteworthy, considering that men account only for 41.7% of the Spanish population over 50 years old [30] (59.8% in our COVID-19 cohort). Besides, the male gender was found to be associated with severity. In an Italian report of patients admitted to the ICU, up to 80% of the cases were males [25]. This fact would be in line with our observed effect of gender on severity. Concerning laboratory parameters, our findings were comparable to those reported in previous studies, with elevations of acute phase reactants (CRP, D-dimer, LDH, ferritin) increasing with severity and decreasing when the evolution of patients was favourable [19, 20, 22, 31]. Particularly striking was the change of the CRP, which was almost within its reference range at discharge. Several publications have focused on immunological markers in COVID-19 [19, 20, 31]. The extensive work of Diao et al. [14] analyses the secretory profile of inflammatory cytokines, lymphocyte populations, and their relationship to disease severity in 499 patients. The authors find an increase in pro-inflammatory cytokines inversely correlated to T-lymphocyte populations. This immune profile was also related to the severity of the disease. CD4, CD8, and IL-6 are reported to covariate at least in mild cases [35]. Data in our series would ratify their findings, therefore, an increase in IL-6 and a decrease in both total lymphocytes and lymphocyte populations could be seen. Once again, these changes were greater the more severe the condition. In our cohort, all lymphocyte subset counts CD4, CD8, CD19, and NK were below reference ranges upon arrival and were strongly decreased in severe cases, despite the differences being only significant for the CD8 population regarding overall data. Lymphopenia has been described in other infectious contexts such as sepsis, HIV, SARS, and MERS infections, [36, 37]. The underlying cause of lymphopenia in severe cases of COVID-19 is still unknown and several mechanisms have been proposed to explain it. Some of these hypotheses are apoptosis of T lymphocytes [38], an IL-induced pyroptosis-1β [38], a direct cytopathic virus action on T lymphocyte [39], a bone marrow suppression due to cytokine storm (similar to that in sepsis), or pulmonary sequestration by bilateral pneumonia [40]. Quantitative alterations in the effectors of the immune system such as lymphopenia and increased levels of IL-6, together with possible qualitative alterations associated with the ageing of the immune system, could act synergistically, causing a more serious condition. Since the seminal publication of Lei Fang et al. on the possible involvement of renin-angiotensin system blockers in SARS-CoV-2 infection [10] just 3 months ago, there has been a lot of controversy about it. No sooner had the scientific community realised its foreseeable impact, they began to take sides both for and against the hypothesis [41-44]. ACE2 molecules are the door used by SARS-CoV-2 to enter the cell [45]. RASBs indirectly increase the expression and secretion to the extracellular medium of ACE2 in various cell types, including airway alveolar epithelial cells [41]. RASBs might therefore facilitate the entrance of the virus or prevent it [42]. Additionally, the expression of ACE2 is associated with positive effects on lung homeostasis, which could be beneficial for tissue recovery from the damage caused by the SARS-CoV-2 infection [11, 42]. ACE2 expression is reported to be related to age and sex. It is high in children and would be high in young women, decreasing with ageing, and correlated negatively with chronic disease comorbidities such as hypertension [46]. ACE2 levels will inversely correlate COVID-19 severity and poor outcomes. Most literature for or against the role of the use of RASB consists mainly of theoretical positioning based on the knowledge of the physiological properties of these drugs. There is a limited number of original studies analysing the RASB intake effect on COVID-19. In our series, 293 patients were hypertensive. From these, 265 had records of being on anti-hypertensive drugs in their clinical history; of the latest, 209 were on RASB (78.86%; this feature is similar to the reported overall intake of these drugs by the Spanish hypertensive population [33]. No differences in severity concerning the use of RASB were found. Notwithstanding, when RASB were separately analysed, ARBs were found to be associated with a worse course of the disease (p 0.004) and ACEI with a better evolution (p 0.046). A lack of association between the use of RASB and severity has been previously reported by several authors. Tedeschi et al. [47], to elucidate whether RASB treatment had an impact on COVID-19 mortality, analyse 311 hypertensive patients hospitalized in 10 Italian centres. A multivariate Cox regression analysis of intra-hospital mortality shows that the use of RASBs is not associated with outcome. A large population-based case-control study by Mancia et al. [48] including 6272 hypertensive patients with COVID-19 disease has just been published, where the RASBs intake effect on COVID-19 is analysed. They conclude that neither susceptibility nor disease severity is associated with RASB intake. Even more, Chen et al. [31] report about 113 hypertensive patients, 33 (29.2%) of them were on RASB treatment, 87.9% of whom had moderate disease, and 12.2% a severe or critical COVID-19. Nevertheless, in contrast with our results, when Mancia et al. separately address the ACEI and ARB effects on the severity, they conclude that neither ACEI nor ARB show an independent association with COVID-19 severity. This difference might be due to the structure of the cohorts. It shall be noticed that all patients in our series were cases hospitalized. Even those here so categorized as having a mild course required hospitalization. Another main difference is related to the criteria used to define when a patient was on therapy with antihypertensive drugs. In our series, any intakes by disease onset were considered, whereas, in the mentioned study, even the whole preceding year was considered. Hence, these differences indicate that further studies to clarify the possible roles of various types of RASB in COVID-19 prognosis are warranted. The present study has two major limitations. The first one is derived from its retrospective design. As we are reporting on the very first cases of the disease in Spain, several immunological parameters and risk factors of interest were not systematically tested or recorded into medical history. The other restraint is the short follow-up period of patients, which limits the possibility of having a complete follow up of those who were still in hospital by the data collection deadline.

Conclusions

Age has emerged as a crucial factor in our series. Age is also one of the major determinants for all other COVID-19 risk comorbidities, such as hypertension, diabetes, or dyslipidaemia. Angiotensin-converting enzyme inhibitors used by hypertensive patients would have a protective effect against COVID-19 severest forms, opposite to angiotensin II receptor blockers. Our patients are older and develop therefore a severe COVID-19 more often than the previously reported cohorts. Immunosenescence might be a suitable explanation for the immune overwhelming observed in the severest cases. Regarding not only our series but other ones around the world, the effectors of the immune system are hampered as severity increases. Adaptive immunity has been suggested to be disabled by SARS-CoV-2. That feature has been referred to as immunity exhausted. This exhaustion may be coupled with a huge ineffective and almost deleterious innate response. Further studies on the immune system status in SARS-CoV-2 infected patients should be carried out to support the immunosenescence hypothesis as well as deeper analyses on RASB intake. Our data highlight that the elderly are at a special risk of COVID-19 and should therefore be monitored closely by public health services.

Methods

Aim, design, and setting of the study

This study aimed to reveal risk factors regarding severity by outlining, within the shortest possible time, a reliable snapshot of the demographic and clinical characteristics of COVID-19 patients admitted to Spanish hospitals along the first month of the pandemic.

Participants

Our multicentre cohort consisted of the first consecutive set of SARS-CoV-2 infected inpatients, confirmed by a positive PCR test, during the second half of March 2020. Cases were tracked for a three-week follow-up period from admission to discharge. A minimum sample size of 20 patients was considered for every hospital. A total of 642 medical records of individuals over 18 years old, from 19 Spanish hospitals were initially reviewed. After data quality assessment, 584 patients were included in the analyses. Participants were stratified into three severity groups before analysis according to the following clinical criteria: Mild: individuals whose clinical symptoms were mild with no abnormal radiological findings Moderate: cases with confirmed, non-severe pneumonia Severe: those so considered by the physician in charge or meeting at least one of the following criteria: acute respiratory distress, shock, admission to the intensive care unit (ICU). Any “exitus” was as well classified as a severe case.

Data collection

All data were extracted from electronic medical records. The collection form included demographic, epidemiological and clinical data: age, sex, diabetes mellitus (DM), dyslipidaemia, hypertension (HTA), renin-angiotensin system blocker intake (RASB), COVID-19 severity, time from symptom onset to diagnosis, laboratory data on admission and discharge, treatment, and outcome. At the end of data collection, some patients were still in the hospital. In these cases, laboratory data at discharge could not be provided.

Laboratory data

Requested laboratory markers were extracted from medical records on admission and at discharge. Routine blood examinations included leukocyte, neutrophil, and lymphocyte count (cells*10^3/μL) and lymphocyte percentage. Serum biochemical tests recorded were ferritin (μg/L), lactate dehydrogenase (LDH, U/L), C- reactive protein (CRP, mg/L), and D-dimer (μg/L). Immunological tests recorded were interleukin-6 (IL-6, pg/mL), Lymphocyte population count (cells*10^3/μL), and the percentage by flow cytometry, immunoglobulins IgG, IgA, and IgM (mg/dL).

Statistical analysis

Demographic and clinical characteristics of patients were expressed as their mean and standard deviation (SD); when not adjusting to a normal distribution, the median was used to represent non-parametrical data for continuous variables and frequency distributions are reported for categorical variables. Age was analysed both, as a continuous and categorical variable, recoded then into 5 groups: < 30, 30–45, 45–60, 60–75, and > 75. Continuous variables: 1. Normality testing: Kolmogorov-Smirnov test was performed on each continuous variable with more than 30 valid cases to contrast their normal distribution. Any variable with less than 30 valid cases was considered non-parametric for further hypothesis tests. 2. The difference of means (normal variables): To analyse the overall differences between the three groups: mild, moderate, and severe, ANOVA was tested on variables with normal distribution and n > 30 (age, percentage and CD4 lymphocyte count, percentage of CD8 lymphocytes, percentage of CD19 lymphocytes and percentage of NK). 3. The difference of medians: To analyse severity relationships of non-parametric or n < 30 variables, a Kruskal-Wallis test was used. 4. Changes along COVID-19: To compare values of recurrent parameters measured in the same case on admission and at discharge, the Wilcoxon test for paired data was performed. Categorical variables: To contrast the “Ho” of independence within categorical variables, Pearson’s Chi-square and Fisher’s exact test were used.
  44 in total

1.  Clinical characteristics of 161 cases of corona virus disease 2019 (COVID-19) in Changsha.

Authors:  F Zheng; W Tang; H Li; Y-X Huang; Y-L Xie; Z-G Zhou
Journal:  Eur Rev Med Pharmacol Sci       Date:  2020-03       Impact factor: 3.507

2.  Targeting the degradation of angiotensin II with recombinant angiotensin-converting enzyme 2: prevention of angiotensin II-dependent hypertension.

Authors:  Jan Wysocki; Minghao Ye; Eva Rodriguez; Francisco R González-Pacheco; Clara Barrios; Karla Evora; Manfred Schuster; Hans Loibner; K Bridget Brosnihan; Carlos M Ferrario; Josef M Penninger; Daniel Batlle
Journal:  Hypertension       Date:  2009-11-30       Impact factor: 10.190

3.  Clinical Features and Short-term Outcomes of 102 Patients with Coronavirus Disease 2019 in Wuhan, China.

Authors:  Jianlei Cao; Wen-Jun Tu; Wenlin Cheng; Lei Yu; Ya-Kun Liu; Xiaorong Hu; Qiang Liu
Journal:  Clin Infect Dis       Date:  2020-07-28       Impact factor: 9.079

Review 4.  COVID-19 patients' clinical characteristics, discharge rate, and fatality rate of meta-analysis.

Authors:  Long-Quan Li; Tian Huang; Yong-Qing Wang; Zheng-Ping Wang; Yuan Liang; Tao-Bi Huang; Hui-Yun Zhang; Weiming Sun; Yuping Wang
Journal:  J Med Virol       Date:  2020-03-23       Impact factor: 2.327

5.  Renin-Angiotensin-Aldosterone System Blockers and the Risk of Covid-19.

Authors:  Giuseppe Mancia; Federico Rea; Monica Ludergnani; Giovanni Apolone; Giovanni Corrao
Journal:  N Engl J Med       Date:  2020-05-01       Impact factor: 91.245

Review 6.  COVID-19: Immunology and treatment options.

Authors:  Susanna Felsenstein; Jenny A Herbert; Paul S McNamara; Christian M Hedrich
Journal:  Clin Immunol       Date:  2020-04-27       Impact factor: 3.969

7.  Regulation and Trust: 3-Month Follow-up Study on COVID-19 Mortality in 25 European Countries.

Authors:  Atte Oksanen; Markus Kaakinen; Rita Latikka; Iina Savolainen; Nina Savela; Aki Koivula
Journal:  JMIR Public Health Surveill       Date:  2020-04-24

8.  Estimating Risk for Death from Coronavirus Disease, China, January-February 2020.

Authors:  Kenji Mizumoto; Gerardo Chowell
Journal:  Emerg Infect Dis       Date:  2020-06-17       Impact factor: 6.883

9.  Clinical characteristics and outcomes of hospitalised patients with COVID-19 treated in Hubei (epicentre) and outside Hubei (non-epicentre): a nationwide analysis of China.

Authors:  Wen-Hua Liang; Wei-Jie Guan; Cai-Chen Li; Yi-Min Li; Heng-Rui Liang; Yi Zhao; Xiao-Qing Liu; Ling Sang; Ru-Chong Chen; Chun-Li Tang; Tao Wang; Wei Wang; Qi-Hua He; Zi-Sheng Chen; Sook-San Wong; Mark Zanin; Jun Liu; Xin Xu; Jun Huang; Jian-Fu Li; Li-Min Ou; Bo Cheng; Shan Xiong; Zhan-Hong Xie; Zheng-Yi Ni; Yu Hu; Lei Liu; Hong Shan; Chun-Liang Lei; Yi-Xiang Peng; Li Wei; Yong Liu; Ya-Hua Hu; Peng Peng; Jian-Ming Wang; Ji-Yang Liu; Zhong Chen; Gang Li; Zhi-Jian Zheng; Shao-Qin Qiu; Jie Luo; Chang-Jiang Ye; Shao-Yong Zhu; Lin-Ling Cheng; Feng Ye; Shi-Yue Li; Jin-Ping Zheng; Nuo-Fu Zhang; Nan-Shan Zhong; Jian-Xing He
Journal:  Eur Respir J       Date:  2020-06-04       Impact factor: 16.671

10.  Is There an Association Between COVID-19 Mortality and the Renin-Angiotensin System? A Call for Epidemiologic Investigations.

Authors:  Thomas C Hanff; Michael O Harhay; Tyler S Brown; Jordana B Cohen; Amir M Mohareb
Journal:  Clin Infect Dis       Date:  2020-07-28       Impact factor: 9.079

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  15 in total

1.  Correlation of the Imbalance in the Circulating Lymphocyte Subsets With C-Reactive Protein and Cardio-Metabolic Conditions in Patients With COVID-19.

Authors:  Anton V Tyurin; Milyausha K Salimgareeva; Ildar R Miniakhmetov; Rita I Khusainova; Alexandr Samorodov; Valentin N Pavlov; Julia Kzhyshkowska
Journal:  Front Immunol       Date:  2022-05-06       Impact factor: 8.786

Review 2.  Renin-Angiotensin Aldosterone System Inhibitors and COVID-19: A Systematic Review and Meta-Analysis Revealing Critical Bias Across a Body of Observational Research.

Authors:  Jordan Loader; Frances C Taylor; Erik Lampa; Johan Sundström
Journal:  J Am Heart Assoc       Date:  2022-05-27       Impact factor: 6.106

3.  Predictive Immunological, Virological, and Routine Laboratory Markers for Critical COVID-19 on Admission.

Authors:  Mercedes García-Gasalla; Juana M Ferrer; Pablo A Fraile-Ribot; Adrián Ferre-Beltrán; Adrián Rodríguez; Natalia Martínez-Pomar; Luisa Ramon-Clar; Amanda Iglesias; Inés Losada-López; Francisco Fanjul; Joan Albert Pou; Isabel Llompart-Alabern; Nuria Toledo; Jaime Pons; Antonio Oliver; Melchor Riera; Javier Murillas
Journal:  Can J Infect Dis Med Microbiol       Date:  2021-08-02       Impact factor: 2.471

Review 4.  Development of Diagnostic Tests for Detection of SARS-CoV-2.

Authors:  Ngan N T Nguyen; Colleen McCarthy; Darlin Lantigua; Gulden Camci-Unal
Journal:  Diagnostics (Basel)       Date:  2020-11-05

Review 5.  Immune Response to SARS-CoV-2 Infection in Obesity and T2D: Literature Review.

Authors:  Jorge Pérez-Galarza; César Prócel; Cristina Cañadas; Diana Aguirre; Ronny Pibaque; Ricardo Bedón; Fernando Sempértegui; Hemmo Drexhage; Lucy Baldeón
Journal:  Vaccines (Basel)       Date:  2021-01-29

6.  CD4 and CD8 Lymphocyte Counts as Surrogate Early Markers for Progression in SARS-CoV-2 Pneumonia: A Prospective Study.

Authors:  Joan Calvet; Jordi Gratacós; María José Amengual; Maria Llop; Marta Navarro; Amàlia Moreno; Antoni Berenguer-Llergo; Alejandra Serrano; Cristóbal Orellana; Manel Cervantes
Journal:  Viruses       Date:  2020-11-09       Impact factor: 5.048

7.  The age again in the eye of the COVID-19 storm: evidence-based decision making.

Authors:  María C Martín; Aurora Jurado; Cristina Abad-Molina; Antonio Orduña; Oscar Yarce; Ana M Navas; Vanesa Cunill; Danilo Escobar; Francisco Boix; Sergio Burillo-Sanz; María C Vegas-Sánchez; Yesenia Jiménez-de Las Pozas; Josefa Melero; Marta Aguilar; Oana Irina Sobieschi; Marcos López-Hoyos; Gonzalo Ocejo-Vinyals; David San Segundo; Delia Almeida; Silvia Medina; Luis Fernández; Esther Vergara; Bibiana Quirant; Eva Martínez-Cáceres; Marc Boiges; Marta Alonso; Laura Esparcia-Pinedo; Celia López-Sanz; Javier Muñoz-Vico; Serafín López-Palmero; Antonio Trujillo; Paula Álvarez; Álvaro Prada; David Monzón; Jesús Ontañón; Francisco M Marco; Sergio Mora; Ricardo Rojo; Gema González-Martínez; María T Martínez-Saavedra; Juana Gil-Herrera; Sergi Cantenys-Molina; Manuel Hernández; Janire Perurena-Prieto; Beatriz Rodríguez-Bayona; Alba Martínez; Esther Ocaña; Juan Molina
Journal:  Immun Ageing       Date:  2021-05-20       Impact factor: 6.400

Review 8.  The Role of Immunogenetics in COVID-19.

Authors:  Fanny Pojero; Giuseppina Candore; Calogero Caruso; Danilo Di Bona; David A Groneberg; Mattia E Ligotti; Giulia Accardi; Anna Aiello
Journal:  Int J Mol Sci       Date:  2021-03-05       Impact factor: 5.923

9.  Diabetes Mellitus is Associated with Severe Infection and Mortality in Patients with COVID-19: A Systematic Review and Meta-analysis.

Authors:  Luxiang Shang; Mengjiao Shao; Qilong Guo; Jia Shi; Yang Zhao; Jiasuoer Xiaokereti; Baopeng Tang
Journal:  Arch Med Res       Date:  2020-08-07       Impact factor: 2.235

Review 10.  Inflammasome activation at the crux of severe COVID-19.

Authors:  Setu M Vora; Judy Lieberman; Hao Wu
Journal:  Nat Rev Immunol       Date:  2021-08-09       Impact factor: 53.106

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