Literature DB >> 35778464

Characteristics and mortality of 561,379 hospitalized COVID-19 patients in Germany until December 2021 based on real-life data.

Jan Andreas Kloka1, Lea Valeska Blum1, Oliver Old1, Kai Zacharowski1, Benjamin Friedrichson2.   

Abstract

The ongoing SARS-CoV-2 pandemic is characterized by poor outcome and a high mortality especially in the older patient cohort. Up to this point there is a lack of data characterising COVID-19 patients in Germany admitted to intensive care (ICU) vs. non-ICU patients. German Reimbursement inpatient data covering the period in Germany from January 1st, 2020 to December 31th, 2021 were analyzed. 561,379 patients were hospitalized with COVID-19. 24.54% (n = 137,750) were admitted to ICU. Overall hospital mortality was 16.69% (n = 93,668) and 33.36% (n = 45,947) in the ICU group. 28.66% (n = 160,881) of all patients suffer from Cardiac arrhythmia and 17.98% (n = 100,926) developed renal failure. Obesity showed an odds-ratio ranging from 0.83 (0.79-0.87) for WHO grade I to 1.13 (1.08-1.19) for grade III. Mortality-rates peaked in April 2020 and January 2021 being 21.23% (n = 4539) and 22.99% (n = 15,724). A third peak was observed November and December 2021 (16.82%, n = 7173 and 16.54%, n = 9416). Hospitalized COVID-19 patient mortality in Germany is lower than previously shown in other studies. 24.54% of all patients had to be treated in the ICU with a mortality rate of 33.36%. Congestive heart failure was associated with a higher risk of death whereas low grade obesity might have a protective effect on patient survival. High admission numbers are accompanied by a higher mortality rate.
© 2022. The Author(s).

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Year:  2022        PMID: 35778464      PMCID: PMC9247915          DOI: 10.1038/s41598-022-15287-3

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.996


Introduction

The ongoing COVID-19 pandemic is affecting people worldwide since the first reported case. Up to the end of October, more than 246 million cases and up to 5 million deaths have been reported[1,2]. The number of unreported cases is probably much higher. This makes the COVID-19 pandemic one of the deadliest in history. Infection with the SARS-CoV-2 virus presents with a wide variety of symptoms—From none to life threatening. This complicates the detection and containment of the virus. With the worldwide spread of the SARS-CoV-2 virus, a burden has been placed on the health care systems worldwide. Especially the intensive care units (ICU) as a limited resource were occupied with the care of COVID-19 patients. In some countries, the ICU capacities reached their limits[3,4], resulting in catastrophic outcomes for the patients. Over the pandemic, admission rates to ICU and mortality rate varied strongly. In the early phase of the pandemic, first reports and characterisations based on smaller populations mainly in China suggested only mild symptoms in 80% of the cases[5-8]. 20% needed hospital treatment and 20% of the hospitalized patients required ICU treatment[6,7,9]. Those numbers vary within the European Union[10]. Estimates suggest that between 10 and 20% of SARS-CoV-2 patients become so severely ill, that hospital treatment is required. In addition, the proportion of infected people who require intensive care also varies between 5 and 32%[10,11]. Therefore, it is important to be able to adequately calculate the resources of the health care system to avoid a collapse of the system in the event of another wave. The present study therefore provides up-to-date data based on which calculations could be made. The aim of this observational study is to describe the dynamic of the pandemic in Germany and identify the underlying characteristics of hospitalized patients from January 2020 until the end of December 2021, based on data from the German Institute for Hospital Remuneration System (InEK).

Materials and methods

Inclusion criteria

All hospitalized patients in Germany with proven SARS-CoV-2 infection between January 1st, 2020 and December 31th, 2021 were included.

Definitions and data acquisition

We divided patients into subgroups in dependence of admission to the ICU or to the general ward (non-ICU) and distinguished in both subgroups between survivors and non-survivors. The collected data included age, comorbidities (congestive heart failure, arterial hypertension, chronic pulmonary disease, diabetes and obesity), complications (acute renal failure, dialysis, cardiac arrhythmias, cardiopulmonary resuscitation (CPR), embolism, thrombosis, myocardial infarction, pulmonary embolism, intracranial hemorrhage and stroke), length of hospital stay and mortality. Due to our findings associated with obesity, we used and subdivided obesity according to the WHO-definition into grade I, II and III. Diagnoses were coded according to the tenth revision of the International Classification of Diseases (ICD) and procedures were coded according to the International Classification of Procedures in Medicine in the version of 2020 (Table 1). The InEK only allows anonymized queries; there is no possibility to track a case back to a patient and therefore no further analysis is possible at the individual case level. In this study, we included only patients with a confirmed SARS-CoV-2 infection by Real-Time-(RT)-PCR (ICD U07.1) and admitted to hospital between January 1st, 2020 and December 31th, 2021.
Table 1

DRG and OPS codes.

ComorbitiyOPSICD-10
Arterial hypertensionI10.x, I11.x–I13.x, I15.x
Chronic pulmonary diseaseI27.8, I27.9, J40.x–J47.x, J60.x–J67.x, J68.4, J70.1, J70.3
Congestive heart failureI09.9, I11.0, I13.0, I13.2, I25.5, I42.0, I42.5 I42.9, I43.x, I50.x, P29.0
DiabetesE10.0, E10.1, E10.9, E11.0, E11.1, E11.9, E12.0, E12.1, E12.9, E13.0, E13.1, E13.9, E14.0, E14.1, E14.9, E10.2–E10.8, E11.2–E11.8, E12.2E12.8, E13.2–E13.8, E14.2–E14.8
ObesityE66.x
Complication
Intracranial hemorrhageI60.x, I61.x, I62.x
Cardiac arrhytthmiasI44.1–I44.3, I45.6, I45.9, I47.x–I49.x, R00.0, R00.1, R00.8, T82.1, Z45.0, Z95.0
Cardiopulmonary resuscitation8–771, 8–772, 8–779
Embolism/thrombosisI74.x
Myocardial infarctionI21., I22., I24
Pulmonary embolismI26.x
Renal failureI12.0, I13.1, N18.x, N19.x, N25.0, Z49.0Z49.2, Z94.0, Z99.2
Renal replacement therapy8–853., 8–854., 8–855
StrokeI63, I64

Allocation of diagnosis related groups (DRG) and operation and procedure (OPS) codes as they are coded for reimbursement purposes in Germany.

DRG and OPS codes. Allocation of diagnosis related groups (DRG) and operation and procedure (OPS) codes as they are coded for reimbursement purposes in Germany. Existing comorbidities (e.g. arterial hypertension, ICD I10.x, I11.x–I13.x, I15.x) and complications were defined by their respective ICD codes (Table 1).

Statistical analysis

The data were descriptively analyzed. Categorical variables are expressed as absolute numbers and percentages. Due to the lack of median and quartiles in the data source, continuous variables were calculated using mean and standard deviation (SD). Due to the aggregated data, only group comparisons of categorical variables were possible. The OR were calculated by means of 2 × 2 frequency tables. For this purpose, the Pearson Chi square test with an assumed significance level of 0.05 was utilized and the OR was determined with the 95% confidence interval (CI). Excel 2019 (Microsoft Corp., Seattle, WA, USA) and Python with SciPy and the statsmodels (sm) package were used for the analyses.

Ethics approval and consent to participate

Due to the institutional anonymization, no conclusions can be drawn about individual patients. According to §21KHEntgG the reimbursement data is free for scientific use. The Ethics Committee of the University Hospital Frankfurt waived the need for an Ethical Committee approval for this study (Chair: Prof. Dr. Harder, Ref: 2022-766). All data processing was performed in accordance with the Declaration of Helsinki.

Consent for publication

As this are anonymised register data, no consensus of the patients can be collected.

Results

A total of 561,379 patients were hospitalized with a confirmed SARS-CoV-2 infection in Germany from January 1st, 2020 to December 31th, 2021 and analyzed in this study.

Patients’ characteristics

The proportion of female hospitalized patients was 47.65% (n = 267,516) overall. In total, 75.46% (n = 423,611) non-ICU and 24.54% (n = 137,750) ICU patients (Table 2). The biggest group was aged 80 years or older, being 30.07% (n = 168,779) overall. Divided in groups ICU and non-ICU and subgroups survivors and non-survivors: Patients aged 80 years or older had the highest conditional (relative) frequencies in non-ICU overall (32.17% (n = 136,270)), non-ICU-survivors (26.72% (n = 100,430)), non-ICU-non-survivors (75.10% (n = 35,840)), ICU overall (32.17% (n = 136,270)) and ICU-non- survivors (37.04% (n = 17,020)). The biggest age group in ICU-survivors was 65–74 years (22.63% (n = 20,772).
Table 2

Demographic data.

DemographicTotal in-patientAdmission to general wardAdmission to ICU
n%n%n%
Total561,379100423,61175.46137,75024.54
Male293,83352.34207,71549.0386,10662.51
Female267,51647.65215,87450.9651,63637.49
Mortality93,66816.6947,72111.2745,94733.36
Age groups
 < 28 days11050.209010.212040.15
28 days–1 year32250.5730500.721750.13
1–2a17040.3015590.371450.11
3–5a11300.2010210.241090.08
6–9a13520.2412180.291340.1
10–15a28700.5126130.622570.19
16–17a17810.3216100.381710.12
18–29a22,4003.9919,8874.6925131.82
30–39a34,0526.0728,9286.8351233.72
40–49a43,9167.8234,0968.0598187.13
50–54a33,8786.0324,9205.8889556.50
55–59a42,1697.5129,7517.0212,4179.01
60–64a45,3428.0830,3087.1515,03110.91
65–74a97,43517.3664,84515.3132,58823.66
75–79a60,24110.7342,63410.0617,60712.78
 ≥ 80a168,77930.07136,27032.1732,50323.60

Demographic data of inpatient in Germany from January 1st 2020 to December 31th 2021 with a positive SARS-CoV-2 PCR Test. Admission to general ward or admission to Intensive Care Unit (ICU).

Demographic data. Demographic data of inpatient in Germany from January 1st 2020 to December 31th 2021 with a positive SARS-CoV-2 PCR Test. Admission to general ward or admission to Intensive Care Unit (ICU).

Length of in-hospital stay (LOS) comorbidities, complications and mortality rate

In all patients the LOS was 11.2 (SD = 12.2) days in 2020 and 11.7 (SD = 12.4) days in 2021. The most common comorbidity in all hospitalized patients was arterial hypertension (51.94% n = 291,577), followed by congestive heart failure (24.32% n = 136,505). In the non-ICU-group arterial hypertension was the most common comorbidity in survivors (47.82% (n = 179,738)) and non-survivors (61.79% (n = 29,489)), followed by congestive heart failure (17.25% (n = 179,738) in survivors and 61.79% (n = 29,489) in non-survivors, respectively. All other comorbidities and their frequencies in subgroups are displayed in Table 3.
Table 3

Comorbidities and complications.

OverallNon-ICUICU
SurvivorsNon-survivorsp valueOR (95% CI)SurvivorsNon-survivorsp valueOR (95% CI)SurvivorsNon-survivorsp valueOR (95% CI)
Total561,379467,69393,668375,88847,72191,79945,947
n%n%n%n%n%n%n%
Comorbitiy
Arterial hypertension291,57751.94233,78249.9957,79561.7 < 0.0011.61 (1.58–1.64)179,73847.8229,48961.79 < 0.0011.76 (1.73–1.80)54,01258.8428,29561.58 < 0.0011.12 (1.10–1.15)
Chronic pulmonary disease59,62710.6246,7289.9912,89913.77 < 0.0011.44 (1.41–1.47)34,7289.24532711.16 < 0.0011.23 (1.20–1.27)11,97513.04754816.43 < 0.0011.31 (1.27–1.35)
Congestive heart failure136,50524.3291,36619.5445,13948.19 < 0.0013.81 (3.78–3.89)64,85317.2522,36046.86 < 0.0014.23 (4.15–4.31)26,49628.8622,77249.56 < 0.0012.42 (2.37–2.48)
Diabetes40,8307.2729,8076.3711,02311.77 < 0.0011.96 (1.92–2.01)21,9785.85533011.17 < 0.0012.03 (1.96–2.09)77518.44563112.26 < 0.0011.51 (1.46–1.57)
Obesity (total)36,5806.5230,5016.5260796.490.7261.00 (0.97–1.02)19,3305.1413872.91 < 0.0010.55 (0.52–0.58)11,14212.14468610.2 < 0.0010.81 (0.79–0.85)
WHO grade I13,7512.4511,7362.5120152.15 < 0.0010.83 (0.79–0.87)81122.165891.23 < 0.0010.55 (0.50–0.60)36193.9414263.1 < 0.0010.77 (0.72–0.82)
WHO grade II85851.5372211.5413641.460.0470.92 (0.86–0.97)45301.212980.62 < 0.0010.50 (0.44–0.56)26852.9210632.31 < 0.0010.78 (0.72–0.83)
WHO grade III10,2391.8283091.7819302.06 < 0.0011.13 (1.08–1.19)46891.253090.65 < 0.0010.50 (0.44–0.56)36133.9416213.53 < 0.0010.88 (0.83–0.94)
Complication
Intracranial hemorrhage29580.5314340.3115241.63 < 0.0015.38 (5.00–5.78)3630.11270.27 < 0.0012.76 (2.25–3.38)10421.1413652.97 < 0.0012.67 (2.46–2.89)
Cardiac arrhytthmias160,88128.66112,2472448,63451.92 < 0.0013.42 (3.37–3.47)80,03621.2921,94645.99 < 0.0013.14 (3.09–3.21)32,20335.0826,66758.04 < 0.0012.56 (2.50–2.62)
Cardiopulmonary resuscitation97281.7320080.4377208.24 < 0.00120.83 (19.82- 21.89)1120.0311842.48 < 0.00185.36 (70.31–103.64)18962.07653614.23 < 0.0017.86 (7.46–8.29)
Embolism/ thrombosis24530.4415250.339280.99 < 0.0013.06 (2.82–3.32)5290.141840.39 < 0.0012.75 (2.32 -3.25)9931.087401.61 < 0.0011.50 (1.36–1.65)
Myocardial infarction67261.2039870.8527392.92 < 0.0013.50 (3.34–3.68)17060.459131.91 < 0.0014.28 (3.95–4.64)22662.4718143.95 < 0.0011.62 (1.53–1.73)
Pulmonary embolism12,7302.2789741.9237564.01 < 0.0012.14 (2.05–2.22)44541.187571.59 < 0.0011.34 (1.24–1.45)45204.9229996.53 < 0.0011.35 (1.28–1.41)
Renal failure100,92617.9871,27715.2429,64931.65 < 0.0012.58 (2.54–2.62)56,74415.116,92035.46 < 0.0013.09 (3.03–3.15)14,52715.8212,72127.69 < 0.0012.03 (1.98–2.09)
Renal replacement therapy31,8475.6714,3463.0717,50118.68 < 0.0017.26 (7.09–7.43)43981.178841.85 < 0.0011.59 (1.48–1.72)988810.7716,55736.03 < 0.0014.67 (4.54–4.80)
Stroke50040.8932860.717181.83 < 0.0012.64 (2.49–2.80)10360.284120.86 < 0.0013.15 (2.81–3.53)22502.4513012.83 < 0.0011.16 (1.08–1.24)

Comorbidities and complications among SARS-CoV-2 positive patients in Germany from Jan 2020 to end of December 2021. The percentages refer column wise to the corresponding group.

OR odds ratio, CI confidence interval.

Comorbidities and complications. Comorbidities and complications among SARS-CoV-2 positive patients in Germany from Jan 2020 to end of December 2021. The percentages refer column wise to the corresponding group. OR odds ratio, CI confidence interval. The most common complication was cardiac arrhythmia overall, coded in 28.66% (n = 160,881) of the patients overall and in every subgroup, as well. Especially in non-survivor group in ICU patients 58.04% (n = 26,667) and non-ICU patients 45.99% (n = 21,946), respectively. In each non-survivor group the rates were significantly higher, compared to the survivor group (Table 3). Overall, 17.98% (n = 100,926) patients developed renal failure. The highest conditional (relative) frequency of patients needing dialysis was seen in non-survivors non-ICU-patients being 35.46% (n = 16,920). Cardiopulmonary resuscitation (CPR) was performed in 1.73% (n = 9728) of all COVID-19 inpatients. In non-survivor ICU-patients 14.23% (n = 6536) were treated with CPR. Pulmonary embolism occurred in 2.27% (n = 12,730) of all patients. Our data shows an overall mortality rate of 16.69% (n = 93,668), 11.27% (n = 47,721) in non-ICU patients, and 33.36% (n = 45,947) in ICU-patients, respectively.

Comparison survivors vs. non-survivors

The highest OR for comorbidity was seen in congestive heart failure (Overall: OR: 3.81 (3.78–3.89) non-ICU: OR: 4.23 (4.15–4.31) ICU: OR: 2.42 (2.37–2.48)). Obesity WHO grade I and II were the only comorbidities in which an OR < 1 was seen. In particular in obesity WHO grade I (Overall: OR: 0.83 (0.79–0.87), non-ICU: OR: 0.55 (0.50–0.60), ICU: OR: 0.77 (0.72–0.82)) (Table 3). There is a significant difference between the groups of non-survivor/survivor within all complications (p < 0.001). The highest OR for the non-survivor groups were seen in CPR (Overall: OR: 20.83 (19.82–21.89) non-ICU: OR: 85.36 (70.31–103.64) ICU: OR: 7.86 (7.46–8.29)). Followed by renal replacement therapy in patients overall (OR: 7.26 (7.09–7.43)), renal failure in non-ICU patients (OR: 3.09 (3.03–3.15)) and embolism or thrombosis in non-ICU patients (OR: 2.75 (2.32–3.25)). (Table 3).

Analysis in the context of time course

The observed in-hospital mortality-rates fluctuated during the analyzed and showed three peaks: April 2020 and January 2021 being 21.23% (n = 4539) and 22.99% (n = 15,724) and in November, December 2021 (16.82%, n = 7173 and 16.54%, n = 9416) (Fig. 1, Table 4).
Figure 1

Mortality, vaccination and corona cases over time in Germany. Mortality of in hospital patients compared to COVID-19 vaccination and number of COVID-19 cases in Germany over time. Corona cases in Germany [n]. Fraction of mortality for 60 years [%]. Vaccinated percentage of age group 60 years [%] and total mortality [%] over time.

Table 4

Mortality.

MortalityMar 20Apr 20May 20Jun 20Jul 20Aug 20Sep 20Oct 20Nov 20Dec 20Jan 21Feb 21Mar 21Apr 21May 21Jun 21Jul 21Aug 21Sep 21Oct 21Nov 21Dec 21
16.5821.2314.358.616.826.326.759.6515.7021.7822.9918.6913.9313.4013.2910.718.055.539.6813.8416.8216.54
Age groups<28 days0.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.00
28 d–1 year0.000.000.000.000.000.000.000.000.000.000.610.000.000.000.610.002.700.000.000.000.000.21
1–20.000.000.000.008.330.000.000.000.000.000.000.000.000.561.830.000.000.000.000.000.500.94
3–50.006.250.000.000.000.000.000.000.000.000.000.001.410.002.780.000.000.000.001.470.761.17
6–90.000.000.000.000.000.000.000.001.271.850.000.000.000.000.000.000.000.000.001.590.680.00
10–150.000.000.000.000.000.000.001.270.440.000.000.000.000.001.140.000.000.000.561.290.000.44
16–170.003.700.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.581.00
18–290.790.371.200.000.001.440.000.230.480.260.550.550.590.420.910.230.290.160.920.570.820.82
30–390.240.951.790.930.000.440.750.560.481.001.101.491.460.971.562.141.400.551.422.011.281.63
40–491.052.423.871.702.390.580.521.061.562.273.112.972.102.243.604.113.431.522.803.363.143.90
50–543.094.664.743.552.142.402.021.342.704.146.035.963.684.335.226.727.981.604.634.725.807.43
55–594.286.877.795.113.413.462.752.364.186.708.917.435.586.238.279.359.174.465.728.318.0410.28
60–647.2511.488.188.848.756.134.153.707.1211.3312.0210.938.729.3010.1111.4210.397.419.4011.2011.6912.98
65–7412.9718.9715.0110.938.257.766.778.5612.2817.7520.1416.7514.0116.5217.0714.5313.4112.4915.9217.0917.1319.29
75–7926.0427.8618.2712.0415.5714.3818.0114.3920.9525.0124.5622.2319.5722.6322.7815.4114.6117.5623.8520.0022.7121.24
≥ 8049.6938.3321.4314.3015.1419.2120.9328.5033.2235.7234.2027.7826.4029.7227.5917.0813.3024.1528.2630.3831.9128.52
SexMale18.4823.4116.599.207.997.327.8010.6417.2724.4125.8521.2615.4615.0615.0412.388.706.1710.6415.3818.7718.84
Female13.9218.5911.767.865.265.125.548.5313.9819.0920.0615.9612.2211.4711.168.657.274.868.6212.1714.7313.98

Mortality [%] over time by age subgroups from January 2020 to end of December 2021.

Mortality, vaccination and corona cases over time in Germany. Mortality of in hospital patients compared to COVID-19 vaccination and number of COVID-19 cases in Germany over time. Corona cases in Germany [n]. Fraction of mortality for 60 years [%]. Vaccinated percentage of age group 60 years [%] and total mortality [%] over time. Mortality. Mortality [%] over time by age subgroups from January 2020 to end of December 2021. Within the whole-time patients aged 60 years or older had the highest mortality in all hospitalized patients. Analyzed by the time trend of the data divided into months from January 2021 until the end of December 2021, in every month the highest mortality was observed in the age group 80–85 years, with particularly high mortality in months when hospitalization rates were the highest (Fig. 1, Table 4).

Discussion

This retrospective study includes a cohort of 561,379 hospitalized patients from January 1st, 2020 to December 31th, 2021 with a positive SARS-CoV-2 PCR test. Our main findings are a mortality rate of 16.69% overall. Between months of the ongoing pandemic, the mortality fluctuates. Especially in the “third wave”, a noticeable decrease in the proportion of elderly patients was seen. The COVID-19 pandemic in Germany in the analyzed period can be described in four waves: the first one from March until May 2020[12], the second one from October 2020 until January 2021[12] and a third wave from March until April 2021[13]. In the end of 2021 Germany went through the fourth wave. The cause of the undulating course of infection numbers is multifactorial, main reasons are higher temperatures in spring/summer[14], social distancing and shutdown measures by the government[13].

Mortality rate

The mortality rate of 16.69% overall is lower than previously described mortality-rates. Richardson et al. described 5700 hospitalized patients diagnosed with COVID-19 in New York from March until April 2020 and found a mortality rate of 21%, overall but a particularly lower rate of ICU-patients (12.2%)[15]. Karagiannidis et al. described over 10,000 patients suffering from COVID-19 in Germany from February until April 2020 in Germany and found a mortality rate of 22% overall[16]. This might be explained by the fact that previous studies describe a shorter time period. In December of 2020 the vaccine against COVID-19 was licensed in Germany[17]. Over time, more and more treatment options are being explored, and guidelines for the treatment of COVID-19 infection continue to evolve on a regular basis. Due to prioritization rules the vaccines were only available for patients over 75 years of age, employees in high-risk facilities and patients with defined comorbidities were vaccicinated[17]. The prioritization was lifted in May 2021. The first “vaccination effect” may occur in January 2021, which could explain the decreasing proportion of patients aged 60 years or older from there on. In contrast to that we found higher mortality rates in ICU patients, being 33.36%. A possible explanation might the higher capacity of ICU-beds in germany[16] and therefore the possibility to admit patients with more comorbidities or at higher age to the ICU, while in some countries ICUs reached their capacity limit[3]. Our data shows a distinct mortality between minors (< 18 years) and old adults (> 60 years). Compared to the German population (17%, in 2020) and the share of SARS-CoV-2 infected persons (29%), the group of children (< 18 years) is significantly underrepresented among all hospitalised patients (2.35%, Table 2)[18,19]. Furthermore, 9% (< 18 years) against 26% (> 60 years) conditional on the respective group were admitted to ICU. There a various explanation for this finding. Children have less comorbidities such as obesity, diabetes, cancer and other chronic diseases. Children and adults show a different immune response to a viral infection, protecting children from severe COVID-19[20]. Our findings can also be explained with a difference in the expression of ACE2-receptor, the primary receptor of SARS-CoV-2[21]. Children express lower levels of ACE2[21] and therefore have fewer symptoms and a better prognosis[22].

Comorbidities

Arterial hypertension was the most common comorbidity in our study (51.94% (n = 291,577) overall), this result is in line with other studies describing hypertension as the most common comorbidity with rates of 42%[23] up to 56%[16]. Obesity is known to be a risk factor for COVID-19[24] and is associated with higher mortality[11]. The incidence of 6.52% for obesity is lower than rates described in the UK (10.2%)[11] or France (47.6%)[25]. Surprisingly our data showed a reduced odd for death in patients with low grade obesity, especially WHO grade I (non-ICU: 0.55 (0.50–0.60) and ICU: 0.77 (0.72–0.82), respectively). Dana et al. found a lower risk of death for critically ill COVID-19 patients among patients with moderate obesity[26]. This finding is not in line with other studies[27]. However, the Centers for Disease Control and Prevention (CDC) states that patients at the “threshold” between healthy weight and overweight are at lower risk for hospitalization, ICU admission, and death while the risk for mechanically ventilation raised continuously with rising body mass index (BMI)[28]. Our findings support the statement of the CDC. Patients with a low grade overweight (WHO grade I) have a higher chance of survival (With increasing obesity, the effect is lost and the overweight becomes a risk factor for the patient (WHO grade III, OR: 1.13 (1.08–1.19)). However, overweight and moderate obesity are known to have a protective effect on hospitalized non-COVID-19 ICU-Patients[29]. This effect is not yet fully understood and often controversially referred to as “obesity paradox”[30]. With a lower rate of high grade obese patients admitted to the hospital, more patients are at the “threshold” described by the CDC. Foo et al. described for every 1% increase in obesity prevalence, the COVID-19 mortality rate was increased by 8.3%[31]. This might explain our finding. We could find a significant difference in the frequency of patients suffering from congestive heart failure between survivors and non-survivors, with a bigger frequency of heart failure in non-survivors. One possible explanation is that patients suffering from heart failure have a higher overall frailty and are at higher risk for acute cardiac injury. Several studies investigated cardiovascular manifestations and mechanisms in patients suffering from COVID-19 and showed a high prevalence of cardiovascular comorbidities[32] and a higher risk for mortality in patients suffering from cardiovascular comorbidities or cardiac injury[32,33]. Jabri et al. described a significant increase in stress cardiomyopathy during the pandemic[34], furthermore a frequent occurrence of cor pulmonale in COVID-19 patients has been described[35]. All this factors explain the high proportion of cardiac comorbidities in hospitalized patients and the increase of those diagnoses in the non-survivor groups.

Complications

We found arrhythmias to be the most common complication in our study. We showed a rate of 42.74% (n = 58,870) for ICU patients. This result is comparable to a study by Duo et al. who described a rate of 44.4% among ICU patients in a study investigating 138 patients overall[32]. Electrocardiographic abnormalities are often described in patients suffering from COVID-19[36,37]. One underlying reason may be the mismatch between oxygen supply and oxygen demand resulting in cardiac injury. Therefore, the high OR for death is not surprising. Thrombotic events are often seen in COVID-19 patients. Those events are associated with a more severe disease and increased mortality[38,39]. The molecular explanation range from COVID-19-associated coagulopathy to genetic predisposition and is still subject to research[40,41]. Our findings are in line with literature, we showed a pulmonary embolism rate of 2.27% (n = 12,730) for all hospitalized COVID-19 patient. Patients suffering from pulmonary embolism have a higher chance of dying (OR: 2.14 (2.05–2.22)). OR on ICU is lower (OR: 1.35 (1.28–1.41). One explanation for this could be that more radiological examinations are performed on ICU and therefore associated with a higher number of incidental findings without clinical relevance[42]. A second explanation is that patients on ICU are more likely to be sufficiently anticoagulated, as recommended in guidelines[43,44]. Unfortunately, medication application such as anticoagulation is not provided in the reimbursement data. Renal failure is a common complication in patients suffering from COVID-19[15,45]. The observed rate of patients with acute kidney failure (17.98% n = 100,926) is in line with other studies, describing rates between 20 and 40%[15,45]. The higher proportion of patients with renal replacement therapy (RRT) in the ICU-group might be explained by the fact that needing dialysis is a common reason to be admitted to the ICU. Patients who had been diagnosed with acute kidney failure and a following admission to the ICU are displayed in the ICU-group only. In our study 5.67% (n = 31,847) patients needed RRT, this result seems to be higher than in other studies, for example Richardson et al. described a rate of 3.2%. COVID-19 patients are more likely to suffer from in-hospital-cadiac-arrest (IHCA)[46]. In our study 1.73% (n = 9728) of all patients received CPR. The OR of dying was remarkably higher on the normal ward compared to the ICU. This is in accordance to the literature. Acharya et al. described a IHCA for non-ICU patients in 2.2% (in our study: 2.48%) and for ICU patients in 15.4% (in our study 14.2%)[47]. A possible cause for the high difference between non-ICU and ICU patients might be the longer timespan between the circulatory arrest and the actual start of CPR due to the lack of monitoring[48]. This study is the first in Germany to describe the course of the pandemic from the beginning to the end of December 2021, covering 561 379 hospitalized COVID-19 Patients. Further studies should be conducted to identify risk factors for an adverse course of the disease. On one hand, this could help to identify patients with a special risk profile at an early stage (for example Simonnet et al. investigated obesity as a risk factor[25]) or, on the other hand, serve as criteria in possible triaging.

Conclusion

The overall mortality rate of 16.69% in COVID-19 patients in Germany is lower than previously shown in other studies. 24.54% of all patients had to be treated on the ICU with a mortality rate of 33.36%, which was high in comparison to the literature. Congestive heart failure was associated with a significantly higher risk of death. In non-ICU patients suffering from congestive heart failure the OR was especially high, being 4.23 (4.15–4.31). The most common comorbidity in all COVID-19 patients was arterial hypertension. The most common complication were arrhythmias, which were diagnosed significantly more often in non-survivors (p < 0.001). In COVID-19 patients CPR is associated with a high chance of death, especially on normal wards (OR: 85.36 (70.31–103.64)). With an OR: 0.83 (0.79–0.87) WHO grade I obesity might have a protective effect of the patient’s survival. Pre-existing cardiac conditions appear to carry a particularly high risk in patients suffering from COVID-19. Due to the limited data, no further research could be done, so it is extremely important to make this data available to the scientific community in order to gain a wider insight and better understand possible causal relationships.

Limitations

Due to the provision of data by the InEK during the year, only highly aggregated data are available and no further detailed queries are possible. Patients’ age is only available in the provided subgroups, so no further analysis like mean or median age can be made. As the data (e.g. comorbidities) were anonymized and cannot be tracked back to a single patient further analysis such as linear regression are not possible. Laboratory findings or medication are not coded for reimbursement and are therefore not available for analysis.
  42 in total

Review 1.  Incidental findings in imaging diagnostic tests: a systematic review.

Authors:  B Lumbreras; L Donat; I Hernández-Aguado
Journal:  Br J Radiol       Date:  2010-04       Impact factor: 3.039

Review 2.  COVID-19, immunothrombosis and venous thromboembolism: biological mechanisms.

Authors:  Joan Loo; Daniella A Spittle; Michael Newnham
Journal:  Thorax       Date:  2021-01-06       Impact factor: 9.139

3.  Association of Cardiac Injury With Mortality in Hospitalized Patients With COVID-19 in Wuhan, China.

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Journal:  JAMA Cardiol       Date:  2020-07-01       Impact factor: 14.676

4.  Hospitalization and Critical Care of 109 Decedents with COVID-19 Pneumonia in Wuhan, China.

Authors:  Rong-Hui Du; Li-Min Liu; Wen Yin; Wen Wang; Lu-Lu Guan; Ming-Li Yuan; Yu-Lei Li; Yi Hu; Xu-Yan Li; Bing Sun; Peng Peng; Huan-Zhong Shi
Journal:  Ann Am Thorac Soc       Date:  2020-07

5.  Clinical features of patients infected with 2019 novel coronavirus in Wuhan, China.

Authors:  Chaolin Huang; Yeming Wang; Xingwang Li; Lili Ren; Jianping Zhao; Yi Hu; Li Zhang; Guohui Fan; Jiuyang Xu; Xiaoying Gu; Zhenshun Cheng; Ting Yu; Jiaan Xia; Yuan Wei; Wenjuan Wu; Xuelei Xie; Wen Yin; Hui Li; Min Liu; Yan Xiao; Hong Gao; Li Guo; Jungang Xie; Guangfa Wang; Rongmeng Jiang; Zhancheng Gao; Qi Jin; Jianwei Wang; Bin Cao
Journal:  Lancet       Date:  2020-01-24       Impact factor: 79.321

6.  Features of 20 133 UK patients in hospital with covid-19 using the ISARIC WHO Clinical Characterisation Protocol: prospective observational cohort study.

Authors:  Annemarie B Docherty; Ewen M Harrison; Christopher A Green; Hayley E Hardwick; Riinu Pius; Lisa Norman; Karl A Holden; Jonathan M Read; Frank Dondelinger; Gail Carson; Laura Merson; James Lee; Daniel Plotkin; Louise Sigfrid; Sophie Halpin; Clare Jackson; Carrol Gamble; Peter W Horby; Jonathan S Nguyen-Van-Tam; Antonia Ho; Clark D Russell; Jake Dunning; Peter Jm Openshaw; J Kenneth Baillie; Malcolm G Semple
Journal:  BMJ       Date:  2020-05-22

Review 7.  Management of acute kidney injury in patients with COVID-19.

Authors:  Claudio Ronco; Thiago Reis; Faeq Husain-Syed
Journal:  Lancet Respir Med       Date:  2020-05-14       Impact factor: 30.700

Review 8.  Cardiovascular Manifestations and Mechanisms in Patients with COVID-19.

Authors:  Qingyu Dou; Xin Wei; Kehua Zhou; Shujuan Yang; Peng Jia
Journal:  Trends Endocrinol Metab       Date:  2020-10-16       Impact factor: 12.015

9.  Systematic review of COVID-19 in children shows milder cases and a better prognosis than adults.

Authors:  Jonas F Ludvigsson
Journal:  Acta Paediatr       Date:  2020-04-14       Impact factor: 4.056

Review 10.  Obesity: A critical risk factor in the COVID-19 pandemic.

Authors:  See Kwok; Safwaan Adam; Jan Hoong Ho; Zohaib Iqbal; Peter Turkington; Salman Razvi; Carel W Le Roux; Handrean Soran; Akheel A Syed
Journal:  Clin Obes       Date:  2020-08-28
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1.  Characteristics and Outcomes of People With Gout Hospitalized Due to COVID-19: Data From the COVID-19 Global Rheumatology Alliance Physician-Reported Registry.

Authors:  Kanon Jatuworapruk; Anna Montgomery; Milena Gianfrancesco; Richard Conway; Laura Durcan; Elizabeth R Graef; Aruni Jayatilleke; Helen Keen; Adam Kilian; Kristen Young; Loreto Carmona; Adriana Karina Cogo; Alí Duarte-García; Laure Gossec; Rebecca Hasseli; Kimme L Hyrich; Vincent Langlois; Saskia Lawson-Tovey; Armando Malcata; Elsa F Mateus; Martin Schafer; Carlo Alberto Scirè; Valgerdur Sigurdardottir; Jeffrey A Sparks; Anja Strangfeld; Ricardo M Xavier; Suleman Bhana; Monique Gore-Massy; Jonathan Hausmann; Jean W Liew; Emily Sirotich; Paul Sufka; Zach Wallace; Pedro M Machado; Jinoos Yazdany; Rebecca Grainger; Philip C Robinson
Journal:  ACR Open Rheumatol       Date:  2022-08-24

2.  Body Mass Index and Risk for COVID-19-Related Hospitalization in Adults Aged 50 and Older in Europe.

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