Literature DB >> 32860214

Risk factors for Covid-19 severity and fatality: a structured literature review.

Dominik Wolff1, Sarah Nee2, Natalie Sandy Hickey2, Michael Marschollek2.   

Abstract

PURPOSE: Covid-19 is a global threat that pushes health care to its limits. Since there is neither a vaccine nor a drug for Covid-19, people with an increased risk for severe and fatal courses of disease particularly need protection. Furthermore, factors increasing these risks are of interest in the search of potential treatments. A systematic literature review on the risk factors of severe and fatal Covid-19 courses is presented.
METHODS: The review is carried out on PubMed and a publicly available preprint dataset. For analysis, risk factors are categorized and information regarding the study such as study size and location are extracted. The results are compared to risk factors listed by four public authorities from different countries.
RESULTS: The 28 records included, eleven of which are preprints, indicate that conditions and comorbidities connected to a poor state of health such as high age, obesity, diabetes and hypertension are risk factors for severe and fatal disease courses. Furthermore, severe and fatal courses are associated with organ damages mainly affecting the heart, liver and kidneys. Coagulation dysfunctions could play a critical role in the organ damaging. Time to hospital admission, tuberculosis, inflammation disorders and coagulation dysfunctions are identified as risk factors found in the review but not mentioned by the public authorities.
CONCLUSION: Factors associated with increased risk of severe or fatal disease courses were identified, which include conditions connected with a poor state of health as well as organ damages and coagulation dysfunctions. The results may facilitate upcoming Covid-19 research.

Entities:  

Keywords:  Covid-19; Population at risk; Review; Risk factors; SARS-CoV-2

Mesh:

Year:  2020        PMID: 32860214      PMCID: PMC7453858          DOI: 10.1007/s15010-020-01509-1

Source DB:  PubMed          Journal:  Infection        ISSN: 0300-8126            Impact factor:   7.455


Introduction

In the end of 2019, a novel respiratory disease, the coronavirus disease 2019 (Covid-19), occurred. The pathogen causing the disease was identified by next-generation sequencing as a novel coronavirus closely related to the SARS-coronavirus discovered in 2003 [1]. According to the WHO guidelines [2], this novel coronavirus was named severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). First cases of Covid-19 were reported from the Chinese city Wuhan located in the province Hubei in December 2019 [3]. The disease is spreading worldwide and was classified as a pandemic by the WHO in March 2020 [4]. The virus is transmissible from human to human [5] and the number of infected people increases at an exponential rate, exceeding 1 mio. cases on 02.04.2020 and 1.5 mio. cases in 184 countries only a week later [6, 7]. At various disease hotspots such as New York, the health care system reaches its limits. For diagnosis, the virus is mainly detected by real-time quantitative polymerase chain reaction (rt-PCR) in throat swabs [8, 9]. Due to limited test capacities, which require a special equipped laboratory, patients showing symptoms are tested only. On the onset of Covid-19 typical symptoms are fever, cough, myalgia and fatigue, while headache, sputum production, hemoptysis and diarrhea are less common. In the course of disease a subset of patients show pneumonia with abnormal findings on chest CT [10]. Severe cases are transferred to an intensive care unit (ICU) and frequently require artificial ventilation. The disease’s case fatality rate is estimated between 3.4% and 11% [11]. Although, it depends to a large extent on the number of tests carried out as well as the quality and occupancy rate of local health care. Until a vaccine is available, an increase in the number of infections must be expected and if not being controlled Covid-19 will exceed the limits of health care systems. Since some groups appear to be at higher risk of serious disease progression and increased mortality, they should be given special protection against an infection. This is particularly important in the context of the much-discussed relaxation of restrictions, such as the prohibition of contact. To identify these vulnerable groups, the risk factors for severe and fatal disease progression must be found. Additionally, the identification of risk factors can contribute to research into the pathophysiological processes of Covid-19 from which possible treatment strategies can be developed. However, information on this is scattered and based on rather small studies. For connecting these, this publication describes a structured literature review on the risk factors of Covid-19 for severe and fatal disease courses. Additionally, the review’s results are compared to the risk factors mentioned by four public authorities.

Methods

Publications of interest describe clinical studies on Covid-19 identifying factors for increased risks of severe or fatal disease courses. The review focusses on studies whose patients were diagnosed positive by rt-PCR. The diagnosis by rt-PCR shows a low false-positive rate, but is criticized for a quite high false-negative rate [12, 13]. The inclusion of rt-PCR diagnoses only reduces the number of false diagnoses to a minimum. Since the disease is new and has only been present since December 2019, the search is carried out on PubMed as well as on the Covid-19 Open Research Dataset (CORD-19) [14] containing mostly yet unpublished publications, so called preprints. To identify publications of interest, MESH Terms and synonyms for Covid-19 and risk factors are combined leading to the following search term: ("risk factor" OR "determinant" OR "disposition" OR "increased risk" OR "population at risk" OR "health risk behavior") AND ("covid-19" OR "sars-cov-2" OR "covid19" OR "2019-nCov" OR "severe acute respiratory syndrome coronavirus 2 " OR "covid 19"). Furthermore, the search is limited to the English language. It was performed on PubMed on 25.03.2020 and was updated on 17.04.2020. Search results were documented as file export including search term and date.

CORD-19

The Covid-19 Open Research Dataset (CORD-19) was created by the Allen Institute for AI in partnership with the Chan Zuckerberg Initiative, Georgetown University’s Center for Security and Emerging Technology, Microsoft Research, and the National Library of Medicine-National Institutes of Health, in coordination with the White House Office of Science and Technology Policy. It is freely available and updated weekly. The data provided is intended to facilitate the application of natural language processing to generate new insights in support of the fight against Covid-19. The dataset contains more than 51,000 scholarly articles on SARS-CoV-2 and related coronaviruses such as SARS-CoV and the Middle East Respiratory Syndrome (MERS) Coronavirus including over 40,000 full texts [14]. Beside these documents, a file containing the publications’ metadata, is provided. It contains information such as title, DOI, PubMed ID and the abstract, but is not limited to these. In a first step the metadata is preprocessed and a keyword search is performed to identify publications of interest. Afterwards, the typical literature review procedure is carried out, including screening of title and abstract for eligibility and accessing the full texts. For preprocessing of the data, a simple algorithmic pipeline was applied to the metadata file. First, information of interest (PubMed ID, title, abstract, availability of the full text) are extracted. In the next steps, all articles without a full text, with abstracts shorter than 20 words and with abstracts in a different language than English are excluded. Afterwards, the abstracts and keywords are transformed to lower case characters to perform an algorithmic keyword search analog to the above-mentioned search term. The search was performed on 25.03.2020 and updated on 21.04.2020.

Analytical methods

In a first step the identified publications’ titles and abstracts are screened for eligibility. For publications describing literature reviews or meta-studies, the references are checked for eligibility. Full texts of suitable publications are then analyzed regarding the inclusion criteria. Both steps were executed by multiple researchers. The analysis centers on the identification of risk factors for severe and fatal disease progression. Risk factors found are categorized into lifestyle factors, demographic factors, pre-existing comorbidities, due to Covid-19 developed comorbidities, symptoms and clinical factors. Additionally, information on the studies are extracted including study size, location, duration, mono- or multicentricity and whether the data collected is available. For characterization of the articles, the publication status is recorded. To ensure the quality of preprints, the comprehensibility and correctness of the study design and statistical analysis is evaluated. In the event of uncertainty, the decision is to exclude the record. P-values smaller than 0.05 are regarded as significant.

Results

In the search 213 papers were identified (67 PubMed, 131 CORD, 15 referenced literature). After the removal of duplicates 204 records were screened based on title and abstract. In this step, 125 records were excluded. The remaining records’ full texts were assessed and 51 records were excluded for not describing risk factors backed by a clinical study or not diagnosing patients by rt-PCR. Thus 28 records were included (see Fig. 1).
Fig. 1

Overview of the publication selection process

Overview of the publication selection process Table 1 shows a description of the studies found in the records included. From the 28 included records 17 are published and 11 are preprints. The studies described took place at the end of 2019 and in the first months of 2020. The last inclusion of a patient was on 05.04.2020 in [40]. Most studies found were conducted in China (n = 24), while the remaining five studies were conducted in Italy, France and the USA (see Fig. 2). Eighteen studies were carried out at a single place, while twelve studies were multicentric, involving between 2 and 575 hospitals. The patient numbers of the individual studies range between 25 and 62,843, with small studies with up to 200 patients being the norm.
Table 1

Overview of the records included

ReferenceReview stateStudy sizeStudy locationCentricity (# of centers)Study durationData published
[15]Published25Wuhan, ChinaMonocentric14.01.2020–13.02.2020Data published
[16]Published138Wuhan, ChinaMonocentric01.01.2020–28.01.2020Synoptic table
[17]Published140Wuhan, ChinaMonocentric16.01.2020–03.02.2020Synoptic table
[18]Preprint, not peer reviewed128Xiangyang, ChinaMonocentric01.01.2020–16.02.2020Synoptic table
[19]Preprint, not peer reviewed198Shanghai, ChinaMonocentric20.01.2020–15.02.2020Full dataset on request
[20]Preprint, not peer reviewed141Changsha, ChinaMulticentric (2)17.01.2020–01.02.2020Synoptic table
[21]Published43; 1056Wuhan, ChinaMono-, multicentric (6)29.01.2020–15.02.2020Full dataset on request
[22]Preprint, not peer reviewed710Wuhan, ChinaMulticentric (3)28.01.2020–11.02.2020Synoptic table
[23]Published383Wuhan, ChinaMonocentric02.01.2020–01.03.2020Synoptic table
[24]Published245Wuhan, ChinaMonocentric01.01.2020–29.02.2020Synoptic table
[25]Preprint, not peer reviewed1902Wuhan, ChinaMulticentric (3)28.01.2020–08.03.2020Synoptic table
[26]Preprint, not peer reviewed355

Wuhan, China

Fuyang, China

Multicentric (2)?Synoptic table
[27]Published54Stanford, USAMonocentricUntil 16.03.2020Full dataset on request
[28]Preprint, not peer reviewed258Wuhan, ChinaMonocentric29.01.2020–12.02.2020Full dataset on request
[29]Preprint, not peer reviewed84Yongchuan, ChinaMonocentric21.01.2020–02.03.2020Full dataset on request
[30]Preprint, not peer reviewed62,843complete ItalyMulticentric (?)Until 24.03.2020Synoptic table
[31]Published4,103New York City, USAMulticentric (4)01.03.2020–01.04.2020Synoptic table
[32]Published701Wuhan, ChinaMonocentric28.01.2020–11.02.2020Full dataset on request
[33]Published323Wuhan, ChinaMonocentric08.01.2020–20.02.2020Synoptic table
[34]Published1590complete ChinaMulticentric (575)Until 31.01.2020Synoptic table
[35]Preprint, not peer reviewed564Hunan, ChinaMulticentric (9)17.01.2020–28.02.2020Full dataset on request
[36]Preprint, not peer reviewed36Shenyang, ChinaMulticentric (3)26.01.2020–15.02.2020Synoptic table
[37]Published52Wuhan, ChinaMonocentric12.2019–26.01.2020Full dataset on request
[38]Published54Hubei, ChinaMonocentric?Synoptic table
[39]Published1591Lombardy, ItalyMulticentric (72)20.02.2020–18.03.2020Synoptic table
[40]Published124Lille, FranceMonocentric27.02.2020–05.04.2020Synoptic table
[41]Published30Huizhou, ChinaMonocentric01.2020–02.2020Synoptic table
[42]Published174Wuhan, ChinaMonocentric10.02.2020–29.02.2020Synoptic table
Fig. 2

Number of studies found by location

Overview of the records included Wuhan, China Fuyang, China Number of studies found by location

Risk factors for severity

Risk factors for disease severity were identified in 20 records, which are described in Table 2. Smoking [33], a higher body mass index (obesity) [40] and a longer waiting time to hospital admission [19, 20] are lifestyle factors related to a higher risk for disease severity. The most frequently mentioned demographic factor increasing the risk for a severe course of disease is higher age [16, 17, 19, 21, 27, 30, 31, 33, 35, 41, 42], followed by male gender [19, 21, 25], post menopausality [25] and higher age in females [25]. Some publications specify the age for increased risk as > 64 [31] or > 65 [33] years. The most common pre-existing comorbidities are hypertension [16, 19, 27, 35, 40, 42] and diabetes [16, 28, 33, 35, 40, 42] with six records each, followed by cardiovascular disease with three records [16, 19, 35]. Occasionally, correlations of the severity and cerebrovascular disease [16], chronic obstructive pulmonary disease [35], chronic renal disease [35] or tuberculosis [36] were found. For eight comorbidities developed during the Covid-19 infection a significant impact on disease severity was found. These are organ failure [19], immunological dysfunction [19], acute liver injury [26], hypoproteinemia [26], Acute Respiratory Distress Syndrome (ARDS) [36], severe pneumonia [42], uncontrolled inflammation response [42] and hypercoagulable state [42]. With nine mentions, the most common abnormal clinical factor is decreased lymphocytes, followed by an increased d-dimer level (six records), increased leucocytes (four records), increased neutrophil count (four records), increased aspartate aminotransferase (AST) (four records), increased c-reactive protein (CRP) (four records), increased alanine aminotransferase (ALT) (three records) and low oxygen saturation (three records). Increased blood urea nitrogen (BUN), decreased thrombocytes, increased CT severity score and increased interleukin 6 (IL-6) level are each identified as risk factors for severity in two records. There are 23 other clinical features such as decreased blood sodium or decreased erythrocytes count each mentioned in one record only (see Table 2). In addition to the factors already mentioned, the symptoms fever (> 38.5 °C) [18, 35] and dyspnea [18, 35] are associated with severe disease progression.
Table 2

Listing of the factors found that influence the severity of the disease

ReferenceLifestyle factorsDemographic factorsPreexisting comorbiditiesDeveloped comorbiditiesClinical factorsSymptoms
[16]Higher age

Hypertension

Diabetes

Cardiovascular disease

Cerebrovascular disease

Increased white blood cell count

Increased neutrophil counts

Increased d-dimer level

Increased creatine kinase level

Increased creatine level

Increased blood Urea nitrogen

Increased aspartate aminotransferase

Increased alanine aminotransferase

Decreased lymphocyte

[17]Higher age

Increased leukocytes

Decreased lymphocyte percentage

Increased d-Dimer

Increased C-reactive Protein

Increased Procalcitonin (PCT)

[18]

increased white blood cell count

Increased CT glass opacity

decreased lymphocytes

Decreased platelets

Increased alanine transaminase

Increased aspartate transaminase

Increased C-reactive protein

[19]Longer waiting time to admission

Higher age

male gender

Cardiovascular disease

Organ failure

Immunological dysfunction

Decreased lymphocytes

Increased neutrophils

increased prothrombin time

Increased activated partial thromboplastin time

Increased fibrinogen

increased d-dimer

Decreased blood sodium

Decreased calcium

Fever > 38.5 °C

Dyspnea

[20]Longer waiting time to admissionHigher ageHypertension

Decreased lymphocyte count

Increased neutrophil-to-lymphocyte ratio (NLR)

Increased C-reactive protein

Increased CT severity score

[21]

Higher age

Male gender

[25]

Post-menopausality

Higher age of females

Male gender

Increased Interleukin 6

Increased Interleukin 8

E2 and AMH are negatively correlated

[26]

Acute liver injury

Hypoproteinemia

Elevated total bilirubin, elevated direct bilirubin

Elevated indirect bilirubin,

Elevated ALT

Elevated AST

Decreased total protein

Decreased albumin

Decreased albumin per globulin ratio

[27]Higher ageHypertensionLow presenting oxygen saturation
[28]Diabetes
[29]Higher age
[30]Higher age
[31]Age > 64

Admission oxygen saturation < 88%

first d-dimer > 250

First C-reactive protein > 200

SpO2 < 88

Procalcitonin > 0.5

Troponin < 0.1

C-reactive protein > 200

[33]SmokingAge > 65Diabetes

Abnormally higher hypersensitive troponin I (> 0.04 pg/mL)

Leucocyte count > 10 × 109/L

neutrophil count > 75 × 109/L

[35]Higher age

Hypertension

Diabetes

Cardiovascular disease

Chronic obstructive pulmonary disease

Chronic renal disease

Increased aspartate aminotransferase

Increased blood urea nitrogen

d-dimer ≥ 0.05 mg/L

Increased lactose dehydrogenase

Worse lung CT score

Decreased lymphocyte count

Presented with fever

Presented with shortness of breath

[36]TuberculosisAcute respiratory distress syndrome
[37]Lymphocytopenia
[40]Higher BMIDiabetes and hypertension (dependent with obesity)

Decreased blood oxygen saturation

Need for oxygen support therapy for at least 6 L/min

[41]Higher age

Increased platelet‐to‐lymphocyte ratio at platelet peak

Decreased lymphocyte count

Higher platelet peak

[42]Higher age

Diabetes

Hypertension

Severe pneumonia

Uncontrolled inflammation responses

Hypercoagulable state

Elevated Interleukin 6

Elevated C-reactive protein

Elevated serum ferritin

Elevated coagulation index

Elevated d-dimer

Decreased count of lymphocytes

Higher absolute count of neutrophils

Decreased erythrocytes counts

Decreased hemoglobin

Listing of the factors found that influence the severity of the disease Hypertension Diabetes Cardiovascular disease Cerebrovascular disease Increased white blood cell count Increased neutrophil counts Increased d-dimer level Increased creatine kinase level Increased creatine level Increased blood Urea nitrogen Increased aspartate aminotransferase Increased alanine aminotransferase Decreased lymphocyte Increased leukocytes Decreased lymphocyte percentage Increased d-Dimer Increased C-reactive Protein Increased Procalcitonin (PCT) increased white blood cell count Increased CT glass opacity decreased lymphocytes Decreased platelets Increased alanine transaminase Increased aspartate transaminase Increased C-reactive protein Higher age male gender Organ failure Immunological dysfunction Decreased lymphocytes Increased neutrophils increased prothrombin time Increased activated partial thromboplastin time Increased fibrinogen increased d-dimer Decreased blood sodium Decreased calcium Fever > 38.5 °C Dyspnea Decreased lymphocyte count Increased neutrophil-to-lymphocyte ratio (NLR) Increased C-reactive protein Increased CT severity score Higher age Male gender Post-menopausality Higher age of females Male gender Increased Interleukin 6 Increased Interleukin 8 E2 and AMH are negatively correlated Acute liver injury Hypoproteinemia Elevated total bilirubin, elevated direct bilirubin Elevated indirect bilirubin, Elevated ALT Elevated AST Decreased total protein Decreased albumin Decreased albumin per globulin ratio Admission oxygen saturation < 88% first d-dimer > 250 First C-reactive protein > 200 SpO2 < 88 Procalcitonin > 0.5 Troponin < 0.1 C-reactive protein > 200 Abnormally higher hypersensitive troponin I (> 0.04 pg/mL) Leucocyte count > 10 × 109/L neutrophil count > 75 × 109/L Hypertension Diabetes Cardiovascular disease Chronic obstructive pulmonary disease Chronic renal disease Increased aspartate aminotransferase Increased blood urea nitrogen d-dimer ≥ 0.05 mg/L Increased lactose dehydrogenase Worse lung CT score Decreased lymphocyte count Presented with fever Presented with shortness of breath Decreased blood oxygen saturation Need for oxygen support therapy for at least 6 L/min Increased platelet‐to‐lymphocyte ratio at platelet peak Decreased lymphocyte count Higher platelet peak Diabetes Hypertension Severe pneumonia Uncontrolled inflammation responses Hypercoagulable state Elevated Interleukin 6 Elevated C-reactive protein Elevated serum ferritin Elevated coagulation index Elevated d-dimer Decreased count of lymphocytes Higher absolute count of neutrophils Decreased erythrocytes counts Decreased hemoglobin

Risk factors of fatal disease courses

Thirteen records describe risk factors for fatal Covid-19 disease courses. They are listed in Table 3. The most common identified risk factor is high age with eight denominations. The other demographic factor influencing Covid-19 mortality is male gender, which was found significant in three records. Furthermore, pre-existing comorbidities frequently show an influence in the publications included. Most common with three mentions each are hypertension, diabetes and coronary heart disease. Cardiovascular diseases are found significant in two records. Seven other pre-existing diseases were each significant in one record, including acute liver injury, kidney disease, chronic illnesses and cerebrovascular disease. For comorbidities developed during the infection, kidney injuries (four records), heart injuries (three records) and liver injuries (two records) are mentioned most often. Other developed complications are cardiac death, acute respiratory distress syndrome, hospital acquired infections, thrombocytopenia and hypoxemia. Only one record identified a symptom, dyspnea, as a risk factor. The most common clinical factors associated with mortality are increased creatinine (four records), increased c-reactive protein (CRP), increased procalcitonin (PCT), decreased lymphocytes and increased blood urea nitrogen (BUN) (three records each). Other clinical factors associated with fatal disease courses include increased neutrophils, increased leucocytes or increased d-dimer but are not limited to these. For the full list of clinical factors found in the records please refer to Table 3.
Table 3

Listing of the factors found with an influence on fatal disease courses

ReferenceLifestyle factorsDemographic factorsPreexisting comorbiditiesDeveloped comorbiditiesClinical factorsSymptoms
[15]

Heart damage

Kidney damage

Liver damage

Decrease albumin

Increased PCT

Increased neutrophils

Increased C-reactive protein

Increased cTnI

Increased d-Dimer

Increased LHD

Decreased lymphocyte level

[21]

Higher age

Male gender

[22]Age > 65 yearsKidney impairment

Leucocyte count > 4 × 109/L

Lymphocyte < 1.5 × 109/L

Increased serum creatinine baseline

Increased serum creatinine peak

Increased blood urea nitrogen (BUN)

Increased proteinuria

Increased hematuria

[23]Thrombocytopenia

Decreased platelet count (40% decrease in mortality risk for every 50 × 109/L increase)

Dynamic change of platelets

[24]Higher BMIHigher age

Hypertension

Diabetes

Coronary heart disease

Neutrophil to lymphocyte ratio (NLR)

8% higher risk per unit increase

Respiratory rate > 30 bpm

Increased neutrophil

Increased ALT

Increased creatinine

Increased prothrombin

Increased C-reactive protein

Increased procalcitonin

[26]

Hypoproteinemia

Cholestasis

Acute liver injury

CT abnormalities

Patchy shadows

Ground glass opacities

Consolidation

Interlobular septal thickening

Higher CT value

[28]Diabetes
[30]

Higher age

Male gender

[32]Kidney diseaseAcute kidney injury

Elevated baseline serum creatinine

Elevated baseline blood urea nitrogen (BUN)

Proteinuria

Hematuria

[34]Age > 65

Coronary heart f

Disease

Cardiovascular disease

PCT > 0.5 ng/ml

AST > 40U/l

Dyspnea
[37]Higher age

Chronic illness

Cerebrovascular disease

Acute Respiratory Distress Syndrome

Hospital acquired infection

organ function damage (kidney, cardiac, liver)

Hypoxemia

Low ratio partial pressure oxygen (PaO2) to FiO2
[38]Higher age

Hypertension

Coronary heart disease

Heart injury

Cardiac death

Increased NT-proBNP

Increased myohemoglobin

Increased CK-MB

Increased hs-TnI

Increased blood urea

Increased creatinine

Increased white blood cell count

Increased CRP

Increased procalcitonin

Decreased lymphocyte

Higher diastolic blood pressure

[39]

Higher age

Male gender

Hypertension

Cardiovascular disease

Hypercholesterolemia

Diabetes

Listing of the factors found with an influence on fatal disease courses Heart damage Kidney damage Liver damage Decrease albumin Increased PCT Increased neutrophils Increased C-reactive protein Increased cTnI Increased d-Dimer Increased LHD Decreased lymphocyte level Higher age Male gender Leucocyte count > 4 × 109/L Lymphocyte < 1.5 × 109/L Increased serum creatinine baseline Increased serum creatinine peak Increased blood urea nitrogen (BUN) Increased proteinuria Increased hematuria Decreased platelet count (40% decrease in mortality risk for every 50 × 109/L increase) Dynamic change of platelets Hypertension Diabetes Coronary heart disease Neutrophil to lymphocyte ratio (NLR) 8% higher risk per unit increase Respiratory rate > 30 bpm Increased neutrophil Increased ALT Increased creatinine Increased prothrombin Increased C-reactive protein Increased procalcitonin Hypoproteinemia Cholestasis Acute liver injury CT abnormalities Patchy shadows Ground glass opacities Consolidation Interlobular septal thickening Higher CT value Higher age Male gender Elevated baseline serum creatinine Elevated baseline blood urea nitrogen (BUN) Proteinuria Hematuria Coronary heart f Disease Cardiovascular disease PCT > 0.5 ng/ml AST > 40U/l Chronic illness Cerebrovascular disease Acute Respiratory Distress Syndrome Hospital acquired infection organ function damage (kidney, cardiac, liver) Hypoxemia Hypertension Coronary heart disease Heart injury Cardiac death Increased NT-proBNP Increased myohemoglobin Increased CK-MB Increased hs-TnI Increased blood urea Increased creatinine Increased white blood cell count Increased CRP Increased procalcitonin Decreased lymphocyte Higher diastolic blood pressure Higher age Male gender Hypertension Cardiovascular disease Hypercholesterolemia Diabetes Typically, a severe course of the disease occurs before the death of a Covid-19 patient. Of course, this is not true for all fatal courses, but it should be true for most of them and therefore be visible in the statistical significance. The risk factors for fatal courses should be approximately a subset of the factors for severe courses. Therefore, risk factors for fatal disease progression, which are not mentioned for severe disease progression, are of particular interest. For pre-existing comorbidities these are coronary heart disease, hypoproteinemia, cholestasis, acute liver injury and hypercholesterolemia, while hypoproteinemia and acute liver injury are also mentioned as developed comorbidities in severe courses. Developed comorbidities found with an influence on fatal courses but not on severe courses are heart damage, kidney damage, thrombocytopenia, hospital acquired infections, hypoxemia and cardiac death.

Disease specific laboratory values

Some laboratory values found are predictive for specific diseases. Most common are markers for liver, renal and heart function. Increased ALT, AST, lactic acid, procalcitonin, total, direct and indirect bilirubin as well as decreased albumin indicate liver injuries [43]. The same applies for increased blood urea nitrogen and creatinine as well as proteinuria and hematuria for renal injuries [44]. Heart specific markers found in the publications are increased creatine kinase, troponin C and myohemoglobin levels as well as a decreased platelet count [45]. It is also noticeable that an increased number of coagulation factors such as decreased platelets, increased d-dimer level and increased fibrinogen [46] as well as inflammatory parameters such as c-reactive protein [47] and increased leucocyte level are associated with severity and fatality.

Discussion

This review shows a high exclusion rate (176/204), which is mainly caused by including studies identifying Covid-19 infections explicitly by rt-PCR only. However, a high significance of the results can be guaranteed, as other diseases, such as bacterial pneumonia, are clearly excluded by the rt-PCR identification. Identification by rt-PCR has also become the standard diagnostic procedure. Nevertheless, it must be assumed that a selection bias exists in the results obtained, since most studies do not provide a representative sample. Among other things, differences in the recruitment rate and different test procedures have an influence on this. Relying on rt-PCR based studies only enhances this effect. A portion of the included papers are preprints, which were not yet peer-reviewed. This allows early scientific results to be incorporated into the analysis performed in this record. Even though a quality review by the authors has been carried out, which includes the comprehensibility and correctness of the study design as well as the statistical analysis, the results of these preprinted studies should be used with caution in further decisions concerning Covid-19. The publication status of the preprints should be reviewed at a later date. Most records included describe studies carried out in China. This is presumably since the disease first broke out in China and spread around the world only within the next weeks and months. Data from Chinese Covid-19 patients is available earlier and can therefore be analyzed and published earlier. When comparing the data on the level of the number of patients or facilities, a different picture arises. The majority of patients included in this review are from Italy (64,434), followed by China (7656), USA (4157) and France (1715). Therefore, statements for specific ethnicity cannot be made and the results should be generally interpreted. It should be noted that a doubling of patients between studies cannot be excluded. This is especially relevant for some of the Chinese publications, which show an overlapping of the author list and the recruitment time, potentially reducing the real number of patients. Based on the number of publications and the number of patients, it seems that Italy is trying to centralize research on Covid-19, while China tends to produce smaller individual studies. Both approaches have advantages and disadvantages. Individual studies can deliver results more quickly and be transferred to the community, while centralization allows linking the data so that statements of higher quality can be made. The rather small proportion of studies from the USA and Europe could be linked to the date the search was carried out and the course of the disease’s global spread. We expect to see more studies from these countries as well as other Asian countries in the future. Concerning the number of patients, publication [30] is particularly noteworthy as it summarizes all cases in Italy until the beginning of March. Unfortunately, the data of this study are not published as a complete data set. However, the publication rate of the collected data is quite high among the studies included as data of eight studies is publicly available or available upon request. Since no special drug for treating Covid-19 exists, a longer waiting time to hospital admission is an eye-catching risk factor for severity. This indicates that the treatment of symptoms in an early disease stage can be effective and positively influence the disease’s course. Regarding other demographic and lifestyle factors found interdependencies are very likely. First, younger women will not be menopausal and therefore post menopausality is equivalent to higher age, which is the most named risk factor in this analysis. Second, with higher age comorbidities are getting more likely to be present while the immune systems is getting weaker [48]. This means higher age (approximately > 60 years) is very likely correlated with comorbidities such as hypertension, cardiovascular diseases and diabetes, which are the most common comorbidities in this review. Third, hypertension is a risk factor for cardiovascular diseases [49] and, since cardiovascular disease appear to be a risk factor for Covid-19, hypertension is a risk factor for Covid-19 as well. Although multivariate regression analyses are performed in 16 records, those dependencies could not be confirmed. More research and testing on interdependence of risk factors should to be carried out. Typically, for a disease that primarily affects the lungs, it would be expected that lung-damaging behaviors, such as smoking, or pre-existing lung diseases increase the risk for severe courses. It is very striking that smoking shows a significant influence in only one publication as well as lung diseases not being commonly listed as risk factors for either severe or fatal disease progression. This may be related to the fact that the definition of a severe disease course is based on severe pneumonia and is therefore not listed. However, other pre-existing lung diseases such as chronic obstructive pulmonary disease (COPD) are only named in a few records. For nicotine on the other hand the ability to downregulate the ACE-2 level, which is a functional receptor for SARS-CoV-2 [1], was shown [50]. Furthermore, a mouse study [51] suggests that nicotine protects against acute inflammation in lung tissue by activating nicotinic acetylcholine receptors on immune cells which inhibits the release of pro-inflammatory cytokines. However, nicotine’s influence on the course of Covid-19 needs further research. Regarding disease predictive clinical factors liver, renal and heart damage are most common, which are also present as comorbidities associated with increased risk. It can be assumed that Covid-19 damages these organs and pre-existing damages further promote the impact. Eleven records found coagulation factors positively associated with severity or fatality but only two ([23] and [42]) mention them directly in the publication. Therefore, the influence of coagulation disorders and their treatments on the course of the disease should be further examined. It is also possible that the above-mentioned organ damage is promoted or triggered by Covid-19 induced coagulation disorders. A newer pathological study with twelve deceased Covid-19 patients found high incidence of thromboembolic events suggesting an important role of Covid-19 - induced coagulopathy. Even more, 5 of the 12 patients showed high viral RNA titers in the liver, kidney, or heart [52]. In addition, laboratory values indicating heart, liver and renal damages are significant in the included records for fatal disease courses but not for severe ones. This suggests that organ damages, specifically heart, kidney and liver damages, are symptoms occurring in the late phase of Covid-19 infections. For some risk factors found, it cannot be entirely excluded that they are manifestations of the disease itself and not real risk factors. This is especially the case for risk factors that are very close to the clinical picture of Covid-19, such as low oxygen saturation or ARDS. For cardinal symptoms of a severe disease, statistical significance is very likely to be found. Even if a significant influence on the severity of the disease has been found in several studies, it must be understood that causality does not necessarily follow from statistical significance. Still, there are limitations to this review. Due to the exclusive focus on PCR diagnostics it is possible that some important factors are dismissed, which were found in studies relying on clinical diagnostics. However, the focus on PCR diagnosis increases the recall and hence the results’ expressiveness. Furthermore, records in which significant influencing factors for the severity or fatality are shown, but which are not called risk factors in the title or abstract, cannot be identified by the search strategy. An example of this is [53]. It must be assumed that other risk factors for serious and fatal injuries and publications on them exist which are not covered in this review. The studies found only took place in four countries meaning ethnic differences in the course of the disease cannot be considered. A certain bias can also arise from the timing of the search. The search was last updated on 21.04.2020, so that rather early publications are to be expected.

Comparison with official sites

Table 4 shows the risk factors for severe disease courses form different public authorities. The Robert Koch Institute is Germany’s leading Public Health facility, whereas the Johns Hopkins University is one of the world’s leading facilities for Covid-19 updates. Furthermore, risk factors declared by the United States’ Centers for Disease Control and Prevention and the National Health Service of the United Kingdom are shown. The lists of the different institutions largely overlap. High age (from about 60 years), heart, renal, liver and respiratory diseases as well as diabetes and obesity are frequently mentioned factors. Other factors mentioned include immune compression, male sex, organ receptivity, pregnancy, smoking, secondary diseases, such as cancer or conditions affecting the brain or nerves, and African American ethnicity.
Table 4

Overview of risk factors reported by leading institutions

Robert Koch Institute [54]U.S. CDC [55]Johns Hopkins Medicine [56]NHS UK [57]
Higher age (increase from 50–60 years)Higher age (increase from 65 years)Higher age (increase from 65 years)Higher age (increase from 70 years)
Heart diseasesLiving in a nursing home or long-term care facilityDiabetesOrgan transplant recipients
DiabetesChronic lung diseaseMale genderLung diseases
Diseases of the respiratory systemAsthmaUSA: obesity (BMI ≥ 30)Blood or bone marrow cancer
Liver diseasesHeart diseasesUSA: African American ethnicityHeart diseases
Renal diseasesImmunosuppressionComorbiditiesPregnancy
ObesitySevere obesity (BMI ≥ 40)Severe obesity (BMI ≥ 40)
SmokingDiabetesChronic kidney diseases
MultimorbidityChronic kidney disease undergoing dialysisConditions affecting brain or nerves
ImmunosuppressionLiver diseaseLiver diseases
Overview of risk factors reported by leading institutions On the most frequently mentioned points, the risk factors indicated by public authorities coincide with the results of the review. These are liver, heart, renal and respiratory diseases as well as diabetes, obesity, higher age, male gender, comorbidities and even conditions affecting brain and nerves. Risk factors mentioned by public authorities which were not present in this review include multimorbidity, immunosuppression, being an organ transplant recipient, asthma, living in a nursing home, African American ethnicity, blood or bone cancer as well as pregnancy. Even if these could not be confirmed by the review, most of them seem to be very reasonable. Conditions resulting in a diminished immune system such as cancer, immunosuppression or being an organ transplant recipient weaken the body's own immune response to SARS-CoV-2. Another factor is expected to be the prevalent viral pressure, which is high in places where many partly immune-deficient people share little space such as nursing homes. Although studies from the USA were included, no justification for African American ethnicity being a risk factor was found in this review. This review identified some risk factors not mentioned by public authorities. Mostly these are waiting time to hospital admission, tuberculosis, inflammation disorders and coagulation factors. It is possible that for these factors, especially coagulation factors, not enough evidence is present yet to be support by public authorities.

Conclusion

Most of the 28 records included in this review describe studies conducted in China. However, regarding the number of patients Italy is outstanding. Conditions and comorbidities potentially connected to a poor state of health such as high age, obesity, diabetes and hypertension were identified as risk factors for severe and fatal disease courses. It was found that severe and even more fatal courses of disease are associated with organ damages mainly affecting the heart, the liver and the kidneys. Further, inflammation and coagulation dysfunctionality were identified as risk factors. For coagulation factors, laboratory values were significantly different in Covid-19 patients but were mostly not mentioned as risk factors in the records’ texts. A prospective study with 12 deceased Covid-19 patients supports this finding. Therefore, the influence of coagulation disorders developed during a SARS-CoV-2 infection should be further investigated.
  31 in total

1.  Corrigendum to "Dynamic changes of CD45RA-Foxp3high T regulatory cells in chronic HCV patients during antiviral therapy" [Int J Infect Dis 45 (2016) 5-12].

Authors:  Zhiqin Li; Yu Ping; Zujiang Yu; Meng Wang; Dongli Yue; Zhen Zhang; Jianbin Li; Bin Zhang; Xuezhong Shi; Yi Zhang
Journal:  Int J Infect Dis       Date:  2020-12-25       Impact factor: 3.623

2.  A need for open public data standards and sharing in light of COVID-19.

Authors:  Lauren Gardner; Jeremy Ratcliff; Ensheng Dong; Aaron Katz
Journal:  Lancet Infect Dis       Date:  2020-08-10       Impact factor: 25.071

3.  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

4.  Genomic characterisation and epidemiology of 2019 novel coronavirus: implications for virus origins and receptor binding.

Authors:  Roujian Lu; Xiang Zhao; Juan Li; Peihua Niu; Bo Yang; Honglong Wu; Wenling Wang; Hao Song; Baoying Huang; Na Zhu; Yuhai Bi; Xuejun Ma; Faxian Zhan; Liang Wang; Tao Hu; Hong Zhou; Zhenhong Hu; Weimin Zhou; Li Zhao; Jing Chen; Yao Meng; Ji Wang; Yang Lin; Jianying Yuan; Zhihao Xie; Jinmin Ma; William J Liu; Dayan Wang; Wenbo Xu; Edward C Holmes; George F Gao; Guizhen Wu; Weijun Chen; Weifeng Shi; Wenjie Tan
Journal:  Lancet       Date:  2020-01-30       Impact factor: 79.321

5.  A familial cluster of pneumonia associated with the 2019 novel coronavirus indicating person-to-person transmission: a study of a family cluster.

Authors:  Jasper Fuk-Woo Chan; Shuofeng Yuan; Kin-Hang Kok; Kelvin Kai-Wang To; Hin Chu; Jin Yang; Fanfan Xing; Jieling Liu; Cyril Chik-Yan Yip; Rosana Wing-Shan Poon; Hoi-Wah Tsoi; Simon Kam-Fai Lo; Kwok-Hung Chan; Vincent Kwok-Man Poon; Wan-Mui Chan; Jonathan Daniel Ip; Jian-Piao Cai; Vincent Chi-Chung Cheng; Honglin Chen; Christopher Kim-Ming Hui; Kwok-Yung Yuen
Journal:  Lancet       Date:  2020-01-24       Impact factor: 79.321

6.  Effect of Shengmai Yin on the DNA methylation status of nasopharyngeal carcinoma cell and its radioresistant strains.

Authors:  Shiya Liu; Zhiyuan Wang; Daoqi Zhu; Jiabin Yang; Dandan Lou; Ruijiao Gao; Zetai Wang; Aiwu Li; Ying Lv; Qin Fan
Journal:  J Pharm Anal       Date:  2020-12-02

7.  The many estimates of the COVID-19 case fatality rate.

Authors:  Dimple D Rajgor; Meng Har Lee; Sophia Archuleta; Natasha Bagdasarian; Swee Chye Quek
Journal:  Lancet Infect Dis       Date:  2020-03-27       Impact factor: 25.071

8.  Diagnosis of the Coronavirus disease (COVID-19): rRT-PCR or CT?

Authors:  Chunqin Long; Huaxiang Xu; Qinglin Shen; Xianghai Zhang; Bing Fan; Chuanhong Wang; Bingliang Zeng; Zicong Li; Xiaofen Li; Honglu Li
Journal:  Eur J Radiol       Date:  2020-03-25       Impact factor: 3.528

9.  Real-time RT-PCR in COVID-19 detection: issues affecting the results.

Authors:  Alireza Tahamtan; Abdollah Ardebili
Journal:  Expert Rev Mol Diagn       Date:  2020-04-22       Impact factor: 5.225

10.  Serology- and PCR-based cumulative incidence of SARS-CoV-2 infection in adults in a successfully contained early hotspot (CoMoLo study), Germany, May to June 2020.

Authors:  Claudia Santos-Hövener; Hannelore K Neuhauser; Angelika Schaffrath Rosario; Markus Busch; Martin Schlaud; Robert Hoffmann; Antje Gößwald; Carmen Koschollek; Jens Hoebel; Jennifer Allen; Antje Haack-Erdmann; Stefan Brockmann; Thomas Ziese; Andreas Nitsche; Janine Michel; Sebastian Haller; Hendrik Wilking; Osamah Hamouda; Victor M Corman; Christian Drosten; Lars Schaade; Lothar H Wieler; Thomas Lampert
Journal:  Euro Surveill       Date:  2020-11
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  111 in total

1.  Factors Associated for COVID19 Severity Among Patients Treated at Selgalu Treatment Center Assosa in Ethiopia: A Case-Control Study.

Authors:  Dano Gutata; Zewdie Aderaw Alemu
Journal:  Int J Gen Med       Date:  2022-03-24

2.  HIV treatment engagement in the context of COVID-19: an observational global sample of transgender and nonbinary people living with HIV.

Authors:  Arjee Javellana Restar; Henri M Garrison-Desany; Tyler Adamson; Chase Childress; Gregorio Millett; Brooke A Jarrett; Sean Howell; Jennifer L Glick; S Wilson Beckham; Stefan Baral
Journal:  BMC Public Health       Date:  2021-05-12       Impact factor: 3.295

3.  Association of coronary calcification with prognosis of Covid-19 patients without known heart disease.

Authors:  R Y Possari; H J Andrade-Gomes; V C Mello; E A Galdeano; L F Aguiar-Filho; M S Bittencourt; E V Ponte; L R Bertoche; L R S Caio; J D Rodrigues; F B Alcantara; M A C Freitas; J C G C Sarinho; N K Cervigne; W M Rodrigues; I Aprahamian
Journal:  Braz J Med Biol Res       Date:  2021-12-03       Impact factor: 2.590

4.  Alcohol Consumption Is Associated with Poor Prognosis in Obese Patients with COVID-19: A Mendelian Randomization Study Using UK Biobank.

Authors:  Xiude Fan; Zhengwen Liu; Kyle L Poulsen; Xiaoqin Wu; Tatsunori Miyata; Srinivasan Dasarathy; Daniel M Rotroff; Laura E Nagy
Journal:  Nutrients       Date:  2021-05-10       Impact factor: 5.717

5.  Predicting COVID-19-Comorbidity Pathway Crosstalk-Based Targets and Drugs: Towards Personalized COVID-19 Management.

Authors:  Debmalya Barh; Alaa A Aljabali; Murtaza M Tambuwala; Sandeep Tiwari; Ángel Serrano-Aroca; Khalid J Alzahrani; Bruno Silva Andrade; Vasco Azevedo; Nirmal Kumar Ganguly; Kenneth Lundstrom
Journal:  Biomedicines       Date:  2021-05-17

Review 6.  Functional ACE2 deficiency leading to angiotensin imbalance in the pathophysiology of COVID-19.

Authors:  Joshua R Cook; John Ausiello
Journal:  Rev Endocr Metab Disord       Date:  2021-07-01       Impact factor: 9.306

Review 7.  Plausible Positive Effects of Statins in COVID-19 Patient.

Authors:  Antonio Vitiello; Francesco Ferrara
Journal:  Cardiovasc Toxicol       Date:  2021-07-13       Impact factor: 3.231

8.  SARS-CoV-2 sensing by RIG-I and MDA5 links epithelial infection to macrophage inflammation.

Authors:  Lucy G Thorne; Ann-Kathrin Reuschl; Lorena Zuliani-Alvarez; Matthew V X Whelan; Jane Turner; Mahdad Noursadeghi; Clare Jolly; Greg J Towers
Journal:  EMBO J       Date:  2021-07-02       Impact factor: 14.012

Review 9.  An overview of sex hormones in relation to SARS-CoV-2 infection.

Authors:  Marzieh Saei Ghare Naz; Mojdeh Banaei; Sareh Dashti; Fahimeh Ramezani Tehrani
Journal:  Future Virol       Date:  2021-07-20       Impact factor: 1.831

Review 10.  Implementing Personalized Medicine in COVID-19 in Andalusia: An Opportunity to Transform the Healthcare System.

Authors:  Joaquín Dopazo; Douglas Maya-Miles; Federico García; Nicola Lorusso; Miguel Ángel Calleja; María Jesús Pareja; José López-Miranda; Jesús Rodríguez-Baño; Javier Padillo; Isaac Túnez; Manuel Romero-Gómez
Journal:  J Pers Med       Date:  2021-05-26
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