| Literature DB >> 34039423 |
Arthur Vengesai1,2, Herald Midzi3, Maritha Kasambala3, Hamlet Mutandadzi4, Tariro L Mduluza-Jokonya3,5, Simbarashe Rusakaniko4, Francisca Mutapi6, Thajasvarie Naicker5, Takafira Mduluza3,5.
Abstract
BACKGROUND: Serological testing based on different antibody types are an alternative method being used to diagnose SARS-CoV-2 and has the potential of having higher diagnostic accuracy compared to the current gold standard rRT-PCR. Therefore, the objective of this review was to evaluate the diagnostic accuracy of IgG and IgM based point-of-care (POC) lateral flow immunoassay (LFIA), chemiluminescence enzyme immunoassay (CLIA), fluorescence enzyme-linked immunoassay (FIA) and ELISA systems that detect SARS-CoV-2 antigens.Entities:
Keywords: COVID-19; IgG; IgM; SARS-CoV2; Sensitivity; Serology; Specificity; rRT-PCR
Mesh:
Substances:
Year: 2021 PMID: 34039423 PMCID: PMC8152206 DOI: 10.1186/s13643-021-01689-3
Source DB: PubMed Journal: Syst Rev ISSN: 2046-4053
Summary estimates of test accuracy
| Test type | Antibody type | Number of studies/tests | Sensitivity (95% CI) | Specificity (95% CI) | Correlation |
|---|---|---|---|---|---|
| LFIA | IgG | 17 | 58.56 (43.97-71.79) | 98.96 (95.61-99.76) | −0.4454 |
| CLIA | IgG | 9 | 93.11 (93.09-93.12) | 97.57 (97.57-97.58 | −0.511 |
| ELISA | IgG | 10 | 82.92 (74.16-89.15) | 99.48 (96.75-99.92) | −0.1709 |
| LFIA | IgM | 16 | 46.37 (30.16-0.6339) | 97.34 (92.75-99.05) | −0.7925 |
| CLIA | IgM | 10 | 85.16 (73.56-0.9221) | 96.93 (85.5-99.41) | −0.7074 |
| ELISA | IgM | 11 | 83.88 (0.7307-0.909) | 99.91 (97.78-100) | −0.7247 |
| LFIA | IgG-IgM | 24 | 68.86 (58.78-77.42) | 97.57 (94.66-98.92) | 0.1011 |
| CLIA | IgG-IgM | 3 | |||
| ELISA | IgG-IgM | 5 | 85.31 (78.51-90.23) | 99.01 (92.87-99.87) | −0.6771 |
Fig. 1PRISMA flow diagram for selection of articles for meta-analysis
The general characteristics of the studies included in the review
| Study ID | Country | Antibody type | Antigen type | Commercial | Reference standard | Index test | Control group/comparison group |
|---|---|---|---|---|---|---|---|
| Kai-Wang To [ | China | IgG and IgM | S and N | Inhouse | rRT-PCR | ELISA | No control |
| Cassaniti [ | Italy | IgG, IgM and IgG-IgM | S | Commercial | rRT-PCR | POC LFIA | Patients with fever and respiratory syndrome/RT-PCR negative |
| Duchuan Lin [ | China | IgG, IgM and IgG-IgM | N | Inhouse | Epidemiological risk/clinical features/rRT-PCR | CLIA | Healthy individuals and tuberculosis patients |
| Jie Xiang [ | China | IgG, IgM and IgG-IgM | Commercial | rRT-PCR | ELISA and POC LFIA | Healthy individuals | |
| Li Guo [ | China | IgM | N | Inhouse | Deep sequencing and rRT-PCR | ELISA | Adult patients with acute lower respiratory tract infections (ALRTIs) |
| Rui Liu [ | China | IgM | N | Inhouse | rRT-PCR | COVID-19 rRT-PCR negative patients | |
| Wanbing Liu [ | China | IgG, IgM and IgG-IgM | S and N | Commercial | rRT-PCR | ELISA | Healthy individuals |
| Xuefei Cai [ | China | IgG, IgM and IgG-IgM | S | Inhouse | rRT-PCR | Peptide-based magnetic CLIA | Mixed diseases and healthy controls |
| Yu bao Pan [ | China | IgG, IgM and IgG-IgM | Commercial | rRT-PCR | POC LFIA | COVID-19 rRT-PCR negative patients | |
| Yujiao Jin [ | China | IgG, IgM and IgG-IgM | S-N | Commercial | rRT-PCR | CLIA | Patients with suspected SARS-CoV-2 infection but with negative rRT-PCR results |
| Zhao [ | China | IgG and IgM | S | Commercial | Chest CT images/epidemiological history/clinical diagnosis/rRT-PCR | ELISA | Healthy individuals |
| Zhengtu Li [ | China | IgG, IgM and IgG-IgM | S | Commercial | rRT-PCR | POC LFIA | Healthy individuals |
| Rongqing Zhao [ | China | IgG-IgM | S | Inhouse | Not clear but all cases were confirmed COVID-19 patients | ELISA | Healthy individuals (samples collected before and during the COVID-19 pandemic) |
| Pingping Zhang [ | China | IgG-IgM | S | Inhouse | rRT-PCR | POC LFIA | COVID-19 rRT-PCR negative patients |
| Paradiso [ | Italy | IgG-IgM | S | Commercial | rRT-PCR | POC LFIA | Patients with COVID-19 disease orienting-symptoms but rRT-PCR negative |
| Huan Ma [ | China | IgA, IgG, IgM, IgG-IgM and Ab | S and N | Inhouse | rRT-PCR | CLIA | Healthy individuals, COVID-19 suspected individuals and mixed disease group |
| Qian [ | China | IgG and IgM | S-N | Commercial | rRT-PCR | CLIA | Healthy individuals and hospitalised individuals |
| Ling Zhong [ | China | IgG and IgM | Inhouse | rRT-PCR | CLIA and ELISA | Healthy individuals | |
| Jiajia Xie [ | China | IgG and IgM | E-N | Commercial | Chest CT images/epidemiological history/clinical diagnosis/rRT-PCR | CLIA | Clinically confirmed COVID-19 rRT-PCR negative patients |
| Infantino [ | Italy | IgG and IgM | S-N | Commercial | rRT-PCR | CLIA | Mixed diseases patients and blood donors pre-COVID-19 |
| Adams [ | UK | IgG, IgM and IgG-IgM | S | Inhouse (ELISA) and Commercial (LFIA) | rRT-PCR | ELISA and POC LFIA | Healthy blood and ICU cerebral organ donors before the COVID-19 pandemic |
| Lassaunière [ | Denmark | IgA, IgG and Ab | S | Commercial | rRT-PCR | ELISA and POC LFIA | Healthy individuals and mixed diseases patients (including acute respiratory tract infections caused by other corona viruses and non-corona viruses |
| Qiang Wang [ | China | IgG, IgM and IgG-IgM | Commercial | Chest CT images/epidemiological history/clinical diagnosis/rRT-PCR | ELISA and POC LFIA | COVID-19 clinical negative mixed diseases patients | |
| Fei Xiang [ | China | IgG and IgM | N | Commercial | rRT-PCR | ELISA | Healthy blood donors or from patients with other disease hospitalised |
| Bin Lou [ | China | IgG, IgM and Ab | S and N | Commercial | rRT-PCR | ELISA, CLIA and POC LFIA | Healthy Individuals |
| Lei Liu [ | China | IgG-IgM | N | Commercial | rRT-PCR | ELISA | Randomly selected ordinary patients and healthy blood donors |
| Imai [ | Japan | IgG, IgM and IgG-IgM | Commercial | rRT-PCR | POC LFIA | Non-COVID-19 patients (from April to October 2019 | |
| Pérez-García [ | Spain | IgG, IgM and IgG-IgM | Commercial | rRT-PCR | POC LFIA | Healthy individuals (samples collected before the COVID-19 pandemic) | |
| Zhenhua Chen [ | China | IgG | N | Inhouse | rRT-PCR | POC LFIA | Clinically suspicious for the presence of anti-SARS-CoV-2 |
| Dohla [ | German | IgG, IgM and IgG-IgM | Commercial | RT-qPCR | POC LFIA | COVID-19 RT-qPCR negative patients | |
| Burbelo [ | USA | Ab | S and N | Inhouse | RT-PCR | LIPS | Subjects with COVID-19-like symptoms or household contacts of persons with COVID-19 (not tested by PCR), and blood donors who donated samples before 2018. |
Studies with P superscripts were published articles and without P superscripts were MedRxiv preprints
Studies with CS superscripts are cross sectional studies and without CS superscripts are case control studies
IgG-IgM means that either one of them or both were detected in serum
Ab means total antibodies
Fig. 2LFIA methodological quality summary table and graph. a Risk of bias and applicability concerns summary: review authors’ judgements about each domain for each included study. b QUADAS-2 bias assessment and QUADAS-2 applicability assessment item presented as percentages across all included studies. On the left, risk of bias graph and on the right applicability concerns graph. c Risk of bias and applicability concerns summary: review authors. Low, low risk of bias; high, high risk of bias; unclear, bias is unclear
Fig. 3CLIA methodological quality summary table and graph. a Risk of bias and applicability concerns summary: review authors’ judgements about each domain for each included study. b QUADAS-2 bias assessment and QUADAS-2 applicability assessment item presented as percentages across all included studies. On the left, risk of bias graph and on the right applicability concerns graph. c Risk of bias and applicability concerns summary: review authors. Low, low risk of bias; high, high risk of bias; unclear, bias is unclear
Fig. 4ELISA methodological quality summary table and graph. a Risk of bias and applicability concerns summary: review authors’ judgements about each domain for each included study. b QUADAS-2 bias assessment and QUADAS-2 applicability assessment item presented as percentages across all included studies. On the left, risk of bias graph and on the right applicability concerns graph. c Risk of bias and applicability concerns summary: review authors. Low, low risk of bias; high, high risk of bias; unclear, bias is unclear
Fig. 5Forest plot of sensitivity, specificity and heterogeneity of serological LFIA diagnosis of COVID-19. a Forest plot for the IgG LFIA. b Forest plot for the IgM based LFIA. c Forest plot for the IgG-IgM based LFIA
Fig. 6Forest plot of sensitivity, specificity and heterogeneity of serological CLIA diagnosis of COVID-19. a Forest plot for the IgG CLIA. b Forest plot for the IgM based CLIA. c Forest plot for the IgG-IgM based CLIA
Fig. 7Forest plot of sensitivity, specificity and heterogeneity of serological ELISA diagnosis of COVID-19. a Forest plot for the IgG ELISA. b Forest plot for the IgM based ELISA. c Forest plot for the IgG-IgM based ELISA
Fig. 8Summary ROC curves for the three antibody serological test groups. Every symbol reflects a 2 × 2 table, one for each test. One study may have contributed more than one 2 × 2 table. The curves are shown for the different test types
Fig. 9Hierarchical summary receiver operating characteristic (HSROC) curve obtained using OpenMeta-Analyst. Every circle represents the sensitivity and specificity estimates of individual studies in the meta-analysis, and the size of the circle reflects the sample size. The black dots indicate summary points of sensitivity and specificity; HSROC curve is the line passing through summary point. The curve is the regression line that summarises the overall diagnostic accuracy. a HSROC for IgG serological tests. b HSROC for IgM serological tests. c HSROC IgG-IgM serological tests. 1, LFIA HSROC; 2, CLIA HSROC and 3, ELISA HSROC
Overall antibody type subgroup meta-analysis heterogeneity
| Test type | Antibody type | Heterogeneity ( | |
|---|---|---|---|
| Sensitivity | Specificity | ||
| LFIA | IgG | ||
| IgM | |||
| IgG-IgM | |||
| CLIA | IgG | 93.56% | 86.5% |
| IgM | 93.42% | 95.17% | |
| IgG-IgM | |||
| ELISA | IgG | 78.07% | 84.97% |
| IgM | 85.47% | 90.08% | |
| IgG-IgM | 52.12% | 0% | |
Fig. 10Forest plot of studies evaluating tests for detection of IgG, IgM and IgG-IgM according to days since COVID-19 symptom onset to specimen collection. In brackets () are the number of days since symptom onset to specimen collection. Artron, Auto Bio CTK Biotech CTK Biotech are test names all reported in a study by Lassaunire et al
| Search | Query | Items found |
|---|---|---|
| #20 | Search (((((COVID-19[Title/Abstract]) OR SARS-CoV-2[Title/Abstract]) OR 2019-nCoV[Title/Abstract]) OR Wuhan Coronavirus[Title/Abstract])) AND (((((((((((((Serologic test) OR Serologic method) OR Serological test) OR Serological method) OR Serodiagnosis) OR Immunodiagnosis) OR Immunological test) OR Immunological method) OR Antibody detection) OR Antigen detection) OR IgM) OR IgG) OR Immunochromatography) | 78 |
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