| Literature DB >> 33839767 |
Lina Badimon1, Emma L Robinson2,3, Amela Jusic4, Irina Carpusca4, Leon J deWindt5, Costanza Emanueli6, Péter Ferdinandy7,8, Wei Gu9, Mariann Gyöngyösi10, Matthias Hackl11, Kanita Karaduzovic-Hadziabdic12, Mitja Lustrek13, Fabio Martelli14, Eric Nham15, Ines Potočnjak16, Venkata Satagopam9, Reinhard Schneider9, Thomas Thum17,18, Yvan Devaux4.
Abstract
The coronavirus disease 2019 (COVID-19) pandemic has been as unprecedented as unexpected, affecting more than 105 million people worldwide as of 8 February 2020 and causing more than 2.3 million deaths according to the World Health Organization (WHO). Not only affecting the lungs but also provoking acute respiratory distress, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) is able to infect multiple cell types including cardiac and vascular cells. Hence a significant proportion of infected patients develop cardiac events, such as arrhythmias and heart failure. Patients with cardiovascular comorbidities are at highest risk of cardiac death. To face the pandemic and limit its burden, health authorities have launched several fast-track calls for research projects aiming to develop rapid strategies to combat the disease, as well as longer-term projects to prepare for the future. Biomarkers have the possibility to aid in clinical decision-making and tailoring healthcare in order to improve patient quality of life. The biomarker potential of circulating RNAs has been recognized in several disease conditions, including cardiovascular disease. RNA biomarkers may be useful in the current COVID-19 situation. The discovery, validation, and marketing of novel biomarkers, including RNA biomarkers, require multi-centre studies by large and interdisciplinary collaborative networks, involving both the academia and the industry. Here, members of the EU-CardioRNA COST Action CA17129 summarize the current knowledge about the strain that COVID-19 places on the cardiovascular system and discuss how RNA biomarkers can aid to limit this burden. They present the benefits and challenges of the discovery of novel RNA biomarkers, the need for networking efforts, and the added value of artificial intelligence to achieve reliable advances.Entities:
Keywords: Artificial intelligence; Biomarkers; Genomics; RNAs
Mesh:
Substances:
Year: 2021 PMID: 33839767 PMCID: PMC8083253 DOI: 10.1093/cvr/cvab094
Source DB: PubMed Journal: Cardiovasc Res ISSN: 0008-6363 Impact factor: 10.787
Laboratory markers associated with poor outcomes after SARS-CoV-2 infection
| Sample size | WBC | Lymphocytes | Platelets | D-dimer | CRP | PCT | IL-6 | AST | ALT | Ref. | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| ↑↓ | OR [95% CI] | ↑↓ | OR [95% CI] | ↑↓ | OR [95% CI] | ↑↓ | OR [95% CI] | ↑↓ | OR [ | ↑↓ | OR [95% CI] | ↑↓ | OR [95% CI] | ↑↓ | OR [95% CI] | ↑↓ | OR [95% CI] | ||
| 3962 | – | – | – | – | – | – | – | – | ↑ | – | ↑ | – | ↑ | – | – | – | – | – |
|
| 10 491 | – | – | ↓ | 3.33 [2.51–4.41] | ↓ | 2.36 [1.64–3.40] | ↑ | 3.39 [2.66–4.33] | ↑ | 4.37 [3.37–5.68] | ↑ | 6.33 [4.24–9.45] | – | – | ↑ | 2.75 [2.30–3.29] | ↑ | 1.7 [11.32–2.20] |
|
| 1955 | ↓ | – | ↓ | – | ↓ | – | ↑ | – | ↑ | – | ↑ | – | – | – | ↑ | – | ↑ | – |
|
| 4662 | ↓ | – | ↓ | 4.5 [3.3–6.0] | ↓ | – | ↑ | – | ↑ | 3.00 [2.1–4.4] | ↑ | – | ↑ | 53.1% [36.0/ 70.0%] | ↑ | – | ↑ | – |
|
| – | ↓ | 0.93 [0.46–1.86] | ↓ | 1.66 [1.26–2.20] | ↓ | 0.88 [0.26–2.95] | ↑ | 1.50 [0.89–2.56] | ↑ | 1.41 [1.17–1.70] | ↑ | 2.94 [2.09–4.15] | – | – | ↑ | 2.27 [1.76–2.94] | ↑ | 1.60 [1.34–1.90] |
|
| 6320 | ↓ | 1.75 [1.21–2.54] | ↓ | 0.30 [0.19–0.47] | ↓ | 0.56 [0.42–0.74] | ↑ | 3.97 [2.62–6.02] | ↑ | 6.36 [3.22–12.5] | ↑ | 4.76 [2.48–9.14] | ↑ | 2.10 [1.02–4.32] | – | – | – | – |
|
| – | ↓ | – | ↓ | – | ↓ | – | ↑ | – | ↑ | – | ↑ | – | ↑ | – | ↑ | – | ↑ | – |
|
| 91 621 | ↓ | – | ↓ | – | ↓ | – | ↑ | – | ↑ | – | ↑ | – | ↑ | – | ↑ | – | ↑ | – |
|
| 3027 | ↓ | 0.30 [0.17–0.51] | – | – | – | – | ↑ | 43.24 [9.92– 188.49] | – | – | ↑ | 43.24 [9.92– 188.49] | – | – | ↑ | 4.00 [2.46–6.52] | – | – |
|
| 51 225 | ↓ | 2.75 [2.02–3.9] | ↓ | −0.6 (−2.55–1.38) | ↓ | −36.06 (−49.24; – 22.77) | ↑ | 3.22 [2.84–3.61] | ↑ | 68.31 [53.11– 83.50] | ↑ | 0.52 [0.42–0.62] | ↑ | 43.64 [30.92– 56.35] | ↑ | 17.41 [13.99– 20.83] | ↑ | 2.18 [0.09–4.28] |
|
| 4631 | – | – | – | – | – | – | – | – | – | – | – | – | ↑ | RR 0.54 [0.27– 0.81] | – | – | – | – |
|
| 5626 | – | – | – | – | – | – | ↑ | 1.4 [−2.04– (−0.77)] | ↑ | 64.03 [−68.88– (−59.19)] | – | – | – | – | – | – | – | – |
|
The hyphen means not studied. Poor outcomes include in-hospital admission, intensive care unit admission, oxygen saturation <90%, severe disease, utilization of invasive mechanical ventilation, and mortality. Adapted from two references.,
ALT, alanine aminotransferase; AST, aspartate aminotransferase; CRP, C-reactive protein; IL-6, interleukin 6; MA, meta-analysis; OR, odds ratio; PCT, procalcitonin; WBC, white blood cells; ↑, increased; ↓, decreased.
Cardiac injury biomarkers associated with poor outcomes in COVID-19 patients
| Sample size | LDH | CK | Creatinine | Troponin I | CK-MB | Ref. | |||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| ↑↓ |
| ↑↓ |
| ↑↓ |
| ↑↓ |
| ↑↓ | SMD [95%CI] | ||
| – | ↑ | 6.7 [2.4–18.9] | – | – | – | – | ↑ | 0.71 [0.42; 1.00] | ↑ | 0.68 [0.48; 0.87] |
|
| 6320 | ↑ | 2.03 [1.42–2.90] | ↑ | ↑ |
| ||||||
| 491 | – | – | – | – | – | – | ↑ | – | – | – |
|
| 91 621 | ↑ | – | ↑ | – | ↑ | – | ↑ | 16% [11–22] | – | – |
|
| 3027 | ↑ | – | ↑ | – | ↑ | – | ↑ | 43.24 [9.92–188.49] | – | – |
|
| 51 225 | ↑ | 8.86 [2.72–28.89] | – | – | ↑ | 5.30 [2.19–12.83] | ↑ | 0.02 [0.02; 0.02] | – | – |
|
| 4631 | ↑ | 180.26 [131.02–229.51] | – | – | ↑ | 21.72 [16.72–26.71] | ↑ | 0.74 [0.19–1.30] | – | – |
|
| 5626 | ↑ | RR 2.20 [1.55–31.12] | ↑ | RR 1.89 [1.50–2.61] | – | – | ↑ | −1.55 [−2.23; –0.88] | ↑ | –4.75 [13.31; 3.82] |
|
| 341 | – | – | – | – | – | – | ↑ | 25.6 [6.8–44.5] | – | – |
|
| 3118 | – | – | – | – | – | – | ↑ | 21.15 [10.19–43.94] | – | – |
|
| 4189 | – | – | – | – | – | – | ↑ | 0.53 [0.30–0.75] | ↑ | 0.62 [0.28–0.97] |
|
| 982 | – | – | – | – | – | – | ↑ | HR 2.48 [1.50–4.11] | – | – |
|
Poor outcomes include in-hospital admission, intensive care unit admission, oxygen saturation <90%, severe disease, utilization of invasive mechanical ventilation, and mortality. The hyphen means not studied. Adapted from two references.,
CK-MB, creatinine kinase-MB; HR, hazard ratio; LDH, lactate dehydrogenase; OR, odds ratio; RR, risk ratio; SMD, standardized mean difference; ↑, increased; ↓, decreased.
Figure 4Architecture of an ANN. Input layer contains the collected patient phenotype (demographic and clinical) and molecular data (RNA biomarkers), followed by two input layers, and an output layer which in this case predicts mortality, but could also predict MACE or other clinical outcomes.
Comparison of 28-day mortality of patients with SARS-CoV-2 treated with remdesivir, dexamethasone, hydroxychloroquine, lopinavir, and interferon with/without O2 from the SOLIDARITY, ACTT-1, and RECOVERY trials
| Drug | 28-day mortality | No O2 | Low/hi-O2 | Ventilation |
|---|---|---|---|---|
|
Remdesivir* ( |
301/2743 (12.5%) | 11/661 (2.0%) | 192/1828 (12.2%) | 98/254 (43.0%) |
|
Control ( |
303/2708 (12.7%) | 13/664 (2.1%) | 219/1811 (13.8%) | 71/233 (37.8%) |
|
Remdesivir** ( |
59/541 (10.9%) | 3/75 (4.1%) | 28/327 (8.6%) | 28/131 (21.9%) |
|
Placebo ( |
77/521 (14.8%) | 3/63 (4.8%) |
45/301 (15.0%) | 29/154 (19.3%) |
|
Dexamethasone*** ( | 482/2104 (22.9%) |
89/501 (17.8%) | 298/1279 (23.3%) | 95/324 (29.3%) |
|
Usual care ( | 1110/4321 (25.7%) |
145/1034 (14.0%) | 682/2604 (26.2%) | 283/683 (41.4%) |
| Hydroxychloroquine**** | 104/947 (10.2%) | 69/862 (7.4%) | 35/85 (39.2%) | |
| Control | 84/906 (8.9%) | 57/824 (6.6%) | 27/82 (32.3%) | |
| Lopinavir***** | 148/1399 (9.7%) | 113/1287 (8.1%) | 35/112 (28.1%) | |
| Control | 146/1372 (10.3%) | 111/1258 (8.7%) | 35/114 (28.7%) | |
| Interferon-ß1a ****** | 243/2050 (12.9%) | 188/1911 (10.9%) | 55/139 (42.4%) | |
| Control | 216/2050 (11.0%) | 176/1920 (9.5%) | 40/130 (33.8%) | |
Remdesivir*—SOLIDARITY trial. Day 0: 200 mg; Day: 1–9: 100 mg i.v.;
Remdesivir**—ACTT. Day 1: 200 mg; Day 2–10: 100 mg compared to placebo;
Dexamethasone***—RECOVERY 6 mg oral/i.v. for up to 10 days;
Hydroxychloroquine****—SOLIDARITY trial. Hydroxychloroquine sulphate a 200 mg tbl at Hour 0, four tablets; Hour 6, four tablets; Hour 12, begin two tablets twice daily for 10 days;
Lopinavir*****—SOLIDARITY trial. Lopinavir a 200 mg+ ritonavir 50 mg 2x 2 tablets for 14 days;
Interferon******—SOLIDARITY trial. Three doses over six days of 44 μg subcutaneous Interferon-ß1a.
Potential ncRNA biomarkers of COVID-19
| ncRNA | Sample size | Type of sample | Regulation | Number of predicted target genes | Experimentally validated target genes in any disease | Experimentally validated target genes in COVID-19 patient samples | Proposed role in COVID-19 | Reference |
|---|---|---|---|---|---|---|---|---|
| miR-16-2-3p | 14 | Blood | ↑ | 71 | FGFR2, PDPK1 | – | – |
|
| miR-6501-5p | 88 | – | – | – | ||||
| miR-618 | 11 | MTDH, TLR-4, ATP6V1E1, HAT1, MCTS1, TGF-β2 | TLR-4, HAT1, TGF-β2 |
TLR4 regulates inflammation; HAT1: mitochondrial function, cellular senescence, and telomere attrition; TGF-β2 induces expression of furin in HBE cells | ||||
| miR-183-5p | ↓ | 220 | PTEN, PIK3CA | PTEN | Regulator of SARS-CoV-2 ACE2- TMPRSS2-Furin-DPP4 axis | |||
| miR-627-5p | 25 | CDK6, SOX-2, LINC00958, lnc-UCA1 | – | – | ||||
| miR-144-3p | 80 | PTEN, APP, FoxO1 |
FOXO1 PTEN |
FOXO1 regulates cell death downstream of several signalling pathways including CDK1, PKB/AKT1, and STK4/MST1 PTEN signalling is increased after SARS-CoV-2 infection | ||||
| lncRNA DANCR | 563 | Lung tissue and blood | ↓ | – | miR-496/mTOR axis; miR-335-5p/ miR-1972 and ROCK1 axis | mTOR | Regulator of Akt/mTOR/HIF-1 signalling pathway |
|
| lncRNA NEAT1 | ↑ | – | miR-129-5p/KLK7 axis; | RUNX3, SPI1 |
RUNX3 regulates DANCR and is related to inflammatory reaction in the lung; SPI1 controls DANCR expression in the brain and in epithelial cells | |||
| miR-21-5p | ↑ | 139 | TGFBI, MAPK1 | DANCR, NEAT1 | DANCR and NEAT1 can block inflammation via interacting with other ncRNAs, sponging miRNAs, or affecting TFs (e.g. STAT3) | |||
| miR-22-3p | 162 | WRNIP1, HMGB1 | HMGB1 | Exogenous HMGB1 induces the expression of SARS-CoV-2 entry receptor ACE2 | ||||
| miR-335-5p | 63 | Rb1, CARF, SGK3 | – | – | ||||
| miR-19a-3p | 241 | UBAP2L, PSG10P, IL1RAP | – | – | ||||
| miR-1207-5p | 18 | Lung tissue | ↑ | 147 | CSF1 | CSF1 | Enhances macrophage recruitment and activation and its over expression may contribute to acute inflammation |
|
| miR-21-5p |
Discovery: 33 Validation: 65 | Serum | ↑ | 41 | RASGRP1, BCL2, SMARCA4, SPRY2, DUSP10, TIMP3, SOX5, MTAP, RECK, PIAS3, TGFBR2, PTEN, E2F1, LRRFIP1, TPM1, NFIB, APAF1, BTG2, PDCD4, RHOB, ANP32A, SERPINB5, BMPR2, DAXX, TP63, MSH2, MSH6, ISCU, EIF4A2, ANKRD46, CDK2AP1, PPARA, FASLG, SMAD7, SERPINI1, DDAH1, HPGD, MYD88, IRAK1, VHL, GDF5, IL12A, CASC2, DNM1L |
TIMP3 PTEN |
SARS-CoV-2 reduces TIMP3 mRNA expression in alveolar epithelial cells, that likely promotes greater ADAM17 activity in COVID-19 patients. PTEN signalling is increased after SARS-CoV-2 infection |
|
| miR-155-5p | ↑ | 70 | MEIS1, TAB2, MECP2, SOCS1, MLH1, INPP5D, SMAD5, HIVEP2, ZNF652, BACH1, APC, SMAD1, SDCBP, MYO10, CLDN1, CEBPB, RHOA, AGTR1, RNF123, TP53INP1, IKBKE, KDM3A, SPI1, FOXO3, RUNX2, JUN, ETS1, CYR61, SMAD2, MYB, SKI, CKAP5, SOX6, CSF1R, FADD, NOS3, MYLK, PSIP1, ANXA2, HBP1, NFKB1, E2F2, PIK3R1, MMP16, MYC, SEL1L, DOCK1, RAD51, MXI1 |
TAB2 SOCS1 TP53INP1 FADD |
TAB2 is associated with vascular inflammation SOCS1 is a key checkpoint regulator of the immune system TP53INP1 induced cell death by an autophagy- and caspase-dependent mechanism The FADD/caspase-8 axis regulates TNF-α and IFN-γ co-treatment-induced inflammatory cell death independent of intrinsic apoptosis in macrophages | |||
| miR-208a-3p | ↑ | 3 | CDKN1A, MED13, ETS1 | – | ||||
| miR-499-5p | ↑ | 43 | FOXO4, PDCD4, ETS1 | FOXO4 | Down-regulated upon SARS-CoV-2 infection, associated with cellular signalling |
Predicted miRNA-target interactions were performed using miRWalk 3.0, miRDB 6.0, and miRTarBase 8.0 databases. Experimentally validated target genes in any disease (mostly cancer) were obtained from miRTarBase 8.0. Experimentally validated target genes in COVID 19 and their proposed roles were obtained through literature search. The authors apologize for the many references that could not be added to this table due to space restrictions.
↑, up-regulated;↓, down-regulated. CSF1, colony stimulating factor 1; DANCR, anti–differentiation lncRNA; FADD, Fas associated via death domain; FOXO4, forkhead box O4; FOXO1, forkhead box O1; HAT1, Histone acetyltransferase 1; HMGB1, high-mobility group protein 1; lncRNA, long non-coding RNA; mTOR, mechanistic target of rapamycin kinase; ncRNAs, non-coding RNAs; NEAT1, nuclear paraspeckle assembly transcript 1; PTEN, phosphatase and tensin homolog; RUNX3, RUNX family transcription factor 3; SOCS1, suppressor of cytokine signalling 1; SPI1, Spi-1 proto-oncogene; TAB2, TGF-beta activated kinase 1 (MAP3K7) binding protein 2; TGF-β2, transforming growth factor beta 2; TIMP3, TIMP metallopeptidase inhibitor 3; TLR-4, toll-like receptor 4; TP53INP1, tumour protein p53 inducible nuclear protein 1.