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1.
medrxiv; 2021.
Preprint em Inglês | medRxiv | ID: ppzbmed-10.1101.2021.10.13.21264956

RESUMO

ABSTRACT Objective To describe the impact of the SARS-CoV-2 pandemic on the incidence of paediatric viral respiratory tract infection in Oxfordshire, UK. Methods Data on paediatric Emergency Department (ED) attendances (0-15 years inclusive), respiratory virus testing, vital signs and mortality at Oxford University Hospitals were summarised using descriptive statistics. Results Between 1-March-2016 and 30-July-2021, 155,056 ED attendances occurred and 7,195 respiratory virus PCRs were performed. Detection of all pathogens was suppressed during the first national lockdown. Rhinovirus and adenovirus rates increased when schools reopened September-December 2020, then fell, before rising in March-May 2021. The usual winter RSV peak did not occur in 2020/21, with an inter-seasonal rise (32/1,000 attendances in 0-3yr olds) in July 2021. Influenza remained suppressed throughout. A higher Paediatric Early Warning Score (PEWS) was seen for attendees with adenovirus during the pandemic compared to pre-pandemic (p=0.04, Mann-Witney U test), no other differences in PEWS were seen. Conclusions SARS-CoV-2 caused major changes in the incidence of paediatric respiratory viral infection in Oxfordshire, with implications for clinical service demand, testing strategies, timing of palivizumab RSV prophylaxis, and highlighting the need to understand which public health interventions are most effective for preventing respiratory virus infections.


Assuntos
Infecções Respiratórias , Emergências
2.
medrxiv; 2021.
Preprint em Inglês | medRxiv | ID: ppzbmed-10.1101.2021.08.24.21262376

RESUMO

BackgroundUncertainty in patients COVID-19 status contributes to treatment delays, nosocomial transmission, and operational pressures in hospitals. However, typical turnaround times for batch-processed laboratory PCR tests remain 12-24h. Although rapid antigen lateral flow testing (LFD) has been widely adopted in UK emergency care settings, sensitivity is limited. We recently demonstrated that AI-driven triage (CURIAL-1.0) allows high-throughput COVID-19 screening using clinical data routinely available within 1h of arrival to hospital. Here we aimed to determine operational and safety improvements over standard-care, performing external/prospective evaluation across four NHS trusts with updated algorithms optimised for generalisability and speed, and deploying a novel lab-free screening pathway in a UK emergency department. MethodsWe rationalised predictors in CURIAL-1.0 to optimise separately for generalisability and speed, developing CURIAL-Lab with vital signs and routine laboratory blood predictors (FBC, U&E, LFT, CRP) and CURIAL-Rapide with vital signs and FBC alone. Models were calibrated during training to 90% sensitivity and validated externally for unscheduled admissions to Portsmouth University Hospitals, University Hospitals Birmingham and Bedfordshire Hospitals NHS trusts, and prospectively during the second-wave of the UK COVID-19 epidemic at Oxford University Hospitals (OUH). Predictions were generated using first-performed blood tests and vital signs and compared against confirmatory viral nucleic acid testing. Next, we retrospectively evaluated a novel clinical pathway triaging patients to COVID-19-suspected clinical areas where either model prediction or LFD results were positive, comparing sensitivity and NPV with LFD results alone. Lastly, we deployed CURIAL-Rapide alongside an approved point-of-care FBC analyser (OLO; SightDiagnostics, Israel) to provide lab-free COVID-19 screening in the John Radcliffe Hospitals Emergency Department (Oxford, UK), as trust-approved service improvement. Our primary improvement outcome was time-to-result availability; secondary outcomes were sensitivity, specificity, PPV, and NPV assessed against a PCR reference standard. We compared CURIAL-Rapides performance with clinician triage and LFD results within standard-care. Results72,223 patients met eligibility criteria across external and prospective validation sites. Model performance was consistent across trusts (CURIAL-Lab: AUROCs range 0.858-0.881; CURIAL-Rapide 0.836-0.854), with highest sensitivity achieved at Portsmouth University Hospitals (CURIAL-Lab:84.1% [95% Wilsons score CIs 82.5-85.7]; CURIAL-Rapide:83.5% [81.8 - 85.1]) at specificities of 71.3% (95% Wilsons score CIs: 70.9 - 71.8) and 63.6% (63.1 - 64.1). For 3,207 patients receiving LFD-triage within routine care for OUH admissions between December 23, 2021 and March 6, 2021, a combined clinical pathway increased sensitivity from 56.9% for LFDs alone (95% CI 51.7-62.0) to 88.2% with CURIAL-Rapide (84.4-91.1; AUROC 0.919) and 85.6% with CURIAL-Lab (81.6-88.9; AUROC 0.925). 520 patients were prospectively enrolled for point-of-care FBC analysis between February 18, 2021 and May 10, 2021, of whom 436 received confirmatory PCR testing within routine care and 10 (2.3%) tested positive. Median time from patient arrival to availability of CURIAL-Rapide result was 45:00 min (32-64), 16 minutes (26.3%) sooner than LFD results (61:00 min, 37-99; log-rank p<0.0001), and 6:52 h (90.2%) sooner than PCR results (7:37 h, 6:05-15:39; p<0.0001). Sensitivity and specificity of CURIAL-Rapide were 87.5% (52.9-97.8) and 85.4% (81.3-88.7), therefore achieving high NPV (99.7%, 98.2-99.9). CURIAL-Rapide correctly excluded COVID-19 for 58.5% of negative patients who were triaged by a clinician to COVID-19-suspected (amber) areas. ImpactCURIAL-Lab & CURIAL-Rapide are generalisable, high-throughput screening tests for COVID-19, rapidly excluding the illness with higher NPV than LFDs. CURIAL-Rapide can be used in combination with near-patient FBC analysis for rapid, lab-free screening, and may reduce the number of COVID-19-negative patients triaged to enhanced precautions ( amber) clinical areas.


Assuntos
COVID-19
3.
- The COvid-19 Multi-omics Blood ATlas (COMBAT) Consortium; David J Ahern; Zhichao Ai; Mark Ainsworth; Chris Allan; Alice Allcock; Azim Ansari; Carolina V Arancibia-Carcamo; Dominik Aschenbrenner; Moustafa Attar; J. Kenneth Baillie; Eleanor Barnes; Rachael Bashford-Rogers; Archana Bashyal; Sally Beer; Georgina Berridge; Amy Beveridge; Sagida Bibi; Tihana Bicanic; Luke Blackwell; Paul Bowness; Andrew Brent; Andrew Brown; John Broxholme; David Buck; Katie L Burnham; Helen Byrne; Susana Camara; Ivan Candido Ferreira; Philip Charles; Wentao Chen; Yi-Ling Chen; Amanda Chong; Elizabeth Clutterbuck; Mark Coles; Christopher P Conlon; Richard Cornall; Adam P Cribbs; Fabiola Curion; Emma E Davenport; Neil Davidson; Simon Davis; Calliope Dendrou; Julie Dequaire; Lea Dib; James Docker; Christina Dold; Tao Dong; Damien Downes; Alexander Drakesmith; Susanna J Dunachie; David A Duncan; Chris Eijsbouts; Robert Esnouf; Alexis Espinosa; Rachel Etherington; Benjamin Fairfax; Rory Fairhead; Hai Fang; Shayan Fassih; Sally Felle; Maria Fernandez Mendoza; Ricardo Ferreira; Roman Fischer; Thomas Foord; Aden Forrow; John Frater; Anastasia Fries; Veronica Gallardo Sanchez; Lucy Garner; Clementine Geeves; Dominique Georgiou; Leila Godfrey; Tanya Golubchik; Maria Gomez Vazquez; Angie Green; Hong Harper; Heather A Harrington; Raphael Heilig; Svenja Hester; Jennifer Hill; Charles Hinds; Clare Hird; Ling-Pei Ho; Renee Hoekzema; Benjamin Hollis; Jim Hughes; Paula Hutton; Matthew Jackson; Ashwin Jainarayanan; Anna James-Bott; Kathrin Jansen; Katie Jeffery; Elizabeth Jones; Luke Jostins; Georgina Kerr; David Kim; Paul Klenerman; Julian C Knight; Vinod Kumar; Piyush Kumar Sharma; Prathiba Kurupati; Andrew Kwok; Angela Lee; Aline Linder; Teresa Lockett; Lorne Lonie; Maria Lopopolo; Martyna Lukoseviciute; Jian Luo; Spyridoula Marinou; Brian Marsden; Jose Martinez; Philippa Matthews; Michalina Mazurczyk; Simon McGowan; Stuart McKechnie; Adam Mead; Alexander J Mentzer; Yuxin Mi; Claudia Monaco; Ruddy Montadon; Giorgio Napolitani; Isar Nassiri; Alex Novak; Darragh O'Brien; Daniel O'Connor; Denise O'Donnell; Graham Ogg; Lauren Overend; Inhye Park; Ian Pavord; Yanchun Peng; Frank Penkava; Mariana Pereira Pinho; Elena Perez; Andrew J Pollard; Fiona Powrie; Bethan Psaila; T. Phuong Quan; Emmanouela Repapi; Santiago Revale; Laura Silva-Reyes; Jean-Baptiste Richard; Charlotte Rich-Griffin; Thomas Ritter; Christine S Rollier; Matthew Rowland; Fabian Ruehle; Mariolina Salio; Stephen N Sansom; Alberto Santos Delgado; Tatjana Sauka-Spengler; Ron Schwessinger; Giuseppe Scozzafava; Gavin Screaton; Anna Seigal; Malcolm G Semple; Martin Sergeant; Christina Simoglou Karali; David Sims; Donal Skelly; Hubert Slawinski; Alberto Sobrinodiaz; Nikolaos Sousos; Lizzie Stafford; Lisa Stockdale; Marie Strickland; Otto Sumray; Bo Sun; Chelsea Taylor; Stephen Taylor; Adan Taylor; Supat Thongjuea; Hannah Thraves; John A Todd; Adriana Tomic; Orion Tong; Amy Trebes; Dominik Trzupek; Felicia A Tucci; Lance Turtle; Irina Udalova; Holm Uhlig; Erinke van Grinsven; Iolanda Vendrell; Marije Verheul; Alexandru Voda; Guanlin Wang; Lihui Wang; Dapeng Wang; Peter Watkinson; Robert Watson; Michael Weinberger; Justin Whalley; Lorna Witty; Katherine Wray; Luzheng Xue; Hing Yuen Yeung; Zixi Yin; Rebecca K Young; Jonathan Youngs; Ping Zhang; Yasemin-Xiomara Zurke.
medrxiv; 2021.
Preprint em Inglês | medRxiv | ID: ppzbmed-10.1101.2021.05.11.21256877

RESUMO

Treatment of severe COVID-19 is currently limited by clinical heterogeneity and incomplete understanding of potentially druggable immune mediators of disease. To advance this, we present a comprehensive multi-omic blood atlas in patients with varying COVID-19 severity and compare with influenza, sepsis and healthy volunteers. We identify immune signatures and correlates of host response. Hallmarks of disease severity revealed cells, their inflammatory mediators and networks as potential therapeutic targets, including progenitor cells and specific myeloid and lymphocyte subsets, features of the immune repertoire, acute phase response, metabolism and coagulation. Persisting immune activation involving AP-1/p38MAPK was a specific feature of COVID-19. The plasma proteome enabled sub-phenotyping into patient clusters, predictive of severity and outcome. Tensor and matrix decomposition of the overall dataset revealed feature groupings linked with disease severity and specificity. Our systems-based integrative approach and blood atlas will inform future drug development, clinical trial design and personalised medicine approaches for COVID-19.


Assuntos
COVID-19 , Sepse
4.
researchsquare; 2020.
Preprint em Inglês | PREPRINT-RESEARCHSQUARE | ID: ppzbmed-10.21203.rs.3.rs-91353.v2

RESUMO

Serological detection of antibodies to SARS-CoV-2 is essential for establishing rates of seroconversion in populations, detection of seroconversion after vaccination, and for seeking evidence for a level of antibody that may be protective against COVID-19 disease. Several high-performance commercial tests have been described, but these require centralised laboratory facilities that are comparatively expensive, and therefore not available universally. Red cell agglutination tests have a long history in blood typing, and general serology through linkage of reporter molecules to the red cell surface. They do not require special equipment, are read by eye, have short development times, low cost and can be applied as a Point of Care Test (POCT). We describe a red cell agglutination test for the detection of antibodies to the SARS-CoV-2 receptor binding domain (RBD). We show that the Haemagglutination Test (HAT) has a sensitivity of 90% and specificity of 99% for detection of antibodies after a PCR diagnosed infection. The HAT can be titrated, detects rising titres in the first five days of hospital admission, correlates well with a commercial test that detects antibodies to the RBD, and can be applied as a point of care test. The developing reagent is composed of a previously described nanobody to a conserved glycophorin A epitope on red cells, linked to the RBD from SARS-CoV-2. It can be lyophilised for ease of shipping. We have scaled up production of this reagent to one gram, which is sufficient for ten million tests, at a cost of ~0.27 UK pence per test well. Aliquots of this reagent are ready to be supplied to qualified groups anywhere in the world that need to detect antibodies to SARS-CoV-2, but do not have the facilities for high throughput commercial tests.


Assuntos
COVID-19
5.
medrxiv; 2020.
Preprint em Inglês | medRxiv | ID: ppzbmed-10.1101.2020.10.02.20205831

RESUMO

Serological detection of antibodies to SARS-CoV-2 is essential for establishing rates of seroconversion in populations, detection of seroconversion after vaccination, and for seeking evidence for a level of antibody that may be protective against COVID-19 disease. Several high-performance commercial tests have been described, but these require centralised laboratory facilities that are comparatively expensive, and therefore not available universally. Red cell agglutination tests have a long history in blood typing, and general serology through linkage of reporter molecules to the red cell surface. They do not require special equipment, are read by eye, have short development times, low cost and can be applied as a Point of Care Test (POCT). We describe a red cell agglutination test for the detection of antibodies to the SARS-CoV-2 receptor binding domain (RBD). We show that the Haemagglutination Test (HAT) has a sensitivity of 90% and specificity of 99% for detection of antibodies after a PCR diagnosed infection. The HAT can be titrated, detects rising titres in the first five days of hospital admission, correlates well with a commercial test that detects antibodies to the RBD, and can be applied as a point of care test. The developing reagent is composed of a previously described nanobody to a conserved glycophorin A epitope on red cells, linked to the RBD from SARS-CoV-2. It can be lyophilised for ease of shipping. We have scaled up production of this reagent to one gram, which is sufficient for ten million tests, at a cost of ~0.27 UK pence per test well. Aliquots of this reagent are ready to be supplied to qualified groups anywhere in the world that need to detect antibodies to SARS-CoV-2, but do not have the facilities for high throughput commercial tests.


Assuntos
COVID-19
6.
medrxiv; 2020.
Preprint em Inglês | medRxiv | ID: ppzbmed-10.1101.2020.04.15.20066407

RESUMO

BackgroundThe COVID-19 pandemic caused >1 million infections during January-March 2020. There is an urgent need for reliable antibody detection approaches to support diagnosis, vaccine development, safe release of individuals from quarantine, and population lock-down exit strategies. We set out to evaluate the performance of ELISA and lateral flow immunoassay (LFIA) devices. MethodsWe tested plasma for COVID (SARS-CoV-2) IgM and IgG antibodies by ELISA and using nine different LFIA devices. We used a panel of plasma samples from individuals who have had confirmed COVID infection based on a PCR result (n=40), and pre-pandemic negative control samples banked in the UK prior to December-2019 (n=142). ResultsELISA detected IgM or IgG in 34/40 individuals with a confirmed history of COVID infection (sensitivity 85%, 95%CI 70-94%), vs. 0/50 pre-pandemic controls (specificity 100% [95%CI 93-100%]). IgG levels were detected in 31/31 COVID-positive individuals tested [≥]10 days after symptom onset (sensitivity 100%, 95%CI 89-100%). IgG titres rose during the 3 weeks post symptom onset and began to fall by 8 weeks, but remained above the detection threshold. Point estimates for the sensitivity of LFIA devices ranged from 55-70% versus RT-PCR and 65-85% versus ELISA, with specificity 95-100% and 93-100% respectively. Within the limits of the study size, the performance of most LFIA devices was similar. ConclusionsCurrently available commercial LFIA devices do not perform sufficiently well for individual patient applications. However, ELISA can be calibrated to be specific for detecting and quantifying SARS-CoV-2 IgM and IgG and is highly sensitive for IgG from 10 days following first symptoms.


Assuntos
COVID-19
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