MICA: STELAR (Study Team for Early Life Asthma Research) consortium - Asthma e-lab and identification of novel endotypes of childhood asthma

Lead Research Organisation: Imperial College London
Department Name: Dept of Medicine

Abstract

Asthma is the most common chronic disease of childhood and causes many hospital admissions. The number of children suffering from asthma has increased dramatically over the past 30 years. It is unclear why some people get asthma and others do not. Asthma is largely heritable, but despite lots of effort we have had limited success identifying which genes are important, and genetic studies of asthma have not yet had a positive impact on patient care. Many factors in the environment may contribute to the development of asthma (for example diet, immunizations, antibiotics, pets and tobacco smoke) but we don't know how to modify the environment to reduce the risks. One reason for the difficulty in understanding causes of asthma is that asthma may be a collection of different diseases which cause similar symptoms. As asthma generally starts early in life, the best way to study it is to recruit new born babies and follow them as they grow (so-called birth cohort). During early life it is possible to measure many things, such as exposure to allergens, (generally cats, dogs and dust mite) constituents of the diet and antibiotic usage. Questionnaires are used to collect information from parents about symptoms, and as the children get older they can take part in measurements of lung function and allergy testing. Most are willing to give sample for genetic testing. In the UK there are 5 such birth cohorts that have been designed to facilitate the study of risk factors for asthma and allergies. The Manchester Study has more than 1,000 children under active follow up; clinical follow up is complete for age 1, 3, 5, 8 and 11 years. The study from Aberdeen included 1,924 children who were followed up 6 months, 1, 2, 5 and 10 years. The Ashford birth cohort followed 642 children until age 12 years. The Isle of Wight study recruited 1,456 children, completing follow up at ages 1, 2, 4, 10 and 18 years. ALSPAC recruited through antenatal clinics in the former County of Avon, and enrolled 14,062 infants. Follow up is complete to age 16 years. All have collected data using questionnaire and performed measures of lung function and skin tests at intervals throughout early life. The researchers who lead these studies have worked together as a network over the last 7 years - the Study Team for Early Life Asthma Research (STELAR consortium). Over recent years we have adopted identical research methodologies, recognising that although each cohort is unique, there are many aspects in which we can work together, to increase our chances of detecting the main causes of asthma. We now propose to create a major new alliance which will combine our world-leading expertise in birth cohorts (STELAR consortium) with expertise in health informatics research (NW Institute for Bio-Health Informatics) and cutting-edge computational statistical methods (so-called statistical machine learning, with experts at our Industrial partner at Microsoft Research Cambridge). Our alliance includes clinicians, public health and epidemiology researchers, statisticians, informaticians and software engineers. We will construct a web based resource (Asthma e-Lab) in which to securely store all the data collected on the cohorts and recipes for analysing the data so that a larger group of scientists can repeat the work. This will enable consistent recording, description and sharing of data and emerging findings across all partners. We will also complete clinical follow-up of cohort participants where necessary. We will work together to apply newly developed state-of-the-art data analysis techniques to build complex models to describe different types of 'asthma' and investigate risk factors for each asthma subtype. In doing so we hope to understand the basic biological mechanisms that underlie the different forms of asthma, Our findings may underpin new trials of asthma prevention and may help identify targets for the discovery of novel therapies which are matched to specific patients.

Technical Summary

Asthma epidemiology is reaching the limit of what can be achieved through conventional hypothesis-driven research. We hypothesise that asthma is not a single disease, but a condition comprising multiple distinct disease entities (asthma endotypes), each with characteristic pathophysiology and risk factors, and that unbiased novel endotypes of asthma can be identified using complex, rich and expanding datasets from existing UK birth cohort studies by applying a combination of biostatistical and machine learning methods. We propose to form a major Alliance between MRC-funded network of all UK-based birth cohorts designed to study asthma (STELAR consortium), expertise in epidemiologically oriented health informatics research (NW Institute for Bio-Health Informatics) and experts in statistical machine learning (Microsoft Research Cambridge). We will capitalise on the unique collection of well characterised birth cohorts with harmonised clinical outcomes (ALSPAC, SEATON, MAAS, Ashford, Isle of Wight). We will create a secure web-based research environment (Asthma e-Lab) to support consistent recording, description and sharing of data and emerging findings across all partners, thus enabling collaborative epidemiology in near-real-time. The activities of data managers and researchers from the 5 STELAR sites will be made visible to one another, supporting team coordination and peer support and creating a scientific social network to enrich the ongoing modelling and interpretation. We will create and maintain across the consortium annotated dependency graphs of the problem space around the organising principles underlying asthma, and use a machine learning approach interactively over the combined datasets via Asthma e-Lab to discover the unbiased endotypes of asthma. Our findings may underpin new trials of asthma prevention and treatment, personalised for specific endotypes and may help identify novel targets for the discovery of endotypes-specific stratified treatments.

Planned Impact

The proposal facilitates the evaluation of all data from all subjects enrolled in UK-based birth cohorts on asthma (MRC-funded STELAR consortium). Beneficiary engagement will include active interactions within the trans-disciplinary team, with the general public and patient organisations and the clinical community.
We will establish a multi-disciplinary/multi-institutional collaborative partnership to develop a unified modelling approach that can take full advantage of this unparalleled resource. This will allow us to exploit fully the complexity of data, maximise sharing and linkage of data, and to develop data storage, which is in line with the MRC strategic aim 4. We will develop innovative resources for interdisciplinary collaboration - a step beyond sharing resources. Through Asthma e-Lab, we will create conditions to open up the analysis process and networking around the results to a range of investigators across the project, creating a trans-disciplinary informatics environment which will include epidemiologists, public health researchers, statisticians, informaticians and software engineers. We will draw upon our experience of a similar task in the ESRC-funded Obesity e-Lab project which produced Methodbox to offer fine-grained security and professional social networking facilities to enable investigators to find, extract, share, and reuse data extracts from large complex longitudinal data sets. The e-lab system will allow investigators to collaborate on-line over on-going analyses through the browser-based interface with networking facilities. An on-line STELAR community will be nurtured to maximise the transfer of knowledge between different areas of expertise.
We will extend this approach to a doctoral training scheme. Enabling the networking of datasets, expertise and methods for data preparation and analysis can help drive greater value from existing investments.
Engagement with general public will be undertaken through a combination of electronic communication (websites) and articles in newsletters, together with direct interaction with the public through the media (newspapers, radio, TV), public lectures and involvement with schools (e.g. through regular engagement events at the University of Manchester aimed at students between the ages of 12 and 18 year, who visit the University to learn more about the research we do). We will use these events to engage students about the importance of the work we carry out to understand asthma, and how this can potentially help people in the future.
Dissemination to UK and International clinical communities will be led by co-applicants (principal investigators from 5 UK birth cohorts).
Endotypes of asthma will be defined through the fusion of computational thinking and novel mathematical approaches with biomedical and environmental science and genetics. These novel endotypes better reflect the different underlying pathophysiological processes and molecular pathways underpinning different diseases in the asthma syndrome, and may be more relevant for epidemiological, genetic and therapeutic studies. The outputs will enable the UK to maintain world leadership by gaining insight into genetic and environmental interactions underlying asthma and better understanding of how different physiological processes work together (in line with the MRC strategic aim 1). This strategy may lead to the development of methods for prevention that are endotype-specific, and through better understanding of the disease mechanisms, identification of endotype-specific novel therapeutic targets. The findings may represent potentially valuable intellectual property, which we will seek to commercialise in collaboration with companies with interests in diagnostics and/or therapeutics. Participating universities have mechanisms and structures in place for exploring industrial applications both during and at the end of the lifecycle of the project grant.

Publications

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Zuiani C (2020) Update on House Dust Mite Allergen Avoidance Measures for Asthma. in Current allergy and asthma reports

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Wu J (2015) Relationship between cytokine expression patterns and clinical outcomes: two population-based birth cohorts. in Clinical and experimental allergy : journal of the British Society for Allergy and Clinical Immunology

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Simpson A (2015) Patterns of IgE responses to multiple allergen components and clinical symptoms at age 11 years. in The Journal of allergy and clinical immunology

 
Description ARIA guidelines 2016
Geographic Reach Multiple continents/international 
Policy Influence Type Membership of a guideline committee
Impact Improvement in outcomes in allergic rhinitis
 
Description EAACI guidelines on environmental science in allergic diseases and asthma
Geographic Reach Multiple continents/international 
Policy Influence Type Participation in a guidance/advisory committee
 
Description EAACI position paper: A new framework for the interpretation of IgE sensitization tests
Geographic Reach Multiple continents/international 
Policy Influence Type Membership of a guideline committee
Impact A new framework for the interpretation of IgE sensitization tests
 
Description EAACI position paper: Allergy in severe asthma
Geographic Reach Europe 
Policy Influence Type Citation in clinical reviews
 
Description ERS/EAACI Statement on severe exacerbations in asthma
Geographic Reach Europe 
Policy Influence Type Membership of a guideline committee
 
Description European Academy of Allergy and Clinical Immunology (EAACI) Strategic Forum
Geographic Reach Europe 
Policy Influence Type Influenced training of practitioners or researchers
Impact The European Academy of Allergy and Clinical Immunology (EAACI) organized the first European Strategic Forum on Allergic Diseases and Asthma. The main aim was to bring together all relevant stakeholders and decision-makers in the field of allergy, asthma and clinical Immunology around an open debate on contemporary challenges and potential solutions for the next decade. The Strategic Forum was an upscaling of the EAACI White Paper aiming to integrate the Academy's output with the perspective offered by EAACI's partners. This collaboration is fundamental for adapting and integrating allergy and asthma care into the context of real-world problems. The Strategic Forum on Allergic Diseases brought together all partners who have the drive and the influence to make positive change: national and international societies, patients' organizations, regulatory bodies and industry representatives. An open debate with a special focus on drug development and biomedical engineering, big data and information technology and allergic diseases and asthma in the context of environmental health concluded that connecting science with the transformation of care and a joint agreement between all partners on priorities and needs are essential to ensure a better management of allergic diseases and asthma in the advent of precision medicine together with global access to innovative and affordable diagnostics and therapeutics.
URL https://eaaci.org/about-eaaci/advocacy/#latest-statement-on-covid-19
 
Description European Respiratory Society/American Thoracic Society Guideline on Management of Severe Asthma
Geographic Reach Multiple continents/international 
Policy Influence Type Membership of a guideline committee
Impact Improvements in clinical service delivery
URL https://www.ersnet.org/news-and-features/news/latest-ers-ats-severe-asthma-guidelines-now-available/
 
Description MACVIA clinical decision algorithm in adolescents and adults with allergic rhinitis
Geographic Reach Multiple continents/international 
Policy Influence Type Membership of a guideline committee
Impact The selection of pharmacotherapy for patients with allergic rhinitis (AR) depends on several factors, including age, prominent symptoms, symptom severity, control of AR, patient preferences, and cost. Clinical decision support systems (CDSSs) might be beneficial for the assessment of disease control. CDSSs should be based on the best evidence and algorithms to aid patients and health care professionals to jointly determine treatment and its step-up or step-down strategy depending on AR control. Contre les MAladies Chroniques pour un VIeillissement Actif en Languedoc-Roussillon (MACVIA-LR [fighting chronic diseases for active and healthy ageing]), one of the reference sites of the European Innovation Partnership on Active and Healthy Ageing, has initiated an allergy sentinel network (the MACVIA-ARIA Sentinel Network). A CDSS is currently being developed to optimize AR control.
 
Description ERS Maurizio Vignola Gold Medal in Asthma 2015
Amount € 50,000 (EUR)
Organisation European Respiratory Society (ERS) 
Sector Charity/Non Profit
Country United Kingdom
Start 10/2015 
End 09/2018
 
Description Lung function trajectories from birth to school age in African children, and their early life determinants
Amount £925,398 (GBP)
Funding ID MR/S002359/1 
Organisation Medical Research Council (MRC) 
Sector Public
Country United Kingdom
Start 10/2018 
End 09/2021
 
Description MRC & Asthma UK Centre in Allergic Mechanisms of Asthma
Amount £1,999,074 (GBP)
Funding ID AUK-BC-2015-01 
Organisation Asthma + Lung UK 
Sector Charity/Non Profit
Country United Kingdom
Start 08/2016 
End 08/2021
 
Description MRC Strategic Skills Fellowship - Career Development Award in Biostatistics to Dr Danielle Belgrave
Amount £350,000 (GBP)
Organisation Medical Research Council (MRC) 
Sector Public
Country United Kingdom
Start 10/2015 
End 09/2018
 
Description Remote monitoring to predict and prevent asthma attacks in preschool children
Amount £500,000 (GBP)
Funding ID EP/W002280/1 
Organisation Engineering and Physical Sciences Research Council (EPSRC) 
Sector Public
Country United Kingdom
Start 01/2022 
End 12/2025
 
Description UNICORN (Unified Cohorts Research Network): Disaggregating asthma
Amount £238,447,103 (GBP)
Organisation Medical Research Council (MRC) 
Sector Public
Country United Kingdom
Start 03/2020 
End 02/2024
 
Description Wellcome Trust Strategic Award: Pulmonary epithelial barrier and immunological functions at birth and in early life - key determinants of the development of asthma?
Amount £4,640,000 (GBP)
Funding ID WT108818MA 
Organisation Wellcome Trust 
Sector Charity/Non Profit
Country United Kingdom
Start 09/2016 
End 08/2021
 
Title Research Objects and Trustworthy Research Environments (eLabs) 
Description Digital research laboratories with consitent orchestration of algorithms over challenging data sources in healthcare 
Type Of Material Improvements to research infrastructure 
Year Produced 2016 
Provided To Others? Yes  
Impact Continued to feed www.researchobject.org and spawned the Trustworthy Research Environment deployments across www.connectedhealthcities.org and wider NHS 
URL https://www.herc.ac.uk/research_project/elab/
 
Title UNICORN FAIR Data Platform 
Description The ICL-DSI UNICORN Data Repository (now the UNICORN FAIR Data Platform) was designed and developed as a full-stack web application with a server-based (back-end) application exposing an API layer that communicates with a client-based (front-end) application. The back-end is a .NET WebAPI application designed according to the multi-layered onion architecture . The front-end comprises a web application based on an angular framework providing end user accessibility to the application. 
Type Of Material Improvements to research infrastructure 
Year Produced 2022 
Provided To Others? Yes  
Impact Research data management according to the FAIR (Findability, Accessibility, Interoperability, and Reusability) data principles is a data-science-driven data management which aims to enable efficient and error-free data analysis from multiple sources. Since the initiation of the FAIR principle in 2016, FAIR metrics, FAIR infrastructure, and FAIR tools have been developed to aid in making data FAIR ("FAIRification" process). Importantly, data management according to the FAIR principles is becoming expectation of the major funding bodies and publishers. The FAIR approach to data management means that research data is well described, preserved, and enabled for long term use and re-purposing. One of the key advantages of FAIR data is a major increase in reusability beyond the first and original purpose. 
 
Title UNICORN eLab 
Description The UNICORN eLab has been established as part of this project. This involved developing a new FHIR database that is used to manage the STELAR FHIR data. This has allowed the migration of data from a proprietary system to one based on open standards that are strongly supported by an international community. The pre-existing STELAR eLab has been re-architected to offer significant improvements. 
Type Of Material Improvements to research infrastructure 
Year Produced 2022 
Provided To Others? Yes  
Impact Ease of deployment, upgrades and maintenance Extensibility Auditability Confidentiality/ Security Availability 
 
Title D11 ISO11179 compliant MDR web application for metadata management 
Description A sub-module in the UNICORN Data Platform to store and serve the standard dataset templates that different UNICORN datasets are mapped and transformed into. Shifting to the FAIRification of datasets meant we had to manage dataset templates as a whole and not individually managed Common Data Elements, which would need a Metadata Data Registry to store and manager them. Therefore, we implemented this feature into the Metadata Governance Module, to store the standard dataset templates and a user interface that enables UNICORN data manager to associate the various datasets imported into the platform with their respective dataset templates for validation and quality checking. 
Type Of Material Data handling & control 
Year Produced 2022 
Provided To Others? Yes  
Impact Enables UNICORN data manager to associate the various datasets imported into the platform with their respective dataset templates for validation and quality checking. 
 
Title STELAR dataset 
Description In order to carry out the analyses and apply novel modelling approaches to the large, complex dataset from the five UK birth cohorts, the data must be accessible to the analysts, along with consistent information about the study measurements and the assumptions underlying the relations reflected in the annotated dependency graphs representing the problem space of asthma. To achieve this, we created a secure web-based research environment (Asthma e-Lab; www.asthmaelab.org) to support consistent recording, description and sharing of data, computational statistical methods and emerging findings across the cohorts. The Asthma e-Lab serves as a data repository populated with a unified dataset from our well-defined birth cohorts; in addition, it provides the computational resources and a scientific social network to support timely, collaborative research across the consortium. 
Type Of Material Database/Collection of data 
Year Produced 2017 
Provided To Others? Yes  
Impact Emerging findings are shared with all sites via the e-Lab, linked to explanations of analytical methods that might not be familiar to all participants, thereby creating a scientific social network enriching the on-going modelling and interpretation. 
URL https://www.asthmaelab.org/share/page/
 
Title UNICORN dataset governance module 
Description This is a 'metadata' governance module that allows data managers to manage UNICORN's data against the metadata specifications 
Type Of Material Data handling & control 
Year Produced 2022 
Provided To Others? Yes  
Impact Information about clinical assessments, biomarker assays and study are entered into the database using the Data Governance Module user interface. For each assessment the data manager associates a standard dataset template, that is relevant to the data generate from this assessment as decided during the specification stage. 
 
Description CADSET: Chronic Airway DiSeases Early sTratification 
Organisation European Respiratory Society (ERS)
Country United Kingdom 
Sector Charity/Non Profit 
PI Contribution UNICORN is an integral part of the CADSET, a pan-European network committed to promoting clinical research in chronic airway diseases. The overarching working hypothesis of CADSET is that Asthma and Chronic Obstructive Pulmonary Disease (COPD) represent a continuum of heterogeneous chronic airway diseases that share clinical, functional, imaging and/or biological mechanisms (i.e endotypes), that can be identified by appropriately validated biomarkers, which may constitute novel therapeutic targets. Multi-level (clinical, functional, imaging and molecular) profiling of well-characterized patients with chronic airways disease, spanning the spectrum of asthma and COPD, that considers both peak lung function achieved in early adulthood and the rate of lung function decline, may lead to the identification of distinct endotypes (and appropriate biomarkers) which may, in turn, inform a mechanism-based disease classification and a more personalized treatment of patients with chronic airways diseases.
Collaborator Contribution Scientific board. Joint analyses Joint publications
Impact Spirometric phenotypes from early childhood to young adulthood: a Chronic Airway Disease Early Stratification study. Wang G, Hallberg J, Charalampopoulos D, Sanahuja MC, Breyer-Kohansal R, Langhammer A, Granell R, Vonk JM, Mian A, Olvera N, Laustsen LM, Rönmark E, Abellan A, Agusti A, Arshad SH, Bergström A, Boezen HM, Breyer MK, Burghuber O, Bolund AC, Custovic A, Devereux G, Donaldson GC, Duijts L, Esplugues A, Faner R, Ballester F, Garcia-Aymerich J, Gehring U, Haider S, Hartl S, Backman H, Holloway JW, Koppelman GH, Lertxundi A, Holmen TL, Lowe L, Mensink-Bout SM, Murray CS, Roberts G, Hedman L, Schlünssen V, Sigsgaard T, Simpson A, Sunyer J, Torrent M, Turner S, Van den Berge M, Vermeulen RCH, Vikjord SAA, Wedzicha JA, Maitland van der Zee AH, Melén E. ERJ Open Res. 2021 Dec 6;7(4):00457-2021. doi: 10.1183/23120541.00457-2021. eCollection 2021 Oct. PMID: 34881328
Start Year 2021
 
Description The CREW consortium 
Organisation University of Wisconsin-Madison
Country United States 
Sector Academic/University 
PI Contribution We have created conditions that will facilitate data sharing with the consortium of 12 US-based birth cohorts (CREW). NIH has just announced that CREW were awarded funding through the Environmental influences on Child Health Outcomes (ECHO) programme, and CREW will utilise our UK STELAR knowledge management platform (eLab). This will provide a worldwide platform to help solve the global problem of asthma. Our flexible platform will be able to accommodate other cohorts and disease outcomes in future
Collaborator Contribution The National Institutes of Health (NIH) has awarded the University of Wisconsin School of Medicine and Public Health a two-year, $15 million grant to establish and oversee the Children's Respiratory Research and Environment Workgroup (CREW) - a national consortium of 14 institutions that will study how genetics interact with environmental exposures during the prenatal and early childhood years to cause specific subtypes of childhood asthma.
Impact We have created conditions that will facilitate data sharing with the consortium of 12 US-based birth cohorts.
Start Year 2016
 
Description UNICORN (Unified Cohorts Research Network) 
Organisation University of Manchester
Department Manchester Museum
Country United Kingdom 
Sector Academic/University 
PI Contribution PI
Collaborator Contribution MAAS cohort
Impact MRC Programme Grant MR/S025340/1
Start Year 2020
 
Description Wellcome Trust Strategic Award WT Strategic Award WT108818MA 
Organisation Imperial College London
Department National Heart & Lung Institute (NHLI)
Country United Kingdom 
Sector Academic/University 
PI Contribution Population-based birth cohorts, which eliminate recall bias and enable repeated longitudinal long term phenotyping are the preferred method for understanding patterns of different wheezing subtypes and relating them to different genetic readouts. A major challenge is how best to utilise vast amounts of data and correlations between them to identify the latent (hidden) causes of phenotypes. By delineating the latent structure underlying the observed disease variation, we anticipate that pathophysiological processes specific to latent factors or classes will be identified. STELAR latent structures will be applied to the infants recruited in WS1 and then we will determine if there are differences between classes in the mechanistic studies of WS2-4. Conversely, the significance of novel molecules and pathways detected in these workstreams can be determined by mapping them to STELAR latent classes. Rather than data-mining, analyses will be informed by biological and clinical hypotheses. It is essential to integrate data; models/methods that can be tailored in full to the problem space; and human expertise to tailor models/methods and make sense of results in context. Bringing the data, methods and investigators together on-line is the key objective of the MRC-funded Study Team for Early Life Asthma Research (STELAR) consortium.
Collaborator Contribution Genome-wide genotyping data are currently available in only 2 STELAR cohorts, and we will increase the power of the discovery platform by adding genome-wide genotyping data from the others. We will develop cutting-edge analyses to map the latent structure of wheezing illnesses in children, to understand the biological pathways underpinning the phenotypic variation and to test these findings in the experimental workstreams of this programme. In turn we will test the clinical and population-attributable significance of novel biomarkers discovered in workstreams 2-4.
Impact N/A
Start Year 2016
 
Description Wellcome Trust Strategic Award WT Strategic Award WT108818MA 
Organisation Queen Mary University of London
Country United Kingdom 
Sector Academic/University 
PI Contribution Population-based birth cohorts, which eliminate recall bias and enable repeated longitudinal long term phenotyping are the preferred method for understanding patterns of different wheezing subtypes and relating them to different genetic readouts. A major challenge is how best to utilise vast amounts of data and correlations between them to identify the latent (hidden) causes of phenotypes. By delineating the latent structure underlying the observed disease variation, we anticipate that pathophysiological processes specific to latent factors or classes will be identified. STELAR latent structures will be applied to the infants recruited in WS1 and then we will determine if there are differences between classes in the mechanistic studies of WS2-4. Conversely, the significance of novel molecules and pathways detected in these workstreams can be determined by mapping them to STELAR latent classes. Rather than data-mining, analyses will be informed by biological and clinical hypotheses. It is essential to integrate data; models/methods that can be tailored in full to the problem space; and human expertise to tailor models/methods and make sense of results in context. Bringing the data, methods and investigators together on-line is the key objective of the MRC-funded Study Team for Early Life Asthma Research (STELAR) consortium.
Collaborator Contribution Genome-wide genotyping data are currently available in only 2 STELAR cohorts, and we will increase the power of the discovery platform by adding genome-wide genotyping data from the others. We will develop cutting-edge analyses to map the latent structure of wheezing illnesses in children, to understand the biological pathways underpinning the phenotypic variation and to test these findings in the experimental workstreams of this programme. In turn we will test the clinical and population-attributable significance of novel biomarkers discovered in workstreams 2-4.
Impact N/A
Start Year 2016
 
Description Wellcome Trust Strategic Award WT Strategic Award WT108818MA 
Organisation Queen's University Belfast
Country United Kingdom 
Sector Academic/University 
PI Contribution Population-based birth cohorts, which eliminate recall bias and enable repeated longitudinal long term phenotyping are the preferred method for understanding patterns of different wheezing subtypes and relating them to different genetic readouts. A major challenge is how best to utilise vast amounts of data and correlations between them to identify the latent (hidden) causes of phenotypes. By delineating the latent structure underlying the observed disease variation, we anticipate that pathophysiological processes specific to latent factors or classes will be identified. STELAR latent structures will be applied to the infants recruited in WS1 and then we will determine if there are differences between classes in the mechanistic studies of WS2-4. Conversely, the significance of novel molecules and pathways detected in these workstreams can be determined by mapping them to STELAR latent classes. Rather than data-mining, analyses will be informed by biological and clinical hypotheses. It is essential to integrate data; models/methods that can be tailored in full to the problem space; and human expertise to tailor models/methods and make sense of results in context. Bringing the data, methods and investigators together on-line is the key objective of the MRC-funded Study Team for Early Life Asthma Research (STELAR) consortium.
Collaborator Contribution Genome-wide genotyping data are currently available in only 2 STELAR cohorts, and we will increase the power of the discovery platform by adding genome-wide genotyping data from the others. We will develop cutting-edge analyses to map the latent structure of wheezing illnesses in children, to understand the biological pathways underpinning the phenotypic variation and to test these findings in the experimental workstreams of this programme. In turn we will test the clinical and population-attributable significance of novel biomarkers discovered in workstreams 2-4.
Impact N/A
Start Year 2016
 
Description Wellcome Trust Strategic Award WT Strategic Award WT108818MA 
Organisation University of Aberdeen
Country United Kingdom 
Sector Academic/University 
PI Contribution Population-based birth cohorts, which eliminate recall bias and enable repeated longitudinal long term phenotyping are the preferred method for understanding patterns of different wheezing subtypes and relating them to different genetic readouts. A major challenge is how best to utilise vast amounts of data and correlations between them to identify the latent (hidden) causes of phenotypes. By delineating the latent structure underlying the observed disease variation, we anticipate that pathophysiological processes specific to latent factors or classes will be identified. STELAR latent structures will be applied to the infants recruited in WS1 and then we will determine if there are differences between classes in the mechanistic studies of WS2-4. Conversely, the significance of novel molecules and pathways detected in these workstreams can be determined by mapping them to STELAR latent classes. Rather than data-mining, analyses will be informed by biological and clinical hypotheses. It is essential to integrate data; models/methods that can be tailored in full to the problem space; and human expertise to tailor models/methods and make sense of results in context. Bringing the data, methods and investigators together on-line is the key objective of the MRC-funded Study Team for Early Life Asthma Research (STELAR) consortium.
Collaborator Contribution Genome-wide genotyping data are currently available in only 2 STELAR cohorts, and we will increase the power of the discovery platform by adding genome-wide genotyping data from the others. We will develop cutting-edge analyses to map the latent structure of wheezing illnesses in children, to understand the biological pathways underpinning the phenotypic variation and to test these findings in the experimental workstreams of this programme. In turn we will test the clinical and population-attributable significance of novel biomarkers discovered in workstreams 2-4.
Impact N/A
Start Year 2016
 
Description Wellcome Trust Strategic Award WT Strategic Award WT108818MA 
Organisation University of Bristol
Country United Kingdom 
Sector Academic/University 
PI Contribution Population-based birth cohorts, which eliminate recall bias and enable repeated longitudinal long term phenotyping are the preferred method for understanding patterns of different wheezing subtypes and relating them to different genetic readouts. A major challenge is how best to utilise vast amounts of data and correlations between them to identify the latent (hidden) causes of phenotypes. By delineating the latent structure underlying the observed disease variation, we anticipate that pathophysiological processes specific to latent factors or classes will be identified. STELAR latent structures will be applied to the infants recruited in WS1 and then we will determine if there are differences between classes in the mechanistic studies of WS2-4. Conversely, the significance of novel molecules and pathways detected in these workstreams can be determined by mapping them to STELAR latent classes. Rather than data-mining, analyses will be informed by biological and clinical hypotheses. It is essential to integrate data; models/methods that can be tailored in full to the problem space; and human expertise to tailor models/methods and make sense of results in context. Bringing the data, methods and investigators together on-line is the key objective of the MRC-funded Study Team for Early Life Asthma Research (STELAR) consortium.
Collaborator Contribution Genome-wide genotyping data are currently available in only 2 STELAR cohorts, and we will increase the power of the discovery platform by adding genome-wide genotyping data from the others. We will develop cutting-edge analyses to map the latent structure of wheezing illnesses in children, to understand the biological pathways underpinning the phenotypic variation and to test these findings in the experimental workstreams of this programme. In turn we will test the clinical and population-attributable significance of novel biomarkers discovered in workstreams 2-4.
Impact N/A
Start Year 2016
 
Description Wellcome Trust Strategic Award WT Strategic Award WT108818MA 
Organisation University of Edinburgh
Country United Kingdom 
Sector Academic/University 
PI Contribution Population-based birth cohorts, which eliminate recall bias and enable repeated longitudinal long term phenotyping are the preferred method for understanding patterns of different wheezing subtypes and relating them to different genetic readouts. A major challenge is how best to utilise vast amounts of data and correlations between them to identify the latent (hidden) causes of phenotypes. By delineating the latent structure underlying the observed disease variation, we anticipate that pathophysiological processes specific to latent factors or classes will be identified. STELAR latent structures will be applied to the infants recruited in WS1 and then we will determine if there are differences between classes in the mechanistic studies of WS2-4. Conversely, the significance of novel molecules and pathways detected in these workstreams can be determined by mapping them to STELAR latent classes. Rather than data-mining, analyses will be informed by biological and clinical hypotheses. It is essential to integrate data; models/methods that can be tailored in full to the problem space; and human expertise to tailor models/methods and make sense of results in context. Bringing the data, methods and investigators together on-line is the key objective of the MRC-funded Study Team for Early Life Asthma Research (STELAR) consortium.
Collaborator Contribution Genome-wide genotyping data are currently available in only 2 STELAR cohorts, and we will increase the power of the discovery platform by adding genome-wide genotyping data from the others. We will develop cutting-edge analyses to map the latent structure of wheezing illnesses in children, to understand the biological pathways underpinning the phenotypic variation and to test these findings in the experimental workstreams of this programme. In turn we will test the clinical and population-attributable significance of novel biomarkers discovered in workstreams 2-4.
Impact N/A
Start Year 2016
 
Description Wellcome Trust Strategic Award WT Strategic Award WT108818MA 
Organisation University of Lausanne
Country Switzerland 
Sector Academic/University 
PI Contribution Population-based birth cohorts, which eliminate recall bias and enable repeated longitudinal long term phenotyping are the preferred method for understanding patterns of different wheezing subtypes and relating them to different genetic readouts. A major challenge is how best to utilise vast amounts of data and correlations between them to identify the latent (hidden) causes of phenotypes. By delineating the latent structure underlying the observed disease variation, we anticipate that pathophysiological processes specific to latent factors or classes will be identified. STELAR latent structures will be applied to the infants recruited in WS1 and then we will determine if there are differences between classes in the mechanistic studies of WS2-4. Conversely, the significance of novel molecules and pathways detected in these workstreams can be determined by mapping them to STELAR latent classes. Rather than data-mining, analyses will be informed by biological and clinical hypotheses. It is essential to integrate data; models/methods that can be tailored in full to the problem space; and human expertise to tailor models/methods and make sense of results in context. Bringing the data, methods and investigators together on-line is the key objective of the MRC-funded Study Team for Early Life Asthma Research (STELAR) consortium.
Collaborator Contribution Genome-wide genotyping data are currently available in only 2 STELAR cohorts, and we will increase the power of the discovery platform by adding genome-wide genotyping data from the others. We will develop cutting-edge analyses to map the latent structure of wheezing illnesses in children, to understand the biological pathways underpinning the phenotypic variation and to test these findings in the experimental workstreams of this programme. In turn we will test the clinical and population-attributable significance of novel biomarkers discovered in workstreams 2-4.
Impact N/A
Start Year 2016
 
Description Wellcome Trust Strategic Award WT Strategic Award WT108818MA 
Organisation University of Southampton
Country United Kingdom 
Sector Academic/University 
PI Contribution Population-based birth cohorts, which eliminate recall bias and enable repeated longitudinal long term phenotyping are the preferred method for understanding patterns of different wheezing subtypes and relating them to different genetic readouts. A major challenge is how best to utilise vast amounts of data and correlations between them to identify the latent (hidden) causes of phenotypes. By delineating the latent structure underlying the observed disease variation, we anticipate that pathophysiological processes specific to latent factors or classes will be identified. STELAR latent structures will be applied to the infants recruited in WS1 and then we will determine if there are differences between classes in the mechanistic studies of WS2-4. Conversely, the significance of novel molecules and pathways detected in these workstreams can be determined by mapping them to STELAR latent classes. Rather than data-mining, analyses will be informed by biological and clinical hypotheses. It is essential to integrate data; models/methods that can be tailored in full to the problem space; and human expertise to tailor models/methods and make sense of results in context. Bringing the data, methods and investigators together on-line is the key objective of the MRC-funded Study Team for Early Life Asthma Research (STELAR) consortium.
Collaborator Contribution Genome-wide genotyping data are currently available in only 2 STELAR cohorts, and we will increase the power of the discovery platform by adding genome-wide genotyping data from the others. We will develop cutting-edge analyses to map the latent structure of wheezing illnesses in children, to understand the biological pathways underpinning the phenotypic variation and to test these findings in the experimental workstreams of this programme. In turn we will test the clinical and population-attributable significance of novel biomarkers discovered in workstreams 2-4.
Impact N/A
Start Year 2016
 
Title STELAR Asthma eLab 
Description We created a secure web-based research environment (Asthma e-Lab; www.asthmaelab.org) to support consistent recording, description and sharing of data, computational statistical methods and emerging findings across the cohorts. The Asthma e-Lab serves as a data repository populated with a unified dataset from our well-defined birth cohorts; in addition, it provides the computational resources and a scientific social network to support timely, collaborative research across the consortium. The activities of data managers and investigators from the five STELAR sites are visible to one another, supporting team coordination and peer support, whilst creating a record of activity to ensure transparency. Researchers inputting the data can see how the data are being used in the analyses, and receive on-line training via the e-Lab, thereby harmonising the relevant knowledge, skills and practices needed to create a consistent STELAR dataset. Emerging findings are shared with all sites via the e-Lab, linked to explanations of analytical methods that might not be familiar to all participants, thereby creating a scientific social network enriching the on-going modelling and interpretation. 
IP Reference  
Protection Protection not required
Year Protection Granted 2016
Licensed Yes
Impact We have created conditions that will facilitate data sharing with the consortium of 12 US-based birth cohorts (CREW). NIH has just announced that CREW were awarded funding through the Environmental influences on Child Health Outcomes (ECHO) programme, and CREW will utilise our UK STELAR knowledge management platform (eLab). This will provide a worldwide platform to help solve the global problem of asthma. Our flexible platform will be able to accommodate other cohorts and disease outcomes in future.
 
Title ImmunoCAP ISAC (Thermo Fisher Scientific, Uppsala, Sweden) 
Description Clinical implications: Development of different clinical phenotypes of allergic diseases (asthma, eczema, and rhinitis), as well as asthma severity throughout childhood, is predicted by the molecular nature of IgE responses to individual allergen components. 
Type Diagnostic Tool - Non-Imaging
Current Stage Of Development Late clinical evaluation
Year Development Stage Completed 2015
Development Status Under active development/distribution
Impact Our findings suggest that different longitudinal patterns in the development of IgE responses to grass and mite allergen components during childhood are associated with different clinical outcomes and confirm the hypothesis that atopic sensitization can be stratified into subtypes with a diversification of their evolutionary pathways over time. Better resolution of such longitudinal patterns might help us better understand the pathophysiology underlying atopic diseases and might facilitate the development of biomarkers of allergic disease, which can be used for the prediction of future risk. 
 
Title FIHR eLab 
Description The HL7 FHIR enabled eLab has been extended to support the UNICORN project and deployed for production use at: https://unicorn.eLabhub.org 
Type Of Technology Webtool/Application 
Year Produced 2022 
Open Source License? Yes  
Impact The UNICORN eLab has been established as part of this project. This involved developing a new FHIR database that is used to manage the STELAR FHIR data. This has allowed the migration of data from a proprietary system to one based on open standards that are strongly supported by an international community. The pre-existing STELAR eLab has been re-architected to offer significant improvements. Developer Operations tools including Docker and Ansible have been employed to ensure that the deployment, upgrade and maintenance of the UNICORN eLab can be automated. All the eLab components run as Docker Swarm services and are based on images curated by the University of Manchester. Extensibility Services are included to allow additional tools to be added to the system. Two key areas considered were support for single sign-on and an extensible user interface that allows for a seamless experience when switching between tools. The eLab now offers single sign-on through support for OpenID Connect. The graphical interface has been developed to be dashboard based, with dashboard components being customisable to accommodate additional tools. Auditability Information security policies require IT systems to capture information about various events, such as user accounts being created, or users logging in to a system. The eLab includes Elasticsearch, Kibana and Logstash services that are used to capture, process, monitor and visualise system information, including log file content. Confidentiality/ Security The eLab is used to manage anonymised health data and confidentiality must be maintained. The system has been developed to ensure that only specific users are able to access the system from specific computers. Two factor authentication is employed to authenticate users and IP filtering ensures only specific machines can be used. A flexible role-based permissions model has been employed to restrict access to specific datasets. Availability The eLab automates a backup process for all the different system components, such as databases and file stores. Backup files are stored on a replicated remote file system to ensure we can implement disaster recovery in the event of a serious issue. 
 
Title UNICORN integrated data repository (IDR) 
Description The UNICORN FAIR data platform was designed to support two models for data storage: a dataset-based model suitable for storing UNICORN FAIRified datasets, and an observation-based model suitable for storing integrated data based on the Biomedical Observation semantic model. Based on these two models the team at the ICL-DSI implemented a two-schema storage solution that takes away the inefficiencies of moving data between different database implementations, thus removing the need for a separate ETL process. These two storage solutions are: the UNICORN FAIR Dataset Repository to support long term data discovery and re-use of UNICORN datasets and (2) the UNICORN Integrated Data Commons to support querying and exploring cross-study data. The current version includes limited user interface features as the development focused firstly on the development of the two database solutions and the ETL pipelines as laid out in the architecture. A development instance is currently running at ICL-DSI cloud infrastructure. Future releases will include searching capabilities and visual data exploration as more UNICORN data becomes ready to import into the platform. 
Type Of Technology Webtool/Application 
Year Produced 2022 
Open Source License? Yes  
Impact Information about clinical assessments, biomarker assays and study are entered into the database using the Data Governance Module user interface 
 
Description Allergy web chat 
Form Of Engagement Activity Engagement focused website, blog or social media channel
Part Of Official Scheme? No
Geographic Reach National
Primary Audience Patients, carers and/or patient groups
Results and Impact Allergy web chat focussed on:
How do I find out what triggers my seasonal allergies?
What is the difference between a food allergy and a food intolerance?
What should I know about anaphylactic shock?
Can allergies be 'cured'?
Year(s) Of Engagement Activity 2016
 
Description Country Ambassador for the United Kingdom, European Centre for Allergy Research Foundation (ECARF) 
Form Of Engagement Activity Engagement focused website, blog or social media channel
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Public/other audiences
Results and Impact The mission of the non-profit European Centre for Allergy Research Foundation (ECARF) is to ensure that people with allergies receive the best possible guidance in everyday matters and treatment options. Since allergies are a very complex subject, we have made it our mission to provide all those whose lives are affected by allergies - parents, children, educators and caregivers - with the information they need. Our aim is to build specific knowledge, eliminate any doubts, and enable allergy sufferers to take charge and lead active lives.
Year(s) Of Engagement Activity 2015,2016,2017,2018,2019,2020,2021
URL https://www.ecarf.org/en/
 
Description Dairy, yeast, pollen, nuts, dander; Imperial Magazine 
Form Of Engagement Activity A magazine, newsletter or online publication
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Other audiences
Results and Impact It's easy to dismiss allergy as just another trend. But as my work demonstrates, that could not be further from the truth.
Year(s) Of Engagement Activity 2022
URL https://www.imperial.ac.uk/Stories/dairy-yeast-pollen/
 
Description ERS Gold medal for asthma 
Form Of Engagement Activity A press release, press conference or response to a media enquiry/interview
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Media (as a channel to the public)
Results and Impact ERS has launched this new award to recognise excellence in asthma research. The ERS Maurizio Vignola Gold Medal in Asthma grants €50,000 to a researcher who has made an outstanding contribution in the field of asthma and is pursuing an active research project in asthma.
Year(s) Of Engagement Activity 2015
URL http://www.aukcar.ac.uk/professor-custovic-presented-with-ers-maurizio-vignola-gold-medal-in-asthma/
 
Description Inaugural lecture 
Form Of Engagement Activity A talk or presentation
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Other audiences
Results and Impact Inaugural lecture of Professor Adnan Custovic. The talk is now available on the Imperial College London website
Response from the attendees: "Your talk and career story greatly motivated me to join team science research for the next step."
Year(s) Of Engagement Activity 2016
URL https://www.youtube.com/watch?v=WKL7Z99YC0k
 
Description N1 TV interview (CNN affiliate), Sarajevo BiH; 22/02/2023 
Form Of Engagement Activity A broadcast e.g. TV/radio/film/podcast (other than news/press)
Part Of Official Scheme? No
Geographic Reach Regional
Primary Audience Public/other audiences
Results and Impact TV Interview
Year(s) Of Engagement Activity 2023
 
Description Visit to Asthma UK 
Form Of Engagement Activity A talk or presentation
Part Of Official Scheme? No
Geographic Reach National
Primary Audience Supporters
Results and Impact Visit to Asthma UK to publicise the work of the STELAR consortium
Year(s) Of Engagement Activity 2017