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  1. Article ; Online: Towards stratified treatment of JIA

    Stephanie J.W. Shoop-Worrall / Saskia Lawson-Tovey / Lucy R. Wedderburn / Kimme L. Hyrich / Nophar Geifman / Aline Kimonyo / Alyssia McNeece / Andrew Dick / Andrew Morris / Annie Yarwood / Athimalaipet Ramanan / Bethany R. Jebson / Chris Wallace / Daniela Dastros-Pitei / Damian Tarasek / Elizabeth Ralph / Emil Carlsson / Emily Robinson / Emma Sumner /
    Fatema Merali / Fatjon Dekaj / Helen Neale / Hussein Al-Mossawi / Jacqui Roberts / Jenna F. Gritzfeld / Joanna Fairlie / John Bowes / John Ioannou / Melissa Kartawinata / Melissa Tordoff / Michael Barnes / Michael W. Beresford / Michael Stadler / Paul Martin / Rami Kallala / Sandra Ng / Samantha Smith / Sarah Clarke / Soumya Raychaudhuri / Stephen Eyre / Sumanta Mukherjee / Teresa Duerr / Thierry Sornasse / Vasiliki Alexiou / Victoria J. Burton / Wei-Yu Lin / Wendy Thomson / Zoe Wanstall

    EBioMedicine, Vol 100, Iss , Pp 104946- (2024)

    machine learning identifies subtypes in response to methotrexate from four UK cohortsResearch in context

    2024  

    Abstract: Summary: Background: Methotrexate (MTX) is the gold-standard first-line disease-modifying anti-rheumatic drug for juvenile idiopathic arthritis (JIA), despite only being either effective or tolerated in half of children and young people (CYP). To ... ...

    Abstract Summary: Background: Methotrexate (MTX) is the gold-standard first-line disease-modifying anti-rheumatic drug for juvenile idiopathic arthritis (JIA), despite only being either effective or tolerated in half of children and young people (CYP). To facilitate stratified treatment of early JIA, novel methods in machine learning were used to i) identify clusters with distinct disease patterns following MTX initiation; ii) predict cluster membership; and iii) compare clusters to existing treatment response measures. Methods: Discovery and verification cohorts included CYP who first initiated MTX before January 2018 in one of four UK multicentre prospective cohorts of JIA within the CLUSTER consortium. JADAS components (active joint count, physician (PGA) and parental (PGE) global assessments, ESR) were recorded at MTX start and over the following year.Clusters of MTX ‘response’ were uncovered using multivariate group-based trajectory modelling separately in discovery and verification cohorts. Clusters were compared descriptively to ACR Pedi 30/90 scores, and multivariate logistic regression models predicted cluster-group assignment. Findings: The discovery cohorts included 657 CYP and verification cohorts 1241 CYP. Six clusters were identified: Fast improvers (11%), Slow Improvers (16%), Improve-Relapse (7%), Persistent Disease (44%), Persistent PGA (8%) and Persistent PGE (13%), the latter two characterised by improvement in all features except one. Factors associated with clusters included ethnicity, ILAR category, age, PGE, and ESR scores at MTX start, with predictive model area under the curve values of 0.65–0.71. Singular ACR Pedi 30/90 scores at 6 and 12 months could not capture speeds of improvement, relapsing courses or diverging disease patterns. Interpretation: Six distinct patterns following initiation of MTX have been identified using methods in artificial intelligence. These clusters demonstrate the limitations in traditional yes/no treatment response assessment (e.g., ACRPedi30) and can form the basis ...
    Keywords Juvenile idiopathic arthritis ; Machine learning ; Treatment outcome ; Epidemiology ; Methotrexate ; Medicine ; R ; Medicine (General) ; R5-920
    Subject code 310
    Language English
    Publishing date 2024-02-01T00:00:00Z
    Publisher Elsevier
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  2. Article ; Online: Mapping DNA interaction landscapes in psoriasis susceptibility loci highlights KLF4 as a target gene in 9q31

    Helen Ray-Jones / Kate Duffus / Amanda McGovern / Paul Martin / Chenfu Shi / Jenny Hankinson / Oliver Gough / Annie Yarwood / Andrew P. Morris / Antony Adamson / Christopher Taylor / James Ding / Vasanthi Priyadarshini Gaddi / Yao Fu / Patrick Gaffney / Gisela Orozco / Richard B. Warren / Steve Eyre

    BMC Biology, Vol 18, Iss 1, Pp 1-

    2020  Volume 20

    Abstract: Abstract Background Genome-wide association studies (GWAS) have uncovered many genetic risk loci for psoriasis, yet many remain uncharacterised in terms of the causal gene and their biological mechanism in disease. This is largely a result of the ... ...

    Abstract Abstract Background Genome-wide association studies (GWAS) have uncovered many genetic risk loci for psoriasis, yet many remain uncharacterised in terms of the causal gene and their biological mechanism in disease. This is largely a result of the findings that over 90% of GWAS variants map outside of protein-coding DNA and instead are enriched in cell type- and stimulation-specific gene regulatory regions. Results Here, we use a disease-focused Capture Hi-C (CHi-C) experiment to link psoriasis-associated variants with their target genes in psoriasis-relevant cell lines (HaCaT keratinocytes and My-La CD8+ T cells). We confirm previously assigned genes, suggest novel candidates and provide evidence for complexity at psoriasis GWAS loci. For one locus, uniquely, we combine further epigenomic evidence to demonstrate how a psoriasis-associated region forms a functional interaction with the distant (> 500 kb) KLF4 gene. This interaction occurs between the gene and active enhancers in HaCaT cells, but not in My-La cells. We go on to investigate this long-distance interaction further with Cas9 fusion protein-mediated chromatin modification (CRISPR activation) coupled with RNA-seq, demonstrating how activation of the psoriasis-associated enhancer upregulates KLF4 and its downstream targets, relevant to skin cells and apoptosis. Conclusions This approach utilises multiple functional genomic techniques to follow up GWAS-associated variants implicating relevant cell types and causal genes in each locus; these are vital next steps for the translation of genetic findings into clinical benefit.
    Keywords Psoriasis ; Chromatin ; GWAS ; CHi-C ; HiChIP ; CRISPR ; Biology (General) ; QH301-705.5
    Subject code 612
    Language English
    Publishing date 2020-05-01T00:00:00Z
    Publisher BMC
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  3. Article ; Online: Identifying Causal Genes at the Multiple Sclerosis Associated Region 6q23 Using Capture Hi-C.

    Paul Martin / Amanda McGovern / Jonathan Massey / Stefan Schoenfelder / Kate Duffus / Annie Yarwood / Anne Barton / Jane Worthington / Peter Fraser / Stephen Eyre / Gisela Orozco

    PLoS ONE, Vol 11, Iss 11, p e

    2016  Volume 0166923

    Abstract: Background The chromosomal region 6q23 has been found to be associated with multiple sclerosis (MS) predisposition through genome wide association studies (GWAS). There are four independent single nucleotide polymorphisms (SNPs) associated with MS in ... ...

    Abstract Background The chromosomal region 6q23 has been found to be associated with multiple sclerosis (MS) predisposition through genome wide association studies (GWAS). There are four independent single nucleotide polymorphisms (SNPs) associated with MS in this region, which spans around 2.5 Mb. Most GWAS variants associated with complex traits, including these four MS associated SNPs, are non-coding and their function is currently unknown. However, GWAS variants have been found to be enriched in enhancers and there is evidence that they may be involved in transcriptional regulation of their distant target genes through long range chromatin looping. Aim The aim of this work is to identify causal disease genes in the 6q23 locus by studying long range chromatin interactions, using the recently developed Capture Hi-C method in human T and B-cell lines. Interactions involving four independent associations unique to MS, tagged by rs11154801, rs17066096, rs7769192 and rs67297943 were analysed using Capture Hi-C Analysis of Genomic Organisation (CHiCAGO). Results We found that the pattern of chromatin looping interactions in the MS 6q23 associated region is complex. Interactions cluster in two regions, the first involving the rs11154801 region and a second containing the rs17066096, rs7769192 and rs67297943 SNPs. Firstly, SNPs located within the AHI1 gene, tagged by rs11154801, are correlated with expression of AHI1 and interact with its promoter. These SNPs also interact with other potential candidate genes such as SGK1 and BCLAF1. Secondly, the rs17066096, rs7769192 and rs67297943 SNPs interact with each other and with immune-related genes such as IL20RA, IL22RA2, IFNGR1 and TNFAIP3. Finally, the above-mentioned regions interact with each other and therefore, may co-regulate these target genes. Conclusion These results suggest that the four 6q23 variants, independently associated with MS, are involved in the regulation of several genes, including immune genes. These findings could help understand mechanisms of disease and ...
    Keywords Medicine ; R ; Science ; Q
    Subject code 616
    Language English
    Publishing date 2016-01-01T00:00:00Z
    Publisher Public Library of Science (PLoS)
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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