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Biological heterogeneity in idiopathic pulmonary arterial hypertension identified through unsupervised transcriptomic profiling of whole blood

Author

Listed:
  • Sokratis Kariotis

    (University of Sheffield
    University of Sheffield)

  • Emmanuel Jammeh

    (University of Sheffield
    University of Sheffield)

  • Emilia M. Swietlik

    (University of Cambridge
    Royal Papworth Hospital)

  • Josephine A. Pickworth

    (University of Sheffield)

  • Christopher J. Rhodes

    (Imperial College London)

  • Pablo Otero

    (Imperial College London)

  • John Wharton

    (Imperial College London)

  • James Iremonger

    (University of Sheffield)

  • Mark J. Dunning

    (University of Sheffield)

  • Divya Pandya

    (University of Cambridge)

  • Thomas S. Mascarenhas

    (University of Sheffield)

  • Niamh Errington

    (University of Sheffield
    University of Sheffield)

  • A. A. Roger Thompson

    (University of Sheffield
    Royal Hallamshire Hospital)

  • Casey E. Romanoski

    (University of Arizona)

  • Franz Rischard

    (University of Arizona)

  • Joe G. N. Garcia

    (University of Arizona)

  • Jason X.-J. Yuan

    (University of California, San Diego)

  • Tae-Hwi Schwantes An

    (Indiana University)

  • Ankit A. Desai

    (Indiana University)

  • Gerry Coghlan

    (University College London)

  • Jim Lordan

    (Newcastle University)

  • Paul A. Corris

    (Newcastle University)

  • Luke S. Howard

    (Imperial College London)

  • Robin Condliffe

    (University of Sheffield
    Royal Hallamshire Hospital)

  • David G. Kiely

    (University of Sheffield
    Royal Hallamshire Hospital
    Insigneo institute for In Silico Medicine)

  • Colin Church

    (University of Glasgow)

  • Joanna Pepke-Zaba

    (Royal Papworth Hospital)

  • Mark Toshner

    (University of Cambridge
    Royal Papworth Hospital)

  • Stephen Wort

    (Imperial College London)

  • Stefan Gräf

    (University of Cambridge)

  • Nicholas W. Morrell

    (University of Cambridge)

  • Martin R. Wilkins

    (Imperial College London)

  • Allan Lawrie

    (University of Sheffield
    Insigneo institute for In Silico Medicine)

  • Dennis Wang

    (University of Sheffield
    University of Sheffield
    Singapore Institute for Clinical Sciences)

Abstract

Idiopathic pulmonary arterial hypertension (IPAH) is a rare but fatal disease diagnosed by right heart catheterisation and the exclusion of other forms of pulmonary arterial hypertension, producing a heterogeneous population with varied treatment response. Here we show unsupervised machine learning identification of three major patient subgroups that account for 92% of the cohort, each with unique whole blood transcriptomic and clinical feature signatures. These subgroups are associated with poor, moderate, and good prognosis. The poor prognosis subgroup is associated with upregulation of the ALAS2 and downregulation of several immunoglobulin genes, while the good prognosis subgroup is defined by upregulation of the bone morphogenetic protein signalling regulator NOG, and the C/C variant of HLA-DPA1/DPB1 (independently associated with survival). These findings independently validated provide evidence for the existence of 3 major subgroups (endophenotypes) within the IPAH classification, could improve risk stratification and provide molecular insights into the pathogenesis of IPAH.

Suggested Citation

  • Sokratis Kariotis & Emmanuel Jammeh & Emilia M. Swietlik & Josephine A. Pickworth & Christopher J. Rhodes & Pablo Otero & John Wharton & James Iremonger & Mark J. Dunning & Divya Pandya & Thomas S. Ma, 2021. "Biological heterogeneity in idiopathic pulmonary arterial hypertension identified through unsupervised transcriptomic profiling of whole blood," Nature Communications, Nature, vol. 12(1), pages 1-14, December.
  • Handle: RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-021-27326-0
    DOI: 10.1038/s41467-021-27326-0
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    References listed on IDEAS

    as
    1. van Buuren, Stef & Groothuis-Oudshoorn, Karin, 2011. "mice: Multivariate Imputation by Chained Equations in R," Journal of Statistical Software, Foundation for Open Access Statistics, vol. 45(i03).
    2. Liam A. Hurst & Benjamin J. Dunmore & Lu Long & Alexi Crosby & Rafia Al-Lamki & John Deighton & Mark Southwood & Xudong Yang & Marko Z. Nikolic & Blanca Herrera & Gareth J. Inman & John R. Bradley & A, 2017. "TNFα drives pulmonary arterial hypertension by suppressing the BMP type-II receptor and altering NOTCH signalling," Nature Communications, Nature, vol. 8(1), pages 1-14, April.
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