open access publication

Article, 2024

Proteomic Biomarkers for the Prediction of Transition to Psychosis in Individuals at Clinical High Risk: A Multi-cohort Model Development Study

Schizophrenia Bulletin, ISSN 0586-7614, 1745-1701, Volume 50, 3, Pages 579-588, 10.1093/schbul/sbad184

Contributors

Byrne J.F. 0000-0002-7046-0630 (Corresponding author) [1] Healy C. 0000-0001-7974-1861 [1] Focking M. 0000-0002-6299-2952 [1] Susai S.R. [1] Mongan D. 0000-0001-7931-9636 [1] [2] Wynne K. [3] Kodosaki E. [4] Heurich M. 0000-0003-0105-2702 [4] de Haan L. 0000-0002-3820-7926 [5] Hickie I.B. 0000-0001-8832-9895 [6] Smesny S. [7] Thompson A. 0000-0002-0567-6013 [8] [9] Markulev C. [8] [9] Young A.R. [8] [10] [11] Schafer M.R. [8] [9] Riecher-Rossler A. 0000-0001-6361-8789 [12] Mossaheb N. 0000-0002-7339-7219 [13] Berger G.E. 0000-0003-2030-141X [14] Schlogelhofer M. [15] Nordentoft M. 0000-0003-4895-7023 [16] [17] Chen E.Y.H. [18] [19] Verma S. 0000-0003-1098-0842 [20] [21] Nieman D.H. [5] Woods S.W. 0000-0002-3103-5228 [22] Cornblatt B.A. [23] Stone W.S. 0000-0003-2932-7288 [24] Mathalon D.H. 0000-0001-6090-4974 [25] [26] Bearden C.E. 0000-0002-8516-923X [27] Cadenhead K.S. 0000-0002-5952-4605 [28] Addington J. 0000-0002-8298-0756 [29] Walker E.F. 0000-0002-9798-8101 [30] [31] Cannon T.D. [22] [32] Cannon M. [1] [33] McGorry P. 0000-0002-3789-6168 [8] [9] Amminger G.P. 0000-0001-8969-4595 [8] [9] Cagney G. 0000-0001-7189-9496 [3] Nelson B. 0000-0002-6263-2332 [8] [9] Jeffries C. [34] Perkins D.O. [35] Cotter D. [1] [33]

Affiliations

  1. [1] Royal College of Surgeons in Ireland
  2. [NORA names: Ireland; Europe, EU; OECD];
  3. [2] Queen's University Belfast
  4. [NORA names: United Kingdom; Europe, Non-EU; OECD];
  5. [3] University College Dublin
  6. [NORA names: Ireland; Europe, EU; OECD];
  7. [4] Cardiff University
  8. [NORA names: United Kingdom; Europe, Non-EU; OECD];
  9. [5] Academic Medical Center
  10. [NORA names: Netherlands; Europe, EU; OECD];

Abstract

Psychosis risk prediction is one of the leading challenges in psychiatry. Previous investigations have suggested that plasma proteomic data may be useful in accurately predicting transition to psychosis in individuals at clinical high risk (CHR). We hypothesized that an a priori-specified proteomic prediction model would have strong predictive accuracy for psychosis risk and aimed to replicate longitudinal associations between plasma proteins and transition to psychosis. This study used plasma samples from participants in 3 CHR cohorts: the North American Prodrome Longitudinal Studies 2 and 3, and the NEURAPRO randomized control trial (total n = 754). Plasma proteomic data were quantified using mass spectrometry. The primary outcome was transition to psychosis over the study follow-up period. Logistic regression models were internally validated, and optimism-corrected performance metrics derived with a bootstrap procedure. In the overall sample of CHR participants (age: 18.5, SD: 3.9; 51.9% male), 20.4% (n = 154) developed psychosis within 4.4 years. The a priori-specified model showed poor risk-prediction accuracy for the development of psychosis (C-statistic: 0.51 [95% CI: 0.50, 0.59], calibration slope: 0.45). At a group level, Complement C8B, C4B, C5, and leucine-rich α-2 glycoprotein 1 (LRG1) were associated with transition to psychosis but did not surpass correction for multiple comparisons. This study did not confirm the findings from a previous proteomic prediction model of transition from CHR to psychosis. Certain complement proteins may be weakly associated with transition at a group level. Previous findings, derived from small samples, should be interpreted with caution.

Keywords

c oagulation, complement, high risk, immune, model, prediction, proteome, psychosis

Funders

  • National Health and Medical Research Council
  • Comprehensive Molecular Analytical Platform
  • Wellcome Flagship Innovations
  • European Regional Development Fund
  • Colonial Foundation
  • Stanley Medical Research Institute
  • Science Foundation Ireland
  • National Institute of Mental Health

Data Provider: Elsevier