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The meaning of significant mean group differences for biomarker discovery

Authors :
Jennifer Cooke
Danilo Bzdok
Declan G. Murphy
Bethany Oakley
Hannah Hayward
Emily J.H. Jones
Roberto Toro
Antonia San José Cáceres
Guillaume Dumas
Thomas Bourgeron
Tony Charman
Christopher H. Chatham
Christian F. Beckmann
Beatriz López
Jan K. Buitelaar
Daisy Crawley
Ben Carter
Jumana Ahmad
Eva Loth
Institute of Psychiatry, Psychology & Neuroscience, King's College London
King‘s College London
University of Greenwich
F. Hoffmann-La Roche [Basel]
University of Portsmouth
Montreal Neurological Institute and Hospital
McGill University = Université McGill [Montréal, Canada]
Centre for Brain and Cognitive Development [Birkbeck College]
Birkbeck College [University of London]
Donders Institute for Brain, Cognition and Behaviour
Radboud University [Nijmegen]
Génétique humaine et fonctions cognitives - Human Genetics and Cognitive Functions (GHFC (UMR_3571 / U-Pasteur_1))
Institut Pasteur [Paris] (IP)-Centre National de la Recherche Scientifique (CNRS)-Université Paris Cité (UPCité)
CHU Sainte Justine [Montréal]
Quebec Artificial Intelligence Institute (Mila)
EL, JA, BL, BC, DC, BO, HH, JC, ASJC, EJ, TC, CB, TB, RT, JB, DM, and GD have received funding from the Innovative Medicines Initiative 2 Joint Undertaking under grant agreement No 777394 for the project AIMS-2-TRIALS. This Joint Undertaking is a joint support from the European Union's Horizon 2020 research and innovation programme, EFPIA, AUTISM SPEAKS, Autistica, and SFARI.
European Project: 777394,H2020-JTI-IMI2-2016-10-two-stage,AIMS-2-TRIALS(2018)
Source :
PLoS Computational Biology, Plos Computational Biology, 17, PLoS Computational Biology, 2021, 17 (11), pp.e1009477. ⟨10.1371/journal.pcbi.1009477⟩, PLOS Computational Biology, PLoS Computational Biology, Vol 17, Iss 11, p e1009477 (2021), Plos Computational Biology, 17, 11, PLoS Computational Biology, Vol 17, Iss 11 (2021)
Publication Year :
2021

Abstract

Over the past decade, biomarker discovery has become a key goal in psychiatry to aid in the more reliable diagnosis and prognosis of heterogeneous psychiatric conditions and the development of tailored therapies. Nevertheless, the prevailing statistical approach is still the mean group comparison between “cases” and “controls,” which tends to ignore within-group variability. In this educational article, we used empirical data simulations to investigate how effect size, sample size, and the shape of distributions impact the interpretation of mean group differences for biomarker discovery. We then applied these statistical criteria to evaluate biomarker discovery in one area of psychiatric research—autism research. Across the most influential areas of autism research, effect size estimates ranged from small (d = 0.21, anatomical structure) to medium (d = 0.36 electrophysiology, d = 0.5, eye-tracking) to large (d = 1.1 theory of mind). We show that in normal distributions, this translates to approximately 45% to 63% of cases performing within 1 standard deviation (SD) of the typical range, i.e., they do not have a deficit/atypicality in a statistical sense. For a measure to have diagnostic utility as defined by 80% sensitivity and 80% specificity, Cohen’s d of 1.66 is required, with still 40% of cases falling within 1 SD. However, in both normal and nonnormal distributions, 1 (skewness) or 2 (platykurtic, bimodal) biologically plausible subgroups may exist despite small or even nonsignificant mean group differences. This conclusion drastically contrasts the way mean group differences are frequently reported. Over 95% of studies omitted the “on average” when summarising their findings in their abstracts (“autistic people have deficits in X”), which can be misleading as it implies that the group-level difference applies to all individuals in that group. We outline practical approaches and steps for researchers to explore mean group comparisons for the discovery of stratification biomarkers.<br />Author summary Currently, a striking paradox is often found in neuropsychiatric research. On the one hand, most clinicians and researchers accept that many neuropsychiatric conditions involve tremendous individual variability. On the other hand, the prevailing statistical approach is still the mean group comparison between “cases” and “controls.” Statistically significant mean group differences tell us that a given characteristic in brain, behaviour, or genes is on average different between the 2 groups. Yet, they do not delineate variability within groups. Moreover, using autism research as an example, we show that in up to 95% of abstracts, when reporting or interpreting findings, researchers omit the “on average.” This can be misleading because it evokes the impression as though the group-level difference would generalise to all individuals with that condition. Here, we used simulations to show that the latter statement is only true at very large effect sizes. We demonstrate that across different areas of autism research, mean group differences with small to large effects indicate that approximately 45% to 68% [cases] do not have an atypicality on cognitive tests or brain structure. However, we also show that across normal and nonnormal distributions, subgroups may exist despite small or nonsignificant overall effects. We propose practical approaches and steps for researchers to use mean group comparisons as the starting point for the discovery of clinically relevant subgroups.

Details

ISSN :
15537358 and 1553734X
Volume :
17
Issue :
11
Database :
OpenAIRE
Journal :
PLoS computational biology
Accession number :
edsair.doi.dedup.....117b830247ef7adc9c89a1f8f365a610
Full Text :
https://doi.org/10.1371/journal.pcbi.1009477⟩