4.7 Article

Evidence for distinct neuro-metabolic phenotypes in humans

期刊

NEUROIMAGE
卷 249, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2022.118902

关键词

Individual differences; Neurochemical; MR spectroscopy; MRS; ABfit; Spant

资金

  1. H2020 European Research Council Starting Grant [804360-INSENSE]

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Advances in magnetic resonance imaging have revealed the relationship between individual differences in the structure and function of the human brain and health and cognition. However, the relationship between individual differences and neuro-metabolite levels remains largely unexplored. This study measured metabolite levels and achieved high classification accuracy using machine learning and metabolomic methodology. These findings suggest the existence of neuro-metabolic phenotypes that can be measured using widely available technology.
Advances in magnetic resonance imaging have shown how individual differences in the structure and function of the human brain relate to health and cognition. The relationship between individual differences and the levels of neuro-metabolites, however, remains largely unexplored - despite the potential for the discovery of novel behavioural and disease phenotypes. In this study, we measured 14 metabolite levels, normalised as ratios to total-creatine, with 1 H magnetic resonance spectroscopy (MRS) acquired from the bilateral anterior cingulate cortices of six healthy participants, repeatedly over a period of four months. ANOVA tests revealed statistically significant differences of 3 metabolites and 3 commonly used combinations (total-choline, glutamate + glutamine and total-N-acetylaspartate) between the participants, with scyllo-inositol (F = 85, p = 6e-26) and total-choline (F = 39, p = 1e-17) having the greatest discriminatory power. This was not attributable to structural differences. When predicting individuals from the repeated MRS measurements, a leave-one-out classification accuracy of 88% was achieved using a support vector machine based on scyllo-inositol and total-choline levels. Accuracy increased to 98% with the addition of total-N-acetylaspartate and myo-inositol - demonstrating the efficacy of combining MRS with machine learning and metabolomic methodology. These results provide evidence for the existence of neuro-metabolic phenotypes, which may be non-invasively measured using widely available 3 Tesla MRS. Establishing these phenotypes in a larger cohort and investigating their connection to brain health and function presents an important area for future study.

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