4.7 Article

Identifying neuroanatomical signatures of anorexia nervosa: a multivariate machine learning approach

Journal

PSYCHOLOGICAL MEDICINE
Volume 45, Issue 13, Pages 2805-2812

Publisher

CAMBRIDGE UNIV PRESS
DOI: 10.1017/S0033291715000768

Keywords

Anorexia; drive for thinness; machine learning; magnetic resonance imaging

Funding

  1. 'Compagnia di San Paolo' Bank Foundation
  2. 'Bando Neuroscienze' grant [3929IT/PF2008.2242]
  3. IARPsrl generic [20BW320110719008513915033]
  4. Pat Rutherford, Jr. Endowed Chair in Psychiatry

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Background. There are currently no neuroanatomical biomarkers of anorexia nervosa (AN) available to make clinical inferences at an individual subject level. We present results of a multivariate machine learning (ML) approach utilizing structural neuroanatomical scan data to differentiate AN patients from matched healthy controls at an individual subject level. Method. Structural neuroimaging scans were acquired from 15 female patients with AN (age = 20, S.D. = 4 years) and 15 demographically matched female controls (age = 22, S.D. = 3 years). Neuroanatomical volumes were extracted using the FreeSurfer software and input into the Least Absolute Shrinkage and Selection Operator (LASSO) multivariate ML algorithm. LASSO was 'trained' to identify 'novel' individual subjects as either AN patients or healthy controls. Furthermore, the model estimated the probability that an individual subject belonged to the AN group based on an individual scan. Results. The model correctly predicted 25 out of 30 subjects, translating into 83.3% accuracy (sensitivity 86.7%, specificity 80.0%) (p < 0.001; chi(2) test). Six neuroanatomical regions (cerebellum white matter, choroid plexus, putamen, accumbens, the diencephalon and the third ventricle) were found to be relevant in distinguishing individual AN patients from healthy controls. The predicted probabilities showed a linear relationship with drive for thinness clinical scores (r = 0.52, p < 0.005) and with body mass index (BMI) (r = -0.45, p = 0.01). Conclusions. The model achieved a good predictive accuracy and drive for thinness showed a strong neuroanatomical signature. These results indicate that neuroimaging scans coupled with ML techniques have the potential to provide information at an individual subject level that might be relevant to clinical outcomes.

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