Transformer-based normative modelling for anomaly detection of early
schizophrenia
- URL: http://arxiv.org/abs/2212.04984v1
- Date: Thu, 8 Dec 2022 18:22:36 GMT
- Title: Transformer-based normative modelling for anomaly detection of early
schizophrenia
- Authors: Pedro F Da Costa, Jessica Dafflon, Sergio Leonardo Mendes, Jo\~ao
Ricardo Sato, M. Jorge Cardoso, Robert Leech, Emily JH Jones and Walter H.L.
Pinaya
- Abstract summary: We trained our model on 3D MRI scans of neurotypical individuals.
We obtained the likelihood of neurotypical controls and psychiatric patients with early-stage schizophrenia.
- Score: 1.291405125557051
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Despite the impact of psychiatric disorders on clinical health, early-stage
diagnosis remains a challenge. Machine learning studies have shown that
classifiers tend to be overly narrow in the diagnosis prediction task. The
overlap between conditions leads to high heterogeneity among participants that
is not adequately captured by classification models. To address this issue,
normative approaches have surged as an alternative method. By using a
generative model to learn the distribution of healthy brain data patterns, we
can identify the presence of pathologies as deviations or outliers from the
distribution learned by the model. In particular, deep generative models showed
great results as normative models to identify neurological lesions in the
brain. However, unlike most neurological lesions, psychiatric disorders present
subtle changes widespread in several brain regions, making these alterations
challenging to identify. In this work, we evaluate the performance of
transformer-based normative models to detect subtle brain changes expressed in
adolescents and young adults. We trained our model on 3D MRI scans of
neurotypical individuals (N=1,765). Then, we obtained the likelihood of
neurotypical controls and psychiatric patients with early-stage schizophrenia
from an independent dataset (N=93) from the Human Connectome Project. Using the
predicted likelihood of the scans as a proxy for a normative score, we obtained
an AUROC of 0.82 when assessing the difference between controls and individuals
with early-stage schizophrenia. Our approach surpassed recent normative methods
based on brain age and Gaussian Process, showing the promising use of deep
generative models to help in individualised analyses.
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