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Study explores machine learning for classifying functional neurological disorder

brain mri
Credit: Pixabay/CC0 Public Domain

In a study published in the Journal of Neurology, Neurosurgery & Psychiatry, David L. Perez, MD, MMSc, Founding Director of the Functional Neurological Disorder Unit at Massachusetts General Hospital and an associate professor of Neurology and Psychiatry at Harvard Medical School, and others, investigated whether structural brain MRI has the potential to be a clinically useful tool for diagnosing functional neurological disorder (FND).

Individuals with FND, a common, costly and potentially disabling condition at the intersection of neurology and psychiatry, can experience such as abnormal movements, limb weakness and/or convulsions.

The research team trained a algorithm to learn what the brains of patients with FND look like compared to healthy subjects or participants with (e.g., mood and anxiety conditions) that do not have FND, and then tested whether the algorithm could use this information to predict whether someone had FND.

The findings point out the importance of both and function in the biological basis of FND.

Furthermore, the algorithm showed proof-of-concept potential in distinguishing individuals with FND, which is a first step in investigating the possibility to use structural brain MRI to assist in the diagnosis of FND.

They sought to investigate whether supervised machine learning, trained on structural brain MRI features, could be used to predict whether individuals had a diagnosis of functional neurological disorder (FND).

This question was motivated by a lack of clinical translatability from past studies investigating gray matter differences in FND, because they have for the most part relied on univariate, group-level analyses, and have reported heterogeneous findings.

In contrast, this approach allowed for detection of nuanced differences across a multivariate set of structural brain MRI features, as well as prediction of FND at an individual level.

They successfully classified participants with mixed FND against healthy control participants at rates significantly above-chance, and classification performance became even more robust when focusing on a functional motor disorder subtype.

They also achieved statistically significant above-chance accuracy when classifying mixed FND participants against a sample of psychiatric control participants, a finding that reflects one of the first efforts in the field to contextualize results using psychiatric controls.

These findings emphasize the need to consider brain structure alongside functional neurocircuitry in the pathophysiology of FND and establish proof-of-concept for structural brain MRI as a potential adjunctive diagnostic tool in FND.

Next steps involve out-of-sample replications and multi-site classification efforts to establish the generalizability of these findings, as well as exploring the possibility of data-driven subgroupings in larger-scale data.

More information: Christiana Westlin et al, Machine learning classification of functional neurological disorder using structural brain MRI features, Journal of Neurology, Neurosurgery & Psychiatry (2024). DOI: 10.1136/jnnp-2024-333499

Citation: Study explores machine learning for classifying functional neurological disorder (2024, July 24) retrieved 24 July 2024 from https://medicalxpress.com/news/2024-07-explores-machine-functional-neurological-disorder.html
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