A Machine Learning Study of Anxiety-related Symptoms and Error-related Brain Activity.
Anna GrabowskaFilip SondejMagdalena SendereckaPublished in: Journal of cognitive neuroscience (2024)
Changes in error processing are observable in a range of anxiety-related disorders. Numerous studies, however, have reported contradictory and nonreplicating findings, thus the exact mapping of brain response to errors (i.e., error-related negativity [ERN]; error-related positivity [Pe]) onto specific anxiety symptoms remains unclear. In this study, we collected 16 self-reported scores of anxiety dimensions and obtained spatial features of EEG recordings from 171 individuals. We then used machine learning to (1) identify symptoms that are central for elevated ERN/Pe and (2) estimate the generalizability of traditional statistical approaches. ERN was associated with rumination, threat overestimation, and inhibitory intolerance of uncertainty. Pe was associated with rumination, prospective intolerance of uncertainty, and behavioral inhibition. Our findings emphasize that not only the amplitude of ERN but also other sources of brain signal variance encode information relevant to individual differences in error processing. The results of the generalizability check reveal the need for a change in result-validation methods to move toward robust findings that reflect stable individual differences and clinically useful biomarkers. Our study benefits from the use of machine learning to improve the generalizability of results.
Keyphrases
- machine learning
- sleep quality
- resting state
- artificial intelligence
- emergency department
- functional connectivity
- healthcare
- white matter
- gene expression
- depressive symptoms
- multiple sclerosis
- big data
- dna methylation
- high resolution
- patient safety
- mass spectrometry
- social media
- deep learning
- genome wide
- blood brain barrier
- adverse drug