4.5 Article

Interoceptive and metacognitive facets of fatigue in multiple sclerosis

Journal

EUROPEAN JOURNAL OF NEUROSCIENCE
Volume 58, Issue 2, Pages 2603-2622

Publisher

WILEY
DOI: 10.1111/ejn.16048

Keywords

allostatic self-efficacy; computational psychiatry; confidence; fatigue; interoception; metacognition; multiple sclerosis; perceptual decision-making

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Numerous disorders are characterized by fatigue, particularly in multiple sclerosis (MS), where fatigue significantly impacts quality of life. However, empirical data on interoception and metacognition in relation to fatigue in MS are scarce. This study examined these factors in a sample of 71 individuals with MS and found associations between interoceptive awareness and fatigue, as well as autonomic function and metacognition. Additionally, machine learning showed that fatigue levels could be predicted from questionnaire-based measures of interoception and sleep quality.
Numerous disorders are characterised by fatigue as a highly disabling symptom. Fatigue plays a particularly important clinical role in multiple sclerosis (MS) where it exerts a profound impact on quality of life. Recent concepts of fatigue grounded in computational theories of brain-body interactions emphasise the role of interoception and metacognition in the pathogenesis of fatigue. So far, however, for MS, empirical data on interoception and metacognition are scarce. This study examined interoception and (exteroceptive) metacognition in a sample of 71 persons with a diagnosis of MS. Interoception was assessed by prespecified subscales of a standard questionnaire (Multidimensional Assessment of Interoceptive Awareness [MAIA]), while metacognition was investigated with computational models of choice and confidence data from a visual discrimination paradigm. Additionally, autonomic function was examined by several physiological measurements. Several hypotheses were tested based on a preregistered analysis plan. In brief, we found the predicted association of interoceptive awareness with fatigue (but not with exteroceptive metacognition) and an association of autonomic function with exteroceptive metacognition (but not with fatigue). Furthermore, machine learning (elastic net regression) showed that individual fatigue scores could be predicted out-of-sample from our measurements, with questionnaire-based measures of interoceptive awareness and sleep quality as key predictors. Our results support theoretical concepts of interoception as an important factor for fatigue and demonstrate the general feasibility of predicting individual levels of fatigue from simple questionnaire-based measures of interoception and sleep.

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