4.5 Article

Interictal Heart Rate Variability as a Biomarker for Comorbid Depressive Disorders among People with Epilepsy

Journal

BRAIN SCIENCES
Volume 12, Issue 5, Pages -

Publisher

MDPI
DOI: 10.3390/brainsci12050671

Keywords

epilepsy; support vector machine; depressive disorders; heart rate variability; autonomic disorders

Categories

Funding

  1. National Natural Science Foundation of China [31771184, 32071010]

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Depressive disorders are common among people with epilepsy, and a linear support vector machine (SVM) model trained with heart rate variability (HRV) data can be used for unbiased automatic classification of epilepsy comorbid depressive disorder cases. HRV measurements during non-rapid eye movement (NREM) sleep are particularly important for correct classification. This study provides an objective measurement to assess the depressive status in people with epilepsy.
Depressive disorders are common among people with epilepsy (PwE). We here aimed to report an unbiased automatic classification of epilepsy comorbid depressive disorder cases via training a linear support vector machine (SVM) model using the interictal heart rate variability (HRV) data. One hundred and eighty-six subjects participated in this study. Among all participants, we recorded demographic information, epilepsy states and neuropsychiatric features. For each subject, we performed simultaneous electrocardiography and electroencephalography recordings both in wakefulness and non-rapid eye movement (NREM) sleep stage. Using these data, we systematically explored the full parameter space in order to determine the most effective combinations of data to classify the depression status in PwE. PwE with depressive disorders exhibited significant alterations in HRV parameters, including decreased time domain and nonlinear domain values both in wakefulness and NREM sleep stage compared with without depressive disorders and non-epilepsy controls. Interestingly, PwE without depressive disorder showed the same level of HRV values as the non-epilepsy control subjects. The SVM classification model of PwE depression status achieved a higher classification accuracy with the combination of HRV parameters in wakefulness and NREM sleep stage. Furthermore, the receiver operating characteristic (ROC) curve of the SVM classification model showed a satisfying area under the ROC curve (AUC: 0.758). Intriguingly, we found that the HRV measurements during NREM sleep are particularly important for correct classification, suggesting a mechanistic link between the dysregulation of heart rate during sleep and the development of depressive disorders in PwE. Our classification model may provide an objective measurement to assess the depressive status in PwE.

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