Migraines are a public health problem that impose severe socioeconomic burdens and causes related disabilities. Among the non-pharmacological therapeutic approaches, behavioral treatments such as biofeedback have proven effective for both adults and children. Oxidative stress is undoubtedly involved in the pathophysiology of migraines. Evidence shows a complex relationship between nitric oxide (NO) and superoxide anions, and their modification could lead to an effective treatment. Conventional analyses may fail in highlighting the complex, nonlinear relationship among factors and outcomes. The aim of the present study was to verify if an artificial neural network (ANN) named ARIANNA could verify if the serum levels of the decomposition products of NO-nitrite and nitrate (NOx)-the superoxide dismutase (SOD) serum levels, and the Migraine Disability Assessment Scores (MIDAS) could constitute prognostic variables predicting biofeedback's efficacy in migraine treatment. Twenty women affected by chronic migraine were enrolled and underwent an EMG-biofeedback treatment. The results show an accuracy for the ANN of 75% in predicting the post-treatment MIDAS score, highlighting a statistically significant correlation (R = -0.675, p = 0.011) between NOx (nitrite and nitrate) and MIDAS only when the peroxide levels in the serum were within a specific range. In conclusion, the ANN was proven to be an innovative methodology for interpreting the complex biological phenomena and biofeedback treatment in migraines.

Identification of determinants biofeedback treatment’s efficacy in treating migraine and oxidative stress by ARIANNA (artificial intelligent assistant for neural network analysis) / Ciancarelli, Irene; Morone, Giovanni; Giuliana Tozzi Ciancarelli, Maria; Paolucci, Stefano; Tonin, Paolo; Cerasa, Antonio; Iosa, Marco. - In: HEALTHCARE. - ISSN 2227-9032. - (2022). [10.3390/healthcare10050941]

Identification of determinants biofeedback treatment’s efficacy in treating migraine and oxidative stress by ARIANNA (artificial intelligent assistant for neural network analysis)

Marco Iosa
Ultimo
2022

Abstract

Migraines are a public health problem that impose severe socioeconomic burdens and causes related disabilities. Among the non-pharmacological therapeutic approaches, behavioral treatments such as biofeedback have proven effective for both adults and children. Oxidative stress is undoubtedly involved in the pathophysiology of migraines. Evidence shows a complex relationship between nitric oxide (NO) and superoxide anions, and their modification could lead to an effective treatment. Conventional analyses may fail in highlighting the complex, nonlinear relationship among factors and outcomes. The aim of the present study was to verify if an artificial neural network (ANN) named ARIANNA could verify if the serum levels of the decomposition products of NO-nitrite and nitrate (NOx)-the superoxide dismutase (SOD) serum levels, and the Migraine Disability Assessment Scores (MIDAS) could constitute prognostic variables predicting biofeedback's efficacy in migraine treatment. Twenty women affected by chronic migraine were enrolled and underwent an EMG-biofeedback treatment. The results show an accuracy for the ANN of 75% in predicting the post-treatment MIDAS score, highlighting a statistically significant correlation (R = -0.675, p = 0.011) between NOx (nitrite and nitrate) and MIDAS only when the peroxide levels in the serum were within a specific range. In conclusion, the ANN was proven to be an innovative methodology for interpreting the complex biological phenomena and biofeedback treatment in migraines.
2022
artificial intelligence; artificial neural network; biofeedback; headache; migraine; nitric oxide; oxidative stress; superoxide dismutase
01 Pubblicazione su rivista::01a Articolo in rivista
Identification of determinants biofeedback treatment’s efficacy in treating migraine and oxidative stress by ARIANNA (artificial intelligent assistant for neural network analysis) / Ciancarelli, Irene; Morone, Giovanni; Giuliana Tozzi Ciancarelli, Maria; Paolucci, Stefano; Tonin, Paolo; Cerasa, Antonio; Iosa, Marco. - In: HEALTHCARE. - ISSN 2227-9032. - (2022). [10.3390/healthcare10050941]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1647339
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