Patients in a minimally conscious state (MCS) are characterized by behavioral signs of self- or environmental-awareness. EEG oscillations in MCS are known slowing down. Neuroelectrical modulations of MCS intervention – e.g., transcranial direct current stimulation (tDCS) – are assessed using EEG features, and related to clinical scores. However, these features are handcrafted in a non-patient-specific way. Conversely, interpretable and explainable artificial intelligence (IXAI) automatically extracts the most salient patient-specific features. In this pilot study, we use IXAI for tracking the EEG changes of 9 MCS patients following tDCS. Our approach is composed by an interpretable neural network (Sinc-ShallowNet) and an explanation technique (DeepLIFT). The network discriminates resting-state EEG before vs. after tDCS and learns interpretable spectral features; DeepLIFT quantifies the relevance of the frequency components. Patients with higher neurobehavioral improvements show a maximum relevance at high frequencies (high-alpha) and a minimum at low frequencies (delta); vice versa for patients with lower improvements. Our results corroborate the idea that tDCS could support MCS intervention, and that IXAI could be useful, prospectively, to design patient-specific markers tracking the effects of intervention.

Borra, D., Fraternali, M., Bonsangue, V., Lavezzi, S., Straudi, S., Magosso, E. (2025). Interpretable and Explainable AI Reveals EEG Signatures of Intervention in Minimally Conscious State Patients. GEWERBESTRASSE 11, CHAM, CH-6330, SWITZERLAND : Springer Science and Business Media Deutschland GmbH [10.1007/978-3-031-95841-0_10].

Interpretable and Explainable AI Reveals EEG Signatures of Intervention in Minimally Conscious State Patients

Borra, Davide
Primo
;
Fraternali, Matteo
Secondo
;
Magosso, Elisa
Ultimo
2025

Abstract

Patients in a minimally conscious state (MCS) are characterized by behavioral signs of self- or environmental-awareness. EEG oscillations in MCS are known slowing down. Neuroelectrical modulations of MCS intervention – e.g., transcranial direct current stimulation (tDCS) – are assessed using EEG features, and related to clinical scores. However, these features are handcrafted in a non-patient-specific way. Conversely, interpretable and explainable artificial intelligence (IXAI) automatically extracts the most salient patient-specific features. In this pilot study, we use IXAI for tracking the EEG changes of 9 MCS patients following tDCS. Our approach is composed by an interpretable neural network (Sinc-ShallowNet) and an explanation technique (DeepLIFT). The network discriminates resting-state EEG before vs. after tDCS and learns interpretable spectral features; DeepLIFT quantifies the relevance of the frequency components. Patients with higher neurobehavioral improvements show a maximum relevance at high frequencies (high-alpha) and a minimum at low frequencies (delta); vice versa for patients with lower improvements. Our results corroborate the idea that tDCS could support MCS intervention, and that IXAI could be useful, prospectively, to design patient-specific markers tracking the effects of intervention.
2025
Lecture Notes in Computer Science
52
56
Borra, D., Fraternali, M., Bonsangue, V., Lavezzi, S., Straudi, S., Magosso, E. (2025). Interpretable and Explainable AI Reveals EEG Signatures of Intervention in Minimally Conscious State Patients. GEWERBESTRASSE 11, CHAM, CH-6330, SWITZERLAND : Springer Science and Business Media Deutschland GmbH [10.1007/978-3-031-95841-0_10].
Borra, Davide; Fraternali, Matteo; Bonsangue, Valentina; Lavezzi, Susanna; Straudi, Sofia; Magosso, Elisa
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1045786
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