Machine learning (ML) has the potential to become an essential tool in supporting clinical decision-making processes, offering enhanced diagnostic capabilities and personalized treatment plans. However, outsourcing medical records to train ML models using patient data raises legal, privacy, and security concerns. Federated learning has emerged as a promising paradigm for collaborative ML, meeting healthcare institutions’ requirements for robust models without sharing sensitive data and compromising patient privacy. This study proposes a novel method that combines federated learning (FL) and Graph Neural Networks (GNNs) to predict stroke severity using electroencephalography (EEG) signals across multiple medical institutions. Our approach enables multiple hospitals to jointly train a shared GNN model on their local EEG data without exchanging patient information. Specifically, we address a regression problem by predicting the National Institutes of Health Stroke Scale (NIHSS), a key indicator of stroke severity. The proposed model leverages a masked self-attention mechanism to capture salient brain connectivity patterns and employs EdgeSHAP to provide post-hoc explanations of the neurological states after a stroke. We evaluated our method on EEG recordings from four institutions, achieving a mean absolute error (MAE) of 3.23 in predicting NIHSS, close to the average error made by human experts (MAE $\approx$ 3.0). This demonstrates the method’s effectiveness in providing accurate and explainable predictions while maintaining data privacy.

Federated GNNs for EEG-Based Stroke Assessment / Protani, Andrea; Giusti, Lorenzo; Aillet Albert, Sund; Sacco, Simona; Manganotti, Paolo; Marinelli, Lucio; Santos Diogo, Reis; Brutti, Pierpaolo; Caliandro, Pietro; Serio, Luigi. - 285:(2024), pp. 55-68. ( Workshop on Unifying Representations in Neural Models Vancouver; Canada ).

Federated GNNs for EEG-Based Stroke Assessment

Protani Andrea;Giusti Lorenzo;Brutti Pierpaolo;Serio Luigi
2024

Abstract

Machine learning (ML) has the potential to become an essential tool in supporting clinical decision-making processes, offering enhanced diagnostic capabilities and personalized treatment plans. However, outsourcing medical records to train ML models using patient data raises legal, privacy, and security concerns. Federated learning has emerged as a promising paradigm for collaborative ML, meeting healthcare institutions’ requirements for robust models without sharing sensitive data and compromising patient privacy. This study proposes a novel method that combines federated learning (FL) and Graph Neural Networks (GNNs) to predict stroke severity using electroencephalography (EEG) signals across multiple medical institutions. Our approach enables multiple hospitals to jointly train a shared GNN model on their local EEG data without exchanging patient information. Specifically, we address a regression problem by predicting the National Institutes of Health Stroke Scale (NIHSS), a key indicator of stroke severity. The proposed model leverages a masked self-attention mechanism to capture salient brain connectivity patterns and employs EdgeSHAP to provide post-hoc explanations of the neurological states after a stroke. We evaluated our method on EEG recordings from four institutions, achieving a mean absolute error (MAE) of 3.23 in predicting NIHSS, close to the average error made by human experts (MAE $\approx$ 3.0). This demonstrates the method’s effectiveness in providing accurate and explainable predictions while maintaining data privacy.
2024
Workshop on Unifying Representations in Neural Models
EEG Signals, Graph Neural Networks, Frequency Band , Brain Networks, Acute Stroke, Graph Theory, Stroke Severity, Graph Attention, Representation Learning, Sparse Graph, Graph Attention Network , Stroke Rehabilitation , Acute Stroke Patients , Stroke Unit , Clinical Neuroscience , Graph-structured Data, Node Features, Federated Learning, Node Representations
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Federated GNNs for EEG-Based Stroke Assessment / Protani, Andrea; Giusti, Lorenzo; Aillet Albert, Sund; Sacco, Simona; Manganotti, Paolo; Marinelli, Lucio; Santos Diogo, Reis; Brutti, Pierpaolo; Caliandro, Pietro; Serio, Luigi. - 285:(2024), pp. 55-68. ( Workshop on Unifying Representations in Neural Models Vancouver; Canada ).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1748800
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