This study developed an interpretable deep learning model, ProtoPMed-EEG, to accurately classify six clinically relevant EEG patterns observed in intensive care unit (ICU) patients: seizure, lateralized periodic discharges (LPD), generalized periodic discharges (GPD), lateralized rhythmic delta activity (LRDA), generalized rhythmic delta activity (GRDA), and "other" patterns.
The model was trained on a large dataset of 50,697 EEG samples from 2,711 ICU patients, labeled by 124 domain experts. It uses an interpretable architecture with single-class and dual-class prototypes to provide faithful case-based explanations for its predictions.
In a user study, eight medical professionals significantly improved their diagnostic accuracy from 47% to 71% when provided with the model's AI assistance, demonstrating the clinical utility of this interpretable system. The model also outperformed the current state-of-the-art black box model in both classification performance and interpretability metrics.
Additionally, by visualizing the model's latent space, the study provides evidence supporting the "ictal-interictal-injury continuum" hypothesis, which posits that seizures and rhythmic/periodic EEG patterns lie along a spectrum. The model was able to identify samples in transitional states between distinct EEG patterns.
Overall, this work advances the field of interpretable deep learning for medical applications, offering a promising tool to assist clinicians in accurately diagnosing complex EEG patterns and gain insights into the relationships between them.
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