Multi-BK-Net achieved 87.75% accuracy and 83.10% sensitivity on the TUAB test set, significantly outperforming five baseline deep learning models (p<0.001).
Does Multi-BK-Net improve the classification accuracy and sensitivity of pathological EEG recordings in patients undergoing EEG compared to baseline CNN architectures?
9,335 patients with EEG recordings from two public datasets: the TUH Abnormal EEG Corpus (TUAB) comprising 2,993 recordings from 2,329 patients (mean age 48.55 ± 17.86 years, 52.09% female) and the TUH Abnormal Expansion Balanced EEG Corpus (TUABEXB) comprising 8,879 recordings from 7,006 patients (mean age 47.7 ± 21.2 years, 51.7% female).
Multi-Branch Multi-Kernel Network (Multi-BK-Net), a multi-scale, multi-branch convolutional neural network (CNN) with five parallel branches incorporating temporal convolution, spatial convolution, and pooling layers.
Five baseline deep learning architectures: Deep4Net, ShallowNet, TCN, EEGNet, and ChronoNet.
Classification performance for general EEG pathology (accuracy, balanced accuracy, sensitivity, specificity, F2-score, ROC-AUC, and PR-AUC) evaluated on predefined test sets.
The novel Multi-BK-Net architecture significantly improves the accuracy and sensitivity of automated EEG pathology classification compared to existing baseline deep learning models.
Effect estimate: Accuracy improvement of 4.53% absolute over best baseline Deep4Net on TUAB
Absolute Event Rate: 87.75% vs 83.22%
p-value: p=<0.001
Classifying an electroencephalography (EEG) recording as pathological or non-pathological is an important first step in diagnosing and managing neurological diseases and disorders. As manual EEG classification is costly, time-consuming and requires highly trained experts, deep learning methods for automated classification of general EEG pathology offer a promising option to assist clinicians in screening EEGs. Convolutional neural networks (CNNs) are well-suited for classifying pathological EEG signals due to their ability to perform end-to-end learning. In practice, however, current CNN solutions suffer from limited classification performance due to I) a single-scale network design that cannot fully capture the high intra- and inter-subject variability of the EEG signal, the diversity of the data, and the heterogeneity of pathological EEG patterns and II) the small size and limited diversity of the dataset commonly used to train and evaluate the networks. These challenges result in a low sensitivity score and a performance drop on more diverse patient populations, further hindering their reliability for real-world applications. Here, we propose a novel multi-branch, multi-scale CNN called Multi-BK-Net (Multi-Branch Multi-Kernel Network), comprising five parallel branches that incorporate temporal convolution, spatial convolution, and pooling layers, with temporal kernel sizes defined by five clinically relevant frequency bands in its first block. Evaluation is based on two public datasets with predefined test sets: the Temple University Hospital (TUH) Abnormal EEG Corpus and the TUH Abnormal Expansion Balanced EEG Corpus. Our Multi-BK-Net outperforms five baseline architectures and state-of-the-art end-to-end approaches in terms of accuracy and sensitivity on these datasets, setting a new benchmark. Furthermore, ablation experiments highlight the importance of the multi-branch, multi-scale input block of the Multi-BK-Net. Overall, our findings indicate the efficacy of multi-branch, multi-scale CNNs in accurately and reliably classifying EEG pathology, demonstrating advantages in handling data heterogeneity compared to other deep learning approaches. Thus, this study contributes to the ongoing development of deep end-to-end methods for general EEG pathology classification.
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Ann-Kathrin Kiessner
University of Freiburg
Joschka Boedecker
Allen Institute for Brain Science
Tonio Ball
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Kiessner et al. (Thu,) conducted a other in Adults undergoing EEG recording for neurological evaluation comprising both pathological and non-pathological EEG recordings from heterogeneous clinical populations. Multi-BK-Net, a multi-branch, multi-kernel convolutional neural network for EEG classification vs. Five baseline deep learning architectures: Deep4Net, ShallowNet, TCN, EEGNet, ChronoNet was evaluated on Classification accuracy and sensitivity for EEG recordings as pathological vs non-pathological based on predefined test sets TUAB and TUABEXB (Accuracy improvement of 4.53% absolute over best baseline Deep4Net on TUAB, p=<0.001). Multi-BK-Net achieved 87.75% accuracy and 83.10% sensitivity on the TUAB test set, significantly outperforming five baseline deep learning models (p<0.001).
synapsesocial.com/papers/69a286600a974eb0d3c0138f — DOI: https://doi.org/10.6094/unifr/275607