Ensemble learning using a weighted mean aggregation scheme achieved seizure detection accuracy comparable to a single detector trained on all pooled data.
Neonatal seizures
Ensemble learning with local detectors vs Single detector trained on all pooled data
Prediction accuracy for seizure detection
OBJECTIVE: Sharing medical data between institutions is difficult in practice due to data protection laws and official procedures within institutions. Therefore, most existing algorithms are trained on relatively small electroencephalogram (EEG) data sets which is likely to be detrimental to prediction accuracy. In this work, we simulate a case when the data can not be shared by splitting the publicly available data set into disjoint sets representing data in individual institutions. METHODS AND PROCEDURES: We propose to train a (local) detector in each institution and aggregate their individual predictions into one final prediction. Four aggregation schemes are compared, namely, the majority vote, the mean, the weighted mean and the Dawid-Skene method. The method was validated on an independent data set using only a subset of EEG channels. RESULTS: The ensemble reaches accuracy comparable to a single detector trained on all the data when sufficient amount of data is available in each institution. CONCLUSION: The weighted mean aggregation scheme showed best performance, it was only marginally outperformed by the Dawid-Skene method when local detectors approach performance of a single detector trained on all available data. CLINICAL IMPACT: Ensemble learning allows training of reliable algorithms for neonatal EEG analysis without a need to share the potentially sensitive EEG data between institutions.
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Ana Borovac
University of Iceland
Steinn Guðmundsson
University of Iceland
Gardar Thorvardsson
GfK (United States)
IEEE Journal of Translational Engineering in Health and Medicine
Työväentutkimus Vuosikirja
University of Helsinki
Helsinki University Hospital
QIMR Berghofer Medical Research Institute
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Borovac et al. (Sat,) conducted a other in Neonatal seizures. Ensemble learning with local detectors vs. Single detector trained on all pooled data was evaluated on Prediction accuracy for seizure detection. Ensemble learning using a weighted mean aggregation scheme achieved seizure detection accuracy comparable to a single detector trained on all pooled data.
synapsesocial.com/papers/6a1fc6fd76b663ca04df61a2 — DOI: https://doi.org/10.1109/jtehm.2022.3201167
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