Title: | Sex-related patterns in the electroencephalogram and their relevance in machine learning classifiers |
Author(s): | Jochmann, Thomas ; Seibel, Marc S. ; Jochmann, Elisabeth ; Khan, Sheraz ; Hämäläinen, Matti S. ; Haueisen, Jens |
Date: | 2023-10-01 |
Language: | en |
Pages: | 11 4848-4858 |
Department: | Ilmenau University of Technology Friedrich Schiller University Jena Massachusetts General Hospital Department of Neuroscience and Biomedical Engineering Department of Neuroscience and Biomedical Engineering |
Series: | Human Brain Mapping, Volume 44, issue 14 |
ISSN: | 1065-9471 1097-0193 |
DOI-number: | 10.1002/hbm.26417 |
Keywords: | artificial intelligence, deep learning, electroencephalography, explainable artificial intelligence, machine learning, sex differences |
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Jochmann , T , Seibel , M S , Jochmann , E , Khan , S , Hämäläinen , M S & Haueisen , J 2023 , ' Sex-related patterns in the electroencephalogram and their relevance in machine learning classifiers ' , Human Brain Mapping , vol. 44 , no. 14 , pp. 4848-4858 . https://doi.org/10.1002/hbm.26417 |
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Abstract:Deep learning is increasingly being proposed for detecting neurological and psychiatric diseases from electroencephalogram (EEG) data but the method is prone to inadvertently incorporate biases from training data and exploit illegitimate patterns. The recent demonstration that deep learning can detect the sex from EEG implies potential sex-related biases in deep learning-based disease detectors for the many diseases with unequal prevalence between males and females. In this work, we present the male- and female-typical patterns used by a convolutional neural network that detects the sex from clinical EEG (81% accuracy in a separate test set with 142 patients). We considered neural sources, anatomical differences, and non-neural artifacts as sources of differences in the EEG curves. Using EEGs from 1140 patients, we found electrocardiac artifacts to be leaking into the supposedly brain activity-based classifiers. Nevertheless, the sex remained detectable after rejecting heart-related and other artifacts. In the cleaned data, EEG topographies were critical to detect the sex, but waveforms and frequencies were not. None of the traditional frequency bands was particularly important for sex detection. We were able to determine the sex even from EEGs with shuffled time points and therewith completely destroyed waveforms. Researchers should consider neural and non-neural sources as potential origins of sex differences in their data, they should maintain best practices of artifact rejection, even when datasets are large, and they should test their classifiers for sex biases.
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Description:Funding Information: This work was supported by the German Federal Ministry of Education and Research (BMBF) grant AVATAR (16KISA024), the German Academic Exchange Service (DAAD) PPP program (57599925), the Free State of Thuringia within the ThiMEDOP project (2018 IZN 0004) with funds of the European Union (EFRE), the Free State of Thuringia within the thurAI project (2021 FGI 0008), the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) Clinician Scientist Program OrganAge (413668513), and the Interdisciplinary Center for Clinical Research (IZKF) at Jena University Hospital. We acknowledge support for the publication costs by the Open Access Publication Fund of the Technische Universität Ilmenau. Open Access funding enabled and organized by Projekt DEAL. Publisher Copyright: © 2023 The Authors. Human Brain Mapping published by Wiley Periodicals LLC.
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