Sex‐related patterns in the electroencephalogram and their relevance in machine learning classifiers

Author:

Jochmann Thomas1ORCID,Seibel Marc S.1,Jochmann Elisabeth2ORCID,Khan Sheraz34,Hämäläinen Matti S.345,Haueisen Jens12ORCID

Affiliation:

1. Department of Computer Science and Automation Technische Universität Ilmenau Ilmenau Germany

2. Department of Neurology Jena University Hospital Jena Germany

3. Athinoula A. Martinos Center for Biomedical Imaging Massachusetts General Hospital Charlestown Massachusetts USA

4. Harvard Medical School Boston Massachusetts USA

5. Department of Neuroscience and Biomedical Engineering, School of Science Aalto University Espoo Finland

Abstract

AbstractDeep 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.

Funder

Bundesministerium für Bildung und Forschung

Deutsche Forschungsgemeinschaft

Deutscher Akademischer Austauschdienst

Freistaat Thüringen

Publisher

Wiley

Subject

Neurology (clinical),Neurology,Radiology, Nuclear Medicine and imaging,Radiological and Ultrasound Technology,Anatomy

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