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Main Authors: Alonso, Manuel A. Hernandez, Depass, Michael, Quessy, Stephan, Falaki, Ali, Rahimi, Soraya, Dancause, Numa, Cos, Ignasi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.01951
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author Alonso, Manuel A. Hernandez
Depass, Michael
Quessy, Stephan
Falaki, Ali
Rahimi, Soraya
Dancause, Numa
Cos, Ignasi
author_facet Alonso, Manuel A. Hernandez
Depass, Michael
Quessy, Stephan
Falaki, Ali
Rahimi, Soraya
Dancause, Numa
Cos, Ignasi
contents Electroencephalography (EEG) and local field potentials (LFP) are two widely used techniques to record electrical activity from the brain. These signals are used in both the clinical and research domains for multiple applications. However, most brain data recordings suffer from a myriad of artifacts and noise sources other than the brain itself. Thus, a major requirement for their use is proper and, given current volumes of data, a fully automatized conditioning. As a means to this end, here we introduce an unsupervised, multipurpose EEG/LFP preprocessing method, the NeuroClean pipeline. In addition to its completeness and reliability, NeuroClean is an unsupervised series of algorithms intended to mitigate reproducibility issues and biases caused by human intervention. The pipeline is designed as a five-step process, including the common bandpass and line noise filtering, and bad channel rejection. However, it incorporates an efficient independent component analysis with an automatic component rejection based on a clustering algorithm. This machine learning classifier is used to ensure that task-relevant information is preserved after each step of the cleaning process. We used several data sets to validate the pipeline. NeuroClean removed several common types of artifacts from the signal. Moreover, in the context of motor tasks of varying complexity, it yielded more than 97% accuracy (vs. a chance-level of 33.3%) in an optimized Multinomial Logistic Regression model after cleaning the data, compared to the raw data, which performed at 74% accuracy. These results show that NeuroClean is a promising pipeline and workflow that can be applied to future work and studies to achieve better generalization and performance on machine learning pipelines.
format Preprint
id arxiv_https___arxiv_org_abs_2511_01951
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NeuroClean: A Generalized Machine-Learning Approach to Neural Time-Series Conditioning
Alonso, Manuel A. Hernandez
Depass, Michael
Quessy, Stephan
Falaki, Ali
Rahimi, Soraya
Dancause, Numa
Cos, Ignasi
Machine Learning
Electroencephalography (EEG) and local field potentials (LFP) are two widely used techniques to record electrical activity from the brain. These signals are used in both the clinical and research domains for multiple applications. However, most brain data recordings suffer from a myriad of artifacts and noise sources other than the brain itself. Thus, a major requirement for their use is proper and, given current volumes of data, a fully automatized conditioning. As a means to this end, here we introduce an unsupervised, multipurpose EEG/LFP preprocessing method, the NeuroClean pipeline. In addition to its completeness and reliability, NeuroClean is an unsupervised series of algorithms intended to mitigate reproducibility issues and biases caused by human intervention. The pipeline is designed as a five-step process, including the common bandpass and line noise filtering, and bad channel rejection. However, it incorporates an efficient independent component analysis with an automatic component rejection based on a clustering algorithm. This machine learning classifier is used to ensure that task-relevant information is preserved after each step of the cleaning process. We used several data sets to validate the pipeline. NeuroClean removed several common types of artifacts from the signal. Moreover, in the context of motor tasks of varying complexity, it yielded more than 97% accuracy (vs. a chance-level of 33.3%) in an optimized Multinomial Logistic Regression model after cleaning the data, compared to the raw data, which performed at 74% accuracy. These results show that NeuroClean is a promising pipeline and workflow that can be applied to future work and studies to achieve better generalization and performance on machine learning pipelines.
title NeuroClean: A Generalized Machine-Learning Approach to Neural Time-Series Conditioning
topic Machine Learning
url https://arxiv.org/abs/2511.01951