Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Sampling Plans01:23

Sampling Plans

897
Sampling is a crucial step in analytical chemistry, allowing researchers to collect representative data from a large population. Common sampling methods include random, judgmental, systematic, stratified, and cluster sampling.
Random sampling is a method where each member of the population has an equal chance of being selected for the sample. It involves selecting individuals randomly, often using random number generators or lottery-type methods. For example, when analyzing the properties of a...
897
Sampling Methods: Overview01:06

Sampling Methods: Overview

2.9K
A sample refers to a smaller subset representative of a larger population. In analytical chemistry, studying or analyzing an entire population is often impractical or impossible. Therefore, samples are used to draw inferences and generalize the whole population. The sampling method selects individuals or items from a population to create a sample. Standard sampling methods include random, judgemental, systematic, stratified, and cluster sampling. 
In analytical chemistry, the choice of...
2.9K

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

A portable solution for simultaneous human movement and mobile EEG acquisition: readiness potential for basketball free-throw shooting.

Experimental brain research·2026
Same author

Exploring fNIRS-guided neurofeedback for supplementary motor area training in Parkinson's disease and healthy older adults.

NPJ Parkinson's disease·2026
Same author

The effects of dual-tasking while walking naturally and on a treadmill.

Acta psychologica·2026
Same author

Emotion recognition in patients with mild cognitive impairment: The role of face processing and emotional intelligence.

Journal of Alzheimer's disease : JAD·2026
Same author

Structural network topology and cognitive control in very preterm born young adults.

NeuroImage. Clinical·2026
Same author

Morphometric Latent Factors in Autism and Their Association with Receptor Profiles and Behavior.

bioRxiv : the preprint server for biology·2025

Related Experiment Video

Updated: Jan 18, 2026

PIPEMAT-RS: Development and Validation of a Standardized MATLAB Pipeline for Resting-State EEG Preprocessing
06:51

PIPEMAT-RS: Development and Validation of a Standardized MATLAB Pipeline for Resting-State EEG Preprocessing

Published on: June 6, 2025

933

Lost in a large EEG multiverse? Comparing sampling approaches for representative pipeline selection.

Cassie Ann Short1, Andrea Hildebrandt1, Robin Bosse2

  • 1Department of Psychology, Carl von Ossietzky Universität Oldenburg, Oldenburg, Germany.

Journal of Neuroscience Methods
|September 11, 2025
PubMed
Summary
This summary is machine-generated.

Choosing the right sampling method is crucial for reliable multiverse analyses in electroencephalography (EEG) research. Active learning and stratified sampling best represent the full range of analysis pipelines, reducing uncertainty in results.

Keywords:
Active learningEEGMultiverse analysisMultiverse sampling, UncertaintyResearcher degrees of freedom

More Related Videos

Author Spotlight: Obtaining High-Quality CSF and Blood Samples for Epilepsy Biomarker Discovery
10:46

Author Spotlight: Obtaining High-Quality CSF and Blood Samples for Epilepsy Biomarker Discovery

Published on: September 1, 2023

4.3K
Author Spotlight: Advancing the Study of Brain-Heart Interplay with a Comprehensive EEGLAB Plugin for Multimodal Signal Analysis
08:22

Author Spotlight: Advancing the Study of Brain-Heart Interplay with a Comprehensive EEGLAB Plugin for Multimodal Signal Analysis

Published on: April 26, 2024

3.0K

Related Experiment Videos

Last Updated: Jan 18, 2026

PIPEMAT-RS: Development and Validation of a Standardized MATLAB Pipeline for Resting-State EEG Preprocessing
06:51

PIPEMAT-RS: Development and Validation of a Standardized MATLAB Pipeline for Resting-State EEG Preprocessing

Published on: June 6, 2025

933
Author Spotlight: Obtaining High-Quality CSF and Blood Samples for Epilepsy Biomarker Discovery
10:46

Author Spotlight: Obtaining High-Quality CSF and Blood Samples for Epilepsy Biomarker Discovery

Published on: September 1, 2023

4.3K
Author Spotlight: Advancing the Study of Brain-Heart Interplay with a Comprehensive EEGLAB Plugin for Multimodal Signal Analysis
08:22

Author Spotlight: Advancing the Study of Brain-Heart Interplay with a Comprehensive EEGLAB Plugin for Multimodal Signal Analysis

Published on: April 26, 2024

3.0K

Area of Science:

  • Neuroscience
  • Data Science
  • Computational Biology

Background:

  • The multitude of data analysis pipelines contributes to low replicability in scientific research.
  • This issue is particularly prominent in electroencephalography (EEG) data analysis.
  • Multiverse analyses aim to assess result robustness across various pipelines, but computing all is often infeasible, leading to reliance on sampling methods and potential multiverse sampling uncertainty.

Purpose of the Study:

  • To develop and evaluate an open-source tool for comparing the representativeness of pipeline samples in multiverse analyses.
  • To assess how different sampling methods impact the estimation of robustness in EEG data analysis.
  • To mitigate bias introduced by sampling in large-scale neuroimaging studies.

Main Methods:

  • A 528-pipeline multiverse was computed using EEG recordings for an emotion classification task (predicting extraversion from the Late Positive Potential).
  • Three sampling methods (random, stratified, active learning) were applied to select 5% (26 pipelines) of the full multiverse.
  • The representativeness of model fit distributions across these samples was evaluated.

Main Results:

  • Variability in the representativeness of model fit distributions was observed across different sampling methods.
  • Active learning and stratified sampling demonstrated the highest representativeness of the full multiverse.
  • Replicability was assessed via cross-validation, and reproducibility was explored concerning pipeline sample sizes.

Conclusions:

  • Representative pipeline sampling is essential for mitigating bias in large multiverse analyses.
  • The choice of sampling strategy significantly influences the reliability of robustness estimates.
  • The developed tool aids researchers in selecting appropriate sampling methods for more dependable neuroimaging research.