» Articles » PMID: 19342495

Quality of Evidence for Perceptual Decision Making is Indexed by Trial-to-trial Variability of the EEG

Overview
Specialty Science
Date 2009 Apr 4
PMID 19342495
Citations 122
Authors
Affiliations
Soon will be listed here.
Abstract

A fundamental feature of how we make decisions is that our responses are variable in the choices we make and the time it takes to make them. This makes it impossible to determine, for a single trial of an experiment, the quality of the evidence on which a decision is based. Even for stimuli from a single experimental condition, it is likely that stimulus and encoding differences lead to differences in the quality of evidence. In the research reported here, with a simple "face"/"car" perceptual discrimination task, we obtained late (decision-related) and early (stimulus-related) single-trial EEG component amplitudes that discriminated between faces and cars within and across conditions. We used the values of these amplitudes to sort the response time and choice within each experimental condition into more-face-like and less-face-like groups and then fit the diffusion model for simple decision making (a well-established model in cognitive psychology) to the data in each group separately. The results show that dividing the data on a trial-by-trial basis by using the late-component amplitude produces differences in the estimates of evidence used in the decision process. However, dividing the data on the basis of the early EEG component amplitude or the times of the peak amplitudes of either component did not index the information used in the decision process. The results we present show that a single-trial EEG neurophysiological measure for nominally identical stimuli can be used to sort behavioral response times and choices into those that index the quality of decision-relevant evidence.

Citing Articles

Confidence control for efficient behaviour in dynamic environments.

Balsdon T, Philiastides M Nat Commun. 2024; 15(1):9089.

PMID: 39433579 PMC: 11493976. DOI: 10.1038/s41467-024-53312-3.


A comparative analysis of face and object perception in 2D laboratory and virtual reality settings: insights from induced oscillatory responses.

Sagehorn M, Kisker J, Johnsdorf M, Gruber T, Schone B Exp Brain Res. 2024; 242(12):2765-2783.

PMID: 39395060 PMC: 11568981. DOI: 10.1007/s00221-024-06935-3.


Flexible adaptation of task-positive brain networks predicts efficiency of evidence accumulation.

Weigard A, Angstadt M, Taxali A, Heathcote A, Heitzeg M, Sripada C Commun Biol. 2024; 7(1):801.

PMID: 38956310 PMC: 11220037. DOI: 10.1038/s42003-024-06506-w.


Modality-specific impacts of distractors on visual and auditory categorical decision-making: an evidence accumulation perspective.

Li J, Hua L, Deng S Front Psychol. 2024; 15:1380196.

PMID: 38765839 PMC: 11099231. DOI: 10.3389/fpsyg.2024.1380196.


Predicting rock-paper-scissors choices based on single-trial EEG signals.

He Z, Cui L, Zhang S, He G Psych J. 2023; 13(1):19-30.

PMID: 37905897 PMC: 10917104. DOI: 10.1002/pchj.688.


References
1.
Ratcliff R, Rouder J . A diffusion model account of masking in two-choice letter identification. J Exp Psychol Hum Percept Perform. 2000; 26(1):127-40. DOI: 10.1037//0096-1523.26.1.127. View

2.
Parra L, Alvino C, Tang A, Pearlmutter B, Yeung N, Osman A . Linear spatial integration for single-trial detection in encephalography. Neuroimage. 2002; 17(1):223-30. DOI: 10.1006/nimg.2002.1212. View

3.
Smith P, Ratcliff R, Wolfgang B . Attention orienting and the time course of perceptual decisions: response time distributions with masked and unmasked displays. Vision Res. 2004; 44(12):1297-320. DOI: 10.1016/j.visres.2004.01.002. View

4.
Ratcliff R, Tuerlinckx F . Estimating parameters of the diffusion model: approaches to dealing with contaminant reaction times and parameter variability. Psychon Bull Rev. 2002; 9(3):438-81. PMC: 2474747. DOI: 10.3758/bf03196302. View

5.
Philiastides M, Ratcliff R, Sajda P . Neural representation of task difficulty and decision making during perceptual categorization: a timing diagram. J Neurosci. 2006; 26(35):8965-75. PMC: 6675324. DOI: 10.1523/JNEUROSCI.1655-06.2006. View