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Balancing true and false detection of intermittent sensory targets by adjusting the inputs to the evidence accumulation process
Date Issued
2023-08-03
Date Available
2025-10-08T14:32:09Z
Abstract
Decisions about noisy stimuli are widely understood to be made by accumulating evidence up to a decision bound that can be adjusted according to task demands. However, relatively little is known about how such mechanisms operate in continuous monitoring contexts requiring intermittent target detection. Here, we examined neural decision processes underlying detection of 1 s coherence targets within continuous random dot motion, and how they are adjusted across contexts with weak, strong, or randomly mixed weak/strong targets. Our prediction was that decision bounds would be set lower when weak targets are more prevalent. Behavioural hit and false alarm rate patterns were consistent with this, and were well captured by a bound-adjustable leaky accumulator model. However, beta-band EEG signatures of motor preparation contradicted this, instead indicating lower bounds in the strong-target context. We thus tested two alternative models in which decision-bound dynamics were constrained directly by beta measurements, respectively, featuring leaky accumulation with adjustable leak, and non-leaky accumulation of evidence referenced to an adjustable sensory-level criterion. We found that the latter model best explained both behaviour and neural dynamics, highlighting novel means of decision policy regulation and the value of neurally informed modelling.
Sponsorship
Science Foundation Ireland
Wellcome Trust
European Commission Horizon 2020
Other Sponsorship
Founder
Type of Material
Journal Article
Publisher
eLife Sciences Publications
Journal
ELife
Volume
12
Copyright (Published Version)
2023 the Authors
Language
English
Status of Item
Peer reviewed
ISSN
2050-084X
This item is made available under a Creative Commons License
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Name
GeuzebroekKelly_eLife_23.pdf
Size
2.02 MB
Format
Adobe PDF
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