Decision making is an internal process that is not time locked to observable sensory inputs or behavioral outputs. This makes the neural processes underlying decision making difficult to investigate. In their Nature Neuroscience paper, Erin Rich and Joni Wallis used a decoding approach to identify and track the neural representations of two options being evaluated for a decision.
Neural decoding is a computational approach typically used to understand sensory perception or motor behaviors, and has been successfully applied to control neural prostheses. It has only rarely been used to study the neural signatures of hidden cognitive processes like memory, attention, and decision making. Rich and Wallis used decoding to investigate value-based decision making in the orbitofrontal cortex, a fascinating region of the brain that integrates sensory, emotional, and memory inputs to assign value to choice options.
Decoding reveals hidden cognitive processes underlying decision making
Rich and Wallis recorded activity from neurons in the orbitofrontal cortex of monkeys while the animals were making a value-based choice. During training sessions, the animals were presented with a choice between two pictures, each probabilistically linked to a juice reward of a certain amount. Through the course of training they learned what pictures were more likely to result in a big reward. During recording sessions, the animal was presented with two types of trials, both leading to rewards – choice trials, in which two picture options were presented, and single-picture trials, in which only one picture was presented.
Data from the single-picture trials was used to train an algorithm to identify neural signatures associated with the evaluation of each picture. Data from the choice trials was then fed through the algorithm to decode the presence and strength of neural representations of each option.
The consideration of two options happens fast, with 75% of choices being made within half a second. Even within this short time span, the decoding approach successfully pulled out neural signatures associated with the evaluation of each presented option, and tracked their representation over time.