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Leveraging Machine Learning to Uncover the Hidden Links between Trusting Behavior and Biological Markers

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AbstractUnderstanding the decision-making mechanisms underlying trust is essential, particularly for patients with mental disorders who experience difficulties in developing trust. We aimed to explore biomarkers associated with trust-based decision-making by quantitative analysis. However, quantification of decision-making properties is difficult because it cannot be directly observed. Here, we developed a machine learning method based on Bayesian hierarchical model to quantitatively decode the decision-making properties from behavioral data of a trust game. By applying the method to data of patients with MDD and healthy controls, we estimated model parameters regulating trusting decision-making. The estimated model was able to predict behaviors of each participant. Although there is no difference of the estimated parameters between MDD and healthy controls, several biomarkers were associated with the decision-making properties in trusting behavior. Our findings provide valuable insights into the trusting decision-making, offering a basis for developing targeted interventions to improve their social functioning and overall well-being.
Title: Leveraging Machine Learning to Uncover the Hidden Links between Trusting Behavior and Biological Markers
Description:
AbstractUnderstanding the decision-making mechanisms underlying trust is essential, particularly for patients with mental disorders who experience difficulties in developing trust.
We aimed to explore biomarkers associated with trust-based decision-making by quantitative analysis.
However, quantification of decision-making properties is difficult because it cannot be directly observed.
Here, we developed a machine learning method based on Bayesian hierarchical model to quantitatively decode the decision-making properties from behavioral data of a trust game.
By applying the method to data of patients with MDD and healthy controls, we estimated model parameters regulating trusting decision-making.
The estimated model was able to predict behaviors of each participant.
Although there is no difference of the estimated parameters between MDD and healthy controls, several biomarkers were associated with the decision-making properties in trusting behavior.
Our findings provide valuable insights into the trusting decision-making, offering a basis for developing targeted interventions to improve their social functioning and overall well-being.

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