TY - JOUR
T1 - Listening to the Data
T2 - Computational Approaches to Addiction and Learning
AU - Wilkinson, Courtney S.
AU - Luján, Miguel
AU - Hales, Claire
AU - Costa, Kauê M.
AU - Fiore, Vincenzo G.
AU - Knackstedt, Lori A.
AU - Kober, Hedy
N1 - Publisher Copyright:
Copyright © 2023 the authors.
PY - 2023/11/8
Y1 - 2023/11/8
N2 - Computational approaches hold great promise for identifying novel treatment targets and creating translational therapeutics for substance use disorders. From circuitries underlying decision-making to computationally derived neural markers of drug-cue reactivity, this review is a summary of the approaches to data presented at our 2023 Society for Neuroscience Mini-Symposium. Here, we highlight data- and hypothesis-driven computational approaches that recently afforded advancements in addiction and learning neuroscience. First, we discuss the value of hypothesis-driven algorithmic modeling approaches, which integrate behavioral, neural, and cognitive outputs to refine hypothesis testing. Then, we review the advantages of data-driven dimensionality reduction and machine learning methods for uncovering novel predictor variables and elucidating relationships in high-dimensional data. Overall, this review highlights recent breakthroughs in cognitive mapping, model-based analysis of behavior/risky decision-making, patterns of drug taking, relapse, and neuromarker discovery, and showcases the benefits of novel modeling techniques, across both preclinical and clinical data.
AB - Computational approaches hold great promise for identifying novel treatment targets and creating translational therapeutics for substance use disorders. From circuitries underlying decision-making to computationally derived neural markers of drug-cue reactivity, this review is a summary of the approaches to data presented at our 2023 Society for Neuroscience Mini-Symposium. Here, we highlight data- and hypothesis-driven computational approaches that recently afforded advancements in addiction and learning neuroscience. First, we discuss the value of hypothesis-driven algorithmic modeling approaches, which integrate behavioral, neural, and cognitive outputs to refine hypothesis testing. Then, we review the advantages of data-driven dimensionality reduction and machine learning methods for uncovering novel predictor variables and elucidating relationships in high-dimensional data. Overall, this review highlights recent breakthroughs in cognitive mapping, model-based analysis of behavior/risky decision-making, patterns of drug taking, relapse, and neuromarker discovery, and showcases the benefits of novel modeling techniques, across both preclinical and clinical data.
UR - https://www.scopus.com/pages/publications/85176412970
U2 - 10.1523/JNEUROSCI.1415-23.2023
DO - 10.1523/JNEUROSCI.1415-23.2023
M3 - Article
C2 - 37940590
AN - SCOPUS:85176412970
SN - 0270-6474
VL - 43
SP - 7547
EP - 7553
JO - Journal of Neuroscience
JF - Journal of Neuroscience
IS - 45
ER -