Publication

Goal-Directed Learning in Cortical Organoids

December 12, 2024
ActivityScan Assay
Burst Detection
Closed Loop
Custom Analysis
MaxLab Live
MaxOne
MaxOne Chip
Neurocomputing
Organoids
Ash Robbins, Hunter E. Schweiger, Sebastian Hernandez, Alex Spaeth, Kateryna Voitiuk, David F. Parks, Tjitse van der Molen, Jinghui Geng, Tal Sharf, Mohammed A. Mostajo-Radji, David Haussler, Mircea Teodorescu
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Abstract

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Experimental neuroscience techniques are advancing rapidly, with major recent developments in high-density electrophysiology and targeted electrical stimulation. In combination with these techniques, cortical organoids derived from pluripotent stem cells show great promise as in vitro models of brain development and function. Although sensory input is vital to neurodevelopment in vivo, few studies have explored the effect of meaningful input to in vitro neural cultures over time. In this work, we demonstrate the first example of goal-directed learning in brain organoids. We developed a closed-loop electrophysiology framework to embody mouse cortical organoids into a simulated dynamical task (the inverted pendulum problem known as ‘Cartpole’) and evaluate learning through high-frequency training signals. Longitudinal experiments enabled by this framework illuminate how different methods of selecting training signals enable improvement on the tasks. We found that for most organoids, training signals chosen by artificial reinforcement learning yield better performance on the task than randomly chosen training signals or the absence of a training signal. This systematic approach to studying learning mechanisms in vitro opens new possibilities for therapeutic interventions and biological computation.