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Thalamic Contributions to Multisensory Convergence and Processing

The Cerebral Cortex and Thalamus(2023)

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Abstract
Abstract Every waking moment, multiple signals are received from different sensory systems. These signals must be properly integrated to ensure accurate perception and contextually-appropriate behavioral responses. An obvious question is: How does the brain integrate these separate signals? Research over the past 50 years has provided evidence of multisensory and sensorimotor integration in the thalamus itself and has highlighted the fact that widespread thalamic connections allow for fast transfer of information to and between different sensory and/or motor cortical areas. In addition to reviewing anatomical connections of major thalamic nuclei, this chapter considers the evidence supporting the role of thalamic nuclei in multisensory/sensorimotor integration, focusing on the mechanisms that include cross-modal modulation of ongoing oscillations and cortico-thalamocortical transfer of information.
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