Summary
Brain-wide fluctuations in local field potential oscillations reflect
emergent network-level signals that mediate behavior. Cracking the code whereby
these oscillations coordinate in time and space (spatiotemporal dynamics) to
represent complex behaviors would provide fundamental insights into how the
brain signals emotional pathology. Using machine learning, we discover a
spatiotemporal dynamic network that predicts the emergence of major depressive
disorder (MDD)-related behavioral dysfunction in mice subjected to chronic
social defeat stress. Activity patterns in this network originate in prefrontal
cortex and ventral striatum, relay through amygdala and ventral tegmental area,
and converge in ventral hippocampus. This network is increased by acute threat,
and it is also enhanced in three independent models of MDD vulnerability.
Finally, we demonstrate that this vulnerability network is biologically distinct
from the networks that encode dysfunction after stress. Thus, these findings
reveal a convergent mechanism through which MDD vulnerability is mediated in the
brain.
Summary
Circuits distributed across cortico-limbic brain regions compose the networks that mediate emotional behavior. The prefrontal cortex (PFC) regulates ultraslow (<1Hz) dynamics across these networks, and PFC dysfunction is implicated in stress-related illnesses including major depressive disorder (MDD). To uncover the mechanism whereby stress-induced changes in PFC circuitry alter emotional networks to yield pathology, we used a multi-disciplinary approach including in vivo recordings in mice and chronic social-defeat stress. Our network model, inferred using machine learning, linked stress-induced behavioral pathology to the capacity of PFC to synchronize amygdala and VTA activity. Direct stimulation of PFC-amygdala circuitry with DREADDs normalized PFC-dependent limbic synchrony in stress-susceptible animals and restored normal behavior. In addition to providing insights into MDD mechanisms, our findings demonstrate an interdisciplinary approach that can be used to identify the large-scale network changes that underlie complex emotional pathologies and the specific network nodes that can be used to develop targeted interventions.
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