spontaneous prediction error generation in schizophrenia自发生成预测误差在精神分裂症.pdf
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Spontaneous Prediction Error Generation in
Schizophrenia
Yuichi Yamashita¤a, Jun Tani*¤b
Laboratory for Behavior and Dynamic Cognition, RIKEN Brain Science Institute, Wako, Saitama, Japan
Abstract
Goal-directed human behavior is enabled by hierarchically-organized neural systems that process executive commands
associated with higher brain areas in response to sensory and motor signals from lower brain areas. Psychiatric diseases and
psychotic conditions are postulated to involve disturbances in these hierarchical network interactions, but the mechanism
for how aberrant disease signals are generated in networks, and a systems-level framework linking disease signals to specific
psychiatric symptoms remains undetermined. In this study, we show that neural networks containing schizophrenia-like
deficits can spontaneously generate uncompensated error signals with properties that explain psychiatric disease
symptoms, including fictive perception, altered sense of self, and unpredictable behavior. To distinguish dysfunction at the
behavioral versus network level, we monitored the interactive behavior of a humanoid robot driven by the network. Mild
perturbations in network connectivity resulted in the spontaneous appearance of uncompensated prediction errors and
altered interactions within the network without external changes in behavior, correlating to the fictive sensations and
agency experienced by episodic disease patients. In contrast, more severe deficits resulted in unstable network dynamics
resulting in overt changes in behavior similar to those observed in chronic disease patients. These findings demonstrate that
prediction error disequilibrium may represent an intrinsic property of schizophrenic brain networks reporting the severity
and variability of disease symptoms. Moreover, th
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