Abstract

Treatment of schizophrenia has had limited success in treating core cognitive symptoms. The evidence of multi-gene involvement suggests that multi-target therapy may be needed. Meanwhile, the complexity of schizophrenia pathophysiology and psychopathology, coupled with the species-specificity of much of the symptomatology, places limits on analysis via animal models, in vitro assays, and patient assessment. Multiscale computer modeling complements these traditional modes of study. Using a hippocampal CA3 computer model with 1200 neurons, we examined the effects of alterations in NMDAR, HCN (Ih current), and GABAAR on information flow (measured with normalized transfer entropy), and in gamma activity in local field potential (LFP). We found that altering NMDARs, GABAAR, Ih, individually or in combination, modified information flow in an inverted-U shape manner, with information flow reduced at low and high levels of these parameters. Theta-gamma phase-amplitude coupling also had an inverted-U shape relationship with NMDAR augmentation. The strong information flow was associated with an intermediate level of synchrony, seen as an intermediate level of gamma activity in the LFP, and an intermediate level of pyramidal cell excitability. Our results are consistent with the idea that overly low or high gamma power is associated with pathological information flow and information processing. These data suggest the need for careful titration of schizophrenia pharmacotherapy to avoid extremes that alter information flow in different ways. These results also identify gamma power as a potential biomarker for monitoring pathology and multi-target pharmacotherapy.

Highlights

  • Schizophrenia is a chronic disease with a lifetime prevalence of around 4/10001, which usually produces life-long disability[2]

  • Cross-frequency coupling between theta phase and gamma amplitude, measured by modulation index (MI), showed the inverted-U relationship with NMDAR scaling, correlating with information flow (Fig. 2a red)

  • We found a similar included 175 simulations for the NMDAR augmentation (5 input inverted-U that related information flow to gamma power, a random seeds × 5 connectivity random seeds × 7 NMDAR scalings), measure of synchronized firing (Fig. 2c)

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Summary

Introduction

Schizophrenia is a chronic disease with a lifetime prevalence of around 4/10001, which usually produces life-long disability[2]. Cognitive impairment and information processing deficits are chief causes of disability[3,4,5]. The most affected cognitive domains are processing speed, working memory, episodic memory, and verbal learning and memory[6,7,8]. Current antipsychotic medications have limited impact on cognitive symptoms and information processing deficits[9,10]. Recent research has emphasized the role of glutamatergic transmission as an extension of the dopaminergic hypothesis for schizophrenia pathophysiology, especially to capture cognitive impairment associated with schizophrenia (CIAS) and information processing deficits[12]. The role of glutamatergic transmission has been supported by the psychotomimetic effect of N-methyl-D-

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