Computational Modeling of Contrast Sensitivity and Orientation Tuning in First-Episode and Chronic Schizophrenia.

Steven M Silverstein, Docia L Demmin, James A Bednar
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Abstract

Computational modeling is a useful method for generating hypotheses about the contributions of impaired neurobiological mechanisms, and their interactions, to psychopathology. Modeling is being increasingly used to further our understanding of schizophrenia, but to date, it has not been applied to questions regarding the common perceptual disturbances in the disorder. In this article, we model aspects of low-level visual processing and demonstrate how this can lead to testable hypotheses about both the nature of visual abnormalities in schizophrenia and the relationships between the mechanisms underlying these disturbances and psychotic symptoms. Using a model that incorporates retinal, lateral geniculate nucleus (LGN), and V1 activity, as well as gain control in the LGN, homeostatic adaptation in V1, lateral excitation and inhibition in V1, and self-organization of synaptic weights based on Hebbian learning and divisive normalization, we show that (a) prior data indicating increased contrast sensitivity for low-spatial-frequency stimuli in first-episode schizophrenia can be successfully modeled as a function of reduced retinal and LGN efferent activity, leading to overamplification at the cortical level, and (b) prior data on reduced contrast sensitivity and broadened orientation tuning in chronic schizophrenia can be successfully modeled by a combination of reduced V1 lateral inhibition and an increase in the Hebbian learning rate at V1 synapses for LGN input. These models are consistent with many current findings, and they predict several relationships that have not yet been demonstrated. They also have implications for understanding changes in brain and visual function from the first psychotic episode to the chronic stage of illness.

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首次发作和慢性精神分裂症对比敏感度和定向调节的计算模型。
计算建模是一种有用的方法,可以产生关于受损神经生物学机制及其相互作用对精神病理学的贡献的假设。建模越来越多地被用于进一步理解精神分裂症,但到目前为止,它还没有被应用于有关精神分裂症中常见感知障碍的问题。在这篇文章中,我们对低水平视觉处理的各个方面进行了建模,并证明了这如何导致关于精神分裂症视觉异常的性质以及这些障碍背后的机制与精神病症状之间的关系的可检验的假设。使用一个模型,该模型结合了视网膜、外侧膝状体核(LGN)和V1的活性,以及LGN的增益控制、V1的稳态适应、V1的侧向兴奋和抑制,以及基于Hebbian学习和分裂归一化的突触权重的自组织,我们发现(a)先前的数据表明,在首发精神分裂症患者中,对低空间频率刺激的对比敏感度增加,可以成功地建模为视网膜和LGN传出活动减少的函数,导致皮层水平的过度放大,和(b)关于慢性精神分裂症中对比敏感度降低和定向调谐加宽的先前数据可以通过减少V1侧抑制和增加LGN输入的V1突触处的Hebbian学习率的组合来成功建模。这些模型与目前的许多发现一致,它们预测了几种尚未证明的关系。它们也有助于理解从第一次精神病发作到慢性疾病阶段大脑和视觉功能的变化。
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4.30
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0.00%
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审稿时长
17 weeks
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