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Re-visiting the nature and relationships between neurological signs and neurocognitive functions in first-episode schizophrenia: An invariance model across time

机译:重新访问第一集中精神分裂症中神经症状与神经认知功能的性质和关系:跨时间的不变模型

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The present study examined different types of neurological signs in patients with first-episode schizophrenia and their relationships with neurocognitive functions. Both cross-sectional and longitudinal designs were adopted with the use of the abridged Cambridge Neurological Inventory which comprises items capturing motor coordination, sensory integration and disinhibition. A total of 157 patients with first-episode schizophrenia were assessed at baseline and 101 of them were re-assessed at six-month interval. A structural equation model (SEM) with invariance model across time was used for data analysis. The model fitted well with the data at baseline assessment, X^2(21)?=?21.78, p?=?0.413, NFI?=?0.95, NNFI?=?1.00, CFI?=?1.00, IFI?=?1.00, RMSEA?=?0.015. Subsequent SEM analysis with invariance model at six-month interval also demonstrated the same stable pattern across time and showed strong measurement invariance and structure invariance across time. Our findings suggest that neurological signs capture more or less the same construct captured by conventional neurocognitive tests in patients with schizophrenia. The measurement and structure of these relationships appear to be stable over time.
机译:本研究检测了患有患者的患者的不同类型的神经学症状及其与神经认知功能的关系。使用夹持剑桥神经系统采用横截面和纵向设计,包括捕获电动机协调,感官集成和禁止的物品。在基线中评估了157名患有的一集精神分裂症,并且在六个月的间隔重新评估其中101例。跨时间跨时间的结构方程模型(SEM)用于数据分析。该模型与基线评估的数据很好,x ^ 2(21)?=?21.78,p?=?0.413,nfi?=?0.95,nnfi?=?1.00,cfi?=?1.00,ifi?=? 1.00,rmsea?=?0.015。随后的SEM分析六个月间隔的不变模型也在时间上展示了相同的稳定模式,并在时间上显示了强烈的测量不变性和结构不变性。我们的研究结果表明,神经迹象捕获或多或少地通过精神分裂症患者捕获的常规神经认知试验捕获的相同构建体。这些关系的测量和结构似乎随着时间的推移稳定。

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