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偏执型和非偏执型精神分裂症的神经生物学差异存在吗?双相情感障碍-精神分裂症网络中间表型研究的结果。

Do neurobiological differences exist between paranoid and non-paranoid schizophrenia? Findings from the bipolar schizophrenia network on intermediate phenotypes study.

机构信息

Department of Psychiatry, Beth Israel Deaconess Medical Center, Boston, MA, United States of America.

Department of Psychiatry, Beth Israel Deaconess Medical Center, Boston, MA, United States of America; Department of Psychiatry, Harvard Medical School, Boston, MA, United States of America.

出版信息

Schizophr Res. 2020 Sep;223:96-104. doi: 10.1016/j.schres.2020.02.011. Epub 2020 Jun 2.

DOI:10.1016/j.schres.2020.02.011
PMID:32507376
Abstract

Subtypes of schizophrenia, constructed using clinical phenomenology to resolve illness heterogeneity, have faced criticism due to overlapping symptomatology and longitudinal instability; they were therefore dropped from the Diagnostic Statistical Manual-5. Cognitive and imaging findings comparing paranoid (P-SZ) and non-paranoid (disorganized, residual and undifferentiated; NP-SZ) schizophrenia have been limited due to small sample sizes. We assessed P-SZ and NP-SZ using symptomatology, cognition and brain structure and predicted that there would be few neurobiological differences. P-SZ (n = 237), NP-SZ (n = 127) and controls (n = 430) were included from a multi-site study. In a subset of this sample, structural imaging measures (P-SZ, n = 133; NP-SZ, n = 67; controls, n = 310) were calculated using Freesurfer 6.0. Group contrasts were run using analysis of covariance, controlling for age, sex, race and site, p-values were corrected using False Discovery Rate (FDR) and were repeated excluding the residual subtype. Compared to NP-SZ (with and without the residual subtype), P-SZ displayed fewer negative symptoms, faster speed of processing, larger bilateral hippocampus, right amygdala and their subfield volumes. Additionally, NP-SZ (with residual subtype) displayed fewer depressive symptoms and higher left transverse temporal cortical thickness (CT) but NP-SZ without residual subtype showed lower GAF scores and worse digit sequencing compared to P-SZ. No differences in positive symptoms and functioning (global or social) were detected. Subtle but significant differences were seen in cognition, symptoms, CT and subcortical volumes between P-SZ and NP-SZ. While the magnitude of these differences is not large enough to justify them as distinct categories, the paranoid- nonparanoid distinction in schizophrenia merits further investigation.

摘要

精神分裂症的亚型是使用临床现象学构建的,用于解决疾病异质性,但由于症状重叠和纵向不稳定,受到了批评;因此,它们已从《诊断与统计手册-5》中删除。由于样本量较小,比较偏执型(P-SZ)和非偏执型(混乱型、残留型和未分化型;NP-SZ)精神分裂症的认知和影像学发现一直受到限制。我们使用症状学、认知和大脑结构来评估 P-SZ 和 NP-SZ,并预测两者之间不会存在太多神经生物学差异。这项多中心研究纳入了 P-SZ(n=237)、NP-SZ(n=127)和对照组(n=430)。在该样本的一部分中,使用 Freesurfer 6.0 计算了结构影像学测量值(P-SZ,n=133;NP-SZ,n=67;对照组,n=310)。使用协方差分析进行组间比较,控制年龄、性别、种族和地点,使用 False Discovery Rate(FDR)校正 p 值,并排除残留亚型重复进行分析。与 NP-SZ(包括和不包括残留亚型)相比,P-SZ 表现出较少的阴性症状、更快的处理速度、双侧海马体、右侧杏仁核及其亚区体积更大。此外,NP-SZ(包括残留亚型)表现出较少的抑郁症状和更高的左侧横颞皮质厚度(CT),但没有残留亚型的 NP-SZ 表现出较低的 GAF 评分和较差的数字排序,与 P-SZ 相比。在阳性症状和功能(整体或社交)方面未发现差异。在认知、症状、CT 和皮质下体积方面,P-SZ 和 NP-SZ 之间存在细微但显著的差异。虽然这些差异的幅度不足以将它们作为不同的类别来证明,但精神分裂症中的偏执-非偏执区分值得进一步研究。

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