Robert A McCutcheon, Richard S E Keefe, Philip M McGuire, Andre Marquand
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引用次数: 0
Abstract
Importance: Cognitive functioning is associated with various factors, such as age, sex, education, and childhood adversity, and is impaired in people with psychosis. In addition to specific effects of the disorder, cognitive impairments may reflect a greater exposure to general risk factors for poor cognition.
Objective: To determine the extent that impairments in cognition in psychosis reflect risk factor exposures.
Design, setting, and participants: This cross-sectional study examined the relationship between exposures and cognitive function using data from the Bipolar-Schizophrenia Network on Intermediate Phenotypes studies 1 and 2 across 6 sites. Participants included healthy controls; patients with schizophrenia, schizoaffective disorder, or bipolar I disorder with psychosis; and relatives of patients. Predictive modeling was performed using extreme gradient boosting regression to train a composite cognitive score prediction model with nested cross-validation. Shapley additive explanations values were used to examine the relationship between exposures and cognitive function.
Exposure: Exposures were chosen based on associations with cognition previously identified: age, sex, race and ethnicity, childhood adversity, education, parental education, parental socioeconomic status, parental age at birth, substance use, antipsychotic dose, and diagnosis.
Main outcomes and measures: Cognition was assessed using the Brief Assessment of Cognition in Schizophrenia.
Results: A total of 3370 participants were included: 840 healthy controls, 709 patients with schizophrenia, 541 with schizoaffective disorder, 457 with bipolar I disorder with psychosis, and 823 relatives of patients. The mean (SD) age was 37.9 (13.3) years; 1887 were female (56%) and 1483 male (44%). The model predicted cognitive scores with high accuracy: out-of-sample Pearson correlation between predicted and observed cognitive composite score was r = 0.72 (SD = 0.03). Individuals with schizophrenia (z = -1.4), schizoaffective disorder (z = -1.2), and bipolar I disorder with psychosis (z = -0.5) all had significantly worse cognitive composite scores than controls. Factors other than diagnosis and medication accounted for much of this impairment (schizophrenia z = -0.73, schizoaffective disorder z = -0.64, bipolar I disorder with psychosis z = -0.13). Diagnosis accounted for a lesser proportion of this deficit (schizophrenia z = -0.29, schizoaffective disorder z = -0.15, bipolar I disorder with psychosis z = -0.13), and antipsychotic use accounted for a similar deficit across diagnostic groups (schizophrenia z = -0.37, schizoaffective disorder z = -0.33, bipolar I disorder with psychosis z = -0.26).
Conclusions and relevance: This study found that transdiagnostic factors accounted for a meaningful share of the variance in cognitive functioning in psychosis. A significant proportion of the cognitive impairment in psychosis may reflect factors relevant to cognitive functioning in the general population. When considering interventions, a diagnosis-agnostic, symptom-targeted approach may therefore be appropriate.
重要性:认知功能与年龄、性别、教育程度和童年逆境等多种因素有关,精神病患者的认知功能也会受损。除了精神障碍的特殊影响外,认知功能障碍还可能反映出患者更多地暴露于导致认知功能低下的一般风险因素:目的:确定精神病患者的认知障碍在多大程度上反映了所暴露的风险因素:这项横断面研究利用双相情感障碍-精神分裂症中间表型网络研究 1 和研究 2 在 6 个地点获得的数据,研究了暴露因素与认知功能之间的关系。参与者包括健康对照组;精神分裂症、分裂情感障碍或伴有精神病的双相情感障碍 I 型患者;以及患者亲属。预测建模采用极端梯度提升回归法,通过嵌套交叉验证训练综合认知分数预测模型。沙普利加法解释值用于检验暴露与认知功能之间的关系。暴露:暴露的选择基于之前确定的与认知相关的因素:年龄、性别、种族和民族、童年逆境、教育、父母教育、父母的社会经济地位、父母的出生年龄、药物使用、抗精神病药物剂量和诊断:认知能力采用精神分裂症认知能力简要评估进行评估:结果:共纳入 3370 名参与者:结果:共纳入了 3370 名参与者:840 名健康对照者、709 名精神分裂症患者、541 名分裂情感障碍患者、457 名躁狂 I 型精神障碍患者以及 823 名患者亲属。平均(标清)年龄为 37.9 (13.3) 岁;1887 名女性(占 56%),1483 名男性(占 44%)。该模型预测认知分数的准确性很高:预测认知综合分数与观察认知综合分数之间的样本外皮尔逊相关性为 r = 0.72(标度 = 0.03)。精神分裂症(z =-1.4)、分裂情感障碍(z =-1.2)和伴有精神病的双相情感障碍 I(z =-0.5)患者的认知综合评分均明显低于对照组。除诊断和药物治疗外,其他因素也是造成认知障碍的主要原因(精神分裂症 z = -0.73,分裂情感障碍 z = -0.64,伴有精神病的双相 I 型障碍 z = -0.13)。诊断在这一缺陷中所占比例较小(精神分裂症 z = -0.29,分裂情感性障碍 z = -0.15,Ⅰ型双相情感障碍伴有精神病 z =-0.13),而抗精神病药物的使用在各诊断组中造成的缺陷相似(精神分裂症 z = -0.37,分裂情感性障碍 z = -0.33,Ⅰ型双相情感障碍伴有精神病 z =-0.26):本研究发现,跨诊断因素在精神病认知功能的变异中占了相当大的比例。很大一部分精神病患者的认知功能障碍可能反映了与普通人群认知功能相关的因素。因此,在考虑干预措施时,以诊断为导向、以症状为目标的方法可能是合适的。
期刊介绍:
JAMA Psychiatry is a global, peer-reviewed journal catering to clinicians, scholars, and research scientists in psychiatry, mental health, behavioral science, and related fields. The Archives of Neurology & Psychiatry originated in 1919, splitting into two journals in 1959: Archives of Neurology and Archives of General Psychiatry. In 2013, these evolved into JAMA Neurology and JAMA Psychiatry, respectively. JAMA Psychiatry is affiliated with the JAMA Network, a group of peer-reviewed medical and specialty publications.