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Schizophr Bull. 2013 Nov;39(6):1219-29. doi: 10.1093/schbul/sbs093. Epub 2012 Aug 27.
The utility of an endophenotype depends on its ability to reduce complex disorders into stable, genetically linked phenotypes. P50 and P300 event-related potential (ERP) measures are endophenotype candidates for schizophrenia; however, their abnormalities are broadly observed across neuropsychiatric disorders. This study examined the diagnostic efficiency of P50 and P300 in schizophrenia as compared with healthy and bipolar disorder samples. Supplemental ERP measures and a multivariate classification approach were evaluated as methods to improve specificity.
Diagnostic classification was first modeled in schizophrenia (SZ = 50) and healthy normal (HN = 50) samples using hierarchical logistic regression with predictors blocked by 4 levels of analysis: (1) P50 suppression, P300 amplitude, and P300 latency; (2) N100 amplitude; (3) evoked spectral power; and (4) P50 and P300 hemispheric asymmetry. The optimal model was cross-validated in a holdout sample (SZ = 34, HN = 31) and tested against a bipolar (BP = 50) sample.
P50 and P300 endophenotypes classified SZ from HN with 71% accuracy (sensitivity = .70, specificity = .72) but did not differentiate SZ from BP above chance level. N100 and spectral power measures improved classification accuracy of SZ vs HN to 79% (sensitivity = .78, specificity = .80) and SZ vs BP to 72% (sensitivity = .74, specificity = .70). Cross validation analyses supported the stability of these models.
Although traditional P50 and P300 measures failed to differentiate schizophrenia from bipolar participants, N100 and evoked spectral power measures added unique variance to classification models and improved accuracy to nearly the same level achieved in comparison of schizophrenia to healthy individuals.
内表型的效用取决于其将复杂疾病转化为稳定的、遗传相关的表型的能力。P50 和 P300 事件相关电位(ERP)测量是精神分裂症的候选内表型;然而,它们的异常广泛存在于神经精神疾病中。本研究比较了精神分裂症、健康对照和双相障碍三组被试,检验了 P50 和 P300 作为诊断指标的效率。此外,还评估了补充 ERP 测量和多变量分类方法,以提高特异性。
采用分层逻辑回归,以预测因子按 4 个分析水平分组的方式,对精神分裂症(SZ = 50)和健康对照组(HN = 50)的样本进行诊断分类。(1)P50 抑制、P300 波幅和 P300 潜伏期;(2)N100 波幅;(3)诱发电位谱功率;(4)P50 和 P300 半球不对称性。最优模型在一个独立的验证样本(SZ = 34,HN = 31)中进行了交叉验证,并与双相障碍(BP = 50)样本进行了比较。
P50 和 P300 内表型将 SZ 与 HN 分类的准确率为 71%(敏感性=0.70,特异性=0.72),但无法将 SZ 与 BP 区分开。N100 和谱功率测量提高了 SZ 与 HN 之间分类的准确性到 79%(敏感性=0.78,特异性=0.80),SZ 与 BP 之间的分类准确性到 72%(敏感性=0.74,特异性=0.70)。交叉验证分析支持这些模型的稳定性。
尽管传统的 P50 和 P300 测量无法将精神分裂症与双相障碍患者区分开来,但 N100 和诱发电位谱功率测量为分类模型增加了独特的变异性,并将准确性提高到与精神分裂症与健康个体比较时的水平相近。