Ramsay Ian S, Ma Sisi, Fisher Melissa, Loewy Rachel L, Ragland J Daniel, Niendam Tara, Carter Cameron S, Vinogradov Sophia
University of Minnesota, Department of Psychiatry, United States.
University of Minnesota, Department of Medicine, United States.
Schizophr Res Cogn. 2017 Nov 8;11:1-5. doi: 10.1016/j.scog.2017.10.001. eCollection 2018 Mar.
Predicting treatment outcomes in psychiatric populations remains a challenge, but is increasingly important in the pursuit of personalized medicine. Patients with schizophrenia have deficits in cognition, and targeted cognitive training (TCT) of auditory processing and working memory has been shown to improve some of these impairments; but little is known about the baseline patient characteristics predictive of cognitive improvement. Here we use a model selection and regression approach called least absolute shrinkage and selection operator (LASSO) to examine predictors of cognitive improvement in response to TCT for patients with recent onset schizophrenia. Forty-three individuals with recent onset schizophrenia randomized to undergo TCT were assessed at baseline on measures of cognition, symptoms, functioning, illness duration, and demographic variables. We carried out 10-fold cross-validation of LASSO for model selection and regression. We followed up on these results using linear models for statistical inference. No individual variable was found to correlate with improvement in global cognition using a Pearson correlation approach, and a linear model including all variables was also found not to be significant. However, the LASSO model identified baseline global cognition, education, and gender in a model predictive of improvement on global cognition following TCT. These findings offer guidelines for personalized approaches to cognitive training for patients with schizophrenia.
预测精神疾病患者的治疗结果仍然是一项挑战,但在追求个性化医疗的过程中变得越来越重要。精神分裂症患者存在认知缺陷,针对听觉处理和工作记忆的靶向认知训练(TCT)已被证明可以改善其中一些损伤;但对于预测认知改善的基线患者特征却知之甚少。在此,我们使用一种称为最小绝对收缩和选择算子(LASSO)的模型选择和回归方法,来研究近期发病的精神分裂症患者对TCT反应的认知改善预测因素。43名近期发病的精神分裂症患者被随机分配接受TCT,并在基线时对认知、症状、功能、病程和人口统计学变量进行评估。我们对LASSO进行了10折交叉验证以进行模型选择和回归。我们使用线性模型对这些结果进行后续统计推断。使用Pearson相关方法未发现单个变量与整体认知改善相关,并且包含所有变量的线性模型也被发现不显著。然而,LASSO模型在一个预测TCT后整体认知改善的模型中确定了基线整体认知、教育程度和性别。这些发现为精神分裂症患者认知训练的个性化方法提供了指导。