Bipolar Disorders Program, Institute of Neurosciences, Hospital Clínic, University of Barcelona, IDIBAPS, CIBERSAM, Barcelona, Spain.
J Affect Disord. 2013 Jan 10;144(1-2):65-71. doi: 10.1016/j.jad.2012.06.005. Epub 2012 Aug 3.
The functional outcome of Bipolar Disorder (BD) is highly variable. This variability has been attributed to multiple demographic, clinical and cognitive factors. The critical next step is to identify combinations of predictors that can be used to specify prognostic subtypes, thus providing a basis for a staging classification in BD.
Latent Class Analysis was applied to multiple predictors of functional outcome in a sample of 106 remitted adults with BD.
We identified two subtypes of patients presenting "good" (n=50; 47.6%) and "poor" (n=56; 52.4%) outcome. Episode density, level of residual depressive symptoms, estimated verbal intelligence and inhibitory control emerged as the most significant predictors of subtype membership at the p<0.05 level. Their odds ratio (OR) and confidence interval (CI) with reference to the "good" outcome group were: episode density (OR=4.622, CI 1.592-13.418), level of residual depressive symptoms (OR=1.543, CI 1.210-1.969), estimated verbal intelligence (OR=0.969; CI 0.945-0.995), and inhibitory control (OR=0.771, CI 0.656-0.907). Age, age of onset and duration of illness were comparable between prognostic groups.
The longitudinal stability or evolution of the subtypes was not tested.
Our findings provide the first empirically derived staging classification of BD based on two underlying dimensions, one for illness severity and another for cognitive function. This approach can be further developed by expanding the dimensions included and testing the reproducibility and prospective prognostic value of the emerging classes. Developing a disease staging system for BD will allow individualised treatment planning for patients and selection of more homogeneous patient groups for research purposes.
双相情感障碍(BD)的功能结果高度可变。这种可变性归因于多个人口统计学、临床和认知因素。下一步的关键是确定可以用于指定预后亚型的预测因子组合,从而为 BD 提供分期分类的基础。
我们对 106 名缓解期成人 BD 患者的多个功能结果预测因子进行了潜在类别分析。
我们确定了两种表现出“良好”(n=50;47.6%)和“不良”(n=56;52.4%)结局的患者亚型。发作密度、残留抑郁症状水平、估计言语智力和抑制控制是预测亚型归属的最重要预测因子,p<0.05 水平。它们与“良好”结局组的比值比(OR)和置信区间(CI)为:发作密度(OR=4.622,CI 1.592-13.418)、残留抑郁症状水平(OR=1.543,CI 1.210-1.969)、估计言语智力(OR=0.969;CI 0.945-0.995)和抑制控制(OR=0.771,CI 0.656-0.907)。预后组之间的年龄、发病年龄和病程相似。
未测试亚型的纵向稳定性或演变。
我们的发现提供了第一个基于两个潜在维度的 BD 分期分类,一个用于疾病严重程度,另一个用于认知功能。通过扩展包含的维度并测试新兴类别的重现性和前瞻性预后价值,可以进一步开发这种方法。为 BD 开发疾病分期系统将允许为患者制定个体化的治疗计划,并为研究目的选择更同质的患者群体。