Marquand Andre F, Rezek Iead, Buitelaar Jan, Beckmann Christian F
Donders Centre for Cognitive Neuroimaging, Donders Institute for Brain, Cognition and Behaviour, Radboud University, Nijmegen, The Netherlands; Department of Cognitive Neuroscience, Radboud University Medical Centre, Nijmegen, The Netherlands; Department of Neuroimaging, Centre for Neuroimaging Sciences, Institute of Psychiatry, King's College London, London, United Kingdom.
Schlumberger Gould Research Center, Cambridge, United Kingdom.
Biol Psychiatry. 2016 Oct 1;80(7):552-61. doi: 10.1016/j.biopsych.2015.12.023. Epub 2016 Jan 6.
Despite many successes, the case-control approach is problematic in biomedical science. It introduces an artificial symmetry whereby all clinical groups (e.g., patients and control subjects) are assumed to be well defined, when biologically they are often highly heterogeneous. By definition, it also precludes inference over the validity of the diagnostic labels. In response, the National Institute of Mental Health Research Domain Criteria proposes to map relationships between symptom dimensions and broad behavioral and biological domains, cutting across diagnostic categories. However, to date, Research Domain Criteria have prompted few methods to meaningfully stratify clinical cohorts.
We introduce normative modeling for parsing heterogeneity in clinical cohorts, while allowing predictions at an individual subject level. This approach aims to map variation within the cohort and is distinct from, and complementary to, existing approaches that address heterogeneity by employing clustering techniques to fractionate cohorts. To demonstrate this approach, we mapped the relationship between trait impulsivity and reward-related brain activity in a large healthy cohort (N = 491).
We identify participants who are outliers within this distribution and show that the degree of deviation (outlier magnitude) relates to specific attention-deficit/hyperactivity disorder symptoms (hyperactivity, but not inattention) on the basis of individualized patterns of abnormality.
Normative modeling provides a natural framework to study disorders at the individual participant level without dichotomizing the cohort. Instead, disease can be considered as an extreme of the normal range or as-possibly idiosyncratic-deviation from normal functioning. It also enables inferences over the degree to which behavioral variables, including diagnostic labels, map onto biology.
尽管取得了许多成功,但病例对照方法在生物医学科学中存在问题。它引入了一种人为的对称性,即假定所有临床组(如患者和对照对象)都定义明确,而实际上从生物学角度来看,它们往往高度异质。根据定义,它还排除了对诊断标签有效性的推断。作为回应,美国国立精神卫生研究所的研究领域标准提议描绘症状维度与广泛的行为和生物学领域之间的关系,跨越诊断类别。然而,迄今为止,研究领域标准几乎没有促使产生有意义地对临床队列进行分层的方法。
我们引入规范建模来解析临床队列中的异质性,同时允许在个体受试者层面进行预测。这种方法旨在描绘队列中的变异,与通过聚类技术对队列进行分割来解决异质性的现有方法不同且互补。为了证明这种方法,我们在一个大型健康队列(N = 491)中描绘了特质冲动性与奖励相关脑活动之间的关系。
我们识别出该分布中的异常值参与者,并表明基于个体异常模式,偏差程度(异常值大小)与特定的注意力缺陷多动障碍症状(多动,但不包括注意力不集中)相关。
规范建模提供了一个自然框架,可在不将队列二分的情况下在个体参与者层面研究疾病。相反,疾病可被视为正常范围的极端情况或与正常功能的可能特殊偏差。它还能够推断包括诊断标签在内的行为变量与生物学的映射程度。