McGorry Patrick D, Hartmann Jessica A, Spooner Rachael, Nelson Barnaby
Orygen, The National Centre of Excellence in Youth Mental Health, and Centre for Youth Mental Health, University of Melbourne, Parkville, Australia.
World Psychiatry. 2018 Jun;17(2):133-142. doi: 10.1002/wps.20514.
The "at risk mental state" for psychosis approach has been a catalytic, highly productive research paradigm over the last 25 years. In this paper we review that paradigm and summarize its key lessons, which include the valence of this phenotype for future psychosis outcomes, but also for comorbid, persistent or incident non-psychotic disorders; and the evidence that onset of psychotic disorder can at least be delayed in ultra high risk (UHR) patients, and that some full-threshold psychotic disorder may emerge from risk states not captured by UHR criteria. The paradigm has also illuminated risk factors and mechanisms involved in psychosis onset. However, findings from this and related paradigms indicate the need to develop new identification and diagnostic strategies. These findings include the high prevalence and impact of mental disorders in young people, the limitations of current diagnostic systems and risk identification approaches, the diffuse and unstable symptom patterns in early stages, and their pluripotent, transdiagnostic trajectories. The approach we have recently adopted has been guided by the clinical staging model and adapts the original "at risk mental state" approach to encompass a broader range of inputs and output target syndromes. This approach is supported by a number of novel modelling and prediction strategies that acknowledge and reflect the dynamic nature of psychopathology, such as dynamical systems theory, network theory, and joint modelling. Importantly, a broader transdiagnostic approach and enhancing specific prediction (profiling or increasing precision) can be achieved concurrently. A holistic strategy can be developed that applies these new prediction approaches, as well as machine learning and iterative probabilistic multimodal models, to a blend of subjective psychological data, physical disturbances (e.g., EEG measures) and biomarkers (e.g., neuroinflammation, neural network abnormalities) acquired through fine-grained sequential or longitudinal assessments. This strategy could ultimately enhance our understanding and ability to predict the onset, early course and evolution of mental ill health, further opening pathways for preventive interventions.
在过去25年里,精神病的“风险精神状态”方法一直是一种具有催化作用、高产的研究范式。在本文中,我们回顾了该范式并总结了其关键经验教训,其中包括这种表型对未来精神病结局的重要性,以及对共病、持续性或新发非精神病性障碍的重要性;还有证据表明,在超高风险(UHR)患者中,精神病性障碍的发作至少可以延迟,并且一些完全阈值的精神病性障碍可能源自UHR标准未涵盖的风险状态。该范式还阐明了精神病发作所涉及的风险因素和机制。然而,来自该范式及相关范式的研究结果表明,需要开发新的识别和诊断策略。这些研究结果包括精神障碍在年轻人中的高患病率和影响、当前诊断系统和风险识别方法的局限性、早期阶段症状模式的弥散性和不稳定性,以及它们的多能性、跨诊断轨迹。我们最近采用的方法以临床分期模型为指导,并对最初的“风险精神状态”方法进行了调整,以涵盖更广泛的输入和输出目标综合征。这种方法得到了一些新颖的建模和预测策略的支持,这些策略承认并反映了精神病理学的动态性质,如动力系统理论、网络理论和联合建模。重要的是,可以同时实现更广泛的跨诊断方法和提高特定预测(剖析或提高精度)。可以制定一种整体策略,将这些新的预测方法以及机器学习和迭代概率多模态模型应用于通过细粒度顺序或纵向评估获得的主观心理数据、身体干扰(如脑电图测量)和生物标志物(如神经炎症神经网络异常)的混合数据。这种策略最终可以增强我们对精神疾病发作、早期病程和演变的理解和预测能力,进一步为预防性干预开辟道路。