Dementia Research Centre, UCL Queen Square Institute Of Neurology, 8-11 Queen Square, London, WC1N 3AR, UK. antoinette.o'
UK Dementia Research Institute at UCL, UCL, London, UK. antoinette.o'
Alzheimers Res Ther. 2020 Oct 6;12(1):126. doi: 10.1186/s13195-020-00695-2.
Understanding the earliest manifestations of Alzheimer's disease (AD) is key to realising disease-modifying treatments. Advances in neuroimaging and fluid biomarkers have improved our ability to identify AD pathology in vivo. The critical next step is improved detection and staging of early cognitive change. We studied an asymptomatic familial Alzheimer's disease (FAD) cohort to characterise preclinical cognitive change.
Data included 35 asymptomatic participants at 50% risk of carrying a pathogenic FAD mutation. Participants completed a multi-domain neuropsychology battery. After accounting for sex, age and education, we used event-based modelling to estimate the sequence of cognitive decline in presymptomatic FAD, and uncertainty in the sequence. We assigned individuals to their most likely model stage of cumulative cognitive decline, given their data. Linear regression of estimated years to symptom onset against model stage was used to estimate the timing of preclinical cognitive decline.
Cognitive change in mutation carriers was first detected in measures of accelerated long-term forgetting, up to 10 years before estimated symptom onset. Measures of subjective cognitive decline also revealed early abnormalities. Our data-driven model demonstrated subtle cognitive impairment across multiple cognitive domains in clinically normal individuals on the AD continuum.
Data-driven modelling of neuropsychological test scores has potential to differentiate cognitive decline from cognitive stability and to estimate a fine-grained sequence of decline across cognitive domains and functions, in the preclinical phase of Alzheimer's disease. This can improve the design of future presymptomatic trials by informing enrichment strategies and guiding the selection of outcome measures.
了解阿尔茨海默病(AD)的最早表现是实现疾病修饰治疗的关键。神经影像学和液生物标志物的进步提高了我们在体内识别 AD 病理学的能力。关键的下一步是提高对早期认知变化的检测和分期。我们研究了一个无症状的家族性阿尔茨海默病(FAD)队列,以描述临床前认知变化。
数据包括 35 名无症状参与者,他们有 50%的携带致病性 FAD 突变的风险。参与者完成了多项认知测试。在考虑了性别、年龄和教育程度后,我们使用基于事件的模型来估计无症状 FAD 认知下降的顺序及其不确定性。我们根据他们的数据,将个体分配到他们最有可能的累积认知下降模型阶段。对估计的发病前认知下降与模型阶段的线性回归,用于估计临床前认知下降的时间。
突变携带者的认知变化首先在加速的长期遗忘测量中被检测到,这比预计的发病时间早了 10 年。主观认知下降的测量也显示出早期异常。我们的数据驱动模型在 AD 连续体上的临床正常个体中,在多个认知领域显示出微妙的认知障碍。
神经心理学测试分数的数据分析建模有可能将认知下降与认知稳定区分开来,并估计认知领域和功能的精细下降顺序,在阿尔茨海默病的临床前阶段。这可以通过告知富集策略和指导选择结果测量来提高未来发病前试验的设计。