Christian Dansereau, Perceiv Research Inc, Montréal, Canada,
J Prev Alzheimers Dis. 2022;9(3):400-409. doi: 10.14283/jpad.2022.49.
A key issue to Alzheimer's disease clinical trial failures is poor participant selection. Participants have heterogeneous cognitive trajectories and many do not decline during trials, which reduces a study's power to detect treatment effects. Trials need enrichment strategies to enroll individuals who are more likely to decline.
To develop machine learning models to predict cognitive trajectories in participants with early Alzheimer's disease and presymptomatic individuals over 24 and 48 months respectively.
Prognostic machine learning models were trained from a combination of demographics, cognitive tests, APOE genotype, and brain imaging data.
Data from the Alzheimer's Disease Neuroimaging Initiative (ADNI), National Alzheimer's Coordinating Center (NACC), Open Access Series of Imaging Studies (OASIS-3), PharmaCog, and a Phase 3 clinical trial in early Alzheimer's disease were used for this study.
A total of 2098 participants who had demographics, cognitive tests, APOE genotype, and brain imaging data, as well as follow-up visits for 24-48 months were included.
Baseline magnetic resonance imaging, cognitive tests, demographics, and APOE genotype were used to separate decliners, defined as individuals whose CDR-Sum of Boxes scores increased during a predefined time window, from stable individuals. A prognostic model to predict decline at 24 months in early Alzheimer's disease was trained on 1151 individuals who had baseline diagnoses of mild cognitive impairment and Alzheimer's dementia from ADNI and NACC. This model was validated on 115 individuals from a placebo arm of a Phase 3 clinical trial and 76 individuals from the PharmaCog dataset. A second prognostic model to predict decline at 48 months in presymptomatic populations was trained on 628 individuals from ADNI and NACC who were cognitively unimpaired at baseline. This model was validated on 128 individuals from OASIS-3.
The models achieved up to 79% area under the curve (cross-validated and out-of-sample). Power analyses showed that using prognostic models to recruit enriched cohorts of predicted decliners can reduce clinical trial sample sizes by as much as 51% while maintaining the same detection power.
Prognostic tools for predicting cognitive decline and enriching clinical trials with participants at the highest risk of decline can improve trial quality, derisk endpoint failures, and accelerate therapeutic development in Alzheimer's disease.
阿尔茨海默病临床试验失败的一个关键问题是参与者选择不当。参与者的认知轨迹存在异质性,许多人在试验过程中没有下降,这降低了研究检测治疗效果的能力。试验需要富集策略来招募更有可能下降的个体。
开发机器学习模型来预测早期阿尔茨海默病患者和无症状个体分别在 24 个月和 48 个月的认知轨迹。
从人口统计学、认知测试、APOE 基因型和脑成像数据的组合中训练预后机器学习模型。
本研究使用了来自阿尔茨海默病神经影像学倡议(ADNI)、国家阿尔茨海默病协调中心(NACC)、开放获取成像研究系列(OASIS-3)、PharmaCog 和早期阿尔茨海默病 3 期临床试验的数据。
共有 2098 名参与者,他们具有人口统计学、认知测试、APOE 基因型和脑成像数据,以及 24-48 个月的随访。
基线磁共振成像、认知测试、人口统计学和 APOE 基因型用于分离下降者,定义为在预定义时间窗口内 CDR-Sum of Boxes 评分增加的个体,与稳定个体区分开来。一个预测 24 个月早期阿尔茨海默病下降的预后模型是在 ADNI 和 NACC 中基线诊断为轻度认知障碍和阿尔茨海默病痴呆的 1151 名个体上进行训练的。该模型在 3 期临床试验安慰剂组的 115 名个体和 PharmaCog 数据集的 76 名个体上进行了验证。第二个预测无症状人群 48 个月下降的预后模型是在 ADNI 和 NACC 中基线认知正常的 628 名个体上进行训练的。该模型在 OASIS-3 中的 128 名个体上进行了验证。
该模型达到了高达 79%的曲线下面积(交叉验证和样本外)。功效分析表明,使用预后模型招募预测下降的高风险队列,可以将临床试验样本量减少多达 51%,同时保持相同的检测能力。
预测认知下降的预后工具和用最有可能下降的参与者富集临床试验,可以提高试验质量,降低终点失败的风险,并加速阿尔茨海默病的治疗开发。