Birkenbihl Colin, Cuppels Madison, Boyle Rory T, Klinger Hannah M, Langford Oliver, Coughlan Gillian T, Properzi Michael J, Chhatwal Jasmeer, Price Julie C, Schultz Aaron P, Rentz Dorene M, Amariglio Rebecca E, Johnson Keith A, Gottesman Rebecca F, Mukherjee Shubhabrata, Maruff Paul, Lim Yen Ying, Masters Colin L, Beiser Alexa, Resnick Susan M, Hughes Timothy M, Burnham Samantha, Tunali Ilke, Landau Susan, Cohen Ann D, Johnson Sterling C, Betthauser Tobey J, Seshadri Sudha, Lockhart Samuel N, O'Bryant Sid E, Vemuri Prashanthi, Sperling Reisa A, Hohman Timothy J, Donohue Michael C, Buckley Rachel F
Department of Neurology, Massachusetts General Hospital, Harvard Medical School, Boston, MA 02114, USA.
Penn Frontotemporal Degeneration Center, Department of Neurology, Perelman School of Medicine, University of Pennsylvania.
medRxiv. 2024 Sep 18:2024.08.19.24312256. doi: 10.1101/2024.08.19.24312256.
Cognitive resilience describes the phenomenon of individuals evading cognitive decline despite prominent Alzheimer's disease neuropathology. Operationalization and measurement of this latent construct is non-trivial as it cannot be directly observed. The residual approach has been widely applied to estimate CR, where the degree of resilience is estimated through a linear model's residuals. We demonstrate that this approach makes specific, uncontrollable assumptions and likely leads to biased and erroneous resilience estimates. We propose an alternative strategy which overcomes the standard approach's limitations using machine learning principles. Our proposed approach makes fewer assumptions about the data and construct to be measured and achieves better estimation accuracy on simulated ground-truth data.
认知弹性描述了个体尽管存在显著的阿尔茨海默病神经病理学特征却仍能避免认知衰退的现象。这种潜在结构的操作化和测量并非易事,因为它无法直接观察到。残差法已被广泛应用于估计认知弹性,即通过线性模型的残差来估计弹性程度。我们证明,这种方法做出了特定的、无法控制的假设,并且可能导致有偏差和错误的弹性估计。我们提出了一种替代策略,该策略利用机器学习原理克服了标准方法的局限性。我们提出的方法对要测量的数据和结构做出的假设更少,并且在模拟的真实数据上实现了更好的估计精度。