Holmes Ashley A, Tripathi Shikha, Katz Emily, Mondesire-Crump Ijah, Mahajan Rahul, Ritter Aaron, Arroyo-Gallego Teresa, Giancardo Luca
nQ Medical, Cambridge, MA 02142, USA.
Center for Precision Health, School of Biomedical Informatics, University of Texas Health Science Center at Houston, Houston, TX 77030, USA.
Brain Commun. 2022 Jul 28;4(4):fcac194. doi: 10.1093/braincomms/fcac194. eCollection 2022.
Measuring cognitive function is essential for characterizing brain health and tracking cognitive decline in Alzheimer's Disease and other neurodegenerative conditions. Current tools to accurately evaluate cognitive impairment typically rely on a battery of questionnaires administered during clinical visits which is essential for the acquisition of repeated measurements in longitudinal studies. Previous studies have shown that the remote data collection of passively monitored daily interaction with personal digital devices can measure motor signs in the early stages of synucleinopathies, as well as facilitate longitudinal patient assessment in the real-world scenario with high patient compliance. This was achieved by the automatic discovery of patterns in the time series of keystroke dynamics, i.e. the time required to press and release keys, by machine learning algorithms. In this work, our hypothesis is that the typing patterns generated from user-device interaction may reflect relevant features of the effects of cognitive impairment caused by neurodegeneration. We use machine learning algorithms to estimate cognitive performance through the analysis of keystroke dynamic patterns that were extracted from mechanical and touchscreen keyboard use in a dataset of cognitively normal ( = 39, 51% male) and cognitively impaired subjects ( = 38, 60% male). These algorithms are trained and evaluated using a novel framework that integrates items from multiple neuropsychological and clinical scales into cognitive subdomains to generate a more holistic representation of multifaceted clinical signs. In our results, we see that these models based on typing input achieve moderate correlations with verbal memory, non-verbal memory and executive function subdomains [Spearman's between 0.54 ( < 0.001) and 0.42 ( < 0.001)] and a weak correlation with language/verbal skills [Spearman's 0.30 ( < 0.05)]. In addition, we observe a moderate correlation between our typing-based approach and the Total Montreal Cognitive Assessment score [Spearman's 0.48 ( < 0.001)]. Finally, we show that these machine learning models can perform better by using our subdomain framework that integrates the information from multiple neuropsychological scales as opposed to using the individual items that make up these scales. Our results support our hypothesis that typing patterns are able to reflect the effects of neurodegeneration in mild cognitive impairment and Alzheimer's disease and that this new subdomain framework both helps the development of machine learning models and improves their interpretability.
测量认知功能对于表征大脑健康以及追踪阿尔茨海默病和其他神经退行性疾病中的认知衰退至关重要。当前准确评估认知障碍的工具通常依赖于在临床就诊期间进行的一系列问卷调查,这对于纵向研究中获取重复测量数据至关重要。先前的研究表明,通过个人数字设备被动监测日常互动的远程数据收集可以测量突触核蛋白病早期的运动体征,并且在现实场景中以高患者依从性促进纵向患者评估。这是通过机器学习算法自动发现按键动力学时间序列中的模式来实现的,即按下和释放按键所需的时间。在这项工作中,我们的假设是用户与设备交互产生的打字模式可能反映神经退行性变引起的认知障碍影响的相关特征。我们使用机器学习算法通过分析从认知正常(n = 39,51%为男性)和认知受损受试者(n = 38,60%为男性)数据集中机械键盘和触摸屏键盘使用中提取的按键动态模式来估计认知表现。这些算法使用一个新颖的框架进行训练和评估,该框架将多个神经心理学和临床量表的项目整合到认知子领域中,以生成多方面临床体征的更全面表示。在我们的结果中,我们看到基于打字输入的这些模型与言语记忆、非言语记忆和执行功能子领域具有中等相关性[斯皮尔曼相关系数在0.54(p < 0.001)和0.42(p < 0.001)之间],与语言/言语技能具有弱相关性[斯皮尔曼相关系数为0.30(p < 0.05)]。此外,我们观察到基于打字的方法与蒙特利尔认知评估总分之间存在中等相关性[斯皮尔曼相关系数为0.48(p < 0.001)]。最后,我们表明,与使用构成这些量表的单个项目相比,使用我们整合多个神经心理学量表信息的子领域框架,这些机器学习模型可以表现得更好。我们的结果支持了我们的假设,即打字模式能够反映轻度认知障碍和阿尔茨海默病中神经退行性变的影响,并且这个新的子领域框架既有助于机器学习模型的开发,又提高了它们的可解释性。