Kalinich Mark, Ebrahim Senan, Hays Ryan, Melcher Jennifer, Vaidyam Aditya, Torous John
Harvard Medical School, Boston, MA, USA.
Watershed Informatics, Inc., Boston, MA, USA.
Schizophr Res Cogn. 2021 Oct 1;27:100216. doi: 10.1016/j.scog.2021.100216. eCollection 2022 Mar.
Cognitive impairment in schizophrenia remains a chief source of functional disability and impairment, despite the potential for effective interventions. This is in part related to a lack of practical and easy to administer screening strategies that can identify and help triage cognitive impairment. This study explores how smartphone-based assessments may help address this need.
In this study, data was analyzed from 25 subjects with schizophrenia and 30 controls who engaged with a gamified mobile phone version of the Trails-B cognitive assessment in their everyday life over 90 days and complete a clinical neurocognitive testing battery at the beginning and end of the study. Machine learning was applied to the resulting dataset to predict disease status and neurocognitive function and understand which features were most important for accurate prediction.
The generated models predicted disease status with high accuracy using static features alone (AUC = 0.94), with the total number of items collected and the total duration of interaction with the application most predictive. The addition of temporal data statistically significantly improved performance (AUC = 0.95), with the amount of idle time a significant new predictor. Correlates of sleep dysfunction were also predicted (AUC = 0.80), with similar feature importance.
Machine learning enabled the highly accurate identification of subjects with schizophrenia versus healthy controls, and the accurate prediction of neurocognitive function. The addition of temporal data significantly improved the performance of these models, underscoring the value of smartphone-based assessments of cognition as a practical tool for assessing cognition.
尽管有有效的干预措施,但精神分裂症中的认知障碍仍然是功能残疾和损伤的主要来源。这部分与缺乏实用且易于实施的筛查策略有关,这些策略可以识别并帮助对认知障碍进行分类。本研究探讨基于智能手机的评估如何有助于满足这一需求。
在本研究中,分析了25名精神分裂症患者和30名对照的数据,这些参与者在90天内的日常生活中使用了游戏化手机版的连线测验-B认知评估,并在研究开始和结束时完成了临床神经认知测试组合。将机器学习应用于所得数据集,以预测疾病状态和神经认知功能,并了解哪些特征对于准确预测最为重要。
生成的模型仅使用静态特征就能高精度地预测疾病状态(曲线下面积=0.94),收集的项目总数和与应用程序交互的总时长最具预测性。添加时间数据在统计学上显著提高了性能(曲线下面积=0.95),空闲时间量是一个重要的新预测指标。睡眠功能障碍的相关因素也能被预测(曲线下面积=0.80),特征重要性相似。
机器学习能够高度准确地识别精神分裂症患者与健康对照,并准确预测神经认知功能。添加时间数据显著提高了这些模型的性能,强调了基于智能手机的认知评估作为评估认知的实用工具的价值。