Alzheimer Centre Limburg, School for Mental Health and Neuroscience, Maastricht University, Maastricht, The Netherlands.
Maastricht University Medical Centre+ (MUMC+), Department of Psychiatry & Psychology, Maastricht, The Netherlands.
J Alzheimers Dis. 2024;97(1):179-191. doi: 10.3233/JAD-230608.
Previous research has shown that verbal memory accurately measures cognitive decline in the early phases of neurocognitive impairment. Automatic speech recognition from the verbal learning task (VLT) can potentially be used to differentiate between people with and without cognitive impairment.
Investigate whether automatic speech recognition (ASR) of the VLT is reliable and able to differentiate between subjective cognitive decline (SCD) and mild cognitive impairment (MCI).
The VLT was recorded and processed via a mobile application. Following, verbal memory features were automatically extracted. The diagnostic performance of the automatically derived features was investigated by training machine learning classifiers to distinguish between participants with SCD versus MCI/dementia.
The ICC for inter-rater reliability between the clinical and automatically derived features was 0.87 for the total immediate recall and 0.94 for the delayed recall. The full model including the total immediate recall, delayed recall, recognition count, and the novel verbal memory features had an AUC of 0.79 for distinguishing between participants with SCD versus MCI/dementia. The ten best differentiating VLT features correlated low to moderate with other cognitive tests such as logical memory tasks, semantic verbal fluency, and executive functioning.
The VLT with automatically derived verbal memory features showed in general high agreement with the clinical scoring and distinguished well between SCD and MCI/dementia participants. This might be of added value in screening for cognitive impairment.
先前的研究表明,言语记忆能准确衡量神经认知障碍早期阶段的认知下降。言语学习任务(VLT)的自动语音识别(ASR)有可能用于区分认知障碍患者和非认知障碍患者。
探究 VLT 的自动语音识别(ASR)是否可靠,是否能够区分主观认知下降(SCD)和轻度认知障碍(MCI)。
通过移动应用程序记录和处理 VLT,然后自动提取言语记忆特征。通过训练机器学习分类器来区分 SCD 与 MCI/痴呆患者,研究自动提取特征的诊断性能。
临床和自动衍生特征之间的组内相关性 ICC 为总即刻回忆的 0.87,延迟回忆的 0.94。总即刻回忆、延迟回忆、识别计数以及新的言语记忆特征的完整模型在区分 SCD 与 MCI/痴呆患者方面的 AUC 为 0.79。区分 VLT 特征最好的 10 个特征与其他认知测试(如逻辑记忆任务、语义言语流畅性和执行功能)相关度低至中等。
具有自动衍生言语记忆特征的 VLT 通常与临床评分高度一致,并能很好地区分 SCD 和 MCI/痴呆患者。这可能对认知障碍的筛查有额外的价值。