Dementia Assessment Using Mandarin Speech with an Attention-based Speech Recognition Encoder
Lin, Zih-Jyun, Chen, Yi-Ju, Kuo, Po-Chih, Huang, Likai, Hu, Chaur-Jong, Chen, Cheng-Yu
–arXiv.org Artificial Intelligence
Dementia diagnosis requires a series of different testing methods, which is complex and time-consuming. Early detection of dementia is crucial as it can prevent further deterioration of the condition. This paper utilizes a speech recognition model to construct a dementia assessment system tailored for Mandarin speakers during the picture description task. By training an attention-based speech recognition model on voice data closely resembling real-world scenarios, we have significantly enhanced the model's recognition capabilities. Subsequently, we extracted the encoder from the speech recognition model and added a linear layer for dementia assessment. We collected Mandarin speech data from 99 subjects and acquired their clinical assessments from a local hospital. We achieved an accuracy of 92.04% in Alzheimer's disease detection and a mean absolute error of 9% in clinical dementia rating score prediction.
arXiv.org Artificial Intelligence
Dec-15-2023
- Genre:
- Research Report (1.00)
- Industry:
- Health & Medicine > Therapeutic Area > Neurology > Dementia (1.00)
- Technology: