Predicting Working Memory in Healthy Older Adults Using Real-Life Language and Social Context Information: A Machine Learning Approach.
Andrea FerrarioMinxia LuoAngelina J PolsinelliSuzanne A MoseleyMatthias R MehlKristina Y YordanovaMike G MartinBurcu DemirayPublished in: JMIR aging (2022)
The results suggest that machine learning and NLP may support the prediction of working memory using, in particular, linguistic measures and social context information extracted from the everyday conversations of healthy older adults. Our findings may support the design of an early warning system to be used in longitudinal studies that collects cognitive ability scores and records real-life conversations unobtrusively. This system may support the timely detection of early cognitive decline. In particular, the use of a privacy-sensitive passive monitoring technology would allow for the design of a program of interventions to enable strategies and treatments to decrease or avoid early cognitive decline.
Keyphrases
- working memory
- cognitive decline
- machine learning
- mild cognitive impairment
- physical activity
- transcranial direct current stimulation
- health information
- big data
- attention deficit hyperactivity disorder
- healthcare
- mental health
- artificial intelligence
- autism spectrum disorder
- advance care planning
- quality improvement
- deep learning
- cross sectional
- social media
- case control