The purpose of this project is to develop a monitoring, modeling, and interactive recommendation solution (for caregivers) for in-home dementia patient care that focuses on caregiver-patient relationships. This includes monitoring for mood and stress and analyzing the significance of monitoring those attributes to dementia patient care and subsequent behavior dynamics between the patient and caregiver. In addition, novel and adaptive behavioral suggestions at the right moments aims at helping improve familial interactions related to caregiving, which over time should ameliorate the stressful effects of the patient's illness and reduce strain on caregivers. The technical solution consists of a core set of statistical learning based techniques for automated generation of specialized modules required by in-home dementia patient care. There are three main technical components in the solution. The first obtains textual content and prosody from voice and uses advanced machine learning techniques to create classification models. This approach not only monitors patients' behavior, but also caregivers', and infers the underlying dynamics of their interactions, such as changes in mood and stress. The second is the automated creation of classifiers and inference modules tailored to the particular patients and dementia conditions (such as different stages of dementia). The third is an adaptive recommendation system that closes the loop of an in-home behavior monitoring system.
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AI-rewrites the medical criteria so a patient or caregiver can understand them. Always confirm with the trial site.
Depression Anxiety Stress Scale (DASS)
Timeframe: Baseline, 4 months
Revised Memory and Behavior Problems Checklist (RMBPC)
Timeframe: Baseline, 4 months
Change in Caregiver Emotional Reactivity
Timeframe: Baseline, 4 months
Five Facet Mindfulness Questionnaire
Timeframe: Baseline, 4 months
Change in Caregiver Strain
Timeframe: Baseline, 4 months
Family Assessment Device (FAD)
Timeframe: Baseline, 4 months