2021
DOI: 10.1002/alz.054233
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Non‐invasive AI model for human functional patterns recognition in IADLs

Abstract: Background Alzheimer's Disease (AD) diagnosis at early stages currently represents an important challenge for the scientific community, which is gradually accentuated due to the global perspective of population aging. Current clinical processes for the diagnosis of this disease are increasingly effective; these include invasive tests of nervous system biomarkers, which are complemented by non‐invasive tests of human cognitive and functional performance, such as the mini‐mental state examination and the analysi… Show more

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Cited by 3 publications
(3 citation statements)
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“…Lessons learned for those with cognitive impairment could apply to the broader older adult population studied within this work. Translating the prior and current work into a potential future line of investigation, the increased use of technology [42][43][44] (e.g. artificial intelligence, two-way text messaging) among older adults may pragmatically address identified barriers in this work by facilitating home review of discharge instructions, enabling access to outpatient follow-up clinical care, providing personalized physical activity guidance to overcome new limitations, and identifying assistive resources in the community for both family caregivers and older adults after an acute illness.…”
Section: Themementioning
confidence: 99%
“…Lessons learned for those with cognitive impairment could apply to the broader older adult population studied within this work. Translating the prior and current work into a potential future line of investigation, the increased use of technology [42][43][44] (e.g. artificial intelligence, two-way text messaging) among older adults may pragmatically address identified barriers in this work by facilitating home review of discharge instructions, enabling access to outpatient follow-up clinical care, providing personalized physical activity guidance to overcome new limitations, and identifying assistive resources in the community for both family caregivers and older adults after an acute illness.…”
Section: Themementioning
confidence: 99%
“…These were later fed into the human functional pattern recognition process. This work was inspired by a previous work done by our group 9 , where human biomechanical markers were analyzed throughout the performance of IADL activities to recognize the human functional pattern. The methodology used in this work is as shown below:…”
Section: Methodsmentioning
confidence: 99%
“…The research and development of innovative technological systems for the management of the growing number of patients with cognitive diseases has increased in recent years 11 , integrating into these systems some of the cognitive test, data collection, and automatic data processing based on geriatric metrics using artificial intelligence (AI) methods 12,13,14 . Some of these systems focus on supporting the diagnosis and detection of the disease at an early stage, while others focus on monitoring the disease.…”
Section: State Of the Artmentioning
confidence: 99%