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DATA-DRIVEN IMPROVEMENTS TO DEMENTIA DISEASE DETECTION STRATEGIES IN AN FQHC SETTING

Despite higher prevalence of dementing illnesses in Latina/o populations, detection is lower compared to white populations, compounding racial/ethnic and economic disparities. Undetected illness compromises effective delivery of primary care and impedes linkages to much needed services. Development...

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Autores principales: Sivers-Teixeira, Theresa M, Tabon, Patrick, Yuan, Jessie, Thayer, Erin, Matta, Sonali, Olsen, Bonnie
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9767036/
http://dx.doi.org/10.1093/geroni/igac059.2748
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author Sivers-Teixeira, Theresa M
Tabon, Patrick
Yuan, Jessie
Thayer, Erin
Matta, Sonali
Olsen, Bonnie
author_facet Sivers-Teixeira, Theresa M
Tabon, Patrick
Yuan, Jessie
Thayer, Erin
Matta, Sonali
Olsen, Bonnie
author_sort Sivers-Teixeira, Theresa M
collection PubMed
description Despite higher prevalence of dementing illnesses in Latina/o populations, detection is lower compared to white populations, compounding racial/ethnic and economic disparities. Undetected illness compromises effective delivery of primary care and impedes linkages to much needed services. Development of robust detection and culturally sensitive management of cognitive impairment is critical for adequate care of this population. The Geriatric Workforce Enhancement Program at the University of Southern California (USC) partnered with Eisner Health, a Federally Qualified Health Center, serving a primarily immigrant, Spanish-speaking, uneducated, urban older adult population, to help achieve their goal of becoming an Age-Friendly Health System to prioritize identification and management of cognitive impairment. Over 14 months, a sustainable clinic workflow was developed and implemented to detect, evaluate, diagnose, and develop care plans for patients and their care partners. Staff and provider education was delivered through didactics, workshops, case reviews, and at-elbow training. Additional efforts focused on EHR optimization and alignment of existing clinical resources. Frequency data was extracted using i2iTracks software reflecting pre and post-implementation. Results show a higher percentage of patients diagnosed with cognitive impairment in the post-implementation period (7.35%) compared to pre-implementation (4.05%). Detailed data tracking the volume of patients engaged at each step of the workflow supports meaningful analysis of barriers and opportunities for optimization, such as how and where additional resources and efforts will yield the greatest effects. Data-driven strategies such as these, strengthen efficiency and effectiveness of the collaborative process and result in sustainable outcomes for this underserved population.
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spelling pubmed-97670362022-12-21 DATA-DRIVEN IMPROVEMENTS TO DEMENTIA DISEASE DETECTION STRATEGIES IN AN FQHC SETTING Sivers-Teixeira, Theresa M Tabon, Patrick Yuan, Jessie Thayer, Erin Matta, Sonali Olsen, Bonnie Innov Aging Late Breaking Abstracts Despite higher prevalence of dementing illnesses in Latina/o populations, detection is lower compared to white populations, compounding racial/ethnic and economic disparities. Undetected illness compromises effective delivery of primary care and impedes linkages to much needed services. Development of robust detection and culturally sensitive management of cognitive impairment is critical for adequate care of this population. The Geriatric Workforce Enhancement Program at the University of Southern California (USC) partnered with Eisner Health, a Federally Qualified Health Center, serving a primarily immigrant, Spanish-speaking, uneducated, urban older adult population, to help achieve their goal of becoming an Age-Friendly Health System to prioritize identification and management of cognitive impairment. Over 14 months, a sustainable clinic workflow was developed and implemented to detect, evaluate, diagnose, and develop care plans for patients and their care partners. Staff and provider education was delivered through didactics, workshops, case reviews, and at-elbow training. Additional efforts focused on EHR optimization and alignment of existing clinical resources. Frequency data was extracted using i2iTracks software reflecting pre and post-implementation. Results show a higher percentage of patients diagnosed with cognitive impairment in the post-implementation period (7.35%) compared to pre-implementation (4.05%). Detailed data tracking the volume of patients engaged at each step of the workflow supports meaningful analysis of barriers and opportunities for optimization, such as how and where additional resources and efforts will yield the greatest effects. Data-driven strategies such as these, strengthen efficiency and effectiveness of the collaborative process and result in sustainable outcomes for this underserved population. Oxford University Press 2022-12-20 /pmc/articles/PMC9767036/ http://dx.doi.org/10.1093/geroni/igac059.2748 Text en © The Author(s) 2022. Published by Oxford University Press on behalf of The Gerontological Society of America. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Late Breaking Abstracts
Sivers-Teixeira, Theresa M
Tabon, Patrick
Yuan, Jessie
Thayer, Erin
Matta, Sonali
Olsen, Bonnie
DATA-DRIVEN IMPROVEMENTS TO DEMENTIA DISEASE DETECTION STRATEGIES IN AN FQHC SETTING
title DATA-DRIVEN IMPROVEMENTS TO DEMENTIA DISEASE DETECTION STRATEGIES IN AN FQHC SETTING
title_full DATA-DRIVEN IMPROVEMENTS TO DEMENTIA DISEASE DETECTION STRATEGIES IN AN FQHC SETTING
title_fullStr DATA-DRIVEN IMPROVEMENTS TO DEMENTIA DISEASE DETECTION STRATEGIES IN AN FQHC SETTING
title_full_unstemmed DATA-DRIVEN IMPROVEMENTS TO DEMENTIA DISEASE DETECTION STRATEGIES IN AN FQHC SETTING
title_short DATA-DRIVEN IMPROVEMENTS TO DEMENTIA DISEASE DETECTION STRATEGIES IN AN FQHC SETTING
title_sort data-driven improvements to dementia disease detection strategies in an fqhc setting
topic Late Breaking Abstracts
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9767036/
http://dx.doi.org/10.1093/geroni/igac059.2748
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