RWHAP Part C, Part D, & Part F Dental Programs Stakeholder Meeting - April 2023
Resource updated 01/09/2024
Resource updated 01/09/2024
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Resource updated 04/18/2024
We used a data-driven, mixed method approach to develop a community planning and budget tool to inform resource allocation decision-making to achieve health equity in HIV outcomes among RWHAP clients in the Minneapolis-St. Paul Transitional Grant Area.
Resource (Conference Presentation) updated 09/14/2023
Columbia University College of Dental Medicine has partnered with community partners to implement a dental care delivery system for PLWHA in NYC. A week-long Service Learning Rotation was integrated into the third-year dental student curriculum; data analysis from this pilot year will be used for program quality improvement and modification.
Resource (Conference Presentation) updated 09/14/2023
Oral health providers rely on continuing education to improve HIV care and services. This session describes how the Arizona AETC partnered with the Los Angeles Area AETC and the UCLA School of Dentistry to assess and respond to special training and technical assistance needs of HIV providers during COVID-19.
Resource (Conference Presentation) updated 09/14/2023
As trauma awareness grows in all aspects of our communities, it is time to ask, “What are the next innovations in helping those with HIV recover from trauma?” This workshop will show how new technology helps to quantify resiliency and post-traumatic growth for patients and clients.
Resource (Conference Presentation) updated 09/14/2023
Before the pandemic, HIV providers were among the most burnt-out professions in our society. This workshop helps to identify the dangers to our mental, physical, and social health resulting from the demands our work combined with the exposure to the stress and trauma of our those we serve.
Resource (Conference Presentation) updated 09/14/2023
HIV prevalence among Black women is at epidemic levels with violence greatly contributing to this statistic. The application of machine learning to HIV studies has the ability to inform more personalized approaches to decreasing HIV prevalence as well as improve the health outcomes of those people with HIV.
Resource (Conference Presentation) updated 09/14/2023
Resource updated 02/26/2024
Resource updated 02/26/2024
Resource updated 07/17/2023
Resource updated 03/12/2024
Resource updated 01/10/2024
Resource updated 09/19/2023
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Resource updated 05/29/2024
Tool for service and program monitoring.
Resource updated 09/19/2023
Tool for service and program monitoring.
Resource updated 09/19/2023
Resource updated 11/02/2023