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Stanford Aging and Ethnogeriatrics Research Center (SAGE Center)

Stanford Aging and Ethnogeriatrics Research Center (SAGE Center)

Longevity Research Consortium

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iSAGE Mini-fellowship Overview

The goal of the Stanford University’s Internet based Successful Aging (iSAGE) is to promote successful aging and end of life care for multi-cultural older adults. iSAGE is an online, multi-media rich, skill-based training program that offers comprehensive distance learning and support resources.

The iSAGE training program is a self-paced, self-study program and has three parts as follows:

iSAGE Training Program details

  • Part 1 of iSAGE will immerse participants in the over arching scientific principles of successful aging and end of life care.
  • Part 2 will focus on quality care of multicultural older Americans.
  • Part 3 will be a scholarly project, which will include mentored field work during which the participant will complete a mini-dissertation in the area of their interest and submit a final report to be graded by experts. The scholarly project should be specifically designed to positively impact at least five older Americans in some small and specific way. The course director will mentor mini-fellows on choice of the scholarly project. Mini-fellows are encouraged to collaborate with their peers in the iSAGE program in completing their field work.

Online Application:

Apply now and become a Successful Aging Mini-Fellow: iSAGE online application

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    Next-Generation Artificial Intelligence for Diagnosis: From Predicting Diagnostic Labels to "Wayfinding"

    Julia Adler-Milstein, PhD1; Jonathan H. Chen, MD, PhD; Gurpreet Dhaliwal, MD

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