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Stanford Aging and Ethnogeriatrics Research Center (SAGE Center)

Stanford Aging and Ethnogeriatrics Research Center (SAGE Center)

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Pressing Problems and Emerging Solutions in Aging Research

A collaborative symposium with scholars from San Jose State University (SJSU), Center for Healthy Aging in Multicultural Populations (CHAMP) & Stanford Aging and Ethnogeriatrics (SAGE) Research Center. This symposium highlights current research and practice concerns in the field of aging. Brief presentations will be followed by Q&A. Open discussion and exchange of ideas toward the end of the symposium.

Friday, April 15, 2022
12.30 PM – 2.00 PM

Register now at: https://bit.ly/3pQy984

Highlights from:

  • Diana Miller, Santa Clara County Department of Aging and Adult Services
  • Sophie Horuichi-Forrester, AARP California
Presentations by:
Gaojian Huang, PhD
Industrial & System Engineering, SJSU

Adam Svec, PhD
Audiology, SJ
Anusha Yellamsetty, PhD
Audiology, SJSU

Robin Whitney, PhD, RN
Nursing, SJSU
Suzanne Tamang, PhD
Stanford Medicine
Jiajun Wu, PhD
Stanford Medicine
Ivan Mejia, PhD
Stanford Medicine


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