Skip to main content
Daniel Tse, MD, Internal Medicine, San Jose, CA

DanielYungTseMD

Internal Medicine San Jose, CA

Hospital Medicine/Hospitalist

Physician

Are you Dr. Tse?

Join over one million U.S. Physicians, Nurse Practitioners and PAs, already on Doximity.

  • Gain access to free telehealth tools, such as our "call shielding" and one-way patient texting.
  • Connect with colleagues in the same hospital or clinic.
    You already have 98 invites waiting!
  • Read the latest clinical news, personalized to your specialty.

Claim this profile

Not you? Find your profile

  • Office

    175 N Jackson Ave
    Suite 215
    San Jose, CA 95116
    Phone+1 408-937-7581
    Fax+1 408-937-0193

Summary

  • Dr. Daniel Tse, MD is an internist in San Jose, California. He is currently licensed to practice medicine in California and Texas. He is affiliated with Regional Medical Center of San Jose and O'Connor Hospital.

Education & Training

  • University of Texas Health Science Center San Antonio Joe and Teresa Lozano Long School of Medicine
    University of Texas Health Science Center San Antonio Joe and Teresa Lozano Long School of MedicineResidency, Internal Medicine, 1995 - 1998
  • University of Texas Medical Branch School of Medicine
    University of Texas Medical Branch School of MedicineClass of 1995

Certifications & Licensure

  • CA State Medical License
    CA State Medical License 1999 - 2025
  • TX State Medical License
    TX State Medical License 1996 - 2025

Awards, Honors, & Recognition

  • CMS Meaningful Use Stage 1 Certification SuiteMed EMR, Fox Meadows Software, 2012-2013

Publications & Presentations

PubMed

Press Mentions

  • AI Took a Test to Detect Lung Cancer. It Got an A
    AI Took a Test to Detect Lung Cancer. It Got an AMay 28th, 2019
  • Lung Cancer Screening Using Google AI Proves to Be Successful
    Lung Cancer Screening Using Google AI Proves to Be SuccessfulMay 21st, 2019
  • Automatically Charting Symptoms from Patient-Physician Conversations Using Machine Learning
    Automatically Charting Symptoms from Patient-Physician Conversations Using Machine LearningMarch 25th, 2019