Talk show on health insurance policies engages over 500 new students

Follow Gia Lai Newspaper on Google News

(GLO) – More than 500 first-year students at FPT University Quy Nhon attended a talk show on September 9 focused on Vietnam’s health insurance policies, organized by the provincial Social Insurance Agency in collaboration with the university.

During the session, representatives outlined contribution rates, the benefits of health insurance cards, and the entitlements available to participants.

The speaker stressed that health insurance is not only a key social security policy but also a crucial tool enabling students to access medical services on campus and at healthcare facilities nationwide.

1dsc03194.jpg
The provincial Social Insurance speaker discusses health insurance policy at the talk show. Photo: Provided by Organizers

Students raised questions on how to join the scheme, available payment methods, and the procedures for claiming benefits.

These inquiries were addressed directly by Trần Ngọc Tuấn, Deputy Director of the provincial social insurance agency, who sought to reassure students and strengthen trust in the program.

1dsc03208.jpg
Students pose questions to the provincial Social Insurance speaker. Photo: Provided by Organizers

In addition to the talk show, the agency set up a consultation booth at the university campus to provide further guidance and assist students in checking their health insurance details.

The event, held as part of Orientation Week for K21 students, attracted significant interest and highlighted the Social Insurance sector’s commitment to supporting young people in accessing healthcare and understanding their rights.

You may be interested

Aspiring to bring artificial intelligence to primary healthcare

Aspiring to bring artificial intelligence to primary healthcare

(GLO) – Le Thai Minh Hieu, a physician from Binh Dinh Ward, Gia Lai Province, has won second prize at the Global Ortho-K Myopia Control Conference (GOMCC) 2025 for his project “Artificial intelligence model for grading pathological myopia and detecting lesions on color fundus images.”

null