130 likes | 240 Vues
This presentation by Stewards Pooi Kei College students compares the development of medical and health services in Hong Kong with insights on the industry's challenges and future prospects. It delves into the disparity in healthcare manpower, low healthcare expenditure, and growing wealth inequality that impacts the accessibility and quality of healthcare services. The impact of an aging population and the rise in births to Mainland Women on the medical industry is also discussed. The students share their experiences and lessons learned in data handling techniques, emphasizing the importance of persistence, effort, and teamwork in analyzing healthcare statistics effectively.
E N D
Development of Medical and Health Services in Hong Kong, a Statistical Perspective Stewards Pooi Kei College Presented by: Joey Chow Shen Jiaqi Alice Chan Wai Chun Oscar
By comparing … Overview of Medical Industry Manpower of Health Industry
The number of doctors and nurses of Hong Kong is significantly less than other developed countries.
Healthcare Expenditure • The total expenditure on health as percentage of GDP of Hong Kong is also far behind.
After SARS in 2003, Hong Kong people started to care more about their health. This causes the health expenditure of private sector has increase from 2004/05 to 2007/08.
Gini Coefficient • The Gini Coefficient in Hong Kongkeep increasing, the gap between the rich and the poor in the society has been widening.
Hong Kong’s wealth inequality is the highest among the world’s developed capitalist economies.
Difficulties encounter of Medical Industry Ageing Problems • The aging population will cause a heavy burden to the Hong Kong medical system.
Source: Birth Born in Hong Kong of Mainland Women • Births Born to Mainland Women keeps increasing year by year.
Source: • The rise of such births shares the medical resources of Hong Kong and causes extra workload to our medical staffs.
Firsttime participation • Importance of persistence • Importance of effort • Handling data techniques • - Choosing relevant data • - Selection of expressive graphs • - Description of graphs • Team spirits