Menu

News & Events

17 May 2023
Tool for Tracking All-cause Mortality and Estimating Excess Mortality
TAGS

(Newsletter May 2023)

The WHO Western Pacific Regional Office, in cooperation with the Department of Statistics at UCLA, developed an online calculator for excess deaths in countries. This tool aims to help countries estimate their expected all-cause mortality counts for each week or month starting 1 January 2020. Since excess deaths have been observed during the COVID-19 pandemic, evidence is needed to support timely and dynamic decision-making and policy development. This tool is for use by member countries and does not require the data to be seen by the WHO. Additionally, the WHO developed a paper on “Tool for tracking all-cause mortality and estimating excess mortality to support the COVID-19 pandemic response”. It discusses the relevance of developing this tool and lessons learned. The paper can be accessed at this link.

More News

20 October 2021

(Newsletter: CRVS Insight October 2022) The preparations for the Second Ministerial Conference on…

30 July 2021

(Newsletter: CRVS Insight July 2021) The Asia-Pacific region has reached the midpoint of the Asian…

30 July 2021

(Newsletter: CRVS Insight July 2021) In addition to the understanding that civil registration…

30 July 2021

(Newsletter: CRVS Insight July 2021) In May 2021, the World Health Organization released its…

30 July 2021

(Newsletter: CRVS Insight July 2021) Each month, our community newsletter puts a spotlight on one…

16 June 2021

(Newsletter: CRVS Insight June 2021) Asia-Pacific has reached the midpoint of the Asian and…

16 June 2021

(Newsletter: CRVS Insight June 2021) Each month, our community newsletter puts a spotlight on one…

21 May 2021

(Newsletter: CRVS Insight May 2021) The next Stats Café session will highlight the experiences of…

21 May 2021

(Newsletter: CRVS Insight May 2021) Each month, our community newsletter puts a spotlight on one…

21 May 2021

(Newsletter: CRVS Insight May 2021) To leverage the use of administrative data for statistical…