Rwanda - Mortality rate, infant, female (per 1,000 live births)

The value for Mortality rate, infant, female (per 1,000 live births) in Rwanda was 27.20 as of 2020. As the graph below shows, over the past 60 years this indicator reached a maximum value of 182.90 in 1994 and a minimum value of 27.20 in 2020.

Definition: Infant mortality rate, female is the number of female infants dying before reaching one year of age, per 1,000 female live births in a given year.

Source: Estimates developed by the UN Inter-agency Group for Child Mortality Estimation (UNICEF, WHO, World Bank, UN DESA Population Division) at www.childmortality.org.

See also:

Year Value
1960 121.60
1961 119.00
1962 117.20
1963 116.00
1964 115.40
1965 115.50
1966 116.00
1967 116.90
1968 118.50
1969 120.10
1970 121.80
1971 123.50
1972 125.60
1973 128.50
1974 132.20
1975 135.50
1976 137.90
1977 137.90
1978 134.70
1979 128.40
1980 120.30
1981 111.70
1982 103.80
1983 98.00
1984 93.80
1985 90.40
1986 87.60
1987 85.40
1988 83.60
1989 83.30
1990 85.30
1991 90.20
1992 97.60
1993 106.40
1994 182.90
1995 121.30
1996 123.50
1997 121.60
1998 116.90
1999 110.40
2000 102.50
2001 93.30
2002 84.00
2003 75.50
2004 67.20
2005 60.30
2006 54.40
2007 49.70
2008 45.80
2009 42.70
2010 39.90
2011 36.90
2012 35.10
2013 33.50
2014 32.30
2015 31.20
2016 30.40
2017 29.60
2018 28.80
2019 28.00
2020 27.20

Development Relevance: Mortality rates for different age groups (infants, children, and adults) and overall mortality indicators (life expectancy at birth or survival to a given age) are important indicators of health status in a country. Because data on the incidence and prevalence of diseases are frequently unavailable, mortality rates are often used to identify vulnerable populations. And they are among the indicators most frequently used to compare socioeconomic development across countries.

Limitations and Exceptions: Complete vital registration systems are fairly uncommon in developing countries. Thus estimates must be obtained from sample surveys or derived by applying indirect estimation techniques to registration, census, or survey data. Survey data are subject to recall error, and surveys estimating infant/child deaths require large samples because households in which a birth has occurred during a given year cannot ordinarily be preselected for sampling. Indirect estimates rely on model life tables that may be inappropriate for the population concerned. Extrapolations based on outdated surveys may not be reliable for monitoring changes in health status or for comparative analytical work.

Statistical Concept and Methodology: The main sources of mortality data are vital registration systems and direct or indirect estimates based on sample surveys or censuses. A "complete" vital registration system - covering at least 90 percent of vital events in the population - is the best source of age-specific mortality data. Estimates of neonatal, infant, and child mortality tend to vary by source and method for a given time and place. Years for available estimates also vary by country, making comparisons across countries and over time difficult. To make neonatal, infant, and child mortality estimates comparable and to ensure consistency across estimates by different agencies, the United Nations Inter-agency Group for Child Mortality Estimation (UN IGME), which comprises the United Nations Children's Fund (UNICEF), the World Health Organization (WHO), the World Bank, the United Nations Population Division, and other universities and research institutes, developed and adopted a statistical method that uses all available information to reconcile differences. The method uses statistical models to obtain a best estimate trend line by fitting a country-specific regression model of mortality rates against their reference dates.

Aggregation method: Weighted average

Periodicity: Annual

General Comments: Given that data on the incidence and prevalence of diseases are frequently unavailable, mortality rates are often used to identify vulnerable populations. Moreover, they are among the indicators most frequently used to compare socioeconomic development ac

Classification

Topic: Health Indicators

Sub-Topic: Mortality