Comparing COVID-19 mortality across selected states in India: The role of age structure

被引:3
|
作者
Azarudeen, Mohamed Jainul [1 ]
Aroskar, Khyati [1 ]
Kurup, Karishma Krishna [2 ]
Dikid, Tanzin [1 ]
Chauhan, Himanshu [1 ]
Jain, S. K. [1 ]
Singh, S. K. [1 ]
机构
[1] Govt India, Natl Ctr Dis Control, 22 Sham Nath Marg, Delhi 110054, India
[2] South Asia Field Epidemiol & Technol Network, Delhi 110054, India
关键词
COVID-19; Mortality; Age standardized mortality rate; Indirect standardization; SEX;
D O I
10.1016/j.cegh.2021.100877
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Background: Mortality rates provide an opportunity to identify and act on the health system intervention for preventing deaths. Hence, it is essential to appreciate the influence of age structure while reporting mortality for a better summary of the magnitude of the epidemic. Objectives: We described and compared the pattern of COVID-19 mortality standardized by age between selected states and India from January to November 2020. Methods: We initially estimated the Indian population for 2020 using the decadal growth rate from the previous census (2011). This was followed by estimations of crude and age-adjusted mortality rate per million for India and the selected states. We used this information to perform indirect-standardization and derive the age-standardized mortality rates for the states for comparison. In addition, we derived a ratio for age-standardized mortality to compare across age groups within the state. We extracted information regarding COVID-19 deaths from the Integrated Disease Surveillance Programme special surveillance portal up to November 16, 2020. Results: The crude mortality rate of India stands at 88.9 per million population (118,883/1,337,328,910). Age-adjusted mortality rate (per-million) was highest for Delhi (300.5) and lowest for Kerala (35.9). The age-standardized mortality rate (per million) for India is (<15 years = 1.6, 15-29 years = 6.3, 30-44 years = 35.9, 45-59 years = 198.8, 60-74 years = 571.2, >= 75 years = 931.6). The ratios for age-standardized mortality increase proportionately from 45 to 59 years age group across all the states. Conclusion: There is high COVID-19 mortality not only among the elderly ages, but we also identified heavy impact of COVID-19 on the working population. Therefore, we recommend further evaluation of age-adjusted mortality for all States and inclusion of variables like gender, socio-economic status for standardization while identifying at-risk populations and implementing priority public health actions.
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