Cargando…

Propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in China

BACKGROUND: National mortality data are obtained routinely by the Disease Surveillance Points system (DSPs) in China and under-reporting is a big challenge in mortality surveillance. METHODS: We carried out an under-reporting field survey in all 161 DSP sites to collect death cases during 2009–2011,...

Descripción completa

Detalles Bibliográficos
Autores principales: Guo, Kang, Yin, Peng, Wang, Lijun, Ji, Yibing, Li, Qingfeng, Bishai, David, Liu, Shiwei, Liu, Yunning, Astell-Burt, Thomas, Feng, Xiaoqi, You, Jinling, Liu, Jiangmei, Zhou, Maigeng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4496861/
https://www.ncbi.nlm.nih.gov/pubmed/26161042
http://dx.doi.org/10.1186/s12963-015-0051-3
_version_ 1782380472946393088
author Guo, Kang
Yin, Peng
Wang, Lijun
Ji, Yibing
Li, Qingfeng
Bishai, David
Liu, Shiwei
Liu, Yunning
Astell-Burt, Thomas
Feng, Xiaoqi
You, Jinling
Liu, Jiangmei
Zhou, Maigeng
author_facet Guo, Kang
Yin, Peng
Wang, Lijun
Ji, Yibing
Li, Qingfeng
Bishai, David
Liu, Shiwei
Liu, Yunning
Astell-Burt, Thomas
Feng, Xiaoqi
You, Jinling
Liu, Jiangmei
Zhou, Maigeng
author_sort Guo, Kang
collection PubMed
description BACKGROUND: National mortality data are obtained routinely by the Disease Surveillance Points system (DSPs) in China and under-reporting is a big challenge in mortality surveillance. METHODS: We carried out an under-reporting field survey in all 161 DSP sites to collect death cases during 2009–2011, using a multi-stage stratified sampling. To identify under-reporting, death data were matched between field survey system and the routine online surveillance system by an automatic computer checking followed by a thorough manual verification. We used a propensity score (PS) weighting method based on a logistic regression to calculate the under-reporting rate in different groups classified by age, gender, urban/rural residency, geographic locations and other mortality related variables. For comparison purposes, we also calculated the under-reporting rate by using capture-mark-recapture (CMR) method. RESULTS: There were no significant differences between the field survey system and routine online surveillance system in terms of age group, causes of death, highest level of diagnosis and diagnostic basis. The overall under-reporting rate in the DSPs was 12.9 % (95%CI 11.2 %, 14.6 %) based on PS. The under-reporting rate was higher in the west (18.8 %, 95%CI 16.5 %, 21.0 %) than the east (10.1 %, 95%CI 8.6 %, 11.3 %) and central regions (11.2 %, 95%CI 9.6 %, 12.7 %). Among all age groups, the under-reporting rate was highest in the 0–5 year group (23.7 %, 95%CI 16.1 %, 35.5 %) and lowest in the 65 years and above group (12.4 %, 95%CI 10.9 %, 13.6 %). The under-reporting rates in each group by PS were similar to the results calculated by the CMR methods. CONCLUSIONS: The mortality data from the DSP system in China needs to be adjusted. Compared to the commonly used CMR method in the estimation of under-reporting rate, the results of propensity score weighting method are similar but more flexible when calculating the under-reporting rates in different groups. Propensity score weighting is suitable to adjust DSP data and can be used to address under-reporting in mortality surveillance in China.
format Online
Article
Text
id pubmed-4496861
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-44968612015-07-10 Propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in China Guo, Kang Yin, Peng Wang, Lijun Ji, Yibing Li, Qingfeng Bishai, David Liu, Shiwei Liu, Yunning Astell-Burt, Thomas Feng, Xiaoqi You, Jinling Liu, Jiangmei Zhou, Maigeng Popul Health Metr Research BACKGROUND: National mortality data are obtained routinely by the Disease Surveillance Points system (DSPs) in China and under-reporting is a big challenge in mortality surveillance. METHODS: We carried out an under-reporting field survey in all 161 DSP sites to collect death cases during 2009–2011, using a multi-stage stratified sampling. To identify under-reporting, death data were matched between field survey system and the routine online surveillance system by an automatic computer checking followed by a thorough manual verification. We used a propensity score (PS) weighting method based on a logistic regression to calculate the under-reporting rate in different groups classified by age, gender, urban/rural residency, geographic locations and other mortality related variables. For comparison purposes, we also calculated the under-reporting rate by using capture-mark-recapture (CMR) method. RESULTS: There were no significant differences between the field survey system and routine online surveillance system in terms of age group, causes of death, highest level of diagnosis and diagnostic basis. The overall under-reporting rate in the DSPs was 12.9 % (95%CI 11.2 %, 14.6 %) based on PS. The under-reporting rate was higher in the west (18.8 %, 95%CI 16.5 %, 21.0 %) than the east (10.1 %, 95%CI 8.6 %, 11.3 %) and central regions (11.2 %, 95%CI 9.6 %, 12.7 %). Among all age groups, the under-reporting rate was highest in the 0–5 year group (23.7 %, 95%CI 16.1 %, 35.5 %) and lowest in the 65 years and above group (12.4 %, 95%CI 10.9 %, 13.6 %). The under-reporting rates in each group by PS were similar to the results calculated by the CMR methods. CONCLUSIONS: The mortality data from the DSP system in China needs to be adjusted. Compared to the commonly used CMR method in the estimation of under-reporting rate, the results of propensity score weighting method are similar but more flexible when calculating the under-reporting rates in different groups. Propensity score weighting is suitable to adjust DSP data and can be used to address under-reporting in mortality surveillance in China. BioMed Central 2015-07-09 /pmc/articles/PMC4496861/ /pubmed/26161042 http://dx.doi.org/10.1186/s12963-015-0051-3 Text en © Guo et al. 2015 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly credited. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Research
Guo, Kang
Yin, Peng
Wang, Lijun
Ji, Yibing
Li, Qingfeng
Bishai, David
Liu, Shiwei
Liu, Yunning
Astell-Burt, Thomas
Feng, Xiaoqi
You, Jinling
Liu, Jiangmei
Zhou, Maigeng
Propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in China
title Propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in China
title_full Propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in China
title_fullStr Propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in China
title_full_unstemmed Propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in China
title_short Propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in China
title_sort propensity score weighting for addressing under-reporting in mortality surveillance: a proof-of-concept study using the nationally representative mortality data in china
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4496861/
https://www.ncbi.nlm.nih.gov/pubmed/26161042
http://dx.doi.org/10.1186/s12963-015-0051-3
work_keys_str_mv AT guokang propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT yinpeng propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT wanglijun propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT jiyibing propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT liqingfeng propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT bishaidavid propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT liushiwei propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT liuyunning propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT astellburtthomas propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT fengxiaoqi propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT youjinling propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT liujiangmei propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina
AT zhoumaigeng propensityscoreweightingforaddressingunderreportinginmortalitysurveillanceaproofofconceptstudyusingthenationallyrepresentativemortalitydatainchina