Stroke Mortality in Kazakhstan: Comparison of National Health Records to Global Burden of Disease Study.

Ruslan Akhmedullin, Temirgali Aimyshev, Gulnur Zhakhina, Iliyar Arupzhanov, Antonio Sarria-Santamera, Altynay Beyembetova, Ayana Ablayeva, Aigerim Biniyazova, Temirlan Seyil, Diyora Abdukhakimova, Yuliya Semenova, Abduzhappar Gaipov
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Abstract

Background: Stroke is a major public health concern requiring valid estimates for planning and evaluating health interventions. The GBD (Global Burden of Disease) studies have become a major source of information; however, data sources have historically been a limitation.

Objectives: We sought to compare stroke mortality estimates in Kazakhstan with those reported by the GBD study.

Methods: Mortality data were extracted from the Unified Electronic Healthcare System of Kazakhstan (UNEHS). We used the autoregressive integrated moving average (ARIMA), Bayesian structural time-series (BSTS), and Extreme Gradient Boosting (XGBoost) to model data from the UNEHS and forecast its trends until 2030. The accuracy metrics were mean absolute error, root mean square error, and mean absolute percentage error. We calculated the standardized difference in mortality estimates between the databases for the observed and forecasted estimates.

Results: The BSTS, ARIMA, and XGBoost models revealed slight variations in accuracy metrics, which depended on forecasting horizons and mostly favored XGBoost. During 2014-2030, the absolute difference in death counts was 207,108 between the GBD and UNEHS. The GBD estimates were twice as many across both the observed and predicted periods, with a moderate standardized difference (0.73) when considering their average. This study showed a systematic difference between GBD and national data.

Conclusions: We found that UNEHS estimates were not comparable despite our efforts to replicate the GBD methods. Further studies are needed to explore the discrepancies between the national or regional data and GBD. Current limitations related to primary data and reproducibility require caution when interpreting GBD findings.

哈萨克斯坦中风死亡率:国家健康记录与全球疾病负担研究的比较
背景:卒中是一个主要的公共卫生问题,需要有效的估计来规划和评估卫生干预措施。GBD(全球疾病负担)研究已成为一个主要的信息来源;然而,数据来源历来是一种限制。目的:我们试图将哈萨克斯坦的脑卒中死亡率估计与GBD研究报告的结果进行比较。方法:死亡率数据提取自哈萨克斯坦统一电子医疗保健系统(UNEHS)。我们使用自回归综合移动平均(ARIMA)、贝叶斯结构时间序列(BSTS)和极端梯度增强(XGBoost)对UNEHS的数据进行建模,并预测其到2030年的趋势。准确度指标为平均绝对误差、均方根误差和平均绝对百分比误差。我们计算了数据库中观察到的和预测的死亡率估计值的标准化差异。结果:BSTS、ARIMA和XGBoost模型的精度指标略有不同,这取决于预测范围,其中XGBoost模型最受青睐。2014-2030年期间,GBD和UNEHS之间死亡人数的绝对差异为207,108人。在观察和预测期间,GBD估计值是其两倍,当考虑其平均值时,具有适度的标准化差异(0.73)。这项研究显示了GBD与国家数据之间的系统性差异。结论:尽管我们努力重复GBD方法,但我们发现UNEHS的估计不具有可比性。需要进一步的研究来探索国家或区域数据与GBD之间的差异。目前与原始数据和可重复性相关的限制要求在解释GBD结果时谨慎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JACC. Asia
JACC. Asia Cardiology and Cardiovascular Medicine
CiteScore
4.00
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