Department of Epidemiology and Biostatistics, School of Health Sciences, Wuhan University, 185 Donghu Road, Wuhan, 430071, Hubei, China.
Global Health Institute, Wuhan University, Wuhan, 430071, Hubei, China.
BMC Med Res Methodol. 2020 Dec 9;20(1):299. doi: 10.1186/s12874-020-01187-5.
Precise predictions of incidence and mortality rates due to breast cancer (BC) are required for planning of public health programs as well as for clinical services. A number of approaches has been established for prediction of mortality using stochastic models. The performance of these models intensely depends on different patterns shown by mortality data in different countries.
The BC mortality data is retrieved from the Global burden of disease (GBD) study 2017 database. This study include BC mortality rates from 1990 to 2017, with ages 20 to 80+ years old women, for different Asian countries. Our study extend the current literature on Asian BC mortality data, on both the number of considered stochastic mortality models and their rigorous evaluation using multivariate Diebold-Marino test and by range of graphical analysis for multiple countries.
Study findings reveal that stochastic smoothed mortality models based on functional data analysis generally outperform on quadratic structure of BC mortality rates than the other lee-carter models, both in term of goodness of fit and on forecast accuracy. Besides, smoothed lee carter (SLC) model outperform the functional demographic model (FDM) in case of symmetric structure of BC mortality rates, and provides almost comparable results to FDM in within and outside data forecast accuracy for heterogeneous set of BC mortality rates.
Considering the SLC model in comparison to the other can be obliging to forecast BC mortality and life expectancy at birth, since it provides even better results in some cases. In the current situation, we can assume that there is no single model, which can truly outperform all the others on every population. Therefore, we also suggest generating BC mortality forecasts using multiple models rather than relying upon any single model.
为了规划公共卫生计划和临床服务,需要对乳腺癌(BC)的发病率和死亡率进行精确预测。已经建立了许多使用随机模型预测死亡率的方法。这些模型的性能强烈依赖于不同国家死亡率数据表现出的不同模式。
BC 死亡率数据从 2017 年全球疾病负担(GBD)研究数据库中检索得到。本研究包括 1990 年至 2017 年不同亚洲国家 20 岁至 80 岁以上女性的 BC 死亡率数据。我们的研究扩展了亚洲 BC 死亡率数据的现有文献,包括所考虑的随机死亡率模型的数量及其使用多元 Diebold-Marino 检验和多个国家的图形分析范围进行的严格评估。
研究结果表明,基于功能数据分析的随机平滑死亡率模型通常比其他李-卡特模型在 BC 死亡率的二次结构上表现更好,无论是在拟合优度还是预测准确性方面。此外,在 BC 死亡率的对称结构下,平滑李-卡特(SLC)模型优于功能人口模型(FDM),并且在异质 BC 死亡率数据集的内部和外部数据预测准确性方面,SLC 模型提供了几乎与 FDM 相当的结果。
考虑到 SLC 模型与其他模型相比,可以有助于预测 BC 死亡率和出生时的预期寿命,因为它在某些情况下提供了更好的结果。在当前情况下,我们可以假设没有任何一种单一的模型可以在所有人群中真正胜过所有其他模型。因此,我们还建议使用多个模型生成 BC 死亡率预测,而不是依赖任何单一模型。