Department of Psychiatry, Universidad Autónoma de Madrid, Madrid, Spain.
CIBER of Mental Health, Spain.
Sci Rep. 2017 Mar 10;7:43955. doi: 10.1038/srep43955.
A most challenging task for scientists that are involved in the study of ageing is the development of a measure to quantify health status across populations and over time. In the present study, a Bayesian multilevel Item Response Theory approach is used to create a health score that can be compared across different waves in a longitudinal study, using anchor items and items that vary across waves. The same approach can be applied to compare health scores across different longitudinal studies, using items that vary across studies. Data from the English Longitudinal Study of Ageing (ELSA) are employed. Mixed-effects multilevel regression and Machine Learning methods were used to identify relationships between socio-demographics and the health score created. The metric of health was created for 17,886 subjects (54.6% of women) participating in at least one of the first six ELSA waves and correlated well with already known conditions that affect health. Future efforts will implement this approach in a harmonised data set comprising several longitudinal studies of ageing. This will enable valid comparisons between clinical and community dwelling populations and help to generate norms that could be useful in day-to-day clinical practice.
对于研究衰老的科学家来说,最具挑战性的任务之一是开发一种衡量标准,以便在不同人群和不同时间内量化健康状况。在本研究中,使用贝叶斯多层次项目反应理论方法创建了一个健康评分,可以使用锚定项目和随时间变化的项目在纵向研究的不同波次中进行比较。同样的方法可以用于使用跨研究变化的项目比较不同纵向研究中的健康评分。使用来自英国老龄化纵向研究(ELSA)的数据。使用混合效应多层次回归和机器学习方法来识别社会人口统计学与创建的健康评分之间的关系。为至少参加过前六次 ELSA 波次之一的 17886 名受试者(54.6%为女性)创建了健康指标,与已知影响健康的状况相关良好。未来的工作将在包含多个衰老纵向研究的协调数据集中实施这种方法。这将能够在临床和社区居住人群之间进行有效比较,并有助于生成在日常临床实践中可能有用的规范。