Suppr超能文献

老年人的多种疾病模式:一种新的疾病聚类方法确定了慢性病之间的复杂关系。

Multimorbidity patterns in the elderly: a new approach of disease clustering identifies complex interrelations between chronic conditions.

机构信息

Department of Primary Medical Care, University Medical Center Hamburg-Eppendorf, Hamburg, Germany.

出版信息

PLoS One. 2010 Dec 29;5(12):e15941. doi: 10.1371/journal.pone.0015941.

Abstract

OBJECTIVE

Multimorbidity is a common problem in the elderly that is significantly associated with higher mortality, increased disability and functional decline. Information about interactions of chronic diseases can help to facilitate diagnosis, amend prevention and enhance the patients' quality of life. The aim of this study was to increase the knowledge of specific processes of multimorbidity in an unselected elderly population by identifying patterns of statistically significantly associated comorbidity.

METHODS

Multimorbidity patterns were identified by exploratory tetrachoric factor analysis based on claims data of 63,104 males and 86,176 females in the age group 65+. Analyses were based on 46 diagnosis groups incorporating all ICD-10 diagnoses of chronic diseases with a prevalence ≥ 1%. Both genders were analyzed separately. Persons were assigned to multimorbidity patterns if they had at least three diagnosis groups with a factor loading of 0.25 on the corresponding pattern.

RESULTS

Three multimorbidity patterns were found: 1) cardiovascular/metabolic disorders [prevalence female: 30%; male: 39%], 2) anxiety/depression/somatoform disorders and pain [34%; 22%], and 3) neuropsychiatric disorders [6%; 0.8%]. The sampling adequacy was meritorious (Kaiser-Meyer-Olkin measure: 0.85 and 0.84, respectively) and the factors explained a large part of the variance (cumulative percent: 78% and 75%, respectively). The patterns were largely age-dependent and overlapped in a sizeable part of the population. Altogether 50% of female and 48% of male persons were assigned to at least one of the three multimorbidity patterns.

CONCLUSION

This study shows that statistically significant co-occurrence of chronic diseases can be subsumed in three prevalent multimorbidity patterns if accounting for the fact that different multimorbidity patterns share some diagnosis groups, influence each other and overlap in a large part of the population. In recognizing the full complexity of multimorbidity we might improve our ability to predict needs and achieve possible benefits for elderly patients who suffer from multimorbidity.

摘要

目的

多病共存是老年人中常见的问题,与更高的死亡率、更高的残疾率和功能下降显著相关。有关慢性病相互作用的信息有助于促进诊断、改善预防并提高患者的生活质量。本研究旨在通过确定与统计学上显著相关的合并症模式,增加对未选择的老年人群中多病共存特定过程的了解。

方法

基于 63104 名男性和 86176 名女性年龄在 65 岁及以上的索赔数据,采用探索性四次因素分析确定多病共存模式。分析基于 46 个诊断组,包含所有慢性疾病的 ICD-10 诊断,患病率≥1%。分别对男性和女性进行分析。如果一个人至少有三个诊断组与相应模式的因子负荷为 0.25,则将其分配到多病共存模式中。

结果

发现了三种多病共存模式:1)心血管/代谢疾病[女性患病率:30%;男性患病率:39%];2)焦虑/抑郁/躯体形式障碍和疼痛[34%;22%];3)神经精神疾病[6%;0.8%]。样本充足(Kaiser-Meyer-Olkin 测量值分别为 0.85 和 0.84),且因子解释了很大一部分方差(累积百分比分别为 78%和 75%)。这些模式在很大程度上取决于年龄,并在相当一部分人群中重叠。共有 50%的女性和 48%的男性被分配到至少一种多病共存模式。

结论

本研究表明,如果考虑到不同的多病共存模式共享一些诊断组、相互影响并在很大一部分人群中重叠的事实,那么统计学上显著的慢性病共病可以被归入三种常见的多病共存模式。在认识到多病共存的复杂性时,我们可以提高预测需求的能力,并为患有多病共存的老年患者带来可能的获益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f749/3012106/9938bd79910d/pone.0015941.g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验