School of Informatics, University of Edinburgh, Edinburgh, UK.
School of Informatics, University of Edinburgh, Edinburgh, UK.
EBioMedicine. 2024 Apr;102:105081. doi: 10.1016/j.ebiom.2024.105081. Epub 2024 Mar 21.
Robustly examining associations between long-term conditions may be important in identifying opportunities for intervention in multimorbidity but is challenging when evidence is limited. We have developed a Bayesian inference framework that is robust to sparse data and used it to quantify morbidity associations in the oldest old, a population with limited available data.
We conducted a retrospective cross-sectional study of a representative dataset of primary care patients in Scotland as of March 2007. We included 40 long-term conditions and studied their associations in 12,009 individuals aged 90 and older, stratified by sex (3039 men, 8970 women). We analysed associations obtained with Relative Risk (RR), a standard measure in the literature, and compared them with our proposed measure, Associations Beyond Chance (ABC). To enable a broad exploration of interactions between long-term conditions, we built networks of association and assessed differences in their analysis when associations are estimated by RR or ABC.
Our Bayesian framework was appropriately more cautious in attributing association when evidence is lacking, particularly in uncommon conditions. This caution in reporting association was also present in reporting differences in associations between sex and affected the aggregated measures of multimorbidity and network representations.
Incorporating uncertainty into multimorbidity research is crucial to avoid misleading findings when evidence is limited, a problem that particularly affects small but important subgroups. Our proposed framework improves the reliability of estimations of associations and, more in general, of research into disease mechanisms and multimorbidity.
National Institute for Health and Care Research.
稳健地检验长期疾病之间的关联可能对于确定多病共存患者的干预机会非常重要,但在证据有限的情况下,这是一项具有挑战性的任务。我们开发了一种贝叶斯推断框架,该框架对稀疏数据具有稳健性,并将其用于量化最年长人群(该人群的可用数据有限)中的发病关联。
我们对截至 2007 年 3 月苏格兰初级保健患者的代表性数据集进行了回顾性横断面研究。我们纳入了 40 种长期疾病,并在 12009 名 90 岁及以上的个体中按性别(3039 名男性,8970 名女性)进行分层,研究了这些疾病之间的关联。我们分析了相对风险(RR)获得的关联,RR 是文献中的一种标准衡量指标,并将其与我们提出的关联超越机会(ABC)进行了比较。为了能够广泛探索长期疾病之间的相互作用,我们构建了关联网络,并评估了在使用 RR 或 ABC 估计关联时,网络分析存在的差异。
我们的贝叶斯框架在证据不足时更适当地谨慎归因于关联,尤其是在罕见疾病中。这种在报告关联时的谨慎态度也存在于报告性别之间关联差异中,并影响了多病共存的综合衡量指标和网络表示。
在证据有限的情况下,将不确定性纳入多病共存研究至关重要,这一问题尤其影响到小但重要的亚组。我们提出的框架提高了关联估计的可靠性,更广泛地说,提高了疾病机制和多病共存研究的可靠性。
英国国家卫生与保健研究院。