全现象共病网络分析揭示了临床风险模式在终末期病和终末期炎。

Yonghyun Nam, Dong-Gi Lee, Jakob Woerner, Se-Hwan Lee, Min Ji Lee, Sung-Han Jo, Jaeun Jung, Su Chin Heo, Chris Hyunchul Jo, Dokyoon Kim
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引用次数: 0

摘要

背景:腱鞘病和腱鞘炎,包括肩袖疾病和其他肌腱疾病,是一种病因复杂的异质肌肉骨骼疾病。了解全身健康状况如何影响其发病仍然是肌肉骨骼医学的一个关键挑战。方法:我们利用432,757名英国生物银行参与者的纵向电子健康记录(EHR)进行了一项大规模、全现象范围的共病分析。通过434种基线疾病表型,将周围性骨髓瘤病例与对照组进行比较。我们构建了一个有向自我网络,使用基于优势比的关联将显著相关的合并症与目标病症联系起来。通过UMAP和DBSCAN进行的无监督聚类确定了数据驱动的共病聚类,这些共病聚类被整合为统一的内型,被解释为不同的系统概况,导致疾病风险。此外,基于meta通路的轨迹分析被用于揭示导致疾病发病的时间结构的多发病链。结果:我们确定了183个基线条件与未来脑室病的发展显著相关(FDR < 0.05)。网络聚类揭示了8个共病集群,并将其整合为4个统一的内源性类型:代谢-心身型、炎症-多系统型、机械损伤驱动型和衰老-干预相关型。meta通路分析揭示了常见的三步疾病轨迹,如代谢-感染-肌肉-骨骼和炎症性皮肤-关节进展,强调了潜在的机制途径。这些内膜类型表现出不同的临床特征,但具有共同的生物学一致性,表明不同的全身健康状况可以汇聚在一起驱动肌腱相关疾病。结论:本研究引入了一个可扩展的框架,用于使用全现象共病网络来识别脑室病和脑室炎背后的系统性多病模式。通过整合网络聚类和元路径分析,我们发现了可解释的、数据驱动的内型,可以为个性化风险评估和有针对性的护理策略提供信息。这些发现促进了生物库规模疾病建模领域的发展,并为肌肉骨骼医学的精确方法提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Phenome-wide comorbidity network analysis reveals clinical risk patterns in enthesopathy and enthesitis.

Background: Enthesopathy and enthesitis, including rotator cuff disease and other tendon disorders, represent a heterogeneous group of musculoskeletal conditions with complex etiologies. Understanding how systemic health profiles influence their onset remains a critical challenge in musculoskeletal medicine.

Methods: We conducted a large-scale, phenome-wide comorbidity analysis using longitudinal electronic health records (EHR) from 432,757 UK Biobank participants. Incident cases of peripheral enthesopathies were compared to controls across 434 baseline disease phenotypes. A directed ego network was constructed to link significantly associated comorbidities to the target condition using odds ratio-based associations. Unsupervised clustering via UMAP and DBSCAN identified data-driven comorbidity clusters, which were consolidated into unified endotypes-interpreted as distinct systemic profiles contributing to disease risk. Additionally, metapath-based trajectory analysis was applied to uncover temporally structured multimorbidity chains leading to disease onset.

Results: We identified 183 baseline conditions significantly associated with the future development of enthesopathy (FDR < 0.05). Network clustering revealed eight comorbidity clusters, which were consolidated into four unified endotypes: Metabolic-Psychosomatic, Inflammatory-Multisystem, Mechanical-Injury-driven, and Aging-Intervention-related. Metapath analysis uncovered common three-step disease trajectories, such as metabolic-infectious-musculoskeletal and inflammatory skin-to-joint progressions, highlighting potential mechanistic pathways. These endotypes showed diverse clinical features but shared biological coherence, suggesting that different systemic health profiles can converge to drive tendon-related disease.

Conclusions: This study introduces a scalable framework for identifying systemic multimorbidity patterns underlying enthesopathy and enthesitis using phenome-wide comorbidity networks. By integrating network clustering and metapath analysis, we uncover interpretable, data-driven endotypes that may inform individualized risk assessment and targeted care strategies. These findings contribute to the growing field of biobank-scale disease modeling and offer a foundation for precision approaches in musculoskeletal medicine.

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