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呼吸康复指数(R2I):用于识别与康复结果相关的慢性阻塞性肺疾病亚组的无监督聚类方法。

Respiratory Rehabilitation Index (R2I): Unsupervised Clustering Approach to Identify COPD Subgroups Associated with Rehabilitation Outcomes.

作者信息

Marra Ester, Liuzzi Piergiuseppe, Mannini Andrea, Romagnoli Isabella, Gigliotti Francesco

机构信息

IRCCS Fondazione Don Carlo Gnocchi Onlus, 50143 Firenze, Italy.

出版信息

Diagnostics (Basel). 2025 Aug 16;15(16):2053. doi: 10.3390/diagnostics15162053.

Abstract

: Chronic obstructive pulmonary disease (COPD) is a progressive condition whose heterogeneous endotypes, clinical manifestations, and recovery pathways complicate the identification of reliable predictors of rehabilitation outcomes. Several respiratory and functional assessments are available with no consensus on the most predictive ones. While univariate markers may miss multifactorial interactions essential for prognosis, data-driven unsupervised clustering methods can integrate complex information from different sources. This study aimed to apply unsupervised clustering to identify pre-rehabilitation characteristics predictive of discharge outcomes for COPD patients undergoing pulmonary rehabilitation. : A total of 126 COPD patients undergoing pulmonary rehabilitation were included in the analysis. Three assessments were performed at admission, namely the forced oscillation technique, spirometry, and the six-minute walk test (6MWT). The outcome was the change in 6MWT distance between admission and discharge. Unsupervised clustering methods were applied to admission variables to identify subgroups associated with outcomes. : Among the clustering algorithms tested, k-means (with N = 2) provided the optimal solution. The resulting respiratory rehabilitation index (R2I) was significantly associated with the outcome dichotomized via the minimal clinically important difference of 30 m. Patients with R2I = 1, indicating severe functional and respiratory impairments, were associated with higher post-rehabilitation functional improvement ( = 0.032). While few functional parameters of 6MWT were statistically different between the groups identified by outcome, nearly all variables in the analysis exhibited significant distribution differences among the R2I clusters. : These findings highlight the heterogeneity of COPD and the potential of unsupervised clustering to identify distinct patient subgroups, enabling more personalized rehabilitation strategies.

摘要

慢性阻塞性肺疾病(COPD)是一种进行性疾病,其异质性的内型、临床表现和恢复途径使确定康复结果的可靠预测指标变得复杂。目前有多种呼吸和功能评估方法,但对于最具预测性的评估方法尚无共识。虽然单变量指标可能会忽略对预后至关重要的多因素相互作用,但数据驱动的无监督聚类方法可以整合来自不同来源的复杂信息。本研究旨在应用无监督聚类来识别接受肺康复治疗的COPD患者出院结果的康复前特征。

共有126例接受肺康复治疗的COPD患者纳入分析。入院时进行了三项评估,即强迫振荡技术、肺量计检查和六分钟步行试验(6MWT)。结果指标是入院时和出院时6MWT距离的变化。应用无监督聚类方法对入院变量进行分析,以识别与结果相关的亚组。

在测试的聚类算法中,k均值聚类(N = 2)提供了最佳解决方案。由此产生的呼吸康复指数(R2I)与通过30 m的最小临床重要差异二分的结果显著相关。R2I = 1的患者表明存在严重的功能和呼吸障碍,其康复后功能改善程度更高(P = 0.032)。虽然根据结果确定的组间6MWT的功能参数在统计学上差异不大,但分析中的几乎所有变量在R2I聚类中均表现出显著的分布差异。

这些发现突出了COPD的异质性以及无监督聚类识别不同患者亚组的潜力,从而能够制定更个性化的康复策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7fcd/12385657/c3c51b7a9b12/diagnostics-15-02053-g001.jpg

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