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Identifying subgroups of patients using latent class analysis: should we use a single-stage or a two-stage approach? A methodological study using a cohort of patients with low back pain

机译:使用潜在类别分析识别患者亚组:我们应该使用单阶段还是两阶段方法?使用一组腰痛患者的方法学研究

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Background Heterogeneity in patients with low back pain (LBP) is well recognised and different approaches to subgrouping have been proposed. Latent Class Analysis (LCA) is a statistical technique that is increasingly being used to identify subgroups based on patient characteristics. However, as LBP is a complex multi-domain condition, the optimal approach when using LCA is unknown. Therefore, this paper describes the exploration of two approaches to LCA that may help improve the identification of clinically relevant and interpretable LBP subgroups. Methods From 928 LBP patients consulting a chiropractor, baseline data were used as input to the statistical subgrouping. In a single-stage LCA , all variables were modelled simultaneously to identify patient subgroups. In a two-stage LCA , we used the latent class membership from our previously published LCA within each of six domains of health (activity, contextual factors, pain, participation, physical impairment and psychology) (first stage) as the variables entered into the second stage of the two-stage LCA to identify patient subgroups. The description of the results of the single-stage and two-stage LCA was based on a combination of statistical performance measures, qualitative evaluation of clinical interpretability (face validity) and a subgroup membership comparison. Results For the single-stage LCA , a model solution with seven patient subgroups was preferred, and for the two-stage LCA , a nine patient subgroup model. Both approaches identified similar, but not identical, patient subgroups characterised by (i) mild intermittent LBP, (ii) recent severe LBP and activity limitations, (iii) very recent severe LBP with both activity and participation limitations, (iv) work-related LBP, (v) LBP and several negative consequences and (vi) LBP with nerve root involvement. Conclusions Both approaches identified clinically interpretable patient subgroups. The potential importance of these subgroups needs to be investigated by exploring whether they can be identified in other cohorts and by examining their possible association with patient outcomes. This may inform the selection of a preferred LCA approach.
机译:背景下背痛(LBP)患者的异质性已得到公认,并且已提出了不同的分组方法。潜在类别分析(LCA)是一种统计技术,越来越多地用于根据患者特征识别亚组。但是,由于LBP是复杂的多域条件,因此使用LCA时的最佳方法尚不清楚。因此,本文描述了两种LCA方法的探索,这可能有助于改善对临床相关和可解释LBP亚组的识别。方法从928名咨询脊医的LBP患者中,将基线数据用作统计分组的输入。在单阶段LCA中,同时对所有变量进行建模以识别患者亚组。在两个阶段的LCA中,我们使用了先前发布的LCA在六个健康领域(活动,情境因素,疼痛,参与,身体受损和心理)(第一阶段)中的潜在类成员身份作为输入到变量中的变量。两阶段LCA的第二阶段可识别患者亚组。对单阶段和两阶段LCA结果的描述是基于统计性能指标,临床可解释性(面部有效性)的定性评估和亚组成员比较的组合。结果对于单阶段LCA,首选具有七个患者亚组的模型解决方案,而对于两阶段LCA,则需要九个患者亚组模型。两种方法都确定了相似但不完全相同的患者亚组,其特征是(i)轻度间歇性LBP,(ii)最近的严重LBP和活动受限,(iii)最近的严重LBP同时具有活动和参与限制,(iv)与工作有关LBP,(v)LBP和一些负面后果,以及(vi)神经根受累的LBP。结论两种方法均确定了临床上可解释的患者亚组。这些亚组的潜在重要性需要通过探索是否可以在其他队列中找到它们以及通过检查其与患者预后的可能关联来进行研究。这可以通知优选的LCA方法的选择。

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