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长期护理环境中多维谵妄指数的潜在类别分析。

Latent class analysis of the multivariate Delirium Index in long-term care settings.

机构信息

Department of Epidemiology,Biostatistics and Occupational Health,McGill University,Montreal,Quebec,Canada.

St. Mary's Hospital Research Centre,Montreal,Quebec,Canada.

出版信息

Int Psychogeriatr. 2019 Jan;31(1):59-72. doi: 10.1017/S1041610218000510. Epub 2018 May 3.

Abstract

UNLABELLED

ABSTRACTBackground:A few studies examine the time evolution of delirium in long-term care (LTC) settings. In this work, we analyze the multivariate Delirium Index (DI) time evolution in LTC settings.

METHODS

The multivariate DI was measured weekly for six months in seven LTC facilities, located in Montreal and Quebec City. Data were analyzed using a hidden Markov chain/latent class model (HMC/LC).

RESULTS

The analysis sample included 276 LTC residents. Four ordered latent classes were identified: fairly healthy (low "disorientation" and "memory impairment," negligible other DI symptoms), moderately ill (low "inattention" and "disorientation," medium "memory impairment"), clearly sick (low "disorganized thinking" and "altered level of consciousness," medium "inattention," "disorientation," "memory impairment" and "hypoactivity"), and very sick (low "hypoactivity," medium "altered level of consciousness," high "inattention," "disorganized thinking," "disorientation" and "memory impairment"). Four course types were also identified: stable, improvement, worsening, and non-monotone. Class order was associated with increasing cognitive impairment, frequency of both prevalent/incident delirium and dementia, mortality rate, and decreasing performance in ADL.

CONCLUSION

Four ordered latent classes and four course types were found in LTC residents. These results are similar to those reported previously in acute care (AC); however, the proportion of very sick residents at enrolment was larger in LTC residents than in AC patients. In clinical settings, these findings could help identify participants with a chronic clinical disorder. Our HMC/LC approach may help understand coexistent disorders, e.g. delirium and dementia.

摘要

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摘要

背景

有一些研究考察了长期护理(LTC)环境中谵妄的时间演变。在这项工作中,我们分析了 LTC 环境中多维谵妄指数(DI)的时间演变。

方法

在蒙特利尔和魁北克市的七家长期护理机构中,每周测量多维 DI 长达六个月。使用隐马尔可夫链/潜在类别模型(HMC/LC)对数据进行分析。

结果

分析样本包括 276 名 LTC 居民。确定了四个有序潜在类别:相当健康(“定向障碍”和“记忆障碍”低,其他 DI 症状可忽略)、中度病态(“注意力不集中”和“定向障碍”低,“记忆障碍”中等)、明显病态(“思维紊乱”和“意识水平改变”低,“注意力不集中”、“定向障碍”、“记忆障碍”和“活动减少”中等)和非常病态(“活动减少”低,“意识水平改变”中等,“注意力不集中”、“思维紊乱”、“定向障碍”和“记忆障碍”高)。还确定了四种病程类型:稳定、改善、恶化和非单调。类别顺序与认知障碍的增加、普遍/新发谵妄和痴呆的频率、死亡率以及 ADL 表现的降低有关。

结论

在 LTC 居民中发现了四个有序潜在类别和四种病程类型。这些结果与急性护理(AC)中报告的结果相似;然而,在 LTC 居民中,非常病态居民的比例在入组时大于 AC 患者。在临床环境中,这些发现可以帮助识别患有慢性临床疾病的参与者。我们的 HMC/LC 方法可以帮助理解并存疾病,例如谵妄和痴呆。

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