Effect of discontinuing antipsychotic medications on the risk of hospitalization in long-term care: a machine learning-based analysis.

IF 8.3 1区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Mikko Nuutinen, Riikka-Leena Leskelä, Daniela Fialova, Ira Haavisto, Harriet Finne-Soveri, Jokke Häsä, Johanna Edgren, Hein van Hout, Daniel E da Cunha Leme, John P Hirdes, Graziano Onder, Rosa Liperoti
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引用次数: 0

Abstract

Background: Antipsychotic medications are frequently prescribed to older residents of long-term care facilities (LTCFs) despite their limited efficacy and considerable safety risks. While discontinuation of these drugs might help reduce their associated morbidity, the impact of stopping antipsychotics on the risk of hospitalization has not been studied yet. The study aimed at estimating the effect of antipsychotic discontinuation on the risk of hospitalization in older LTCF residents and at identifying relevant factors influencing such effect.

Methods: For this registry-based retrospective cohort study, data from a cohort of older LTCF residents in Finland from the years 2014 to 2018 was analyzed. Data sources were the Resident Assessment Instrument for Long-Term Care (RAI-LTC) based comprehensive geriatric assessments and the Finnish Care Register for Health Care. For the initial cohort, 5467 users of antipsychotic medications with at least four assessments, each conducted 6 months apart, were selected. Residents were defined either as discontinuing, if antipsychotics were prescribed at the first two assessments but not at the last two, or as chronic users, if antipsychotics were prescribed at all four assessments. Causal machine learning (ML) methods including double machine learning (DML), double robust (DR), X-learner, and causal forest (CF) were applied to estimate the effect of antipsychotic discontinuation on the risk of hospitalization and to identify factors influencing such effect. The follow-up time was 1 year. The methods of SHAP values (SHapley Additive exPlanations), partial dependence plots (PDP), and surrogate models were used for model interpretation.

Results: Nearly 43% of residents in the study discontinued antipsychotic medications. Antipsychotic discontinuation lowered the probability of hospitalization of about 12% (average treatment effect, ATE). The individual treatment effect (ITE) estimations ranged from - 30% to + 1%. The use of restraints, age, and functional impairment were relevant variables in all ITE models in influencing the predicted ITE.

Conclusions: Antipsychotic discontinuation may decrease the likelihood of hospitalization among older LTCF residents, benefiting most users of these drugs. Promoting antipsychotic discontinuation may prevent hospitalizations and reduce morbidity and mortality in long-term care.

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停用抗精神病药物对长期护理住院风险的影响:基于机器学习的分析
背景:抗精神病药物经常被开给长期护理机构(ltcf)的老年居民,尽管它们的疗效有限,而且存在相当大的安全风险。虽然停用这些药物可能有助于降低其相关发病率,但尚未研究停用抗精神病药物对住院风险的影响。本研究旨在评估抗精神病药物停药对老年LTCF患者住院风险的影响,并确定影响这种影响的相关因素。方法:在这项基于注册表的回顾性队列研究中,分析了2014年至2018年芬兰老年LTCF居民队列的数据。数据来源是基于长期护理居民评估工具(RAI-LTC)的综合老年评估和芬兰保健护理登记册。在最初的队列中,选择了5467名抗精神病药物使用者,至少进行了四次评估,每次评估间隔6个月。如果在前两次评估中开了抗精神病药物,而在最后两次评估中没有开,则居民被定义为停止服用;如果在所有四次评估中都开了抗精神病药物,则居民被定义为长期使用者。采用因果机器学习(ML)方法,包括双机器学习(DML)、双鲁棒(DR)、x -学习者(X-learner)和因果森林(CF),评估抗精神病药物停药对住院风险的影响,并确定影响这种影响的因素。随访时间1年。采用SHapley加性解释(SHapley Additive explanatory)、部分依赖图(partial dependence plots, PDP)和代理模型进行模型解释。结果:研究中近43%的住院患者停用了抗精神病药物。停用抗精神病药物可使住院概率降低约12%(平均治疗效果,ATE)。个体治疗效果(ITE)估计范围从- 30%到+ 1%。在所有ITE模型中,使用约束、年龄和功能损害是影响预测ITE的相关变量。结论:停用抗精神病药物可降低老年LTCF患者住院的可能性,使这些药物的大多数使用者受益。提倡停用抗精神病药物可以预防住院并降低长期护理的发病率和死亡率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Medicine
BMC Medicine 医学-医学:内科
CiteScore
13.10
自引率
1.10%
发文量
435
审稿时长
4-8 weeks
期刊介绍: BMC Medicine is an open access, transparent peer-reviewed general medical journal. It is the flagship journal of the BMC series and publishes outstanding and influential research in various areas including clinical practice, translational medicine, medical and health advances, public health, global health, policy, and general topics of interest to the biomedical and sociomedical professional communities. In addition to research articles, the journal also publishes stimulating debates, reviews, unique forum articles, and concise tutorials. All articles published in BMC Medicine are included in various databases such as Biological Abstracts, BIOSIS, CAS, Citebase, Current contents, DOAJ, Embase, MEDLINE, PubMed, Science Citation Index Expanded, OAIster, SCImago, Scopus, SOCOLAR, and Zetoc.
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