Healthcare trajectories of aging individuals during their last year of life: application of process mining methods to administrative health databases.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Delphine Bosson-Rieutort, Alexandra Langford-Avelar, Juliette Duc, Benjamin Dalmas
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Abstract

Context: World is aging and the prevalence of chronic diseases is raising with age, increasing financial strain on organizations but also affecting patients' quality of life until death. Research on healthcare trajectories has gained importance, as it can help anticipate patients' needs and optimize service organization. In an overburdened system, it is essential to develop automated methods based on comprehensive and reliable and already available data to model and predict healthcare trajectories and future utilization. Process mining, a family of process management and data science techniques used to derive insights from the data generated by a process, can be a solid candidate to provide a useful tool to support decision-making.

Objective: We aimed to (1) identify the healthcare baseline trajectories during the last year of life, (2) identify the differences in trajectories according to medical condition, and (3) identify adequate settings to provide a useful output.

Methods: We applied process mining techniques on a retrospective longitudinal cohort of 21,255 individuals who died between April 1, 2014, and March 31, 2018, and were at least 66 years or older at death. We used 6 different administrative health databases (emergency visit, hospitalisation, homecare, medical consultation, death register and administrative), to model individuals' healthcare trajectories during their last year of life.

Results: Three main trajectories of healthcare utilization were highlighted: (i) mainly accommodating a long-term care center; (ii) services provided by local community centers in combination with a high proportion of medical consultations and acute care (emergency and hospital); and (iii) combination of consultations, emergency visits and hospitalization with no other management by local community centers or LTCs. Stratifying according to the cause of death highlighted that LTC accommodation was preponderant for individuals who died of physical and cognitive frailty. Conversely, services offered by local community centers were more prevalent among individuals who died of a terminal illness. This difference is potentially related to the access to and use of palliative care at the end-of-life, especially home palliative care implementation.

Conclusion: Despite some limitations related to data and visual limitations, process mining seems to be a method that is both relevant and simple to implement. It provides a visual representation of the processes recorded in various health system databases and allows for the visualization of the different trajectories of healthcare utilization.

老年人在生命最后一年的医疗保健轨迹:过程挖掘方法在管理健康数据库中的应用。
背景:世界正在老龄化,慢性疾病的患病率随着年龄的增长而上升,增加了组织的财政压力,但也影响了患者直到死亡的生活质量。对医疗保健轨迹的研究变得越来越重要,因为它可以帮助预测患者的需求并优化服务组织。在一个负担过重的系统中,开发基于全面、可靠和现有数据的自动化方法来建模和预测医疗保健轨迹和未来的利用是至关重要的。流程挖掘是一系列流程管理和数据科学技术,用于从流程生成的数据中获得见解,可以作为提供有用工具来支持决策的可靠候选。目的:我们的目的是(1)确定生命最后一年的医疗保健基线轨迹,(2)根据医疗状况确定轨迹的差异,以及(3)确定适当的设置以提供有用的输出。方法:我们对2014年4月1日至2018年3月31日期间死亡的21255人进行了回顾性纵向队列研究,这些人的死亡年龄至少为66岁或以上。我们使用6个不同的行政健康数据库(急诊、住院、家庭护理、医疗咨询、死亡登记和行政)来模拟个人生命最后一年的医疗保健轨迹。结果:三个主要的医疗保健利用轨迹突出:(i)主要容纳一个长期护理中心;㈡地方社区中心提供的服务,同时提供高比例的医疗咨询和急症护理(急诊和住院);(三)咨询、急诊和住院相结合,而不由当地社区中心或长期服务中心进行其他管理。根据死亡原因进行分层,突出表明LTC住宿对因身体和认知衰弱而死亡的个人有利。相反,当地社区中心提供的服务在死于绝症的人群中更为普遍。这种差异可能与临终时获得和使用姑息治疗有关,特别是在家中实施姑息治疗。结论:尽管有一些与数据和视觉限制相关的限制,过程挖掘似乎是一种既相关又易于实现的方法。它提供了记录在各种卫生系统数据库中的过程的可视化表示,并允许对医疗保健利用的不同轨迹进行可视化。
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
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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