The concept of care pathways is increasingly being used to enhance the quality of care and to optimize the use of resources for health care. Nevertheless, recommendations regarding the sequence of care are mostly based on consensus-based decisions as there is a lack of evidence on effective treatment sequences. In a real-world setting, classical statistical tools resulted to be insufficient to adequately consider a phenomenon with such high variability and has to be integrated with novel data mining techniques suitable of identifying patterns in complex data structures. Data-driven techniques can potentially support the empirical identification of effective care sequences by extracting them from data collected routinely. The purpose of this study is to perform sequence analysis to identify different patterns of treatment and to assess the most efficient in preventing adverse events. The clinical application that motivated the study of this method concerns the several problems frequently encountered in the quality of care provided in the mental health field. In particular, we analyzed administrative data provided by Regione Lombardia related to all the beneficiaries of the National Health Service with a diagnosis of schizophrenia from 2015 to 2018 resident in Lombardy, a region of northern Italy. This methodology considers the patient's therapeutic path as a conceptual unit, i.e., a sequence, composed of a succession of different states that can describe longitudinal patient's status. This kind of information, such as common patterns of care that allowed us to risk profile patients, can provide health policymakers an opportunity to plan optimum and individualized patient care by allocating appropriate resources, analyzing trends in the health status of a population, and finding the risk factors that can be leveraged to prevent the decline of mental health status at the population level.
翻译:护理途径的概念正越来越多地被用于提高护理质量和优化保健资源的使用。然而,关于护理顺序的建议大多基于基于共识的决定,因为缺乏有效治疗序列的证据。在现实世界环境中,典型的统计工具导致不足以充分审议如此多变的现象,必须与适合查明复杂数据结构模式的新的数据挖掘技术相结合。数据驱动技术可以通过从常规收集的数据中提取这些数据,支持有效护理序列的实证确定。本研究的目的是进行序列分析,以确定不同的治疗模式,并评估预防不利事件的最有效趋势。这一方法的临床应用涉及在心理健康领域提供的护理质量方面经常遇到的若干问题。特别是,我们分析了区域Lombardaria提供的与全国保健服务所有受益者相关的行政数据,并分析了2015年至2018年居住在意大利北部伦巴迪的病人的心理分裂症。这一方法将病人的治疗途径视为一个适当的预防治疗模式,并评估预防不利事件的最有效趋势。这一方法的临床应用涉及在心理健康领域经常遇到的护理质量问题。 能够将患者的健康状况描述为一种常态的健康状况提供一种典型的诊断,从而能够将病人的健康状况描述为一种典型的健康状况提供一种机会。