Benis Arriel, Harel Nissim, Barak Barkan Refael, Srulovici Einav, Key Calanit
Faculty of Technology Management, Holon Institute of Technology, Holon, Israel.
Clalit Research Institute, Clalit Health Services, Tel-Aviv, Israel.
JMIR Res Protoc. 2018 Nov 7;7(11):e10734. doi: 10.2196/10734.
Data collected by health care organizations consist of medical information and documentation of interactions with patients through different communication channels. This enables the health care organization to measure various features of its performance such as activity, efficiency, adherence to a treatment, and different quality indicators. This information can be linked to sociodemographic, clinical, and communication data with the health care providers and administrative teams. Analyzing all these measurements together may provide insights into the different types of patient behaviors or more accurately to the different types of interactions patients have with the health care organizations.
The primary aim of this study is to characterize usage profiles of the available communication channels with the health care organization. The main objective is to suggest new ways to encourage the usage of the most appropriate communication channel based on the patient's profile. The first hypothesis is that the patient's follow-up and clinical outcomes are influenced by the patient's preferred communication channels with the health care organization. The second hypothesis is that the adoption of newly introduced communication channels between the patient and the health care organization is influenced by the patient's sociodemographic or clinical profile. The third hypothesis is that the introduction of a new communication channel influences the usage of existing communication channels.
All relevant data will be extracted from the Clalit Health Services data warehouse, the largest health care management organization in Israel. Data analysis process will use data mining approach as a process of discovering new knowledge and dealing with processing data extracted with statistical methods, machine learning algorithms, and information visualization tools. More specifically, we will mainly use the k-means clustering algorithm for discretization purposes and patients' profile building, a hierarchical clustering algorithm, and heat maps for generating a visualization of the different communication profiles. In addition, patients' interviews will be conducted to complement the information drawn from the data analysis phase with the aim of suggesting ways to optimize existing communication flows.
The project was funded in 2016. Data analysis is currently under way and the results are expected to be submitted for publication in 2019. Identification of patient profiles will allow the health care organization to improve its accessibility to patients and their engagement, which in turn will achieve a better treatment adherence, quality of care, and patient experience.
Defining solutions to increase patient accessibility to health care organization by matching the communication channels to the patient's profile and to change the health care organization's communication with the patient to a highly proactive one will increase the patient's engagement according to his or her profile.
INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): RR1-10.2196/10734.
医疗保健机构收集的数据包括医疗信息以及通过不同沟通渠道与患者互动的记录。这使医疗保健机构能够衡量其绩效的各种特征,如活动、效率、治疗依从性以及不同的质量指标。这些信息可以与社会人口统计学、临床以及与医疗保健提供者和行政团队的沟通数据相联系。综合分析所有这些测量结果可能会深入了解不同类型的患者行为,或者更准确地说,了解患者与医疗保健机构互动的不同类型。
本研究的主要目的是描述与医疗保健机构可用沟通渠道的使用情况。主要目标是根据患者情况提出鼓励使用最合适沟通渠道的新方法。第一个假设是患者的随访情况和临床结果受患者与医疗保健机构偏好的沟通渠道影响。第二个假设是患者与医疗保健机构之间新引入沟通渠道的采用受患者的社会人口统计学或临床情况影响。第三个假设是新沟通渠道的引入会影响现有沟通渠道的使用。
所有相关数据将从以色列最大的医疗保健管理机构克拉利特医疗服务数据仓库中提取。数据分析过程将使用数据挖掘方法,作为发现新知识以及处理用统计方法、机器学习算法和信息可视化工具提取的处理数据的过程。更具体地说,我们将主要使用k均值聚类算法进行离散化处理和构建患者情况,使用层次聚类算法,并使用热图来生成不同沟通情况的可视化。此外,将进行患者访谈,以补充从数据分析阶段得出的信息,目的是提出优化现有沟通流程的方法。
该项目于2016年获得资助。目前正在进行数据分析,预计结果将于2019年提交发表。识别患者情况将使医疗保健机构能够提高对患者的可达性及其参与度,进而实现更好的治疗依从性、护理质量和患者体验。
通过使沟通渠道与患者情况相匹配来定义增加患者与医疗保健机构可达性的解决方案,并将医疗保健机构与患者的沟通转变为高度主动的沟通,将根据患者情况提高患者的参与度。
国际注册报告识别号(IRRID):RR1-10.2196/10734。