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Towards healthcare business intelligence in long-term care An explorative case study in the Netherlands

机译:寻求长期护理中的医疗保健业务智能荷兰的一项探索性案例研究

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摘要

This research contributes to the domain of long-term care by exploring knowledge discovery techniques based on a large dataset and guided by representative information needs to better manage both quality of care and financial spendings, as a next step towards more mature healthcare business intelligence in long-term care. We structure this exploratory research according to the steps of the CRoss Industry Standard Process for Data Mining (CRISP-DM) process. Firstly, we interview 22 experts to determine the information needs in long-term care which we, secondly, translate into 25 data mining goals. Thirdly, we perform a single case study at a Dutch long-term care institution with around 850 clients in five locations. We analyze the institution's database which contains information from April 2008 to April 2012 to identify patterns in incident information, patterns in risk assessment information, the relationship between risk assessments and incident information, patterns in the average duration of stay, and we identify and predict Care Intensity Package (ZZP) combinations. Fourth and finally, we position all data mining goals in a two-by-two matrix to visualize the relative importance of each goal in relation to both quality of care and financial state of care institutions.
机译:这项研究通过探索基于大型数据集并在有代表性的信息需求指导下更好地管理护理质量和财务支出的知识发现技术,从而为长期护理领域做出了贡献,这是长期朝着更成熟的医疗保健业务智能迈出的下一步长期护理。我们根据CRoss数据挖掘行业标准流程(CRISP-DM)流程的步骤来组织此探索性研究。首先,我们采访了22位专家,以确定长期护理中的信息需求,然后将其转化为25个数据挖掘目标。第三,我们在一家荷兰的长期护理机构进行了一次个案研究,该机构在五个地点拥有约850名客户。我们分析该机构的数据库,该数据库包含2008年4月至2012年4月的信息,以识别事故信息的模式,风险评估信息的模式,风险评估与事故信息之间的关系,平均住院时间的模式,并确定和预测护理强度包装(ZZP)组合。第四点也是最后一点,我们将所有数据挖掘目标放在一个2比2的矩阵中,以可视化每个目标相对于医疗质量和医疗机构财务状况的相对重要性。

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