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An Unsupervised Learning Model for Pattern Recognition in Routinely Collected Healthcare Data

机译:常规收集医疗数据中的模式识别的无监督学习模型

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This study examines a large routinely collected healthcare database containing patient-level self-reported outcomes following knee replacement surgery. A model based on unsupervised machine learning methods, including k-means and hierarchical clustering, is proposed to detect patterns of pain experienced by patients and to derive subgroups of patients with different outcomes based on their pain characteristics. Results showed the presence of between two and four different sub-groups of patients based on their pain characteristics. Challenges associated with unsupervised learning using real-world data are described and an approach for evaluating models in the presence of unlabelled data using internal and external cluster evaluation techniques is presented, that can be extended to other unsupervised learning applications within healthcare and beyond. To our knowledge, this is the first study proposing an unsupervised learning model for characterising pain-based patient subgroups using the UK NHS PROMs database.
机译:本研究调查了大量定期收集医疗数据库包含患者级自我报告的以下膝关节置换手术的结果。基于无监督的机器学习方法,包括K均值和层次聚类模型,提出了由患者和患者根据自己的疼痛的特点不同的结果导出分组检测痛苦经历的模式。结果表明:不同的患者亚组根据自己疼痛的特点二和四之间的存在。使用真实世界的数据的无监督学习中描述以及在使用内部和外部集群评价技术未标记数据的存在评估模型的方法,提出相关的挑战,即可以扩展到医疗保健和超出内的其它无监督学习应用程序。据我们所知,这是首次研究提出了表征利用英国NHS PROM的基于数据库的疼痛,患者亚组无监督学习模型。

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