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Patterns in Cognitive Rehabilitation of Traumatic Brain Injury Patients: A Text Mining Approach

机译:创伤性脑损伤患者的认知康复模式:文本挖掘方法

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Traumatic Brain Injury (TBI) is a leading cause of disability worldwide, there is one TBI case every 15 seconds and in every 5 minutes someone becomes permanently disabled due to it. Brain injuries lack of surgical or pharmacological therapies, therefore Cognitive Rehabilitation (CR) is the generally adopted treatment. Computerized CR tasks are increasingly replacing traditional "paper and pencil" approaches. Nevertheless, CR plans are manually designed by clinicians from scratch based on their own experience. There is very little research on the amount and type of practice that occurs during computerized CR treatments and its relationship to patients' outcomes. While task repetition is not the only important feature, it is becoming clear that neuroplastic change and functional improvement occur after specific tasks are performed, but do not occur with others. In this work we focus on the preprocessing, patterns and knowledge extraction phases of a Knowledge Discovery in Databases (KDD) framework. We propose considering CR programs as sequences of sessions and pattern searching (association rules, classification models, clustering and shallow neural models) to support clinicians in the selection of specific interventions (e.g. tasks assignations). The proposed framework is applied to 40000 tasks executions from real clinical setting. Results show different execution patterns on patients with positive and negative responses to treatment, predictive models outperform previous recent research, therapists are provided with new insights and tools for tasks selection criteria and design of CR programs.
机译:创伤性脑损伤(TBI)是全球残疾的主要原因,每15秒都有一个TBI案例,每5分钟一次有人因其而被永久禁用。脑损伤缺乏外科手术或药理学疗法,因此认知康复(CR)是普遍采用的治疗方法。计算机化的CR任务越来越多地取代传统的“纸张和铅笔”方法。然而,CR计划由临床医生手动设计,根据自己的经验。对计算机CR治疗期间发生的练习的数量和类型及其与患者结果的关系几乎没有研究。虽然任务重复不是唯一重要的特征,但很明显,在进行特定任务后发生神经塑性变化和功能性改进,但不会与他人发生。在这项工作中,我们专注于数据库(KDD)框架中知识发现的预处理,模式和知识提取阶段。我们建议考虑CR计划作为会话和模式搜索(关联规则,分类模型,聚类和浅内神经模型),以支持临床医生在选择特定干预(例如任务分配)中。所提出的框架应用于来自真实临床环境的40000任务执行。结果显示对治疗的正负反应患者的不同执行模式,预测模型优于最近的研究,治疗师提供新的洞察和工具,用于任务选择标准和CR程序设计。

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