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Class Imbalance Impact on the Prediction of Complications during Home Hospitalization: A Comparative Study

机译:班级不平衡对家庭住院期间并发症预测的影响:一项比较研究

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Home hospitalization (HH) is presented as a healthcare alternative capable of providing high standards of care when patients no longer need hospital facilities. Although HH seems to lower healthcare costs by shortening hospital stays and improving patient’s quality of life, the lack of continuous observation at home may lead to complications in some patients. Since blood tests have been proven to provide relevant prognosis information in many diseases, this paper analyzes the impact of different sampling methods on the prediction of HH outcomes. After a first exploratory analysis, some variables extracted from routine blood tests performed at the moment of HH admission, such as hemoglobin, lymphocytes or creatinine, were found to unmask statistically significant differences between patients undergoing successful and unsucessful HH stays. Then, predictive models were built with these data, in order to identify unsuccessful cases eventually needing hospital facilities. However, since these hospital admissions during HH programs are rare, their identification through conventional machine-learning approaches is challenging. Thus, several sampling strategies designed to face class imbalance were herein overviewed and compared. Among the analyzed approaches, over-sampling strategies, such as ROSE (Random Over-Sampling Examples) and conventional random over-sampling, showed the best performances. Nevertheless, further improvements should be proposed in the future so as to better identify those patients not benefiting from HH.
机译:家庭住院(HH)是作为医疗保健替代方案提出的,它可以在患者不再需要医院设施时提供高水平的护理。尽管HH似乎可以通过缩短住院时间和改善患者的生活质量来降低医疗保健成本,但在家中缺乏连续观察可能会导致某些患者的并发症。由于血液测试已被证明可在许多疾病中提供相关的预后信息,因此本文分析了不同采样方法对HH结果预测的影响。经过初步探索性分析后,发现从HH入院时进行的常规血液检查中提取的一些变量,例如血红蛋白,淋巴细胞或肌酐,可以掩盖成功和不成功的HH住院患者之间的统计学显着性差异。然后,使用这些数据建立预测模型,以识别最终需要医院设施的失败病例。但是,由于在HH计划期间很少有这些医院入院,因此通过常规机器学习方法进行识别很难。因此,本文概述并比较了几种设计用于面对阶级失衡的抽样策略。在分析的方法中,过采样策略(如ROSE(随机过采样示例)和常规随机过采样)表现出最佳性能。但是,将来应提出进一步的改进措施,以便更好地识别出那些未从HH中受益的患者。

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