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A weighted logistic regression based on similarity learning for prediction of readmission event in hospitals.

机译:基于相似性学习的加权逻辑回归用于预测医院的再入院事件。

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摘要

The federal government announced that hospitals with higher readmission rates than expected will be penalized and get less money from payers like Medicare, Medicaid or insurance companies. The number of patients who experience readmission to a hospital after a previous hospital stay is used to evaluate the quality of hospital care. And high readmission rates are considered as the wasteful spending.;There are a variety of statistical methods can be used for predicting the probability of a specific event. By predicting the probability of the readmission with the patients' history data before discharging, hospitals can change the schedule to discharge the patients and treat them something more eventually to reduce the readmission rates. The assumption of the experiment in this paper is that if we consider the similarity between test and training data when we fit the model, the discriminatory power will be better and more accurate. For this purpose, Gaussian kernel logistic regression was used. Gaussian kernel function measures similarity between a point of interest and one of N covariate vectors with kernel trick. Kernel logistic regression (KLR) is a promising technique in forecasting and other applications for big databases, non-linearity classification or in addition to many predictors (Elbashir and Wang, 2015). To compare this Gaussian kernel to the other similarity method, Jaccard similarity & Pearson correlation methods were used. After calculating the similarity with these two similarity methods, fit the weighted logistic regression to the data. And these two similarity-based approaches were compared with the normal logistic regression to evaluate the classifier performances. The experimental results show that weighted logistic regression using Jaccard & Pearson Correlation achieved slightly better prediction performance than others.
机译:联邦政府宣布,再入院率高于预期的医院将受到处罚,并从Medicare,Medicaid或保险公司等付款人那里获得更少的钱。先前住院后再次入院的患者人数用于评估医院护理的质量。高的重新录取率被视为浪费性支出。有多种统计方法可以用来预测特定事件的概率。通过在出院前根据患者的历史数据预测再次入院的可能性,医院可以更改出院时间表,并最终对他们进行治疗,以降低再次入院率。本文中实验的假设是,如果在拟合模型时考虑测试数据与训练数据之间的相似性,则判别力会更好,更准确。为此,使用了高斯核逻辑回归。高斯核函数通过核技巧测量兴趣点和N个协变量向量之一之间的相似性。逻辑对数回归(KLR)是一种有前途的技术,可用于大型数据库的预测和其他应用,非线性分类或除许多预测变量外(Elbashir and Wang,2015)。为了将此高斯核与其他相似性方法进行比较,使用了Jaccard相似性和Pearson相关方法。用这两种相似度方法计算相似度后,将加权逻辑回归拟合到数据中。并将这两种基于相似度的方法与常规逻辑回归进行比较,以评估分类器的性能。实验结果表明,使用Jaccard和Pearson Correlation进行加权logistic回归的预测性能略高于其他方法。

著录项

  • 作者

    Hong, Seunghee.;

  • 作者单位

    The University of Texas at San Antonio.;

  • 授予单位 The University of Texas at San Antonio.;
  • 学科 Health care management.;Statistics.
  • 学位 M.S.
  • 年度 2016
  • 页码 43 p.
  • 总页数 43
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:48:27

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