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Extraction of determinants of postoperative length of stay from operation records

机译:从手术记录中提取术后住院时间的决定因素

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Secondary use of clinical text data are gaining much attention in improving the quality and the efficiency of medical treatment. Although there is some case studies of medical-examination text data, there are not many examples fed back to the medical-examination spot. The present paper analyses the operation records of total hip arthroplasty. We extracted feature words that characterize the two peaks which appeared in distribution of postoperative hospital days using SVM (support vector machine) and FS (feature selection). The models gained by optimal FS attained 60% accuracy as prediction performance. We applied logistic regression analysis to estimate postoperative length of stay from the extracted feature words. Most words were not statistically significant except two words.
机译:临床文本数据的二次使用在提高医疗质量和效率方面引起了广泛关注。尽管对医学检查文本数据进行了一些案例研究,但反馈给医学检查点的示例并不多。本文分析了全髋关节置换术的手术记录。我们使用SVM(支持向量机)和FS(特征选择)提取了特征词,这些特征词表征了出现在术后住院日分布中的两个峰值。通过最优FS获得的模型的预测性能达到60%的准确性。我们应用逻辑回归分析从提取的特征词估计术后住院时间。除两个单词外,大多数单词在统计上都不显着。

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