从住院病人护理资料预测再入院。

Muhammad K Lodhi, Rashid Ansari, Yingwei Yao, Gail M Keenan, Diana Wilkie, Ashfaq A Khokhar
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引用次数: 12

摘要

医院的再入院率越来越多地被用作确定向住院患者提供医疗保健质量的基准。大约四分之三的再次入院可以避免,从而节省数十亿美元。许多医院现在已经部署了电子健康记录(EHR)系统,可用于研究触发再入院的问题。然而,大多数电子病历都是高维且稀疏的,分析这样的数据集是一个大数据挑战。由于非线性变量的存在,一些著名的降维技术的效果被最小化。我们使用关联挖掘作为降维方法,并使用现有护理EHR系统的数据来开发模型,以预测再次入院的风险。这些模型可以帮助确定对患者的有效治疗方法,以尽量减少再次入院的可能性,降低成本并提高向患者提供的护理质量。模型的结果显示了对患者再次入院的准确预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicting Hospital Re-admissions from Nursing Care Data of Hospitalized Patients.

Predicting Hospital Re-admissions from Nursing Care Data of Hospitalized Patients.

Predicting Hospital Re-admissions from Nursing Care Data of Hospitalized Patients.

Readmission rates in the hospitals are increasingly being used as a benchmark to determine the quality of healthcare delivery to hospitalized patients. Around three-fourths of all hospital re-admissions can be avoided, saving billions of dollars. Many hospitals have now deployed electronic health record (EHR) systems that can be used to study issues that trigger readmission.However, most of the EHRs are high dimensional and sparsely populated, and analyzing such data sets is a Big Data challenge. The effect of some of the well-known dimension reduction techniques is minimized due to presence of non-linear variables. We use association mining as a dimension reduction method and the results are used to develop models, using data from an existing nursing EHR system, for predicting risk of re-admission to the hospitals. These models can help in determining effective treatments for patients to minimize the possibility of re-admission, bringing down the cost and increasing the quality of care provided to the patients. Results from the models show significantly accurate predictions of patient re-admission.

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