Predictive Analysis for Healthcare Sector Using Big data Technology

Nambiar Jyothi Ravindran, P. Gopalakrishnan
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引用次数: 4

Abstract

Healthcare companies are in an endless state of flux. They are underneath massive stress to predict health concerns of clients and to create excess premium holders which will at the same time diminish the cost. Patient’s readmission is often costly and shows shortfalls in the healthcare organizations. The cost of readmitted patients goes beyond 250 million dollars every year nationwide. Several healthcare agencies have started adopting Data Mining and Predictive Analysis. Predictive analysis involves various statistical techniques from modeling, machine learning, and data mining that breaks down past and present realism to forecasts the future. Henceforth, this paper is intended to propose a technique combining Apache Spark and deep learning based stacked ensemble method as a hybrid approach for predicting the readmission possibilities. Paper also focuses upon risk vindication strategies to predict patients with readmission possibility. This is implemented by considering medical data and estimating risk related using stacked machine learning techniques. With the application of such a framework that can satisfactorily classify the patient with readmission chance will help the healthcare companies to bestow top quality on healthcare systems. This technique helps achieve higher predictive accuracy of 90.69 % and RMSE score of 0.2521. Our empirical investigation demonstrates that this approach is helpful and can profit future research in the healthcare industry.
使用大数据技术的医疗保健行业预测分析
医疗保健公司处于不断变化的状态。他们承受着巨大的压力,要预测客户的健康问题,并创造额外的保费持有人,这将同时降低成本。病人的再入院往往是昂贵的,并显示医疗保健机构的不足。全国每年再入院患者的费用超过2.5亿美元。一些医疗机构已经开始采用数据挖掘和预测分析。预测分析包括建模、机器学习和数据挖掘等各种统计技术,这些技术可以分解过去和现在的现实主义,预测未来。因此,本文打算提出一种结合Apache Spark和基于深度学习的堆叠集成方法的技术,作为预测再入院可能性的混合方法。本文还重点讨论了预测患者再入院可能性的风险辩护策略。这是通过考虑医疗数据和使用堆叠机器学习技术估计相关风险来实现的。应用该框架,对有再入院机会的患者进行令人满意的分类,将有助于医疗保健公司赋予医疗保健系统最高的质量。该方法的预测准确率为90.69%,RMSE得分为0.2521。我们的实证调查表明,这种方法是有帮助的,可以在医疗保健行业的未来研究获利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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