Health CARE Prediction using Predictive Analytics

Palwinder Kaur Mangat, K. S. Saini
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引用次数: 1

Abstract

Throughout the years, several studies have been conducted on how to improve the health sector’s management and administration activities, as well as, most importantly, the healthcare delivered to its patients. In the health-care system, data is currently growing at an exponential rate. In this view, the deployment of technology capable of utilizing it in a constructive way for the company, assisting it in achieving its goals, is critical. Health data analytics, particularly analytics that are used for making predictions are being used as a tool for enabling more preventive treatment alternatives. Despite having access to an abundance of data, even though there is no actionable knowledge using which healthcare industry can make predictions. This is due to the fact that, despite its abundance, healthcare data is fundamentally complex and fragmented. Critical care that is also a part of healthcare areas, also facing a problem of increasing population as well as economic pressures, due to which it is difficult for most of the human beings to get required treatments. When we talk ICU patients their health frequently changes at every movement. When in a county most of the population is aged then there will be more need of ICUs due to the health problems of old people. Equally, patient expectations are increasing with the advancement of technology in healthcare sector, but it is not possible to deliver the required service due to increasing inflation. Better, more productive care is thus the big challenge. This paper we are going to examine the use of predictive analytics in healthcare sector as well as how it is different than the other sectors where the predictive analytics are being used. It also has been also discussed in this paper the various applications of predictive analytics in healthcare sector and the challenges that predictive analytics are facing in the healthcare sector.
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使用预测分析进行医疗保健预测
多年来,就如何改善卫生部门的管理和行政活动,以及最重要的是如何改善向病人提供的保健服务进行了几项研究。在医疗保健系统中,数据目前正以指数速度增长。从这个角度来看,能够以建设性的方式为公司利用它的技术部署,帮助它实现其目标,是至关重要的。卫生数据分析,特别是用于预测的分析,正被用作实现更多预防性治疗替代方案的工具。尽管可以访问大量数据,尽管没有可操作的知识,医疗保健行业可以使用这些知识进行预测。这是因为,尽管医疗保健数据丰富,但从根本上讲,它是复杂和分散的。重症监护也是医疗保健领域的一部分,也面临着人口增长和经济压力的问题,因此大多数人很难得到所需的治疗。当我们谈论重症监护室病人时他们的健康状况在每一个动作中都经常发生变化。当一个县的大部分人口都是老年人时,由于老年人的健康问题,对icu的需求就会增加。同样,随着医疗保健行业技术的进步,患者的期望也在增加,但由于通货膨胀加剧,无法提供所需的服务。因此,更好、更有成效的护理是一个巨大的挑战。本文我们将研究预测分析在医疗保健部门的使用,以及它与使用预测分析的其他部门有何不同。本文还讨论了预测分析在医疗保健领域的各种应用以及预测分析在医疗保健领域面临的挑战。
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