基于高效地图减少的糖尿病患者处方推荐系统

Ritika Bateja, S. Dubey, A. Bhatt
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引用次数: 0

摘要

. 由于手工流程和遗留记录保存方法,医疗保健部门无法利用通过数据洞察获得的知识。保存医疗记录的过时方法已被证明不足以治疗糖尿病等慢性疾病。推荐系统(RS)等数据分析方法可以成为治疗糖尿病的福音。RS利用预测分析,为临床医生提供确定患者治疗方法所需的信息。本文提出了基于处方的健康推荐系统(HRS),该系统通过学习其他糖尿病患者的处方治疗方法来帮助推荐治疗方法。本文还提出了一种基于噪声应用的高级密度空间聚类(DBSCAN)聚类方法,该方法利用窗口化算法作为相似性度量对数据进行聚类以获得推荐。采用map-reduce对数据进行并行处理,提高聚类过程的效率和可扩展性,从而有效地治疗糖尿病。本文很好地展示了Map Reduce如何利用集群来提高HRS的效率和可伸缩性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prescription Based Recommender System for Diabetic Patients Using Efficient Map Reduce
. Healthcare sector has been deprived of leveraging knowledge gained through data insights, due to manual processes and legacy record-keeping methods. Outdated methods for maintaining healthcare records have not been proven sufficient for treating chronic diseases like diabetes. Data analysis methods such as Recommendation System (RS) can serve as a boon for treating diabetes. RS leverages predictive analysis and provides clinicians with information needed to determine the treatments to patients. Prescription-based Health Recommender System (HRS) is proposed in this paper which aids in recommending treatments by learning from the treatments prescribed to other patients diagnosed with diabetes. An Advanced Density-Based Spatial Clustering of Applications with Noise (DBSCAN) clustering is also proposed to cluster the data for deriving recommendations by using winnowing algorithm as a similarity measure. A parallel processing of data is applied using map-reduce to increase the efficiency & scalability of clustering process for effective treatment of diabetes. This paper provides a good picture of how the Map Reduce can benefit in increasing the efficiency and scalability of the HRS using clustering.
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