Abstract

Large data volumes have been collected by healthcare organizations at an unprecedented rate. Today both physicians and healthcare system managers are very interested in extracting value from such data. Nevertheless, the increasing data complexity and heterogeneity prompts the need for new efficient and effective data mining approaches to analyzing large patient datasets. Generalized association rule mining algorithms can be exploited to automatically extract hidden multiple-level associations among patient data items (e.g., examinations, drugs) from large datasets equipped with taxonomies. However, in current approaches all data items are assumed to be equally relevant within each transaction, even if this assumption is rarely true.This paper presents a new data mining environment targeted to patient data analysis. It tackles the issue of extracting generalized rules from weighted patient data, where items may weight differently according to their importance within each transaction. To this aim, it proposes a novel type of association rule, namely the Weighted Generalized Association Rule (W-GAR). The usefulness of the proposed pattern has been evaluated on real patient datasets equipped with a taxonomy built over examinations and drugs. The achieved results demonstrate the effectiveness of the proposed approach in mining interesting and actionable knowledge in a real medical care scenario.

Highlights

  • In today’s world large volumes of data have continuously been generated during patient care

  • Patient data analysis is attractive for both physicians, who can use new automatic tools for patient care and healthcare system management, and computer scientists, who can tackle the challenging issue of applying novel data mining techniques to real datasets characterized by an inherent sparseness

  • The results show that top ranked Weighted Generalized Association Rule (W-GAR) are on average more interesting than those mined

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Summary

Introduction

In today’s world large volumes of data have continuously been generated during patient care. The increasing complexity and heterogeneity of medical data prompts the need for novel and effective approaches to automatically mining actionable knowledge This knowledge can be exploited, for example, to improve the current patient care processes, to assess new medical guidelines, or to enrich existing ones. In the medical context prescribed examinations and drugs have not all the same importance in patient care To overcome this issue, weighted datasets can be analyzed. As a case study, the proposed approach has been applied to the medical care scenario to demonstrate the effectiveness of W-GARs in discovering interesting and actionable knowledge on real data. W-GARs are a new type of generalized association rules, which consider item weights during rule evaluation. W-GARs, the new type of generalized association rules proposed in this paper, consider item weights during rule evaluation. Recommending supplementary drugs according to the confidence value of traditional rules could be misleading

Weighted patient data analyzer
Experimental results
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Conclusions and future work

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