Informatics (Sep 2024)

Adopting Business Intelligence Techniques in Healthcare Practice

  • Hui-Chuan Huang,
  • Hui-Kuan Wang,
  • Hwei-Ling Chen,
  • Jeng Wei,
  • Wei-Hsian Yin,
  • Kuan-Chia Lin

DOI
https://doi.org/10.3390/informatics11030065
Journal volume & issue
Vol. 11, no. 3
p. 65

Abstract

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With the rapid development of information technology, digital health technologies have become increasingly prevalent in the field of healthcare. In this study, business intelligence (BI) techniques were combined with research-based prediction models to increase the efficiency and quality of healthcare practices. A data scenario involving 200 older adults with various measurements, including health beliefs, social support, self-efficacy, and disease duration, was used to establish a medication adherence prediction model in a BI system. A regression model, logistic regression model, tree model, and score-based prediction model were used to predict medication adherence among older adults. The developed BI-based prediction model has visualization, real-time feedback, and data updating functionality. These features enhanced the effectiveness of prediction models in clinical practice. Healthcare professionals can incorporate the proposed system into their care practice for health assessments and management, and patients can use the system to manage themselves. The developed BI-based care system can also be used to achieve effective communication and shared decision-making between care managers and patients. Further empirical studies integrating prediction models into the proposed BI system for assessment, management, and decision-making in healthcare practice are warranted.

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