4.5 Article

A Healthcare Paradigm for Deriving Knowledge Using Online Consumers' Feedback

期刊

HEALTHCARE
卷 10, 期 8, 页码 -

出版社

MDPI
DOI: 10.3390/healthcare10081592

关键词

decision-making; home healthcare; healthcare paradigm; pattern recognition; quality measurement; valuable insights

资金

  1. Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia [PNURSP2022R206]

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Home healthcare agencies provide clinical care and rehabilitation services to patients in their own homes. This study developed an automated predictive framework using data mining and machine learning techniques to evaluate and improve the performance of these agencies based on patient feedback. The results showed promising performance of deep neural networks in binary classification and significant outcome of random forest in multi-class classification. This research has important implications for supporting decision-making and enhancing performance for various stakeholders.
Home healthcare agencies (HHCAs) provide clinical care and rehabilitation services to patients in their own homes. The organization's rules regulate several connected practitioners, doctors, and licensed skilled nurses. Frequently, it monitors a physician or licensed nurse for the facilities and keeps track of the health histories of all clients. HHCAs' quality of care is evaluated using Medicare's star ratings for in-home healthcare agencies. The advent of technology has extensively evolved our living style. Online businesses' ratings and reviews are the best representatives of organizations' trust, services, quality, and ethics. Using data mining techniques to analyze HHCAs' data can help to develop an effective framework for evaluating the finest home healthcare facilities. As a result, we developed an automated predictive framework for obtaining knowledge from patients' feedback using a combination of statistical and machine learning techniques. HHCAs' data contain twelve performance characteristics that we are the first to analyze and depict. After adequate pattern recognition, we applied binary and multi-class approaches on similar data with variations in the target class. Four prominent machine learning models were considered: SVM, Decision Tree, Random Forest, and Deep Neural Networks. In the binary class, the Deep Neural Network model presented promising performance with an accuracy of 97.37%. However, in the case of multiple class, the random forest model showed a significant outcome with an accuracy of 91.87%. Additionally, variable significance is derived from investigating each attribute's importance in predictive model building. The implications of this study can support various stakeholders, including public agencies, quality measurement, healthcare inspectors, and HHCAs, to boost their performance. Thus, the proposed framework is not only useful for putting valuable insights into action, but it can also help with decision-making.

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