We present a data mining framework that can be applied for analyzing patient arrivals into healthcare centers. The sequentially applied methods are association mining, text cloud analysis, Pareto analysis, cross-tabular analysis, and regression analysis. We applied our framework using real-world data from a one of the largest public hospitals in the U.A.E., demonstrating its applicability and possible benefits. The dataset used was eventually 110,608 rows in total for the regression models, covering the most utilized 14 hospital units. The dataset is at least 10-fold larger than datasets used in closely-related research. The developed data mining framework can provide the input for a subsequent optimization model, which can be used to optimally assign appointments for patients, based on their arrival patterns.
Abdallah, S., Malik, M., Ertek, G. (2017) A Data Mining Framework for the Analysis of Patient Arrivals into Healthcare Centers. ICIT 2017 Proceedings of the 2017 International Conference on Information Technology. Pages 52-61. Singapore. December 27 – 29, 2017. ACM.
The published paper can be accessed from the following URL:
Dr. Gürdal Ertek @ Social Web: