In the following paper, I aim to form relationships between different patient factors and no-show rates. The culmination of these relationships will then be used in a logistic regression model. Data collected from a survey at 26 HonorHealth clinics were analyzed using odds ratios and relative risk methods. Of 310,307 visits collected, 22,280 of them were no shows (7.2%), an 11% decrease from national averages (18.8%). This fueled the study, along with a grant filed by HonorHealth looking at the impact of telehealth on the working poor. A binary logistic regression method was run over the data, and less than 1% of patients' no-shows were predicted correctly. By adding factors, and improving the diversity in the data collected, model accuracy can be improved.
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- Predicting Patient No-Shows With the Added Factor of Telemedicine
- Hauxhurst, Spencer (Author)
- Arquiza, Apollo (Thesis director)
- Sharer, Rustan (Committee member)
- Barrett, The Honors College (Contributor)
- Dean, W.P. Carey School of Business (Contributor)
- Harrington Bioengineering Program (Contributor)