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An Evaluation of the Hybrid Model for Predicting Surgery Duration

Published: 02 January 2020 Publication History

Abstract

The degree of accuracy in surgery duration estimation directly impacts on the quality of planned surgical lists. Model selection for the prediction of surgery duration requires technical expertise and significant time and effort. The result is often a collection of viable models, the performance of which varies across different strata of the surgical population. This paper proposes a prediction framework to be used after a comprehensive model selection process has been completed for surgery duration prediction. The framework produces a partition of the surgical cases and a “hybrid model” that allocates different predictors from the collection of viable models to different parts of the surgical population. The intention is a flexible prediction process that can reassign models and adapt as surgical processes change. The framework is tested via a simulation study, and its utility is demonstrated by predicting surgery durations for Ear, Nose and Throat surgeries in a New Zealand hospital. The results indicate that the hybrid model is effective, performing better than standard model selection in two of the three simulation studies, and marginally worse when the selected model was the true underlying process.

References

[1]
Graue, R. M.: Prediction and optimization techniques to streamline surgical scheduling, Master’s thesis, Massachusetts Institute of Technology United States, 2013
[2]
Devi SP, Rao KS, and Sangeetha SS Prediction of surgery times and scheduling of operation theaters in optholmology department J. Med. Sys. 2012 36 2 415-430
[3]
Dexter F, Epstein RH, Bayman EO, and Ledolter J Estimating surgical case durations and making comparisons among facilities: identifying facilities with lower anesthesia professional fees Anesth. Analg. 2013 116 5 1103-1115
[4]
ShahabiKargar Zahra, Khanna Sankalp, Good Norm, Sattar Abdul, Lind James, and O’Dwyer John Predicting Procedure Duration to Improve Scheduling of Elective Surgery Lecture Notes in Computer Science 2014 Cham Springer International Publishing 998-1009
[5]
Hosseini, N., Sir, M. Y., Jankowski, C. J., and Pasupathy, K.: Surgical duration estimation via data mining and predictive modeling: a case study, AMIA Annual Symposium Proceedings, 640–648, 2015
[6]
Edelman ER, van Kuijk SMJ, Hamaekers AEW, de Korte MJM, van Merode GG, and Buhre WFFAImproving the prediction of total surgical procedure time using linear regression modelingFrontiers in Medicine20174855475434
[7]
ShahabiKargar, Z., Khanna, S., Sattar, A., and Lind, J.: Improved prediction of procedure duration for elective surgery. In: Ryan, A., Schaper, L. K., and Whetton, S. (Eds.) Integrating and Connecting Care, vol. 239 of Studies in Health Technology and Informatics, IOS Press Ebooks, 133–138. 10.3233/978-1-61499-783-2-133, 2017.
[8]
Green SB How many subjects does it take to do a regression analysis Multivariate Behav. Res. 2010 26 3 499-510
[9]
Harrell F Regression modeling strategies 2001 1 ed. New York Springer
[10]
Schmidt FL The relative efficiency of regression and simple unit predictor weights in applied differential psychology Educ. Psychol. Meas. 1971 31 3 699-714
[11]
Austin PC and Steyerberg EW The number of subjects per variable required in linear regression analyses J. Clin. Epidemiol. 2015 68 6 627-636
[12]
Hansen BE and Racine JS Jackknife model averaging J. Econom. 2012 167 1 38-46
[13]
Wolpert DH Stacked generalization Neural Netw. 1992 5 2 241-259
[14]
Allen DM The relationship between variable selection and data augmentation and a method for prediction Technometrics 1974 16 125-127
[15]
Seber GAF and Lee AJ Linear regression analysis 2003 2 ed. New York Wiley
[16]
Khanmohammadi N, Rezaie H, Montaseri M, and Behmanesh J The application of multiple linear regression method in reference evapotranspiration trend calculation Stochastic Environmental Research and Risk Assessment 2018 32 3 661-673
[17]
Theobald R and Freeman SIs it the intervention or the students? Using linear regression to control for student characteristics in undergraduate STEM education researchCBE Life Sciences Education201413141-483940461
[18]
R Core Team, R.: A language and environment for statistical computing, R Foundation for Statistical Computing, Vienna, Austria. https://www.R-project.org/, 2018
[19]
Alpaydin E Introduction to machine learning 2010 2 ed. Cambridge The MIT Press

Cited By

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  • (2022)Benchmarking of Anesthesia and Surgical Control Times by Current Procedural Terminology (CPT®) CodesJournal of Medical Systems10.1007/s10916-022-01798-z46:4Online publication date: 1-Apr-2022
  • (2020)Comparison of Jackknife and Hybrid-Boost Model Averaging to Predict Surgery Durations: A Case StudySN Computer Science10.1007/s42979-020-00339-01:6Online publication date: 1-Oct-2020

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Information & Contributors

Information

Published In

cover image Journal of Medical Systems
Journal of Medical Systems  Volume 44, Issue 2
Jan 2020
266 pages

Publisher

Plenum Press

United States

Publication History

Published: 02 January 2020
Accepted: 14 November 2019
Received: 02 July 2019

Author Tags

  1. Linear regression
  2. Prediction
  3. Hybrid model
  4. Cross-validation
  5. Simulation

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Cited By

View all
  • (2022)Benchmarking of Anesthesia and Surgical Control Times by Current Procedural Terminology (CPT®) CodesJournal of Medical Systems10.1007/s10916-022-01798-z46:4Online publication date: 1-Apr-2022
  • (2020)Comparison of Jackknife and Hybrid-Boost Model Averaging to Predict Surgery Durations: A Case StudySN Computer Science10.1007/s42979-020-00339-01:6Online publication date: 1-Oct-2020

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