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CPT to RVU conversion improves model performance in the prediction of surgical case length.
Abstract
Methods used to predict surgical case time often rely upon the current procedural
terminology (CPT) code as a nominal variable to train machine-learned models, however
this limits the ability of the model to incorporate new procedures and adds complexity
as the number of unique procedures increases. The relative value unit (RVU, a consensus-derived
billing indicator) can serve as a proxy for procedure workload and could replace the
CPT code as a primary feature for models that predict surgical case length. Using
11,696 surgical cases from Duke University Health System electronic health records
data, we compared boosted decision tree models that predict individual case length,
changing the method by which the model coded procedure type; CPT, RVU, and CPT-RVU
combined. Performance of each model was assessed by inference time, MAE, and RMSE
compared to the actual case length on a test set. Models were compared to each other
and to the manual scheduler method that currently exists. RMSE for the RVU model (60.8 min)
was similar to the CPT model (61.9 min), both of which were lower than scheduler (90.2 min).
65.2% of our RVU model's predictions (compared to 43.2% from the current human scheduler
method) fell within 20% of actual case time. Using RVUs reduced model prediction time
by ninefold and reduced the number of training features from 485 to 44. Replacing
pre-operative CPT codes with RVUs maintains model performance while decreasing overall
model complexity in the prediction of surgical case length.
Type
Journal articleSubject
HumansCohort Studies
Models, Theoretical
Current Procedural Terminology
Relative Value Scales
Operative Time
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https://hdl.handle.net/10161/25507Published Version (Please cite this version)
10.1038/s41598-021-93573-2Publication Info
Garside, Nicholas; Zaribafzadeh, Hamed; Henao, Ricardo; Chung, Royce; & Buckland,
Daniel (2021). CPT to RVU conversion improves model performance in the prediction of surgical case
length. Scientific reports, 11(1). pp. 14169. 10.1038/s41598-021-93573-2. Retrieved from https://hdl.handle.net/10161/25507.This is constructed from limited available data and may be imprecise. To cite this
article, please review & use the official citation provided by the journal.
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Show full item recordScholars@Duke
Daniel Buckland
Assistant Professor of Emergency Medicine
Dr. Buckland is an Attending Physician at Duke University Hospital Emergency Department.
He is also the Director of the Duke Acute Care Technology Lab (DACTL) where he leads
research in developing technology for the diagnosis and treatment of acute disease
in data science and robotics projects. Dr Buckland oversees several PhD, Masters,
and Undergraduate engineer researchers as their primary advisor, as well as manages
collaborative research projects between clinicians and engineering students.
Nick Garside
Student
Ricardo Henao
Associate Professor in Biostatistics & Bioinformatics
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