Artificial neural network prediction of post‐thyroidectomy outcome

Author:

Tsutsumi Kotaro1,Goshtasbi Khodayar1,Ahmed Khwaja H.1,Khosravi Pooya1ORCID,Tawk Karen1,Haidar Yarah M.1,Tjoa Tjoson1,Armstrong William B.1,Abouzari Mehdi1ORCID

Affiliation:

1. Department of Otolaryngology—Head and Neck Surgery University of California Irvine California USA

Abstract

AbstractObjectivesThe goal of this study was to develop a deep neural network (DNN) for predicting surgical/medical complications and unplanned reoperations following thyroidectomy.Design, Setting, and ParticipantsThe 2005–2017 American College of Surgeons National Surgical Quality Improvement Program (ACS‐NSQIP) database was queried to extract patients who underwent thyroidectomy. A DNN consisting of 10 layers was developed with an 80:20 breakdown for training and testing.Main Outcome MeasuresThree primary outcomes of interest, including occurrence of surgical complications, medical complications, and unplanned reoperation were predicted.ResultsOf the 21 550 patients who underwent thyroidectomy, medical complications, surgical complications and reoperation occurred in 1723 (8.0%), 943 (4.38%) and 2448 (11.36%) patients, respectively. The DNN performed with an area under the curve of receiver operating characteristics of .783 (medical complications), .709 (surgical complications) and .703 (reoperations). Accuracy, specificity and negative predictive values of the model for all outcome variables ranged 78.2%–97.2%, while sensitivity and positive predictive values ranged 11.6%–62.5%. Variables with high permutation importance included sex, inpatient versus outpatient and American Society of Anesthesiologists class.ConclusionsWe predicted surgical/medical complications and unplanned reoperation following thyroidectomy via development of a well‐performing ML algorithm. We have also developed a web‐based application available on mobile devices to demonstrate the predictive capacity of our models in real time.

Funder

National Center for Advancing Translational Sciences

National Center for Research Resources

Publisher

Wiley

Subject

Otorhinolaryngology

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