Abstract

In vestibular schwannoma patients with functional hearing status, surgical resection while preserving the hearing is feasible. Hearing levels, tumor size, and location of the tumor have been known to be candidates of predictors. We used a machine learning approach to predict hearing outcomes in vestibular schwannoma patients who underwent hearing preservation surgery: middle cranial fossa, or retrosigmoid approach. After reviewing the medical records of 52 patients with a pathologically confirmed vestibular schwannoma, we included 50 patient’s records in the study. Hearing preservation was regarded as positive if the postoperative hearing was within serviceable hearing (50/50 rule). The categorical variable included the surgical approach, and the continuous variable covered audiometric and vestibular function tests, and the largest diameter of the tumor. Four different algorithms were lined up for comparison of accuracy: support vector machine(SVM), gradient boosting machine(GBM), deep neural network(DNN), and diffuse random forest(DRF). The average accuracy of predicting hearing preservation ranged from 62% (SVM) to 90% (DNN). The current study is the first to incorporate machine learning methodology into a prediction of successful hearing preservation surgery. Although a larger population may be needed for better generalization, this study could aid the surgeon’s decision to perform a hearing preservation approach for vestibular schwannoma surgery.

Highlights

  • In vestibular schwannoma patients with functional hearing status, surgical resection while preserving the hearing is feasible

  • We explored feature importance to determine factors affecting the prediction of postoperative hearing preservation

  • When it comes to surgical resection of Vestibular schwannomas (VSs), not all hearing preservation approaches of VS microsurgery could spare hearing

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Summary

Introduction

In vestibular schwannoma patients with functional hearing status, surgical resection while preserving the hearing is feasible. We used a machine learning approach to predict hearing outcomes in vestibular schwannoma patients who underwent hearing preservation surgery: middle cranial fossa, or retrosigmoid approach. The current study is the first to incorporate machine learning methodology into a prediction of successful hearing preservation surgery. Treatment options differ individually and are dependent upon the physician’s experience, the size and growth rate of the tumor, age, patient’s preference, and hearing status. Middle cranial fossa approach(MCFA) and retrosigmoid approach(RSA) are the two most commonly used approaches to remove VSs. The selection between the two approaches depends on the size and location of the tumor, and the surgeon’s preference, as each procedure has its strengths in exposing regions of the internal auditory canal or cerebellopontine angle.

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