Predictive models for cochlear implant outcomes: Performance, generalizability, and the impact of cohort size

Author:

Shafieibavani Elaheh1ORCID,Goudey Benjamin12ORCID,Kiral Isabell1,Zhong Peter1,Jimeno-Yepes Antonio1,Swan Annalisa1,Gambhir Manoj1,Buechner Andreas3,Kludt Eugen3ORCID,Eikelboom Robert H.456ORCID,Sucher Cathy45,Gifford Rene H.7ORCID,Rottier Riaan8ORCID,Plant Kerrie8ORCID,Anjomshoa Hamideh19ORCID

Affiliation:

1. IBM Research Australia, Southbank, Victoria, Australia;

2. School of Computing and Information Systems, University of Melbourne, Parkville, Victoria, Australia;

3. Medizinische Hochschule Hannover, Hannover, Niedersachsen, Germany;

4. Ear Science Institute Australia, Subiaco, Western Australia, Australia;

5. Ear Sciences Centre, The University of Western Australia, Nedlands, Western Australia, Australia;

6. Department of Speech Language Pathology and Audiology, University of Pretoria, South Africa;

7. Department of Hearing and Speech Sciences, Vanderbilt University Medical Center, Nashville, TN, United States of America;

8. Cochlear Limited, New South Wales, Australia;

9. School of Mathematics and Statistics, University of Melbourne, Parkville, Victoria, Australia

Abstract

While cochlear implants have helped hundreds of thousands of individuals, it remains difficult to predict the extent to which an individual’s hearing will benefit from implantation. Several publications indicate that machine learning may improve predictive accuracy of cochlear implant outcomes compared to classical statistical methods. However, existing studies are limited in terms of model validation and evaluating factors like sample size on predictive performance. We conduct a thorough examination of machine learning approaches to predict word recognition scores (WRS) measured approximately 12 months after implantation in adults with post-lingual hearing loss. This is the largest retrospective study of cochlear implant outcomes to date, evaluating 2,489 cochlear implant recipients from three clinics. We demonstrate that while machine learning models significantly outperform linear models in prediction of WRS, their overall accuracy remains limited (mean absolute error: 17.9-21.8). The models are robust across clinical cohorts, with predictive error increasing by at most 16% when evaluated on a clinic excluded from the training set. We show that predictive improvement is unlikely to be improved by increasing sample size alone, with doubling of sample size estimated to only increasing performance by 3% on the combined dataset. Finally, we demonstrate how the current models could support clinical decision making, highlighting that subsets of individuals can be identified that have a 94% chance of improving WRS by at least 10% points after implantation, which is likely to be clinically meaningful. We discuss several implications of this analysis, focusing on the need to improve and standardize data collection.

Funder

National Institute on Deafness and Other Communication Disorders

Publisher

SAGE Publications

Subject

Speech and Hearing,Otorhinolaryngology

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