Can we use machine learning to improve the interpretation and application of urodynamic data?: ICI‐RS 2023

Author:

Gammie Andrew1ORCID,Arlandis Salvador2ORCID,Couri Bruna M.3ORCID,Drinnan Michael4ORCID,Carolina Ochoa D.1ORCID,Rantell Angie5ORCID,de Rijk Mathijs6ORCID,van Steenbergen Thomas7ORCID,Damaser Margot8ORCID

Affiliation:

1. Bristol Urological Institute Southmead Hospital Bristol UK

2. Urology Department Hospital Universitario y Politécnico La Fe Valencia Spain

3. Laborie Medical Technologies Portsmouth New Hampshire USA

4. Newcastle upon Tyne Hospitals NHS Foundation Trust Newcastle Upon Tyne UK

5. Urogynaecology Department King's College Hospital London UK

6. Department of Urology Maastricht University Maastricht The Netherlands

7. University Medical Center Utrecht Utrecht The Netherlands

8. The Cleveland Clinic Cleveland Ohio USA

Abstract

AbstractIntroductionA “Think Tank” at the International Consultation on Incontinence‐Research Society meeting held in Bristol, United Kingdom in June 2023 considered the progress and promise of machine learning (ML) applied to urodynamic data.MethodsExamples of the use of ML applied to data from uroflowmetry, pressure flow studies and imaging were presented. The advantages and limitations of ML were considered. Recommendations made during the subsequent debate for research studies were recorded.ResultsML analysis holds great promise for the kind of data generated in urodynamic studies. To date, ML techniques have not yet achieved sufficient accuracy for routine diagnostic application. Potential approaches that can improve the use of ML were agreed and research questions were proposed.ConclusionsML is well suited to the analysis of urodynamic data, but results to date have not achieved clinical utility. It is considered likely that further research can improve the analysis of the large, multifactorial data sets generated by urodynamic clinics, and improve to some extent data pattern recognition that is currently subject to observer error and artefactual noise.

Publisher

Wiley

Subject

Urology,Neurology (clinical)

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