Individualized Dynamic Prediction Model for Patient‐Reported Voice Quality in Early‐Stage Glottic Cancer

Author:

Dorr Maarten C.1ORCID,Andrinopoulou Eleni‐Rosalina2,Sewnaik Aniel1,Berzenji Diako1,van Hof Kira S.1,Dronkers Emilie A.C.1,Bernard Simone E.1,Hoesseini Arta1,Rizopoulos Dimitirs2,Baatenburg de Jong Robert J.1,Offerman Marinella P.J.1

Affiliation:

1. Department of Otorhinolaryngology and Head and Neck Surgery, Erasmus MC Cancer Institute Erasmus University Medical Center Rotterdam The Netherlands

2. Department of Biostatistics, Department of Epidemiology, Erasmus MC Cancer Institute Erasmus University Medical Center Rotterdam The Netherlands

Abstract

AbstractObjectiveEarly‐stage glottic cancer (ESGC) is a malignancy of the head and neck. Besides disease control, preservation and improvement of voice quality are essential. To enable expectation management and well‐informed decision‐making, patients should be sufficiently counseled with individualized information on expected voice quality. This study aims to develop an individualized dynamic prediction model for patient‐reported voice quality. This model should be able to provide individualized predictions at every time point from intake to the end of follow‐up.Study DesignLongitudinal cohort study.SettingTertiary cancer center.MethodsPatients treated for ESGC were included in this study (N = 294). The Voice Handicap Index was obtained prospectively. The framework of mixed and joint models was used. The prognostic factors used are treatment, age, gender, comorbidity, performance score, smoking, T‐stage, and involvement of the anterior commissure. The overall performance of these models was assessed during an internal cross‐validation procedure and presentation of absolute errors using box plots.ResultsThe mean age in this cohort was 67 years and 81.3% are male. Patients were treated with transoral CO2 laser microsurgery (57.8%), single vocal cord irradiation up to (24.5), or local radiotherapy (17.5%). The mean follow‐up was 43.4 months (SD 21.5). Including more measurements during prediction improves predictive performance. Including more clinical and demographic variables did not provide better predictions. Little differences in predictive performance between models were found.ConclusionWe developed a dynamic individualized prediction model for patient‐reported voice quality. This model has the potential to empower patients and professionals in making well‐informed decisions and enables tailor‐made counseling.

Publisher

Wiley

Subject

Otorhinolaryngology,Surgery

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