Development of a prediction model for clinically-relevant fatigue: a multi-cancer approach

Dhirendra Adiprakoso, Dimitris Katsimpokis, Simone Oerlemans, Nicole P.M. Ezendam, Marissa C. van Maaren, Janine A. van Til, Thijs G.W. van der Heijden, Floortje Mols, Katja K.H. Aben, Geraldine R. Vink, Miriam Koopman, Lonneke V. van de Poll-Franse, Belle H. de Rooij*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

1 Downloads (Pure)

Abstract

Purpose: Fatigue is the most prevalent symptom across cancer types. To support clinicians in providing fatigue-related supportive care, this study aims to develop and compare models predicting clinically relevant fatigue (CRF) occurring between two and three years after diagnosis, and to assess the validity of the best-performing model across diverse cancer populations. Methods: Patients with non-metastatic bladder, colorectal, endometrial, ovarian, or prostate cancer who completed a questionnaire within three months after diagnosis and a subsequent questionnaire between two and three years thereafter, were included. Predictor variables included clinical, socio-demographic, and patient-reported variables. The outcome was CRF (EORTC QLQC30 fatigue ≥ 39). Logistic regression using LASSO selection was compared to more advanced Machine Learning (ML) based models, including Extreme gradient boosting (XGBoost), support vector machines (SVM), and artificial neural networks (ANN). Internal–external cross-validation was conducted on the best-performing model. Results: 3160 patients were included. The logistic regression model had the highest C-statistic (0.77) and balanced accuracy (0.65), both indicating good discrimination between patients with and without CRF. However, sensitivity was low across all models (0.22–0.37). Following internal–external validation, performance across cancer types was consistent (C-statistics 0.73–0.82). Conclusion: Although the models’ discrimination was good, the low balanced accuracy and poor calibration in the presence of CRF indicates a relatively high likelihood of underdiagnosis of future CRF. Yet, the clinical applicability of the model remains uncertain. The logistic regression performed better than the ML-based models and was robust across cohorts, suggesting an advantage of simpler models to predict CRF.

Original languageEnglish
Article numbere0250370
Pages (from-to)231-245
Number of pages15
JournalQuality of Life Research
Volume34
Issue number1
DOIs
Publication statusPublished - Jan 2025

Keywords

  • Cancer survivors
  • Cancer-related fatigue
  • Clinically relevant fatigue
  • Health-related quality of life
  • Machine-learning
  • Prediction modelling

Fingerprint

Dive into the research topics of 'Development of a prediction model for clinically-relevant fatigue: a multi-cancer approach'. Together they form a unique fingerprint.

Cite this