Scientific Reports (Dec 2022)

The feasibility of a Bayesian network model to assess the probability of simultaneous symptoms in patients with advanced cancer

  • Lotte van der Stap,
  • Myrthe F. van Haaften,
  • Esther F. van Marrewijk,
  • Albert H. de Heij,
  • Paula L. Jansen,
  • Janine M. N. Burgers,
  • Melle S. Sieswerda,
  • Renske K. Los,
  • Anna K. L. Reyners,
  • Yvette M. van der Linden

DOI
https://doi.org/10.1038/s41598-022-26342-4
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 11

Abstract

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Abstract Although patients with advanced cancer often experience multiple symptoms simultaneously, clinicians usually focus on symptoms that are volunteered by patients during regular history-taking. We aimed to evaluate the feasibility of a Bayesian network (BN) model to predict the presence of simultaneous symptoms, based on the presence of other symptoms. Our goal is to help clinicians prioritize which symptoms to assess. Patient-reported severity of 11 symptoms (scale 0–10) was measured using an adapted Edmonton Symptom Assessment Scale (ESAS) in a national cross-sectional survey among advanced cancer patients. Scores were dichotomized ( 10% difference was considered inaccurate. Symptom scores of 532 patients were collected. A symptom score ≥ 4 was most prevalent for fatigue (64.7%). AUCs varied between 0.60 and 0.78, with satisfactory AUCs for 8/11 symptoms. Calibration was accurate for 101/110 predicted conditional probabilities. Whether a patient experienced fatigue was directly associated with experiencing 7 other symptoms. For example, in the absence or presence of fatigue, the model predicted a 8.6% and 33.1% probability of experiencing anxiety, respectively. It is feasible to use BN development for prioritizing symptom assessment. Fatigue seems most eligble to serve as a starting symptom for predicting the probability of experiencing simultaneous symptoms.