Aims: To develop a new package of joint model to fit longitudinal CA125 in epithelial ovarian cancer relapse.
Patients & methods: Included were 305 epithelial ovarian cancer patients who reached complete remission after cytoreductive surgery and first-line chemotherapy. Univariate and multivariate analysis with a joint model was performed to select independent risk factors, which were subsequently combined to predict recurrence.
Results: Independent factors were longitudinal CA125, age, stage and residual tumor size (p < 0.05). Prediction of recurrence with these factors had an average of 80.7% accuracy, 5.6-10.7% better than kinetic factors.
Conclusion: The new package of joint model fits longitudinal CA125 well. Potential application can be extended to other biomarkers.
Keywords: joint model; longitudinal CA125; ovarian cancer; recurrence.