Dynamic prediction of time to a clinical event with sparse and irregularly measured longitudinal biomarkers.
Yayuan ZhuXuelin HuangLiang LiPublished in: Biometrical journal. Biometrische Zeitschrift (2020)
In clinical research and practice, landmark models are commonly used to predict the risk of an adverse future event, using patients' longitudinal biomarker data as predictors. However, these data are often observable only at intermittent visits, making their measurement times irregularly spaced and unsynchronized across different subjects. This poses challenges to conducting dynamic prediction at any post-baseline time. A simple solution is the last-value-carry-forward method, but this may result in bias for the risk model estimation and prediction. Another option is to jointly model the longitudinal and survival processes with a shared random effects model. However, when dealing with multiple biomarkers, this approach often results in high-dimensional integrals without a closed-form solution, and thus the computational burden limits its software development and practical use. In this article, we propose to process the longitudinal data by functional principal component analysis techniques, and then use the processed information as predictors in a class of flexible linear transformation models to predict the distribution of residual time-to-event occurrence. The measurement schemes for multiple biomarkers are allowed to be different within subject and across subjects. Dynamic prediction can be performed in a real-time fashion. The advantages of our proposed method are demonstrated by simulation studies. We apply our approach to the African American Study of Kidney Disease and Hypertension, predicting patients' risk of kidney failure or death by using four important longitudinal biomarkers for renal functions.
Keyphrases
- end stage renal disease
- african american
- ejection fraction
- cross sectional
- chronic kidney disease
- electronic health record
- prognostic factors
- blood pressure
- healthcare
- primary care
- peritoneal dialysis
- risk assessment
- patient reported outcomes
- emergency department
- machine learning
- current status
- high intensity
- deep learning