Nonlinear and time-dependent effects of sparsely measured continuous time-varying covariates in time-to-event analysis.
Yishu WangMarie-Eve BeauchampMichal AbrahamowiczPublished in: Biometrical journal. Biometrische Zeitschrift (2020)
Many flexible extensions of the Cox proportional hazards model incorporate time-dependent (TD) and/or nonlinear (NL) effects of time-invariant covariates. In contrast, little attention has been given to the assessment of such effects for continuous time-varying covariates (TVCs). We propose a flexible regression B-spline-based model for TD and NL effects of a TVC. To account for sparse TVC measurements, we added to this model the effect of time elapsed since last observation (TEL), which acts as an effect modifier. TD, NL, and TEL effects are estimated with the iterative alternative conditional estimation algorithm. Furthermore, a simulation extrapolation (SIMEX)-like procedure was adapted to correct the estimated effects for random measurement errors in the observed TVC values. In simulations, TD and NL estimates were unbiased if the TVC was measured with a high frequency. With sparse measurements, the strength of the effects was underestimated but the TEL estimate helped reduce the bias, whereas SIMEX helped further to correct for bias toward the null due to "white noise" measurement errors. We reassessed the effects of systolic blood pressure (SBP) and total cholesterol, measured at two-year intervals, on cardiovascular risks in women participating in the Framingham Heart Study. Accounting for TD effects of SBP, cholesterol and age, the NL effect of cholesterol, and the TEL effect of SBP improved substantially the model's fit to data. Flexible estimates yielded clinically important insights regarding the role of these risk factors. These results illustrate the advantages of flexible modeling of TVC effects.
Keyphrases
- blood pressure
- high frequency
- heart failure
- magnetic resonance imaging
- computed tomography
- left ventricular
- machine learning
- patient safety
- metabolic syndrome
- working memory
- insulin resistance
- climate change
- air pollution
- artificial intelligence
- neural network
- big data
- hypertensive patients
- adverse drug
- contrast enhanced
- cervical cancer screening