| Literature DB >> 35209762 |
Mohsen Sadatsafavi1, Tae Yoon Lee1, Paul Gustafson2.
Abstract
BACKGROUND: Because of the finite size of the development sample, predicted probabilities from a risk prediction model are inevitably uncertain. We apply value-of-information methodology to evaluate the decision-theoretic implications of prediction uncertainty.Entities:
Keywords: Bayesian statistics; decision theory; precision medicine; predictive analytics; value of information
Mesh:
Year: 2022 PMID: 35209762 PMCID: PMC9194963 DOI: 10.1177/0272989X221078789
Source DB: PubMed Journal: Med Decis Making ISSN: 0272-989X Impact factor: 2.749
Generic Algorithm (Left) and an Exemplary R Implementation (Right) for the Bootstrap-Based EVPI Calculations
| 1. Using the proposed prediction model, generate the predicted risks for each individual in the development sample ( |
Expected value of perfect information (EVPI) calculations using methods alternative to the bootstrap are provided in https://github.com/resplab/VoIPred.
In general, the number of iterations should be high enough such that the Monte Carlo standard error around EVPI is small compared with its point estimate.
Regression Coefficients for the Proposed Model
| Predictor | Coefficient
| Probability of Selection | 95% Confidence Interval |
|---|---|---|---|
|
| −1.273 | 1.00 | −6.833, 2.744 |
|
| 0.050 | 1.00 | 0.021, 0.076 |
|
| 0.259 | 0.55 | −0.034, 1.488 |
|
| . | 0.40 | −0.220, 0.521 |
|
| 0.184 | 0.63 | −0.058, 0.842 |
|
| −0.070 | 0.94 | −0.104, 0.000 |
|
| 0.704 | 0.97 | 0.000, 1.277 |
|
| 0.026 | 0.75 | 0.000, 0.038 |
|
| . | 0.40 | 0.000, 0.034 |
|
| . | 0.31 | −0.587, 0.259 |
|
| . | 0.38 | −0.218, 0.664 |
AMI, acute myocardial infarction.
Those denoted by ‘.’ are not selected by LASSO.
This variable was modeled as min(X,100).
Pulse was modeled using a linear spline with a knot location at 50.
Figure 1Optimism-corrected (red) net benefit (NB) of the proposed model and its Bayesian estimator (blue), compared with the NB of treating all (black) and treating none (gray). The Bayesian estimation is based on the Bayesian bootstrap (see the relevant section in the text). The optimism correction and Bayesian estimates are based on 1000 bootstraps.
Figure 2The incremental net benefit curves under current (black) and perfect (red) information (left) and expected value of perfect information (EVPI; right).
Figure 3Change in expected value of perfect information (EVPI) (top) and relative EVPI (bottom) as a function of sample size. Results were generated based on randomly obtaining samples, without replacement, of a given size. Results are the average (top) and median (bottom) of 10 independent simulations for each sample size. We discarded data sets with fewer than 8 events as the glmnet optimizer does not reliably converge with too few events. For relative EVPI, the regular bootstrap at 0.01 threshold had a value of 9.7 at sample size 1000; all other truncated lines (reaching >2.0) indicate that the median value was +∞ at smaller sample sizes.