Intercept Adjustment"

knitr::opts_chunk$set(
  collapse = TRUE,
  comment = "#>"
)
library(predtools)
library(magrittr)
library(dplyr)
library(ggplot2)

What is intercept adjustment?

In clinical prediction modeling, model updating refers to the practice of modifying a prediction model before it is used in a new setting to improve its performance. One of the simplest updating methods for risk predication models is a fixed odds-ratio transformation of predicted risks to improve the model’s calibration-in-the-large.

interceptAdj function uses an approximate equation for recovering the conditional odds-ratio from the observed mean and predicted variance of risks in validation and development sets, respectively.

A step-by-step guide.

Imagine the variable y indicates risk of disease recurrence in a unit of time. We have a prediction model that quantifies this risk given a patient's age, disease severity level, sex, and whether the patient has a comorbidity.

The package comes with two exemplary datasets. dev_data and val_data. We use the dev_data as the development sample and the val_data as the external validation sample.

Model updating matters when there is a considerable difference between mean of the observed risks in development and validation sets. The average of y in the above two datasets are almost identical. Therefore, to have a meaningful scenario, we create a secondary (arbitrary) outcome (y_alt) in val_data with a lower average (by ~ 50%).

data(dev_data)
data(val_data)

```{R echo=FALSE} set.seed(1) val_data$y_alt <- ifelse(val_data$y == 0, 0, ifelse(runif(n = nrow(val_data)) <= 0.5, 0, 1))

val_data %>% select(y, y_alt) %>% summary() %>% knitr::kable()

`dev_data` has `r dim(predtools::dev_data)[1]` rows. `val_data` has `r dim(predtools::val_data)[1]` rows. 

Here are the first few rows of `dev_data`:

```{R echo=FALSE}

knitr::kable(dev_data[1:7,])

We use the development data to fit a logistic regression model as our risk prediction model:

reg<-glm(y~sex+age+severity+comorbidity,data=dev_data,family=binomial(link="logit"))
summary(reg)

Given this, our risk prediction model can be written as:

```{R echo=FALSE}

cfs <- coefficients(reg) str<-paste0(round(cfs[1],4),"+",paste0(round(cfs[-1],4),"*",names(cfs[-1]),collapse="+")) str_risk_model <- gsub("+-", "-", str, fixed = T)

$\bf{ logit(p)=`r str_risk_model`}$.


First, let's see the calibration plot in development and validation datasets. We use `calibration_plot` from our package to create calibration plots.
```{R}

dev_data$pred <- predict.glm(reg, type = 'response')
val_data$pred <- predict.glm(reg, newdata = val_data, type = 'response')

calibration_plot(data = dev_data, obs = "y", pred = "pred", title = "Calibration plot for development data")
calibration_plot(data = val_data, obs = "y_alt", pred = "pred", y_lim = c(0, 0.6),
                 title = "Calibration plot for validation data")

To adjust the predicted risks for the validation set, we estimate the correction factor by using function odds_adjust:

odds_correction_factor <- odds_adjust(p0 = mean(dev_data$y), p1 = mean(val_data$y_alt), v = var(dev_data$pred))
odds_correction_factor

We can now recalibrate the predictions and reproduce the calibration plot for the validation set.

dev_data$pred <- predict.glm(reg, type = 'response')
val_data$pred <- predict.glm(reg, newdata = val_data, type = 'response')

val_data$odds_adj <- (val_data$pred / (1 - val_data$pred)) * odds_correction_factor
val_data$pred_adj <- val_data$odds_adj / (1 + val_data$odds_adj)

val_data$id <- c(1 : nrow(val_data))
val_data_long <- reshape(data = val_data, direction = "long", varying = c("pred", "pred_adj"), v.name = "preds",
                         idvar = "id", timevar = "Method", times = c("Primitive", "Adjusted"))

calibration_plot(data = val_data, obs = "y_alt", pred = "pred_adj",
                 title = "Calibration plot for development data - after recalibration")
calibration_plot(data = val_data_long, obs = "y_alt", pred = "preds", group = "Method",
                 title = "Calibration plot for development data - before and after recalibration")


Try the predtools package in your browser

Any scripts or data that you put into this service are public.

predtools documentation built on June 7, 2023, 5:58 p.m.