Analyzing doubly-truncated mortality data using the gompertztrunc package

Casey Breen ([email protected])

Maria Osborne ([email protected])

Summary

This vignette gives an overview of the gompertztrunc package and presents three case-studies illustrating the package’s functionality. The goal of this vignette is to give users a high-level overview of using the gompertztrunc package for mortality estimation including the use of weights, the specification and visualization of models, and limitations of this approach.

Background

Researchers increasingly have access to administrative mortality records that only include those who have died for a limited observation window without information on survivors. The double truncation and absence of denominators precludes the use of conventional tools of survival analysis. The gompertztrunc package includes tools for mortality estimation of doubly-truncated data sets without population denominators.

Summary of Parametric Gompertz Approach

This method assumes mortality follows a parametric Gompertz proportional-hazard model and uses maximum likelihood methods to estimate the parameters of this mortality distribution. Specifically, the hazard for individual \(i\) at age \(x\) given parameters \(\beta\) is given by

\[h_i(x | \beta) = a_0 e^{b_0 x} e^{\beta Z_i}\] where

The model will estimate the values of \(\widehat{a}\), \(\widehat{b}\), and \(\widehat{\beta}\).

The main function in the package is the gompertztrunc::gompertz_mle() function, which takes the following main arguments:

Setup

## library packages
library(gompertztrunc)         ## calculate mortality differentials under double-truncation  
library(tidyverse)             ## data manipulation and visualization  
library(data.table)            ## fast data manipulation
library(cowplot)               ## publication-ready themes for ggplot
library(socviz)                ## helper functions for data visualization (Kieran Healy)  
library(broom)                 ## "tidy" model output 


## load data 
sim_data <- sim_data             ## simulated 
bunmd_demo <- bunmd_demo         ## real 
numident_demo <- gompertztrunc::numident_demo   ## real 

Case Study I: Simulated Data

In our first case study, we use simulated (fake) data included in the gompertztrunc package. Because we simulated the data, we know the true coefficient values (we also know that the mortality follows a Gompertz distribution and our proportional hazards assumption holds).

## Look at simulated data 
head(sim_data)
##      aod byear dyear       temp   sex isSouth
##    <num> <int> <num>      <num> <num>   <num>
## 1:    87  1810  1897 -4.6198501     1       0
## 2:    78  1810  1888 -0.8841613     1       0
## 3:    79  1810  1890  0.7566703     1       0
## 4:    85  1810  1895 -0.6728037     1       0
## 5:    85  1810  1896 -3.8537981     1       0
## 6:    81  1810  1891 -1.2885393     1       0
## What years do we have mortality coverage? 
sim_data %>% 
  summarize(min(dyear), max(dyear)) 
##   min(dyear) max(dyear)
## 1       1888       1905

Now let’s try running gompertz_mle() function on the simulated data:

## run gompertz_mle function  
## returns a list 
simulated_example <- gompertz_mle(formula = aod ~ temp + as.factor(sex) + as.factor(isSouth),
                                                 left_trunc = 1888,
                                                 right_trunc = 1905,
                                                 data = sim_data)

The gompertz_mle() function returns a list which contains three elements:

  1. The initial starting parameters for the MLE routine. Unless specified by the user, these starting parameter are found using OLS regression on age at death.

  2. The full optim object, which gives details of the optimization routine (e.g., whether the model converged).

  3. A data.frame of containing results: the estimated Gompertz parameters, coefficients, and hazards ratios with 95% confidence intervals.

We recommend always checking the full optim object to make sure the model has converged.

## 1. starting value for coefficients (from linear regression)
simulated_example$starting_values
##         log.b.start            b0.start                temp     as.factor(sex)1 
##         -2.30258509         -9.96897213          0.07505734         -0.18001387 
## as.factor(isSouth)1 
##          0.22607193
## 2. optim fit object
simulated_example$optim_fit
## $par
##         log.b.start            b0.start                temp     as.factor(sex)1 
##          -2.2745186          -9.4083999           0.2068584          -0.5300299 
## as.factor(isSouth)1 
##           0.5983461 
## 
## $value
## [1] 17549.16
## 
## $counts
## function gradient 
##      886       NA 
## 
## $convergence
## [1] 0
## 
## $message
## NULL
## 
## $hessian
##                     log.b.start  b0.start       temp as.factor(sex)1
## log.b.start           283845.66 35822.202 -36549.785       20205.368
## b0.start               35822.20  4536.154  -4552.676        2553.982
## temp                  -36549.79 -4552.676  32378.684       -1569.926
## as.factor(sex)1        20205.37  2553.982  -1569.926        2553.949
## as.factor(isSouth)1    14017.01  1783.017  -3199.463        1109.978
##                     as.factor(isSouth)1
## log.b.start                   14017.009
## b0.start                       1783.017
## temp                          -3199.463
## as.factor(sex)1                1109.978
## as.factor(isSouth)1            1783.000
## 2. check model convergence (0 == convergence)
simulated_example$optim_fit$convergence
## [1] 0
## 3. Look at model results 
simulated_example$results
## # A tibble: 5 × 7
##   parameter             coef coef_lower coef_upper     hr hr_lower hr_upper
##   <chr>                <dbl>      <dbl>      <dbl>  <dbl>    <dbl>    <dbl>
## 1 gompertz_b           0.103     0.0964      0.110 NA       NA       NA    
## 2 gompertz_mode       69.4      68.2        70.6   NA       NA       NA    
## 3 temp                 0.207     0.194       0.219  1.23     1.21     1.25 
## 4 as.factor(sex)1     -0.530    -0.590      -0.470  0.589    0.554    0.625
## 5 as.factor(isSouth)1  0.598     0.536       0.661  1.82     1.71     1.94

The first row gives the estimated Gompertz \(b\) parameter, and the second row gives the Gompertz mode. The next three rows show each covariate’s estimated coefficient and associated hazard ratio. A hazard ratio compares the ratio of the hazard rate in a population strata (e.g., treated group) to a population baseline (i.e., control group). A hazard ratio above 1 suggests a higher risk at all ages and a hazard ratio below 1 suggests a smaller mortality risk at all ages (assuming proportional hazards).

Let’s compare our estimated values to true value. We can only do this because this is simulated (fake) data.

## true coefficient values (we know because we simulated them)
mycoefs <- c("temp" = +.2, "sex" = -.5, "isSouth" = +.6)

## compare
simulated_example$results %>%
  filter(!stringr::str_detect(parameter, "gompertz")) %>%
  mutate(true_coef = mycoefs) %>%
  select(parameter, coef, coef_lower, coef_upper, true_coef)
## # A tibble: 3 × 5
##   parameter             coef coef_lower coef_upper true_coef
##   <chr>                <dbl>      <dbl>      <dbl>     <dbl>
## 1 temp                 0.207      0.194      0.219       0.2
## 2 as.factor(sex)1     -0.530     -0.590     -0.470      -0.5
## 3 as.factor(isSouth)1  0.598      0.536      0.661       0.6

While investigators will likely report hazard ratios, translating hazard ratios into differences in life expectancy may help facilitate interpretation and comparison to other studies. We have included this functionality in the gompertztrunc package with the convert_hazards_to_ex() function:

## translate hazard rates to difference in e65
convert_hazards_to_ex(simulated_example$results, age = 65, use_model_estimates = T) %>% 
  select(parameter, hr, hr_lower, hr_upper, e65, e65_lower, e65_upper)
## # A tibble: 3 × 7
##   parameter              hr hr_lower hr_upper    e65 e65_lower e65_upper
##   <chr>               <dbl>    <dbl>    <dbl>  <dbl>     <dbl>     <dbl>
## 1 temp                1.23     1.21     1.25  -0.966     -1.02    -0.910
## 2 as.factor(sex)1     0.589    0.554    0.625  2.84       2.49     3.20 
## 3 as.factor(isSouth)1 1.82     1.71     1.94  -2.57      -2.80    -2.33

Case Study II: Real-World Example with BUNMD Data

In our second case study, we look at the mortality advantage for the foreign-born. We use a demo dataset from the Berkeley Unified Numident Mortality Database (BUNMD) and compare our results to results from OLS regression (a method which is biased in the presence of truncation).

## look at data 
head(bunmd_demo)
## # A tibble: 6 × 6
##         ssn bpl_string death_age byear dyear age_first_application
##       <int> <fct>          <int> <int> <int>                 <int>
## 1 267729143 Cuba              89  1912  2002                    49
## 2 266172087 Cuba              80  1911  1991                    57
## 3 590072321 Cuba              92  1911  2004                    69
## 4 265064566 Cuba              76  1913  1989                    53
## 5 265877097 Cuba              86  1908  1995                    70
## 6 264745485 Cuba              87  1915  2003                    46
## how many people per country? 
bunmd_demo %>%
  count(bpl_string)
## # A tibble: 6 × 2
##   bpl_string            n
##   <fct>             <int>
## 1 Native Born White 20000
## 2 Cuba              13194
## 3 England            7561
## 4 Italy             15306
## 5 Mexico            13755
## 6 Poland            11186

First, let’s look at the distribution of deaths by country:

## distribution of deaths?
ggplot(data = bunmd_demo) + 
  geom_histogram(aes(x = death_age),
                 fill = "grey",
                 color = "black",
                 binwidth = 1) + 
  cowplot::theme_cowplot() + 
  labs(x = "Age of Death",
       y = "N") + 
  facet_wrap(~bpl_string)

Linear regression approach

Let’s look at the association between country of origin and longevity. First, we’ll try using a biased approach (OLS regression on age of death).

## run linear model 
lm_bpl <- lm(death_age ~ bpl_string + as.factor(byear), data = bunmd_demo)

## extract coefficients from model 
lm_bpl_tidy <- tidy(lm_bpl) %>%
  filter(str_detect(term, "bpl_string")) %>%
  mutate(term = prefix_strip(term, "bpl_string"))

## rename variables 
lm_bpl_tidy <- lm_bpl_tidy %>%
  mutate(
    e65 = estimate,
    e65_lower = estimate - 1.96 * std.error,
    e65_upper = estimate + 1.96 * std.error
  ) %>%
  rename(country = term) %>%
  mutate(method = "Regression on Age of Death")

Now we’ll perform estimation with the gompertztrunc package:

## run gompertztrunc
## set truncation bounds to 1988-2005 because we are using BUNMD 
gompertz_mle_results <- gompertz_mle(formula = death_age ~ bpl_string, 
                                    left_trunc = 1988,
                                    right_trunc = 2005,
                                    data = bunmd_demo)

## convert to e65
## use model estimates — but can also set other defaults for Gompertz M and b. 
mle_results <- convert_hazards_to_ex(gompertz_mle_results$results, use_model_estimates = T)

## tidy up results 
mle_results <- mle_results %>% 
  rename(country = parameter) %>%
  filter(str_detect(country, "bpl_string")) %>%
  mutate(country = prefix_strip(country, "bpl_string")) %>%
  mutate(method = "Gompertz Parametric Estimate")

## look at results 
mle_results
## # A tibble: 5 × 11
##   country   coef coef_lower coef_upper    hr hr_lower hr_upper   e65 e65_lower
##   <chr>    <dbl>      <dbl>      <dbl> <dbl>    <dbl>    <dbl> <dbl>     <dbl>
## 1 Cuba    -0.229     -0.270    -0.188  0.796    0.764    0.829 1.70      1.39 
## 2 England -0.130     -0.179    -0.0815 0.878    0.836    0.922 0.960     0.597
## 3 Italy   -0.178     -0.217    -0.138  0.837    0.805    0.871 1.31      1.02 
## 4 Mexico  -0.369     -0.412    -0.325  0.692    0.662    0.723 2.77      2.44 
## 5 Poland  -0.185     -0.229    -0.141  0.831    0.795    0.869 1.37      1.04 
## # ℹ 2 more variables: e65_upper <dbl>, method <chr>

Visualize Results

Here, we compare our estimates from ‘unbiased’ Gompertz MLE method and our old ‘biased’ method, OLS regression on age of death. We can see that the OLS results are attenuated towards 0 due to truncation.

## combine results from both models 
bpl_results <- lm_bpl_tidy %>%
  bind_rows(mle_results)

## calculate adjustment factor (i.e., how much bigger are Gompertz MLE results)
adjustment_factor <- bpl_results %>% 
  select(country, method, e65) %>%
  pivot_wider(names_from = method, values_from = e65) %>%
  mutate(adjustment_factor = `Gompertz Parametric Estimate` / `Regression on Age of Death`) %>%
  summarize(adjustment_factor_mean = round(mean(adjustment_factor), 3)) %>%
  as.vector()

## plot results
bpl_results %>%
  bind_rows(mle_results) %>%
  ggplot(aes(y = reorder(country, e65), x = e65, xmin = e65_lower, xmax = e65_upper, color = method)) +
  geom_pointrange(position = position_dodge(width = 0.2), shape = 1) +
  cowplot::theme_cowplot(font_size = 12) +
  geom_vline(xintercept = 0, linetype = "dashed") +
  theme(legend.position = "bottom", legend.title = element_blank()) +
  labs(
    x = "Estimate",
    title = "Foreign-Born Male Ages at Death, BUNMD 1905-1914",
    y = "",
    subtitle = paste0("Gompertz MLE estimates are ~", adjustment_factor, " times larger than regression on age of death")
  ) +
  scale_color_brewer(palette = "Set1") +
  annotate("text", label = "Native Born Whites", x = 0.1, y = 3, angle = 90, size = 3, color = "black")

Diagnostic Plots

The gompertztrunc package offers two different graphical methods for assessing model fit. Please note that these diagnostic plots are only designed to assess the effect of a single categorical variable within a single cohort.

To illustrate, we will visually assess how well the modeled Gompertz distribution of mortality by country of origin fits empirical data. We will limit the model to the birth cohort of 1915. Additionally, to reduce the number of plots generated, we will only consider men born in the US and Mexico.

## create the dataset
bunmd_1915_cohort <- bunmd_demo %>% 
  filter(byear == 1915, death_age >= 65) %>% 
  filter(bpl_string %in% c("Native Born White", "Mexico"))

## run gompertz_mle()
bpl_results_1915_cohort <- gompertz_mle(formula = death_age ~ bpl_string, 
                                   data = bunmd_1915_cohort,
                                   left_trunc = 1988, 
                                   right_trunc = 2005)

## look at results
bpl_results_1915_cohort$results
## # A tibble: 3 × 7
##   parameter           coef coef_lower coef_upper     hr hr_lower hr_upper
##   <chr>              <dbl>      <dbl>      <dbl>  <dbl>    <dbl>    <dbl>
## 1 gompertz_b        0.0831     0.0715     0.0965 NA       NA       NA    
## 2 gompertz_mode    81.1       80.2       81.9    NA       NA       NA    
## 3 bpl_stringMexico -0.419     -0.575     -0.263   0.658    0.563    0.769

The first diagnostic graph, diagnostic_plot(), compares the empirical distribution of deaths to the modeled distribution.

diagnostic_plot(object = bpl_results_1915_cohort, data = bunmd_1915_cohort,
                covar = "bpl_string", death_var = "death_age")

Additionally, we can compare modeled and “observed” hazards with the diagnostic_plot_hazard() function. This function can be used both to assess model fit and to check the proportional hazards assumption of the model. However, these plots should be interpreted with some caution: because there are no population denominators, true hazard rates are unknown. Since we do not know the actual number of survivors to the observable death window, this value is inferred from the modeled Gompertz distribution. Refer to the diagnostic_plot_hazard() documentation for more details.

diagnostic_plot_hazard(object = bpl_results_1915_cohort, data = bunmd_1915_cohort,
                covar = "bpl_string", death_var = "death_age", xlim=c(65,95))

Case Study III: Education and longevity analysis with person-weights

In our third case study, we look at the association between education and longevity. We’ll use a pre-linked “demo” version of the CenSoc-Numident file, which contains 63 thousand mortality records and 20 mortality covariates from the 1940 census (~1% of the complete CenSoc-Numident dataset). We will also incorporate person-level weights into our analysis.

Person-weights

The gompertz_mle() function can incorporate person-level weights via the weights argument. These person weights can help adjust for differential representation; the weight assigned to each person is proportional to the estimated number of persons in the target population that person represents. The vector of supplied weights must be long as the data, and all weights must be positive.

## load in file 
numident_demo <- numident_demo

## recode categorical education variable to continuous "years of education" 
numident_demo <- numident_demo %>% 
  mutate(educ_yrs = case_when(
    educd == "No schooling completed" ~ 0,
    educd == "Grade 1" ~ 1,
    educd == "Grade 2" ~ 2,
    educd == "Grade 3" ~ 3,
    educd == "Grade 4" ~ 4,
    educd == "Grade 5" ~ 5,
    educd == "Grade 6" ~ 6,
    educd == "Grade 7" ~ 7,
    educd == "Grade 8" ~ 8,
    educd == "Grade 9" ~ 9,
    educd == "Grade 10" ~ 10,
    educd == "Grade 11" ~ 11,
    educd == "Grade 12" ~ 12,
    educd == "Grade 12" ~ 12,
    educd == "1 year of college" ~ 13,
    educd == "2 years of college" ~ 14,
    educd == "3 years of college" ~ 15,
    educd == "4 years of college" ~ 16,
    educd == "5+ years of college" ~ 17
  ))

## restrict to men 
data_numident_men <- numident_demo %>% 
  filter(sex == "Male") %>% 
  filter(byear %in% 1910:1920 & death_age > 65)

What’s the association between a 1-year increase in education and life expectancy at 65 (e65)? For this analysis, we’ll use the person-level weights using the weights argument in the gompertz_mle() function.

## look at person-level weights 
head(data_numident_men$weight)
## [1] 3.399339 3.507209 4.615740 4.092312 3.655178 7.781576
## run gompertz model with person weights
education_gradient <- gompertz_mle(formula = death_age ~ educ_yrs, 
                                   data = data_numident_men,
                                   weights = weight, ## specify person-level weights 
                                   left_trunc = 1988, 
                                   right_trunc = 2005)

## look at results 
education_gradient$results 
## # A tibble: 3 × 7
##   parameter        coef coef_lower coef_upper     hr hr_lower hr_upper
##   <chr>           <dbl>      <dbl>      <dbl>  <dbl>    <dbl>    <dbl>
## 1 gompertz_b     0.0799     0.0736     0.0868 NA       NA       NA    
## 2 gompertz_mode 73.9       71.7       76.0    NA       NA       NA    
## 3 educ_yrs      -0.0476    -0.0607    -0.0344  0.954    0.941    0.966
## translate to e65
mle_results_educ <- convert_hazards_to_ex(education_gradient$results, use_model_estimates = T, age = 65) %>% 
  mutate(method = "Parametric Gompertz MLE")

## look at results
mle_results_educ
## # A tibble: 1 × 11
##   parameter    coef coef_lower coef_upper    hr hr_lower hr_upper   e65
##   <chr>       <dbl>      <dbl>      <dbl> <dbl>    <dbl>    <dbl> <dbl>
## 1 educ_yrs  -0.0476    -0.0607    -0.0344 0.954    0.941    0.966 0.330
## # ℹ 3 more variables: e65_lower <dbl>, e65_upper <dbl>, method <chr>

Here, for every additional year of education, the hazard ratio falls by 4.8% — which corresponds to an additional 0.33 year increase in life expectancy at age 65.

Now, let’s compare to a conventional method: OLS regression on age of death. Again we can see that the OLS estimate is biased downward.

## run linear model 
lm_bpl <- lm(death_age ~ educ_yrs + as.factor(byear), data = data_numident_men, weights = weight)

## extract coefficients from model 
lm_bpl_tidy <- tidy(lm_bpl) %>%
  filter(str_detect(term, "educ_yrs"))

## rename variables 
ols_results <- lm_bpl_tidy %>%
  mutate(
    e65 = estimate,
    e65_lower = estimate - 1.96 * std.error,
    e65_upper = estimate + 1.96 * std.error
  ) %>%
  rename(parameter = term) %>%
  mutate(method = "Regression on Age of Death")

## Plot results
education_plot <- ols_results %>%
  bind_rows(mle_results_educ) %>%
  mutate(parameter = "Education (Years) Regression Coefficient") %>% 
  ggplot(aes(x = method, y = e65, ymin = e65_lower, ymax = e65_upper)) +
  geom_pointrange(position = position_dodge(width = 0.2), shape = 1) +
  cowplot::theme_cowplot(font_size = 12) +
  theme(legend.position = "bottom", legend.title = element_blank()) +
  labs(
    x = "",
    title = "Association Education (Years) and Longevity",
    subtitle = "Men, CenSoc-Numident 1910-1920",
    y = ""
  ) +
  scale_color_brewer(palette = "Set1") + 
  ylim(0, 0.5) 

education_plot

Summary and Limitations

The package can be used to estimate mortality differentials without population denominators. A few limitations and considerations to this approach:

  1. The Gompertz law does not apply perfectly to any application, and major departures from this assumption may bias estimates.

  2. This approach assumes proportional hazards: i.e., the survival curves for different strata have hazard functions that are proportional over time.

  3. The computational demands of this approach can be intensive, and the gompertz_mle() function runs into computational challenges when there are many parameters (e.g., models that have family fixed-effects).

  4. The sample distribution of available deaths must be representative of the population distribution of deaths.