| Literature DB >> 28114895 |
Malamine Gassama1, Jacques Bénichou2,3, Laureen Dartois4,5, Anne C M Thiébaut6.
Abstract
BACKGROUND: The attributable risk (AR) measures the proportion of disease cases that can be attributed to an exposure in the population. Several definitions and estimation methods have been proposed for survival data.Entities:
Keywords: Attributable risk; Breast cancer; Cohort studies; Cox model; Piecewise constant hazards model; Weighted Kaplan-Meier estimator
Mesh:
Year: 2017 PMID: 28114895 PMCID: PMC5259851 DOI: 10.1186/s12874-016-0285-1
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Simulation results for the estimation of attributable risk A(.) under proportional hazards, constant baseline hazard (γ=1) with regression parameter β= ln(2) and probability of exposure q=0.5
| Estimation method |
|
| ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Time |
| Bias | SEE | SSD | CP | Bias | SEE | SSD | CP | |
| KM |
| 0.284 | 0.001584 | 0.052440 | 0.052591 | 0.949 | −0.000011 | 0.016622 | 0.016349 | 0.944 |
|
| 0.240 | 0.001496 | 0.039210 | 0.039099 | 0.948 | 0.000235 | 0.012434 | 0.012420 | 0.944 | |
| 3 | 0.200 | 0.001100 | 0.035666 | 0.035948 | 0.946 | −0.000333 | 0.011353 | 0.011354 | 0.949 | |
|
| 0.166 | 0.004047 | 0.043238 | 0.053015 | 0.912 | 0.001025 | 0.017251 | 0.019598 | 0.943 | |
| WKM |
| 0.284 | 0.001594 | 0.052516 | 0.052483 | 0.949 | 0.000003 | 0.016613 | 0.016357 | 0.946 |
|
| 0.240 | 0.001541 | 0.039144 | 0.038926 | 0.950 | 0.000285 | 0.012401 | 0.012398 | 0.946 | |
| 3 | 0.200 | 0.001093 | 0.035402 | 0.035479 | 0.953 | −0.000286 | 0.011283 | 0.011297 | 0.952 | |
|
| 0.166 | 0.002922 | 0.040635 | 0.048602 | 0.902 | 0.000497 | 0.016646 | 0.018245 | 0.942 | |
| COX |
| 0.284 | 0.000977 | 0.038843 | 0.038208 | 0.958 | −0.000136 | 0.012292 | 0.012206 | 0.956 |
|
| 0.240 | 0.001108 | 0.033847 | 0.033524 | 0.951 | 0.000006 | 0.010700 | 0.010616 | 0.958 | |
| 3 | 0.200 | 0.001031 | 0.029264 | 0.028893 | 0.958 | −0.000081 | 0.009237 | 0.009253 | 0.954 | |
|
| 0.166 | 0.002577 | 0.027146 | 0.027753 | 0.946 | 0.000148 | 0.008965 | 0.009087 | 0.950 | |
| PCH |
| 0.284 | 0.001356 | 0.038338 | 0.038248 | 0.952 | −0.000086 | 0.012120 | 0.012209 | 0.953 |
|
| 0.240 | 0.001372 | 0.033380 | 0.033529 | 0.948 | 0.000034 | 0.010543 | 0.010608 | 0.952 | |
| 3 | 0.200 | 0.001113 | 0.028804 | 0.028870 | 0.957 | −0.000081 | 0.009088 | 0.009263 | 0.952 | |
|
| 0.166 | 0.001564 | 0.025811 | 0.025420 | 0.961 | −0.000154 | 0.008105 | 0.008153 | 0.952 | |
| Simpler | – | 0.333 | 0.000826 | 0.043356 | 0.043147 | 0.952 | −0.000209 | 0.013715 | 0.013776 | 0.955 |
KM nonparametric approach based on Kaplan-Meier estimation for S(t), WKM nonparametric approach based on weighted Kaplan-Meier estimation for S(t), COX semiparametric approach, PCH parametric approach using a piecewise constant hazards model, Simpler simpler approach based on proportion of exposed subjects, Bias sampling mean of the difference between and A(t), SEE sampling mean of standard error estimate of A(t), SSD sampling standard deviation of , CP coverage probability of the 95% Wald confidence interval
Simulation results for the estimation of attributable risk A(.) under proportional hazards, decreasing baseline hazard (γ=3/4) with regression parameter β= ln(2) and probability of exposure q=0.5
| Estimation method |
|
| ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Time |
| Bias | SEE | SSD | CP | Bias | SEE | SSD | CP | |
| KM |
| 0.269 | 0.001799 | 0.044659 | 0.045486 | 0.940 | 0.000129 | 0.014162 | 0.014200 | 0.946 |
|
| 0.231 | 0.001217 | 0.036054 | 0.036037 | 0.943 | 0.000351 | 0.011437 | 0.011547 | 0.946 | |
| 3 | 0.200 | 0.001164 | 0.034218 | 0.034637 | 0.948 | −0.000204 | 0.010895 | 0.010746 | 0.956 | |
|
| 0.176 | 0.003532 | 0.041550 | 0.047835 | 0.915 | 0.000299 | 0.016351 | 0.019086 | 0.948 | |
| WKM |
| 0.269 | 0.001832 | 0.044713 | 0.045359 | 0.942 | 0.000131 | 0.014153 | 0.014197 | 0.946 |
|
| 0.231 | 0.001283 | 0.035999 | 0.035858 | 0.947 | 0.000368 | 0.011408 | 0.011509 | 0.947 | |
| 3 | 0.200 | 0.001132 | 0.034004 | 0.034272 | 0.950 | −0.000193 | 0.010838 | 0.010716 | 0.956 | |
|
| 0.176 | 0.002628 | 0.039647 | 0.045615 | 0.906 | 0.000116 | 0.015851 | 0.017720 | 0.947 | |
| COX |
| 0.269 | 0.000957 | 0.036029 | 0.035611 | 0.955 | 0.000107 | 0.011401 | 0.011229 | 0.955 |
|
| 0.231 | 0.001067 | 0.031741 | 0.031499 | 0.954 | 0.000129 | 0.010031 | 0.009949 | 0.953 | |
| 3 | 0.200 | 0.000972 | 0.028300 | 0.028071 | 0.962 | 0.000060 | 0.008937 | 0.008899 | 0.949 | |
|
| 0.176 | 0.002177 | 0.026818 | 0.027274 | 0.955 | 0.000168 | 0.008790 | 0.008771 | 0.956 | |
| PCH |
| 0.269 | 0.003717 | 0.035027 | 0.035896 | 0.940 | 0.002630 | 0.011076 | 0.011300 | 0.939 |
|
| 0.231 | 0.002926 | 0.030819 | 0.031734 | 0.945 | 0.001853 | 0.009736 | 0.009995 | 0.936 | |
| 3 | 0.200 | 0.002124 | 0.027440 | 0.028260 | 0.949 | 0.001247 | 0.008666 | 0.008949 | 0.940 | |
|
| 0.176 | 0.001883 | 0.025457 | 0.025679 | 0.958 | 0.000621 | 0.008014 | 0.008240 | 0.946 | |
| Simpler | – | 0.333 | 0.000814 | 0.041900 | 0.041749 | 0.952 | 0.000050 | 0.013257 | 0.013257 | 0.947 |
KM nonparametric approach based on Kaplan-Meier estimation for S(t), WKM nonparametric approach based on weighted Kaplan-Meier estimation for S(t), COX semiparametric approach, PCH parametric approach using a piecewise constant hazards model, Simpler simpler approach based on proportion of exposed subjects, Bias sampling mean of the difference between and A(t), SEE sampling mean of standard error estimate of A(t), SSD sampling standard deviation of , CP coverage probability of the 95% Wald confidence interval
Simulation results for the estimation of attributable risk A(.) under proportional hazards, increasing baseline hazard (γ=4/3) with regression parameter β= ln(2) and probability of exposure q=0.5
| Estimation method |
|
| ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Time |
| Bias | SEE | SSD | CP | Bias | SEE | SSD | CP | |
| KM |
| 0.299 | 0.000814 | 0.064311 | 0.064377 | 0.947 | −0.000024 | 0.020388 | 0.020204 | 0.956 |
|
| 0.250 | 0.002020 | 0.043388 | 0.043169 | 0.952 | 0.000210 | 0.013761 | 0.013651 | 0.944 | |
| 3 | 0.200 | 0.001174 | 0.037152 | 0.037027 | 0.955 | −0.000469 | 0.011824 | 0.011798 | 0.960 | |
|
| 0.153 | 0.007382 | 0.043968 | 0.054032 | 0.891 | 0.000554 | 0.018140 | 0.021081 | 0.939 | |
| WKM |
| 0.299 | 0.000805 | 0.064427 | 0.064296 | 0.950 | −0.000010 | 0.020380 | 0.020196 | 0.954 |
|
| 0.250 | 0.002055 | 0.043322 | 0.042973 | 0.949 | 0.000272 | 0.013722 | 0.013643 | 0.947 | |
| 3 | 0.200 | 0.001193 | 0.036838 | 0.036463 | 0.962 | −0.000410 | 0.011739 | 0.011741 | 0.958 | |
|
| 0.153 | 0.005596 | 0.040652 | 0.048586 | 0.898 | 0.000055 | 0.017280 | 0.019095 | 0.935 | |
| COX |
| 0.299 | 0.001207 | 0.041863 | 0.040891 | 0.960 | −0.000209 | 0.013250 | 0.013076 | 0.962 |
|
| 0.250 | 0.001321 | 0.036377 | 0.035580 | 0.954 | −0.000062 | 0.011499 | 0.011341 | 0.958 | |
| 3 | 0.200 | 0.001300 | 0.030350 | 0.029672 | 0.956 | −0.000121 | 0.009572 | 0.009502 | 0.965 | |
|
| 0.153 | 0.002791 | 0.027165 | 0.028199 | 0.945 | −0.000309 | 0.009206 | 0.010402 | 0.945 | |
| PCH |
| 0.299 | −0.000084 | 0.041594 | 0.040674 | 0.961 | −0.001831 | 0.013151 | 0.013022 | 0.957 |
|
| 0.250 | 0.000876 | 0.036176 | 0.035464 | 0.956 | −0.000759 | 0.011424 | 0.011313 | 0.958 | |
| 3 | 0.200 | 0.001462 | 0.030163 | 0.029655 | 0.959 | −0.000051 | 0.009509 | 0.009485 | 0.961 | |
|
| 0.153 | 0.002572 | 0.025716 | 0.024704 | 0.961 | 0.000622 | 0.008058 | 0.007962 | 0.945 | |
| Simpler | – | 0.333 | 0.001129 | 0.044983 | 0.044481 | 0.955 | −0.000242 | 0.014226 | 0.014195 | 0.957 |
KM nonparametric approach based on Kaplan-Meier estimation for S(t), WKM nonparametric approach based on weighted Kaplan-Meier estimation for S(t), COX semiparametric approach, PCH parametric approach using a piecewise constant hazards model, Simpler simpler approach based on proportion of exposed subjects, Bias sampling mean of the difference between and A(t), SEE sampling mean of standard error estimate of A(t), SSD sampling standard deviation of , CP coverage probability of the 95% Wald confidence interval
Simulation results for the estimation of attributable risk A(.) under nonproportional hazards with regression parameter β= ln(2) and probability of exposure q=0.5
| Estimation method |
|
| ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Time |
| Bias | SEE | SSD | CP | Bias | SEE | SSD | CP | |
| KM |
| 0.181 | 0.001124 | 0.045053 | 0.045787 | 0.954 | 0.000289 | 0.014277 | 0.014126 | 0.949 |
|
| 0.133 | 0.001330 | 0.037581 | 0.037647 | 0.953 | −0.000029 | 0.011915 | 0.012154 | 0.935 | |
| 3 | 0.109 | 0.001211 | 0.036543 | 0.036593 | 0.953 | −0.000301 | 0.011618 | 0.011608 | 0.952 | |
|
| 0.093 | 0.002743 | 0.043713 | 0.051764 | 0.933 | −0.000888 | 0.016362 | 0.019957 | 0.950 | |
| WKM |
| 0.181 | 0.001138 | 0.045090 | 0.045739 | 0.954 | 0.000291 | 0.014274 | 0.014130 | 0.949 |
|
| 0.133 | 0.001347 | 0.037587 | 0.037593 | 0.956 | −0.000024 | 0.011911 | 0.012151 | 0.938 | |
| 3 | 0.109 | 0.001165 | 0.036511 | 0.036518 | 0.952 | −0.000293 | 0.011612 | 0.011607 | 0.956 | |
|
| 0.093 | 0.001685 | 0.042617 | 0.049261 | 0.920 | −0.000708 | 0.016157 | 0.019107 | 0.946 | |
| COX |
| 0.181 | −0.018761 | 0.037521 | 0.037543 | 0.933 | −0.019843 | 0.011869 | 0.011939 | 0.621 |
|
| 0.133 | 0.010548 | 0.033500 | 0.033580 | 0.941 | 0.009504 | 0.010588 | 0.010676 | 0.847 | |
| 3 | 0.109 | 0.023376 | 0.030960 | 0.031017 | 0.879 | 0.022314 | 0.009775 | 0.009879 | 0.368 | |
|
| 0.093 | 0.030360 | 0.029427 | 0.029588 | 0.830 | 0.029168 | 0.009323 | 0.009456 | 0.127 | |
| PCH |
| 0.181 | 0.026479 | 0.048525 | 0.049191 | 0.908 | −0.017516 | 0.011688 | 0.012080 | 0.672 |
|
| 0.133 | 0.057418 | 0.044915 | 0.045594 | 0.738 | 0.011082 | 0.010391 | 0.010768 | 0.806 | |
| 3 | 0.109 | 0.070045 | 0.042342 | 0.043042 | 0.607 | 0.023478 | 0.009571 | 0.009936 | 0.313 | |
|
| 0.093 | 0.075924 | 0.040403 | 0.041050 | 0.525 | 0.029848 | 0.009011 | 0.009360 | 0.098 | |
KM nonparametric approach based on Kaplan-Meier estimation for S(t), WKM nonparametric approach based on weighted Kaplan-Meier estimation for S(t), COX semiparametric approach, PCH parametric approach using a piecewise constant hazards model, Bias sampling mean of the difference between and A(t), SEE sampling mean of standard error estimate of A(t), SSD sampling standard deviation of , CP coverage probability of the 95% Wald confidence interval
Fig. 1Estimation of the risk of invasive breast cancer attributable to ever use of menopausal hormone therapy at baseline as a time function, E3N cohort, 1992-2008. The dark solid and dark dashed curves pertain to the point estimates by KM and COX, respectively, the dark circles to the point estimates by the 4-year interval PCH; the light solid and light dashed curves, as well as the light circles, show the corresponding 95% confidence intervals. The WKM curves are not displayed because they almost coincided with the KM curves at the chosen scale