| Literature DB >> 23800038 |
Neal W Jorgensen, Christopher T Sibley, Robyn L McClelland.
Abstract
BACKGROUND: Studying the effects of medications on endpoints in an observational setting is an important yet challenging problem due to confounding by indication. The purpose of this study is to describe methodology for estimating such effects while including prevalent medication users. These techniques are illustrated in models relating statin use to cardiovascular disease (CVD) in a large multi-ethnic cohort study.Entities:
Mesh:
Substances:
Year: 2013 PMID: 23800038 PMCID: PMC3694006 DOI: 10.1186/1471-2288-13-81
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Structure of the dataset used for imputation
| New lipid-lowering medication users (N = 1286) | Exam dependent cholesterol levels (exam prior to starting lipid-lowering medication) | Exam dependent cholesterol levels (exam after starting lipid-lowering medication) | Exam dependent covariates (exam after starting lipid-lowering medication) |
| Lipid-lowering medication users at baseline (N = 1086) | Missing | Post-treated cholesterol from exam 1 | Baseline covariates from exam 1 |
Participant characteristic by baseline statin use
| Age, Mean (SD), y | 61.3 (10.3) | 65.9 (8.8) | <.001 | 62.0 (10.2) | 62.9 (9.7) | 0.141 |
| Male | 2441 (47.4%) | 417 (47.1%) | 0.879 | 2530 (47.7%) | 401 (50.8%) | 0.308 |
| Race/ethnicity | ||||||
| White | 1976 (38.4%) | 385 (43.5%) | 0.004 | 2069 (39.0%) | 351 (44.5%) | 0.156 |
| Chinese | 672 (13.1%) | 99 (11.2%) | 650 (12.3%) | 74 (9.4%) | ||
| Black | 1323 (25.7) | 235 (26.6%) | 1355 (25.6%) | 186 (23.6%) | ||
| Hispanic | 1179 (22.9%) | 166 (18.8%) | 1226 (23.1%) | 178 (22.6%) | ||
| Body mass index, kg/m2 | 28.1 (5.5) | 28.7 (5.0) | <.001 | 28.2 (5.4) | 28.5 (5.2) | 0.235 |
| Current smoker | 690 (13.4%) | 83 (9.4%) | 0.001 | 659 (12.4%) | 84 (10.6%) | 0.394 |
| Pack years smoking | 11.0 (22.3) | 12.9 (22.4) | 0.021 | 11.1 (22.2) | 10.9 (21.5) | 0.880 |
| Current alcohol use | 2902 (56.4%) | 507 (57.3%) | 0.603 | 2997 (56.5%) | 479 (60.7%) | 0.128 |
| Diabetes | 534 (10.4%) | 191 (21.6%) | <.001 | 729 (13.8%) | (111 (14.0%) | 0.897 |
| Family history of MI | 1952 (37.9%) | 427 (48.3%) | <.001 | 2153 (59.4%) | 334 (42.4%) | 0.542 |
| Hypertension | 2082 (40.4%) | 543 (61.4%) | <.001 | 2301 (43.4%) | 358 (45.3%) | 0.492 |
| Hypertension Meds | 1645 (32.0%) | 520 (58.8%) | <.001 | 1941 (36.6%) | 309 (39.2%) | 0.323 |
| Total cholesterol, mg/dL | 196.7 (35.7) | 224.1 (36.4) | <.001 | 206.4 (50.9) | 204.4 (41.2) | 0.611 |
| Systolic BP, mm Hg | 125.5 (21.3) | 129.7 (21.6) | <.001 | 126.1 (21.1) | 127.3 (22.3) | 0.286 |
| Diastolic BP, mm Hg | 72.0 (10.4) | 71.2 (9.6) | 0.038 | 71.9 (10.3) | 72.0 (9.9) | 0.727 |
| Health insurance | 4644 (90.2%) | 861 (97.3%) | <.001 | 4789 (90.4%) | 741 (93.9%) | 0.109 |
| Income | ||||||
| <$25 K | 1586 (30.8%) | 285 (32.2%) | 0.165 | 1679 (31.7%) | 229 (29.0%) | 0.592 |
| $25 K-$49 K | 1492 (29.0%) | 250 (28.3%) | 1558 (29.4%) | 237 (30.0%) | ||
| $50 K-$99 K | 1375 (26.7%) | 212 (24.0%) | 1351 (25.5%) | 198 (25.1%) | ||
| $100 K+ | 697 (13.5%) | 138 (15.6%) | 712 (13.4%) | 125 (15.9%) | ||
| Education | ||||||
| < High school | 914 (17.8%) | 143 (16.2%) | 0.164 | 941 (17.8%) | 124 (15.7%) | 0.381 |
| High school | 2352 (45.7%) | 420 (47.5%) | 2475 (46.7%) | 366 (46.4) | ||
| College | 937 (18.2%) | 142 (16.1%) | 914 (17.3%) | 124 (15.8%) | ||
| Graduate school | 947 (18.4%) | 180 (20.3%) | 970 (18.3%) | 174 (22.1%) | ||
| Married | 3160 (61.4%) | 546 (61.7%) | 0.850 | 3246 (61.3%) | 502 (63.6%) | 0.406 |
| Intentional exercise (met-min/wk) | 1583 (2396) | 1527 (2130) | 0.480 | 1644 (2421) | 1692 (2477) | 0.705 |
| Creatinine, mg/dL | 0.94 (0.23) | 1.01 (0.41) | <.001 | 0.97 (0.31) | 0.97 (0.30) | 0.778 |
| Fibrinogen, mg/dL | 342.6 (72.8) | 357.4 (74.6) | <.001 | 351.3 (83.8) | 356.4 (88.0) | 0.530 |
| hs-CRP, mg/L | 3.7 (5.8) | 3.2 (4.8) | 0.004 | 3.6 (5.4) | 4.2 (7.3) | 0.396 |
| CAC (Agatston) | 122 (367) | 240 (522) | <.001 | 149 (400) | 161 (444) | 0.525 |
| Common carotid (mm) | 0.86 (0.19) | 0.91 (0.19) | <.001 | 0.87 (0.19) | 0.88 (0.19) | 0.195 |
| Internal carotid (mm) | 1.03 (0.57) | 1.25 (0.67) | <.001 | 1.08 (0.61) | 1.13 (0.66) | 0.139 |
| Heart rate (bpm) | 63.0 (9.5) | 63.6 (9.8) | 0.066 | 63.3 (9.8) | 63.8 (10.4) | 0.455 |
1 Comparisons for the first imputation.
Parameter estimates from the linear regression model for total cholesterol
| Cholesterolpost-treated (mg/dl) | 0.53 | (0.46,0.60) | <.001 |
| Age (years) | -0.18 | (-0.35,-0.01) | 0.033 |
| Gender – Male | -10.32 | (-13.66,-6.98) | <.001 |
| Race/ethnicity | |||
| White | -- | -- | -- |
| Chinese | -6.21 | (-11.71,-0.72) | 0.027 |
| Black | -7.62 | (-11.63,-3.60) | <.001 |
| Hispanic | -1.21 | (-5.32,2.90) | 0.565 |
| Diabetes | |||
| Normal | -- | -- | -- |
| IFG | 0.23 | (-3.80,4.26) | 0.910 |
| Untreated diabetes | 2.69 | (-9.46,14.85) | 0.664 |
| Treated diabetes | -9.00 | (-12.91,-5.10) | <.001 |
| Hypertension Meds – Yes | -5.43 | (-8.79,-2.08) | 0.002 |
| HDLpost-treated | 0.12 | (-0.03,0.26) | 0.107 |
| triglycerides | 0.03 | (-0.00,0.05) | 0.069 |
| Atorvastatin | |||
| Yes – Low dose | 28.31 | (18.19,38.42) | <.001 |
| Yes – High dose | 42.84 | (31.99,53.69) | <.001 |
| Fluvastatin | |||
| Yes – Low dose | 18.24 | (1.01,35.47) | 0.038 |
| Yes – High dose | 25.83 | (13.15,38.51) | <.001 |
| Lovastatin | |||
| Yes – Low dose | 19.41 | (8.61,30.21) | <.001 |
| Yes – High dose | 34.80 | (20.87,48.74) | <.001 |
| Pravastatin | |||
| Yes – Low dose | 20.23 | (8.69,31.77) | 0.001 |
| Yes – High dose | 23.72 | (8.71,38.73) | 0.002 |
| Simvastatin | |||
| Yes – Low dose | 45.46 | (22.98,67.94) | <.001 |
| Yes – High dose | 19.16 | (-16.64,54.96) | 0.294 |
| Simvastatin*Cholesterolpost-treated Interaction | |||
| Yes – Low dose | -0.12 | (-0.25,0.01) | 0.071 |
| Yes – High dose | 0.11 | (-0.11,0.32) | 0.320 |
| Rosuvastatin – Yes | 38.36 | (26.43,50.29) | <.001 |
| Fibrate – Yes | 7.00 | (-3.76,17.77) | 0.202 |
| Resin – Yes | -7.76 | (-31.48,15.96) | 0.521 |
| Niacin – Yes | -29.12 | (-56.25,-2.00) | 0.035 |
| Niacin*Cholesterolpost-treated Interaction | 0.12 | (-0.02,0.27) | 0.101 |
| Ezetimibe – Yes | 12.10 | (2.27,21.94) | 0.016 |
Hazard ratios for statins from cox proportional hazards models for incident CHD
| 0.97 (0.60,1.59) | 0.915 | 0.92 [0.62,1.36] | 0.676 | |
| | ||||
| No cholesterol | 0.92 [0.54,1.57] | 0.767 | 0.82 [0.54,1.26] | 0.373 |
| Imputed cholesterol2 | 0.74 [0.38,1.42] | 0.363 | 0.72 [0.43,1.21] | 0.215 |
| New-user analysis (N = 4886) | 0.91 [0.45,1.80] (Events = 100) | 0.777 | 0.71 [0.38,1.30] (Events = 153) | 0.265 |
| Sensitivity analysis3 | ||||
| No truncating | 0.59 [0.27,1.32] | 0.199 | 0.62 [0.34,1.15] | 0.130 |
| <.2 & >20 | 0.68 [0.34,1.36] | 0.275 | 0.69 [0.40,1.17] | 0.166 |
| <.3 & >30 | 0.64 [0.30,1.34] | 0.238 | 0.66 [0.38,1.16] | 0.152 |
| <.3 & >10 | 0.74 [0.39,1.42] | 0.370 | 0.73 [0.44,1.21] | 0.220 |
1 Adjusted for traditional risk factors: Age, gender, race/ethnicity, BMI, diabetes status, family history of heart attack, smoking status, hypertensive medications, systolic BP.
2 Multiple imputations were used for models where imputed cholesterol was used in creating the weights. Weights < .1 were set to 0.1 and weights >10 were set to 10.
3 Using non-truncated stabilized weights and various thresholds for truncating.
Figure 1Hazard ratios from cox proportional hazards models with multiple imputations by CVD endpoint.
Figure 2Kaplan-Meier survival curves for hard CHD.