1 / 48

Comparing methods for addressing limits of detection in environmental epidemiology

Comparing methods for addressing limits of detection in environmental epidemiology. Roni Kobrosly, PhD, MPH Department of Preventive Medicine Icahn School of Medicine at Mount Sinai. A familiar diagram…. Biomarker of Exposure. Biologically Effective Dose. Altered Structure/

haruko
Télécharger la présentation

Comparing methods for addressing limits of detection in environmental epidemiology

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Comparing methods for addressing limits of detection in environmental epidemiology Roni Kobrosly, PhD, MPH Department of Preventive Medicine Icahn School of Medicine at Mount Sinai

  2. A familiar diagram… Biomarker of Exposure Biologically Effective Dose Altered Structure/ Function Environmental Exposure Internal Dose Clinical Disease DeCaprio, 1997

  3. Biomarkers and Limits of Detection (LOD)

  4. It is difficult to quantify the concentration because it is so low LOD Higher concentration

  5. Handling LODs in analysis • Easiest approach: simply delete these observations • Problems with this: • However, values < LOD are informative: analyte may have a concentration between 0 and LOD • Studies are expensive and you lose covariate data! • Excluding observations from analyses *may* substantially bias results Chen et al. 2011

  6. Handling LODs in analysis • Hornung & Reed describe approach that involves substituting a single value for each observation <LOD • Three suggested substitutions: LOD/2, LOD/√2, or just LOD • Problem: Replacing a sizable portion of the data with a single value increases the likelihood of bias and reduces power! Helsel, 2005; Hughes 2000; Hornung & Reed, 1990

  7. Citations in Google Scholar Hornung & Reed, 1990

  8. Comparing LOD methods • While there are many studies testing individual methods, relatively little work comparing performance of several methods • Even fewer studies have compared methods in context of multivariable data • Comparative studies that do exist provide contradictory recommendations. No consensus!

  9. Simulation Study Objectives • Compare performance of LOD methods when independent variable is subject to limit of detection in multiple regression • Compare performance across a range of “experimental” conditions • Create flowchart to aid researchers in their analysis decision making

  10. Statistical Bias Nat’l Library of Med definition: “Any deviation of results or inferences from the truth” Unbiased Biased

  11. Variable Definitions • Four continuous variables: • Y: Dependent variable (outcome) • X: Independent variable (exposure, subject to LOD) • C1, C2: Independent variables (covariates)

  12. 6 “Experimental Conditions” 1) Dataset sample size: n = {100, 500}

  13. 2) % of exposure variable with values in LOD region: LOD% = {0.05, 0.25}

  14. 3) Distribution of Exposure Variable: Normal versus Skewed

  15. 4) R2 of full model: R2 = {0.10, 0.20}

  16. 5) Strength & direction of exposure-outcome association: Beta = {-10, 0, 10}

  17. 6) Direction of confounding: Strong Positive, versus Strong Negative, versus None + -

  18. LOD methods considered • Deletion of subjects with LOD values • Substitution with LOD/√(2) • Substitution with LOD/2 • Substitution with just LOD value • Multiple imputation (King’s Amelia II) • MLE-imputation method (Helsel & Krishnamoorthy)

  19. Method 1: Deletion

  20. Method 2: Sub with LOD/√(2) • LODX = 9.0 • 9.0/√2 = 6.4

  21. Method 3: Sub with LOD/(2) • LODX = 9.0 • 9.0/2 = 4.5

  22. Method 4: Sub with just LOD • LODX = 9.0 • 9.0

  23. Method 5: Multiple Imputation • “Amelia II” by Dr. Gary King • Assumes pattern of observations below LOD only depends on observed data (not unobserved data) • Lets you constrain imputed values (very helpful when working with LODs!)

  24. Method 5: Multiple Imputation • M = 5

  25. Method 5: Multiple Imputation β2 = 9.5 β3 = 8.3 β4 = 12.1 β1 = 10.1 β5 = 10.4 = 10.01

  26. Method 6: MLE-Imputation

  27. Method 6: MLE-Imputation Assume normal distribution, estimate and Sx

  28. Method 6: MLE-Imputation Use estimated LOD value, , and Sx to randomly generate observations below LOD

  29. Two-step Data Generation Process • 1st Step: Select “true” regression parameters for following two models: • 2nd Step: Use “true” parameters to guide the drawing of random numbers

  30. X = 1.3 - 6(C1) + 1.5(C2) “TRUTH” Y = 2.8 + 2(X) + 4.5(C1) + 6(C2) SIMULATED DATASETS Dataset1.1 Dataset1.2 Dataset1.3

  31. Create a set of “true” parameters Y = 2.8 + 2(X) + 4.5(C1) + 6(C2) Create 1500 simulated datasets for set of “true” parameters, using specific set of experimental conditions Dataset1.1 Dataset1.3 Dataset1.1000 Dataset1.2 Apply a LOD correction method and run regression for each dataset Take difference of estimated coefficient and “true” parameter. Produce 1000 bias estimates with 95% CI’s Bias = 2.2 – 2 = 0.2

  32. Help from Minerva Minerva runtime ~ 5 minutes

  33. n = 100, 25% LOD, Skewed Dist, R2 = 0.20, Negative X-Y Association, Negative confounding Deletion LOD/sqrt(2) LOD/2 LOD Multi Impu 8.0 MLE Impu 7.0 Mean Bias (with 95% CI) 6.0 5.0 4.0 3.0 2.0 1.0 0 -1.0 -2.0

  34. n = 100, 25% LOD, Skewed Dist, R2 = 0.20, Positive X-Y Association, Negative confounding Deletion LOD/sqrt(2) LOD/2 LOD 2.0 Multi Impu 1.0 MLE Impu 0 Mean Bias (with 95% CI) -1.0 -2.0 -3.0 -4.0 -5.0 -6.0 -7.0 -8.0

  35. n = 100, 25% LOD, Skewed Dist, R2 = 0.20, Negative X-Y Association, No confounding Deletion LOD/sqrt(2) LOD/2 LOD 1.0 Multi Impu 0.8 MLE Impu 0.6 Mean Bias (with 95% CI) 0.4 0.2 0 -0.2 -0.4 -0.6 -0.8 -1.0

  36. n = 100, 25% LOD, Skewed Dist, R2 = 0.20, Positive X-Y Association, No confounding Deletion LOD/sqrt(2) LOD/2 LOD 1.0 Multi Impu 0.8 MLE Impu 0.6 Mean Bias (with 95% CI) 0.4 0.2 0 -0.2 -0.4 -0.6 -0.8 -1.0

  37. n = 100, 25% LOD, Skewed Dist, R2 = 0.20, Negative X-Y Association, Positive confounding Deletion LOD/sqrt(2) LOD/2 LOD Multi Impu 8.0 MLE Impu 7.0 Mean Bias (with 95% CI) 6.0 5.0 4.0 3.0 2.0 1.0 0 -1.0 -2.0

  38. n = 100, 25% LOD, Skewed Dist, R2 = 0.20, Positive X-Y Association, Positive confounding Deletion LOD/sqrt(2) LOD/2 LOD 2.0 Multi Impu 1.0 MLE Impu 0 Mean Bias (with 95% CI) -1.0 -2.0 -3.0 -4.0 -5.0 -6.0 -7.0 -8.0

  39. An overview of results • Relative bias of methods is highly dependent on experimental conditions (i.e. no simple answers) • Covariates and confounding matters! Simulations that only consider bivariate, X-Y relationships with LODs are limited

  40. Deletion method results • Surprisingly… provides unbiased estimates across all conditions! • If sample size is large and LOD% is small, this may be a good option. As LOD% becomes larger, deletion is more costly • Important caveat: deletion method works well if true associations are linear

  41. Deletion method with linear effects Bottom 8% of X variable deleted

  42. Substitution method results • Not surprisingly… these methods are generally terrible! • Just LOD substitution is worst type • In most scenarios, these will bias associations towards the null • … but, works reasonably well when distribution is highly skewed, no confounding, and LOD% is low

  43. Multiple Imputation results • Amelia II performs relatively well! Particularly when R2 is higher • Does well even when LOD% is high • Problematic when there is no confounding (reason: this indicates there are no/weak associations between variables)

  44. MLE Imputation results • Associated with severe bias in most cases • Highly reliant on parametric assumptions and the code is daunting: recommend avoiding this method • However, performed reasonably well when exposure is normally distributed, no confounding, and LOD% is low

  45. A Case Study…

  46. Sarah’s SFF Analysis • Study for Future Families (SFF): a multicenter pregnancy cohort study that recruited mothers from 1999-2005 • Sarah Evans’ analysis: prenatal exposure to Bisphenol A (BPA) and neurobehavioral scores in 153 children at ages 6-10 • 28 (18%) children have BPA levels below the LOD

  47. Sarah’s SFF Analysis • Maternal urinary BPA collected during late pregnancy • Neurobehavioral scores obtained through School-age Child Behavior Checklist (CBCL). • Used multiple regression adjusting for child age at CBCL assessment, mother’s education level, family stress, urinary creatinine

  48. LOD/sqrt(2) Deletion -0.6 -0.4 -0.2 0 0.2 0.4 0.6 0.8 1.0

More Related