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Title: Dose-Response%20Modeling%20for%20EPA


1
Dose-Response Modeling for EPAs Organophosphate
CumulativeRisk Assessment Combining Information
from Several Datasets toEstimate Relative
Potency Factors
  • R. Woodrow Setzer
  • National Center for Computational Toxicology
  • Office of Research and Development
  • U.S. Environmental Protection Agency

2
Background
  • Food Quality Protection Act, 1996
  • Requires EPA to take into account when setting
    pesticide tolerances
  • available evidence concerning the cumulative
    effects on infants and children of such residues
    and other substances that have a common mechanism
    of toxicity.

3
Cumulative Risk (per FQPA)
  • The risk associated with concurrent exposure by
    all relevant pathways routes of exposure to a
    group of chemicals that share a common mechanism
    of toxicity.

4
Identifying the Common Mechanism Group OP
Pesticides
  • U. S. EPA 1999 Policy Paper
  • Inhibition of cholinesterase
  • Brain
  • Peripheral Nervous System (e.g., nerves in
    diaphragm, muscles
  • Surrogate/indicator (plasma, RBC)

5
Synergy?
  • Berenbaum (1989) described lack of interaction in
    terms of the behavior of isoboles Loci of
    points in dose space that have the same
    response in multi-chemical exposures.
  • Non-interaction coincides with linear isoboles.

6
Isoboles Example 2 chems
Dose Chem 2
Dose Chem 1
7
Dose-Response for Non-Interactive Mixture
  • For a two-chemical mixture, (d1, d2),
  • if D1 is the dose of chem 1 that gives response
    R, D2 is the dose of chem 2 that gives response
    R, then all the mixtures that give response R
    satisfy the equation

line
For n chemicals
hyperplane
8
Special Case
  • When fi(x) f(ki x) chemicals in a mixture act
    as if they were dilutions of each other
  • Isoboles are linear and parallel
  • Dose-response function for mixture is
    f(k1x1k2x2)
  • Typically, pick one chemical as index (say 1
    here) and express others in terms of that.
  • Then RPF for 2 is k2/k1

9
Strategy of Assessment
  • Use dose-response models to compute relative
    potency factors (RPFs, based on 10 inhibition of
    brain AChE activity BMD10) for oral exposures
    NOAELs to compute RPFs for inhalation and dermal
    exposures.
  • Probabilistic exposure assessment, taking into
    account dietary, drinking water, and residential
    exposures on a calendar basis.
  • Final risk characterization based on distribution
    of margins of exposure (MOE)

10
OP CRA Science Team
  • Vicki Dellarco
  • Elizabeth Doyle
  • Jeff Evans
  • David Hrdy
  • Anna Lowit
  • David Miller
  • Kathy Monk
  • Steve Nako
  • Stephanie Padilla
  • Randolph Perfetti
  • William O. Smith
  • Nelson Thurman
  • William Wooge
  • Plus Many, Many Others

11
Oral Dose-Response Data
  • Brain acetylcholinesterase (AChE) (as well as
    plasma and RBC)
  • Female and male rats
  • Subchronic and chronic feeding bioassays
  • Always multiple studies for compounds
  • Often multiple assay methods
  • Ultimately, 33 OPs included
  • Usually 10 animals per dose group/sex
  • Control CVs lt 10

12
Database of Acetylcholine Esterase Data
  • 33 chemicals
  • 80single-chemical studies
  • 3 compartments (brain, rbc, plasma) ? 2 sexes
  • multiple durations of exposure, subchronic to
    chronic
  • total gt1655 dose-response relationships ( 1300
    retained)

13
Data Structure
Chemical
(in each Study X Sex) (in each Study X Sex) Mean, SD, N Mean, SD, N Mean, SD, N Mean, SD, N
Doses Compart. DS1 DS2 DS3 DS4
1 Brain X X X X
1 RBC X X X X
1 Plasma X X X X

k Brain X X X X
k RBC X X X X
k Plasma X X X X
14
Experimental Design
Chemical
(in each StudyXSex) (in each StudyXSex) (in each StudyXSex) (in each StudyXSex) (in each StudyXSex) (in each StudyXSex) (in each StudyXSex)
Doses Animals Compart. DS1 DS2 DS3 DS4
Di 1 Brain X
Di 1 RBC X X
Di 1 Plasma X X
Di
Di n Brain X
Di n RBC X X
Di n Plasma X X
15
Distribution of Doses
16
Exposure Duration
  • Preliminary data analysis showed that subchronic
    feeding studies reached steady state after about
    3 weeks
  • Multiple time points within a study were treated
    as independent, nested within study.
  • Only time points with more than 3 weeks of
    exposure were included.

17
Issues for Modeling
  • Use as much of the acceptable data as possible
  • Different units/analytic methods used
  • Expect responses to differ among compartments,
    maybe sexes
  • Generally small number of dose levels in a single
    data set (limiting the number of parameters that
    can be identified)

18
Hierarchical Structure of BMD Estimate
  • Multiple studies carried out at different times
    by different laboratories, using different
    analytic methods, reporting results in different
    units.

19
Two Modeling Approaches
  1. Model individual data sets, combining estimates.
  2. Model the combined studies for each chemical ?
    compartment. Combined estimate is the estimate
    of the mean parameter (current revised risk
    assessment).

20
Modeling Individual Datasets
  • Fit a model to each dataset, estimating BMD (and
    estimated standard error) each time.
  • Model all three compartments and both sexes
  • Use the global two-stage method (Davidian and
    Giltinan, 1995 138-142) twice, once for each
    level of variability.

21
Dose-Response and Potency Approach 1
22
Sequential Approach to Fitting
  • Fit full model to all data using generalized
    nonlinear least squares (gnls)
  • If no convergence or inadequate fit,
  • Repeat (until good fit or remaining doses lt 3)
  • set PB ? 0
  • refit to dataset
  • drop highest dose

23
Potency Measure
  • Absolute potency is BMD calculated from fitted
    model
  • Relative Potency
  • IF PBI PBk

24
Estimate dose-response for each dataset
25
Random Effects Model for BMD
  • Log(BMD) µlBMD EMRID ETime in MRID
  • µlBMD varies between sexes
  • EMRID N(0,sMRID2)
  • ETime in MRID N(0,sTiM2)
  • Error variance proportional to (predicted) mean
    of AChE activity at that dose constant of
    proportionality varied among MRIDs.

26
Combine Potency Estimates
  • Combine estimates in two stages among times
    within study and among studies
  • At each stage, suppose q individual estimates lmi
    with variances si2. Potency estimates (?) and
    variance components (?2) maximize

27
Combine Potency (more)
  • Variances for ln(potency) estimates
  • This implements the Global Two-Stage method of
    Davidian and Giltinan, (1995)
  • This method could apply to any single statistic
    or parameter, or vector statistic with simple
    modification.

28
Problems
  • Estimate of m depends on PB. Particularly a
    problem when we cannot estimate PB.
  • Would like a formal test of whether PBs differ
    among chemicals.
  • Is there a shoulder on the dose-response curve in
    the low-dose region?

29
Solution
  • Fit the same model to multiple related datasets,
    allowing information about DR shape to be shared
    across datasets
  • Develop a more elaborate model that takes into
    account some of the biology to give a better
    description of the lower dose behavior.

30
Stage 1 A simple PBPK Model
  • Two compartments Liver and everything else.
  • Oral dosing, assume 100 into the portal
    circulation
  • Only consider saturable metabolic clearance and
    first order renal clearance.
  • Run to steady state

31
Stage 1 (more)
  • Solve the system of differential equations
    implied by the model for steady state.
  • The concentration of non-metabolized parent OP in
    the body (idose) as a function of administered
    oral Dose rate is

32
Stage 2 Same as Before
  • But reparametrized

33
DR with First Pass Metabolism
34
Hierarchical Model
  • All datasets for a chemical fitted jointly using
    nlme in R.
  • S and D varied only among chemicals
  • A varied among sex data set
  • PB varied between sexes
  • BMD random (same model as before)

35
Dose Response
36
Benchmark Dose Fitting One Dataset at a Time
37
Benchmark Dose Combining Datasets
38
Overall Quality of Fit Residuals
39
Relative Potencies
40
Computing a MOE (Margin of Exposure)
Chem RPF Exposure (µg/kg/day) Eq. Exposure
A (Index) 1.00 0.2 0.2
B 0.1 1.0 0.1
C 1.2 0.2 0.24
Total Equivalent Exposure Total Equivalent Exposure Total Equivalent Exposure 0.54
BMD10(A) 0.08 mg/kg/day MOE 0.08 X 1000
µg/kg/day / 0.54 148
41
Distribution of Total MOEs
42
1. Combining Estimates
  • Keeps dose-response modeling simple
  • Delays problems about heterogeneity (sexes,
    compartments, studies, etc.) until after the
    modeling.
  • Number of dose levels in the smallest dataset
    limits the model used, have to drop data sets
    with too few doses for the selected model.

43
2. Combining Datasets
  • Dose-response modeling is (substantially)
    complicated
  • Heterogeneity issues addressed in the modeling
  • Overall number of dose levels (among other
    things) limits the model used

44
Is PB a High-Dose Effect?
  • Maybe, but could also be a consequence of
    multiple binding sites with different functions,
    or other aspects of the kinetics of AChE
    inhibition such as variation in aging among
    chemicals, which could manifest effects at lower
    doses as well.

45
Horizontal Asymptotes
0.8
Direct Acting
Require Activation
0.6
PB
0.4
0.2
0.0
NALED
DIAZINON
PHORATE
PHOSMET
TRIBUFOS
FENTHION
ACEPHATE
TERBUFOS
ETHOPROP
BENSULIDE
MALATHION
MEVINPHOS
PHOSALONE
FENAMIPHOS
DISULFOTON
DICHLORVOS
DIMETHOATE
FOSTHIAZATE
TRICHLORFON
DICROTOPHOS
METHIDATHION
CHLORPYRIFOS
METHAMIDOPHOS
AZINPHOSMETHYL
METHYLPARATHION
PIRIMIPHOSMETHYL
OXYDEMETONMETHYL
TETRACHLORVINPHOS
CHLORPYRIPHOSMETHYL
46
Should We Expect Dose-Additivity? (Not Exactly!)
  • Low-dose shoulder significantly improves fit in a
    substantial number of chemicals. At best, expect
    dose-additivity in terms of target dose.
  • Horizontal asymptotes differ significantly among
    chemicals (P ltlt 10-6), so dose-additivity cannot
    hold exactly.

47
Beginnings of A Theoretical Approach
  • Through mathematical analysis and in silico
    experiments, ask
  • What features determine the shape of individual
    chemical dose-response curves, and
  • what are the features of chemicals (if any) that
    lead to deviations from dose-additivity in
    cumulative exposures.

48
Example A Toy OP Model
  • Three compartments brain, liver, everything else
  • Constant infusion into the liver
  • Metabolic clearance in the liver,
    Michaelis-Menten kinetics (Vmax, Km)
  • AChE inhibition in the brain uses same scheme as
    Timchalk, et al. (2002) Ki, Kr, Ka.
  • Sample the 5-dimensional parameter space to make
    example chemicals.

49
AChE Inhibition Scheme
ks
kI
ka
E I
EI
Bound EI
kd
kr
E AChE I OP-like inhibitor
50
Strict Sense Dose Additivity
51
Evaluating Berenbaum Dose-Response
  • So, if f1(x) is the dose-response function for
    chem 1, etc., then for any given dose (d1,d2), we
    can find the response by finding D1

52
DR for 50-50 Mixture
53
Broad Sense Dose Additivity
54
DR for 50-50 Mixture
From RPFs
Berenbaum
From PBPK
55
Dose-Additivity Dogma
  • What happens when two chemicals that are
    identical except for Ki are combined? (Same mode
    of action?)
  • Chem 17 Ki 11.04
  • Chem 300 Ki 0.01, other parameters the same
  • Potency of 17 relative to 300 (ratios of BMD10)
    is 4.25

56
Common Mode of Action?
57
Future Work
  • OPCRA Dose-response modeling is complete,
    tolerances being reassessed now.
  • Toy Models
  • Explore other combinations
  • Can we duplicate real OP dose-responses without
    two sites on AChE?
  • Activation
  • Consequences for DR shape of metabolic clearance
    in the blood.
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