Dietary exposures settings

Calculation settings

Table 90 Calculation settings for module Dietary exposures.
Name Description

Dietary exposure calculation tier

A tier is a pre-specified set of model configurations. By selecting a model tier, MCRA automatically sets all model settings in this module according to this tier. Note that currently tier setting may need to be performed separately in sub-modules. Use the Custom tier when you want to manually set each model setting.

Risk type

The type of exposure considered in the assessment; acute (short term) or chronic (long-term).

Total diet study concentration data

Specifies whether exposure is based on sampling data from total diet studies.

Multiple substances analysis

Specifies whether the assessment involves multiple substances.

Express results in terms of reference substance equivalents (cumulative)

Specifies whether the assessment involves multiple substances and results should be cumulated over all substances.

Sample based

Include co-occurrence of substances in samples in simulations. If checked, substance residue concentrations are sampled using the correlations between values on the same sample. If unchecked, any correlation between substances is ignored, substance residue concentrations are sampled ignoring the correlations between values on the same sample.

Consumptions on the same day come from the same sample

if checked, in procedure of EFSA Guidance 2012, section 4.1.1, all consumptions of a raw commodity of an individual on the same day are assumed to come from the same sample. If unchecked, all consumptions of a raw commodity of an individual on the same day are assumed to come from different samples.

Maximize co-occurrence of high values in simulated samples

Within each pattern of substance presence. If checked, substance residue concentrations are sorted within co-occurrence patterns of substances on the same samples. After sorting, high residue values occur more frequently on the same sample. This choice is conservative. If unchecked, substance residue concentrations are sampled at random, ignoring any co-occurrence patterns of substances on the same samples. This choice is less conservative.

Apply processing factors

Specified in table ProcessingFactor. If checked, processing factors are applied. Concentrations in the consumed food may be different from concentrations in the food as measured in monitoring programs (typically raw food) due to processing, such as peeling, washing, cooking etc. If unchecked, no processing information is used. This is in most (though not all) cases a worst-case assumption

Use distribution

Use processing factors higher than one

Unit variability model

Describes variation between single units when concentration data are from composite samples.

Estimates nature

Simulated unit concentrations can be higher or lower than composite value (realistic) or only equal or higher (conservative).

Unit variability parameter

Use Coefficient of variation or Variability factor, specified in VariabilityFactor table.

Mean of LogNormal simulated values (biasing)

Unbiased: correct unit simulations for difference between median and mean.

Default variability factor for unit weight <= 25g

Default variability factor 1 (unit weight <= 25 g, small crops). Still requires specification of unit weight (FoodProperties table) and, in case of beta model, also the Number of units in a composite sample (UnitVariability table).

Default variability factor for unit weight > 25g

Default variability factor 5 (unit weight > 25 g, medium/large crops). Still requires specification of unit weight (FoodProperties table) and, in case of beta model, also the Number of units in a composite sample (UnitVariability table).

Model type

The parametric model for between-and within-individual variation, and possibly covariates.

Model-then-add

Specifies whether to create separate exposure models for specific groups of foods-as-measured (model-then-add).

Covariate modelling

Specifies whether to model exposures as a function of covariates at individual level.

Amount model covariate model

Specifies whether, and how to model exposures amounts as function of covariates.

Frequency model covariates model

Specifies whether, and how to model exposure frequency as function of covariates.

Use occurrence patterns for generating simulated samples

When selected, this simulated samples will be based on occurrence patterns.

Details level dietary exposures

Level of detail for summarizing dietary exposure/intakes.

Iterate survey

Instead of (re-)sampling the individual days, loop over the entire survey (= 1 iteration). The number of iterations for a survey is calculated as round (number of Monte Carlo iterations /(number of individuals * surveys days)).

Monte Carlo iterations

The number of iterations for Monte Carlo simulations, e.g. 100.000 (maximum is 100.000).

Impute exposure distributions

Impute exposure distributions for substances with missing concentrations.

Allow conversion using food extrapolations

Step 3c: try to find read across codes. If unchecked, read across table is ignored, default is ‘Use read across info’. E.g. for pineapple no measurements are found but by specifying that pineapple is converted to FruitMix (with a default proportion of 100%), the TDS sample concentration value of FruitMix will be used for pineapple (as-eaten or as ingredient). If successful, restart at step 1.

Non-detects replacement

How to replace non-detects (when not co-modelled, as in censored models).

Default concentration model

The concentration model type that will be used as default for all food/substance combinations. If this model type cannot be fitted, e.g., due to a lack of data, a simpler model will be chosen automatically as a fall-back.

Output settings

Table 91 Output settings for module Dietary exposures.
Name Description

Include drill-down on 9 individuals around specified percentile.

Specifies whether drilldown on 9 individuals is to be included in the output.

Summarize simulated data

Specifies whether a summary of the simulated consumptions and concentrations should be included in the output.

Store simulated individual day exposures

Store the simulated individual day exposures. If unchecked, no additional output will be generated. If checked, the output will contain an additional section with the simulated individual day exposures.

Show percentiles for

Give specific percentiles of exposure distribution (%), e.g. 50 90 95 97.5 99 (space separated).

Percentage for drilldown

Gives detailed output for nine individuals near this percentile of the exposure distribution.

Percentage for upper tail

Gives detailed output for this upper percentage of the exposure distribution.

Show % of population below level(s)

Exposure levels can be generated automatically or by explicit specification (Manual).

Exposure levels

Specify exposure levels for which to give the percentage of exposure below these levels, e.g. 1 10 50 100 200 500. Specify below whether these levels are absolute or relative to ARfD/ADI.

Exposure levels are

Specify whether exposure levels are absolute or percentages of ARfD/ADI.

Number of levels of covariable to predict exposure

Specify the number of levels, e.g. 20. The range of the covariable is divided by the number of levels: range = (max - min)/levels. For these covariable levels exposures are predicted.

Predict exposure at extra covariable levels

Specify specific prediction levels in addition to the automatically generated prediction levels (space separated).

Lower percentage for variability (%)

The default value of 25% may be overruled.

Upper percentage for variability (%)

The default value of 75% may be overruled.

Report consumptions and exposures per individual instead of per kg body weight

Specifies whether body weights should be ignored and consumptions and exposures should be expressed per individual. Otherwise, the consumptions and exposures are per kg body weight.

Uncertainty settings

Table 92 Uncertainty settings for module Dietary exposures.
Name Description

Resample imputation exposure distributions

Specifies whether to resample the imputated exposure distributions.