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. 2018 May 29;126(5):057008. doi: 10.1289/EHP2998

Table 2.

Summary of the modeling outcomes.

Toxicity value Consensus model Q2a Model prediction absolute errorb Mean value prediction absolute errorc p-valued
RfD 0.41 0.77 (0.06, 1.80) 0.96 (0.08, 2.53) <0.0001
RfD NOAEL 0.45 0.70 (0.06, 1.82) 0.93 (0.05, 2.37) <0.0001
RfD BMD 0.31 0.88 (0.13, 2.08) 1.08 (0.09, 2.34) 0.0098
RfD BMDL 0.28 0.93 (0.07, 2.19) 1.13 (0.13, 2.44) 0.0098
OSF 0.33 0.92 (0.07, 2.45) 1.19 (0.12, 2.60) <0.0001
CPV 0.25 0.97 (0.07, 2.53) 1.19 (0.15, 2.65) 0.0008
RfC 0.42 1.11 (0.12, 2.71) 1.49 (0.20, 3.54) 0.0015
IUR 0.42 0.93 (0.07, 2.69) 1.29 (0.06, 2.85) <0.0001

Note: BMD, benchmark dose; BMDL, benchmark dose lower confidence limit; CPV, cancer potency value; IUR, inhalation unit risk; NOAEL, no observed adverse effect level; OSF, oral slope factor; QSAR, quantitative structure activity relationship; RfC = reference concentration; RfD = reference dose.

a

Q2 is the fraction of the variance explained by each model, estimated by 5-fold cross-validation. In all cases, the accuracy of the model built with original data was significantly higher than that of models built using y-randomized data sets (p<0.00001).

b

The mean and confidence interval (90%) of absolute error for the external prediction of each compound’s toxicity value against the QSAR model prediction under 5-fold cross-validation.

c

The mean and confidence interval (90%) of absolute error for the external prediction of each compound’s toxicity value against the mean value of the compounds with that particular toxicity value.

d

Kolmogorov-Smirnov statistics for the difference between model and “mean value” prediction absolute errors.