| Literature DB >> 33569705 |
Hideaki Mamada1,2, Kazuhiko Iwamoto2, Yukihiro Nomura2, Yoshihiro Uesawa3.
Abstract
Despite their importance in determining the dosing regimen of drugs in the clinic, only a few studies have investigated methods for predicting blood-to-plasma concentration ratios (Rb). This study established an Rb prediction model incorporating typical human pharmacokinetics (PK) parameters. Experimental Rb values were compiled for 289 compounds, offering reliable predictions by expanding the applicability domain. Notably, it is the largest list of Rb values reported so far. Subsequently, human PK parameters calculated from plasma drug concentrations, including the volume of distribution (Vd), clearance, mean residence time, and plasma protein binding rate, as well as 2702 kinds of molecular descriptors, were used to construct quantitative structure-PK relationship models for Rb. Among the evaluated PK parameters, logVd correlated best with Rb (correlation coefficient of 0.47). Thus, in addition to molecular descriptors selected by XGBoost, logVd was employed to construct the prediction models. Among the analyzed algorithms, artificial neural networks gave the best results. Following optimization using six molecular descriptors and logVd, the model exhibited a correlation coefficient of 0.64 and a root-mean-square error of 0.205, which were superior to those previously reported for other Rb prediction methods. Since Vd values and chemical structures are known for most medications, the Rb prediction model described herein is expected to be valuable in clinical settings.Entities:
Keywords: Artificial neural networks; Blood-to-plasma ratio; Pharmacokinetics; Quantitative structure–pharmacokinetic relationships; Volume of distribution
Mesh:
Substances:
Year: 2021 PMID: 33569705 PMCID: PMC8342319 DOI: 10.1007/s11030-021-10186-7
Source DB: PubMed Journal: Mol Divers ISSN: 1381-1991 Impact factor: 3.364
Correlations between Rb and 4 pharmacokinetics (PK) parameters
| PK parameter | Transformation | R | |
|---|---|---|---|
| Vd | log | 0.47 | < 0.0001 |
| fp | log | 0.42 | < 0.0001 |
| fp | – | 0.35 | < 0.0001 |
| CL | log | 0.30 | < 0.0001 |
| CL | – | 0.25 | < 0.0001 |
| Vd | – | 0.25 | < 0.0001 |
| MRT | log | 0.16 | 0.008 |
| MRT | – | 0.03 | 0.5939 |
(Logarithmically [log] transformed or not [-]) (n = 270)
Clearance (CL), volume of distribution (Vd), mean resistance time (MRT), free fraction plasma protein binding (fp)
p-values were calculated based on analysis of variance
Comparison of algorisms for selection of molecular descriptors in the internal validation set
| Random Forest | XGBoost | SVR | GA-MLR | |
|---|---|---|---|---|
| Ra | 0.592 | 0.615 | 0.531 | 0.579 |
| RMSE (log)b | 0.105 | 0.102 | 0.110 | 0.106 |
aR and RMSE were calculated using logarithmically transformed human Rb
bRMSE were calculated using Eq. (4)
Fig. 1Three-component principal component analysis (PCA) score plots based on 11 representative molecular descriptors (n = 289). a Score plot of PCA1 (34.4%) and PCA2 (26.1%). The horizontal axis indicates the first principal component, while the vertical axis refers to the second principal component. b Score plot of PCA1 (34.4%) and PCA3 (12.5%). The horizontal axis indicates the first principal component, while the vertical axis refers to the third principal component. c Score plot of PCA2 (26.1%) and PCA3 (12.5%). The horizontal axis indicates the second principal component, while the vertical axis refers to the third principal component. Each dot represents a compound; black circle is the training set (n = 193), whereas the red circle is the test set (n = 96)
Evaluation of effect of incorporation of volume of distribution (Vd) (with Vd) in the external validation set
| ANN | Random forest | XGBoost | SVR | GA-MLR | |
|---|---|---|---|---|---|
| RMSE | 0.213 | 0.221 | 0.218 | 0.216 | 0.222 |
| R | 0.605 | 0.562 | 0.578 | 0.5989 | 0.559 |
| AFE | 1.186 | 1.191 | 1.190 | 1.197 | 1.189 |
| % inside 1.25-fold | 71.9 | 70.8 | 68.8 | 67.7 | 72.9 |
| MAE | 0.158 | 0.159 | 0.159 | 0.160 | 0.156 |
Original Rb values were used
The number of molecular descriptors: 100
The ANN evaluation scores were calculated from the average of each predicted value calculated by 10 different random seed conditions
Evaluation of the effect of incorporation of volume of distribution (Vd) (without Vd) in the external validation set
| ANN | Random forest | XGBoost | SVR | GA-MLR | |
|---|---|---|---|---|---|
| RMSE | 0.226 | 0.230 | 0.238 | 0.223 | 0.241 |
| R | 0.537 | 0.511 | 0.460 | 0.552 | 0.433 |
| AFE | 1.198 | 1.198 | 1.212 | 1.205 | 1.225 |
| % inside 1.25-fold | 67.7 | 67.7 | 64.6 | 67.7 | 59.4 |
| MAE | 0.165 | 0.164 | 0.176 | 0.166 | 0.181 |
Original Rb values were used
The number of molecular descriptors: 100
The ANN evaluation scores were calculated from the average of each predicted value calculated by 10 different random seed conditions
External validation results in optimization process of the number of molecular descriptors
| Number of MD | 50 | 25 | 12 | 6 | 3 | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| Human Vd | + | – | + | – | + | – | + | – | + | – |
| RMSE | 0.216 | 0.235 | 0.213 | 0.227 | 0.213 | 0.237 | 0.205 | 0.231 | 0.224 | 0.243 |
| R | 0.589 | 0.480 | 0.607 | 0.532 | 0.605 | 0.465 | 0.641 | 0.506 | 0.547 | 0.415 |
| AFE | 1.189 | 1.209 | 1.186 | 1.205 | 1.177 | 1.209 | 1.170 | 1.208 | 1.174 | 1.208 |
| % inside 1.25-fold | 64.6 | 65.6 | 67.7 | 69.8 | 74.0 | 62.5 | 74.0 | 64.6 | 72.9 | 68.8 |
| MAE | 0.161 | 0.172 | 0.158 | 0.168 | 0.150 | 0.172 | 0.144 | 0.169 | 0.147 | 0.171 |
MD: molecular descriptor
The evaluation scores were calculated from the average of each predicted value calculated by 10 different random seed conditions
Fig. 2Scatter plot of the training and test sets. The horizontal axis indicates the predicted Rb, while the vertical axis refers to the observed Rb. Each dot represents a compound; black circle is the training set (n = 193), whereas the red circle is the test set (n = 96). The solid line represents unity
Fig. 3Flowchart of the modeling process for Rb prediction
Details of 6 molecular descriptors in Rb prediction models
| Descriptor | Software to calculate molecular descriptor | Descriptions |
|---|---|---|
| ASA- | MOE | Descriptor related electrostatic properties |
| pmi | MOE | Principal moment of inertia |
| h_logS | MOE | Log solubility in water |
| SlogP_VSA9 | MOE | Descriptor related LogP and molecular size |
| MATS1i | Dragon | Descriptor related electrostatic properties |
| h_pstates | MOE | The entropic count or fractional number of protonation states |