23 research outputs found
Predicting Elimination of Small-Molecule Drug Half-Life in Pharmacokinetics Using Ensemble and Consensus Machine Learning Methods
Half-life is a significant pharmacokinetic
parameter included in
the excretion phase of absorption, distribution, metabolism, and excretion.
It is one of the key factors for the successful marketing of drug
candidates. Therefore, predicting half-life is of great significance
in drug design. In this study, we employed eXtreme
Gradient Boosting (XGboost), randomForest (RF), gradient boosting
machine (GBM), and supporting vector machine (SVM) to build quantitative
structure–activity relationship (QSAR) models on 3512 compounds
and evaluated model performance by using root-mean-square error (RMSE), R2, and mean absolute error (MAE) metrics and
interpreted features by SHapley Additive exPlanation (SHAP). Furthermore,
we developed consensus models through integrating four individual
models and validated their performance using a Y-randomization test
and applicability domain analysis. Finally, matched molecular pair
analysis was used to extract the transformation rules. Our results
revealed that XGboost outperformed other individual models (RMSE =
0.176, R2 = 0.845, MAE = 0.141). The consensus
model integrating all four models continued to enhance prediction
performance (RMSE = 0.172, R2 = 0.856,
MAE = 0.138). We evaluated the reliability, robustness, and generalization
ability via Y-randomization test and applicability domain analysis.
Meanwhile, we utilized SHAP to interpret features and employed matched
molecular pair analysis to extract chemical transformation rules that
provide suggestions for optimizing drug structure. In conclusion,
we believe that the consensus model developed in this study serve
as a reliable tool to evaluate half-life in drug discovery, and the
chemical transformation rules concluded in this study could provide
valuable suggestions in drug discovery
Predicting Elimination of Small-Molecule Drug Half-Life in Pharmacokinetics Using Ensemble and Consensus Machine Learning Methods
Half-life is a significant pharmacokinetic
parameter included in
the excretion phase of absorption, distribution, metabolism, and excretion.
It is one of the key factors for the successful marketing of drug
candidates. Therefore, predicting half-life is of great significance
in drug design. In this study, we employed eXtreme
Gradient Boosting (XGboost), randomForest (RF), gradient boosting
machine (GBM), and supporting vector machine (SVM) to build quantitative
structure–activity relationship (QSAR) models on 3512 compounds
and evaluated model performance by using root-mean-square error (RMSE), R2, and mean absolute error (MAE) metrics and
interpreted features by SHapley Additive exPlanation (SHAP). Furthermore,
we developed consensus models through integrating four individual
models and validated their performance using a Y-randomization test
and applicability domain analysis. Finally, matched molecular pair
analysis was used to extract the transformation rules. Our results
revealed that XGboost outperformed other individual models (RMSE =
0.176, R2 = 0.845, MAE = 0.141). The consensus
model integrating all four models continued to enhance prediction
performance (RMSE = 0.172, R2 = 0.856,
MAE = 0.138). We evaluated the reliability, robustness, and generalization
ability via Y-randomization test and applicability domain analysis.
Meanwhile, we utilized SHAP to interpret features and employed matched
molecular pair analysis to extract chemical transformation rules that
provide suggestions for optimizing drug structure. In conclusion,
we believe that the consensus model developed in this study serve
as a reliable tool to evaluate half-life in drug discovery, and the
chemical transformation rules concluded in this study could provide
valuable suggestions in drug discovery
Facile synthesis and wide-band electromagnetic wave absorption properties of carbon-coated ZnO nanorods
<p>In this work, a facile and scalable acetylene decomposition method was employed to synthesize carbon-coated ZnO (ZnO@C) nanorods. The characterization of morphology and structure analysis demonstrate that ZnO nanorod was well coated by an amorphous carbon shell with a thickness of about 20 nm. Comparted with ZnO, ZnO@C exhibit significantly enhanced microwave absorption properties. The effective absorption bandwidth with RL values exceeding –10 dB can reach 5.3 GHz for ZnO@C with a matching thickness of 2.5 mm. The excellent microwave absorption arose from enhanced dielectric loss caused by interfacial polarization, dipole polarization and the formation of conductive network.</p
Predicting Elimination of Small-Molecule Drug Half-Life in Pharmacokinetics Using Ensemble and Consensus Machine Learning Methods
Half-life is a significant pharmacokinetic
parameter included in
the excretion phase of absorption, distribution, metabolism, and excretion.
It is one of the key factors for the successful marketing of drug
candidates. Therefore, predicting half-life is of great significance
in drug design. In this study, we employed eXtreme
Gradient Boosting (XGboost), randomForest (RF), gradient boosting
machine (GBM), and supporting vector machine (SVM) to build quantitative
structure–activity relationship (QSAR) models on 3512 compounds
and evaluated model performance by using root-mean-square error (RMSE), R2, and mean absolute error (MAE) metrics and
interpreted features by SHapley Additive exPlanation (SHAP). Furthermore,
we developed consensus models through integrating four individual
models and validated their performance using a Y-randomization test
and applicability domain analysis. Finally, matched molecular pair
analysis was used to extract the transformation rules. Our results
revealed that XGboost outperformed other individual models (RMSE =
0.176, R2 = 0.845, MAE = 0.141). The consensus
model integrating all four models continued to enhance prediction
performance (RMSE = 0.172, R2 = 0.856,
MAE = 0.138). We evaluated the reliability, robustness, and generalization
ability via Y-randomization test and applicability domain analysis.
Meanwhile, we utilized SHAP to interpret features and employed matched
molecular pair analysis to extract chemical transformation rules that
provide suggestions for optimizing drug structure. In conclusion,
we believe that the consensus model developed in this study serve
as a reliable tool to evaluate half-life in drug discovery, and the
chemical transformation rules concluded in this study could provide
valuable suggestions in drug discovery
Predicting Elimination of Small-Molecule Drug Half-Life in Pharmacokinetics Using Ensemble and Consensus Machine Learning Methods
Half-life is a significant pharmacokinetic
parameter included in
the excretion phase of absorption, distribution, metabolism, and excretion.
It is one of the key factors for the successful marketing of drug
candidates. Therefore, predicting half-life is of great significance
in drug design. In this study, we employed eXtreme
Gradient Boosting (XGboost), randomForest (RF), gradient boosting
machine (GBM), and supporting vector machine (SVM) to build quantitative
structure–activity relationship (QSAR) models on 3512 compounds
and evaluated model performance by using root-mean-square error (RMSE), R2, and mean absolute error (MAE) metrics and
interpreted features by SHapley Additive exPlanation (SHAP). Furthermore,
we developed consensus models through integrating four individual
models and validated their performance using a Y-randomization test
and applicability domain analysis. Finally, matched molecular pair
analysis was used to extract the transformation rules. Our results
revealed that XGboost outperformed other individual models (RMSE =
0.176, R2 = 0.845, MAE = 0.141). The consensus
model integrating all four models continued to enhance prediction
performance (RMSE = 0.172, R2 = 0.856,
MAE = 0.138). We evaluated the reliability, robustness, and generalization
ability via Y-randomization test and applicability domain analysis.
Meanwhile, we utilized SHAP to interpret features and employed matched
molecular pair analysis to extract chemical transformation rules that
provide suggestions for optimizing drug structure. In conclusion,
we believe that the consensus model developed in this study serve
as a reliable tool to evaluate half-life in drug discovery, and the
chemical transformation rules concluded in this study could provide
valuable suggestions in drug discovery
Predicting Elimination of Small-Molecule Drug Half-Life in Pharmacokinetics Using Ensemble and Consensus Machine Learning Methods
Half-life is a significant pharmacokinetic
parameter included in
the excretion phase of absorption, distribution, metabolism, and excretion.
It is one of the key factors for the successful marketing of drug
candidates. Therefore, predicting half-life is of great significance
in drug design. In this study, we employed eXtreme
Gradient Boosting (XGboost), randomForest (RF), gradient boosting
machine (GBM), and supporting vector machine (SVM) to build quantitative
structure–activity relationship (QSAR) models on 3512 compounds
and evaluated model performance by using root-mean-square error (RMSE), R2, and mean absolute error (MAE) metrics and
interpreted features by SHapley Additive exPlanation (SHAP). Furthermore,
we developed consensus models through integrating four individual
models and validated their performance using a Y-randomization test
and applicability domain analysis. Finally, matched molecular pair
analysis was used to extract the transformation rules. Our results
revealed that XGboost outperformed other individual models (RMSE =
0.176, R2 = 0.845, MAE = 0.141). The consensus
model integrating all four models continued to enhance prediction
performance (RMSE = 0.172, R2 = 0.856,
MAE = 0.138). We evaluated the reliability, robustness, and generalization
ability via Y-randomization test and applicability domain analysis.
Meanwhile, we utilized SHAP to interpret features and employed matched
molecular pair analysis to extract chemical transformation rules that
provide suggestions for optimizing drug structure. In conclusion,
we believe that the consensus model developed in this study serve
as a reliable tool to evaluate half-life in drug discovery, and the
chemical transformation rules concluded in this study could provide
valuable suggestions in drug discovery
Predicting Elimination of Small-Molecule Drug Half-Life in Pharmacokinetics Using Ensemble and Consensus Machine Learning Methods
Half-life is a significant pharmacokinetic
parameter included in
the excretion phase of absorption, distribution, metabolism, and excretion.
It is one of the key factors for the successful marketing of drug
candidates. Therefore, predicting half-life is of great significance
in drug design. In this study, we employed eXtreme
Gradient Boosting (XGboost), randomForest (RF), gradient boosting
machine (GBM), and supporting vector machine (SVM) to build quantitative
structure–activity relationship (QSAR) models on 3512 compounds
and evaluated model performance by using root-mean-square error (RMSE), R2, and mean absolute error (MAE) metrics and
interpreted features by SHapley Additive exPlanation (SHAP). Furthermore,
we developed consensus models through integrating four individual
models and validated their performance using a Y-randomization test
and applicability domain analysis. Finally, matched molecular pair
analysis was used to extract the transformation rules. Our results
revealed that XGboost outperformed other individual models (RMSE =
0.176, R2 = 0.845, MAE = 0.141). The consensus
model integrating all four models continued to enhance prediction
performance (RMSE = 0.172, R2 = 0.856,
MAE = 0.138). We evaluated the reliability, robustness, and generalization
ability via Y-randomization test and applicability domain analysis.
Meanwhile, we utilized SHAP to interpret features and employed matched
molecular pair analysis to extract chemical transformation rules that
provide suggestions for optimizing drug structure. In conclusion,
we believe that the consensus model developed in this study serve
as a reliable tool to evaluate half-life in drug discovery, and the
chemical transformation rules concluded in this study could provide
valuable suggestions in drug discovery
Additional file 1: of Comparative analysis of the root transcriptomes of cultivated and wild rice varieties in response to Magnaporthe oryzae infection revealed both common and species-specific pathogen responses
Figure S1. Aerial parts of non-inoculated and inoculated cultivated and wild rice varieties. The four treatments were non-inoculated cultivated rice (C), cultivated rice inoculated with Magnaporthe oryzae (C + F), non-inoculated wild rice (W), and wild rice inoculated with M. oryzae (W + F). Black line indicates the scale bar of 1 cm. (PDF 239 kb
Additional file 6: of Comparative analysis of the root transcriptomes of cultivated and wild rice varieties in response to Magnaporthe oryzae infection revealed both common and species-specific pathogen responses
Figure S4. MapMan analysis of the genes and pathways responsive to the pathogenic invasion using the differentially expressed genes derived from (a) comparison C + F vs C, and (b) comparison W + F vs W. Red arrows indicate the pathways enriched in up-regulated genes. Blue and red colors indicate down- and up-regulated genes, respectively. The colored bar in each panel shows fold changes in gene expression. The four treatments were non-inoculated cultivated rice (C), cultivated rice inoculated with Magnaporthe oryzae (C + F), non-inoculated wild rice (W), and wild rice inoculated with M. oryzae (W + F). (PDF 211 kb
Additional file 4: of Comparative analysis of the root transcriptomes of cultivated and wild rice varieties in response to Magnaporthe oryzae infection revealed both common and species-specific pathogen responses
Table S2. RNA-sequencing and quantitative reverse transcription PCR (qRT-PCR) data of the verified genes. The fold-changes shown were obtained from RNA-sequencing and qRT-PCR data derived from C + F vs C comparison and W + F vs W comparison. Red, blue and black colors indicate the up- (fold-changes ≥2 with a q-value < 0.05), down-regulated (fold-changes ≤2 with a q-value < 0.05) and unchanged genes, respectively. The four treatments were non-inoculated cultivated rice (C), cultivated rice inoculated with Magnaporthe oryzae (C + F), non-inoculated wild rice (W), and wild rice inoculated with M. oryzae (W + F). (PDF 54 kb