Matches in SemOpenAlex for { <https://semopenalex.org/work/W4387159759> ?p ?o ?g. }
- W4387159759 abstract "Abstract Pregnant females may use medications to manage health problems that develop during pregnancy or that they had prior to pregnancy. However, using medications during pregnancy has a potential risk to the fetus. Assessing the fetotoxicity of drugs is essential to ensure safe treatments, but the current process is challenged by ethical issues, time, and cost. Therefore, the need for in silico models to efficiently assess the fetotoxicity of drugs has recently emerged. Previous studies have proposed successful machine learning models for fetotoxicity prediction and even suggest molecular substructures that are possibly associated with fetotoxicity risks or protective effects. However, the interpretation of the decisions of the models on fetotoxicity prediction for each drug is still insufficient. This study constructed machine learning-based models that can predict the fetotoxicity of drugs while providing explanations for the decisions. For this, permutation feature importance was used to identify the general features that the model made significant in predicting the fetotoxicity of drugs. In addition, features associated with fetotoxicity for each drug were analyzed using the attention mechanism. The predictive performance of all the constructed models was significantly high (AUROC: 0.854–0.974, AUPR: 0.890–0.975). Furthermore, we conducted literature reviews on the predicted important features and found that they were highly associated with fetotoxicity. We expect that our model will benefit fetotoxicity research by providing an evaluation of fetotoxicity risk for drugs or drug candidates, along with an interpretation of that prediction. Author summary Drugs are often necessary for the treatment of diseases in pregnant females. However, some drugs can potentially cause fetotoxicities, such as teratogenicity and abortion. Therefore, it is essential to study fetotoxicity, but traditional toxicity testing demands time, money, and labor. To modernize these testing methods, in silico approaches for predicting the fetotoxicity of drugs are emerging. The proposed models so far have successfully predicted the fetotoxicity of drugs and proposed some fetotoxicity-related substructures, but the interpretation of the model’s determination is still insufficient. In this study, we proposed FetoML to predict the fetotoxicity of drugs based on machine learning and provide the substructures that the model focused on in predicting fetotoxicity for each drug. We confirmed the significant predictive performance and interpretability of the model through a quantitative performance evaluation and literature review. We expect FetoML to benefit fetotoxicity studies of drugs by modernizing the paradigm of fetotoxicity testing and providing insights to researchers." @default.
- W4387159759 created "2023-09-30" @default.
- W4387159759 creator A5011781650 @default.
- W4387159759 creator A5078444867 @default.
- W4387159759 date "2023-09-29" @default.
- W4387159759 modified "2023-10-05" @default.
- W4387159759 title "FetoML: Interpretable predictions of the fetotoxicity of drugs based on machine learning approaches" @default.
- W4387159759 cites W110484823 @default.
- W4387159759 cites W1503621735 @default.
- W4387159759 cites W1516190549 @default.
- W4387159759 cites W1550429477 @default.
- W4387159759 cites W1563388887 @default.
- W4387159759 cites W1579316769 @default.
- W4387159759 cites W1677182931 @default.
- W4387159759 cites W1977645286 @default.
- W4387159759 cites W1978827950 @default.
- W4387159759 cites W1979728686 @default.
- W4387159759 cites W1984385908 @default.
- W4387159759 cites W2013161515 @default.
- W4387159759 cites W2018934112 @default.
- W4387159759 cites W2023516588 @default.
- W4387159759 cites W2040964145 @default.
- W4387159759 cites W2042860709 @default.
- W4387159759 cites W2043291602 @default.
- W4387159759 cites W2043731455 @default.
- W4387159759 cites W2055522016 @default.
- W4387159759 cites W2056105302 @default.
- W4387159759 cites W2056132907 @default.
- W4387159759 cites W2084467580 @default.
- W4387159759 cites W2087752714 @default.
- W4387159759 cites W2096541451 @default.
- W4387159759 cites W2102636708 @default.
- W4387159759 cites W2114117671 @default.
- W4387159759 cites W2117263487 @default.
- W4387159759 cites W2120324887 @default.
- W4387159759 cites W2126326837 @default.
- W4387159759 cites W2134726260 @default.
- W4387159759 cites W2143431969 @default.
- W4387159759 cites W2145380161 @default.
- W4387159759 cites W2151241358 @default.
- W4387159759 cites W2282821441 @default.
- W4387159759 cites W2413794162 @default.
- W4387159759 cites W2467694619 @default.
- W4387159759 cites W2498119267 @default.
- W4387159759 cites W2566079294 @default.
- W4387159759 cites W2763327376 @default.
- W4387159759 cites W2767891136 @default.
- W4387159759 cites W2809045992 @default.
- W4387159759 cites W2895534935 @default.
- W4387159759 cites W2899070097 @default.
- W4387159759 cites W2899952687 @default.
- W4387159759 cites W2905110272 @default.
- W4387159759 cites W2911964244 @default.
- W4387159759 cites W2954628922 @default.
- W4387159759 cites W2969676387 @default.
- W4387159759 cites W2972097395 @default.
- W4387159759 cites W3009723099 @default.
- W4387159759 cites W3024429450 @default.
- W4387159759 cites W3027697420 @default.
- W4387159759 cites W3106400660 @default.
- W4387159759 cites W3131240641 @default.
- W4387159759 cites W4223618280 @default.
- W4387159759 cites W4230674625 @default.
- W4387159759 cites W4313455051 @default.
- W4387159759 doi "https://doi.org/10.1101/2023.09.27.559678" @default.
- W4387159759 hasPublicationYear "2023" @default.
- W4387159759 type Work @default.
- W4387159759 citedByCount "0" @default.
- W4387159759 crossrefType "posted-content" @default.
- W4387159759 hasAuthorship W4387159759A5011781650 @default.
- W4387159759 hasAuthorship W4387159759A5078444867 @default.
- W4387159759 hasBestOaLocation W43871597591 @default.
- W4387159759 hasConcept C112930515 @default.
- W4387159759 hasConcept C119857082 @default.
- W4387159759 hasConcept C138885662 @default.
- W4387159759 hasConcept C2776401178 @default.
- W4387159759 hasConcept C41008148 @default.
- W4387159759 hasConcept C41895202 @default.
- W4387159759 hasConcept C71924100 @default.
- W4387159759 hasConceptScore W4387159759C112930515 @default.
- W4387159759 hasConceptScore W4387159759C119857082 @default.
- W4387159759 hasConceptScore W4387159759C138885662 @default.
- W4387159759 hasConceptScore W4387159759C2776401178 @default.
- W4387159759 hasConceptScore W4387159759C41008148 @default.
- W4387159759 hasConceptScore W4387159759C41895202 @default.
- W4387159759 hasConceptScore W4387159759C71924100 @default.
- W4387159759 hasLocation W43871597591 @default.
- W4387159759 hasOpenAccess W4387159759 @default.
- W4387159759 hasPrimaryLocation W43871597591 @default.
- W4387159759 hasRelatedWork W2045393060 @default.
- W4387159759 hasRelatedWork W2348531541 @default.
- W4387159759 hasRelatedWork W2349359195 @default.
- W4387159759 hasRelatedWork W2748952813 @default.
- W4387159759 hasRelatedWork W2889453578 @default.
- W4387159759 hasRelatedWork W2899084033 @default.
- W4387159759 hasRelatedWork W2901485761 @default.
- W4387159759 hasRelatedWork W4281486075 @default.
- W4387159759 hasRelatedWork W4287668842 @default.
- W4387159759 hasRelatedWork W4385792153 @default.
- W4387159759 isParatext "false" @default.