ElectroPredictor: An Application to Predict Mayr’s Electrophilicity E through Implementation of an Ensemble Model Based on Machine Learning Algorithms

التفاصيل البيبلوغرافية
العنوان: ElectroPredictor: An Application to Predict Mayr’s Electrophilicity E through Implementation of an Ensemble Model Based on Machine Learning Algorithms
المؤلفون: Sebastián A. Cuesta (12048044), Martín Moreno (14320401), Romina A. López (14320404), José R. Mora (1871296), José Luis Paz (14320407), Edgar A. Márquez (14320410)
سنة النشر: 2023
مصطلحات موضوعية: Biophysics, Genetics, Science Policy, Plant Biology, Biological Sciences not elsewhere classified, Chemical Sciences not elsewhere classified, Information Systems not elsewhere classified, structurally heterogeneous set, small homologous series, https :// github, quantum mechanical descriptors, >- scrambling test, robust ensemble model, ensemble model based, theoretical electrophilicity index, noncommercial python application, excellent predictability performance, 2 , predict mayr ’, model ’, topographic descriptors, test partition, w <, virtual screening, trivial task, separating molecules, q <, organic molecule, important parameters, good descriptor
الوصف: Electrophilicity ( E ) is one of the most important parameters to understand the reactivity of an organic molecule. Although the theoretical electrophilicity index (ω) has been associated with E in a small homologous series, the use of w to predict E in a structurally heterogeneous set of compounds is not a trivial task. In this study, a robust ensemble model is created using Mayr’s database of reactivity parameters. A combination of topological and quantum mechanical descriptors and different machine learning algorithms are employed for the model’s development. The predictability of the model is assessed using different statistical parameters, and its validation is examined, including a training/test partition, an applicability domain, and a y -scrambling test. The global ensemble model presents a Q 5‑fold 2 of 0.909 and a Q ext 2 of 0.912, demonstrating an excellent predictability performance of E values and showing that w is not a good descriptor for the prediction of E , especially for the case of neutral compounds. ElectroPredictor , a noncommercial Python application (https://github.com/mmoreno1/ElectroPredictor), is developed to predict E . QM9, a well-known large dataset containing 133885 neutral molecules, is used to perform a virtual screening (94.0% coverage). Finally, the 10 most electrophilic molecules are analyzed as possible new Mayr’s electrophiles, which have not yet been experimentally tested. This study confirms the necessity to build an ensemble model using nonlinear machine learning algorithms, topographic descriptors, and separating molecules into charged and neutral compounds to predict E with precision.
نوع الوثيقة: dataset
اللغة: unknown
Relation: https://figshare.com/articles/dataset/ElectroPredictor_An_Application_to_Predict_Mayr_s_Electrophilicity_i_E_i_through_Implementation_of_an_Ensemble_Model_Based_on_Machine_Learning_Algorithms/21805914
DOI: 10.1021/acs.jcim.2c01367.s002
الاتاحة: https://doi.org/10.1021/acs.jcim.2c01367.s002
Rights: CC BY-NC 4.0
رقم الانضمام: edsbas.CD599539
قاعدة البيانات: BASE
الوصف
DOI:10.1021/acs.jcim.2c01367.s002