© Springer Science+Business Media, LLC, part of Springer Nature 2018. Various methods of machine learning, supervised and unsupervised, linear and nonlinear, classification and regression, in combination with various types of molecular descriptors, both “handcrafted” and “data-driven,” are considered in the context of their use in computational toxicology. The use of multiple linear regression, variants of naïve Bayes classifier, k-nearest neighbors, support vector machine, decision trees, ensemble learning, random forest, several types of neural networks, and deep learning is the focus of attention of this review. The role of fragment descriptors, graph mining, and graph kernels is highlighted. The application of unsupervised methods, such...
The increasing use of Machine Learning (ML) in the drug and food industry is undeniable and it is im...
In the first part of the dissertation, we introduce the change-line classification and regression me...
The creation of large toxicological databases and advances in machine-learning techniques have empow...
© Springer Science+Business Media, LLC, part of Springer Nature 2018. Various methods of machine lea...
In recent times, machine learning has become increasingly prominent in predictive toxicology as it h...
Toxicity prediction is very important to public health. Among its many applications, toxicity predic...
Toxicity prediction is very important to public health. Among its many applications, toxicity predic...
Machine learning (ML) models to predict the toxicity of small molecules have garnered great attentio...
The present situation in biological and medical sciences is characterized by the availability of mas...
The rational development of new drugs is a complex and expensive process, comprising several steps. ...
Computational prediction of toxicity has reached new heights as a result of decades of growth in the...
Computational prediction of toxicity has reached new heights as a result of decades of growth in the...
Abstract: Background: Bioactivity profiling using high-throughput in vitro assays can reduce the cos...
Abstract: Background: Bioactivity profiling using high-throughput in vitro assays can reduce the cos...
Abstract: Background: Bioactivity profiling using high-throughput in vitro assays can reduce the cos...
The increasing use of Machine Learning (ML) in the drug and food industry is undeniable and it is im...
In the first part of the dissertation, we introduce the change-line classification and regression me...
The creation of large toxicological databases and advances in machine-learning techniques have empow...
© Springer Science+Business Media, LLC, part of Springer Nature 2018. Various methods of machine lea...
In recent times, machine learning has become increasingly prominent in predictive toxicology as it h...
Toxicity prediction is very important to public health. Among its many applications, toxicity predic...
Toxicity prediction is very important to public health. Among its many applications, toxicity predic...
Machine learning (ML) models to predict the toxicity of small molecules have garnered great attentio...
The present situation in biological and medical sciences is characterized by the availability of mas...
The rational development of new drugs is a complex and expensive process, comprising several steps. ...
Computational prediction of toxicity has reached new heights as a result of decades of growth in the...
Computational prediction of toxicity has reached new heights as a result of decades of growth in the...
Abstract: Background: Bioactivity profiling using high-throughput in vitro assays can reduce the cos...
Abstract: Background: Bioactivity profiling using high-throughput in vitro assays can reduce the cos...
Abstract: Background: Bioactivity profiling using high-throughput in vitro assays can reduce the cos...
The increasing use of Machine Learning (ML) in the drug and food industry is undeniable and it is im...
In the first part of the dissertation, we introduce the change-line classification and regression me...
The creation of large toxicological databases and advances in machine-learning techniques have empow...