Abstract: Machine learning methods may have the potential to significantly accelerate drug discovery. However, the increasing rate of new methodological approaches being published in the literature raises the fundamental question of how models should be benchmarked and validated. We reanalyze the data generated by a recently published large-scale comparison of machine learning models for bioactivity prediction and arrive at a somewhat different conclusion. We show that the performance of support vector machines is competitive with that of deep learning methods. Additionally, using a series of numerical experiments, we question the relevance of area under the receiver operating characteristic curve as a metric in virtual screening. We furthe...
The volume of high throughput screening data has considerably increased since the beginning of the a...
Drug discovery plays a critical role in today’s society for treating and preventing sickness and pos...
In applied statistics, tools from machine learning are popular for analyzing complex and high-dimens...
Abstract: Machine learning methods may have the potential to significantly accelerate drug discovery...
Machine learning methods may have the potential to significantly accelerate drug discovery. However,...
Deep learning is currently the most successful machine learning technology in a wide range of applic...
A large number of different machine learning methods can potentially be used for ligand-based virtua...
Machine learning methods have been applied to many data sets in pharmaceutical research for several ...
Computational methods for target prediction, based on molecular similarity and network-based approac...
Motivation: Artificial intelligence, trained via machine learning (e.g. neural nets, random forests)...
Artificial intelligence (AI) is undergoing a revolution thanks to the breakthroughs of machine learn...
Abstract Drug response prediction is important to establish personalized medicine for cancer therapy...
Artificial intelligence (AI) is undergoing a revolution thanks to the breakthroughs of machine learn...
Background: A Virtual Screening algorithm has to adapt to the different stages of this process. Earl...
Background: A Virtual Screening algorithm has to adapt to the different stages of this process. Earl...
The volume of high throughput screening data has considerably increased since the beginning of the a...
Drug discovery plays a critical role in today’s society for treating and preventing sickness and pos...
In applied statistics, tools from machine learning are popular for analyzing complex and high-dimens...
Abstract: Machine learning methods may have the potential to significantly accelerate drug discovery...
Machine learning methods may have the potential to significantly accelerate drug discovery. However,...
Deep learning is currently the most successful machine learning technology in a wide range of applic...
A large number of different machine learning methods can potentially be used for ligand-based virtua...
Machine learning methods have been applied to many data sets in pharmaceutical research for several ...
Computational methods for target prediction, based on molecular similarity and network-based approac...
Motivation: Artificial intelligence, trained via machine learning (e.g. neural nets, random forests)...
Artificial intelligence (AI) is undergoing a revolution thanks to the breakthroughs of machine learn...
Abstract Drug response prediction is important to establish personalized medicine for cancer therapy...
Artificial intelligence (AI) is undergoing a revolution thanks to the breakthroughs of machine learn...
Background: A Virtual Screening algorithm has to adapt to the different stages of this process. Earl...
Background: A Virtual Screening algorithm has to adapt to the different stages of this process. Earl...
The volume of high throughput screening data has considerably increased since the beginning of the a...
Drug discovery plays a critical role in today’s society for treating and preventing sickness and pos...
In applied statistics, tools from machine learning are popular for analyzing complex and high-dimens...