Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predict molecular properties, such as bioactivity, with high accuracy. However, activity cliffs─pairs of molecules that are highly similar in their structure but exhibit large differences in potency─have received limited attention for their effect on model performance. Not only are these edge cases informative for molecule discovery and optimization but also models that are well equipped to accurately predict the potency of activity cliffs have increased potential for prospective applications. Our work aims to fill the current knowledge gap on best-practice machine learning methods in the presence of activity cliffs. We benchmarked a total of 24 ma...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Feature attribution techniques are popula r choices within the explainable artificial intelligence t...
Artificial intelligence (AI) has been widely applied in drug discovery with a major task as molecula...
Academic and pharmaceutical industry research are both key for progresses in the field of molecular ...
Academic and pharmaceutical industry research are both key for progresses in the field of molecular ...
According to the principle of similar property, structurally similar compounds exhibit very similar ...
Deep neural networks (DNNs) are the major drivers of recent progress in artificial intelligence. The...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Machine learning has become a crucial tool in drug discovery and chemistry at large, e.g., to predic...
Feature attribution techniques are popula r choices within the explainable artificial intelligence t...
Artificial intelligence (AI) has been widely applied in drug discovery with a major task as molecula...
Academic and pharmaceutical industry research are both key for progresses in the field of molecular ...
Academic and pharmaceutical industry research are both key for progresses in the field of molecular ...
According to the principle of similar property, structurally similar compounds exhibit very similar ...
Deep neural networks (DNNs) are the major drivers of recent progress in artificial intelligence. The...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...
In drug discovery, it is generally accepted that neighboring molecules in a given descriptor's space...