MotivationThe prediction of biologically active compounds is of great importance for high-throughput screening (HTS) approaches in drug discovery and chemical genomics. Many computational methods in this area focus on measuring the structural similarities between chemical structures. However, traditional similarity measures are often too rigid or consider only global similarities between structures. The maximum common substructure (MCS) approach provides a more promising and flexible alternative for predicting bioactive compounds.ResultsIn this article, a new backtracking algorithm for MCS is proposed and compared to global similarity measurements. Our algorithm provides high flexibility in the matching process, and it is very efficient in ...
Due to the large amount of chemical substances on the market, fast and reproducible screening is ess...
Molecular target identification is of central importance to drug discovery. Here, we developed a com...
Molecular similarity is an impressively broad topic with many implications in several areas of chemi...
MotivationThe prediction of biologically active compounds is of great importance for high-throughput...
The prediction of biologically active compounds is of great importance for high-throughput screening...
The prediction of biologically active compounds is of great importance for high-throughput screening...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Poster presentation In pharmaceutical research and drug development, machine learning methods play a...
Poster presentation In pharmaceutical research and drug development, machine learning methods play a...
Substructure mining is a well-established technique used frequently in drug discovery. Its aim is to...
Support vector machines (SVMs) have displayed good predictive accuracy on a wide range of classifica...
Molecular clustering of large and diverse compound datasets like hit lists from high throughput scre...
The concept of molecular similarity is one of the most central in the fields of predictive toxicolog...
The concept of molecular similarity is one of the most central in the fields of predictive toxicolog...
Due to the large amount of chemical substances on the market, fast and reproducible screening is ess...
Molecular target identification is of central importance to drug discovery. Here, we developed a com...
Molecular similarity is an impressively broad topic with many implications in several areas of chemi...
MotivationThe prediction of biologically active compounds is of great importance for high-throughput...
The prediction of biologically active compounds is of great importance for high-throughput screening...
The prediction of biologically active compounds is of great importance for high-throughput screening...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Poster presentation In pharmaceutical research and drug development, machine learning methods play a...
Poster presentation In pharmaceutical research and drug development, machine learning methods play a...
Substructure mining is a well-established technique used frequently in drug discovery. Its aim is to...
Support vector machines (SVMs) have displayed good predictive accuracy on a wide range of classifica...
Molecular clustering of large and diverse compound datasets like hit lists from high throughput scre...
The concept of molecular similarity is one of the most central in the fields of predictive toxicolog...
The concept of molecular similarity is one of the most central in the fields of predictive toxicolog...
Due to the large amount of chemical substances on the market, fast and reproducible screening is ess...
Molecular target identification is of central importance to drug discovery. Here, we developed a com...
Molecular similarity is an impressively broad topic with many implications in several areas of chemi...