The concept of molecular similarity has been widely used in rational drug design, where structurally similar molecules are explored in molecular databases for retrieving functionally similar molecules. The most used conventional similarity methods are two-dimensional (2D) fingerprints to evaluate the similarity of molecules towards a target query. However, these descriptors include redundant and irrelevant features that might impact the effectiveness of similarity searching methods. Moreover, the majority of existing similarity searching methods often disregard the importance of some features over others and assume all features are equally important. Thus, this study proposed three approaches for identifying the important features of molecu...
Molecular similarity is an particularly important notion for chemical legislation, specifically in t...
The process of drug discovery using virtual screening techniques relies on “molecular similarity pri...
Good representations of data eliminate irrelevant variability of the input data, while preserving th...
The concept of molecular similarity has been widely used in rational drug design, where structurally...
The concept of molecular similarity has been commonly used in rational drug design, where structural...
Virtual screening (VS) is a computational practice applied in drug discovery research. VS is popular...
Molecular 2D similarity searching is one of the most widely used techniques for ligand-based virtual...
Graduate School of Artificial Intelligence ArtificiWe present a new way to express the similarity be...
Molecular similarity is an impressively broad topic with many implications in several areas of chemi...
Molecular similarity searching is a process to find chemical compounds that are similar to a target ...
Biological functions of compounds can be predicted from similarity of their chemical structures to d...
Basic structural features and physicochemical properties of chemical molecules determine their behav...
Drug discovery is the process through which new drugs are discovered. One of the most common techniq...
Drug discovery is the process through which new drugs are discovered. One of the most common techniq...
Poster presentation In pharmaceutical research and drug development, machine learning methods play a...
Molecular similarity is an particularly important notion for chemical legislation, specifically in t...
The process of drug discovery using virtual screening techniques relies on “molecular similarity pri...
Good representations of data eliminate irrelevant variability of the input data, while preserving th...
The concept of molecular similarity has been widely used in rational drug design, where structurally...
The concept of molecular similarity has been commonly used in rational drug design, where structural...
Virtual screening (VS) is a computational practice applied in drug discovery research. VS is popular...
Molecular 2D similarity searching is one of the most widely used techniques for ligand-based virtual...
Graduate School of Artificial Intelligence ArtificiWe present a new way to express the similarity be...
Molecular similarity is an impressively broad topic with many implications in several areas of chemi...
Molecular similarity searching is a process to find chemical compounds that are similar to a target ...
Biological functions of compounds can be predicted from similarity of their chemical structures to d...
Basic structural features and physicochemical properties of chemical molecules determine their behav...
Drug discovery is the process through which new drugs are discovered. One of the most common techniq...
Drug discovery is the process through which new drugs are discovered. One of the most common techniq...
Poster presentation In pharmaceutical research and drug development, machine learning methods play a...
Molecular similarity is an particularly important notion for chemical legislation, specifically in t...
The process of drug discovery using virtual screening techniques relies on “molecular similarity pri...
Good representations of data eliminate irrelevant variability of the input data, while preserving th...