10th International Conference on Semantic Web Applications and Tools for Health Care and Life Sciences, SWAT4LS 2017 -- 4 December 2017 through 7 December 2017 -- 133374In this study, drug and disease features were obtained by querying open linked data to train our classifier for predicting new drug indications, and the predictive performance of the classifier for different validation schemes was evaluated. We collected the drug and disease data from Bio2RDF, an open source project that uses semantic web technologies to link data from multiple sources. A binary feature matrix was generated using drug target, substructure and side effects and disease ontology terms. We collected a broader collection of data containing 816 drugs and 1393 dise...
<p>Prediction of drug–disease associations is one of the current fields in drug repositioning that h...
Identification of potential drug-associated indications is critical for either approved or novel dru...
Artificial intelligence (AI) is undergoing a revolution thanks to the breakthroughs of machine learn...
Figshare;Godan11th International Conference Semantic Web Applications and Tools for Life Sciences, S...
Timely identification of adverse drug reactions (ADRs) is highly important in the domains of public ...
Murali V, Pradyumna YM, Königs C, et al. Predicting Clinical Trial Outcomes Using Drug Bioactivities...
Current approaches to identifying drug-drug interactions (DDIs), which involve clinical evaluation o...
Drug development productivity has been declining lately due to elevated costs and reduced discovery ...
ABSTR A C T The effectiveness of machine learning models to provide accurate and consistent results ...
BackgroundTechnological and research advances have produced large volumes of biomedical data. When r...
<div><p>The rapidly increasing amount of public data in chemistry and biology provides new opportuni...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
The rapidly increasing amount of public data in chemistry and biology provides new opportunities for...
<p>For each of the 2,362,950 possible drug-indication pairs, we calculated 9 empirical features (e.g...
ABSTRACT Objectives Identifying new relations between medical entities, such as drugs, diseases, and...
<p>Prediction of drug–disease associations is one of the current fields in drug repositioning that h...
Identification of potential drug-associated indications is critical for either approved or novel dru...
Artificial intelligence (AI) is undergoing a revolution thanks to the breakthroughs of machine learn...
Figshare;Godan11th International Conference Semantic Web Applications and Tools for Life Sciences, S...
Timely identification of adverse drug reactions (ADRs) is highly important in the domains of public ...
Murali V, Pradyumna YM, Königs C, et al. Predicting Clinical Trial Outcomes Using Drug Bioactivities...
Current approaches to identifying drug-drug interactions (DDIs), which involve clinical evaluation o...
Drug development productivity has been declining lately due to elevated costs and reduced discovery ...
ABSTR A C T The effectiveness of machine learning models to provide accurate and consistent results ...
BackgroundTechnological and research advances have produced large volumes of biomedical data. When r...
<div><p>The rapidly increasing amount of public data in chemistry and biology provides new opportuni...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
The rapidly increasing amount of public data in chemistry and biology provides new opportunities for...
<p>For each of the 2,362,950 possible drug-indication pairs, we calculated 9 empirical features (e.g...
ABSTRACT Objectives Identifying new relations between medical entities, such as drugs, diseases, and...
<p>Prediction of drug–disease associations is one of the current fields in drug repositioning that h...
Identification of potential drug-associated indications is critical for either approved or novel dru...
Artificial intelligence (AI) is undergoing a revolution thanks to the breakthroughs of machine learn...