ABSTR A C T The effectiveness of machine learning models to provide accurate and consistent results in drug discovery and clinical decision support is strongly dependent on the quality of the data used. However, substantive amounts of open data that drive drug discovery suffer from a number of issues including inconsistent representation, inaccurate reporting, and incomplete context. For example, databases of FDA-approved drug indications used in computational drug repositioning studies do not distinguish between treatments that simply offer symptomatic relief from those that target the underlying pathology. Moreover, drug indication sources often lack proper provenance and have little overlap. Consequently, new predictions can be of poor q...
Drug development is both increasing in cost whilst decreasing in productivity. There is a general ac...
Millions of patients are hospitalised each year because of Adverse Drug Reactions, and researchers a...
New drug development is a time-consuming, high-investment, and high-risk process. It usually takes m...
ABSTR A C T The effectiveness of machine learning models to provide accurate and consistent results ...
ABSTRACT Objectives Identifying new relations between medical entities, such as drugs, diseases, and...
Analyzing the relationships among various drugs is an essential issue in the field of computational ...
AbstractSystems approaches to studying drug-side-effect (drug-SE) associations are emerging as an ac...
Abstract Objectives: Identifying new relations between medical entities, such as drugs, diseases, a...
10th International Conference on Semantic Web Applications and Tools for Health Care and Life Scienc...
Relations between chemicals and diseases are one of the most queried biomedical interactions. Althou...
<p>The lack of annotated datasets for training and benchmarking is one of the main challenges of Cli...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
Drug indication refers to what disease(s) a drug may treat – a type of information that is frequentl...
We present a system that jointly harnesses large-scale electronic health records data and a concept ...
AbstractDrug–disease treatment relationships, i.e., which drug(s) are indicated to treat which disea...
Drug development is both increasing in cost whilst decreasing in productivity. There is a general ac...
Millions of patients are hospitalised each year because of Adverse Drug Reactions, and researchers a...
New drug development is a time-consuming, high-investment, and high-risk process. It usually takes m...
ABSTR A C T The effectiveness of machine learning models to provide accurate and consistent results ...
ABSTRACT Objectives Identifying new relations between medical entities, such as drugs, diseases, and...
Analyzing the relationships among various drugs is an essential issue in the field of computational ...
AbstractSystems approaches to studying drug-side-effect (drug-SE) associations are emerging as an ac...
Abstract Objectives: Identifying new relations between medical entities, such as drugs, diseases, a...
10th International Conference on Semantic Web Applications and Tools for Health Care and Life Scienc...
Relations between chemicals and diseases are one of the most queried biomedical interactions. Althou...
<p>The lack of annotated datasets for training and benchmarking is one of the main challenges of Cli...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
Drug indication refers to what disease(s) a drug may treat – a type of information that is frequentl...
We present a system that jointly harnesses large-scale electronic health records data and a concept ...
AbstractDrug–disease treatment relationships, i.e., which drug(s) are indicated to treat which disea...
Drug development is both increasing in cost whilst decreasing in productivity. There is a general ac...
Millions of patients are hospitalised each year because of Adverse Drug Reactions, and researchers a...
New drug development is a time-consuming, high-investment, and high-risk process. It usually takes m...