Abstract Background Recently, research on human disease network has succeeded and has become an aid in figuring out the relationship between various diseases. In most disease networks, however, the relationship between diseases has been simply represented as an association. This representation results in the difficulty of identifying prior diseases and their influence on posterior diseases. In this paper, we propose a causal disease network that implements disease causality through text mining on biomedical literature. Methods To identify the causality between diseases, the proposed method includes two schemes: the first is the lexicon-based causality term strength, which provides the causal strength on a variety of causality terms based on...
© 2017 IEEE. Automatically extracting phenotypes (i.e., the composite of ones observable characteris...
The research described in the article refers to the study of data from the domain of medicine. The d...
Complex interactions among multiple abiotic and biotic drivers result in rapid changes in ecosystems...
Understanding causality is a longstanding goal across many different domains. Different articles, su...
Large repositories of medical data, such as Electronic Medical Record (EMR) data, are recognized as ...
Health information becomes importantly valuable to protect public health in the current coronavirus ...
peer reviewedText mining is a flexible technology that can be applied to numerous different tasks in...
Problem: Determining the causes of disease is a central focus of biomedical science. Randomized stud...
We aim to develop a text mining framework capable ofidentifying and extractingcausal depend...
International audienceRisk factors discovery and prevention is an active research field within the b...
The research aim is to construct a disease-symptom knowledge graph (DSKG) as a cause-effect knowledg...
The biomedical literature constitutes a rich source of evidence tosupport the discovery of biomarker...
BackgroundMany new medicines have been derived from natural sources such as plants, which have a lon...
Text mining is still budding in the field of medicine. However, with rising volumes of scientific li...
Abstract Background The detection and interpretation of CNVs are of clinical importance in genetic t...
© 2017 IEEE. Automatically extracting phenotypes (i.e., the composite of ones observable characteris...
The research described in the article refers to the study of data from the domain of medicine. The d...
Complex interactions among multiple abiotic and biotic drivers result in rapid changes in ecosystems...
Understanding causality is a longstanding goal across many different domains. Different articles, su...
Large repositories of medical data, such as Electronic Medical Record (EMR) data, are recognized as ...
Health information becomes importantly valuable to protect public health in the current coronavirus ...
peer reviewedText mining is a flexible technology that can be applied to numerous different tasks in...
Problem: Determining the causes of disease is a central focus of biomedical science. Randomized stud...
We aim to develop a text mining framework capable ofidentifying and extractingcausal depend...
International audienceRisk factors discovery and prevention is an active research field within the b...
The research aim is to construct a disease-symptom knowledge graph (DSKG) as a cause-effect knowledg...
The biomedical literature constitutes a rich source of evidence tosupport the discovery of biomarker...
BackgroundMany new medicines have been derived from natural sources such as plants, which have a lon...
Text mining is still budding in the field of medicine. However, with rising volumes of scientific li...
Abstract Background The detection and interpretation of CNVs are of clinical importance in genetic t...
© 2017 IEEE. Automatically extracting phenotypes (i.e., the composite of ones observable characteris...
The research described in the article refers to the study of data from the domain of medicine. The d...
Complex interactions among multiple abiotic and biotic drivers result in rapid changes in ecosystems...