Mining the Electronic Medical Record (EMR henceforth) is growing in popularity but still lacks good methods for better understanding the text in EMR. One important task is assigning proper International Classification of Diseases (ICD henceforth, which is the code schema for EMR) code based on the narrative text of EMR document. For the task, we propose an automatic feature extraction method by means of capturing semantic relational tuples. We proved the semantic relational tuple is able to capture information at semantic level and it contribute to ICD-9 classification task in two aspects, negation identification and feature generation
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
Extracting valuable knowledge from Electronic Health Records (EHR) represents a challenging task due...
© Springer Nature Switzerland AG 2018. Medical Concept Coding (MCD) is a crucial task in biomedical ...
Mining the Electronic Medical Record (EMR henceforth) is growing in popularity but still lacks good ...
MEng thesisIn this thesis, we detail an approach to extracting key information in medical discharge ...
How to leverage insights into big electronic health records (EHRs) becomes increasingly important fo...
Currently, medical institutes generally use EMR to record patient’s condition, including diagnostic ...
Objectives A substantial portion of the data contained in Electronic Health Records (EHR) is unstruc...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
© 1989-2012 IEEE. With the latest developments in database technologies, it becomes easier to store ...
Automatically extracted the relations between the clinical findings and treatments in EMRs. It is a ...
In the realm of real-world named entity recognition and classification (NERC), the utilization of IC...
This project consists of two parts. In the first part we apply techniques from the field of text min...
and rule-based methods for structured information extraction from narrative clinical discharge summa...
The relationship of biomedical entity is the cornerstone of acquiring biomedical knowledge. It is of...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
Extracting valuable knowledge from Electronic Health Records (EHR) represents a challenging task due...
© Springer Nature Switzerland AG 2018. Medical Concept Coding (MCD) is a crucial task in biomedical ...
Mining the Electronic Medical Record (EMR henceforth) is growing in popularity but still lacks good ...
MEng thesisIn this thesis, we detail an approach to extracting key information in medical discharge ...
How to leverage insights into big electronic health records (EHRs) becomes increasingly important fo...
Currently, medical institutes generally use EMR to record patient’s condition, including diagnostic ...
Objectives A substantial portion of the data contained in Electronic Health Records (EHR) is unstruc...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
© 1989-2012 IEEE. With the latest developments in database technologies, it becomes easier to store ...
Automatically extracted the relations between the clinical findings and treatments in EMRs. It is a ...
In the realm of real-world named entity recognition and classification (NERC), the utilization of IC...
This project consists of two parts. In the first part we apply techniques from the field of text min...
and rule-based methods for structured information extraction from narrative clinical discharge summa...
The relationship of biomedical entity is the cornerstone of acquiring biomedical knowledge. It is of...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
Extracting valuable knowledge from Electronic Health Records (EHR) represents a challenging task due...
© Springer Nature Switzerland AG 2018. Medical Concept Coding (MCD) is a crucial task in biomedical ...