In this paper, we investigate the use of a machine-learning based approach to the specific problem of scientific term detection in patient information. Lacking lexical databases which differentiate between the scientific and popular nature of medical terms, we used local context, morphosyntactic, morphological and statistical information to design a learner which accurately detects scientific medical terms. This study is the first step towards the automatic replacement of a scientific term by its popular counterpart, which should have a beneficial effect on readability. We show a F-score of 84% for the prediction of scientific terms in an English and Dutch EPAR corpus. Since recasting the term extraction problem as a classification problem ...
Abstract This Paper presents efficient machine learning algorithms and techniques used in extracting...
Despite the rapid global movement towards electronic health records, clinical letters written in uns...
Purpose Increasingly, patient information is stored in electronic medical records, which could be re...
In this paper, we investigate the use of a machine-learning based approach to the specific problem o...
In this paper, we investigate the use of a machine-learning based approach to the specific problem o...
Although intended for the "average layman", both in terms of readability and contents, the current p...
Artificial Intelligence (AI) and its branch Natural Language Processing (NLP) in particular are main...
Within the medical field, very specialized terms are commonly used, while their un-derstanding by la...
Information contained in the free text of health records is useful for the immediate care of patient...
AbstractMedical terminologies are critical for automated healthcare systems. Some terminologies, suc...
International audienceMedical and health information is widespread in the modern society in light of...
Comprehensive terminology is essential for a community to describe, exchange, and retrieve data. In ...
Background: The increasing amount of textual information in biomedicine requires effective term reco...
AbstractMedical terminologies are important for unambiguous encoding and exchange of clinical inform...
Background: Identification of terms is essential for biomedical text mining.. We concentrate here on...
Abstract This Paper presents efficient machine learning algorithms and techniques used in extracting...
Despite the rapid global movement towards electronic health records, clinical letters written in uns...
Purpose Increasingly, patient information is stored in electronic medical records, which could be re...
In this paper, we investigate the use of a machine-learning based approach to the specific problem o...
In this paper, we investigate the use of a machine-learning based approach to the specific problem o...
Although intended for the "average layman", both in terms of readability and contents, the current p...
Artificial Intelligence (AI) and its branch Natural Language Processing (NLP) in particular are main...
Within the medical field, very specialized terms are commonly used, while their un-derstanding by la...
Information contained in the free text of health records is useful for the immediate care of patient...
AbstractMedical terminologies are critical for automated healthcare systems. Some terminologies, suc...
International audienceMedical and health information is widespread in the modern society in light of...
Comprehensive terminology is essential for a community to describe, exchange, and retrieve data. In ...
Background: The increasing amount of textual information in biomedicine requires effective term reco...
AbstractMedical terminologies are important for unambiguous encoding and exchange of clinical inform...
Background: Identification of terms is essential for biomedical text mining.. We concentrate here on...
Abstract This Paper presents efficient machine learning algorithms and techniques used in extracting...
Despite the rapid global movement towards electronic health records, clinical letters written in uns...
Purpose Increasingly, patient information is stored in electronic medical records, which could be re...