MEng thesisIn this thesis, we detail an approach to extracting key information in medical discharge summaries. Starting with a narrative patient report, we first identify and remove information that compromises privacy (de-identification);next we recognize words and phrases in the text belonging to semantic categories of interest to doctors (semantic category recognition).For disease and symptoms, we determine whether the problem is present, absent, uncertain, or associated with somebody else (assertion classification). Finally, we classify the semantic relationships existing between our categories (semantic relationship classification).Our approach utilizes a series of statistical models that rely heavily on local lexical and syntactic con...
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
ABSTRACTIn this paper, medical objects are used as featuresto classify clinical records. Medical obj...
Background: Developing predictive models for precision psychiatry is challenging because of unavaila...
As information systems in the health sector are becoming increasingly computerized, large amounts of...
In this paper, we describe the construction of a semantically annotated corpus of clinical texts for...
Between appointments, healthcare providers have limited interaction with their patients, but patient...
AbstractIn this paper, we describe the construction of a semantically annotated corpus of clinical t...
Improving patient experience at hospitals leads to better health outcomes. To improve this, we must ...
Includes bibliographical references (p. 76-80).Thesis (M. Eng.)--Massachusetts Institute of Technolo...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
dissertationDespite significant achievements in many areas of medicine, computer-based technology ha...
AbstractThis paper addresses an information-extraction problem that aims to identify semantic relati...
Background The Clinical E-Science Framework (CLEF) project has built a system to extract clinical...
Background: Knowledge representation frameworks are essential to the understanding of complex biomed...
Mining the Electronic Medical Record (EMR henceforth) is growing in popularity but still lacks good ...
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
ABSTRACTIn this paper, medical objects are used as featuresto classify clinical records. Medical obj...
Background: Developing predictive models for precision psychiatry is challenging because of unavaila...
As information systems in the health sector are becoming increasingly computerized, large amounts of...
In this paper, we describe the construction of a semantically annotated corpus of clinical texts for...
Between appointments, healthcare providers have limited interaction with their patients, but patient...
AbstractIn this paper, we describe the construction of a semantically annotated corpus of clinical t...
Improving patient experience at hospitals leads to better health outcomes. To improve this, we must ...
Includes bibliographical references (p. 76-80).Thesis (M. Eng.)--Massachusetts Institute of Technolo...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
dissertationDespite significant achievements in many areas of medicine, computer-based technology ha...
AbstractThis paper addresses an information-extraction problem that aims to identify semantic relati...
Background The Clinical E-Science Framework (CLEF) project has built a system to extract clinical...
Background: Knowledge representation frameworks are essential to the understanding of complex biomed...
Mining the Electronic Medical Record (EMR henceforth) is growing in popularity but still lacks good ...
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
ABSTRACTIn this paper, medical objects are used as featuresto classify clinical records. Medical obj...
Background: Developing predictive models for precision psychiatry is challenging because of unavaila...