Objectives: Traditionally, summarization of research themes and trends within a given discipline was accomplished by manual review of scientific works in the field. However, with the ushering in of the age of "big data", new methods for discovery of such information become necessary as traditional techniques become increasingly difficult to apply due to the exponential growth of document repositories. Our objectives are to develop a pipeline for unsupervised theme extraction and summarization of thematic trends in document repositories, and to test it by applying it to a specific domain. Methods: To that end, we detail a pipeline, which utilizes machine learning and natural language processing for unsupervised theme extraction, and a novel...
The aim of this study was to assess progress in the field of anesthesia monitoring over the past 40 ...
The rapidly expanding corpus of medical research literature presents major challenges in the underst...
Machine learning (ML) is revolutionizing anesthesiology research. Unlike classical research methods ...
Objectives: Traditionally, summarization of research themes and trends within a given discipline was...
Data from "Trends in anesthesiology research: A machine learning approach to theme discovery and sum...
The Computers in Biology and Medicine (CBM) journal promotes the use of computing machinery in the f...
Introduction: Epileptic and psychogenic non-epileptic seizures (PNES) are common diagnostic problems...
OBJECTIVES: To identify major research subjects and trends in medical informatics research based on ...
Background: The scientific literature on Artificial Intelligence (AI) in anesthesia is rapidly growi...
Abstract Background The need to organize any large document collection in a manner that facilitates ...
The BioJournalMonitor is a decision support system for the analysis of trends and topics in the biom...
Background: Publication activity in the field of anesthesiology informs decisions that enhance acade...
ObjectiveThis study aims to construct and use natural language processing and other methods to analy...
This dissertation focuses on developing and evaluating hybrid approaches for analyzing free-form tex...
Abstract Background Natural language processing (NLP) has become an increasingly significant role in...
The aim of this study was to assess progress in the field of anesthesia monitoring over the past 40 ...
The rapidly expanding corpus of medical research literature presents major challenges in the underst...
Machine learning (ML) is revolutionizing anesthesiology research. Unlike classical research methods ...
Objectives: Traditionally, summarization of research themes and trends within a given discipline was...
Data from "Trends in anesthesiology research: A machine learning approach to theme discovery and sum...
The Computers in Biology and Medicine (CBM) journal promotes the use of computing machinery in the f...
Introduction: Epileptic and psychogenic non-epileptic seizures (PNES) are common diagnostic problems...
OBJECTIVES: To identify major research subjects and trends in medical informatics research based on ...
Background: The scientific literature on Artificial Intelligence (AI) in anesthesia is rapidly growi...
Abstract Background The need to organize any large document collection in a manner that facilitates ...
The BioJournalMonitor is a decision support system for the analysis of trends and topics in the biom...
Background: Publication activity in the field of anesthesiology informs decisions that enhance acade...
ObjectiveThis study aims to construct and use natural language processing and other methods to analy...
This dissertation focuses on developing and evaluating hybrid approaches for analyzing free-form tex...
Abstract Background Natural language processing (NLP) has become an increasingly significant role in...
The aim of this study was to assess progress in the field of anesthesia monitoring over the past 40 ...
The rapidly expanding corpus of medical research literature presents major challenges in the underst...
Machine learning (ML) is revolutionizing anesthesiology research. Unlike classical research methods ...