OBJECTIVE: This study presents a system developed for the 2009 i2b2 Challenge in Natural Language Processing for Clinical Data, whose aim was to automatically extract certain information about medications used by a patient from his/her medical report. The aim was to extract the following information for each medication: name, dosage, mode/route, frequency, duration and reason. DESIGN: The system implements a rule-based methodology, which exploits typical morphological, lexical, syntactic and semantic features of the targeted information. These features were acquired from the training dataset and public resources such as the UMLS and relevant web pages. Information extracted by pattern matching was combined together using context-sensitive heuristic rules. MEASUREMENTS: The system was applied to a set of 547 previously unseen discharge summaries, and the extracted information was evaluated against a manually prepared gold standard consisting of 251 documents. The overall ranking of the participating teams was obtained using the micro-averaged F-measure as the primary evaluation metric. RESULTS: The implemented method achieved the micro-averaged F-measure of 81% (with 86% precision and 77% recall), which ranked this system third in the challenge. The significance tests revealed the system's performance to be not significantly different from that of the second ranked system. Relative to other systems, this system achieved the best F-measure for the extraction of duration (53%) and reason (46%). CONCLUSION: Based on the F-measure, the performance achieved (81%) was in line with the initial agreement between human annotators (82%), indicating that such a system may greatly facilitate the process of extracting relevant information from medical records by providing a solid basis for a manual review process.
OBJECTIVE: This study presents a system developed for the 2009 i2b2 Challenge in Natural Language Processing for Clinical Data, whose aim was to automatically extract certain information about medications used by a patient from his/her medical report. The aim was to extract the following information for each medication: name, dosage, mode/route, frequency, duration and reason. DESIGN: The system implements a rule-based methodology, which exploits typical morphological, lexical, syntactic and semantic features of the targeted information. These features were acquired from the training dataset and public resources such as the UMLS and relevant web pages. Information extracted by pattern matching was combined together using context-sensitive heuristic rules. MEASUREMENTS: The system was applied to a set of 547 previously unseen discharge summaries, and the extracted information was evaluated against a manually prepared gold standard consisting of 251 documents. The overall ranking of the participating teams was obtained using the micro-averaged F-measure as the primary evaluation metric. RESULTS: The implemented method achieved the micro-averaged F-measure of 81% (with 86% precision and 77% recall), which ranked this system third in the challenge. The significance tests revealed the system's performance to be not significantly different from that of the second ranked system. Relative to other systems, this system achieved the best F-measure for the extraction of duration (53%) and reason (46%). CONCLUSION: Based on the F-measure, the performance achieved (81%) was in line with the initial agreement between human annotators (82%), indicating that such a system may greatly facilitate the process of extracting relevant information from medical records by providing a solid basis for a manual review process.
Authors: Mei Liu; Anushi Shah; Min Jiang; Neeraja B Peterson; Qi Dai; Melinda C Aldrich; Qingxia Chen; Erica A Bowton; Hongfang Liu; Joshua C Denny; Hua Xu Journal: AMIA Annu Symp Proc Date: 2012-11-03
Authors: Hua Xu; Min Jiang; Matt Oetjens; Erica A Bowton; Andrea H Ramirez; Janina M Jeff; Melissa A Basford; Jill M Pulley; James D Cowan; Xiaoming Wang; Marylyn D Ritchie; Daniel R Masys; Dan M Roden; Dana C Crawford; Joshua C Denny Journal: J Am Med Inform Assoc Date: 2011 Jul-Aug Impact factor: 4.497
Authors: Sunghwan Sohn; Cheryl Clark; Scott R Halgrim; Sean P Murphy; Christopher G Chute; Hongfang Liu Journal: J Am Med Inform Assoc Date: 2014-03-17 Impact factor: 4.497
Authors: Raj Mehta; Nila S Radhakrishnan; Carrie D Warring; Ankur Jain; Jorge Fuentes; Angela Dolganiuc; Laura S Lourdes; John Busigin; Robert R Leverence Journal: Appl Clin Inform Date: 2016-08-17 Impact factor: 2.342
Authors: George Karystianis; Azad Dehghan; Aleksandar Kovacevic; John A Keane; Goran Nenadic Journal: J Biomed Inform Date: 2015-06-29 Impact factor: 6.317
Authors: Aleksandar Kovacevic; Azad Dehghan; Michele Filannino; John A Keane; Goran Nenadic Journal: J Am Med Inform Assoc Date: 2013-04-20 Impact factor: 4.497