Go top
Paper information

Evaluation of semantic similarity metrics applied to the automatic retrieval of medical documents: An UMLS approach

I. Alonso, D. Contreras

Expert Systems with Applications Vol. 44, pp. 386 - 399

Summary:
One promise of current information retrieval systems is the capability to identify risk groups for certain diseases and pathologies based on the automatic analysis of vast amounts of Electronic Medical Records repositories. However, the complexity and the degree of specialization of the language used by the experts in this context, make this task both challenging and complex. In this work, we introduce a novel experimental study to evaluate the performance of the two semantic similarity metrics (Path and Intrinsic IC-Path, both widely accepted in the literature) in a real-life information retrieval situation. In order to achieve this goal and due to the lack of methodologies for this context in the literature, we propose a straightforward information retrieval system for the biomedical field based on the UMLS Metathesaurus and on semantic similarity metrics. In contrast with previous studies which focus on testbeds with limited and controlled sets of concepts, we use a large amount of information (101,712 medical documents extracted from TREC Medical Records Track 2011). Our results show that in real-life cases, both metrics display similar performance, Path (F-Measure = 0.430) e Intrinsic IC-Path (F-Measure = 0.427). Thereby we suggest that the use of Intrinsic IC-Path is not justified in real scenarios.


Keywords: Semantic similarity; Information retrieval; Electronic Health Record; UMLS


JCR Impact Factor and WoS quartile: 3,928 - Q1 (2016); 7,500 - Q1 (2023)

DOI reference: DOI icon https://doi.org/10.1016/j.eswa.2015.09.028

Published on paper: February 2016.

Published on-line: September 2015.



Citation:
I. Alonso, D. Contreras, Evaluation of semantic similarity metrics applied to the automatic retrieval of medical documents: An UMLS approach. Expert Systems with Applications. Vol. 44, pp. 386 - 399, February 2016. [Online: September 2015]


    Research topics:
  • *Forecasting and Data Mining

pdf Preview
Request Request the document to be emailed to you.