| Literature DB >> 22166723 |
Asma Ben Abacha1, Pierre Zweigenbaum.
Abstract
BACKGROUND: Information extraction is a complex task which is necessary to develop high-precision information retrieval tools. In this paper, we present the platform MeTAE (Medical Texts Annotation and Exploration). MeTAE allows (i) to extract and annotate medical entities and relationships from medical texts and (ii) to explore semantically the produced RDF annotations.Entities:
Year: 2011 PMID: 22166723 PMCID: PMC3239304 DOI: 10.1186/2041-1480-2-S5-S4
Source DB: PubMed Journal: J Biomed Semantics
Examples of categories and corresponding UMLS semantic types
| Category | Examples of UMLS Semantic Types |
|---|---|
Figure 1Excerpt of the relations model
Examples of relation patterns
| Relation | Pattern number | Simplified examples |
|---|---|---|
| causes | 28 | |
| diagnoses | 12 | |
| treats | 46 | |
| prevents | 13 |
Figure 2Example of manual annotations
Medical entity extraction according to semantic types. Tr = T/N, type error rate; Br = B/N, boundary error rate; P = precision. All results are percentages.
| MetaMap | LTS+MetaMap | |||||
|---|---|---|---|---|---|---|
| Disease Or Syndrome | 9.09 | 52.27 | 64.77 | 9.81 | 26.48 | 76.94 |
| Injury or poisoning | 33.33 | 34.84 | 49.24 | 26.19 | 35.71 | 55.95 |
| Neoplastic Process | 29.03 | 6.45 | 67.74 | 37.5 | 12.50 | 56.25 |
| Anatomical Abnormality | 85.71 | 0.00 | 14.28 | 40.00 | 0.00 | 60.00 |
| Cell or Molecular Dysfunction | 66.66 | 25.00 | 20.83 | 44.44 | 44.44 | 27.79 |
| Total | 30.08 | 30.52 | 12.23 | 27.10 | ||
Figure 3MeTAE: annotation interface
Figure 4MeTAE: exploration interface