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Automatic extraction of semantic relations between medical entities: a rule based approach

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Figure

Table 1 Examples of categories and corresponding UMLS semantic types
Figure 1 Excerpt of the relations model
Table 2 Examples of relation patterns
Table 3 Medical entity extraction according to semantic types. Tr = T/N, type error rate;Br = B/N, boundary error rate; P = precision
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