We present an approach using syntactosemantic rules for the extraction of relational information from biomedical abstracts. The results show that by overcoming the hurdle of technical terminology, high precision results can be . From abstracts related to baker's yeast, we manage to extract a regulatory network comprised of 441 relations from 58,664 abstracts with an accuracy of 83