TY - JOUR AU - Liu, Xiaofeng AU - Fan, Jianye AU - Dong, Shoubin PY - 2020 DA - 2020/5/29 TI - Document-Level Biomedical Relation Extraction Leveraging Pretrained Self-Attention Structure and Entity Replacement: Algorithm and Pretreatment Method Validation Study JO - JMIR Med Inform SP - e17644 VL - 8 IS - 5 KW - self-attention KW - document-level KW - relation extraction KW - biomedical entity pretreatment AB - Background: The most current methods applied for intrasentence relation extraction in the biomedical literature are inadequate for document-level relation extraction, in which the relationship may cross sentence boundaries. Hence, some approaches have been proposed to extract relations by splitting the document-level datasets through heuristic rules and learning methods. However, these approaches may introduce additional noise and do not really solve the problem of intersentence relation extraction. It is challenging to avoid noise and extract cross-sentence relations. Objective: This study aimed to avoid errors by dividing the document-level dataset, verify that a self-attention structure can extract biomedical relations in a document with long-distance dependencies and complex semantics, and discuss the relative benefits of different entity pretreatment methods for biomedical relation extraction. Methods: This paper proposes a new data preprocessing method and attempts to apply a pretrained self-attention structure for document biomedical relation extraction with an entity replacement method to capture very long-distance dependencies and complex semantics. Results: Compared with state-of-the-art approaches, our method greatly improved the precision. The results show that our approach increases the F1 value, compared with state-of-the-art methods. Through experiments of biomedical entity pretreatments, we found that a model using an entity replacement method can improve performance. Conclusions: When considering all target entity pairs as a whole in the document-level dataset, a pretrained self-attention structure is suitable to capture very long-distance dependencies and learn the textual context and complicated semantics. A replacement method for biomedical entities is conducive to biomedical relation extraction, especially to document-level relation extraction. SN - 2291-9694 UR - http://medinform.jmir.org/2020/5/e17644/ UR - https://doi.org/10.2196/17644 UR - http://www.ncbi.nlm.nih.gov/pubmed/32469325 DO - 10.2196/17644 ID - info:doi/10.2196/17644 ER -