A trigger word labeling system and method for biomedical events
A biomedical and trigger word technology, applied in the field of trigger word tagging of biomedical events, can solve problems such as inability to make full use of context information, and achieve the effect of improving recall rate and accuracy rate
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example 2
[0071] That is, use the abner named entity recognition tool to find out the protein molecule in the sentence. After the sentence in Example 1 is recognized, it finds "interferon regulatory factor 4" as the protein molecule. The sentence after replacement is as in Example 2: "Down-regulation of Protein1gene expression in leukemic cells due to hypermethylation of CpG motifs in the promoter region."
[0072] (1-3) Feature extraction includes
[0073] Extract syntactic and semantic features of words.
[0074] Syntactic features include morphological features, part-of-speech features, and ngram context features.
[0075] Morphological features include some part-of-speech features of the word itself, such as whether it is a number, whether it is a combination of numbers and characters, whether it contains symbols such as "+, -, / ", whether the first letter is capitalized, whether it is all uppercase, whether it is all lowercase, etc. , these features can be obtained by means of st...
example 3
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[0089]The table is part of the feature vector of the word sequence obtained after preprocessing, feature 0 is the word itself, feature 1 is the part of speech, feature 2 is the 3-gram context of the word, feature 3 is the path length of the nearest protein, and is marked as a trigger Word tagging, where T is a trigger word, P is a protein, M is a symbol, and O is a general word. Taking the current word "expression" as an example to construct a feature function:
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[0102] The word itself and 3 features generate 4 transition feature functions and 4 state feature functions, these feature functions are substituted into the CRFs model, and the weights corresponding to each feature function are obtained through training, and the trigger word labeling model for biomedical events is obtained .
[0103] (3) label
[0104] In the pr...
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