Presentation is loading. Please wait.

Presentation is loading. Please wait.

ISMB 2003 presentation Extracting Synonymous Gene and Protein Terms from Biological Literature Hong Yu and Eugene Agichtein Dept. Computer Science, Columbia.

Similar presentations


Presentation on theme: "ISMB 2003 presentation Extracting Synonymous Gene and Protein Terms from Biological Literature Hong Yu and Eugene Agichtein Dept. Computer Science, Columbia."— Presentation transcript:

1 ISMB 2003 presentation Extracting Synonymous Gene and Protein Terms from Biological Literature Hong Yu and Eugene Agichtein Dept. Computer Science, Columbia University, New York, USA {hongyu, eugene}@cs.columbia.edueugene}@cs.columbia.edu 212-939-7028

2 Significance and Introduction Genes and proteins are often associated with multiple names Apo3, DR3, TRAMP, LARD, and lymphocyte associated receptor of death Authors often use different synonyms Information extraction benefits from identifying those synonyms Synonym knowledge sources are not complete Developing automate approaches for identifying gene/protein synonyms from literature

3 Background-synonym identification Semantically related words Distributional similarity [Lin 98][Li and Abe 98][Dagan et al 95] “beer” and “wine” “drink”, “people”, “bottle” and “make” Mapping abbreviations to full forms Map LARD to lymphocyte associated receptor of death [Bowden et al. 98] [Hisamitsu and Niwa 98] [Liu and Friedman 03] [Pakhomov 02] [Park and Byrd 01] [Schwartz and Hearst 03] [Yoshida et al. 00] [Yu et al. 02] Methods for detecting biomedical multiword synonyms Sharing a word(s) [Hole 00] cerebrospinal fluid  cerebrospinal fluid protein assay Information retrieval approach Trigram matching algorithm [Wilbur and Kim 01] Vector space model cerebrospinal fluid  cer, ere, …, uid cerebrospinal fluid protein assay  cer,ere, …, say

4 Background-synonym identification GPE [Yu et al 02] A rule-based approach for detecting synonymous gene/protein terms Manually recognize patterns authors use to list synonyms Apo3/TRAMP/WSL/DR3/LARD Extract synonym candidates and heuristics to filter out those unrelated terms ng/kg/min Advantages and disadvantages High precision (90%) Recall might be low, expensive to build up

5 Background—Machine-learning Machine-learning reduces manual effort by automatically acquiring rules from data Unsupervised and supervised Semi-supervised Bootstrapping [Hearst 92, Yarowsky 95] [Agichtein and Gravano 00] Hyponym detection [Hearst 92] The bow lute, such as the Bambara ndang, is plucked and has an individual curved neck for each string. A Bambara ndang is a kind of bow lute Co-training [Blum and Mitchell 98]

6 Method-Outline Machine-learning Unsupervised Similarity [Dagan et al 95] Semi-supervised Bootstrapping SNOWBALL [Agichtein and Gravano 02] Supervised Support Vector Machine Comparison between machine-learning and GPE Combined approach

7 Method--Unsupervised Contextual similarity [Dagan et al 95] Hypothesis: synonyms have similar surrounding words Mutual information Similarity

8 Methods—semi-supervised SNOWBALL [Agichtein and Gravano 02] Bootrapping Starts with a small set of user-provided seed tuples for the relation, automatically generates and evaluates patterns for extracting new tuples. {Apo3, DR3} “Apo3, also known as DR3…” “, also known as ” {DR3, LARD} “DR3, also called LARD…” “, also called ” {LARD, Apo3}

9 Method--Supervised Support Vector Machine State-of-the-art text classification method SVM light Training sets: The same sets of positive and negative tuples as the SNOWBALL Features: the same terms and term weights used by SNOWBALL Kernel function Radial basis kernel (rbf) kernel function

10 Methods—Combined Rational Machine-learning approaches increase recall The manual rule-based approach GPE has a high precision with lower recall Combined will boost both recall and precision Method Assume each system is an independent predictor Prob=1-Prob that all systems extracted incorrectly

11 Evaluation-data Data GeneWays corpora [Friedman et al 01] 52,000 full-text journal articles Science, Nature, Cell, EMBO, Cell Biology, PNAS, Journal of Biochemistry Preprocessing Gene/Protein name entity tagging Abgene [Tanabe and Wilbur 02] Segmentation SentenceSplitter Training and testing 20,000 articles for training Tuning SNOWBALL parameters such as context window, etc. 32,000 articles for testing

12 Evaluation-matrices Estimating precision Randomly select 20 synonyms with confident scores (0.0- 0.1, 0.1-0.2, …,0.9-1.0) Biological experts judged the correctness of synonym pairs Estimating recall SWISSPROT—Gold Standard 989 pairs of SWISSPROT synonyms co-appear in at least one sentence in the test set Biological experts judged 588 pairs were indeed synonyms “…and cdc47, cdc21, and mis5 form another complex, which relatively weakly associates with mcm2…”

13 Results Patterns SNOWBALL found Of 148 evaluated synonym pairs, 62(42%) were not listed as synonyms in SWISSPROT Conf 0.75 0.54 0.47 Left - Middle Right -

14 Results

15

16 System performance System Tagging Similarity Snowball SVM GPE Time 7 hs 40 mins 2 hs 1.5 h 35 mins

17 Conclusions Extraction techniques can be used as a valuable supplement to resources such as SWISSPROT Synonym relations can be automated through machine-learning approaches SNOWBALL can be applied successfully for recognizing the patterns


Download ppt "ISMB 2003 presentation Extracting Synonymous Gene and Protein Terms from Biological Literature Hong Yu and Eugene Agichtein Dept. Computer Science, Columbia."

Similar presentations


Ads by Google