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Discovering Implicit Entity Relation with the Gene-Citation-Gene Network

Author

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  • Min Song
  • Nam-Gi Han
  • Yong-Hwan Kim
  • Ying Ding
  • Tamy Chambers

Abstract

In this paper, we apply the entitymetrics model to our constructed Gene-Citation-Gene (GCG) network. Based on the premise there is a hidden, but plausible, relationship between an entity in one article and an entity in its citing article, we constructed a GCG network of gene pairs implicitly connected through citation. We compare the performance of this GCG network to a gene-gene (GG) network constructed over the same corpus but which uses gene pairs explicitly connected through traditional co-occurrence. Using 331,411 MEDLINE abstracts collected from 18,323 seed articles and their references, we identify 25 gene pairs. A comparison of these pairs with interactions found in BioGRID reveal that 96% of the gene pairs in the GCG network have known interactions. We measure network performance using degree, weighted degree, closeness, betweenness centrality and PageRank. Combining all measures, we find the GCG network has more gene pairs, but a lower matching rate than the GG network. However, combining top ranked genes in both networks produces a matching rate of 35.53%. By visualizing both the GG and GCG networks, we find that cancer is the most dominant disease associated with the genes in both networks. Overall, the study indicates that the GCG network can be useful for detecting gene interaction in an implicit manner.

Suggested Citation

  • Min Song & Nam-Gi Han & Yong-Hwan Kim & Ying Ding & Tamy Chambers, 2013. "Discovering Implicit Entity Relation with the Gene-Citation-Gene Network," PLOS ONE, Public Library of Science, vol. 8(12), pages 1-1, December.
  • Handle: RePEc:plo:pone00:0084639
    DOI: 10.1371/journal.pone.0084639
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    Cited by:

    1. Qi Yu & Qi Wang & Yafei Zhang & Chongyan Chen & Hyeyoung Ryu & Namu Park & Jae-Eun Baek & Keyuan Li & Yifei Wu & Daifeng Li & Jian Xu & Meijun Liu & Jeremy J. Yang & Chenwei Zhang & Chao Lu & Peng Zha, 2022. "Reply to issues about entitymetrics and paper-entity citation network," Scientometrics, Springer;Akadémiai Kiadó, vol. 127(4), pages 2127-2129, April.
    2. Qikai Cheng & Jiamin Wang & Wei Lu & Yong Huang & Yi Bu, 2020. "Keyword-citation-keyword network: a new perspective of discipline knowledge structure analysis," Scientometrics, Springer;Akadémiai Kiadó, vol. 124(3), pages 1923-1943, September.
    3. Choudhury, Nazim & Faisal, Fahim & Khushi, Matloob, 2020. "Mining Temporal Evolution of Knowledge Graphs and Genealogical Features for Literature-based Discovery Prediction," Journal of Informetrics, Elsevier, vol. 14(3).
    4. Qi Yu & Qi Wang & Yafei Zhang & Chongyan Chen & Hyeyoung Ryu & Namu Park & Jae-Eun Baek & Keyuan Li & Yifei Wu & Daifeng Li & Jian Xu & Meijun Liu & Jeremy J. Yang & Chenwei Zhang & Chao Lu & Peng Zha, 2021. "Analyzing knowledge entities about COVID-19 using entitymetrics," Scientometrics, Springer;Akadémiai Kiadó, vol. 126(5), pages 4491-4509, May.
    5. Jeong, Yoo Kyung & Xie, Qing & Yan, Erjia & Song, Min, 2020. "Examining drug and side effect relation using author–entity pair bipartite networks," Journal of Informetrics, Elsevier, vol. 14(1).

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