Large expert-curated database for benchmarking document similarity detection in biomedical literature search

Journal article


Brown, Peter and Zhou, Yaoqi. (2019). Large expert-curated database for benchmarking document similarity detection in biomedical literature search. Database. 2019, p. Article baz085. https://doi.org/10.1093/database/baz085
AuthorsBrown, Peter and Zhou, Yaoqi
Abstract

Document recommendation systems for locating relevant literature have mostly relied on methods developed a decade ago. This is largely due to the lack of a large offline gold-standard benchmark of relevant documents that cover a variety of research fields such that newly developed literature search techniques can be compared, improved and translated into practice. To overcome this bottleneck, we have established the RElevant LIterature SearcH consortium consisting of more than 1500 scientists from 84 countries, who have collectively annotated the relevance of over 180 000 PubMed-listed articles with regard to their respective seed (input) article/s. The majority of annotations were contributed by highly experienced, original authors of the seed articles. The collected data cover 76% of all unique PubMed Medical Subject Headings descriptors. No systematic biases were observed across different experience levels, research fields or time spent on annotations. More importantly, annotations of the same document pairs contributed by different scientists were highly concordant. We further show that the three representative baseline methods used to generate recommended articles for evaluation (Okapi Best Matching 25, Term Frequency–Inverse Document Frequency and PubMed Related Articles) had similar overall performances. Additionally, we found that these methods each tend to produce distinct collections of recommended articles, suggesting that a hybrid method may be required to completely capture all relevant articles. The established database server located at https://relishdb.ict.griffith.edu.au is freely available for the downloading of annotation data and the blind testing of new methods. We expect that this benchmark will be useful for stimulating the development of new powerful techniques for title and title/abstract-based search engines for relevant articles in biomedical research.

Year2019
JournalDatabase
Journal citation2019, p. Article baz085
PublisherOxford University Press
ISSN1758-0463
Digital Object Identifier (DOI)https://doi.org/10.1093/database/baz085
PubMed ID33326193
Scopus EID2-s2.0-85082592913
PubMed Central IDPMC7291946
Open accessPublished as ‘gold’ (paid) open access
Page range1-66
FunderGriffith University
Queensland Cyber Infrastructure Foundation
Publisher's version
License
File Access Level
Open
Output statusPublished
Publication dates
Online29 Oct 2019
Publication process dates
Accepted31 May 2019
Deposited15 Dec 2021
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https://acuresearchbank.acu.edu.au/item/8x314/large-expert-curated-database-for-benchmarking-document-similarity-detection-in-biomedical-literature-search

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