From 251e9ff1e4a5d728ee5ed45893b195c8e611d114 Mon Sep 17 00:00:00 2001 From: ravenscroftj Date: Wed, 23 Nov 2022 21:00:18 +0000 Subject: [PATCH] Add 'brainsteam/content/replies/2022/11/23/1669236425.md' --- .../content/replies/2022/11/23/1669236425.md | 72 +++++++++++++++++++ 1 file changed, 72 insertions(+) create mode 100644 brainsteam/content/replies/2022/11/23/1669236425.md diff --git a/brainsteam/content/replies/2022/11/23/1669236425.md b/brainsteam/content/replies/2022/11/23/1669236425.md new file mode 100644 index 0000000..77abe88 --- /dev/null +++ b/brainsteam/content/replies/2022/11/23/1669236425.md @@ -0,0 +1,72 @@ +--- +date: '2022-11-23T20:47:05' +hypothesis-meta: + created: '2022-11-23T20:47:05.414293+00:00' + document: + title: + - 'Towards Automatic Curation of Antibiotic Resistance Genes via Statement Extraction + from Scientific Papers: A Benchmark Dataset and Models' + flagged: false + group: __world__ + hidden: false + id: _Vj2omtvEe2z-rfNY4eZiw + links: + html: https://hypothes.is/a/_Vj2omtvEe2z-rfNY4eZiw + incontext: https://hyp.is/_Vj2omtvEe2z-rfNY4eZiw/aclanthology.org/2022.bionlp-1.40.pdf + json: https://hypothes.is/api/annotations/_Vj2omtvEe2z-rfNY4eZiw + permissions: + admin: + - acct:ravenscroftj@hypothes.is + delete: + - acct:ravenscroftj@hypothes.is + read: + - group:__world__ + update: + - acct:ravenscroftj@hypothes.is + tags: + - prompt-models + - NLProc + target: + - selector: + - end: 1532 + start: 444 + type: TextPositionSelector + - exact: "Antibiotic resistance has become a growingworldwide concern as new resistance\ + \ mech-anisms are emerging and spreading globally,and thus detecting and collecting\ + \ the cause\u2013 Antibiotic Resistance Genes (ARGs), havebeen more critical\ + \ than ever. In this work,we aim to automate the curation of ARGs byextracting\ + \ ARG-related assertive statementsfrom scientific papers. To support the researchtowards\ + \ this direction, we build SCIARG, anew benchmark dataset containing 2,000\ + \ man-ually annotated statements as the evaluationset and 12,516 silver-standard\ + \ training state-ments that are automatically created from sci-entific papers\ + \ by a set of rules. To set upthe baseline performance on SCIARG, weexploit\ + \ three state-of-the-art neural architec-tures based on pre-trained language\ + \ modelsand prompt tuning, and further ensemble themto attain the highest\ + \ 77.0% F-score. To the bestof our knowledge, we are the first to leveragenatural\ + \ language processing techniques to cu-rate all validated ARGs from scientific\ + \ papers.Both the code and data are publicly availableat https://github.com/VT-NLP/SciARG." + prefix: g,clb21565,lifuh}@vt.eduAbstract + suffix: 1 IntroductionAntibiotic resista + type: TextQuoteSelector + source: https://aclanthology.org/2022.bionlp-1.40.pdf + text: The authors use prompt training on LLMs to build a classifier that can identify + statements that describe whether or not micro-organisms have antibiotic resistant + genes in scientific papers. + updated: '2022-11-23T20:47:05.414293+00:00' + uri: https://aclanthology.org/2022.bionlp-1.40.pdf + user: acct:ravenscroftj@hypothes.is + user_info: + display_name: James Ravenscroft +in-reply-to: https://aclanthology.org/2022.bionlp-1.40.pdf +tags: +- prompt-models +- NLProc +- hypothesis +type: reply +url: /replies/2022/11/23/1669236425 + +--- + + + +
Antibiotic resistance has become a growingworldwide concern as new resistance mech-anisms are emerging and spreading globally,and thus detecting and collecting the cause– Antibiotic Resistance Genes (ARGs), havebeen more critical than ever. In this work,we aim to automate the curation of ARGs byextracting ARG-related assertive statementsfrom scientific papers. To support the researchtowards this direction, we build SCIARG, anew benchmark dataset containing 2,000 man-ually annotated statements as the evaluationset and 12,516 silver-standard training state-ments that are automatically created from sci-entific papers by a set of rules. To set upthe baseline performance on SCIARG, weexploit three state-of-the-art neural architec-tures based on pre-trained language modelsand prompt tuning, and further ensemble themto attain the highest 77.0% F-score. To the bestof our knowledge, we are the first to leveragenatural language processing techniques to cu-rate all validated ARGs from scientific papers.Both the code and data are publicly availableat https://github.com/VT-NLP/SciARG.
The authors use prompt training on LLMs to build a classifier that can identify statements that describe whether or not micro-organisms have antibiotic resistant genes in scientific papers. \ No newline at end of file