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Region Hovedstaden - en del af Københavns Universitetshospital
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Text mining and word embedding for classification of decision making variables in breast cancer surgery

Publikation: Bidrag til tidsskriftTidsskriftartikelpeer review

DOI

  1. Diagnostic challenges of adenomyoepithelioma: A case report

    Publikation: Bidrag til tidsskriftTidsskriftartikelpeer review

  • G. Catanuto
  • N. Rocco
  • A. Maglia
  • P. Barry
  • Andreas Karakatsanis
  • G. Sgroi
  • G. Russo
  • F. Pappalardo
  • M. B. Nava
  • Joerg Heil
  • Andreas Karakatsanis
  • Walter Paul Weber
  • Eduardo Gonzalez
  • Abhishek Chatterjee
  • Cicero Urban
  • Malin Sund
  • Regis Resende Paulinelli
  • Christos Markopoulos
  • Isabel T. Rubio
  • Yazan A. Masannat
  • Francesco Meani
  • Chaitanyanand B. Koppiker
  • Chris Holcombe
  • John R. Benson
  • Jill R. Dietz
  • Melanie Walker
  • Zoltán Mátrai
  • Ayesha Shaukat
  • Bahadir Gulluoglu
  • Fabricio Brenelli
  • Florian Fitzal
  • Marco Mele (Medlem af forfattergruppering)
  • ETHOS Collaborative Group
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Introduction: Decision making in surgical oncology of the breast has increased its complexity over the last twenty years. This Delphi survey investigates the opinion of an expert panel about the decision making process in surgical procedures on the breast for oncological purposes. Methods: Twenty-seven experts were invited to partake into a Delphi Survey. At the first round they have been asked to provide a list of features involved in the decision making process (patient's characteristics; disease characteristics; surgical techniques, outcomes) and comment on it. Using text-mining techniques we extracted a list of mono-bi-trigrams potentially representative of decision drivers. A technique of “natural language processing” called Word2vec was used to validate changes to texts using synonyms and plesionyms. Word2Vec was also used to test the semantic relevance of n-grams within a corpus of knowledge made up of books edited by panel members. The final list of variables extracted was submitted to the judgement of the panel for final validation at the second round of the Delphi using closed ended questions. Results: 52 features out of 59 have been approved by the panel. The overall consensus was 87.1% Conclusions: Text mining and natural language processing allowed the extraction of a number of decision drivers and outcomes as part of the decision making process in surgical oncology on the breast. This result was obtained transforming narrative texts into structured data. The high level of consensus among experts provided validation to this process.

OriginalsprogEngelsk
TidsskriftEuropean Journal of Surgical Oncology
Vol/bind48
Udgave nummer7
Sider (fra-til)1503-1509
Antal sider7
ISSN0748-7983
DOI
StatusUdgivet - jul. 2022

Bibliografisk note

Publisher Copyright:
© 2022 Elsevier Ltd, BASO ~ The Association for Cancer Surgery, and the European Society of Surgical Oncology

ID: 79576753