Large Language Models as a Rapid and Objective Tool for Pathology Report Data Extraction

Medical institutions continuously create a substantial amount of data that is used for scientific research. One of the departments with a great amount of archived data is the pathology department. Pathology archives hold the potential to create a case series of valuable rare entities or large cohort...

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Bibliographic Details
Published inTurk patoloji dergisi Vol. 40; no. 2; pp. 138 - 141
Main Authors Bolat, Beyza, Eren, Ozgur Can, Dur-Karasayar, A Humeyra, Mericoz, Cisel Aydin, Gunduz-Demir, Cigdem, Kulac, Ibrahim
Format Journal Article
LanguageEnglish
Published Turkey Akdema Informatics and Publishing 01.05.2024
Federation of Turkish Pathology Societies
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Summary:Medical institutions continuously create a substantial amount of data that is used for scientific research. One of the departments with a great amount of archived data is the pathology department. Pathology archives hold the potential to create a case series of valuable rare entities or large cohorts of common entities. The major problem in creation of these databases is data extraction which is still commonly done manually and is highly laborious and error prone. For these reasons, we offer using large language models to overcome these challenges. Ten pathology reports of selected resection specimens were retrieved from electronic archives of Koç University Hospital for the initial set. These reports were de-identified and uploaded to ChatGPT and Google Bard. Both algorithms were asked to turn the reports in a synoptic report format that is easy to export to a data editor such as Microsoft Excel or Google Sheets. Both programs created tables with Google Bard facilitating the creation of a spreadsheet from the data automatically. In conclusion, we propose the use of AI-assisted data extraction for academic research purposes, as it may enhance efficiency and precision compared to manual data entry.
ISSN:1018-5615
1309-5730
DOI:10.5146/tjpath.2024.13256