It takes one to know one—Machine learning for identifying OBGYN abstracts written by ChatGPT

Author:

Levin Gabriel12ORCID,Meyer Raanan34,Guigue Paul‐Adrien2,Brezinov Yoav5

Affiliation:

1. The Department of Obstetrics and Gynecology Hadassah‐Hebrew University Medical Center Jerusalem Israel

2. Lady Davis Institute for Cancer Research Jewish General Hospital, McGill University Montreal Quebec Canada

3. Division of Minimally Invasive Gynecologic Surgery, Department of Obstetrics and Gynecology Cedars Sinai Medical Center Los Angeles California USA

4. The Dr. Pinchas Bornstein Talpiot Medical Leadership Program Sheba Medical Center Ramat‐Gan Israel

5. Department of Experimental Surgery McGill University Montreal Quebec Canada

Abstract

AbstractObjectivesTo use machine learning to optimize the detection of obstetrics and gynecology (OBGYN) Chat Generative Pre‐trained Transformer (ChatGPT) ‐written abstracts of all OBGYN journals.MethodsWe used Web of Science to identify all original articles published in all OBGYN journals in 2022. Seventy‐five original articles were randomly selected. For each, we prompted ChatGPT to write an abstract based on the title and results of the original abstracts. Each abstract was tested by Grammarly software and reports were inserted into a database. Machine‐learning modes were trained and examined on the database created.ResultsOverall, 75 abstracts from 12 different OBGYN journals were randomly selected. There were seven (58%) Q1 journals, one (8%) Q2 journal, two (17%) Q3 journals, and two (17%) Q4 journals. Use of mixed dialects of English, absence of comma‐misuse, absence of incorrect verb forms, and improper formatting were important prediction variables of ChatGPT‐written abstracts. The deep‐learning model had the highest predictive performance of all examined models. This model achieved the following performance: accuracy 0.90, precision 0.92, recall 0.85, area under the curve 0.95.ConclusionsMachine‐learning‐based tools reach high accuracy in identifying ChatGPT‐written OBGYN abstracts.

Publisher

Wiley

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