Investigator

Fatih Sinan Esen

Adjunct · Ankara University, Computer Engineering

FSEFatih Sinan Esen
Papers(1)
Navigating Gynecologi…
Collaborators(4)
Kaan CilKagan GungorNur Dokuzeylul GungorTolga Tasci
Institutions(5)
Ankara UniversityOtto Von Guericke Uni…Istanbul Medeniyet Un…Medical Park Gaziante…Bahçeşehir University

Papers

Navigating Gynecological Oncology with Different Versions of ChatGPT: A Transformative Breakthrough or the Next Black Box Challenge?

Introduction: The study evaluates the performance of large language model versions of ChatGPT – ChatGPT-3.5, ChatGPT-4, and ChatGPT-Omni – in addressing inquiries related to the diagnosis and treatment of gynecological cancers, including ovarian, endometrial, and cervical cancers. Methods: A total of 804 questions were equally distributed across four categories: true/false, multiple-choice, open-ended, and case-scenario, with each question type representing varying levels of complexity. Performance was assessed using a six-point Likert scale, focusing on accuracy, completeness, and alignment with established clinical guidelines. Results: For true/false queries, ChatGPT-Omni achieved accuracy rates of 100% for easy, 98% for medium, and 97% for complicated questions, higher than ChatGPT-4 (94%, 90%, 85%) and ChatGPT-3.5 (90%, 85%, 80%) (p = 0.041, 0.023, 0.014, respectively). In multiple-choice, ChatGPT-Omni maintained superior accuracy with 100% for easy, 98% for medium, and 93% for complicated queries, compared to ChatGPT-4 (92%, 88%, 80%) and ChatGPT-3.5 (85%, 80%, 70%) (p = 0.035, 0.028, 0.011). For open-ended questions, ChatGPT-Omni had mean Likert scores of 5.8 for easy, 5.5 for medium, and 5.2 for complex levels, outperforming ChatGPT-4 (5.4, 5.0, 4.5) and ChatGPT-3.5 (5.0, 4.5, 4.0) (p = 0.037, 0.026, 0.015). Similar trends were observed in case-scenario questions, where ChatGPT-Omni achieved scores of 5.6, 5.3, and 4.9 for easy, medium, and hard levels, respectively (p = 0.017, 0.008, 0.012). Conclusions: ChatGPT-Omni exhibited superior performance in responding to clinical queries related to gynecological cancers, underscoring its potential utility as a decision support tool and an educational resource in clinical practice.

3Works
1Papers
4Collaborators

Positions

2020–

Adjunct

Ankara University · Computer Engineering

2007–

Scientific Programs Chief Expert

TUBITAK · BTYPDB

Education

2017

PhDc

Ankara University · Computer Engineering

2017

PhD

Gazi University · Business Administration

2010

MBA

Istanbul Bilgi University · Business Administration

2006

Undergraduate

Bilkent Üniversitesi · Computer Engineering

Country

TR

Keywords
artificial intelligencemachine learningtext miningsocial network analysissocial mediamarketingmanagementgenerative AILLM