Empowering prostate cancer care with LLMs: A new era of accurate diagnosis

Prostate cancer detection using LLM

Authors

DOI:

https://doi.org/10.62110/sciencein.jist.2025.v13.1171

Keywords:

Prostate Cancer Detection, , Machine learning models, Cancer-Indicative Features, LLMs.

Abstract

This study examines the application of Artificial Intelligence (AI), particularly Large Language Models (LLMs), in diagnosing prostate cancer using data from 500 patients who underwent Transrectal Ultrasound-Guided Biopsies (TRUS Bx) at Jordan University Hospital between 2007 and 2024. The dataset comprises 21 clinical features, including 9 indicators of cancer (e.g., total PSA, free PSA, prostate volume) and 12 additional exploration features (e.g., blood and urine metrics). We compared the performance of traditional machine learning models (Logistic Regression, SVM, KNN, XGBoost) with advanced LLMs, including Mistral-7B, Zephyr 7B, and Phi 3 Medium 4K Instruct. Traditional models achieved moderate accuracy (81.0%–83.6%), while LLMs demonstrated higher performance, all surpassing 93% accuracy. Mistral-7B achieved the highest at 94.5%. Confusion matrix analyses confirmed the advantages of LLMs in terms of precision, recall, and reduced misclassification. These results highlight the potential of LLMs to identify complex clinical patterns that conventional models may overlook. However, considerations regarding computational cost and model interpretability are crucial for real-world clinical applications. This research highlights the transformative potential of generative AI in prostate cancer diagnosis, laying the groundwork for future studies to expand feature sets and improve diagnostic accuracy.

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Author Biographies

  • Adel Alrabadi, The University of Jordan

    Division of Urology, Department of Special Surgery

  • Mohammad Alshraideh, The University of Jordan

    Artificial Intelligence Department

  • Bahaaldeen Alshraideh, The University of Jordan

    Division of Urology, Department of Special Surgery

  • Abedalrahman Alshraideh, NHS, England, UK

    Internal Medicine, East Midlands Deanery

  • Lara Shboul, The University of Jordan

    Artificial Intelligence Department

  • Ayah Karajah, The University of Jordan

    Artificial Intelligence Department

  • Bayan Alfayoumi, Lusail University, Qatar

    Information Technology College

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Published

2025-08-21

Issue

Section

Computer Science and Engineering

URN

How to Cite

Alrabadi, A. ., Alshraideh, M., Alshraideh, B., Alshraideh, A., Shboul, L., Karajah, A., & Alfayoumi, B. (2025). Empowering prostate cancer care with LLMs: A new era of accurate diagnosis. Journal of Integrated Science and Technology, 13(8), 1171. https://doi.org/10.62110/sciencein.jist.2025.v13.1171

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