AI-powered radiomics: revolutionizing detection of urologic malignancies

Author:

Gelikman David G.1,Rais-Bahrami Soroush234,Pinto Peter A.5,Turkbey Baris1

Affiliation:

1. Molecular Imaging Branch, National Cancer Institute, National Institutes of Health, Bethesda, Maryland

2. Department of Urology

3. O’Neal Comprehensive Cancer Center

4. Department of Radiology, The University of Alabama at Birmingham Heersink School of Medicine, Birmingham, Alabama

5. Urologic Oncology Branch, National Cancer Institute, National Institutes of Health, Bethesda, Maryland, USA

Abstract

Purpose of review This review aims to highlight the integration of artificial intelligence-powered radiomics in urologic oncology, focusing on the diagnostic and prognostic advancements in the realm of managing prostate, kidney, and bladder cancers. Recent findings As artificial intelligence continues to shape the medical imaging landscape, its integration into the field of urologic oncology has led to impressive results. For prostate cancer diagnostics, machine learning has shown promise in refining clinically-significant lesion detection, with some success in deciphering ambiguous lesions on multiparametric MRI. For kidney cancer, radiomics has emerged as a valuable tool for better distinguishing between benign and malignant renal masses and predicting tumor behavior from CT or MRI scans. Meanwhile, in the arena of bladder cancer, there is a burgeoning emphasis on prediction of muscle invasive cancer and forecasting disease trajectory. However, many studies showing promise in these areas face challenges due to limited sample sizes and the need for broader external validation. Summary Radiomics integrated with artificial intelligence offers a pioneering approach to urologic oncology, ushering in an era of enhanced diagnostic precision and reduced invasiveness, guiding patient-tailored treatment plans. Researchers must embrace broader, multicentered endeavors to harness the full potential of this field.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Urology

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