1. Prediction and Mapping of Intraprostatic Tumor Extent with Artificial Intelligence
- Author
-
Alan Priester, Richard E. Fan, Joshua Shubert, Mirabela Rusu, Sulaiman Vesal, Wei Shao, Yash Samir Khandwala, Leonard S. Marks, Shyam Natarajan, and Geoffrey A. Sonn
- Subjects
Artificial intelligence ,Magnetic resonance imaging ,Prostatic neoplasms ,Surgical margins ,Surgical pathology ,Diseases of the genitourinary system. Urology ,RC870-923 ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Background: Magnetic resonance imaging (MRI) underestimation of prostate cancer extent complicates the definition of focal treatment margins. Objective: To validate focal treatment margins produced by an artificial intelligence (AI) model. Design, setting, and participants: Testing was conducted retrospectively in an independent dataset of 50 consecutive patients who had radical prostatectomy for intermediate-risk cancer. An AI deep learning model incorporated multimodal imaging and biopsy data to produce three-dimensional cancer estimation maps and margins. AI margins were compared with conventional MRI regions of interest (ROIs), 10-mm margins around ROIs, and hemigland margins. The AI model also furnished predictions of negative surgical margin probability, which were assessed for accuracy. Outcome measurements and statistical analysis: Comparing AI with conventional margins, sensitivity was evaluated using Wilcoxon signed-rank tests and negative margin rates using chi-square tests. Predicted versus observed negative margin probability was assessed using linear regression. Clinically significant prostate cancer (International Society of Urological Pathology grade ≥2) delineated on whole-mount histopathology served as ground truth. Results and limitations: The mean sensitivity for cancer-bearing voxels was higher for AI margins (97%) than for conventional ROIs (37%, p
- Published
- 2023
- Full Text
- View/download PDF