(UroToday.com) The 2023 ESMO annual meeting included a session on prostate cancer, featuring a presentation by Dr. Mikaela Dell'Oro discussing the application of novel machine learning model in 68Ga-PSMA-11 PET/CT. Biochemical recurrence is estimated to occur in ≥ 25% of patients with prostate cancer following primary curative therapy.
Machine learning models are being developed for lesion detection and tracking to provide a comprehensive view of disease burden, allowing clinicians to quantify and predict effectiveness of treatment for individual lesions.1 This study, presented at the ESMO 2023 congress, applied novel AI-assisted technology to automatically extract features from 68Ga-PSMA-11 PET/CT images that correlate with treatment intervention and survival data to create a scoring system.
Overall, there were 1,233 lesions identified at baseline and 1,605 identified during follow-up. The top univariate predictors of survival were all heterogeneity features:
- Proportion of lesions increasing (c-index = 0.62)
- Number of stable lesions (c-index = 0.62)
- Number of decreasing lesions (c-index = 0.60)
- Number of new lesions (c-index = 0.59)
In an individual scan, the proportion of increasing lesions >29% correlated with poorer progression:
The AI model was able to predict responders vs suboptimal responders based on whether they had a treatment intervention or observation alone (35%) (c-index = 0.83 in both cases). The following shows a response assessment map of patients demonstrating a higher TRAQinform Profile score for patients (PS136 and PS016) who were predicted to do favorably compared to patients (PS170 and PS019) who did not:
Dr. Dell'Oro concluded her presentation discussing the application of novel machine learning model in 68Ga-PSMA-11 PET/CT with the following take-home points:
- This study demonstrates that an AI-assisted lesional response analysis can help predict response and prognosis of oligometastatic prostate cancer patients using 68Ga-PSMA-11 PET/CT images
- These results support further studies to validate these findings in a prospective cohort
Presented by: Mikaela Dell'Oro, Research Fellow, The University of Western Australia, Perth, Australia
Written by: Zachary Klaassen, MD, MSc – Urologic Oncologist, Associate Professor of Urology, Georgia Cancer Center, Wellstar MCG Health, @zklaassen_md on Twitter during the 2023 European Society of Medical Oncology (ESMO) Annual Meeting, Madrid, Spain, Fri, Oct 20 – Tues, Oct 24, 2023.
Reference:
- Lindgren BS, Frantz S, Minarik D, et al. Applications of artificial intelligence in PSMA PET/CT for prostate cancer imaging. Semin Nucl Med. 2023 Jun 23.