A fully automated AI-based method for tumour detection and quantification on [18F]PSMA-1007 PET–CT images in prostate cancer
Journal article, 2025
Methods: A total of 1064 [18F]PSMA-1007 PET–CT scans were used (approximately twice as many compared to our previous AI model), of which 120 were used as test set. Suspected lesions were manually annotated and used as ground truth. A convolutional neural network was developed and trained. The sensitivity and positive predictive value (PPV) were calculated using two sets of manual segmentations as reference. Results were also compared to our previously developed AI method. The correlation between manually and AI-based calculations of total lesion volume (TLV) and total lesion uptake (TLU) were calculated.
Results: The sensitivities of the AI method were 85% for prostate tumour/recurrence, 91% for lymph node metastases and 61% for bone metastases (82%, 86% and 70% for manual readings and 66%, 88% and 71% for the old AI method). The PPVs of the AI method were 85%, 83% and 58%, respectively (63%, 86% and 39% for manual readings, and 69%, 70% and 39% for the old AI method). The correlations between manual and AI-based calculations of TLV and TLU ranged from r = 0.62 to r = 0.96.
Conclusion: The performance of the newly developed and fully automated AI-based method for detecting and quantifying prostate tumour and suspected lymph node and bone metastases increased significantly, especially the PPV. The AI method is freely available to other researchers (www.recomia.org).
PSMA
CNN
PET–CT
Prostate cancer
Artificial intelligence
Author
E. Tragardh
Lund University
Skåne University Hospital
Johannes Ulén
Eigenvision AB
Olof Enqvist
Eigenvision AB
Chalmers, Electrical Engineering, Signal Processing and Biomedical Engineering
Måns Larsson
Eigenvision AB
Kristian Valind
Lund University
Skåne University Hospital
David Minarik
Skåne University Hospital
Lund University
L. Edenbrandt
Sahlgrenska University Hospital
University of Gothenburg
EJNMMI Physics
2197-7364 (eISSN)
Vol. 12 1 78Subject Categories (SSIF 2025)
Radiology and Medical Imaging
DOI
10.1186/s40658-025-00786-9