Analytical performance of aPROMISE: automated anatomic contextualization, detection, and quantification of [18F]DCFPyL (PSMA) imaging for standardized reporting
Autor: | Matthew Rettig, Kerstin Johnsson, Michael J. Morris, Nicholas G. Nickols, Anders Bjartell, Aseem Anand, Johan Brynolfsson, Hannicka Maria Eleonora Sahlstedt, Stephan Probst, Mathias Eiber |
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Jazyk: | angličtina |
Rok vydání: | 2021 |
Předmět: |
Male
Blood pool Standardized reporting Prostate cancer symbols.namesake Segmentation Positron Emission Tomography Computed Tomography medicine Quantitative assessment Image Processing Computer-Assisted Humans Radiology Nuclear Medicine and imaging Retrospective Studies All lymph nodes 18F-DCFPyL aPROMISE PSMA PET/CT evaluation business.industry Prostate Prostatic Neoplasms General Medicine medicine.disease Pearson product-moment correlation coefficient Tracer uptake symbols Original Article Nuclear medicine business |
Zdroj: | European Journal of Nuclear Medicine and Molecular Imaging |
ISSN: | 1619-7089 1619-7070 |
Popis: | Purpose The application of automated image analyses could improve and facilitate standardization and consistency of quantification in [18F]DCFPyL (PSMA) PET/CT scans. In the current study, we analytically validated aPROMISE, a software as a medical device that segments organs in low-dose CT images with deep learning, and subsequently detects and quantifies potential pathological lesions in PSMA PET/CT. Methods To evaluate the deep learning algorithm, the automated segmentations of the low-dose CT component of PSMA PET/CT scans from 20 patients were compared to manual segmentations. Dice scores were used to quantify the similarities between the automated and manual segmentations. Next, the automated quantification of tracer uptake in the reference organs and detection and pre-segmentation of potential lesions were evaluated in 339 patients with prostate cancer, who were all enrolled in the phase II/III OSPREY study. Three nuclear medicine physicians performed the retrospective independent reads of OSPREY images with aPROMISE. Quantitative consistency was assessed by the pairwise Pearson correlations and standard deviation between the readers and aPROMISE. The sensitivity of detection and pre-segmentation of potential lesions was evaluated by determining the percent of manually selected abnormal lesions that were automatically detected by aPROMISE. Results The Dice scores for bone segmentations ranged from 0.88 to 0.95. The Dice scores of the PSMA PET/CT reference organs, thoracic aorta and liver, were 0.89 and 0.97, respectively. Dice scores of other visceral organs, including prostate, were observed to be above 0.79. The Pearson correlation for blood pool reference was higher between any manual reader and aPROMISE, than between any pair of manual readers. The standard deviations of reference organ uptake across all patients as determined by aPROMISE (SD = 0.21 blood pool and SD = 1.16 liver) were lower compared to those of the manual readers. Finally, the sensitivity of aPROMISE detection and pre-segmentation was 91.5% for regional lymph nodes, 90.6% for all lymph nodes, and 86.7% for bone in metastatic patients. Conclusion In this analytical study, we demonstrated the segmentation accuracy of the deep learning algorithm, the consistency in quantitative assessment across multiple readers, and the high sensitivity in detecting potential lesions. The study provides a foundational framework for clinical evaluation of aPROMISE in standardized reporting of PSMA PET/CT. |
Databáze: | OpenAIRE |
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