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Segmentation of Prostate Tumour Volumes from PET Images is a Different Ball Game

Authors :
Bhandary, Shrajan
Kuhn, Dejan
Babaiee, Zahra
Fechter, Tobias
Spohn, Simon K. B.
Zamboglou, Constantinos
Grosu, Anca-Ligia
Grosu, Radu
Publication Year :
2024

Abstract

Accurate segmentation of prostate tumours from PET images presents a formidable challenge in medical image analysis. Despite considerable work and improvement in delineating organs from CT and MR modalities, the existing standards do not transfer well and produce quality results in PET related tasks. Particularly, contemporary methods fail to accurately consider the intensity-based scaling applied by the physicians during manual annotation of tumour contours. In this paper, we observe that the prostate-localised uptake threshold ranges are beneficial for suppressing outliers. Therefore, we utilize the intensity threshold values, to implement a new custom-feature-clipping normalisation technique. We evaluate multiple, established U-Net variants under different normalisation schemes, using the nnU-Net framework. All models were trained and tested on multiple datasets, obtained with two radioactive tracers: [68-Ga]Ga-PSMA-11 and [18-F]PSMA-1007. Our results show that the U-Net models achieve much better performance when the PET scans are preprocessed with our novel clipping technique.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.10537
Document Type :
Working Paper