Influence of High-Performance Image-to-Image Translation Networks on Clinical Visual Assessment and Outcome Prediction: Utilizing Ultrasound to MRI Translation in Prostate Cancer
Journal:
arXiv
Published Date:
Jan 30, 2025
Abstract
Purpose: This study examines the core traits of image-to-image translation
(I2I) networks, focusing on their effectiveness and adaptability in everyday
clinical settings. Methods: We have analyzed data from 794 patients diagnosed
with prostate cancer (PCa), using ten prominent 2D/3D I2I networks to convert
ultrasound (US) images into MRI scans. We also introduced a new analysis of
Radiomic features (RF) via the Spearman correlation coefficient to explore
whether networks with high performance (SSIM>85%) could detect subtle RFs. Our
study further examined synthetic images by 7 invited physicians. As a final
evaluation study, we have investigated the improvement that are achieved using
the synthetic MRI data on two traditional machine learning and one deep
learning method. Results: In quantitative assessment, 2D-Pix2Pix network
substantially outperformed the other 7 networks, with an average SSIM~0.855.
The RF analysis revealed that 76 out of 186 RFs were identified using the
2D-Pix2Pix algorithm alone, although half of the RFs were lost during the
translation process. A detailed qualitative review by 7 medical doctors noted a
deficiency in low-level feature recognition in I2I tasks. Furthermore, the
study found that synthesized image-based classification outperformed US
image-based classification with an average accuracy and AUC~0.93. Conclusion:
This study showed that while 2D-Pix2Pix outperformed cutting-edge networks in
low-level feature discovery and overall error and similarity metrics, it still
requires improvement in low-level feature performance, as highlighted by Group
3. Further, the study found using synthetic image-based classification
outperformed original US image-based methods.