TL;DR
This paper introduces CCELLA++, a domain adaptation pipeline using locally-trained latent diffusion models to generate synthetic 3D biparametric prostate MRI data, improving prostate cancer detection across institutions with limited data.
Contribution
CCELLA++ is a novel LDM-based method that generates synthetic bpMRI for better domain adaptation and classifier performance in prostate cancer detection.
Findings
CCELLA++ achieves comparable AxT2 quality to previous models.
Synthetic bpMRI pretraining outperforms real data in external datasets.
CCELLA++ improves classifier generalization in data-scarce scenarios.
Abstract
Objective: Latent diffusion models (LDMs) could mitigate data scarcity challenges affecting machine learning development for medical image interpretation. The recent CCELLA LDM improved prostate cancer detection performance using synthetic MRI for classifier training but was limited to the axial T2-weighted (AxT2) sequence, did not investigate inter-institutional domain shift, and prioritized PI-RADS over histopathology outcomes. Methods: We propose CCELLA++, a novel LDM pipeline for simultaneous 3D biparametric prostate MRI (bpMRI) generation, including the AxT2, high b-value diffusion series (HighB) and apparent diffusion coefficient map (ADC), to overcome these limitations. We investigated source-free domain adaptation with classifiers pretrained on single institution real or LDM-generated synthetic data prior to fine-tuning on fractions of an out-of-distribution, external dataset.…
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Taxonomy
TopicsProstate Cancer Diagnosis and Treatment · AI in cancer detection · Generative Adversarial Networks and Image Synthesis
