Maximizing T2-Only Prostate Cancer Localization from Expected Diffusion Weighted Imaging
arXiv cs.CV / 4/2/2026
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Key Points
- The paper studies a challenging T2-weighted-only (T2-only at inference) approach for prostate cancer localization, aiming to avoid needing diffusion-weighted imaging (DWI) at deployment time.
- It treats DWI as a “privileged” latent modality available during training, and uses an expectation-maximization (EM) style algorithm to approximate the latent DWI posterior and optimize a cancer localizer jointly.
- A latent modality generator based on a flow-matching generative model is used in the EM E-steps to model the inferred DWI-like representation from only T2w inputs.
- Experiments on internal and external histopathology-labeled datasets covering 4,133 patients show the proposed method can outperform or match multi-sequence baselines, including reported improvements over a T2w+DWI reference.
- The authors position the work as a new theoretical framework for learning with privileged modalities and incomplete inputs, improving the practicality and cost-effectiveness of MRI-based lesion localization.
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