Simultaneous Dual-View Mammogram Synthesis Using Denoising Diffusion Probabilistic Models

arXiv cs.CV / 4/8/2026

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Key Points

  • The paper introduces a three-channel denoising diffusion probabilistic model (DDPM) to simultaneously synthesize both craniocaudal (CC) and mediolateral oblique (MLO) mammogram views from a single breast image.
  • It encodes the two views in separate channels and uses a third channel containing the absolute difference to encourage cross-view anatomical coherence.
  • A pretrained Hugging Face DDPM was fine-tuned on a private breast screening dataset to generate dual-view pairs, aiming to preserve realistic global breast structure.
  • Evaluation combines geometric consistency checks (via automated breast mask segmentation), distribution-level comparisons to real images, and qualitative review of cross-view alignment.
  • The authors argue the difference-guided approach enables more feasible dual-view dataset augmentation and supports future cross-view-aware AI for breast imaging.

Abstract

Breast cancer screening relies heavily on mammography, where the craniocaudal (CC) and mediolateral oblique (MLO) views provide complementary information for diagnosis. However, many datasets lack complete paired views, limiting the development of algorithms that depend on cross-view consistency. To address this gap, we propose a three-channel denoising diffusion probabilistic model capable of simultaneously generating CC and MLO views of a single breast. In this configuration, the two mammographic views are stored in separate channels, while a third channel encodes their absolute difference to guide the model toward learning coherent anatomical relationships between projections. A pretrained DDPM from Hugging Face was fine-tuned on a private screening dataset and used to synthesize dual-view pairs. Evaluation included geometric consistency via automated breast mask segmentation and distributional comparison with real images, along with qualitative inspection of cross-view alignment. The results show that the difference-based encoding helps preserve the global breast structure across views, producing synthetic CC-MLO pairs that resemble real acquisitions. This work demonstrates the feasibility of simultaneous dual-view mammogram synthesis using a difference-guided DDPM, highlighting its potential for dataset augmentation and future cross-view-aware AI applications in breast imaging.