MCDDPM: Multichannel Conditional Denoising Diffusion Model for Unsupervised Anomaly Detection in Brain MRI
Vivek Kumar Trivedi, Bheeshm Sharma, P. Balamurugan

TL;DR
This paper introduces MCDDPM, an improved diffusion model for unsupervised brain MRI anomaly detection that enhances image fidelity without increasing computational costs, outperforming existing models.
Contribution
Proposes MCDDPM, a multichannel conditional diffusion model that improves image quality and anomaly detection accuracy in brain MRI scans while maintaining low computational costs.
Findings
MCDDPM achieves higher fidelity in generated images.
The model effectively detects anomalies in multiple datasets.
Performance is comparable to or better than existing diffusion models.
Abstract
Detecting anomalies in brain MRI scans using supervised deep learning methods presents challenges due to anatomical diversity and labor-intensive requirement of pixel-level annotations. Generative models like Denoising Diffusion Probabilistic Model (DDPM) and their variants like pDDPM, mDDPM, cDDPM have recently emerged to be powerful alternatives to perform unsupervised anomaly detection in brain MRI scans. These methods leverage frame-level labels of healthy brains to generate healthy tissues in brain MRI scans. During inference, when an anomalous (or unhealthy) scan image is presented as an input, these models generate a healthy scan image corresponding to the input anomalous scan, and the difference map between the generated healthy scan image and the original anomalous scan image provide the necessary pixel level identification of abnormal tissues. The generated healthy images from…
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Taxonomy
TopicsNMR spectroscopy and applications · Anomaly Detection Techniques and Applications
MethodsDiffusion
