Pancreatic Tumor Segmentation as Anomaly Detection in CT Images Using Denoising Diffusion Models
Reza Babaei, Samuel Cheng, Theresa Thai, and Shangqing Zhao

TL;DR
This paper introduces a novel weakly supervised anomaly detection method for pancreatic tumor segmentation in CT images using denoising diffusion models, avoiding complex training and detailed annotations.
Contribution
It presents a new approach employing diffusion models for pancreatic tumor detection, offering detailed anomaly maps without requiring segmentation masks or extensive labeled data.
Findings
Effective anomaly detection without detailed annotations
Seamless translation between healthy and diseased images
Potential for improved early pancreatic cancer diagnosis
Abstract
Despite the advances in medicine, cancer has remained a formidable challenge. Particularly in the case of pancreatic tumors, characterized by their diversity and late diagnosis, early detection poses a significant challenge crucial for effective treatment. The advancement of deep learning techniques, particularly supervised algorithms, has significantly propelled pancreatic tumor detection in the medical field. However, supervised deep learning approaches necessitate extensive labeled medical images for training, yet acquiring such annotations is both limited and costly. Conversely, weakly supervised anomaly detection methods, requiring only image-level annotations, have garnered interest. Existing methodologies predominantly hinge on generative adversarial networks (GANs) or autoencoder models, which can pose complexity in training and, these models may face difficulties in accurately…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · AI in cancer detection · Brain Tumor Detection and Classification
MethodsDiffusion
