Learning shape distributions from large databases of healthy organs: applications to zero-shot and few-shot abnormal pancreas detection

10/21/2022
by   Rebeca Vétil, et al.
0

We propose a scalable and data-driven approach to learn shape distributions from large databases of healthy organs. To do so, volumetric segmentation masks are embedded into a common probabilistic shape space that is learned with a variational auto-encoding network. The resulting latent shape representations are leveraged to derive zeroshot and few-shot methods for abnormal shape detection. The proposed distribution learning approach is illustrated on a large database of 1200 healthy pancreas shapes. Downstream qualitative and quantitative experiments are conducted on a separate test set of 224 pancreas from patients with mixed conditions. The abnormal pancreas detection AUC reached up to 65.41 configuration with as few as 15 abnormal examples, outperforming a baseline approach based on the sole volume.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/31/2023

A Sequential Framework for Detection and Classification of Abnormal Teeth in Panoramic X-rays

This paper describes our solution for the Dental Enumeration and Diagnos...
research
06/26/2020

Few-Shot Anomaly Detection for Polyp Frames from Colonoscopy

Anomaly detection methods generally target the learning of a normal imag...
research
08/26/2023

Zero-Shot Edge Detection with SCESAME: Spectral Clustering-based Ensemble for Segment Anything Model Estimation

This paper proposes a novel zero-shot edge detection with SCESAME, which...
research
06/15/2021

Zero-sample surface defect detection and classification based on semantic feedback neural network

Defect detection and classification technology has changed from traditio...
research
03/05/2021

FedDis: Disentangled Federated Learning for Unsupervised Brain Pathology Segmentation

In recent years, data-driven machine learning (ML) methods have revoluti...

Please sign up or login with your details

Forgot password? Click here to reset