KiPA22 Report: U-Net with Contour Regularization for Renal Structures Segmentation

08/10/2022
by   Kangqing Ye, et al.
5

Three-dimensional (3D) integrated renal structures (IRS) segmentation is important in clinical practice. With the advancement of deep learning techniques, many powerful frameworks focusing on medical image segmentation are proposed. In this challenge, we utilized the nnU-Net framework, which is the state-of-the-art method for medical image segmentation. To reduce the outlier prediction for the tumor label, we combine contour regularization (CR) loss of the tumor label with Dice loss and cross-entropy loss to improve this phenomenon.

READ FULL TEXT
research
06/09/2022

Joint Modeling of Image and Label Statistics for Enhancing Model Generalizability of Medical Image Segmentation

Although supervised deep-learning has achieved promising performance in ...
research
12/04/2020

Offset Curves Loss for Imbalanced Problem in Medical Segmentation

Medical image segmentation has played an important role in medical analy...
research
10/04/2022

AdaWAC: Adaptively Weighted Augmentation Consistency Regularization for Volumetric Medical Image Segmentation

Sample reweighting is an effective strategy for learning from training d...
research
04/06/2021

First arrival picking using U-net with Lovasz loss and nearest point picking method

We proposed a robust segmentation and picking workflow to solve the firs...
research
08/23/2023

Tumor-Centered Patching for Enhanced Medical Image Segmentation

The realm of medical image diagnosis has advanced significantly with the...
research
06/01/2023

Robust T-Loss for Medical Image Segmentation

This paper presents a new robust loss function, the T-Loss, for medical ...
research
08/21/2023

Enhancing Medical Image Segmentation: Optimizing Cross-Entropy Weights and Post-Processing with Autoencoders

The task of medical image segmentation presents unique challenges, neces...

Please sign up or login with your details

Forgot password? Click here to reset