Leveraging Global Binary Masks for Structure Segmentation in Medical Images

05/13/2022
by   Mahdieh Kazemimoghadam, et al.
0

Deep learning (DL) models for medical image segmentation are highly influenced by intensity variations of input images and lack generalization due to primarily utilizing pixels' intensity information for inference. Acquiring sufficient training data is another challenge limiting models' applications. We proposed to leverage the consistency of organs' anatomical shape and position information in medical images. We introduced a framework leveraging recurring anatomical patterns through global binary masks for organ segmentation. Two scenarios were studied.1) Global binary masks were the only model's (i.e. U-Net) input, forcing exclusively encoding organs' position and shape information for segmentation/localization.2) Global binary masks were incorporated as an additional channel functioning as position/shape clues to mitigate training data scarcity. Two datasets of the brain and heart CT images with their ground-truth were split into (26:10:10) and (12:3:5) for training, validation, and test respectively. Training exclusively on global binary masks led to Dice scores of 0.77(0.06) and 0.85(0.04), with the average Euclidian distance of 3.12(1.43)mm and 2.5(0.93)mm relative to the center of mass of the ground truth for the brain and heart structures respectively. The outcomes indicate that a surprising degree of position and shape information is encoded through global binary masks. Incorporating global binary masks led to significantly higher accuracy relative to the model trained on only CT images in small subsets of training data; the performance improved by 4.3-125.3 1.3-48.1 The findings imply the advantages of utilizing global binary masks for building generalizable models and to compensate for training data scarcity.

READ FULL TEXT

page 5

page 7

page 12

research
04/18/2023

Accuracy of Segment-Anything Model (SAM) in medical image segmentation tasks

The segment-anything model (SAM), was introduced as a fundamental model ...
research
04/22/2023

Input Augmentation with SAM: Boosting Medical Image Segmentation with Segmentation Foundation Model

The Segment Anything Model (SAM) is a recently developed large model for...
research
08/26/2019

Cross-modality Knowledge Transfer for Prostate Segmentation from CT Scans

Creating large scale high-quality annotations is a known challenge in me...
research
12/30/2022

Informing selection of performance metrics for medical image segmentation evaluation using configurable synthetic errors

Machine learning-based segmentation in medical imaging is widely used in...
research
08/15/2018

AnatomyNet: Deep Learning for Fast and Fully Automated Whole-volume Segmentation of Head and Neck Anatomy

Methods: Our deep learning model, called AnatomyNet, segments OARs from ...
research
10/26/2019

A Soft STAPLE Algorithm Combined with Anatomical Knowledge

Supervised machine learning algorithms, especially in the medical domain...

Please sign up or login with your details

Forgot password? Click here to reset