Accurately identifying vertebral levels in large datasets

01/28/2020
by   Dan Elton, et al.
1

The vertebral levels of the spine provide a useful coordinate system when making measurements of plaque, muscle, fat, and bone mineral density. Correctly classifying vertebral levels with high accuracy is challenging due to the similar appearance of each vertebra, the curvature of the spine, and the possibility of anomalies such as fractured vertebrae, implants, lumbarization of the sacrum, and sacralization of L5. The goal of this work is to develop a system that can accurately and robustly identify the L1 level in large heterogeneous datasets. The first approach we study is using a 3D U-Net to segment the L1 vertebra directly using the entire scan volume to provide context. We also tested models for two class segmentation of L1 and T12 and a three class segmentation of L1, T12 and the rib attached to T12. By increasing the number of training examples to 249 scans using pseudo-segmentations from an in-house segmentation tool we were able to achieve 98 identifying the L1 vertebra, with an average error of 4.5 mm in the craniocaudal level. We next developed an algorithm which performs iterative instance segmentation and classification of the entire spine with a 3D U-Net. We found the instance based approach was able to yield better segmentations of nearly the entire spine, but had lower classification accuracy for L1.

READ FULL TEXT

page 5

page 6

research
12/31/2019

Computing L1 Straight-Line Fits to Data (Part 1)

The initial remarks in this technical report are primarily for those not...
research
06/24/2020

NINEPINS: Nuclei Instance Segmentation with Point Annotations

Deep learning-based methods are gaining traction in digital pathology, w...
research
04/10/2019

Weakly Supervised Learning of Instance Segmentation with Inter-pixel Relations

This paper presents a novel approach for learning instance segmentation ...
research
10/10/2014

Compressed Sensing With Side Information: Geometrical Interpretation and Performance Bounds

We address the problem of Compressed Sensing (CS) with side information....
research
06/26/2019

DASGAN -- Joint Domain Adaptation and Segmentation for the Analysis of Epithelial Regions in Histopathology PD-L1 Images

The analysis of the tumor environment on digital histopathology slides i...
research
03/05/2018

Path Aggregation Network for Instance Segmentation

The way that information propagates in neural networks is of great impor...
research
12/20/2018

Reducing Sampling Ratios and Increasing Number of Estimates Improve Bagging in Sparse Regression

Bagging, a powerful ensemble method from machine learning, improves the ...

Please sign up or login with your details

Forgot password? Click here to reset