Literature DB >> 33947917

2-step deep learning model for landmarks localization in spine radiographs.

Andrea Cina1, Tito Bassani2, Matteo Panico2, Andrea Luca3, Youssef Masharawi4, Marco Brayda-Bruno3, Fabio Galbusera2.   

Abstract

In this work we propose to use Deep Learning to automatically calculate the coordinates of the vertebral corners in sagittal x-rays images of the thoracolumbar spine and, from those landmarks, to calculate relevant radiological parameters such as L1-L5 and L1-S1 lordosis and sacral slope. For this purpose, we used 10,193 images annotated with the landmarks coordinates as the ground truth. We realized a model that consists of 2 steps. In step 1, we trained 2 Convolutional Neural Networks to identify each vertebra in the image and calculate the landmarks coordinates respectively. In step 2, we refined the localization using cropped images of a single vertebra as input to another convolutional neural network and we used geometrical transformations to map the corners to the original image. For the localization tasks, we used a differentiable spatial to numerical transform (DSNT) as the top layer. We evaluated the model both qualitatively and quantitatively on a set of 195 test images. The median localization errors relative to the vertebrae dimensions were 1.98% and 1.68% for x and y coordinates respectively. All the predicted angles were highly correlated with the ground truth, despite non-negligible absolute median errors of 1.84°, 2.43° and 1.98° for L1-L5, L1-S1 and SS respectively. Our model is able to calculate with good accuracy the coordinates of the vertebral corners and has a large potential for improving the reliability and repeatability of measurements in clinical tasks.

Entities:  

Year:  2021        PMID: 33947917     DOI: 10.1038/s41598-021-89102-w

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  6 in total

1.  Definition of Normal Vertebral Morphometry Using NHANES-II Radiographs.

Authors:  John A Hipp; Trevor F Grieco; Patrick Newman; Charles A Reitman
Journal:  JBMR Plus       Date:  2022-09-27

Review 2.  Artificial intelligence and spine imaging: limitations, regulatory issues and future direction.

Authors:  Alexander L Hornung; Christopher M Hornung; G Michael Mallow; J Nicolas Barajas; Alejandro A Espinoza Orías; Fabio Galbusera; Hans-Joachim Wilke; Matthew Colman; Frank M Phillips; Howard S An; Dino Samartzis
Journal:  Eur Spine J       Date:  2022-01-27       Impact factor: 2.721

3.  Spinopelvic measurements of sagittal balance with deep learning: systematic review and critical evaluation.

Authors:  Tomaž Vrtovec; Bulat Ibragimov
Journal:  Eur Spine J       Date:  2022-03-12       Impact factor: 2.721

4.  Evaluation of Deep Learning-Based Automated Detection of Primary Spine Tumors on MRI Using the Turing Test.

Authors:  Hanqiang Ouyang; Fanyu Meng; Jianfang Liu; Xinhang Song; Yuan Li; Yuan Yuan; Chunjie Wang; Ning Lang; Shuai Tian; Meiyi Yao; Xiaoguang Liu; Huishu Yuan; Shuqiang Jiang; Liang Jiang
Journal:  Front Oncol       Date:  2022-03-11       Impact factor: 6.244

5.  Validation of a Patient-Specific Musculoskeletal Model for Lumbar Load Estimation Generated by an Automated Pipeline From Whole Body CT.

Authors:  Tanja Lerchl; Malek El Husseini; Amirhossein Bayat; Anjany Sekuboyina; Luis Hermann; Kati Nispel; Thomas Baum; Maximilian T Löffler; Veit Senner; Jan S Kirschke
Journal:  Front Bioeng Biotechnol       Date:  2022-07-11

Review 6.  Review of Machine Learning Applications Using Retinal Fundus Images.

Authors:  Yeonwoo Jeong; Yu-Jin Hong; Jae-Ho Han
Journal:  Diagnostics (Basel)       Date:  2022-01-06
  6 in total

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