Deep learning for early detection of pathological changes in X-ray bone microstructures: case of osteoarthritis
Abstract Texture features are designed to quantitatively evaluate patterns of spatial distribution of image pixels for purposes of image analysis and interpretation. Unexplained variations in the texture patterns often lead to misinterpretation and undesirable consequences in medical image analysis....
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Nature Publishing Group
2021-01-01
|
Series: | Scientific Reports |
Online Access: | https://doi.org/10.1038/s41598-021-81786-4 |
id |
doaj-ea0ab033e796475aa16be1641f1a5396 |
---|---|
record_format |
Article |
spelling |
doaj-ea0ab033e796475aa16be1641f1a53962021-01-31T16:25:40ZengNature Publishing GroupScientific Reports2045-23222021-01-011111910.1038/s41598-021-81786-4Deep learning for early detection of pathological changes in X-ray bone microstructures: case of osteoarthritisLivija Jakaite0Vitaly Schetinin1Jiří Hladůvka2Sergey Minaev3Aziz Ambia4Wojtek Krzanowski5School of Computer Science and Technology, University of BedfordshireSchool of Computer Science and Technology, University of BedfordshirePattern Recognition and Image Processing Group (PRIP), TU WienDepartment of Paediatric Surgery, Stavropol State Medical UniversityFusion RadiologyCollege of Engineering, Mathematics and Physical Science, University of ExeterAbstract Texture features are designed to quantitatively evaluate patterns of spatial distribution of image pixels for purposes of image analysis and interpretation. Unexplained variations in the texture patterns often lead to misinterpretation and undesirable consequences in medical image analysis. In this paper we explore the ability of machine learning (ML) methods to design a radiology test of Osteoarthritis (OA) at early stage when the number of patients’ cases is small. In our experiments we use high-resolution X-ray images of knees in patients which were identified with Kellgren–Lawrence scores progressing from 1. The existing ML methods have provided a limited diagnostic accuracy, whilst the proposed Group Method of Data Handling strategy of Deep Learning has significantly extended the diagnostic test. The comparative experiments demonstrate that the proposed framework using the Zernike-based texture features has significantly improved the diagnostic accuracy on average by 11%. This allows us to conclude that the designed model for early diagnostic of OA will provide more accurate radiology tests, although new study is required when a large number of patients’ cases will be available.https://doi.org/10.1038/s41598-021-81786-4 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Livija Jakaite Vitaly Schetinin Jiří Hladůvka Sergey Minaev Aziz Ambia Wojtek Krzanowski |
spellingShingle |
Livija Jakaite Vitaly Schetinin Jiří Hladůvka Sergey Minaev Aziz Ambia Wojtek Krzanowski Deep learning for early detection of pathological changes in X-ray bone microstructures: case of osteoarthritis Scientific Reports |
author_facet |
Livija Jakaite Vitaly Schetinin Jiří Hladůvka Sergey Minaev Aziz Ambia Wojtek Krzanowski |
author_sort |
Livija Jakaite |
title |
Deep learning for early detection of pathological changes in X-ray bone microstructures: case of osteoarthritis |
title_short |
Deep learning for early detection of pathological changes in X-ray bone microstructures: case of osteoarthritis |
title_full |
Deep learning for early detection of pathological changes in X-ray bone microstructures: case of osteoarthritis |
title_fullStr |
Deep learning for early detection of pathological changes in X-ray bone microstructures: case of osteoarthritis |
title_full_unstemmed |
Deep learning for early detection of pathological changes in X-ray bone microstructures: case of osteoarthritis |
title_sort |
deep learning for early detection of pathological changes in x-ray bone microstructures: case of osteoarthritis |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2021-01-01 |
description |
Abstract Texture features are designed to quantitatively evaluate patterns of spatial distribution of image pixels for purposes of image analysis and interpretation. Unexplained variations in the texture patterns often lead to misinterpretation and undesirable consequences in medical image analysis. In this paper we explore the ability of machine learning (ML) methods to design a radiology test of Osteoarthritis (OA) at early stage when the number of patients’ cases is small. In our experiments we use high-resolution X-ray images of knees in patients which were identified with Kellgren–Lawrence scores progressing from 1. The existing ML methods have provided a limited diagnostic accuracy, whilst the proposed Group Method of Data Handling strategy of Deep Learning has significantly extended the diagnostic test. The comparative experiments demonstrate that the proposed framework using the Zernike-based texture features has significantly improved the diagnostic accuracy on average by 11%. This allows us to conclude that the designed model for early diagnostic of OA will provide more accurate radiology tests, although new study is required when a large number of patients’ cases will be available. |
url |
https://doi.org/10.1038/s41598-021-81786-4 |
work_keys_str_mv |
AT livijajakaite deeplearningforearlydetectionofpathologicalchangesinxraybonemicrostructurescaseofosteoarthritis AT vitalyschetinin deeplearningforearlydetectionofpathologicalchangesinxraybonemicrostructurescaseofosteoarthritis AT jirihladuvka deeplearningforearlydetectionofpathologicalchangesinxraybonemicrostructurescaseofosteoarthritis AT sergeyminaev deeplearningforearlydetectionofpathologicalchangesinxraybonemicrostructurescaseofosteoarthritis AT azizambia deeplearningforearlydetectionofpathologicalchangesinxraybonemicrostructurescaseofosteoarthritis AT wojtekkrzanowski deeplearningforearlydetectionofpathologicalchangesinxraybonemicrostructurescaseofosteoarthritis |
_version_ |
1724316360755904512 |