Affiliation:
1. Department of Electronics and Communication Engineering, Sethu Institute of Technology, Kariapatti, Tamilnadu,
India
Abstract
Abstract:
Osteoarthritis (OA) is a bone disease that mainly affects the cartilage. Even though there are
many diseases that are commonly noticed in bones, one of the most dangerous diseases is OA. The
breakdown of the cartilage bone is the cause of OA. According to the survey given by the National
Institute on Aging, it is revealed that most of the people in their old age are at the very advanced stage
of OA. X-ray is the common imaging modality for analysing the severity of Osteoarthritis. When
needed for advanced level of investigation, MRI scans and thermal images are also initialized. There
are numerous methods for the analysis of OA from different modalities in the very early stage. These
methods may be semi-automatic and automatic. But all the developed algorithms gave results based on
the space width, and texture feature only and didn’t provide any quantitative analysis based on any
standard parameters. The main aim of this work is to present major research challenges in different OA
detection methods, discuss different machine learning-based OA detection methods and analyse their
performance. The research gap in the existing methods such as an empirical model for the detection of
OA and the standard parameters for the measurement of bone marrow is discussed in the proposed
paper.
Publisher
Bentham Science Publishers Ltd.
Subject
Radiology, Nuclear Medicine and imaging
Reference26 articles.
1. Gornale Shivanand; A survey on exploration and classification of osteoarthritis using image processing techniques. Int J Res Sci Eng 2016,7,334-355
2. Gornale Shivanand; Dongare Pooja; Marathe Kiran; Hiremath Prakash; Determination of osteoarthritis using histogram of oriented gradients and multiclass SVM. IJIGSP 2017,9,41-49
3. Gornale Shivanand, Dongare Pooja, Uppin Archana, Hiremath Prakash. Study of segmentation techniques for assessment of osteoarthritis in knee X-ray images. IJIGSP 2019,11,48-57
4. Thengade A.; Rajurkar A.M.; Segmentation of Knee Bone Using MRI. Applied Computer Vision and Image Processing Advances in Intelligent Systems and Computing 2020,1155
5. Saitou T.; Kiyomatsu H.; Imamura T.; Quantitative morphometry for osteochondral tissues using second harmonic generation microscopy and image texture information. Sci Rep 2018,8(1),2826
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