Segmentation and Feature Extraction of Hand Radiographs for Bone Age Assessment
Date
2018
Authors
Simu, Shreyas A.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
The Bone Age is a fairly reliable measure of persons growth and maturation
of skeleton. Bone age assessment (BAA) has been a standard procedure to
predict the age of a person from hand radiograph. The difference between
chronological age and bone age indicates the presence of endocrinological
problems. The automated bone age assessment system (ABAA) based on
Tanner and Whitehouse method (TW3) requires monitoring the growth of
radius-ulna and short bones (phalanges) of a left hand. The Tanner and
Whitehouse - 3 (TW3) method involves assigning scores to the bones of
interest of left hand and assessing the age of a person using the aggregate
of scores. Due to the complexity and involved processing time, it is difficult
for pediatricians to use the TW3 method in clinics. Hence, automating
the whole procedure avoids human error at the same time reduces the processing time.
This thesis investigates design and development of ABAA system to predict bone age of a person from hand radiograph. Fully ABAA system
consists of 5 main stages which are (1)Pre-processing, (2)ROI extraction,
(3)Segmentation, (4)Feature extraction and (5)Classification. In this context, two fully automatic extraction methods are proposed for the region
of interest of phalanges (PROI) and radius-ulna bones (RUROI) using the
left-hand radiograph. Experimental results demonstrate that fully automated PROI and RUROI extraction methods are simple, accurate and fast
because underlying mechanism is free from complex mathematical procedure.
Segmentation of hand bones plays a vital role in process of ABAA, though
it is a challenging task to segment bones from the soft tissue. The problem arises because of overlapping pixel intensities between the bone region
and soft tissue region and also overlapping pixels between soft tissue region and background. Hence, there is a need for a robust segmentation
technique. In this context, two segmentation techniques are proposed, one
for extracted PROI images and other for RUROI images. Quantitative
ivand qualitative results of proposed segmentation techniques are evaluated
and compared with other state-of-the-art segmentation techniques. The
segmentation accuracy achieved by proposed segmentation techniques is
94 percent and is 97 percent on PROI and RUROI extracted images respectively. Medical experts have also validated the qualitative results of
proposed segmentation techniques. Experimental results reveal that proposed techniques provide higher segmentation accuracy as compared to
the other state-of-the-art segmentation techniques.
Further, the development of an ABAA system requires robust feature extraction and efficient classification methods. In this context, this thesis implements and analyzes three different feature extraction methods namely
texture feature analysis, Histogram of Oriented Gradients (HOG) and Bag
of Features (BoF) methods on segmented PROI images. Also, three different classifiers namely Artificial Neural Networks (ANN), Support Vector
Machines (SVM), and Random Forest classifier are implemented to evaluate the performance of extracted features. Further, experimental results of
BoF with random forest classifier yields a mean error (Merr) of 0.58 years
and root mean square error (RMSE) of 0.77 years for the bone age range of
0-18 years and outperforms other existing BAA methods. Finally, experimental results have also proved that the use of gender bias improves the
classification performance. The best performance is obtained from ring,
middle and index fingers. Hence, the proposed fully automated technique
can be used for bone age assessment of a person with enhanced accuracy.
Description
Keywords
Department of Electronics and Communication Engineering, Automated Bone Age Assessment, Hand Bone Segmentation, Extraction of phalanges, radius and ulna bones, Edge-based Segmentation, Feature extraction and Classification