Publication:
Current status and open problems in bone age estimation

Loading...
Thumbnail Image

Date

2021-05-01

Journal Title

Journal ISSN

Volume Title

Publisher

Research Projects

Organizational Units

Journal Issue

Abstract

Bone age is an effective indicator for diagnosing various diseases and to determine bone ages of livings. The earliest well-known studies belong to the Greulich-Pyle and Tanner-Whitehouse, as a result bone age development atlases were published using hand and wrist radiography. Atlases works well for the younger ages between 0-18, while they have deviations at elder ages. Kazuro Anhara and Takao Suzuki emphasized the importance of changes in pubic symphysis of pubic bones belonging to 20 to 40 years old cases who were not alive for further ages. All this researches focuses on the hand intensive works. However, automation of bone age detection using artificial intelligence techniques such as image processing of radiological images is important in order to prevent human side-effects on the evaluation, they are called automated methods. Some examples are automatic bone age estimation fully automatic with carpal bone segmentation using fuzzy classification, fuzzybased radius model for bone age estimation including image preprocessing, and neural network applications mostly seen on the literature. It is obvious, artificial intelligence promises faster bone age estimation and to minimize different evaluations between experts. However, new studies are needed for applying new techniques (deep learning) efficiently and discovering new bones to estimate elder ages accurately in the field of forensic informatics especially.

Description

Keywords

Sağlık Bilimleri, Health Sciences, Klinik Tıp (MED), Clinical Medicine (MED)

Citation

Esen B., Turan M., Turan Yurtsever N., Buğdaycı O., "Current Status and Open Problems in Bone Age Estimation", Artificial Intelligence Theory and Applications, cilt.2, ss.308-318, 2021

Collections