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논문 리스트

2019
Multiple Inputs Deep Neural Networks for Bone Age Estimation Using Whole-Body Bone Scintigraphy Multiple Inputs Deep Neural Networks for Bone Age Estimation Using Whole-Body Bone Scintigraphy
한국멀티미디어학회
양형정, 김수형, 민정준 외 2명
논문정보
Publisher
멀티미디어학회논문지
Issue Date
2019-12-31
Keywords
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Citation
-
Source
-
Journal Title
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Volume
22
Number
12
Start Page
1376
End Page
1384
DOI
ISSN
12297771
Abstract
The cosmetic and behavioral aspects of aging have become increasingly evident over the years. Physical aging in people can easily be observed on their face, posture, voice, and gait. In contrast, bone aging only becomes apparent once significant bone degeneration manifests through degenerative bone diseases. Therefore, a more accurate and timely assessment of bone aging is needed so that the determinants and its mechanisms can be more effectively identified and ultimately optimized. This study proposed a deep learning approach to assess the bone age of an adult using whole-body bone scintigraphy. The proposed approach uses multiple inputs deep neural network architectures using a loss function, called mean-variance loss. The data set was collected from Chonnam National University Hwasun Hospital. The experiment results show the effectiveness of the proposed method with a mean absolute error of 3.40 years.

저자 정보

이름 소속
양형정 인공지능융합학과
김수형 인공지능학부
민정준 의학과