Self-accumulative Vision Transformer for Bone Age Assessment Using the
Sauvegrain Method
- URL: http://arxiv.org/abs/2303.16557v2
- Date: Thu, 30 Mar 2023 05:14:12 GMT
- Title: Self-accumulative Vision Transformer for Bone Age Assessment Using the
Sauvegrain Method
- Authors: Hong-Jun Choi, Dongbin Na, Kyungjin Cho, Byunguk Bae, Seo Taek Kong,
Hyunjoon An
- Abstract summary: This study presents a novel approach to bone age assessment (BAA) using a multi-view, multi-task classification model based on the Sauvegrain method.
A self-accumulative vision transformer (SAT) that mitigates anisotropic behavior is proposed.
- Score: 3.5814626468819046
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This study presents a novel approach to bone age assessment (BAA) using a
multi-view, multi-task classification model based on the Sauvegrain method. A
straightforward solution to automating the Sauvegrain method, which assesses a
maturity score for each landmark in the elbow and predicts the bone age, is to
train classifiers independently to score each region of interest (RoI), but
this approach limits the accessible information to local morphologies and
increases computational costs. As a result, this work proposes a
self-accumulative vision transformer (SAT) that mitigates anisotropic behavior,
which usually occurs in multi-view, multi-task problems and limits the
effectiveness of a vision transformer, by applying token replay and regional
attention bias. A number of experiments show that SAT successfully exploits the
relationships between landmarks and learns global morphological features,
resulting in a mean absolute error of BAA that is 0.11 lower than that of the
previous work. Additionally, the proposed SAT has four times reduced parameters
than an ensemble of individual classifiers of the previous work. Lastly, this
work also provides informative implications for clinical practice, improving
the accuracy and efficiency of BAA in diagnosing abnormal growth in
adolescents.
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