Development of the algorithm for differentiating bone metastases and
trauma of the ribs in bone scintigraphy and demonstration of visual evidence
of the algorithm -- Using only anterior bone scan view of thorax
- URL: http://arxiv.org/abs/2110.00130v1
- Date: Thu, 30 Sep 2021 23:55:31 GMT
- Title: Development of the algorithm for differentiating bone metastases and
trauma of the ribs in bone scintigraphy and demonstration of visual evidence
of the algorithm -- Using only anterior bone scan view of thorax
- Authors: Shigeaki Higashiyama, Yukino Ohta, Yutaka Katayama, Atsushi Yoshida,
Joji Kawabe
- Abstract summary: There is no report of an AI model that determines the accumulation of ribs in bone metastases and trauma only using the anterior image of thorax of bone scintigraphy.
We developed an algorithm to classify and diagnose whether RI accumulation on the ribs is bone metastasis or trauma using only anterior bone scan view of thorax.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Background: Although there are many studies on the application of artificial
intelligence (AI) models to medical imaging, there is no report of an AI model
that determines the accumulation of ribs in bone metastases and trauma only
using the anterior image of thorax of bone scintigraphy. In recent years, a
method for visualizing diagnostic grounds called Gradient-weighted Class
Activation Mapping (Grad-CAM) has been proposed in the area of diagnostic
images using Deep Convolutional Neural Network (DCNN). As far as we have
investigated, there are no reports of visualization of the diagnostic basis in
bone scintigraphy. Our aim is to visualize the area of interest of DCNN, in
addition to developing an algorithm to classify and diagnose whether RI
accumulation on the ribs is bone metastasis or trauma using only anterior bone
scan view of thorax. Material and Methods: For this retrospective study, we
used 838 patients who underwent bone scintigraphy to search for bone metastases
at our institution. A frontal chest image of bone scintigraphy was used to
create the algorithm. We used 437 cases with bone metastases on the ribs and
401 cases with abnormal RI accumulation due to trauma. Result: AI model was
able to detect bone metastasis lesion with a sensitivity of 90.00% and accuracy
of 86.5%. And it was possible to visualize the part that the AI model focused
on with Grad-CAM.
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