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Published in: Annals of Nuclear Medicine 4/2022

01-04-2022 | Breast Cancer | Original Article

Deep learning for image classification in dedicated breast positron emission tomography (dbPET)

Authors: Yoko Satoh, Tomoki Imokawa, Tomoyuki Fujioka, Mio Mori, Emi Yamaga, Kanae Takahashi, Keiko Takahashi, Takahiro Kawase, Kazunori Kubota, Ukihide Tateishi, Hiroshi Onishi

Published in: Annals of Nuclear Medicine | Issue 4/2022

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Abstract

Objective

This study aimed to investigate and determine the best deep learning (DL) model to predict breast cancer (BC) with dedicated breast positron emission tomography (dbPET) images.

Methods

Of the 1598 women who underwent dbPET examination between April 2015 and August 2020, a total of 618 breasts on 309 examinations for 284 women who were diagnosed with BC or non-BC were analyzed in this retrospective study. The Xception-based DL model was trained to predict BC or non-BC using dbPET images from 458 breasts of 109 BCs and 349 non-BCs, which consisted of mediallateral and craniocaudal maximum intensity projection images, respectively. It was tested using dbPET images from 160 breasts of 43 BC and 117 non-BC. Two expert radiologists and two radiology residents also interpreted them. Sensitivity, specificity, and area under the receiver operating characteristic curves (AUCs) were calculated.

Results

Our DL model had a sensitivity and specificity of 93% and 93%, respectively, while radiologists had a sensitivity and specificity of 77–89% and 79–100%, respectively. Diagnostic performance of our model (AUC = 0.937) tended to be superior to that of residents (AUC = 0.876 and 0.868, p = 0.073 and 0.073), although not significantly different. Moreover, no significant differences were found between the model and experts (AUC = 0.983 and 0.941, p = 0.095 and 0.907).

Conclusions

Our DL model could be applied to dbPET and achieve the same diagnostic ability as that of experts.
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Metadata
Title
Deep learning for image classification in dedicated breast positron emission tomography (dbPET)
Authors
Yoko Satoh
Tomoki Imokawa
Tomoyuki Fujioka
Mio Mori
Emi Yamaga
Kanae Takahashi
Keiko Takahashi
Takahiro Kawase
Kazunori Kubota
Ukihide Tateishi
Hiroshi Onishi
Publication date
01-04-2022
Publisher
Springer Singapore
Published in
Annals of Nuclear Medicine / Issue 4/2022
Print ISSN: 0914-7187
Electronic ISSN: 1864-6433
DOI
https://doi.org/10.1007/s12149-022-01719-7

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