Development of Auto Dense-breast Classification on Mammography Images Using Image Similarity
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- Tsuchida Takuji
- Department of Radiological Technology, Saiseikai Kawaguchi General Hospital
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- Negishi Toru
- Department of Radiological Sciences, Graduate School of Human Health Sciences, Tokyo Metropolitan University
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- Takahashi Masato
- Department of Radiological Sciences, Ibaraki Prefectural University of Health Sciences
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- Mori Kazuya
- Department of Radiological Technology, Saiseikai Kawaguchi General Hospital Department of Radiological Sciences, Graduate School of Human Health Sciences, Tokyo Metropolitan University
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- Nishimura Ryuko
- Department of Radiology, Saiseikai Kawaguchi General Hospital
Bibliographic Information
- Other Title
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- 画像類似度を用いた自動マンモグラフィ乳房構成判定ソフトの開発
- ガゾウ ルイジド オ モチイタ ジドウ マンモグラフィ チブサ コウセイ ハンテイ ソフト ノ カイハツ
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Description
<p> Purpose: In Japan, radiologists perform qualitative visual classification to define four categories of mammary gland density. However, an objective estimation of mammary gland density is necessary. To address this, we developed an automatic classification software using image similarity.Methods: We prepared 741 cases of mediolateral oblique images (MLO) for evaluation, and they were diagnosed as normal among the mammography images taken at our hospital. Image matching was performed using the evaluation images and an image database for breast density determination. In this study, the image similarity used zero normalized cross-correlation (ZNCC) as an index. In addition, if the breast thickness is less than 30 mm and each breast density category ZNNC has the same value, the category is evaluated on the fat side. We compared the results of qualitative visual classification and automatic classification methods to assess consistency.Results: The agreement with the subjective breast composition classification was 78.5%, and the weighted kappa coefficient was 0.98. One mismatched case was evaluated on the higher density side with the same ZNCC value between categories and a breast thickness greater than 30 mm.Conclusion: Image similarity provides an excellent estimation of quantification of breast density. This system could contribute to improving the efficiency of the mammography screening system.</p>
Journal
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- Japanese Journal of Radiological Technology
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Japanese Journal of Radiological Technology 80 (6), 616-625, 2024
Japanese Society of Radiological Technology
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Details 詳細情報について
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- CRID
- 1390019070462616704
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- NII Book ID
- AN00197784
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- ISSN
- 18814883
- 03694305
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- NDL BIB ID
- 033614193
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- PubMed
- 38777755
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- Text Lang
- ja
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- Article Type
- journal article
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- Data Source
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- JaLC
- NDL Search
- Crossref
- PubMed
- OpenAIRE
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- Abstract License Flag
- Disallowed