Impact of Downsampling Size and Interpretation Methods on Diagnostic Accuracy in Deep Learning Model for Breast Cancer Using Digital Breast Tomosynthesis Images.

IF 1.6 4区 医学 Q2 MEDICINE, GENERAL & INTERNAL Tohoku Journal of Experimental Medicine Pub Date : 2025-03-06 Epub Date: 2024-07-25 DOI:10.1620/tjem.2024.J071
Ryusei Inamori, Tomofumi Kaneno, Ken Oba, Eichi Takaya, Daisuke Hirahara, Tomoya Kobayashi, Kurara Kawaguchi, Maki Adachi, Daiki Shimokawa, Kengo Takahashi, Hiroko Tsunoda, Takuya Ueda
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Abstract

While deep learning (DL) models have shown promise in breast cancer diagnosis using digital breast tomosynthesis (DBT) images, the impact of varying matrix sizes and image interpolation methods on diagnostic accuracy remains unclear. Understanding these effects is essential to optimize preprocessing steps for DL models, which can lead to more efficient training processes, improved diagnostic accuracy, and better utilization of computational resources. Our institutional review board approved this retrospective study and waived the requirement for informed consent from the patients. In this study, 499 patients (29-90 years old, mean age 50.5 years) who underwent breast tomosynthesis were included. We performed downsampling to 256 × 256, 128 × 128, 64 × 64, and 32 × 32 using five image interpolation methods: Nearest (NN), Bilinear (BL), Bicubic (BC), Hamming (HM), and Lanczos (LC). The diagnostic accuracy of the DL model was assessed by mean AUC with its 95% confidence interval (CI). DL models with downsampled images to 256 × 256 pixels using the LC interpolation method showed a significantly lower AUC than the original 512 × 512 pixels model. This decrease was also observed with the 128 × 128 pixels DL models using HM and LC methods. All interpolation methods showed a significant decrease in AUC for the 64 × 64 and 32 × 32 pixels DL models. Our results highlight the significant impact of downsampling size and interpolation methods on the diagnostic performance of DL models. Understanding these effects is essential for optimizing preprocessing steps, which can enhance the accuracy and reliability of breast cancer diagnosis using DBT images.

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使用数字乳腺断层合成图像的乳腺癌深度学习模型中,下采样大小和解释方法对诊断准确性的影响。
虽然深度学习(DL)模型在使用数字乳腺断层合成(DBT)图像进行乳腺癌诊断方面显示出前景,但不同矩阵大小和图像插值方法对诊断准确性的影响尚不清楚。了解这些影响对于优化深度学习模型的预处理步骤至关重要,这可以提高训练过程的效率,提高诊断准确性,并更好地利用计算资源。我们的机构审查委员会批准了这项回顾性研究,并放弃了患者知情同意的要求。本研究纳入499例(29-90岁,平均年龄50.5岁)行乳腺层析成像术的患者。采用Nearest (NN)、Bilinear (BL)、Bicubic (BC)、Hamming (HM)和Lanczos (LC)五种图像插值方法对256 × 256、128 × 128、64 × 64和32 × 32进行下采样。用平均AUC(95%置信区间)评估DL模型的诊断准确性。使用LC插值方法将下采样图像降至256 × 256像素的DL模型的AUC明显低于原始512 × 512像素模型。使用HM和LC方法的128 × 128像素DL模型也观察到这种下降。所有插值方法对64 × 64和32 × 32像素DL模型的AUC均有显著降低。我们的研究结果强调了降采样大小和插值方法对深度学习模型诊断性能的显著影响。了解这些影响对于优化预处理步骤至关重要,这可以提高DBT图像诊断乳腺癌的准确性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.60
自引率
4.50%
发文量
171
审稿时长
1 months
期刊介绍: Our mission is to publish peer-reviewed papers in all branches of medical sciences including basic medicine, social medicine, clinical medicine, nursing sciences and disaster-prevention science, and to present new information of exceptional novelty, importance and interest to a broad readership of the TJEM. The TJEM is open to original articles in all branches of medical sciences from authors throughout the world. The TJEM also covers the fields of disaster-prevention science, including earthquake archeology. Case reports, which advance significantly our knowledge on medical sciences or practice, are also accepted. Review articles, Letters to the Editor, Commentary, and News and Views will also be considered. In particular, the TJEM welcomes full papers requiring prompt publication.
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