基于视觉变换和卷积神经网络特征的乳腺癌分子亚型分类。

IF 3 3区 医学 Q2 ONCOLOGY
Chiharu Kai, Hideaki Tamori, Tsunehiro Ohtsuka, Miyako Nara, Akifumi Yoshida, Ikumi Sato, Hitoshi Futamura, Naoki Kodama, Satoshi Kasai
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引用次数: 0

摘要

目的:确定乳腺癌的分子亚型有助于优化治疗策略,但通常需要侵入性穿刺活检。最近,非侵入性成像已成为一种很有前途的分类方法。磁共振成像通常用于此目的,因为它是三维的,信息量很大。相反,只有少数报告记录了乳房x光检查的使用。鉴于乳房x光检查是乳腺癌筛查的首选,使用它对分子亚型进行分类将允许在更大范围内进行早期干预。在这里,我们旨在通过视觉变换(Vision Transformer, ViT)和卷积神经网络(Convolutional Neural Network, CNN)对乳腺癌分子亚型进行分类,评估结合全局和局部乳房x线影像特征的有效性。方法:利用ViT和EfficientnetV2特征提取器计算二值分类的特征值,通过主成分分析进行维数压缩。使用LightGBM对每个分子亚型进行二元分类:三阴性、her2富集、管腔A和管腔b。结果:ViT和CNN联合使用比单独使用ViT或CNN准确率更高。三阴性亚型的敏感性非常高(0.900,f值= 0.818);而富her2亚型的f值和敏感性分别为0.720和0.750,luminal A亚型为0.765和0.867,luminal B亚型为0.614和0.711。结论:结合ViT和CNN在乳房x线照片上获得的特征,可以对分子亚型进行高准确率的分类。这种方法可以简化早期治疗流程和分诊,特别是对于预后不良的亚型,如三阴性乳腺癌。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classifying the molecular subtype of breast cancer using vision transformer and convolutional neural network features.

Purpose: Identification of the molecular subtypes in breast cancer allows to optimize treatment strategies, but usually requires invasive needle biopsy. Recently, non-invasive imaging has emerged as promising means to classify them. Magnetic resonance imaging is often used for this purpose because it is three-dimensional and highly informative. Instead, only a few reports have documented the use of mammograms. Given that mammography is the first choice for breast cancer screening, using it to classify molecular subtypes would allow for early intervention on a much wider scale. Here, we aimed to evaluate the effectiveness of combining global and local mammographic features by using Vision Transformer (ViT) and Convolutional Neural Network (CNN) to classify molecular subtypes in breast cancer.

Methods: The feature values for binary classification were calculated using the ViT and EfficientnetV2 feature extractors, followed by dimensional compression via principal component analysis. LightGBM was used to perform binary classification of each molecular subtype: triple-negative, HER2-enriched, luminal A, and luminal B.

Results: The combination of ViT and CNN achieved higher accuracy than ViT or CNN alone. The sensitivity for triple-negative subtypes was very high (0.900, with F-value = 0.818); whereas F-value and sensitivity were 0.720 and 0.750 for HER2-enriched, 0.765 and 0.867 for luminal A, and 0.614 and 0.711 for luminal B subtypes, respectively.

Conclusion: Features obtained from mammograms by combining ViT and CNN allow the classification of molecular subtypes with high accuracy. This approach could streamline early treatment workflows and triage, especially for poor prognosis subtypes such as triple-negative breast cancer.

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来源期刊
CiteScore
6.80
自引率
2.60%
发文量
342
审稿时长
1 months
期刊介绍: Breast Cancer Research and Treatment provides the surgeon, radiotherapist, medical oncologist, endocrinologist, epidemiologist, immunologist or cell biologist investigating problems in breast cancer a single forum for communication. The journal creates a "market place" for breast cancer topics which cuts across all the usual lines of disciplines, providing a site for presenting pertinent investigations, and for discussing critical questions relevant to the entire field. It seeks to develop a new focus and new perspectives for all those concerned with breast cancer.
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