初步结果:将卷积神经网络架构作为辅助临床工具应用于墨西哥妇女乳房 X 线照相术筛查的比较

IF 1.6 4区 医学 Q4 ENGINEERING, BIOMEDICAL
Samara Acosta-Jiménez, Susana Aideé González-Chávez, Javier Camarillo-Cisneros, César Pacheco-Tena, Mirelle Barcenas-López, Laura Esther González-Lozada, Claudia Hernández-Orozco, Jesús Humberto Burboa-Delgado, Rosa Elena Ochoa-Albíztegui
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引用次数: 0

摘要

目的乳腺成像是早期检测乳腺癌的首选方式。深度学习,特别是使用卷积神经网络(CNN),在对包括乳腺癌在内的疾病进行成像分类方面取得了非凡的成果。用于训练 CNN 的图像因多种因素而异,如成像技术、成像设备和研究人群;这些因素极大地影响了 CNN 模型的准确性。本研究的目的是开发一种新型 CNN,用于将乳房 X 线照片分类为良性或恶性,并利用迁移学习将其效用与文献中流行的预训练 CNN 进行比较。所有 CNN 都经过了训练,以使用创建的墨西哥妇女数据库(MAMMOMX-PABIOM)和英国妇女公共数据库(MIAS)中的乳房 X 射线照片检测乳房 X 射线照片上的乳腺癌。方法建立了一个数据库(MAMMOMX-PABIOM),其中包括来自墨西哥 4 家医院的 235 名墨西哥患者的 1070 张乳房 X 射线照片。研究还使用了乳腺图像分析协会(MIAS)公共数据库中的乳腺图像,该数据库包括英国国家乳腺筛查计划中的乳腺图像。研究人员开发了一种新型 CNN,并根据不同的训练数据配置对其进行了训练;将新型 CNN 生成的模型的准确率与使用迁移学习建立的更先进的预训练 CNN(DenseNet121、MobileNetV2、ResNet 50 和 VGG16)生成的模型进行了比较。相比之下,新型 CNN 在使用数据配置 A6(包括来自 MAMMOMX-PABIOM 数据库和 MIAS 数据库的数据)进行训练时,获得了 99.14% 的更高准确率。与使用迁移学习进行预训练的 CNN 的准确率相比,新型 CNN 在所有配置的训练数据中都获得了更高的准确率。此外,这项研究还填补了一个空白,即既没有墨西哥妇女乳房 X 光照片的国家数据库,也没有针对这一人群的乳房 X 光照片良性或恶性分类的深度学习工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Preliminary Results: Comparison of Convolutional Neural Network Architectures as an Auxiliary Clinical Tool Applied to Screening Mammography in Mexican Women

Preliminary Results: Comparison of Convolutional Neural Network Architectures as an Auxiliary Clinical Tool Applied to Screening Mammography in Mexican Women

Purpose

Mammography is the modality of choice for the early detection of breast cancer. Deep learning, using convolutional neural networks (CNNs) specifically, have achieved extraordinary results in the classification of diseases, including breast cancer, on imaging. The images used to train a CNN varies based on several factors, such as imaging technique, imaging equipment, and study population; these factors significantly affect the accuracy of the CNN models. The aim of this study was to develop a novel CNN for the classification of mammograms as benign or malignant and to compare its utility to that of popular pre-trained CNNs in the literature using transfer learning. All CNNs were trained to detect breast cancer on mammograms using mammograms from a created database of Mexican women (MAMMOMX-PABIOM) and from a public database of UK women (MIAS).

Methods

A database (MAMMOMX-PABIOM) was built comprising 1,070 mammography images of 235 Mexican patients from 4 hospitals in Mexico. The study also used mammographic images from the Mammographic Image Analysis Society (MIAS) public database, which comprises mammography images from the UK National Breast Screening Programme. A novel CNN was developed and trained based on different configurations of training data; the accuracy of the models resulting from the novel CNN were compared with models resulting from more advanced pre-trained CNNs (DenseNet121, MobileNetV2, ResNet 50, VGG16) which were built using transfer learning.

Results

Of the models resulting from pre-trained CNNs using transfer learning, the model based on MobileNetV2 and training data from the MAMMOMX-PABIOM database achieved the highest validation accuracy of 70.10%. In comparison, the novel CNN, when trained with the data configuration A6, which comprises data from both the MAMMOMX-PABIOM database and the MIAS database, produced a much higher accuracy of 99.14%.

Conclusion

Although transfer learning is a widely used technique when training, data is scarce. The novel CNN produced much higher accuracy values across all configurations of training data compared to the accuracy values of pre-trained CNNs using transfer learning. In addition, this study addresses the gap in that neither a national database of mammograms of Mexican women exists, nor a deep learning tool for the classification of mammograms as benign or malignant that is focused on this population.

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来源期刊
CiteScore
4.30
自引率
5.00%
发文量
81
审稿时长
3 months
期刊介绍: The purpose of Journal of Medical and Biological Engineering, JMBE, is committed to encouraging and providing the standard of biomedical engineering. The journal is devoted to publishing papers related to clinical engineering, biomedical signals, medical imaging, bio-informatics, tissue engineering, and so on. Other than the above articles, any contributions regarding hot issues and technological developments that help reach the purpose are also included.
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