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基于卷积神经网络的乳腺 X 光摄影质量控制的伪影图像评分。

Convolutional neural network -based phantom image scoring for mammography quality control.

机构信息

Department of Physics, University of Helsinki, P.O. Box 64, 00014, Helsinki, Finland.

HUS Diagnostic Center, Radiology, University of Helsinki and Helsinki University Hospital, P.O. Box 340, Haartmaninkatu 4, 00290, Helsinki, Finland.

出版信息

BMC Med Imaging. 2022 Dec 7;22(1):216. doi: 10.1186/s12880-022-00944-w.

Abstract

BACKGROUND

Visual evaluation of phantom images is an important, but time-consuming part of mammography quality control (QC). Consistent scoring of phantom images over the device's lifetime is highly desirable. Recently, convolutional neural networks (CNNs) have been applied to a wide range of image classification problems, performing with a high accuracy. The purpose of this study was to automate mammography QC phantom scoring task by training CNN models to mimic a human reviewer.

METHODS

Eight CNN variations consisting of three to ten convolutional layers were trained for detecting targets (fibres, microcalcifications and masses) in American College of Radiology (ACR) accreditation phantom images and the results were compared with human scoring. Regular and artificially degraded/improved QC phantom images from eight mammography devices were visually evaluated by one reviewer. These images were used in training the CNN models. A separate test set consisted of daily QC images from the eight devices and separately acquired images with varying dose levels. These were scored by four reviewers and considered the ground truth for CNN performance testing.

RESULTS

Although hyper-parameter search space was limited, an optimal network depth after which additional layers resulted in decreased accuracy was identified. The highest scoring accuracy (95%) was achieved with the CNN consisting of six convolutional layers. The highest deviation between the CNN and the reviewers was found at lowest dose levels. No significant difference emerged between the visual reviews and CNN results except in case of smallest masses.

CONCLUSION

A CNN-based automatic mammography QC phantom scoring system can score phantom images in a good agreement with human reviewers, and can therefore be of benefit in mammography QC.

摘要

背景

乳腺 X 光摄影质量控制(QC)中,对影像进行视觉评估是一个重要但耗时的部分。在设备的整个使用周期内对影像进行一致的评分是非常理想的。最近,卷积神经网络(CNN)已经被应用于广泛的图像分类问题,其准确率非常高。本研究的目的是通过训练 CNN 模型来模拟人类审阅者,从而实现乳腺 X 光摄影 QC 影像自动评分任务。

方法

训练了八种 CNN 变体,这些变体由三到十个卷积层组成,用于检测美国放射学院(ACR)认证影像中的目标(纤维、微钙化和肿块),并将结果与人工评分进行比较。一位审阅者对来自八台乳腺 X 光设备的常规和人为降级/改善的 QC 影像进行了视觉评估。这些图像用于训练 CNN 模型。一个独立的测试集由八台设备的日常 QC 图像和单独采集的具有不同剂量水平的图像组成。这些图像由四位审阅者进行评分,被视为 CNN 性能测试的真实值。

结果

尽管超参数搜索空间有限,但确定了最优的网络深度,之后增加的层会导致准确率降低。由六个卷积层组成的 CNN 得分最高(95%)。在最低剂量水平下,CNN 与审阅者之间的差异最大。除了最小的肿块外,CNN 结果与视觉评估之间没有明显差异。

结论

基于 CNN 的自动乳腺 X 光摄影 QC 影像评分系统可以与人类审阅者很好地达成一致,因此可以有益于乳腺 X 光摄影 QC。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7fc5/9727908/031fb644d92a/12880_2022_944_Fig1_HTML.jpg

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