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基于深度学习的原始和处理后的数字乳腺X线摄影图像中的乳腺区域分割:跨视图和供应商的泛化

Deep learning-based breast region segmentation in raw and processed digital mammograms: generalization across views and vendors.

作者信息

Verboom Sarah D, Caballo Marco, Peters Jim, Gommers Jessie, van den Oever Daan, Broeders Mireille J M, Teuwen Jonas, Sechopoulos Ioannis

机构信息

Radboud University Medical Center, Department of Medical Imaging, Nijmegen, The Netherlands.

Radboud University Medical Center, Department for Health Evidence, Nijmegen, The Netherlands.

出版信息

J Med Imaging (Bellingham). 2024 Jan;11(1):014001. doi: 10.1117/1.JMI.11.1.014001. Epub 2023 Dec 28.

Abstract

PURPOSE

We developed a segmentation method suited for both raw (for processing) and processed (for presentation) digital mammograms (DMs) that is designed to generalize across images acquired with systems from different vendors and across the two standard screening views.

APPROACH

A U-Net was trained to segment mammograms into background, breast, and pectoral muscle. Eight different datasets, including two previously published public sets and six sets of DMs from as many different vendors, were used, totaling 322 screen film mammograms (SFMs) and 4251 DMs (2821 raw/processed pairs and 1430 only processed) from 1077 different women. Three experiments were done: first training on all SFM and processed images, second also including all raw images in training, and finally testing vendor generalization by leaving one dataset out at a time.

RESULTS

The model trained on SFM and processed mammograms achieved a good overall performance regardless of projection and vendor, with a mean (±std. dev.) dice score of for all datasets combined. When raw images were included in training, the mean (±std. dev.) dice score for the raw images was and for the processed images was . Testing on a dataset with processed DMs from a vendor that was excluded from training resulted in a difference in mean dice varying between to from that of the fully trained model.

CONCLUSIONS

The proposed segmentation method yields accurate overall segmentation results for both raw and processed mammograms independent of view and vendor. The code and model weights are made available.

摘要

目的

我们开发了一种适用于原始(用于处理)和已处理(用于呈现)数字乳腺X线摄影(DM)的分割方法,该方法旨在推广到使用不同供应商系统获取的图像以及两种标准筛查视图。

方法

训练一个U-Net将乳腺X线摄影图像分割为背景、乳房和胸肌。使用了八个不同的数据集,包括两个先前发表的公共数据集以及来自六个不同供应商的六组DM,总共322张屏-片乳腺X线摄影(SFM)图像和4251张DM图像(2821对原始/已处理图像和1430张仅已处理图像),来自1077名不同女性。进行了三个实验:首先在所有SFM和已处理图像上进行训练,其次在训练中还包括所有原始图像,最后通过每次留出一个数据集来测试供应商泛化能力。

结果

在SFM和已处理乳腺X线摄影图像上训练的模型无论投影和供应商如何都取得了良好的总体性能,所有数据集组合的平均(±标准差)骰子系数得分是 。当在训练中包含原始图像时,原始图像的平均(±标准差)骰子系数得分是 ,已处理图像的是 。在一个包含来自未参与训练的供应商的已处理DM的数据集上进行测试,平均骰子系数与完全训练模型的差异在 到 之间。

结论

所提出的分割方法对于原始和已处理的乳腺X线摄影图像都能产生准确的总体分割结果,与视图和供应商无关。代码和模型权重已公开。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b990/10753125/681f427f2e1b/JMI-011-014001-g001.jpg

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