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X 射线暗场射线照相术对乳腺钙化的鉴别分析。

Discrimination analysis of breast calcifications using x-ray dark-field radiography.

机构信息

Erlangen Centre for Astroparticle Physics (ECAP), Friedrich-Alexander-University Erlangen-Nuremberg, Erwin-Rommel-Str. 1, D-91058, Erlangen, Germany.

Institute of Pathology, Comprehensive Cancer Center Erlangen-EMN, University Hospital Erlangen, Friedrich-Alexander University Erlangen-Nuremberg, Erlangen, Germany.

出版信息

Med Phys. 2020 Apr;47(4):1813-1826. doi: 10.1002/mp.14043. Epub 2020 Feb 21.

Abstract

BACKGROUND

X-ray dark-field radiography could enhance mammography by providing more information on imaged tissue and microcalcifications. The dark field signal is a measure of small angle scattering and can thus provide additional information on the imaged materials. This information can be useful for material distinction of calcifications and the diagnosis of breast cancer by classifying benign and malign association of these calcifications.

METHODS

For this study, institutional review board approval was obtained. We present the evaluation of images acquired with interferometric grating-based x-ray imaging of 323 microcalcifications (166 malign and 157 benign associated) in freshly dissected breast tissue and compare the results to the information extracted in follow-up pathological evaluation. The number of imaged calcifications is sufficiently higher than in similar previous studies. Fourteen calcification properties were extracted from the digital images and used as predictors in three different models common in discrimination analysis namely a simple threshold model, a naive Bayes model and a linear regression model, which classify the calcifications as associated with a benign or suspicious finding. Three of these fourteen predictors have been newly defined in this work and are independent from the tissue background surrounding the microcalcifications. Using these predictors no background correction is needed, as in previous works in this field. The new predictors are the length of the first and second principle component of the absorption and dark-field data, as well as the angle between the first principle component and the dark-field axis. We called these predictors data length, data width, and data orientation.

RESULTS

In fourfold cross-validation malignancy of the imaged tissue was predicted. Models that take only classical absorption predictors into account reached a sensitivity of 53.3% at a specificity of 81.1%. For a combination of predictors that also include dark field information, a sensitivity of 63.2% and specificity of 80.8% were obtained. The included dark field information consisted of the newly introduced parameters, data orientation and data width.

CONCLUSIONS

While remaining at a similar specificity, the sensitivity, with which a trained model was able to distinguish malign from benign associated calcifications, was increased by 10% on including dark-field information. This suggests grating-based x-ray imaging as a promising clinical imaging method in the field of mammography.

摘要

背景

X 射线暗场射线照相术可以通过提供更多关于成像组织和微钙化的信息来增强乳房 X 线照相术。暗场信号是小角度散射的量度,因此可以提供有关成像材料的附加信息。这些信息可用于区分钙化的材料,并通过对这些钙化的良性和恶性关联进行分类来诊断乳腺癌。

方法

为此研究,获得了机构审查委员会的批准。我们介绍了基于干涉光栅的 X 射线成像对 323 个微钙化(166 个恶性和 157 个良性相关)的图像的评估,并将结果与后续病理评估中提取的信息进行了比较。成像的钙化数量远高于类似的先前研究。从数字图像中提取了 14 个钙化特性,并将其用作三种不同判别分析模型中的预测因子,这三种模型分别为简单阈值模型、朴素贝叶斯模型和线性回归模型,这些模型将钙化分类为与良性或可疑发现相关。这 14 个预测因子中的三个是在这项工作中定义的,并且与微钙化周围的组织背景无关。与该领域以前的工作不同,使用这些预测因子不需要进行背景校正。新的预测因子是吸收和暗场数据的第一和第二主成分的长度,以及第一主成分与暗场轴之间的角度。我们将这些预测因子称为数据长度、数据宽度和数据方向。

结果

在四重交叉验证中预测了成像组织的恶性程度。仅考虑经典吸收预测因子的模型在特异性为 81.1%的情况下达到了 53.3%的敏感性。对于同时包括暗场信息的预测因子组合,获得了 63.2%的敏感性和 80.8%的特异性。所包括的暗场信息包括新引入的参数,即数据方向和数据宽度。

结论

在保持相似特异性的同时,通过包括暗场信息,经过训练的模型能够区分恶性和良性相关钙化的敏感性提高了 10%。这表明基于光栅的 X 射线成像作为乳房 X 线照相术领域有前途的临床成像方法。

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