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基于反问题方法的 GaAs 光子计数能谱乳腺摄影对乳腺微钙化的分类。

Classification of breast microcalcifications with GaAs photon-counting spectral mammography using an inverse problem approach.

机构信息

Division of Imaging, Diagnostics, and Software Reliability, Office of Science and Engineering Laboratories, Center for Devices and Radiological Health, U.S. Food and Drug Administration, Silver Spring, MD 20993, United States of America.

DECTRIS Ltd, Baden, Switzerland.

出版信息

Biomed Phys Eng Express. 2023 Mar 7;9(3). doi: 10.1088/2057-1976/acb70f.

Abstract

The purpose of this study was to investigate the use of a Gallium Arsenide (GaAs) photon-counting spectral mammography system to differentiate between Type I and Type II calcifications. Type I calcifications, consisting of calcium oxalate dihydrate (CO) or weddellite compounds are more often associated with benign lesions in the breast, and Type II calcifications containing hydroxyapatite (HA) are associated with both benign and malignant lesions in the breast. To be able to differentiate between these two calcification types, it is necessary to be able to estimate the full spectrum of the x-ray beam transmitted through the breast. We propose a novel method for estimating the energy-dependent x-ray transmission fraction of a beam using a photon counting detector with a limited number of energy bins. Using the estimated x-ray transmission through microcalcifications, it was observed that calcification type can be accurately estimated with machine learning. The study was carried out on a custom-built laboratory benchtop system using the SANTIS 0804 GaAs detector prototype system from DECTRIS Ltd with two energy thresholds enabled. Four energy thresholds detector was simulated by taking two separate acquisitions in which two energy thresholds were enabled for each acquisition and set at (12 keV, 21 keV) and then (29 keV, 36 keV). Measurements were performed using BR3D (CIRS, Norfolk, VA) breast imaging phantoms mimicking 100% adipose and 100% glandular tissues swirled together in an approximate 50/50 ratio by weight with the addition of in-house-developed synthetic microcalcifications. First, an inverse problem-based approach was used to estimate the full energy x-ray transmission fraction factor using known basis transmission factors from varying thicknesses of aluminum and polymethyl methacrylate (PMMA). Second, the classification of Type I and Type II calcifications was performed using the estimated energy-dependent transmission fraction factors for the pixels containing calcifications. The results were analyzed using receiver operating characteristic (ROC) analysis and demonstrated good discrimination performance with the area under the ROC curve greater than 84%. They indicated that GaAs photon-counting spectral mammography has potential use as a non-invasive method for discrimination between Type I and Type II calcifications. Results from this study suggested that GaAs-based spectral mammography could serve as a non-invasive measure for ruling out malignancy of calcifications found in the breast. Additional studies in more clinically realistic conditions involving breast tissues samples with smaller microcalcification specks should be performed to further explore the feasibility of this approach.

摘要

这项研究的目的是探讨使用砷化镓(GaAs)光子计数光谱乳腺摄影系统来区分 I 型和 II 型钙化。I 型钙化由二水草酸钙(CO)或鸟粪石化合物组成,通常与乳房中的良性病变有关,而含有羟基磷灰石(HA)的 II 型钙化与乳房中的良性和恶性病变都有关。为了能够区分这两种钙化类型,有必要能够估计穿过乳房的 X 射线束的全光谱。我们提出了一种使用具有有限数量能量-bin 的光子计数探测器来估计光束能量相关 X 射线透射分数的新方法。使用通过微钙化估计的 X 射线透射率,观察到可以使用机器学习准确估计钙化类型。该研究是在使用 DECTRIS Ltd 的 SANTIS 0804 GaAs 探测器原型系统的定制实验室台式系统上进行的,该系统启用了两个能量阈值。通过对两个单独的采集进行操作,模拟了具有四个能量阈值的探测器,其中每个采集都启用了两个能量阈值,并将其设置为(12keV,21keV)和(29keV,36keV)。使用 BR3D(CIRS,弗吉尼亚州诺福克)乳房成像体模进行测量,该体模模拟了 100%脂肪和 100%腺体组织的混合物,按重量混合在一起,比例约为 50/50,并添加了内部开发的合成微钙化。首先,使用基于逆问题的方法使用从不同厚度的铝和聚甲基丙烯酸甲酯(PMMA)中获得的已知基础透射因子来估计全能量 X 射线透射分数因子。其次,使用包含钙化的像素的估计的能量相关透射分数因子对 I 型和 II 型钙化进行分类。使用接收器操作特性(ROC)分析对结果进行了分析,ROC 曲线下的面积大于 84%,表明其具有良好的区分性能。这表明 GaAs 光子计数光谱乳腺摄影术具有作为区分 I 型和 II 型钙化的非侵入性方法的潜力。这项研究的结果表明,基于 GaAs 的光谱乳腺摄影术可作为排除乳房中发现的钙化恶性的非侵入性手段。应该在涉及乳房组织样本和更小的微钙化斑点的更临床现实条件下进行更多的研究,以进一步探索这种方法的可行性。

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