Department of Preventative Medicine and Community Health, The University of Texas Medical Branch, Galveston, TX 77555-1109, USA.
Phys Med Biol. 2012 Nov 7;57(21):6903-27. doi: 10.1088/0031-9155/57/21/6903. Epub 2012 Oct 9.
Women with mostly mammographically dense fibroglandular tissue (breast density, BD) have a four- to six-fold increased risk for breast cancer compared to women with little BD. BD is most frequently estimated from two-dimensional (2D) views of mammograms by a histogram segmentation approach (HSM) and more recently by a mathematical algorithm consisting of mammographic imaging parameters (MATH). Two non-invasive clinical magnetic resonance imaging (MRI) protocols: 3D gradient-echo (3DGRE) and short tau inversion recovery (STIR) were modified for 3D volumetric reconstruction of the breast for measuring fatty and fibroglandular tissue volumes by a Gaussian-distribution curve-fitting algorithm. Replicate breast exams (N = 2 to 7 replicates in six women) by 3DGRE and STIR were highly reproducible for all tissue-volume estimates (coefficients of variation <5%). Reliability studies compared measurements from four methods, 3DGRE, STIR, HSM, and MATH (N = 95 women) by linear regression and intra-class correlation (ICC) analyses. Rsqr, regression slopes, and ICC, respectively, were (1) 0.76-0.86, 0.8-1.1, and 0.87-0.92 for %-gland tissue, (2) 0.72-0.82, 0.64-0.96, and 0.77-0.91, for glandular volume, (3) 0.87-0.98, 0.94-1.07, and 0.89-0.99, for fat volume, and (4) 0.89-0.98, 0.94-1.00, and 0.89-0.98, for total breast volume. For all values estimated, the correlation was stronger for comparisons between the two MRI than between each MRI versus mammography, and between each MRI versus MATH data than between each MRI versus HSM data. All ICC values were >0.75 indicating that all four methods were reliable for measuring BD and that the mathematical algorithm and the two complimentary non-invasive MRI protocols could objectively and reliably estimate different types of breast tissues.
大多数乳腺组织呈纤维腺体状密集(乳腺密度,BD)的女性患乳腺癌的风险比乳腺密度低的女性高 4 至 6 倍。BD 最常通过直方图分割方法(HSM)从二维(2D)乳房 X 光片进行估计,最近也通过包含乳房 X 光成像参数的数学算法(MATH)进行估计。两种非侵入性临床磁共振成像(MRI)方案:3D 梯度回波(3DGRE)和短 tau 反转恢复(STIR)被修改为用于 3D 容积重建乳房,通过高斯分布曲线拟合算法测量脂肪和纤维腺体组织体积。通过 3DGRE 和 STIR 进行的重复乳房检查(6 名女性中 2 到 7 个重复)对所有组织体积估计具有高度可重复性(变异系数<5%)。可靠性研究通过线性回归和组内相关(ICC)分析比较了来自四种方法(3DGRE、STIR、HSM 和 MATH)的测量值(N=95 名女性)。分别为(1)%腺体组织的 Rsqr、回归斜率和 ICC 为 0.76-0.86、0.8-1.1 和 0.87-0.92,(2)腺体体积的 Rsqr、回归斜率和 ICC 分别为 0.72-0.82、0.64-0.96 和 0.77-0.91,(3)脂肪体积的 Rsqr、回归斜率和 ICC 分别为 0.87-0.98、0.94-1.07 和 0.89-0.99,(4)总乳房体积的 Rsqr、回归斜率和 ICC 分别为 0.89-0.98、0.94-1.00 和 0.89-0.98。对于所有估计值,MRI 之间的比较比每个 MRI 与乳房 X 光之间的比较以及每个 MRI 与 MATH 数据之间的比较具有更强的相关性,而每个 MRI 与 HSM 数据之间的比较则具有更强的相关性。所有 ICC 值均>0.75,表明所有四种方法均可靠地用于测量 BD,并且数学算法和两种互补的非侵入性 MRI 方案可客观可靠地估计不同类型的乳房组织。