Dartmouth College, Thayer School of Engineering, Hanover, New Hampshire, United States.
Dartmouth College, Geisel School of Medicine, Department of Pathology, Hanover, New Hampshire, United States.
J Biomed Opt. 2018 Sep;24(7):1-11. doi: 10.1117/1.JBO.24.7.071605.
This study aims to determine if light scatter parameters measured with spatial frequency domain imaging (SFDI) can accurately predict stromal, epithelial, and adipose fractions in freshly resected, unstained human breast specimens. An explicit model was developed to predict stromal, epithelial, and adipose fractions as a function of light scattering parameters, which was validated against a quantitative analysis of digitized histology slides for N = 31 specimens using leave-one-out cross-fold validation. Specimen mean stromal, epithelial, and adipose volume fractions predicted from light scattering parameters strongly correlated with those calculated from digitized histology slides (r = 0.90, 0.77, and 0.91, respectively, p-value <1 × 10 - 6). Additionally, the ratio of predicted epithelium to stroma classified malignant specimens with a sensitivity and specificity of 90% and 81%, respectively, and also classified all pixels in malignant lesions with 63% and 79%, at a threshold of 1. All specimens and pixels were classified as malignant, benign, or fat with 84% and 75% accuracy, respectively. These findings demonstrate how light scattering parameters acquired with SFDI can be used to accurately predict and spatially map stromal, epithelial, and adipose proportions in fresh unstained, human breast tissue, and suggest that these estimations could provide diagnostic value.
本研究旨在确定空间频域成像 (SFDI) 测量的光散射参数是否可以准确预测新鲜切除、未经染色的人乳腺标本中的基质、上皮和脂肪分数。开发了一个显式模型来预测基质、上皮和脂肪分数作为光散射参数的函数,并使用 N = 31 个标本的数字组织学幻灯片的定量分析进行了验证,采用留一法交叉验证。从光散射参数预测的标本平均基质、上皮和脂肪体积分数与从数字组织学幻灯片计算的分数强烈相关(分别为 r = 0.90、0.77 和 0.91,p 值 <1 × 10⁻⁶)。此外,预测的上皮与基质之比将恶性标本分类为敏感性和特异性分别为 90%和 81%,并且还将恶性病变中的所有像素分类为 63%和 79%,阈值为 1。所有标本和像素均以 84%和 75%的准确度分类为恶性、良性或脂肪。这些发现表明,SFDI 获得的光散射参数可用于准确预测和空间映射新鲜未染色的人乳腺组织中的基质、上皮和脂肪比例,并表明这些估计可能具有诊断价值。