Goldberg Brian D, Iftimia Nicusor V, Bressner Jason E, Pitman Martha B, Halpern Elkan, Bouma Brett E, Tearney Guillermo J
Massachusetts General Hospital, Wellman Center for Photomedicine, 40 Blossom Street, Boston, Massachusetts 02114, USA.
J Biomed Opt. 2008 Jan-Feb;13(1):014014. doi: 10.1117/1.2837433.
Fine needle aspiration biopsy (FNAB) is a rapid and cost-effective method for obtaining a first-line diagnosis of a palpable mass of the breast. However, because it can be difficult to manually discriminate between adipose tissue and the fibroglandular tissue more likely to harbor disease, this technique is plagued by a high number of nondiagnostic tissue draws. We have developed a portable, low coherence interferometry (LCI) instrument for FNAB guidance to combat this problem. The device contains an optical fiber probe inserted within the bore of the fine gauge needle and is capable of obtaining tissue structural information with a spatial resolution of 10 mum over a depth of approximately 1.0 mm. For such a device to be effective clinically, algorithms that use the LCI data must be developed for classifying different tissue types. We present an automated algorithm for differentiating adipose tissue from fibroglandular human breast tissue based on three parameters computed from the LCI signal (slope, standard deviation, spatial frequency content). A total of 260 breast tissue samples from 58 patients were collected from excised surgical specimens. A training set (N=72) was used to extract parameters for each tissue type and the parameters were fit to a multivariate normal density. The model was applied to a validation set (N=86) using likelihood ratios to classify groups. The overall accuracy of the model was 91.9% (84.0 to 96.7) with 98.1% (89.7 to 99.9) sensitivity and 82.4% (65.5 to 93.2) specificity where the numbers in parentheses represent the 95% confidence intervals. These results suggest that LCI can be used to determine tissue type and guide FNAB of the breast.
细针穿刺活检(FNAB)是一种快速且经济高效的方法,用于对可触及的乳腺肿块进行一线诊断。然而,由于手动区分脂肪组织和更可能存在病变的纤维腺组织可能存在困难,该技术存在大量无法诊断的组织抽取问题。我们开发了一种用于FNAB引导的便携式低相干干涉测量(LCI)仪器来解决这一问题。该设备包含一根插入细针针腔内的光纤探头,能够在约1.0毫米的深度范围内以10微米的空间分辨率获取组织结构信息。为使这种设备在临床上有效,必须开发利用LCI数据的算法来对不同组织类型进行分类。我们提出了一种基于从LCI信号计算出的三个参数(斜率、标准差、空间频率含量)来区分人体乳腺脂肪组织和纤维腺组织的自动化算法。从58例患者的手术切除标本中总共收集了260个乳腺组织样本。一个训练集(N = 72)用于提取每种组织类型的参数,并将这些参数拟合到多元正态密度。使用似然比将该模型应用于一个验证集(N = 86)以对组进行分类。该模型的总体准确率为91.9%(84.0至96.7),灵敏度为98.1%(89.7至99.9),特异性为82.4%(65.5至93.2),括号中的数字代表95%置信区间。这些结果表明LCI可用于确定组织类型并指导乳腺的FNAB。