Metabolic Photonics Laboratory and Minimally Invasive Surgical Technologies Institute, Department of Surgery, Cedars-Sinai Medical Center, 8700 Beverly Blvd., Los Angeles, CA 90048, USA.
Breast Cancer Res Treat. 2011 Apr;126(2):345-54. doi: 10.1007/s10549-010-0914-z. Epub 2010 May 6.
Prevention and early detection of breast cancer are the major prophylactic measures taken to reduce the breast cancer related mortality and morbidity. Clinical management of breast cancer largely relies on the efficacy of the breast-conserving surgeries and the subsequent radiation therapy. A key problem that limits the success of these surgeries is the lack of accurate, real-time knowledge about the positive tumor margins in the surgically excised tumors in the operating room. This leads to tumor recurrence and, hence, the need for repeated surgeries. Current intraoperative techniques such as frozen section pathology or touch imprint cytology severely suffer from poor sampling and non-optimal detection sensitivity. Even though histopathology analysis can provide information on positive tumor margins post-operatively (2-3 days), this information is of no immediate utility in the operating rooms. In this article, we propose a novel image analysis method for tumor margin assessment based on nuclear morphometry and tissue topology and demonstrate its high sensitivity/specificity in preclinical animal model of breast carcinoma. The method relies on imaging nuclear-specific fluorescence in the excised surgical specimen and on extracting nuclear morphometric parameters (size, number, and area fraction) from the spatial distribution of the observed fluorescence in the tissue. We also report the utility of tissue topology in tumor margin assessment by measuring the fractal dimension in the same set of images. By a systematic analysis of multiple breast tissues specimens, we show here that the proposed method is not only accurate (97% sensitivity and 96% specificity) in thin sections, but also in three-dimensional (3D) thick tissues that mimic the realistic lumpectomy specimens. Our data clearly precludes the utility of nuclear size as a reliable diagnostic criterion for tumor margin assessment. On the other hand, nuclear area fraction addresses this issue very effectively since it is a combination of both nuclear size and count in any given region of the analyzed image, and thus yields high sensitivity and specificity (~97%) in tumor detection. This is further substantiated by an independent parameter, fractal dimension, based on the tissue topology. Although the basic definition of cancer as an uncontrolled cell growth entails a high nuclear density in tumor regions, a simple but systematic exploration of nuclear distribution in thick tissues by nuclear morphometry and tissue topology as performed in this study has never been carried out, to the best of our knowledge. We discuss the practical aspects of implementing this imaging approach in automated tissue sampling scenario where the accuracy of tumor margin assessment can be significantly increased by scanning the entire surgical specimen rather than sampling only a few sections as in current histopathology analysis.
预防和早期发现乳腺癌是降低乳腺癌相关死亡率和发病率的主要预防措施。乳腺癌的临床管理主要依赖于保乳手术的疗效和随后的放射治疗。一个限制这些手术成功的关键问题是,在手术室中,对手术切除的肿瘤中阳性肿瘤边缘缺乏准确、实时的了解。这导致肿瘤复发,因此需要重复手术。目前的术中技术,如冷冻切片病理或触印细胞学,严重受到采样不良和非最佳检测灵敏度的影响。尽管组织病理学分析可以在术后(2-3 天)提供阳性肿瘤边缘的信息,但这些信息在手术室中没有即时效用。在本文中,我们提出了一种基于核形态计量学和组织拓扑学的肿瘤边缘评估的新图像分析方法,并在乳腺癌的临床前动物模型中证明了其高灵敏度/特异性。该方法依赖于对切除手术标本中核特异性荧光的成像,并从组织中观察到的荧光的空间分布中提取核形态计量参数(大小、数量和面积分数)。我们还报告了通过测量同一组图像中的分形维数在肿瘤边缘评估中的组织拓扑学的效用。通过对多个乳腺组织标本的系统分析,我们在这里表明,该方法不仅在薄切片中准确(97%的灵敏度和 96%的特异性),而且在模拟真实保乳术标本的三维(3D)厚组织中也准确。我们的数据清楚地排除了核大小作为肿瘤边缘评估可靠诊断标准的可能性。另一方面,核面积分数有效地解决了这个问题,因为它是分析图像中任何给定区域的核大小和核数量的组合,因此在肿瘤检测中具有很高的灵敏度和特异性(~97%)。这一点通过基于组织拓扑学的另一个独立参数——分形维数进一步证实。尽管癌症作为一种不受控制的细胞生长的基本定义是肿瘤区域中的高核密度,但据我们所知,通过核形态计量学和组织拓扑学对厚组织中的核分布进行简单但系统的探索,从未在以前的研究中进行过。我们讨论了在自动组织取样情况下实施这种成像方法的实际方面,在这种情况下,通过扫描整个手术标本而不是像当前的组织病理学分析那样仅对几个切片进行取样,可以显著提高肿瘤边缘评估的准确性。