Zhu Changfang, Palmer Gregory M, Breslin Tara M, Harter Josephine, Ramanujam Nirmala
Department of Electrical and Computer Engineering, University of Wisconsin, Madison, Wisconsin 53705, USA.
Lasers Surg Med. 2006 Aug;38(7):714-24. doi: 10.1002/lsm.20356.
We explored the use of diffuse reflectance spectroscopy in the ultraviolet-visible (UV-VIS) spectrum for the diagnosis of breast cancer. A physical model (Monte Carlo inverse model) and an empirical model (partial least squares analysis) based approach, were compared for extracting diagnostic features from the diffuse reflectance spectra.
STUDY DESIGN/METHODS: The physical model and the empirical model were employed to extract features from diffuse reflectance spectra measured from freshly excised breast tissues. A subset of extracted features obtained using each method showed statistically significant differences between malignant and non-malignant breast tissues. These features were separately input to a support vector machine (SVM) algorithm to classify each tissue sample as malignant or non-malignant.
The features extracted from the Monte Carlo based analysis were hemoglobin saturation, total hemoglobin concentration, beta-carotene concentration and the mean (wavelength averaged) reduced scattering coefficient. Beta-carotene concentration was positively correlated and the mean reduced scattering coefficient was negatively correlated with percent adipose tissue content in normal breast tissues. In addition, there was a statistically significant decrease in the beta-carotene concentration and hemoglobin saturation, and a statistically significant increase in the mean reduced scattering coefficient in malignant tissues compared to non-malignant tissues. The features extracted from the partial least squares analysis were a set of principal components. A subset of principal components showed that the diffuse reflectance spectra of malignant breast tissues displayed an increased intensity over wavelength range of 440-510 nm and a decreased intensity over wavelength range of 510-600 nm, relative to that of non-malignant breast tissues. The diagnostic performance of the classification algorithms based on both feature extraction techniques yielded similar sensitivities and specificities of approximately 80% for discriminating between malignant and non-malignant breast tissues. While both methods yielded similar classification accuracies, the model based approach provided insight into the physiological and structural features that discriminate between malignant and non-malignant breast tissues.
我们探讨了利用紫外-可见(UV-VIS)光谱中的漫反射光谱诊断乳腺癌。比较了基于物理模型(蒙特卡罗逆模型)和经验模型(偏最小二乘法分析)从漫反射光谱中提取诊断特征的方法。
研究设计/方法:采用物理模型和经验模型从新鲜切除的乳腺组织的漫反射光谱中提取特征。每种方法提取的一部分特征在恶性和非恶性乳腺组织之间显示出统计学上的显著差异。将这些特征分别输入支持向量机(SVM)算法,以将每个组织样本分类为恶性或非恶性。
基于蒙特卡罗分析提取的特征为血红蛋白饱和度、总血红蛋白浓度、β-胡萝卜素浓度以及平均(波长平均)约化散射系数。在正常乳腺组织中,β-胡萝卜素浓度与脂肪组织含量百分比呈正相关,平均约化散射系数与脂肪组织含量百分比呈负相关。此外,与非恶性组织相比,恶性组织中的β-胡萝卜素浓度和血红蛋白饱和度有统计学上的显著降低,平均约化散射系数有统计学上的显著增加。从偏最小二乘法分析中提取的特征是一组主成分。一部分主成分表明,相对于非恶性乳腺组织,恶性乳腺组织的漫反射光谱在440 - 510 nm波长范围内强度增加,在510 - 600 nm波长范围内强度降低。基于这两种特征提取技术的分类算法的诊断性能在区分恶性和非恶性乳腺组织时产生了相似的敏感性和特异性,约为80%。虽然两种方法产生了相似的分类准确率,但基于模型的方法深入了解了区分恶性和非恶性乳腺组织的生理和结构特征。