Li Hai, Kumavor Patrick, Salman Alqasemi Umar, Zhu Quing
University of Connecticut, Department of Electrical and Computer Engineering, 371 Fairfield Way, U-4157, Storrs, Connecticut 06269-4157, United States.
University of Connecticut, Biomedical Engineering Department, 371 Fairfield Way, U-4157, Storrs, Connecticut 06269-4157, United States.
J Biomed Opt. 2015 Jan;20(1):016002. doi: 10.1117/1.JBO.20.1.016002.
A composite set of ovarian tissue features extracted from photoacoustic spectral data, beam envelope, and co-registered ultrasound and photoacoustic images are used to characterize malignant and normal ovaries using logistic and support vector machine (SVM) classifiers. Normalized power spectra were calculated from the Fourier transform of the photoacoustic beamformed data, from which the spectral slopes and 0-MHz intercepts were extracted. Five features were extracted from the beam envelope and another 10 features were extracted from the photoacoustic images. These 17 features were ranked by their p-values from t -tests on which a filter type of feature selection method was used to determine the optimal feature number for final classification. A total of 169 samples from 19 ex vivo ovaries were randomly distributed into training and testing groups. Both classifiers achieved a minimum value of the mean misclassification error when the seven features with lowest p-values were selected. Using these seven features, the logistic and SVM classifiers obtained sensitivities of 96.39 ± 3.35% and 97.82 ± 2.26%, and specificities of 98.92 ± 1.39% and 100%, respectively, for the training group. For the testing group, logistic and SVM classifiers achieved sensitivities of 92.71 ± 3.55% and 92.64 ± 3.27%, and specificities of 87.52 ± 8.78% and 98.49 ± 2.05%, respectively.
从光声光谱数据、波束包络以及配准后的超声和光声图像中提取的一组综合卵巢组织特征,被用于使用逻辑回归和支持向量机(SVM)分类器来区分恶性和正常卵巢。从光声波束形成数据的傅里叶变换中计算归一化功率谱,并从中提取光谱斜率和零赫兹截距。从波束包络中提取了五个特征,从光声图像中提取了另外十个特征。通过t检验的p值对这17个特征进行排序,并使用一种过滤类型的特征选择方法来确定最终分类的最佳特征数量。来自19个离体卵巢的总共169个样本被随机分配到训练组和测试组。当选择p值最低的七个特征时,两个分类器的平均误分类误差均达到最小值。使用这七个特征,逻辑回归和SVM分类器对训练组的灵敏度分别为96.39±3.35%和97.82±2.26%,特异性分别为98.92±1.39%和100%。对于测试组,逻辑回归和SVM分类器的灵敏度分别为92.71±3.55%和92.64±3.27%,特异性分别为87.52±8.78%和98.49±2.05%。