Ara Sharmin R, Alam Farzana, Rahman Md Hadiur, Akhter Shabnam, Awwal Rayhana, Hasan Kamrul
Department of Electrical and Electronic Engineering, Bangladesh University of Engineering and Technology, Dhaka, Bangladesh.
Department of Radiology and Imaging, Bangabandhu Sheikh Mujib Medical University, Dhaka, Bangladesh.
Ultrasound Med Biol. 2015 Jul;41(7):2022-38. doi: 10.1016/j.ultrasmedbio.2015.01.023. Epub 2015 Apr 23.
Proposed here is a breast tumor classification technique using conventional ultrasound B-mode imaging and a new elasticity imaging-based bimodal multiparameter index. A set of conventional ultrasound (US) and ultrasound elastography (UE) parameters are studied, and among those, the effective ones whose independent as well as combined performance is found satisfactory are selected. To improve the combined US performance, two new US parameters are proposed: edge diffusivity, which assesses edge blurriness to differentiate malignant from benign lesions, and the shape asymmetry factor, which quantifies tumor shape irregularity by comparing the tumor boundary with an ellipse fitted to the lesion. Then a new bimodal multiparameter characterization index is defined to discriminate 201 pathologically confirmed breast tumors of which 56 are malignant lesions, 79 are fibroadenomas, 42 are cysts and 24 are inflammatory lesions. The weights of the multiparameter bimodal index are optimally computed using a genetic algorithm (GA). To evaluate the performance variation of the index on different data sets, the tumors are categorized into three classes: malignant lesion versus fibroadenoma, malignant lesion versus fibroadenoma and cyst and malignant lesion versus fibroadenoma, cyst and inflammation. The test results reveal that the proposed bimodal index achieves satisfactory quality metrics (e.g., 94.64%-98.21% sensitivity, 97.24%-100.00% specificity and 96.52%-99.44% accuracy) for classification of the aforementioned three classes of breast tumors. Its performance is also observed to be better in totality of the quality metrics sensitivity, specificity, accuracy, positive predictive value and negative predictive value as compared with that of a conventional bimodal index as well as unimodal multiparameter indices based on US or UE. It is suggested that the proposed simple bimodal linear classifier may assist radiologists in better diagnosis of breast tumors and help reduce the number of unnecessary biopsies.
本文提出了一种利用传统超声B模式成像和基于弹性成像的新型双峰多参数指标的乳腺肿瘤分类技术。研究了一组传统超声(US)和超声弹性成像(UE)参数,并从中选择了独立性能和联合性能均令人满意的有效参数。为了提高联合超声性能,提出了两个新的超声参数:边缘扩散率,用于评估边缘模糊度以区分恶性和良性病变;形状不对称因子,通过将肿瘤边界与拟合病变的椭圆进行比较来量化肿瘤形状不规则性。然后定义了一个新的双峰多参数特征指标,以区分201例经病理证实的乳腺肿瘤,其中56例为恶性病变,79例为纤维腺瘤,42例为囊肿,24例为炎症性病变。使用遗传算法(GA)对多参数双峰指标的权重进行优化计算。为了评估该指标在不同数据集上的性能变化,将肿瘤分为三类:恶性病变与纤维腺瘤、恶性病变与纤维腺瘤和囊肿、恶性病变与纤维腺瘤、囊肿和炎症。测试结果表明,所提出的双峰指标在上述三类乳腺肿瘤的分类中实现了令人满意的质量指标(例如,灵敏度为94.64%-98.21%,特异性为97.24%-100.00%,准确率为96.52%-99.44%)。与传统双峰指标以及基于超声或弹性成像的单峰多参数指标相比,其在灵敏度、特异性、准确率、阳性预测值和阴性预测值等质量指标的总体表现也更好。建议所提出的简单双峰线性分类器可协助放射科医生更好地诊断乳腺肿瘤,并有助于减少不必要的活检次数。