论文标题
基于生物物理超声功能来改善乳腺癌的诊断,利用机器学习
Improving the diagnosis of breast cancer based on biophysical ultrasound features utilizing machine learning
论文作者
论文摘要
超声检查的诊断准确性提高仍然是一个重要目标。在这项研究中,我们提出了一种基于生物物理特征的机器学习方法,用于乳腺癌检测,以改善基准深度学习算法以外的性能,并提供一张病变内恶性肿瘤概率的颜色覆盖视觉图。该整体框架称为特定于疾病的成像。以前,分别利用修改的完全卷积网络和改良的GoogLenet进行了细分并分类150个乳房病变。在这项研究中,在轮廓病变中进行了多参数分析。从基于生物物理和形态学模型的超声射频,包膜和对数压缩数据中提取特征。带有高斯内核的支持向量机构建了非线性超平面,我们计算了多参数空间中每个特征的超平面与数据点之间的距离。距离可以定量评估病变,并提出颜色编码并覆盖在B模式图像上的恶性肿瘤的可能性。对体内患者数据进行了培训和评估。在我们的研究中,最常见类型和乳房病变的总体准确性超过了98.0%的分类,而接收器操作特征曲线下的区域的总准确性比放射科医生的性能和深度学习系统更精确。此外,概率与BI RAD之间的相关性可实现定量指南,以预测乳腺癌。因此,我们预计所提出的框架可以帮助放射科医生实现更准确,方便的乳腺癌分类和检测。
The improved diagnostic accuracy of ultrasound breast examinations remains an important goal. In this study, we propose a biophysical feature based machine learning method for breast cancer detection to improve the performance beyond a benchmark deep learning algorithm and to furthermore provide a color overlay visual map of the probability of malignancy within a lesion. This overall framework is termed disease specific imaging. Previously, 150 breast lesions were segmented and classified utilizing a modified fully convolutional network and a modified GoogLeNet, respectively. In this study multiparametric analysis was performed within the contoured lesions. Features were extracted from ultrasound radiofrequency, envelope, and log compressed data based on biophysical and morphological models. The support vector machine with a Gaussian kernel constructed a nonlinear hyperplane, and we calculated the distance between the hyperplane and data point of each feature in multiparametric space. The distance can quantitatively assess a lesion, and suggest the probability of malignancy that is color coded and overlaid onto B mode images. Training and evaluation were performed on in vivo patient data. The overall accuracy for the most common types and sizes of breast lesions in our study exceeded 98.0% for classification and 0.98 for an area under the receiver operating characteristic curve, which is more precise than the performance of radiologists and a deep learning system. Further, the correlation between the probability and BI RADS enables a quantitative guideline to predict breast cancer. Therefore, we anticipate that the proposed framework can help radiologists achieve more accurate and convenient breast cancer classification and detection.