Zheng Bin, Lu Amy, Hardesty Lara A, Sumkin Jules H, Hakim Christiane M, Ganott Marie A, Gur David
Department of Radiology, University of Pittsburgh, Pittsburgh, Pennsylvania 15213, USA.
Med Phys. 2006 Jan;33(1):111-7. doi: 10.1118/1.2143139.
The purpose of this study was to develop and test a method for selecting "visually similar" regions of interest depicting breast masses from a reference library to be used in an interactive computer-aided diagnosis (CAD) environment. A reference library including 1000 malignant mass regions and 2000 benign and CAD-generated false-positive regions was established. When a suspicious mass region is identified, the scheme segments the region and searches for similar regions from the reference library using a multifeature based k-nearest neighbor (KNN) algorithm. To improve selection of reference images, we added an interactive step. All actual masses in the reference library were subjectively rated on a scale from 1 to 9 as to their "visual margins speculations". When an observer identifies a suspected mass region during a case interpretation he/she first rates the margins and the computerized search is then limited only to regions rated as having similar levels of spiculation (within +/-1 scale difference). In an observer preference study including 85 test regions, two sets of the six "similar" reference regions selected by the KNN with and without the interactive step were displayed side by side with each test region. Four radiologists and five nonclinician observers selected the more appropriate ("similar") reference set in a two alternative forced choice preference experiment. All four radiologists and five nonclinician observers preferred the sets of regions selected by the interactive method with an average frequency of 76.8% and 74.6%, respectively. The overall preference for the interactive method was highly significant (p < 0.001). The study demonstrated that a simple interactive approach that includes subjectively perceived ratings of one feature alone namely, a rating of margin "spiculation," could substantially improve the selection of "visually similar" reference images.
本研究的目的是开发并测试一种方法,用于从参考库中选择描绘乳腺肿块的“视觉相似”感兴趣区域,以用于交互式计算机辅助诊断(CAD)环境。建立了一个参考库,其中包括1000个恶性肿块区域以及2000个良性和CAD生成的假阳性区域。当识别出可疑肿块区域时,该方案会对该区域进行分割,并使用基于多特征的k近邻(KNN)算法从参考库中搜索相似区域。为了改进参考图像的选择,我们增加了一个交互式步骤。参考库中的所有实际肿块根据其“视觉边缘推测”在1到9的尺度上进行主观评分。当观察者在病例解读过程中识别出可疑肿块区域时,他/她首先对边缘进行评分,然后计算机化搜索仅限于被评为具有相似毛刺程度(在+/-1尺度差异内)的区域。在一项包括85个测试区域的观察者偏好研究中,将通过KNN选择的两组六个“相似”参考区域(有和没有交互式步骤)与每个测试区域并排显示。四位放射科医生和五位非临床医生观察者在二选一的强制选择偏好实验中选择更合适的(“相似”)参考集。所有四位放射科医生和五位非临床医生观察者分别以76.8%和74.6%的平均频率更喜欢通过交互式方法选择的区域集。对交互式方法的总体偏好非常显著(p < 0.001)。该研究表明,一种简单的交互式方法,仅包括对一个特征(即边缘“毛刺”的评分)的主观感知评分,就可以显著改进“视觉相似”参考图像的选择。