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Improving CAD performance in detecting masses depicted on prior images

机译:改善CAD性能以检测先前图像上描绘的质量

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We investigated a new approach to improve the performance of a computer-aided detection (CAD) scheme in identifying masses depicted on images acquired earlier ("prior"). The scheme was trained using a dataset with simulated mass features. From a database with images acquired during two consecutive examinations, 100 locations matched pairs of malignant mass regions were selected in both the "current" and the most recent "prior" images. While reviewing the current images, mass regions were identified and as a result biopsies were ultimately performed. Prior images were not identified as suspicious by radiologists during the original interpretation. The same number of false-positive regions was also selected in both current and prior images. The selected regions were then randomly divided into training and testing datasets with 50 true-positive and 50 false-positive regions in each. For each selected region, five features; area, contrast, circularity, normalized standard deviation of radial length, and conspicuity; were computed. The ratios of the average difference of five feature values between current and prior mass regions in the training datasets were also computed. Multiplying these ratios by the computed values in current mass regions, we generated a new dataset of simulated features of "prior" mass regions. Three artificial neural networks (ANN) were trained. ANN-1 and ANN-2 were trained using training datasets of current and prior regions, respectively. ANN-3 was trained using simulated "prior" dataset. The performance of three ANNs was then evaluated using the testing dataset of prior images. Areas under ROC curves (A_z) were 0.613 +- 0.026 for ANN-1, 0.678 +- 0.029 for ANN-2, and 0.667 +- 0.029 for ANN-3, respectively. This preliminary study demonstrated that one could estimate an average change of feature values over time and "adjust" CAD performance for better detection of masses at an earlier stage.
机译:我们研究了一种新方法,可提高计算机辅助检测(CAD)方案在识别较早获取的图像(“先前”)上描绘的质量时的性能。该方案使用具有模拟质量特征的数据集进行了训练。从具有两次连续检查中获取的图像的数据库中,在“当前”图像和最新的“先前”图像中均选择了100个位置匹配的恶性肿块区域对。在查看当前图像时,发现了肿块区域,因此最终进行了活组织检查。在原始解释期间,放射线医生未将先前的图像识别为可疑。在当前图像和先前图像中也选择了相同数量的假阳性区域。然后将选定的区域随机分为训练和测试数据集,每个数据集中有50个真阳性和50个假阳性区域。对于每个选定区域,五个功能;面积,对比度,圆形度,径向长度的标准化标准偏差和显眼性;被计算了。还计算了训练数据集中当前和先前质量区域之间五个特征值的平均差之比。将这些比率乘以当前质量区域中的计算值,我们生成了“先前”质量区域的模拟特征的新数据集。训练了三个人工神经网络(ANN)。分别使用当前和先前区域的训练数据集对ANN-1和ANN-2进行了训练。使用模拟的“先前”数据集对ANN-3进行了训练。然后使用先前图像的测试数据集评估三个人工神经网络的性能。 ROC曲线下的面积(A_z)对于ANN-1为0.613±0.026,对于ANN-2为0.678±0.029,对于ANN-3为0.667±0.029。这项初步研究表明,可以估计特征值随时间的平均变化,并“调整” CAD性能,以便在早期更好地检测质量。

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