首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Confidence-based stratification of CAD recommendations with application to breast cancer detection
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Confidence-based stratification of CAD recommendations with application to breast cancer detection

机译:CAD建议的基于信心的分层及其在乳腺癌检测中的应用

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We present a risk stratification methodology for predictions made by computer-assisted detection (CAD) systems. For each positive CAD prediction, the proposed technique assigns an individualized confidence measure as a function of the actual CAD output, the case-specific uncertainty of the prediction estimated from the system's performance for similar cases and the value of the operating decision threshold. The study was performed using a mammographic database containing 1,337 regions of interest (ROIs) with known ground truth (681 with masses, 656 with normal parenchyma). Two types of decision models (1) a support vector machine (SVM) with a radial basis function kernel and (2) a back-propagation neural network (BPNN) were developed to detect masses based on 8 morphological features automatically extracted from each ROI. The study shows that as requirements on the minimum confidence value are being restricted, the positive predictive value (PPV) for qualifying cases steadily improves (from PPV = 0.73 to PPV = 0.97 for the SVM, from PPV = 0.67 to PPV = 0.95 for the BPNN). The proposed confidence metric was successfully applied for stratification of CAD recommendations into 3 categories of different expected reliability: HIGH (PPV = 0.90), LOW (PPV = 0.30) and MEDIUM (all remaining cases). Since radiologists often disregard accurate CAD cues, an individualized confidence measure should improve their ability to correctly process visual cues and thus reduce the interpretation error associated with the detection task. While keeping the clinically determined operating point satisfied, the proposed methodology draws the CAD users' attention to cases/regions of highest risk while helping them confidently eliminate cases with low risk.
机译:我们为计算机辅助检测(CAD)系统做出的预测提供了一种风险分层方法。对于每个积极的CAD预测,所提出的技术都会根据实际CAD输出,根据类似情况的系统性能估算出的预测的特定案例不确定性以及操作决策阈值,来分配个性化的置信度度量。该研究是使用乳腺X线摄影数据库进行的,该数据库包含已知地面真实性的1,337个感兴趣区域(ROI)(质量为681个,实质为656个)。开发了两种类型的决策模型(1)具有径向基函数核的支持向量机(SVM)和(2)反向传播神经网络(BPNN),以根据从每个ROI自动提取的8种形态特征来检测质量。研究表明,由于对最低置信度值的要求受到限制,合格案例的阳性预测值(PPV)稳步提高(对于SVM,从PPV = 0.73到PPV = 0.97,对于SVM,从PPV = 0.67到PPV = 0.95)。 BPNN)。拟议的置信度度量已成功地用于将CAD建议分层为3种不同的预期可靠性类别:高(PPV = 0.90),低(PPV = 0.30)和中(所有剩余情况)。由于放射科医生经常忽略准确的CAD线索,因此个性化的置信度测量应提高其正确处理视觉线索的能力,从而减少与检测任务相关的解释错误。在使临床确定的操作点保持满意的同时,所提出的方法将CAD用户的注意力吸引到最高风险的案例/区域,同时帮助他们自信地消除低风险的案例。

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