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Improving the Performance of Lesion-based Computer-Aided Detection Schemes of Breast Masses Using a Case-based Adaptive Cueing Method

机译:使用基于案例的自适应提示方法提高基于病变的乳腺肿块计算机辅助检测方案的性能

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Current commercialized CAD schemes have high false-positive (FP) detection rates and also have high correlations in positive lesion detection with radiologists. Thus, we recently investigated a new approach to improve the efficacy of applying CAD to assist radiologists in reading and interpreting screening mammograms. Namely, we developed a new global feature based CAD approach/scheme that can cue the warning sign on the cases with high risk of being positive. In this study, we investigate the possibility of fusing global feature or case-based scores with the local or lesion-based CAD scores using an adaptive cueing method. We hypothesize that the information from the global feature extraction (features extracted from the whole breast regions) are different from and can provide supplementary information to the locally-extracted features (computed from the segmented lesion regions only). On a large and diverse full-field digital mammography (FFDM) testing dataset with 785 cases (347 negative and 438 cancer cases with masses only), we ran our lesion-based and case-based CAD schemes "as is" on the whole dataset. To assess the supplementary information provided by the global features, we used an adaptive cueing method to adaptively adjust the original CAD-generated detection scores (S_(org)) of a detected suspicious mass region based on the computed case-based score (S_(case)) of the case associated with this detected region. Using the adaptive cueing method, better sensitivity results were obtained at lower FP rates (≤ 1 FP per image). Namely, increases of sensitivities (in the FROC curves) of up to 6.7% and 8.2% were obtained for the ROI and Case-based results, respectively.
机译:当前商业化的CAD方案具有较高的假阳性(FP)检测率,并且在与放射科医生的阳性病变检测中也具有高度相关性。因此,我们最近研究了一种新方法,以提高应用CAD来协助放射线医师阅读和解释X线钼靶检查的功效。即,我们开发了一种基于全球特征的新的CAD方法/方案,该方案可以在具有高阳性风险的病例中提示警告信号。在这项研究中,我们研究了使用自适应提示方法将全局特征或基于案例的分数与局部或基于病变的CAD分数相融合的可能性。我们假设从全局特征提取(从整个乳房区域中提取的特征)获得的信息与局部提取的特征(仅从分割的病变区域中计算出的)不同,并且可以为这些特征提供补充信息。在包含785例(仅347例阴性和438例肿块的癌症病例)的大型全域数字乳房X线照片(FFDM)测试数据集上,我们在整个数据集上“按原样”运行了基于病变和基于病例的CAD方案。为了评估全局特征提供的补充信息,我们使用了一种自适应提示方法,根据计算出的基于案例的得分(S_(情况)与此检测到的区域相关的情况。使用自适应提示方法,可以在较低的FP速率(每张图像≤1 FP)下获得更好的灵敏度结果。即,对于ROI和基于案例的结果,灵敏度分别提高了6.7%和8.2%(在FROC曲线中)。

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