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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Improvement of Mammographic Mass Classification Performance Using an Intelligent Data Fusion Method
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Improvement of Mammographic Mass Classification Performance Using an Intelligent Data Fusion Method

机译:使用智能数据融合方法改进乳房X XMPACTION质量分类性能

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Purpose: In order to optimally apply the computer-aided diagnosis (CAD) schemes of mammograms as a "second reader" in the clinical practice, we investigated a new intelligent data fusion method to adaptively combine mammographic mass classification scores rated by individual radiologists and computed by a computer-aided diagnosis (CAD) scheme to improve classification performance. Methods: We assembled a testing dataset that involves 224 regions of interest (ROI) selected from mammograms. Half ROIs depict verified malignant masses and half involve benign masses. A CAD scheme was applied to process these ROIs and classify the masses. We also asked three observers namely a senior, a junior radiologist and a radiology resident to independently read and classify these ROIs. We then applied an alpha integration based data fusion method to adaptively combine classification scores between CAD and each observer as well as multiple observers. A receiver operating characteristic (ROC) method was used to analyze and compare the classification performance changes between each observer, CAD, and data fusion results. Results: The computed areas under ROC curves (AUC) and standard errors are 0.858 +/- 0.025, 0.853 +/- 0,026, 0.776 +/- 0.031 for three observers (from a senior radiologist to a radiology resident), and 0.908 +/- 0.021 for CAD, respectively. Using the alpha integration method, fusion of classification results from multiple observers or between the observer and CAD significantly improved classification performance (p 0.05). In combining classification results of CAD and each of the three observers, the different optimal fusion weighting factors are generated, which increased AUC values by 12.1%, 10.1% and 20.9% for the three observers, respectively. Conclusions: This study demonstrated the feasibility of applying a new data integration method to identify optimal weighting factors to adaptively fuse the classification scores rated by different observers and computed by CAD, which may help eventually establish a personalized scheme of single-reading plus CAD to assist radiologists in diagnosis of mammograms.
机译:目的:为了在临床实践中最佳地应用乳房X线照片的计算机辅助诊断(CAD)X XMMICARMS等方案,我们调查了一种新的智能数据融合方法,以自适应地结合各个放射科医师和计算通过计算机辅助诊断(CAD)方案来提高分类性能。方法:我们组装了一个测试数据集,该数据集涉及从乳房X线照片中选择的感兴趣的224个区域(ROI)。半罗斯描绘了经过验证的恶性群众,一半涉及良性群众。应用CAD方案来处理这些ROI并分类群众。我们还询问了三个观察员即一名高级放射科医生和居民的高级放射科医师,居住的放射学家,以独立阅读和分类这些ROI。然后,我们将基于Alpha集成的数据融合方法应用于CAD和每个观察者以及多个观察者之间的自适应组合分类分数。接收器操作特征(ROC)方法用于分析和比较每个观察者,CAD和数据融合结果之间的分类性能变化。结果:ROC曲线(AUC)和标准误差下的计算区域为0.858 +/- 0.025,0.853 +/- 0.026,30.776 +/- 0.031(从高级放射学家到放射学居民),0.908 + / CAD分别为0.021。使用Alpha Integration方法,多个观察者或观察者和CAD之间的分类结果融合显着改善了分类性能(P <0.05)。在组合CAD的分类结果和三个观察者中的每一个中,产生不同的最佳融合加权因子,其中三个观察者的AUC值增加了12.1%,10.1%和20.9%。结论:本研究表明,应用新的数据集成方法来确定最佳加权因素,以便自适应地融合由不同观察者和CAD计算的分类评分,这可能有助于最终建立单读加CAD的个性化方案来协助辐射学家诊断乳房X线图。

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