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7.2: Presentation session: Poster session and reception: “Applying deep-layered clustering to mammography image analytics”

机译:7.2:演示会议:海报会议和接待:“将深层聚类应用于乳腺X射线摄影图像分析”

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This paper details a methodology and preliminary results for applying a hierarchy of clustering units to mammographic image data. The identification of patients with breast cancer through the detection of microcalcifications and masses is a demanding classification problem; minimal false negatives are desired while simultaneously avoiding false positives that cause unnecessary cost to patients and health institutions. This research examines a segmented look at mammograms for computer aided detection with the goal of reliably labeling regions of interest requiring the attention of a radiologist. Classification is achieved by employing the building blocks, namely unsupervised clustering, of a deep learning architecture in tandem with a standard feed-forward neural network. Early results show promise for creating a classification engine that handles high-dimensional data with minimum engineering of image features, with a high per-image patch sensitivity and specificity. We further present the challenges for scaling our scheme with larger image patches and larger datasets and potential avenues for additional research.
机译:本文详细介绍了将聚类单位的层次结构应用于乳腺X射线摄影图像数据的方法和初步结果。通过检测微钙化和肿块来识别乳腺癌患者是一个严苛的分类问题。期望最小的假阴性,同时避免造成患者和医疗机构不必要费用的假阳性。这项研究检查了用于计算机辅助检测的乳房X线照片的分段外观,目的是可靠地标记需要放射科医生注意的感兴趣区域。通过使用深度学习架构的构建块(即无监督聚类)与标准前馈神经网络一起实现分类。早期结果表明,有望创建一种分类引擎,以最少的图像特征工程处理高维数据,并具有较高的每幅图像补丁敏感性和特异性。我们进一步提出了使用更大的图像补丁和更大的数据集来扩展我们的方案的挑战,以及进行进一步研究的潜在途径。

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