认知细胞在乳房x线摄影上的并行实现

A. P. James, Sherin Sugathan
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引用次数: 2

摘要

从乳房x线摄影图像中以可承受的成本快速检测乳房肿块是在大量实时处理和诊断评估中具有实际意义的问题。在本文中,我们通过引入认知细胞的概念,提出了一种实时检测乳房肿块的新方法,该概念具有在低成本硬件中实现的完全并行高速计算架构。原型系统使用计算统一设备架构(CUDA)进行测试,处理单个1024 × 1024像素乳房x光图像的平均速度为6毫秒。初步结果表明,在乳房x线照片中使用认知细胞进行可疑乳腺癌肿块检测的可行性,与其他标准方法相比,在速度上具有优越的性能。我们报道了MISC, ASYM, CIRC和SPIC病例的特异性为95.25%,每张图像的癌症假阳性为2.275,而CALC和ARCH异常病例的特异性相对较低,为70%,每张图像的假阳性为2.25。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel Realization of Cognitive Cells on Film Mammography
High speed detection of breast masses from mammography images at an affordable cost is a problem of practical significance in large volume real-time processing and diagnostic assessments. In this paper, we present a new approach to real-time detection of breast masses by introducing the concept of cognitive cells that has a fully parallel high speed computing architecture realised in a low cost hardware. The prototype system was tested using the Compute Unified Device Architecture (CUDA) that achieved an average speed of 6 ms for processing a single 1024x1024 pixels mammography image. Initial results shows feasibility of using cognitive cells for suspicious breast cancer mass detection in mammograms with superior performances in speed in comparison to other standard methods. We report specificity of 95.25% and the cancer false positives per image as 2.275 for MISC, ASYM, CIRC and SPIC cases, while a relatively lower specificity of 70% and the false positives per image as 2.25 is reported for CALC and ARCH cases of abnormalities.
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