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Bag of Bags: Nested Multi Instance Classification for Prostate Cancer Detection

机译:袋装袋装:用于前列腺癌检测的嵌套多实例分类

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Computer-aided detection (CAD) algorithms have been proposed for auto-detection of different types of cancer. CAD algorithms rely on machine learning methods to classify regions of interest in images into cancerous and healthy regions. In cancer screening, the foremost problem to solve is whether a patient has cancer, regardless of the location of cancerous regions in the organ. This allows early detection of the disease leading to a right course of action in terms of treatment to be taken. In machine learning, this problem has been formulated as multi-instance learning (MIL) where bags of instances are classified rather than the individual instances. In this paper, we propose a bag of bags (BoB) nested MIL algorithm where high-level bags (or parent bags), each contains multiple smaller bags of instances. We applied the proposed BoB MIL algorithm to prostate cancer detection problem using magnetic resonance imaging data to first detect which patients have cancer and consequently, to detect which slices in the 3D volume imaging data of the detected patients contain cancerous regions. Experimental results obtained from the imaging data of 30 patients with ground-truth data based on biopsy results show that the proposed algorithm is not only capable of detecting prostate cancer at patient level, it is also able to detect the cancerous regions at slice level of imaging data with high accuracy.
机译:已经提出了用于自动检测不同类型的癌症的计算机辅助检测(CAD)算法。 CAD算法依靠机器学习方法将图像中的感兴趣区域分类为癌变区域和健康区域。在癌症筛查中,要解决的首要问题是患者是否患有癌症,而与器官中癌变区域的位置无关。这样可以及早发现疾病,从而在治疗上采取正确的行动。在机器学习中,此问题已被表述为多实例学习(MIL),其中对实例包进行分类,而不是对单个实例进行分类。在本文中,我们提出了一个袋子袋(BoB)嵌套的MIL算法,其中高级袋子(或父袋子)每个都包含多个较小的实例袋子。我们使用磁共振成像数据将拟议的BoB MIL算法应用于前列腺癌检测问题,首先检测出哪些患者患有癌症,然后检测被检测患者的3D体积成像数据中的哪些切片包含癌变区域。根据活检结果从30例具有真实数据的患者的成像数据中获得的实验结果表明,该算法不仅能够在患者水平上检测前列腺癌,而且还能够在成像的切片水平上检测癌变区域数据精度高。

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