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Renal Cell Carcinoma Staging with Learnable Image Histogram-Based Deep Neural Network

机译:基于可学习的图像直方图的深度神经网络进行肾细胞癌分期

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Renal cell carcinoma (RCC) is the seventh most common cancer worldwide, accounting for an estimated 140,000 global deaths annually. An important RCC prognostic predictor is its 'stage' for which the tumor-node-metastasis (TNM) staging system is used. Although TNM staging is performed by radiologists via pre-surgery volumetric medical image analysis, a recent study suggested that such staging may be performed by studying the image features of the RCC from computed tomography (CT) data. Currently TNM staging mostly relies on laborious manual processes based on visual inspection of 2D CT image slices that are time-consuming and subjective; a recent study reported about ~25% misclassification in their patient pools. Recently, we proposed a learnable image histogram based deep neural network approach (ImHist-Net) for RCC grading, which is capable of learning textural features directly from the CT images. In this paper, using a similar architecture, we perform the stage low (Ⅰ/Ⅱ) and high (Ⅲ/Ⅳ) classification for RCC in CT scans. Validated on a clinical CT dataset of f 59 patients from the TCIA database, our method classified RCC low and high stages with about 83% accuracy.
机译:肾细胞癌(RCC)是全球第七大最常见的癌症,估计每年导致全球140,000例死亡。 RCC的重要预后指标是其“阶段”,在此阶段使用了肿瘤淋巴结转移(TNM)分期系统。尽管TNM分期是由放射科医生通过术前体位医学图像分析进行的,但最近的一项研究表明,可以通过根据计算机断层扫描(CT)数据研究RCC的图像特征来进行这种分期。当前,TNM分期主要依靠费时且主观的基于2D CT图像切片的目视检查的费力的手动过程。最近的一项研究报告说,他们的患者群中约有25%错误分类。最近,我们提出了一种基于可学习图像直方图的RCC分级的深度神经网络方法(ImHist-Net),它能够直接从CT图像中学习纹理特征。在本文中,我们使用类似的架构对CT扫描中的RCC进行了阶段低(Ⅰ/Ⅱ)和阶段高(Ⅲ/Ⅳ)分类。我们的方法在TCIA数据库中的f 59例患者的临床CT数据集上进行了验证,对RCC的低,高分期进行了分类,准确率约为83%。

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