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Differential diagnosis of Cervical Lymph Nodes in CT images using modified VGG-Net

机译:使用改进的VGG网CT图像中颈椎淋巴结的鉴别诊断

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Differential diagnosis of benign and malignant cervical lymph nodes (LNs) play an important role in the treatment planning of patients suffering from Head and Neck Cancer. Invasive pathological tests for detecting malignancy are painful and complex procedures. Computed tomography (CT) is a widely used and preferred non-invasive imaging modality for imaging assessment of all types of cancer related diseases. Manual assessment of CT scans is a time consuming and error- prone task. Hence, in this work authors have presented deep learning (DL) based computer-aided detection (CAD) approach for differential diagnosis of benign and malignant cervical LNs. In the proposed approach, VGG-Net is modified using Spatial Squeeze and Excitation (SSE), and residual concept without increasing the computation burden. Further, the inclusion of SSE block at various depths has been also studied. Moreover, a comparative study between the proposed and the state-of-art DL approaches is also presented. The achieved best results are sensitivity = 97.02%, specificity = 92%, accuracy = 96%, and area under curve = 94.22%.
机译:良性和恶性宫颈淋巴结(LNS)的鉴别诊断在患有头颈癌的患者的治疗计划中起重要作用。检测恶性肿瘤的侵袭性病理学测试是痛苦和复杂的程序。计算断层摄影(CT)是广泛使用的和优选的非侵入性成像模型,用于对所有类型的癌症相关疾病进行成像评估。手动评估CT扫描是耗时和错误的任务。因此,在这项工作中,作者提出了基于深度学习(DL)的计算机辅助检测(CAD)鉴别诊断良性和恶性宫颈LNS的方法。在所提出的方法中,使用空间挤压和激励(SSE)和剩余概念来修改VGG-Net,而不会增加计算负担。此外,还研究了在各种深度处包含SSE块。此外,还提出了提出的和最先进的DL方法之间的比较研究。实现的最佳结果是灵敏度= 97.02%,特异性= 92%,精度= 96%,曲线下的面积= 94.22%。

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