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Multiscale Mask R-CNN–Based Lung Tumor Detection Using PET Imaging

机译:基于PET成像的多尺度面罩R-CNN肺肿瘤检测

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摘要

Positron emission tomography (PET) imaging serves as one of the most competent methods for the diagnosis of various malignancies, such as lung tumor. However, with an elevation in the utilization of PET scan, radiologists are overburdened considerably. Consequently, a new approach of “computer-aided diagnosis” is being contemplated to curtail the heavy workloads. In this article, we propose a multiscale Mask Region–Based Convolutional Neural Network (Mask R-CNN)–based method that uses PET imaging for the detection of lung tumor. First, we produced 3 models of Mask R-CNN for lung tumor candidate detection. These 3 models were generated by fine-tuning the Mask R-CNN using certain training data that consisted of images from 3 different scales. Each of the training data set included 594 slices with lung tumor. These 3 models of Mask R-CNN models were then integrated using weighted voting strategy to diminish the false-positive outcomes. A total of 134 PET slices were employed as test set in this experiment. The precision, recall, and F score values of our proposed method were 0.90, 1, and 0.95, respectively. Experimental results exhibited strong conviction about the effectiveness of this method in detecting lung tumors, along with the capability of identifying a healthy chest pattern and reducing incorrect identification of tumors to a large extent.
机译:正电子发射断层扫描(PET)成像是诊断各种恶性肿瘤(例如肺肿瘤)的最有效方法之一。然而,随着PET扫描利用的提高,放射线医师负担过重。因此,正在考虑一种新的“计算机辅助诊断”方法来减轻繁重的工作量。在本文中,我们提出了一种基于多尺度基于遮罩区域的卷积神经网络(Mask R-CNN),该方法使用PET成像检测肺部肿瘤。首先,我们制作了3种Mask R-CNN模型用于候选肺肿瘤检测。这3个模型是通过使用某些训练数据(包括3种不同比例的图像)对Mask R-CNN进行微调而生成的。每个训练数据集包括594片患有肺肿瘤的切片。然后使用加权投票策略对这3个Mask R-CNN模型进行集成,以减少假阳性结果。在该实验中,总共使用了134个PET切片作为测试集。我们提出的方法的精度,查全率和F得分分别为0.90、1和0.95。实验结果表明,这种方法可有效地检测出肺部肿瘤,并具有确定健康的胸部模式并在很大程度上减少对肿瘤的错误识别的能力。

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