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Neural networks for nodal staging of non-small cell lung cancer with FDG PET and CT: Importance of combining uptake values and sizes of nodes and primary tumor

机译:具有FDG PET和CT的非小细胞肺癌淋巴结分期的神经网络:结合摄取值和淋巴结及原发肿瘤大小的重要性

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Purpose: To evaluate the effect of adding lymph node size to three previously explored artificial neural network (ANN) input parameters (primary tumor maximum standardized uptake value or tumor uptake, tumor size, and nodal uptake at N1, N2, and N3 stations) in the structure of the ANN. The goal was to allow the resulting ANN structure to relate lymph node uptake for size to primary tumor uptake for size in the determination of the status of nodes as human readers do. Materials and Methods: This prospective study was approved by the institutional review board, and informed consent was obtained from all participants. The authors developed a back-propagation ANN with one hidden layer and eight processing units. The data set used to train the network included node and tumor size and uptake from 133 patients with non-small cell lung cancer with surgically proved N status. Statistical analysis was performed with the paired t test. Results: The ANN correctly predicted the N stage in 99.2% of cases, compared with 72.4% for the expert reader (P < .001). In categorization of N0 and N1 versus N2 and N3 disease, the ANN performed with 99.2% accuracy versus 92.2% for the expert reader (P < .001). Conclusion: The ANN is 99.2% accurate in predicting surgical-pathologic nodal status with use of four fluorine 18 fluorodeoxyglucose (FDG) positron emission tomography (PET)/computed tomography (CT)-derived parameters. Malignant and benign inflammatory lymph nodes have overlapping appearances at FDG PET/CT but can be differentiated by ANNs when the crucial input of node size is used.
机译:目的:评估将淋巴结大小增加至先前探索的三个人工神经网络(ANN)输入参数(原发肿瘤最大标准化摄取值或肿瘤摄取,肿瘤大小以及在N1,N2和N3站的淋巴结摄取)的效果。人工神经网络的结构。目的是在确定淋巴结状态时,像人类读者一样,允许最终的ANN结构将淋巴结摄取的大小与原发肿瘤摄取的大小联系起来。材料和方法:这项前瞻性研究已获得机构审查委员会的批准,并获得了所有参与者的知情同意。作者开发了具有一个隐藏层和八个处理单元的反向传播ANN。用于训练网络的数据集包括133例非小细胞肺癌患者的淋巴结和肿瘤大小以及摄取量,这些患者经手术证实为N状态。用配对t检验进行统计学分析。结果:ANN可以正确预测99.2%的患者为N期,而专家阅读器为72.4%(P <.001)。在N0和N1与N2和N3疾病的分类中,ANN的准确率达到99.2%,而专家阅读器的准确率为92.2%(P <.001)。结论:使用四个氟18氟脱氧葡萄糖(FDG)正电子发射断层扫描(PET)/计算机断层扫描(CT)派生的参数,ANN可以准确地预测手术病理结节状态,准确度为99.2%。恶性和良性炎性淋巴结在FDG PET / CT处有重叠的外观,但是当使用关键的淋巴结大小输入时,可以通过人工神经网络加以区分。

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