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Geometrical features assessment of liver's tumor with application of artificial neural network evolved by imperialist competitive algorithm

机译:帝国主义竞争算法进化的人工神经网络在肝肿瘤几何特征评估中的应用

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Geometrical features of a cancerous tumor embedded in biological soft tissue, including tumor size and depth, are a necessity in the follow-up procedure and making suitable therapeutic decisions. In this paper, a new socio-politically motivated global search strategy which is called imperialist competitive algorithm (ICA) is implemented to train a feed forward neural network (FFNN) to estimate the tumor's geometrical characteristics (FFNNICA). First, a viscoelastic model of liver tissue is constructed by using a series of in vitro uniaxial and relaxation test data. Then, 163 samples of the tissue including a tumor with different depths and diameters are generated by making use of PYTHON programming to link the ABAQUS and MATLAB together. Next, the samples are divided into 123 samples as training dataset and 40 samples as testing dataset. Training inputs of the network are mechanical parameters extracted from palpation of the tissue through a developing noninvasive technology called artificial tactile sensing (ATS). Last, to evaluate the FFNNICA performance, outputs of the network including tumor's depth and diameter are compared with desired values for both training and testing datasets. Deviations of the outputs from desired values are calculated by a regression analysis. Statistical analysis is also performed by measuring Root Mean Square Error (RMSE) and Efficiency (E). RMSE in diameter and depth estimations are 0.50mm and 1.49, respectively, for the testing dataset. Results affirm that the proposed optimization algorithm for training neural network can be useful to characterize soft tissue tumors accurately by employing an artificial palpation approach. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:包埋在生物软组织中的癌性肿瘤的几何特征,包括肿瘤的大小和深度,是后续手术和做出适当治疗决策的必要条件。本文提出了一种新的社会政治动机的全球搜索策略,称为帝国主义竞争算法(ICA),以训练前馈神经网络(FFNN)来估计肿瘤的几何特征(FFNNICA)。首先,通过使用一系列体外单轴和松弛测试数据来构建肝脏组织的粘弹性模型。然后,通过使用PYTHON编程将ABAQUS和MATLAB链接在一起,生成了包括具有不同深度和直径的肿瘤的163个组织样本。接下来,将样本分为123个样本作为训练数据集和40个样本作为测试数据集。网络的训练输入是通过称为人工触觉传感(ATS)的非侵入性技术从组织的触诊中提取的机械参数。最后,为了评估FFNNICA的性能,将网络的输出(包括肿瘤的深度和直径)与训练和测试数据集的期望值进行比较。通过回归分析计算输出与期望值的偏差。还可以通过测量均方根误差(RMSE)和效率(E)进行统计分析。对于测试数据集,RMSE的直径和深度估计分别为0.50mm和1.49。结果证实,所提出的用于训练神经网络的优化算法可通过采用人工触诊方法来准确地表征软组织肿瘤。版权所有(c)2015 John Wiley&Sons,Ltd.

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