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Artificial Neural Network Based Lung Cancer Detection for PET/CT Images

机译:基于人工神经网络的PET / CT图像肺癌检测

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Background/Objectives: To develop an Artificial Neural Networks (ANN) based Computer Aided Diagnosis system (CAD) using texture and fractal features to detect lung cancer from Positron Emission Tomography/Computed Tomography (PET/CT) images. Methods/Statistical Analysis: Methods such as Wiener filtering and fuzzy image processing were used to suppress noise and improve the contrast respectively in lung PET/CT images. Texture and fractal features were analyzed to extract significant features. ANN with optimal network parameters was designed to train and test the dataset. Total of 1072 training samples and 80 testing samples were used to evaluate the performance of the system. Findings: The proposed fuzzy enhancement played a vital role in improving the detection of lung cancer. 13 significant features were identified (3 texture features and 10 fractal features) for detection of cancerous regions. Proposed method of CAD system yielded better classification accuracy for training and testing with Levenberg-Marquardt back propagation, learning rate = 0.3, momentum = 0.9 and 20 hidden neurons. The training accuracy produced by texture, fractal and combined features were 92.4%, 98.1% and 98.5% respectively. The testing accuracy achieved with the proposed method for texture, fractal and combined features were 91.3%, 95% and 92.5%. Proposed classifier with fractal features yielded a better testing accuracy than texture and combined features. Improvements/Applications: Deep learning algorithms may be implemented to improve the accuracy of the detection. Developed CAD system can act as a decision support system to assist radiologists in lung cancer diagnosis.
机译:背景/目的:开发一种基于人工神经网络(ANN)的计算机辅助诊断系统(CAD),该系统使用纹理和分形特征从正电子发射断层扫描/计算机断层扫描(PET / CT)图像中检测肺癌。方法/统计分析:肺部PET / CT图像分别采用Wiener滤波和模糊图像处理等方法抑制噪声并提高对比度。分析纹理和分形特征以提取重要特征。设计具有最佳网络参数的人工神经网络来训练和测试数据集。总共使用了1072个训练样本和80个测试样本来评估系统的性能。结果:拟议的模糊增强在改善肺癌检测中起着至关重要的作用。确定了13个重要特征(3个纹理特征和10个分形特征)以检测癌变区域。提出的CAD系统方法在Levenberg-Marquardt反向传播,学习率= 0.3,动量= 0.9和20个隐藏神经元的训练和测试中产生了更好的分类精度。由纹理,分形和组合特征产生的训练精度分别为92.4%,98.1%和98.5%。所提出的纹理,分形和组合特征方法的测试精度分别为91.3%,95%和92.5%。提议的具有分形特征的分类器比纹理和组合特征具有更好的测试准确性。改进/应用:可以实施深度学习算法以提高检测的准确性。开发的CAD系统可以用作决策支持系统,以协助放射科医生进行肺癌诊断。

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