首页> 外文期刊>Nuclear Medicine Communications >Automated interpretation of PET/CT images in patients with lung cancer.
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Automated interpretation of PET/CT images in patients with lung cancer.

机译:肺癌患者中PET / CT图像的自动解释。

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摘要

PURPOSE: To develop a completely automated method based on image processing techniques and artificial neural networks for the interpretation of combined [(18)F]fluorodeoxyglucose (FDG) positron emission tomography (PET) and computed tomography (CT) images for the diagnosis and staging of lung cancer. METHODS: A total of 87 patients who underwent PET/CT examinations due to suspected lung cancer comprised the training group. The test group consisted of PET/CT images from 49 patients suspected with lung cancer. The consensus interpretations by two experienced physicians were used as the 'gold standard' image interpretation. The training group was used in the development of the automated method. The image processing techniques included algorithms for segmentation of the lungs based on the CT images and detection of lesions in the PET images. Lung boundaries from the CT images were used for localization of lesions in the PET images in the feature extraction process. Eight features from each examination wereused as inputs to artificial neural networks trained to classify the images. Thereafter, the performance of the network was evaluated in the test set. RESULTS: The performance of the automated method measured as the area under the receiver operating characteristic curve, was 0.97 in the test group, with an accuracy of 92%. The sensitivity was 86% at a specificity of 100%. CONCLUSIONS: A completely automated method using artificial neural networks can be used to detect lung cancer with such a high accuracy that the application as a clinical decision support tool appears to have significant potential.
机译:目的:开发一种基于图像处理技术和人工神经网络的全自动方法,以解释[(18)F]氟脱氧葡萄糖(FDG)正电子发射断层扫描(PET)和计算机断层扫描(CT)图像的组合,以进行诊断和分期肺癌。方法:训练组共87例因怀疑肺癌而接受PET / CT检查。测试组由49位怀疑患有肺癌的患者的PET / CT图像组成。两位经验丰富的医生的共识解释被用作“黄金标准”图像解释。培训小组被用于开发自动化方法。图像处理技术包括基于CT图像进行肺分割和PET图像中病变检测的算法。来自CT图像的肺边界用于特征提取过程中PET图像中病变的定位。每次检查的八个特征被用作经过人工训练的人工神经网络的输入,以对图像进行分类。此后,在测试集中评估了网络的性能。结果:在测试组中,以接收器工作特性曲线下的面积衡量的自动化方法的性能为0.97,准确度为92%。灵敏度为86%,特异性为100%。结论:使用人工神经网络的全自动方法可用于检测肺癌,其准确性很高,因此作为临床决策支持工具的应用似乎具有很大的潜力。

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