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A new computer-based decision-support system for the interpretation of bone scans.

机译:一种新的基于计算机的决策支持系统,用于解释骨扫描。

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OBJECTIVE: To develop a completely automated method, based on image processing techniques and artificial neural networks, for the interpretation of bone scans regarding the presence or absence of metastases. METHODS: A total of 200 patients, all of whom had the diagnosis of breast or prostate cancer and had undergone bone scintigraphy, were studied retrospectively. Whole-body images, anterior and posterior, were obtained after injection of 99mTc-methylene diphosphonate. The study material was randomly divided into a training group and a test group, with 100 patients in each group. The training group was used in the process of developing the image analysis techniques and to train the artificial neural networks. The test group was used to evaluate the automated method. The image processing techniques included algorithms for segmentation of the head, chest, spine, pelvis and bladder, automatic thresholding and detection of hot spots. Fourteen features from each examination were used as input to artificialneural networks trained to classify the images. The interpretations by an experienced physician were used as the 'gold standard'. RESULTS: The automated method correctly identified 28 of the 31 patients with metastases in the test group, i.e., a sensitivity of 90%. A false positive classification of metastases was made in 18 of the 69 patients not classified as having metastases by the experienced physician, resulting in a specificity of 74%. CONCLUSION: A completely automated method can be used to detect metastases in bone scans. Future developments in this field may lead to clinically valuable decision-support tools.
机译:目的:基于图像处理技术和人工神经网络,开发一种完全自动化的方法来解释有关是否存在转移的骨扫描。方法:回顾性分析200例确诊为乳腺癌或前列腺癌并接受了骨闪烁显像的患者。注射99mTc-亚甲基二膦酸酯后,获得前后的全身图像。研究材料随机分为训练组和测试组,每组100名患者。该培训小组用于开发图像分析技术和训练人工神经网络的过程中。测试组用于评估自动化方法。图像处理技术包括用于分割头部,胸部,脊柱,骨盆和膀胱,自动阈值化和检测热点的算法。每次检查的14个特征被用作训练对图像进行分类的人工神经网络的输入。经验丰富的医生的解释被用作“黄金标准”。结果:自动化方法正确地识别了测试组的31例转移患者中的28例,即敏感性为90%。在有经验的医师未归类为具有转移的69位患者中,有18位对转移进行了假阳性分类,特异性为74%。结论:可以使用一种完全自动化的方法来检测骨扫描中的转移。该领域的未来发展可能会产生具有临床价值的决策支持工具。

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