基于卷积神经网络的PET图像前列腺内肿瘤分割新方法

Oona Rainio, Jari Lahti, Mikael Anttinen, Otto Ettala, Marko Seppänen, Peter Boström, Jukka Kemppainen, Riku Klén
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引用次数: 1

摘要

摘要目的介绍了一种利用卷积神经网络(CNN)对高危原发性前列腺癌患者的二维正电子发射断层扫描(PET)图像进行自动肿瘤分割的新方法。我们比较了三种不同的方法,包括:(1)使用CNN进行常规图像分割,该方法将连续输出转换为具有恒定阈值的二值标签;(2)我们的新技术,使用CNN为每个图像PET切片选择单独的阈值,直接从PET切片中标记像素;(3)基于使用第二个CNN选择最佳阈值来转换第一个CNN输出的两种方法的结合。cnn通过使用78名前列腺癌患者的PET图像的864片数据集进行多次训练和测试。根据我们的结果,根据第二种方法的预测计算出的Dice分数在统计学上高于典型的图像分割(p -value<0.002)。结论选择独特阈值将PET切片像素直接转换为二值肿瘤掩模的新方法不仅速度更快,计算效率更高,而且效果更好。
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New method of using a convolutional neural network for 2D intraprostatic tumor segmentation from PET images
Abstract Purpose A new method of using a convolutional neural network (CNN) to perform automatic tumor segmentation from two-dimensional transaxial slices of positron emission tomography (PET) images of high-risk primary prostate cancer patients is introduced. Methods We compare three different methods including (1) usual image segmentation with a CNN whose continuous output is converted to binary labels with a constant threshold, (2) our new technique of choosing separate thresholds for each image PET slice with a CNN to label the pixels directly from the PET slices, and (3) the combination of the two former methods based on using the second CNN to choose the optimal thresholds to convert the output of the first CNN. The CNNs are trained and tested multiple times by using a data set of 864 slices from the PET images of 78 prostate cancer patients. Results According to our results, the Dice scores computed from the predictions of the second method are statistically higher than those of the typical image segmentation ( p -value<0.002). Conclusion The new method of choosing unique thresholds to convert the pixels of the PET slices directly into binary tumor masks is not only faster and more computationally efficient but also yields better results.
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来源期刊
Research on Biomedical Engineering
Research on Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
3.30
自引率
0.00%
发文量
56
期刊介绍: Research on Biomedical Engineering (ISSN Online 2446-4740; ISSN Print 2446-4732) is dedicated to publishing research in all fields of Biomedical Engineering. This multidisciplinary journal is aimed at readers and authors with an interest in using or developing tools based on the engineering and physical sciences to understand and solve problems in the biological and medical sciences. The journal is open to contributions in the following topics, including but not restricted to: Biomedical instrumentation, Biomechanics, Biorobotics, Rehabilitation engineering and assistive technologies, Applied engineering in neurology and neuroscience, Biomedical signal processing, Modelling of physiological systems, Cardiovascular and respiratory systems, Muscular and nervous systems, Use of laser, ultrasound and radiation in health, Medical imaging, Education and biomedical engineering, forensic, Clinical engineering, Metrology and biomedical engineering, Health technology, Health informatics and telemedicine, Biotechnology, Artificial organs, implants and biomaterials, Proteomics, genomics and bioinformatics.
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