Deep Learning-Based Feature Extraction from Whole-Body PET/CT Employing Maximum Intensity Projection Images: Preliminary Results of Lung Cancer Data.

IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Nuclear Medicine and Molecular Imaging Pub Date : 2023-10-01 Epub Date: 2023-04-19 DOI:10.1007/s13139-023-00802-9
Joonhyung Gil, Hongyoon Choi, Jin Chul Paeng, Gi Jeong Cheon, Keon Wook Kang
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引用次数: 0

Abstract

Purpose: Deep learning (DL) has been widely used in various medical imaging analyses. Because of the difficulty in processing volume data, it is difficult to train a DL model as an end-to-end approach using PET volume as an input for various purposes including diagnostic classification. We suggest an approach employing two maximum intensity projection (MIP) images generated by whole-body FDG PET volume to employ pre-trained models based on 2-D images.

Methods: As a retrospective, proof-of-concept study, 562 [18F]FDG PET/CT images and clinicopathological factors of lung cancer patients were collected. MIP images of anterior and lateral views were used as inputs, and image features were extracted by a pre-trained convolutional neural network (CNN) model, ResNet-50. The relationship between the images was depicted on a parametric 2-D axes map using t-distributed stochastic neighborhood embedding (t-SNE), with clinicopathological factors.

Results: A DL-based feature map extracted by two MIP images was embedded by t-SNE. According to the visualization of the t-SNE map, PET images were clustered by clinicopathological features. The representative difference between the clusters of PET patterns according to the posture of a patient was visually identified. This map showed a pattern of clustering according to various clinicopathological factors including sex as well as tumor staging.

Conclusion: A 2-D image-based pre-trained model could extract image patterns of whole-body FDG PET volume by using anterior and lateral views of MIP images bypassing the direct use of 3-D PET volume that requires large datasets and resources. We suggest that this approach could be implemented as a backbone model for various applications for whole-body PET image analyses.

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利用最大强度投影图像从全身PET/CT中提取基于深度学习的特征:癌症数据的初步结果。
目的:深度学习(DL)已广泛应用于各种医学成像分析。由于处理体积数据的困难,很难将DL模型训练为使用PET体积作为输入的端到端方法,用于包括诊断分类在内的各种目的。我们提出了一种使用由全身FDG PET体积生成的两个最大强度投影(MIP)图像来使用基于2-D图像的预训练模型的方法。方法:采用回顾性、概念验证的方法,收集了562[18F]FDG PET/CT图像和癌症患者的临床病理因素。使用前视图和侧视图的MIP图像作为输入,并通过预先训练的卷积神经网络(CNN)模型ResNet-50提取图像特征。使用t分布随机邻域嵌入(t-SNE)在参数二维轴图上描绘了图像之间的关系,并考虑了临床病理因素。结果:t-SNE嵌入了由两幅MIP图像提取的基于DL的特征图。根据t-SNE图的可视化,PET图像根据临床病理特征进行聚类。根据患者的姿势在PET图案簇之间的代表性差异被视觉识别。该图显示了根据各种临床病理因素(包括性别和肿瘤分期)的聚类模式。结论:基于二维图像的预训练模型可以通过MIP图像的前视图和侧视图提取全身FDG PET体积的图像模式,而无需直接使用需要大量数据集和资源的三维PET体积。我们建议,这种方法可以作为全身PET图像分析的各种应用的主干模型来实现。
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来源期刊
Nuclear Medicine and Molecular Imaging
Nuclear Medicine and Molecular Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
2.20
自引率
7.70%
发文量
58
期刊介绍: Nuclear Medicine and Molecular Imaging (Nucl Med Mol Imaging) is an official journal of the Korean Society of Nuclear Medicine, which bimonthly publishes papers on February, April, June, August, October, and December about nuclear medicine and related sciences such as radiochemistry, radiopharmacy, dosimetry and pharmacokinetics / pharmacodynamics of radiopharmaceuticals, nuclear and molecular imaging analysis, nuclear and molecular imaging instrumentation, radiation biology and radionuclide therapy. The journal specially welcomes works of artificial intelligence applied to nuclear medicine. The journal will also welcome original works relating to molecular imaging research such as the development of molecular imaging probes, reporter imaging assays, imaging cell trafficking, imaging endo(exo)genous gene expression, and imaging signal transduction. Nucl Med Mol Imaging publishes the following types of papers: original articles, reviews, case reports, editorials, interesting images, and letters to the editor. The Korean Society of Nuclear Medicine (KSNM) KSNM is a scientific and professional organization founded in 1961 and a member of the Korean Academy of Medical Sciences of the Korean Medical Association which was established by The Medical Services Law. The aims of KSNM are the promotion of nuclear medicine and cooperation of each member. The business of KSNM includes holding academic meetings and symposia, the publication of journals and books, planning and research of promoting science and health, and training and qualification of nuclear medicine specialists.
期刊最新文献
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