Advances in Imaging and Automated Quantification of Malignant Pulmonary Diseases: A State-of-the-Art Review

被引:0
作者
Bruno Hochhegger
Matheus Zanon
Stephan Altmayer
Gabriel S. Pacini
Fernanda Balbinot
Martina Z. Francisco
Ruhana Dalla Costa
Guilherme Watte
Marcel Koenigkam Santos
Marcelo C. Barros
Diana Penha
Klaus Irion
Edson Marchiori
机构
[1] Irmandade Santa Casa de Misericórdia de Porto Alegre,LABIMED – Medical Imaging Research Lab, Department of Radiology, Pavilhão, Pereira Filho Hospital
[2] Pontifical Catholic University of Rio Grande do Sul,Department of Imaging
[3] Federal University of Health Sciences of Porto Alegre,Medical Imaging Research Laboratory
[4] Irmandade da Santa Casa de Misericordia de Porto Alegre,Department of Radiology
[5] Ribeirao Preto Medical School,Radiology
[6] Liverpool Heart and Chest Hospital,undefined
[7] Central Manchester University Hospitals NHS Foundation Trust,undefined
[8] Federal University of Rio de Janeiro,undefined
来源
Lung | 2018年 / 196卷
关键词
Lung cancer; Computed tomography; Magnetic resonance imaging; Positron emission tomography;
D O I
暂无
中图分类号
学科分类号
摘要
Quantitative imaging in lung cancer is a rapidly evolving modality in radiology that is changing clinical practice from a qualitative analysis of imaging features to a more dynamic, spatial, and phenotypical characterization of suspected lesions. Some quantitative parameters, such as the use of 18F-FDG PET/CT-derived standard uptake values (SUV), have already been incorporated into current practice as it provides important information for diagnosis, staging, and treatment response of patients with lung cancer. A growing body of evidence is emerging to support the use of quantitative parameters from other modalities. CT-derived volumetric assessment, CT and MRI lung perfusion scans, and diffusion-weighted MRI are some of the examples. Software-assisted technologies are the future of quantitative analyses in order to decrease intra- and inter-observer variability. In the era of “big data”, widespread incorporation of radiomics (extracting quantitative information from medical images by converting them into minable high-dimensional data) will allow medical imaging to surpass its current status quo and provide more accurate histological correlations and prognostic value in lung cancer. This is a comprehensive review of some of the quantitative image methods and computer-aided systems to the diagnosis and follow-up of patients with lung cancer.
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页码:633 / 642
页数:9
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