Cargando…

Relationship Between Computed Tomography Imaging Features and Clinical Characteristics, Masaoka–Koga Stages, and World Health Organization Histological Classifications of Thymoma

Objectives: Computed tomography (CT) is an important technique for evaluating the condition and prognosis of patients with thymomas, and it provides guidance regarding treatment strategies. However, the correlation between CT imaging features, described using standard report terms, and clinical char...

Descripción completa

Detalles Bibliográficos
Autores principales: Han, Xiaowei, Gao, Wenwen, Chen, Yue, Du, Lei, Duan, Jianghui, Yu, Hongwei, Guo, Runcai, Zhang, Lu, Ma, Guolin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6798238/
https://www.ncbi.nlm.nih.gov/pubmed/31681579
http://dx.doi.org/10.3389/fonc.2019.01041
_version_ 1783459992303566848
author Han, Xiaowei
Gao, Wenwen
Chen, Yue
Du, Lei
Duan, Jianghui
Yu, Hongwei
Guo, Runcai
Zhang, Lu
Ma, Guolin
author_facet Han, Xiaowei
Gao, Wenwen
Chen, Yue
Du, Lei
Duan, Jianghui
Yu, Hongwei
Guo, Runcai
Zhang, Lu
Ma, Guolin
author_sort Han, Xiaowei
collection PubMed
description Objectives: Computed tomography (CT) is an important technique for evaluating the condition and prognosis of patients with thymomas, and it provides guidance regarding treatment strategies. However, the correlation between CT imaging features, described using standard report terms, and clinical characteristics, Masaoka–Koga stages, and World Health Organization (WHO) classifications of patients with thymomas has not been described in detail nor has risk factor analysis been conducted. Methods: Overall, 159 patients with thymomas who underwent preoperative contrast-enhanced CT between September 2011 and December 2018 were retrospectively reviewed. We assessed the clinical information, CT imaging features, and pathological findings for each patient. A total of 89 patients were specially used to evaluate postoperative recurrence or metastasis between September 2011 and December 2015 to obtain an appropriate observation period. The relationship between CT imaging features and clinical characteristics, Masaoka–Koga stage, and WHO histological classification were analyzed, and related risk factors based on CT imaging features were identified. Results: CT imaging features did not significantly differ based on sex or age. Some imaging features demonstrated significant differences between the groups with and without related clinical characteristics. Contour (odds ratio [OR] = 3.711, P = 0.005), abutment ≥50% (OR = 4.277, P = 0.02), and adjacent lung abnormalities (OR = 3.916 P = 0.031) were independent risk factors for relapse or metastasis. Among all imaging features, there were significant differences between stage I/II and III/IV lesions in tumor size, calcification, infiltration of surrounding fat, vascular invasion, pleural nodules, elevated hemidiaphragm, and pulmonary nodules. Tumor size (odds ratio = 1.261, P = 0.014), vascular invasion (OR = 2.526, P = 0.023), pleural nodules (OR = 2.22, P = 0.048), and pulmonary nodules (OR = 3.106, P = 0.006) were identified as independent risk factors. Tumor size, contour, internal density, infiltration of surrounding fat, and pleural effusion significantly differed between low- and high-risk thymomas. Tumor size (OR = 1.183, P = 0.048), contour (OR = 2.288, P = 0.003), internal density (OR = 2.192, P = 0.024), and infiltration of surrounding fat (OR = 2.811 P = 0.005) were independent risk factors. Conclusions: Some CT imaging features demonstrated significant correlations with clinical characteristics, Masaoka–Koga clinical stages, and WHO histological classifications in patients with thymomas. Familiarity with CT features identified as independent risk factors for these related clinical characteristics can facilitate preoperative evaluation and treatment management for the patients with thymoma.
format Online
Article
Text
id pubmed-6798238
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-67982382019-11-01 Relationship Between Computed Tomography Imaging Features and Clinical Characteristics, Masaoka–Koga Stages, and World Health Organization Histological Classifications of Thymoma Han, Xiaowei Gao, Wenwen Chen, Yue Du, Lei Duan, Jianghui Yu, Hongwei Guo, Runcai Zhang, Lu Ma, Guolin Front Oncol Oncology Objectives: Computed tomography (CT) is an important technique for evaluating the condition and prognosis of patients with thymomas, and it provides guidance regarding treatment strategies. However, the correlation between CT imaging features, described using standard report terms, and clinical characteristics, Masaoka–Koga stages, and World Health Organization (WHO) classifications of patients with thymomas has not been described in detail nor has risk factor analysis been conducted. Methods: Overall, 159 patients with thymomas who underwent preoperative contrast-enhanced CT between September 2011 and December 2018 were retrospectively reviewed. We assessed the clinical information, CT imaging features, and pathological findings for each patient. A total of 89 patients were specially used to evaluate postoperative recurrence or metastasis between September 2011 and December 2015 to obtain an appropriate observation period. The relationship between CT imaging features and clinical characteristics, Masaoka–Koga stage, and WHO histological classification were analyzed, and related risk factors based on CT imaging features were identified. Results: CT imaging features did not significantly differ based on sex or age. Some imaging features demonstrated significant differences between the groups with and without related clinical characteristics. Contour (odds ratio [OR] = 3.711, P = 0.005), abutment ≥50% (OR = 4.277, P = 0.02), and adjacent lung abnormalities (OR = 3.916 P = 0.031) were independent risk factors for relapse or metastasis. Among all imaging features, there were significant differences between stage I/II and III/IV lesions in tumor size, calcification, infiltration of surrounding fat, vascular invasion, pleural nodules, elevated hemidiaphragm, and pulmonary nodules. Tumor size (odds ratio = 1.261, P = 0.014), vascular invasion (OR = 2.526, P = 0.023), pleural nodules (OR = 2.22, P = 0.048), and pulmonary nodules (OR = 3.106, P = 0.006) were identified as independent risk factors. Tumor size, contour, internal density, infiltration of surrounding fat, and pleural effusion significantly differed between low- and high-risk thymomas. Tumor size (OR = 1.183, P = 0.048), contour (OR = 2.288, P = 0.003), internal density (OR = 2.192, P = 0.024), and infiltration of surrounding fat (OR = 2.811 P = 0.005) were independent risk factors. Conclusions: Some CT imaging features demonstrated significant correlations with clinical characteristics, Masaoka–Koga clinical stages, and WHO histological classifications in patients with thymomas. Familiarity with CT features identified as independent risk factors for these related clinical characteristics can facilitate preoperative evaluation and treatment management for the patients with thymoma. Frontiers Media S.A. 2019-10-11 /pmc/articles/PMC6798238/ /pubmed/31681579 http://dx.doi.org/10.3389/fonc.2019.01041 Text en Copyright © 2019 Han, Gao, Chen, Du, Duan, Yu, Guo, Zhang and Ma. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Han, Xiaowei
Gao, Wenwen
Chen, Yue
Du, Lei
Duan, Jianghui
Yu, Hongwei
Guo, Runcai
Zhang, Lu
Ma, Guolin
Relationship Between Computed Tomography Imaging Features and Clinical Characteristics, Masaoka–Koga Stages, and World Health Organization Histological Classifications of Thymoma
title Relationship Between Computed Tomography Imaging Features and Clinical Characteristics, Masaoka–Koga Stages, and World Health Organization Histological Classifications of Thymoma
title_full Relationship Between Computed Tomography Imaging Features and Clinical Characteristics, Masaoka–Koga Stages, and World Health Organization Histological Classifications of Thymoma
title_fullStr Relationship Between Computed Tomography Imaging Features and Clinical Characteristics, Masaoka–Koga Stages, and World Health Organization Histological Classifications of Thymoma
title_full_unstemmed Relationship Between Computed Tomography Imaging Features and Clinical Characteristics, Masaoka–Koga Stages, and World Health Organization Histological Classifications of Thymoma
title_short Relationship Between Computed Tomography Imaging Features and Clinical Characteristics, Masaoka–Koga Stages, and World Health Organization Histological Classifications of Thymoma
title_sort relationship between computed tomography imaging features and clinical characteristics, masaoka–koga stages, and world health organization histological classifications of thymoma
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6798238/
https://www.ncbi.nlm.nih.gov/pubmed/31681579
http://dx.doi.org/10.3389/fonc.2019.01041
work_keys_str_mv AT hanxiaowei relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma
AT gaowenwen relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma
AT chenyue relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma
AT dulei relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma
AT duanjianghui relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma
AT yuhongwei relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma
AT guoruncai relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma
AT zhanglu relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma
AT maguolin relationshipbetweencomputedtomographyimagingfeaturesandclinicalcharacteristicsmasaokakogastagesandworldhealthorganizationhistologicalclassificationsofthymoma