Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary Nodules

ObjectivesThis study aimed to develop radiomic models based on low-dose CT (LDCT) and standard-dose CT to distinguish adenocarcinomas from benign lesions in patients with solid solitary pulmonary nodules and compare the performance among these radiomic models and Lung CT Screening Reporting and Data...

Full description

Bibliographic Details
Main Authors: Jieke Liu, Hao Xu, Haomiao Qing, Yong Li, Xi Yang, Changjiu He, Jing Ren, Peng Zhou
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-02-01
Series:Frontiers in Oncology
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fonc.2020.634298/full
id doaj-545dc99876844ebba2ea8d8d77f819c9
record_format Article
spelling doaj-545dc99876844ebba2ea8d8d77f819c92021-02-02T05:24:09ZengFrontiers Media S.A.Frontiers in Oncology2234-943X2021-02-011010.3389/fonc.2020.634298634298Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary NodulesJieke LiuHao XuHaomiao QingYong LiXi YangChangjiu HeJing RenPeng ZhouObjectivesThis study aimed to develop radiomic models based on low-dose CT (LDCT) and standard-dose CT to distinguish adenocarcinomas from benign lesions in patients with solid solitary pulmonary nodules and compare the performance among these radiomic models and Lung CT Screening Reporting and Data System (Lung-RADS). The reproducibility of radiomic features between LDCT and standard-dose CT were also evaluated.MethodsA total of 141 consecutive pathologically confirmed solid solitary pulmonary nodules were enrolled including 50 adenocarcinomas and 48 benign nodules in primary cohort and 22 adenocarcinomas and 21 benign nodules in validation cohort. LDCT and standard-dose CT scans were conducted using same acquisition parameters and reconstruction method except for radiation dose. All nodules were automatically segmented and 104 original radiomic features were extracted. The concordance correlation coefficient was used to quantify reproducibility of radiomic features between LDCT and standard-dose CT. Radiomic features were selected to build radiomic signature, and clinical characteristics and radiomic signature were combined to develop radiomic nomogram for LDCT and standard-dose CT, respectively. The performance of radiomic models and Lung-RADS was assessed by area under curve (AUC) of receiver operating characteristic curve, sensitivity, and specificity.ResultsShape and first order features, and neighboring gray tone difference matrix features were highly reproducible between LDCT and standard-dose CT. No significant differences of AUCs were found among radiomic signature and nomogram of LDCT and standard-dose CT in both primary and validation cohort (0.915 vs. 0.919 vs. 0.898 vs. 0.909 and 0.976 vs. 0.976 vs. 0.985 vs. 0.987, respectively). These radiomic models had higher specificity than Lung-RADS (all correct P < 0.05), while there were no significant differences of sensitivity between Lung-RADS and radiomic models.ConclusionsThe diagnostic performance of LDCT-based radiomic models to differentiate adenocarcinomas from benign lesions in solid pulmonary nodules were equivalent to that of standard-dose CT. The LDCT-based radiomic model with higher specificity and lower false-positive rate than Lung-RADS might help reduce overdiagnosis and overtreatment of solid pulmonary nodules in lung cancer screening.https://www.frontiersin.org/articles/10.3389/fonc.2020.634298/fullradiomicslow-dose computed tomographylung cancer screeninglung adenocarcinomabenign lesionsolid pulmonary nodule
collection DOAJ
language English
format Article
sources DOAJ
author Jieke Liu
Hao Xu
Haomiao Qing
Yong Li
Xi Yang
Changjiu He
Jing Ren
Peng Zhou
spellingShingle Jieke Liu
Hao Xu
Haomiao Qing
Yong Li
Xi Yang
Changjiu He
Jing Ren
Peng Zhou
Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary Nodules
Frontiers in Oncology
radiomics
low-dose computed tomography
lung cancer screening
lung adenocarcinoma
benign lesion
solid pulmonary nodule
author_facet Jieke Liu
Hao Xu
Haomiao Qing
Yong Li
Xi Yang
Changjiu He
Jing Ren
Peng Zhou
author_sort Jieke Liu
title Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary Nodules
title_short Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary Nodules
title_full Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary Nodules
title_fullStr Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary Nodules
title_full_unstemmed Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary Nodules
title_sort comparison of radiomic models based on low-dose and standard-dose ct for prediction of adenocarcinomas and benign lesions in solid pulmonary nodules
publisher Frontiers Media S.A.
series Frontiers in Oncology
issn 2234-943X
publishDate 2021-02-01
description ObjectivesThis study aimed to develop radiomic models based on low-dose CT (LDCT) and standard-dose CT to distinguish adenocarcinomas from benign lesions in patients with solid solitary pulmonary nodules and compare the performance among these radiomic models and Lung CT Screening Reporting and Data System (Lung-RADS). The reproducibility of radiomic features between LDCT and standard-dose CT were also evaluated.MethodsA total of 141 consecutive pathologically confirmed solid solitary pulmonary nodules were enrolled including 50 adenocarcinomas and 48 benign nodules in primary cohort and 22 adenocarcinomas and 21 benign nodules in validation cohort. LDCT and standard-dose CT scans were conducted using same acquisition parameters and reconstruction method except for radiation dose. All nodules were automatically segmented and 104 original radiomic features were extracted. The concordance correlation coefficient was used to quantify reproducibility of radiomic features between LDCT and standard-dose CT. Radiomic features were selected to build radiomic signature, and clinical characteristics and radiomic signature were combined to develop radiomic nomogram for LDCT and standard-dose CT, respectively. The performance of radiomic models and Lung-RADS was assessed by area under curve (AUC) of receiver operating characteristic curve, sensitivity, and specificity.ResultsShape and first order features, and neighboring gray tone difference matrix features were highly reproducible between LDCT and standard-dose CT. No significant differences of AUCs were found among radiomic signature and nomogram of LDCT and standard-dose CT in both primary and validation cohort (0.915 vs. 0.919 vs. 0.898 vs. 0.909 and 0.976 vs. 0.976 vs. 0.985 vs. 0.987, respectively). These radiomic models had higher specificity than Lung-RADS (all correct P < 0.05), while there were no significant differences of sensitivity between Lung-RADS and radiomic models.ConclusionsThe diagnostic performance of LDCT-based radiomic models to differentiate adenocarcinomas from benign lesions in solid pulmonary nodules were equivalent to that of standard-dose CT. The LDCT-based radiomic model with higher specificity and lower false-positive rate than Lung-RADS might help reduce overdiagnosis and overtreatment of solid pulmonary nodules in lung cancer screening.
topic radiomics
low-dose computed tomography
lung cancer screening
lung adenocarcinoma
benign lesion
solid pulmonary nodule
url https://www.frontiersin.org/articles/10.3389/fonc.2020.634298/full
work_keys_str_mv AT jiekeliu comparisonofradiomicmodelsbasedonlowdoseandstandarddosectforpredictionofadenocarcinomasandbenignlesionsinsolidpulmonarynodules
AT haoxu comparisonofradiomicmodelsbasedonlowdoseandstandarddosectforpredictionofadenocarcinomasandbenignlesionsinsolidpulmonarynodules
AT haomiaoqing comparisonofradiomicmodelsbasedonlowdoseandstandarddosectforpredictionofadenocarcinomasandbenignlesionsinsolidpulmonarynodules
AT yongli comparisonofradiomicmodelsbasedonlowdoseandstandarddosectforpredictionofadenocarcinomasandbenignlesionsinsolidpulmonarynodules
AT xiyang comparisonofradiomicmodelsbasedonlowdoseandstandarddosectforpredictionofadenocarcinomasandbenignlesionsinsolidpulmonarynodules
AT changjiuhe comparisonofradiomicmodelsbasedonlowdoseandstandarddosectforpredictionofadenocarcinomasandbenignlesionsinsolidpulmonarynodules
AT jingren comparisonofradiomicmodelsbasedonlowdoseandstandarddosectforpredictionofadenocarcinomasandbenignlesionsinsolidpulmonarynodules
AT pengzhou comparisonofradiomicmodelsbasedonlowdoseandstandarddosectforpredictionofadenocarcinomasandbenignlesionsinsolidpulmonarynodules
_version_ 1724303719962509312