Lung tumor segmentation methods: Impact on the uncertainty of radiomics features for non-small cell lung cancer.

PURPOSE:To evaluate the uncertainty of radiomics features from contrast-enhanced breath-hold helical CT scans of non-small cell lung cancer for both manual and semi-automatic segmentation due to intra-observer, inter-observer, and inter-software reliability. METHODS:Three radiation oncologists manua...

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Main Authors: Constance A Owens, Christine B Peterson, Chad Tang, Eugene J Koay, Wen Yu, Dennis S Mackin, Jing Li, Mohammad R Salehpour, David T Fuentes, Laurence E Court, Jinzhong Yang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC6171919?pdf=render
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spelling doaj-89be9329dde9478c872bb730160799c22020-11-25T01:52:52ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-011310e020500310.1371/journal.pone.0205003Lung tumor segmentation methods: Impact on the uncertainty of radiomics features for non-small cell lung cancer.Constance A OwensChristine B PetersonChad TangEugene J KoayWen YuDennis S MackinJing LiMohammad R SalehpourDavid T FuentesLaurence E CourtJinzhong YangPURPOSE:To evaluate the uncertainty of radiomics features from contrast-enhanced breath-hold helical CT scans of non-small cell lung cancer for both manual and semi-automatic segmentation due to intra-observer, inter-observer, and inter-software reliability. METHODS:Three radiation oncologists manually delineated lung tumors twice from 10 CT scans using two software tools (3D-Slicer and MIM Maestro). Additionally, three observers without formal clinical training were instructed to use two semi-automatic segmentation tools, Lesion Sizing Toolkit (LSTK) and GrowCut, to delineate the same tumor volumes. The accuracy of the semi-automatic contours was assessed by comparison with physician manual contours using Dice similarity coefficients and Hausdorff distances. Eighty-three radiomics features were calculated for each delineated tumor contour. Informative features were identified based on their dynamic range and correlation to other features. Feature reliability was then evaluated using intra-class correlation coefficients (ICC). Feature range was used to evaluate the uncertainty of the segmentation methods. RESULTS:From the initial set of 83 features, 40 radiomics features were found to be informative, and these 40 features were used in the subsequent analyses. For both intra-observer and inter-observer reliability, LSTK had higher reliability than GrowCut and the two manual segmentation tools. All observers achieved consistently high ICC values when using LSTK, but the ICC value varied greatly for each observer when using GrowCut and the manual segmentation tools. For inter-software reliability, features were not reproducible across the software tools for either manual or semi-automatic segmentation methods. Additionally, no feature category was found to be more reproducible than another feature category. Feature ranges of LSTK contours were smaller than those of manual contours for all features. CONCLUSION:Radiomics features extracted from LSTK contours were highly reliable across and among observers. With semi-automatic segmentation tools, observers without formal clinical training were comparable to physicians in evaluating tumor segmentation.http://europepmc.org/articles/PMC6171919?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Constance A Owens
Christine B Peterson
Chad Tang
Eugene J Koay
Wen Yu
Dennis S Mackin
Jing Li
Mohammad R Salehpour
David T Fuentes
Laurence E Court
Jinzhong Yang
spellingShingle Constance A Owens
Christine B Peterson
Chad Tang
Eugene J Koay
Wen Yu
Dennis S Mackin
Jing Li
Mohammad R Salehpour
David T Fuentes
Laurence E Court
Jinzhong Yang
Lung tumor segmentation methods: Impact on the uncertainty of radiomics features for non-small cell lung cancer.
PLoS ONE
author_facet Constance A Owens
Christine B Peterson
Chad Tang
Eugene J Koay
Wen Yu
Dennis S Mackin
Jing Li
Mohammad R Salehpour
David T Fuentes
Laurence E Court
Jinzhong Yang
author_sort Constance A Owens
title Lung tumor segmentation methods: Impact on the uncertainty of radiomics features for non-small cell lung cancer.
title_short Lung tumor segmentation methods: Impact on the uncertainty of radiomics features for non-small cell lung cancer.
title_full Lung tumor segmentation methods: Impact on the uncertainty of radiomics features for non-small cell lung cancer.
title_fullStr Lung tumor segmentation methods: Impact on the uncertainty of radiomics features for non-small cell lung cancer.
title_full_unstemmed Lung tumor segmentation methods: Impact on the uncertainty of radiomics features for non-small cell lung cancer.
title_sort lung tumor segmentation methods: impact on the uncertainty of radiomics features for non-small cell lung cancer.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description PURPOSE:To evaluate the uncertainty of radiomics features from contrast-enhanced breath-hold helical CT scans of non-small cell lung cancer for both manual and semi-automatic segmentation due to intra-observer, inter-observer, and inter-software reliability. METHODS:Three radiation oncologists manually delineated lung tumors twice from 10 CT scans using two software tools (3D-Slicer and MIM Maestro). Additionally, three observers without formal clinical training were instructed to use two semi-automatic segmentation tools, Lesion Sizing Toolkit (LSTK) and GrowCut, to delineate the same tumor volumes. The accuracy of the semi-automatic contours was assessed by comparison with physician manual contours using Dice similarity coefficients and Hausdorff distances. Eighty-three radiomics features were calculated for each delineated tumor contour. Informative features were identified based on their dynamic range and correlation to other features. Feature reliability was then evaluated using intra-class correlation coefficients (ICC). Feature range was used to evaluate the uncertainty of the segmentation methods. RESULTS:From the initial set of 83 features, 40 radiomics features were found to be informative, and these 40 features were used in the subsequent analyses. For both intra-observer and inter-observer reliability, LSTK had higher reliability than GrowCut and the two manual segmentation tools. All observers achieved consistently high ICC values when using LSTK, but the ICC value varied greatly for each observer when using GrowCut and the manual segmentation tools. For inter-software reliability, features were not reproducible across the software tools for either manual or semi-automatic segmentation methods. Additionally, no feature category was found to be more reproducible than another feature category. Feature ranges of LSTK contours were smaller than those of manual contours for all features. CONCLUSION:Radiomics features extracted from LSTK contours were highly reliable across and among observers. With semi-automatic segmentation tools, observers without formal clinical training were comparable to physicians in evaluating tumor segmentation.
url http://europepmc.org/articles/PMC6171919?pdf=render
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