Cargando…

A Rapid Segmentation-Insensitive “Digital Biopsy” Method for Radiomic Feature Extraction: Method and Pilot Study Using CT Images of Non–Small Cell Lung Cancer

Quantitative imaging approaches compute features within images' regions of interest. Segmentation is rarely completely automatic, requiring time-consuming editing by experts. We propose a new paradigm, called “digital biopsy,” that allows for the collection of intensity- and texture-based featu...

Descripción completa

Detalles Bibliográficos
Autores principales: Echegaray, Sebastian, Nair, Viswam, Kadoch, Michael, Leung, Ann, Rubin, Daniel, Gevaert, Olivier, Napel, Sandy
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Grapho Publications, LLC 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5466872/
https://www.ncbi.nlm.nih.gov/pubmed/28612050
http://dx.doi.org/10.18383/j.tom.2016.00163
_version_ 1783243168926400512
author Echegaray, Sebastian
Nair, Viswam
Kadoch, Michael
Leung, Ann
Rubin, Daniel
Gevaert, Olivier
Napel, Sandy
author_facet Echegaray, Sebastian
Nair, Viswam
Kadoch, Michael
Leung, Ann
Rubin, Daniel
Gevaert, Olivier
Napel, Sandy
author_sort Echegaray, Sebastian
collection PubMed
description Quantitative imaging approaches compute features within images' regions of interest. Segmentation is rarely completely automatic, requiring time-consuming editing by experts. We propose a new paradigm, called “digital biopsy,” that allows for the collection of intensity- and texture-based features from these regions at least 1 order of magnitude faster than the current manual or semiautomated methods. A radiologist reviewed automated segmentations of lung nodules from 100 preoperative volume computed tomography scans of patients with non–small cell lung cancer, and manually adjusted the nodule boundaries in each section, to be used as a reference standard, requiring up to 45 minutes per nodule. We also asked a different expert to generate a digital biopsy for each patient using a paintbrush tool to paint a contiguous region of each tumor over multiple cross-sections, a procedure that required an average of <3 minutes per nodule. We simulated additional digital biopsies using morphological procedures. Finally, we compared the features extracted from these digital biopsies with our reference standard using intraclass correlation coefficient (ICC) to characterize robustness. Comparing the reference standard segmentations to our digital biopsies, we found that 84/94 features had an ICC >0.7; comparing erosions and dilations, using a sphere of 1.5-mm radius, of our digital biopsies to the reference standard segmentations resulted in 41/94 and 53/94 features, respectively, with ICCs >0.7. We conclude that many intensity- and texture-based features remain consistent between the reference standard and our method while substantially reducing the amount of operator time required.
format Online
Article
Text
id pubmed-5466872
institution National Center for Biotechnology Information
language English
publishDate 2016
publisher Grapho Publications, LLC
record_format MEDLINE/PubMed
spelling pubmed-54668722017-06-11 A Rapid Segmentation-Insensitive “Digital Biopsy” Method for Radiomic Feature Extraction: Method and Pilot Study Using CT Images of Non–Small Cell Lung Cancer Echegaray, Sebastian Nair, Viswam Kadoch, Michael Leung, Ann Rubin, Daniel Gevaert, Olivier Napel, Sandy Tomography Research Articles Quantitative imaging approaches compute features within images' regions of interest. Segmentation is rarely completely automatic, requiring time-consuming editing by experts. We propose a new paradigm, called “digital biopsy,” that allows for the collection of intensity- and texture-based features from these regions at least 1 order of magnitude faster than the current manual or semiautomated methods. A radiologist reviewed automated segmentations of lung nodules from 100 preoperative volume computed tomography scans of patients with non–small cell lung cancer, and manually adjusted the nodule boundaries in each section, to be used as a reference standard, requiring up to 45 minutes per nodule. We also asked a different expert to generate a digital biopsy for each patient using a paintbrush tool to paint a contiguous region of each tumor over multiple cross-sections, a procedure that required an average of <3 minutes per nodule. We simulated additional digital biopsies using morphological procedures. Finally, we compared the features extracted from these digital biopsies with our reference standard using intraclass correlation coefficient (ICC) to characterize robustness. Comparing the reference standard segmentations to our digital biopsies, we found that 84/94 features had an ICC >0.7; comparing erosions and dilations, using a sphere of 1.5-mm radius, of our digital biopsies to the reference standard segmentations resulted in 41/94 and 53/94 features, respectively, with ICCs >0.7. We conclude that many intensity- and texture-based features remain consistent between the reference standard and our method while substantially reducing the amount of operator time required. Grapho Publications, LLC 2016-12 /pmc/articles/PMC5466872/ /pubmed/28612050 http://dx.doi.org/10.18383/j.tom.2016.00163 Text en © 2016 The Authors. Published by Grapho Publications, LLC https://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY 4.0 license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Research Articles
Echegaray, Sebastian
Nair, Viswam
Kadoch, Michael
Leung, Ann
Rubin, Daniel
Gevaert, Olivier
Napel, Sandy
A Rapid Segmentation-Insensitive “Digital Biopsy” Method for Radiomic Feature Extraction: Method and Pilot Study Using CT Images of Non–Small Cell Lung Cancer
title A Rapid Segmentation-Insensitive “Digital Biopsy” Method for Radiomic Feature Extraction: Method and Pilot Study Using CT Images of Non–Small Cell Lung Cancer
title_full A Rapid Segmentation-Insensitive “Digital Biopsy” Method for Radiomic Feature Extraction: Method and Pilot Study Using CT Images of Non–Small Cell Lung Cancer
title_fullStr A Rapid Segmentation-Insensitive “Digital Biopsy” Method for Radiomic Feature Extraction: Method and Pilot Study Using CT Images of Non–Small Cell Lung Cancer
title_full_unstemmed A Rapid Segmentation-Insensitive “Digital Biopsy” Method for Radiomic Feature Extraction: Method and Pilot Study Using CT Images of Non–Small Cell Lung Cancer
title_short A Rapid Segmentation-Insensitive “Digital Biopsy” Method for Radiomic Feature Extraction: Method and Pilot Study Using CT Images of Non–Small Cell Lung Cancer
title_sort rapid segmentation-insensitive “digital biopsy” method for radiomic feature extraction: method and pilot study using ct images of non–small cell lung cancer
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5466872/
https://www.ncbi.nlm.nih.gov/pubmed/28612050
http://dx.doi.org/10.18383/j.tom.2016.00163
work_keys_str_mv AT echegaraysebastian arapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT nairviswam arapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT kadochmichael arapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT leungann arapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT rubindaniel arapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT gevaertolivier arapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT napelsandy arapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT echegaraysebastian rapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT nairviswam rapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT kadochmichael rapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT leungann rapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT rubindaniel rapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT gevaertolivier rapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer
AT napelsandy rapidsegmentationinsensitivedigitalbiopsymethodforradiomicfeatureextractionmethodandpilotstudyusingctimagesofnonsmallcelllungcancer