Cargando…

An Architecture for Computer-Aided Detection and Radiologic Measurement of Lung Nodules in Clinical Trials

Computer tomography (CT) imaging plays an important role in cancer detection and quantitative assessment in clinical trials. High-resolution imaging studies on large cohorts of patients generate vast data sets, which are infeasible to analyze through manual interpretation. In this article we describ...

Descripción completa

Detalles Bibliográficos
Autores principales: Brown, Matthew S, Pais, Richard, Qing, Peiyuan, Shah, Sumit, McNitt-Gray, Michael F, Goldin, Jonathan G, Petkovska, Iva, Tran, Lien, Aberle, Denise R
Formato: Texto
Lenguaje:English
Publicado: Libertas Academica 2007
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2666948/
https://www.ncbi.nlm.nih.gov/pubmed/19390662
_version_ 1782166089553149952
author Brown, Matthew S
Pais, Richard
Qing, Peiyuan
Shah, Sumit
McNitt-Gray, Michael F
Goldin, Jonathan G
Petkovska, Iva
Tran, Lien
Aberle, Denise R
author_facet Brown, Matthew S
Pais, Richard
Qing, Peiyuan
Shah, Sumit
McNitt-Gray, Michael F
Goldin, Jonathan G
Petkovska, Iva
Tran, Lien
Aberle, Denise R
author_sort Brown, Matthew S
collection PubMed
description Computer tomography (CT) imaging plays an important role in cancer detection and quantitative assessment in clinical trials. High-resolution imaging studies on large cohorts of patients generate vast data sets, which are infeasible to analyze through manual interpretation. In this article we describe a comprehensive architecture for computer-aided detection (CAD) and surveillance on lung nodules in CT images. Central to this architecture are the analytic components: an automated nodule detection system, nodule tracking capabilities and volume measurement, which are integrated within a data management system that includes mechanisms for receiving and archiving images, a database for storing quantitative nodule measurements and visualization, and reporting tools. We describe two studies to evaluate CAD technology within this architecture, and the potential application in large clinical trials. The first study involves performance assessment of an automated nodule detection system and its ability to increase radiologist sensitivity when used to provide a second opinion. The second study investigates nodule volume measurements on CT made using a semi-automated technique and shows that volumetric analysis yields significantly different tumor response classifications than a 2D diameter approach. These studies demonstrate the potential of automated CAD tools to assist in quantitative image analysis for clinical trials.
format Text
id pubmed-2666948
institution National Center for Biotechnology Information
language English
publishDate 2007
publisher Libertas Academica
record_format MEDLINE/PubMed
spelling pubmed-26669482009-04-22 An Architecture for Computer-Aided Detection and Radiologic Measurement of Lung Nodules in Clinical Trials Brown, Matthew S Pais, Richard Qing, Peiyuan Shah, Sumit McNitt-Gray, Michael F Goldin, Jonathan G Petkovska, Iva Tran, Lien Aberle, Denise R Cancer Inform Special Issue-Imaging Informatics Computer tomography (CT) imaging plays an important role in cancer detection and quantitative assessment in clinical trials. High-resolution imaging studies on large cohorts of patients generate vast data sets, which are infeasible to analyze through manual interpretation. In this article we describe a comprehensive architecture for computer-aided detection (CAD) and surveillance on lung nodules in CT images. Central to this architecture are the analytic components: an automated nodule detection system, nodule tracking capabilities and volume measurement, which are integrated within a data management system that includes mechanisms for receiving and archiving images, a database for storing quantitative nodule measurements and visualization, and reporting tools. We describe two studies to evaluate CAD technology within this architecture, and the potential application in large clinical trials. The first study involves performance assessment of an automated nodule detection system and its ability to increase radiologist sensitivity when used to provide a second opinion. The second study investigates nodule volume measurements on CT made using a semi-automated technique and shows that volumetric analysis yields significantly different tumor response classifications than a 2D diameter approach. These studies demonstrate the potential of automated CAD tools to assist in quantitative image analysis for clinical trials. Libertas Academica 2007-05-12 /pmc/articles/PMC2666948/ /pubmed/19390662 Text en © 2007 The authors. http://creativecommons.org/licenses/by/3.0 This article is an open-access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/).
spellingShingle Special Issue-Imaging Informatics
Brown, Matthew S
Pais, Richard
Qing, Peiyuan
Shah, Sumit
McNitt-Gray, Michael F
Goldin, Jonathan G
Petkovska, Iva
Tran, Lien
Aberle, Denise R
An Architecture for Computer-Aided Detection and Radiologic Measurement of Lung Nodules in Clinical Trials
title An Architecture for Computer-Aided Detection and Radiologic Measurement of Lung Nodules in Clinical Trials
title_full An Architecture for Computer-Aided Detection and Radiologic Measurement of Lung Nodules in Clinical Trials
title_fullStr An Architecture for Computer-Aided Detection and Radiologic Measurement of Lung Nodules in Clinical Trials
title_full_unstemmed An Architecture for Computer-Aided Detection and Radiologic Measurement of Lung Nodules in Clinical Trials
title_short An Architecture for Computer-Aided Detection and Radiologic Measurement of Lung Nodules in Clinical Trials
title_sort architecture for computer-aided detection and radiologic measurement of lung nodules in clinical trials
topic Special Issue-Imaging Informatics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2666948/
https://www.ncbi.nlm.nih.gov/pubmed/19390662
work_keys_str_mv AT brownmatthews anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT paisrichard anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT qingpeiyuan anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT shahsumit anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT mcnittgraymichaelf anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT goldinjonathang anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT petkovskaiva anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT tranlien anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT aberledeniser anarchitectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT brownmatthews architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT paisrichard architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT qingpeiyuan architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT shahsumit architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT mcnittgraymichaelf architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT goldinjonathang architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT petkovskaiva architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT tranlien architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials
AT aberledeniser architectureforcomputeraideddetectionandradiologicmeasurementoflungnodulesinclinicaltrials