| Literature DB >> 19390662 |
Matthew S Brown1, Richard Pais, Peiyuan Qing, Sumit Shah, Michael F McNitt-Gray, Jonathan G Goldin, Iva Petkovska, Lien Tran, Denise R Aberle.
Abstract
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.Entities:
Keywords: “CT”; “Computer-Aided Diagnosis”; “Lung Nodules”
Year: 2007 PMID: 19390662 PMCID: PMC2666948
Source DB: PubMed Journal: Cancer Inform ISSN: 1176-9351
Figure 1Overview of data model for image, CAD and quantitative data in a clinical trials setting.
Figure 2(a) Original CT image of the right lung. (b) Result of attenuation thresholding in the lung field, with ROIs corresponding to blood vessels and pulmonary nodule in gray. (c) Automatically detected nodule (gray with arrow) following classification step.
Figure 33D rendering of a pulmonary nodule and blood vessels adjacent to the pleural surface.
Figure 4Report from CAD measurement system showing diameter and volume measurements and percentage changes from baseline. From these changes disease stability or progression is determined.