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Published in: Journal of Digital Imaging 1/2015

01-02-2015

Data-Driven Decision Support for Radiologists: Re-using the National Lung Screening Trial Dataset for Pulmonary Nodule Management

Authors: James J. Morrison, Jason Hostetter, Kenneth Wang, Eliot L. Siegel

Published in: Journal of Imaging Informatics in Medicine | Issue 1/2015

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Abstract

Real-time mining of large research trial datasets enables development of case-based clinical decision support tools. Several applicable research datasets exist including the National Lung Screening Trial (NLST), a dataset unparalleled in size and scope for studying population-based lung cancer screening. Using these data, a clinical decision support tool was developed which matches patient demographics and lung nodule characteristics to a cohort of similar patients. The NLST dataset was converted into Structured Query Language (SQL) tables hosted on a web server, and a web-based JavaScript application was developed which performs real-time queries. JavaScript is used for both the server-side and client-side language, allowing for rapid development of a robust client interface and server-side data layer. Real-time data mining of user-specified patient cohorts achieved a rapid return of cohort cancer statistics and lung nodule distribution information. This system demonstrates the potential of individualized real-time data mining using large high-quality clinical trial datasets to drive evidence-based clinical decision-making.
Literature
3.
go back to reference Aberle DR, DeMello S, Berg CD, Black WC, Brewer B, Church TR, et al: Results of the two incidence screenings in the national lung screening trial. N Engl J Med 369:920–31, 2013PubMedCrossRef Aberle DR, DeMello S, Berg CD, Black WC, Brewer B, Church TR, et al: Results of the two incidence screenings in the national lung screening trial. N Engl J Med 369:920–31, 2013PubMedCrossRef
5.
go back to reference Tota JE, Ramanakumar AV, Franco EL. Lung cancer screening: review and performance comparison under different risk scenarios. Lung 192:55–63, 2014PubMedCrossRef Tota JE, Ramanakumar AV, Franco EL. Lung cancer screening: review and performance comparison under different risk scenarios. Lung 192:55–63, 2014PubMedCrossRef
7.
go back to reference Chen W, Liu J, Chen Q, Li W, Xiong Z, Long X: Bayes analysis in clinical decision-making for solitary pulmonary nodules. Zhong Nan Da Xue Xue Bao Yi Xue Ban 34:401–5, 2009PubMedCrossRef Chen W, Liu J, Chen Q, Li W, Xiong Z, Long X: Bayes analysis in clinical decision-making for solitary pulmonary nodules. Zhong Nan Da Xue Xue Bao Yi Xue Ban 34:401–5, 2009PubMedCrossRef
8.
go back to reference Sesen MB, Nicholson AE, Banares-Alcantara R, Kadir T, Brady M: Bayesian networks for clinical decision support in lung cancer care. PloS one 8:e82349, 2013PubMedCentralPubMedCrossRef Sesen MB, Nicholson AE, Banares-Alcantara R, Kadir T, Brady M: Bayesian networks for clinical decision support in lung cancer care. PloS one 8:e82349, 2013PubMedCentralPubMedCrossRef
9.
go back to reference Raja AS, Ip IK, Prevedello LM, Sodickson AD, Farkas C, Zane RD, et al: Effect of computerized clinical decision support on the use and yield of CT pulmonary angiography in the emergency department. Radiology 262:468–74, 2012PubMedCentralPubMedCrossRef Raja AS, Ip IK, Prevedello LM, Sodickson AD, Farkas C, Zane RD, et al: Effect of computerized clinical decision support on the use and yield of CT pulmonary angiography in the emergency department. Radiology 262:468–74, 2012PubMedCentralPubMedCrossRef
19.
go back to reference Kahn CE, Jr: Artificial intelligence in radiology: decision support systems. Radiographics 14:849–61, 1994PubMedCrossRef Kahn CE, Jr: Artificial intelligence in radiology: decision support systems. Radiographics 14:849–61, 1994PubMedCrossRef
20.
go back to reference Boroczky L, Simpson M, Abe H, Drysdale J: Observer study of a prototype clinical decision support system for breast cancer diagnosis using dynamic contrast-enhanced MRI. AJR American J Roentgenol, 200:277–83, 2013CrossRef Boroczky L, Simpson M, Abe H, Drysdale J: Observer study of a prototype clinical decision support system for breast cancer diagnosis using dynamic contrast-enhanced MRI. AJR American J Roentgenol, 200:277–83, 2013CrossRef
21.
go back to reference Wang KC, Jeanmenne A, Weber GM, Thawait SK, Carrino JA: An online evidence-based decision support system for distinguishing benign from malignant vertebral compression fractures by magnetic resonance imaging feature analysis. J Digit Imaging 24:507–15, 2011PubMedCentralPubMedCrossRef Wang KC, Jeanmenne A, Weber GM, Thawait SK, Carrino JA: An online evidence-based decision support system for distinguishing benign from malignant vertebral compression fractures by magnetic resonance imaging feature analysis. J Digit Imaging 24:507–15, 2011PubMedCentralPubMedCrossRef
Metadata
Title
Data-Driven Decision Support for Radiologists: Re-using the National Lung Screening Trial Dataset for Pulmonary Nodule Management
Authors
James J. Morrison
Jason Hostetter
Kenneth Wang
Eliot L. Siegel
Publication date
01-02-2015
Publisher
Springer US
Published in
Journal of Imaging Informatics in Medicine / Issue 1/2015
Print ISSN: 2948-2925
Electronic ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-014-9720-1

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