Disease Staging and Prognosis in Smokers Using Deep Learning in Chest Computed Tomography

被引:214
作者
Gonzalez, German [1 ,2 ]
Ash, Samuel Y. [3 ]
Vegas-Sanchez-Ferrero, Gonzalo [2 ]
Onieva, Jorge Onieva [2 ]
Rahaghi, Farbod N. [3 ]
Ross, James C. [2 ]
Diaz, Alejandro [2 ]
Estepar, Raul San Jose [2 ]
Washko, George R. [3 ]
机构
[1] Sierra Res, Alicante, Spain
[2] Brigham & Womens Hosp, Dept Radiol, Appl Chest Imaging Lab, Boston, MA 02130 USA
[3] Brigham & Womens Hosp, Dept Med, Div Pulm & Crit Care Med, Boston, MA 02130 USA
关键词
artificial intelligence (computer vision systems); neural networks; chronic obstructive pulmonary disease; X-ray computed tomography; OBSTRUCTIVE PULMONARY-DISEASE; GOODNESS-OF-FIT; AIRWAY DIMENSIONS; NEURAL-NETWORKS; EMPHYSEMA; CANCER; COPD; CLASSIFICATION; BRONCHIECTASIS; DIAGNOSIS;
D O I
10.1164/rccm.201705-0860OC
中图分类号
R4 [临床医学];
学科分类号
100218 [急诊医学];
摘要
Rationale: Deep learning is a powerful tool that may allow for improved outcome prediction. Objectives: To determine if deep learning, specifically convolutional neural network (CNN) analysis, could detect and stage chronic obstructive pulmonary disease (COPD) and predict acute respiratory disease (ARD) events and mortality in smokers. Methods: A CNN was trained using computed tomography scans from 7,983 COPDGene participants and evaluated using 1,000 nonoverlapping COPDGene participants and 1,672 ECLIPSE participants. Logistic regression (C statistic and the Hosmer-Lemeshow test) was used to assess COPD diagnosis and ARD prediction. Cox regression (C index and the Greenwood-Nam-D'Agnostino test) was used to assess mortality. Measurements and Main Results: In COPDGene, the C statistic for the detection of COPD was 0.856. A total of 51.1% of participants in COPDGene were accurately staged and 74.95% were within one stage. In ECLIPSE, 29.4% were accurately staged and 74.6% were within one stage. In COPDGene and ECLIPSE, the C statistics for ARD events were 0.64 and 0.55, respectively, and the Hosmer-Lemeshow P values were 0.502 and 0.380, respectively, suggesting no evidence of poor calibration. In COPDGene and ECLIPSE, CNN predicted mortality with fair discrimination (C indices, 0.72 and 0.60, respectively), and without evidence of poor calibration (Greenwood-Nam-D'Agnostino P values, 0.307 and 0.331, respectively). Conclusions: A deep-learning approach that uses only computed tomography imaging data can identify those smokers who have COPD and predict who are most likely to have ARD events and those with the highest mortality. At a population level CNN analysis may be a powerful tool for risk assessment.
引用
收藏
页码:193 / 203
页数:11
相关论文
共 52 条
[1]
[Anonymous], 2017, RADIOLOGY
[2]
[Anonymous], 2012, Advances in neural information processing systems, DOI DOI 10.5555/2999325.2999452
[3]
Ash SY, 2015, CONTROVERSIES COPD, P121, DOI DOI 10.1183/2312508X
[4]
Prediction of Acute Respiratory Disease in Current and Former Smokers With and Without COPD [J].
Bowler, Russell P. ;
Kim, Victor ;
Regan, Elizabeth ;
Williams, Andre A. A. ;
Santorico, Stephanie A. ;
Make, Barry J. ;
Lynch, David A. ;
Hokanson, John E. ;
Washko, George R. ;
Bercz, Peter ;
Soler, Xavier ;
Marchetti, Nathaniel ;
Criner, Gerard J. ;
Ramsdell, Joe ;
Han, MeiLan K. ;
Demeo, Dawn ;
Anzueto, Antonio ;
Comellas, Alejandro ;
Crapo, James D. ;
Dransfield, Mark ;
Wells, J. Michael ;
Hersh, Craig P. ;
MacIntyre, Neil ;
Martinez, Fernando ;
Nath, Hrudaya P. ;
Niewoehner, Dennis ;
Sciurba, Frank ;
Sharafkhaneh, Amir ;
Silverman, Edwin K. ;
van Beek, Edwin J. R. ;
Wilson, Carla ;
Wendt, Christine ;
Wise, Robert A. .
CHEST, 2014, 146 (04) :941-950
[5]
The body-mass index, airflow obstruction, dyspnea, and exercise capacity index in chronic obstructive pulmonary disease [J].
Celli, BR ;
Cote, CG ;
Marin, JM ;
Casanova, C ;
de Oca, MM ;
Mendez, RA ;
Pinto Plata, V ;
Cabral, HJ .
NEW ENGLAND JOURNAL OF MEDICINE, 2004, 350 (10) :1005-1012
[6]
Cook NR, C STAT SURVIVAL DATA
[7]
Airway wall thickness assessed using computed tomography and optical coherence tomography [J].
Coxson, Harvey O. ;
Quiney, Brendan ;
Sin, Don D. ;
Xing, Li ;
McWilliams, Annette M. ;
Mayo, John R. ;
Lam, Stephen .
AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2008, 177 (11) :1201-1206
[8]
The presence and progression of emphysema in COPD as determined by CT scanning and biomarker expression: a prospective analysis from the ECLIPSE study [J].
Coxson, Harvey O. ;
Dirksen, Asger ;
Edwards, Lisa D. ;
Yates, Julie C. ;
Agusti, Alvar ;
Bakke, Per ;
Calverley, Peter M. A. ;
Celli, Bartolome ;
Crim, Courtney ;
Duvoix, Annelyse ;
Fauerbach, Paola Nasute ;
Lomas, David A. ;
MacNee, William ;
Mayer, Ruth J. ;
Miller, Bruce E. ;
Mueller, Nestor L. ;
Rennard, Stephen I. ;
Silverman, Edwin K. ;
Tal-Singer, Ruth ;
Wouters, Emiel F. M. ;
Vestbo, Jorgen .
LANCET RESPIRATORY MEDICINE, 2013, 1 (02) :129-136
[9]
Quantification of idiopathic pulmonary fibrosis using computed tomography and histology [J].
Coxson, HO ;
Hogg, JC ;
Mayo, JR ;
Behzad, H ;
Whittall, KP ;
Schwartz, DA ;
Hartley, PG ;
Galvin, JR ;
Wilson, JS ;
Hunninghake, GW .
AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 1997, 155 (05) :1649-1656
[10]
Projected Cancer Risks From Computed Tomographic Scans Performed in the United States in 2007 [J].
de Gonzalez, Amy Berrington ;
Mahesh, Mahadevappa ;
Kim, Kwang-Pyo ;
Bhargavan, Mythreyi ;
Lewis, Rebecca ;
Mettler, Fred ;
Land, Charles .
ARCHIVES OF INTERNAL MEDICINE, 2009, 169 (22) :2071-2077