Clinical Impact and Generalizability of a Computer-Assisted Diagnostic Tool to Risk-Stratify Lung Nodules With CT

被引:16
作者
Adams, Scott J. [1 ,2 ]
Madtes, David K. [3 ]
Burbridge, Brent [1 ]
Johnston, Josiah [4 ]
Goldberg, Ilya G. [4 ]
Siegel, Eliot L. [5 ,6 ,7 ]
Babyn, Paul [1 ,8 ]
Nair, Viswam S. [3 ,9 ]
Calhoun, Michael E. [4 ]
机构
[1] Univ Saskatchewan, Dept Med Imaging, Saskatoon, SK, Canada
[2] Natl Med Imaging Clin, Saskatoon, SK, Canada
[3] Fred Hutchinson Canc Res Ctr, Clin Res Div, Seattle, WA USA
[4] RevealDx, 500 Yale Ave N, Suite 100, Seattle, WA 98109 USA
[5] Univ Maryland, Dept Diagnost Radiol, Sch Med, Baltimore, MD USA
[6] Vet Affairs Maryland Healthcare Syst, Radiol & Nucl Med, Baltimore, MD USA
[7] Amer Coll Radiol, Reston, VA USA
[8] Prov Programs Saskatchewan Hlth Author, Saskatoon, SK, Canada
[9] Univ Washington, Div Pulm Crit Care & Sleep Med, Sch Med, Seattle, WA USA
关键词
Artificial intelligence; CT; lung cancer; pulmonary nodule; radiomics; PULMONARY NODULES; ARTIFICIAL-INTELLIGENCE; CANCER; PROBABILITY; MANAGEMENT; RADIOMICS; TRENDS; RADS;
D O I
10.1016/j.jacr.2022.08.006
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Objective: To evaluate whether an imaging classifier for radiology practice can improve lung nodule classification and follow-up. Methods: A machine learning classifier was developed and trained using imaging data from the National Lung Screening Trial (NSLT) to produce a malignancy risk score (malignancy Similarity Index [mSI]) for individual lung nodules. In addition to NLST cohorts, external cohorts were developed from a tertiary referral lung cancer screening program data set and an external nonscreening data set of all nodules detected on CT. Performance of the mSI combined with Lung-RADS was compared with Lung-RADS alone and the Mayo and Brock risk calculators.Results: We analyzed 963 subjects and 1,331 nodules across these cohorts. The mSI was comparable in accuracy (area under the curve = 0.89) to existing clinical risk models (area under the curve = 0.86-0.88) and independently predictive in the NLST cohort of 704 nodules. When compared with Lung-RADS, the mSI significantly increased sensitivity across all cohorts (25%-117%), with sig-nificant increases in specificity in the screening cohorts (17%-33%). When used in conjunction with Lung-RADS, use of mSI would result in earlier diagnoses and reduced follow-up across cohorts, including the potential for early diagnosis in 42% of malignant NLST nodules from prior-year CT scans.Conclusion: A computer-assisted diagnosis software improved risk classification from chest CTs of screening and incidentally detected lung nodules compared with Lung-RADS. mSI added predictive value independent of existing radiological and clinical variables. These results suggest the generalizability and potential clinical impact of a tool that is straightforward to implement in practice.
引用
收藏
页码:232 / 242
页数:11
相关论文
共 46 条
[1]   Reduced Lung-Cancer Mortality with Low-Dose Computed Tomographic Screening [J].
Aberle, Denise R. ;
Adams, Amanda M. ;
Berg, Christine D. ;
Black, William C. ;
Clapp, Jonathan D. ;
Fagerstrom, Richard M. ;
Gareen, Ilana F. ;
Gatsonis, Constantine ;
Marcus, Pamela M. ;
Sicks, JoRean D. .
NEW ENGLAND JOURNAL OF MEDICINE, 2011, 365 (05) :395-409
[2]   Development and Cost Analysis of a Lung Nodule Management Strategy Combining Artificial Intelligence and Lung-RADS for Baseline Lung Cancer Screening [J].
Adams, Scott J. ;
Mondal, Prosanta ;
Penz, Erika ;
Tyan, Chung-Chun ;
Lim, Hyun ;
Babyn, Paul .
JOURNAL OF THE AMERICAN COLLEGE OF RADIOLOGY, 2021, 18 (05) :741-751
[3]   Diagnostic accuracy of deep learning in medical imaging: a systematic review and meta-analysis [J].
Aggarwal, Ravi ;
Sounderajah, Viknesh ;
Martin, Guy ;
Ting, Daniel S. W. ;
Karthikesalingam, Alan ;
King, Dominic ;
Ashrafian, Hutan ;
Darzi, Ara .
NPJ DIGITAL MEDICINE, 2021, 4 (01)
[4]   POINTS OF SIGNIFICANCE Ensemble methods: bagging and random forests [J].
Altman, Naomi ;
Krzywinski, Martin .
NATURE METHODS, 2017, 14 (10) :933-934
[5]  
American College of Radiology, LUNG RADS VERS 1 1 A
[6]   World Medical Association Declaration of Helsinki Ethical Principles for Medical Research Involving Human Subjects [J].
JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2013, 310 (20) :2191-2194
[7]   End-to-end lung cancer screening with three-dimensional deep learning on low-dose chest computed tomography [J].
Ardila, Diego ;
Kiraly, Atilla P. ;
Bharadwaj, Sujeeth ;
Choi, Bokyung ;
Reicher, Joshua J. ;
Peng, Lily ;
Tse, Daniel ;
Etemadi, Mozziyar ;
Ye, Wenxing ;
Corrado, Greg ;
Naidich, David P. ;
Shetty, Shravya .
NATURE MEDICINE, 2019, 25 (06) :954-+
[8]   Radiomics in the evaluation of lung nodules: Intrapatient concordance between full-dose and ultra-low-dose chest computed tomography [J].
Autrusseau, Pierre-Alexis ;
Labani, Aissam ;
De Marini, Pierre ;
Leyendecker, Pierre ;
Hintzpeter, Cedric ;
Ortlieb, Anne-Claire ;
Calhoun, Michael ;
Goldberg, Ilya ;
Roy, Catherine ;
Ohana, Mickael .
DIAGNOSTIC AND INTERVENTIONAL IMAGING, 2021, 102 (04) :233-239
[9]   External validation of a convolutional neural network artificial intelligence tool to predict malignancy in pulmonary nodules [J].
Baldwin, David R. ;
Gustafson, Jennifer ;
Pickup, Lyndsey ;
Arteta, Carlos ;
Novotny, Petr ;
Declerck, Jerome ;
Kadir, Timor ;
Figueiras, Catarina ;
Sterba, Albert ;
Exell, Alan ;
Potesil, Vaclav ;
Holland, Paul ;
Spence, Hazel ;
Clubley, Alison ;
O'Dowd, Emma ;
Clark, Matthew ;
Ashford-Turner, Victoria ;
Callister, Matthew E. J. ;
Gleeson, Fergus, V .
THORAX, 2020, 75 (04) :306-312
[10]   Radiomics and artificial intelligence in lung cancer screening [J].
Binczyk, Franciszek ;
Prazuch, Wojciech ;
Bozek, Pawel ;
Polanska, Joanna .
TRANSLATIONAL LUNG CANCER RESEARCH, 2021, 10 (02) :1186-1199