Deep Learning Using Chest Radiographs to Identify High-Risk Smokers for Lung Cancer Screening Computed Tomography: Development and Validation of a Prediction Model

被引:73
|
作者
Lu, Michael T. [1 ]
Raghu, Vineet K. [1 ]
Mayrhofer, Thomas [2 ]
Aerts, Hugo J. W. L. [3 ]
Hoffmann, Udo [1 ]
机构
[1] Massachusetts Gen Hosp, Cardiovasc Imaging Res Ctr, 165 Cambridge St,Suite 400, Boston, MA 02114 USA
[2] Stralsund Univ Appl Sci, Sch Business Studies, Zur Schwedenschanze 15, D-18345 Stralsund, Germany
[3] Harvard Inst Med, Dana Farber Canc Inst, Program Artificial Intelligence Med, 450 Brookline Ave,Suite 343, Boston, MA 02215 USA
基金
美国国家卫生研究院;
关键词
IMPLEMENTATION; ELIGIBILITY; MORTALITY; ACCURACY; PROSTATE; CT;
D O I
10.7326/M20-1868
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: Lung cancer screening with chest computed tomography (CT) reduces lung cancer death. Centers for Medicare & Medicaid Services (CMS) eligibility criteria for lung cancer screening with CT require detailed smoking information and miss many incident lung cancers. An automated deep-learning approach based on chest radiograph images may identify more smokers at high risk for lung cancer who could benefit from screening with CT. Objective: To develop and validate a convolutional neural network (CXR-LC) that predicts long-term incident lung cancer using data commonly available in the electronic medical record (EMR) (chest radiograph, age, sex, and whether currently smoking). Design: Risk prediction study. Setting: U.S. lung cancer screening trials. Participants: The CXR-LC model was developed in the PLCO (Prostate, Lung, Colorectal, and Ovarian) Cancer Screening Trial (n = 41 856). The final CXR-LC model was validated in additional PLCO smokers (n = 5615, 12-year follow-up) and NLST (National Lung Screening Trial) heavy smokers (n = 5493, 6-year follow-up). Results are reported for validation data sets only. Measurements: Up to 12-year lung cancer incidence predicted by CXR-LC. Results: The CXR-LC model had better discrimination (area under the receiver-operating characteristic curve [AUC]) for incident lung cancer than CMS eligibility (PLCO AUC, 0.755 vs. 0.634; P < 0.001). The CXR-LC model's performance was similar to that of PLCOM2012, a state-of-the-art risk score with 11 inputs, in both the PLCO data set (CXR-LC AUC of 0.755 vs. PLCOM2012 AUC of 0.751) and the NLST data set (0.659 vs. 0.650). When compared in equal-sized screening populations, CXR-LC was more sensitive than CMS eligibility in the PLCO data set (74.9% vs. 63.8%; P = 0.012) and missed 30.7% fewer incident lung cancers. On decision curve analysis, CXR-LC had higher net benefit than CMS eligibility and similar benefit to PLCOM2012. Limitation: Validation in lung cancer screening trials and not a clinical setting. Conclusion: The CXR-LC model identified smokers at high risk for incident lung cancer, beyond CMS eligibility and using information commonly available in the EMR.
引用
收藏
页码:704 / +
页数:12
相关论文
共 50 条
  • [1] Beyond the AJR: "Deep Learning Using Chest Radiographs to Identify High- Risk Smokers for Lung Cancer Screening Computed Tomography: Development and Validation of a Prediction Model"
    Patel, Bhavik N.
    Langlotz, Curtis P.
    AMERICAN JOURNAL OF ROENTGENOLOGY, 2021, 217 (02) : 521 - 521
  • [2] Deep learning to identify high-risk smokers for lung cancer screening from chest radiographs.
    Raghu, Vineet
    Mayrhofer, Thomas
    Aerts, Hugo
    Hoffmann, Udo
    Lu, Michael T.
    JOURNAL OF CLINICAL ONCOLOGY, 2020, 38 (15)
  • [3] Lung cancer screening: Computed tomography or chest radiographs?
    van Beek, Edwin J. R.
    Mirsadraee, Saeed
    Murchison, John T.
    WORLD JOURNAL OF RADIOLOGY, 2015, 7 (08): : 189 - 193
  • [4] Deep learning using computed tomography to identify high-risk patients for acute small bowel obstruction: development and validation of a prediction model : a retrospective cohort study
    Oh, Seungmin
    Ryu, Jongbin
    Shin, Ho-Jung
    Song, Jeong Ho
    Son, Sang-Yong
    Hur, Hoon
    Han, Sang-Uk
    INTERNATIONAL JOURNAL OF SURGERY, 2023, 109 (12) : 4091 - 4100
  • [5] A risk prediction model for selecting high-risk population for computed tomography lung cancer screening in China
    Guo, Lan-Wei
    Lyu, Zhang-Yan
    Meng, Qing-Cheng
    Zheng, Li-Yang
    Chen, Qiong
    Liu, Yin
    Xu, Hui-Fang
    Kang, Rui-Hua
    Zhang, Lu-Yao
    Cao, Xiao-Qin
    Liu, Shu-Zheng
    Sun, Xi-Bin
    Zhang, Jian-Gong
    Zhang, Shao-Kai
    LUNG CANCER, 2022, 163 : 27 - 34
  • [6] Development and Validation of a Deep Learning Radiomics Model to Predict High-Risk Pathologic Pulmonary Nodules Using Preoperative Computed Tomography
    Ye, Guanchao
    Wu, Guangyao
    Li, Kuo
    Zhang, Chi
    Zhuang, Yuzhou
    Song, Enmin
    Liu, Hong
    Qi, Yu
    Li, Yiying
    Yang, Fan
    Liao, Yongde
    ACADEMIC RADIOLOGY, 2024, 31 (04) : 1686 - 1697
  • [7] Validation of a Deep Learning-Based Model to Predict Lung Cancer Risk Using Chest Radiographs and Electronic Medical Record Data
    Raghu, Vineet K.
    Walia, Anika S.
    Zinzuwadia, Aniket N.
    Goiffon, Reece J.
    Shepard, Jo-Anne O.
    Aerts, Hugo J. W. L.
    Lennes, Inga T.
    Lu, Michael T.
    JAMA NETWORK OPEN, 2022, 5 (12) : E2248793
  • [8] Disease Staging and Prognosis in Smokers Using Deep Learning in Chest Computed Tomography
    Gonzalez, German
    Ash, Samuel Y.
    Vegas-Sanchez-Ferrero, Gonzalo
    Onieva, Jorge Onieva
    Rahaghi, Farbod N.
    Ross, James C.
    Diaz, Alejandro
    Estepar, Raul San Jose
    Washko, George R.
    AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2018, 197 (02) : 193 - 203
  • [9] Opportunistic Osteoporosis Screening Using Chest Radiographs With Deep Learning: Development and External Validation With a Cohort Dataset
    Jang, Miso
    Kim, Mingyu
    Bae, Sung Jin
    Lee, Seung Hun
    Koh, Jung-Min
    Kim, Namkug
    JOURNAL OF BONE AND MINERAL RESEARCH, 2022, 37 (02) : 369 - 377
  • [10] Estimating the Cost-Effectiveness of Lung Cancer Screening with Low-Dose Computed Tomography for High-Risk Smokers in Australia
    Wade, Stephen
    Weber, Marianne
    Caruana, Michael
    Kang, Yoon-Jung
    Marshall, Henry
    Manser, Renee
    Vinod, Shalini
    Rankin, Nicole
    Fong, Kwun
    Canfell, Karen
    JOURNAL OF THORACIC ONCOLOGY, 2018, 13 (08) : 1094 - 1105