Deep neural network analyses of spirometry for structural phenotyping of chronic obstructive pulmonary disease.

Journal: JCI insight
PMID:

Abstract

BACKGROUNDCurrently recommended traditional spirometry outputs do not reflect the relative contributions of emphysema and airway disease to airflow obstruction. We hypothesized that machine-learning algorithms can be trained on spirometry data to identify these structural phenotypes.METHODSParticipants enrolled in a large multicenter study (COPDGene) were included. The data points from expiratory flow-volume curves were trained using a deep-learning model to predict structural phenotypes of chronic obstructive pulmonary disease (COPD) on CT, and results were compared with traditional spirometry metrics and an optimized random forest classifier. Area under the receiver operating characteristic curve (AUC) and weighted F-score were used to measure the discriminative accuracy of a fully convolutional neural network, random forest, and traditional spirometry metrics to phenotype CT as normal, emphysema-predominant (>5% emphysema), airway-predominant (Pi10 > median), and mixed phenotypes. Similar comparisons were made for the detection of functional small airway disease phenotype (>20% on parametric response mapping).RESULTSAmong 8980 individuals, the neural network was more accurate in discriminating predominant emphysema/airway phenotypes (AUC 0.80, 95%CI 0.79-0.81) compared with traditional measures of spirometry, FEV1/FVC (AUC 0.71, 95%CI 0.69-0.71), FEV1% predicted (AUC 0.70, 95%CI 0.68-0.71), and random forest classifier (AUC 0.78, 95%CI 0.77-0.79). The neural network was also more accurate in discriminating predominant emphysema/small airway phenotypes (AUC 0.91, 95%CI 0.90-0.92) compared with FEV1/FVC (AUC 0.80, 95%CI 0.78-0.82), FEV1% predicted (AUC 0.83, 95%CI 0.80-0.84), and with comparable accuracy with random forest classifier (AUC 0.90, 95%CI 0.88-0.91).CONCLUSIONSStructural phenotypes of COPD can be identified from spirometry using deep-learning and machine-learning approaches, demonstrating their potential to identify individuals for targeted therapies.TRIAL REGISTRATIONClinicalTrials.gov NCT00608764.FUNDINGThis study was supported by NIH grants K23 HL133438 and R21EB027891 and an American Thoracic Foundation 2018 Unrestricted Research Grant. The COPDGene study is supported by NIH grants NHLBI U01 HL089897 and U01 HL089856. The COPDGene study (NCT00608764) is also supported by the COPD Foundation through contributions made to an Industry Advisory Committee comprising AstraZeneca, Boehringer-Ingelheim, GlaxoSmithKline, Novartis, and Sunovion.

Authors

  • Sandeep Bodduluri
    UAB Lung Imaging Core.
  • Arie Nakhmani
    Department of Electrical and Computer Engineering, University of Alabama at Birmingham, Birmingham, Alabama, USA.
  • Joseph M Reinhardt
  • Carla G Wilson
    Department of Biostatistics and Bioinformatics, National Jewish Health, Denver, Colorado, USA.
  • Merry-Lynn McDonald
    UAB Lung Health Center.
  • Ramaraju Rudraraju
    Kirklin Institute for Research in Surgical Outcomes, University of Alabama at Birmingham.
  • Byron C Jaeger
    Kirklin Institute for Research in Surgical Outcomes, University of Alabama at Birmingham.
  • Nirav R Bhakta
    Division of Pulmonary, Critical Care, Allergy and Sleep Medicine, University California, San Francisco, San Francisco, California, USA.
  • Peter J Castaldi
    Channing Division of Network Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, MA; General Medicine and Primary Care, Brigham and Women's Hospital, Harvard Medical School, Boston, MA. Electronic address: repjc@channing.harvard.edu.
  • Frank C Sciurba
    Division of Pulmonary, Allergy and Critical Care Medicine, University of Pittsburgh, Pittsburgh, Pennsylvania, USA.
  • Chengcui Zhang
    Department of Computer Science, The University of Alabama at Birmingham, Birmingham, AL, United States.
  • Purushotham V Bangalore
    Department of Computer Science, University of Alabama at Birmingham, Birmingham, Alabama, USA.
  • Surya P Bhatt
    UAB Lung Imaging Core.