Literature DB >> 31793848

Chest Radiograph Interpretation with Deep Learning Models: Assessment with Radiologist-adjudicated Reference Standards and Population-adjusted Evaluation.

Anna Majkowska1, Sid Mittal1, David F Steiner1, Joshua J Reicher1, Scott Mayer McKinney1, Gavin E Duggan1, Krish Eswaran1, Po-Hsuan Cameron Chen1, Yun Liu1, Sreenivasa Raju Kalidindi1, Alexander Ding1, Greg S Corrado1, Daniel Tse1, Shravya Shetty1.   

Abstract

BackgroundDeep learning has the potential to augment the use of chest radiography in clinical radiology, but challenges include poor generalizability, spectrum bias, and difficulty comparing across studies.PurposeTo develop and evaluate deep learning models for chest radiograph interpretation by using radiologist-adjudicated reference standards.Materials and MethodsDeep learning models were developed to detect four findings (pneumothorax, opacity, nodule or mass, and fracture) on frontal chest radiographs. This retrospective study used two data sets. Data set 1 (DS1) consisted of 759 611 images from a multicity hospital network and ChestX-ray14 is a publicly available data set with 112 120 images. Natural language processing and expert review of a subset of images provided labels for 657 954 training images. Test sets consisted of 1818 and 1962 images from DS1 and ChestX-ray14, respectively. Reference standards were defined by radiologist-adjudicated image review. Performance was evaluated by area under the receiver operating characteristic curve analysis, sensitivity, specificity, and positive predictive value. Four radiologists reviewed test set images for performance comparison. Inverse probability weighting was applied to DS1 to account for positive radiograph enrichment and estimate population-level performance.ResultsIn DS1, population-adjusted areas under the receiver operating characteristic curve for pneumothorax, nodule or mass, airspace opacity, and fracture were, respectively, 0.95 (95% confidence interval [CI]: 0.91, 0.99), 0.72 (95% CI: 0.66, 0.77), 0.91 (95% CI: 0.88, 0.93), and 0.86 (95% CI: 0.79, 0.92). With ChestX-ray14, areas under the receiver operating characteristic curve were 0.94 (95% CI: 0.93, 0.96), 0.91 (95% CI: 0.89, 0.93), 0.94 (95% CI: 0.93, 0.95), and 0.81 (95% CI: 0.75, 0.86), respectively.ConclusionExpert-level models for detecting clinically relevant chest radiograph findings were developed for this study by using adjudicated reference standards and with population-level performance estimation. Radiologist-adjudicated labels for 2412 ChestX-ray14 validation set images and 1962 test set images are provided.© RSNA, 2019Online supplemental material is available for this article.See also the editorial by Chang in this issue.

Entities:  

Year:  2019        PMID: 31793848     DOI: 10.1148/radiol.2019191293

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  28 in total

1.  Automatic Scan Range Delimitation in Chest CT Using Deep Learning.

Authors:  Aydin Demircioğlu; Moon-Sung Kim; Magdalena Charis Stein; Nika Guberina; Lale Umutlu; Kai Nassenstein
Journal:  Radiol Artif Intell       Date:  2021-02-10

2.  Deep Learning to Quantify Pulmonary Edema in Chest Radiographs.

Authors:  Steven Horng; Ruizhi Liao; Xin Wang; Sandeep Dalal; Polina Golland; Seth J Berkowitz
Journal:  Radiol Artif Intell       Date:  2021-01-06

3.  Generalized Radiographic View Identification with Deep Learning.

Authors:  Xiang Fang; Leah Harris; Wei Zhou; Donglai Huo
Journal:  J Digit Imaging       Date:  2020-12-01       Impact factor: 4.056

4.  Evaluating the Clinical Realism of Synthetic Chest X-Rays Generated Using Progressively Growing GANs.

Authors:  Bradley Segal; David M Rubin; Grace Rubin; Adam Pantanowitz
Journal:  SN Comput Sci       Date:  2021-06-04

5.  A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study.

Authors:  Irfan Gungor; Berrin Gunaydin; Suna O Oktar; Beyza M Buyukgebiz; Selin Bagcaz; Miray Gozde Ozdemir; Gozde Inan
Journal:  J Anesth       Date:  2021-05-19       Impact factor: 2.078

6.  Deep Learning Systems for Pneumothorax Detection on Chest Radiographs: A Multicenter External Validation Study.

Authors:  Yee Liang Thian; Dianwen Ng; James Thomas Patrick Decourcy Hallinan; Pooja Jagmohan; Soon Yiew Sia; Cher Heng Tan; Yong Han Ting; Pin Lin Kei; Geoiphy George Pulickal; Vincent Tze Yang Tiong; Swee Tian Quek; Mengling Feng
Journal:  Radiol Artif Intell       Date:  2021-04-14

7.  Detection and Semiquantitative Analysis of Cardiomegaly, Pneumothorax, and Pleural Effusion on Chest Radiographs.

Authors:  Leilei Zhou; Xindao Yin; Tao Zhang; Yuan Feng; Ying Zhao; Mingxu Jin; Mingyang Peng; Chunhua Xing; Fengfang Li; Ziteng Wang; Guoliang Wei; Xiao Jia; Yujun Liu; Xinying Wu; Lingquan Lu
Journal:  Radiol Artif Intell       Date:  2021-05-19

8.  An Improved Marine Predators Algorithm With Fuzzy Entropy for Multi-Level Thresholding: Real World Example of COVID-19 CT Image Segmentation.

Authors:  Mohamed Abd Elaziz; Ahmed A Ewees; Dalia Yousri; Husein S Naji Alwerfali; Qamar A Awad; Songfeng Lu; Mohammed A A Al-Qaness
Journal:  IEEE Access       Date:  2020-07-08       Impact factor: 3.367

9.  Correcting data imbalance for semi-supervised COVID-19 detection using X-ray chest images.

Authors:  Saul Calderon-Ramirez; Shengxiang Yang; Armaghan Moemeni; David Elizondo; Simon Colreavy-Donnelly; Luis Fernando Chavarría-Estrada; Miguel A Molina-Cabello
Journal:  Appl Soft Comput       Date:  2021-07-13       Impact factor: 6.725

10.  Improving reference standards for validation of AI-based radiography.

Authors:  Gavin E Duggan; Joshua J Reicher; Yun Liu; Daniel Tse; Shravya Shetty
Journal:  Br J Radiol       Date:  2021-07-01       Impact factor: 3.039

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