Literature DB >> 30972585

Deep Learning Method for Automated Classification of Anteroposterior and Posteroanterior Chest Radiographs.

Tae Kyung Kim1,2, Paul H Yi1,2, Jinchi Wei2, Ji Won Shin2, Gregory Hager2, Ferdinand K Hui1,2, Haris I Sair1,2, Cheng Ting Lin3,4.   

Abstract

Ensuring correct radiograph view labeling is important for machine learning algorithm development and quality control of studies obtained from multiple facilities. The purpose of this study was to develop and test the performance of a deep convolutional neural network (DCNN) for the automated classification of frontal chest radiographs (CXRs) into anteroposterior (AP) or posteroanterior (PA) views. We obtained 112,120 CXRs from the NIH ChestX-ray14 database, a publicly available CXR database performed in adult (106,179 (95%)) and pediatric (5941 (5%)) patients consisting of 44,810 (40%) AP and 67,310 (60%) PA views. CXRs were used to train, validate, and test the ResNet-18 DCNN for classification of radiographs into anteroposterior and posteroanterior views. A second DCNN was developed in the same manner using only the pediatric CXRs (2885 (49%) AP and 3056 (51%) PA). Receiver operating characteristic (ROC) curves with area under the curve (AUC) and standard diagnostic measures were used to evaluate the DCNN's performance on the test dataset. The DCNNs trained on the entire CXR dataset and pediatric CXR dataset had AUCs of 1.0 and 0.997, respectively, and accuracy of 99.6% and 98%, respectively, for distinguishing between AP and PA CXR. Sensitivity and specificity were 99.6% and 99.5%, respectively, for the DCNN trained on the entire dataset and 98% for both sensitivity and specificity for the DCNN trained on the pediatric dataset. The observed difference in performance between the two algorithms was not statistically significant (p = 0.17). Our DCNNs have high accuracy for classifying AP/PA orientation of frontal CXRs, with only slight reduction in performance when the training dataset was reduced by 95%. Rapid classification of CXRs by the DCNN can facilitate annotation of large image datasets for machine learning and quality assurance purposes.

Entities:  

Keywords:  Artificial intelligence; Deep convoluted neural networks; Deep learning; PACS

Mesh:

Year:  2019        PMID: 30972585      PMCID: PMC6841900          DOI: 10.1007/s10278-019-00208-0

Source DB:  PubMed          Journal:  J Digit Imaging        ISSN: 0897-1889            Impact factor:   4.056


  14 in total

1.  Index for rating diagnostic tests.

Authors:  W J YOUDEN
Journal:  Cancer       Date:  1950-01       Impact factor: 6.860

Review 2.  A survey on deep learning in medical image analysis.

Authors:  Geert Litjens; Thijs Kooi; Babak Ehteshami Bejnordi; Arnaud Arindra Adiyoso Setio; Francesco Ciompi; Mohsen Ghafoorian; Jeroen A W M van der Laak; Bram van Ginneken; Clara I Sánchez
Journal:  Med Image Anal       Date:  2017-07-26       Impact factor: 8.545

3.  Deep Learning at Chest Radiography: Automated Classification of Pulmonary Tuberculosis by Using Convolutional Neural Networks.

Authors:  Paras Lakhani; Baskaran Sundaram
Journal:  Radiology       Date:  2017-04-24       Impact factor: 11.105

4.  Transfer Learning with Convolutional Neural Networks for Classification of Abdominal Ultrasound Images.

Authors:  Phillip M Cheng; Harshawn S Malhi
Journal:  J Digit Imaging       Date:  2017-04       Impact factor: 4.056

5.  Artificial Intelligence With Deep Learning Technology Looks Into Diabetic Retinopathy Screening.

Authors:  Tien Yin Wong; Neil M Bressler
Journal:  JAMA       Date:  2016-12-13       Impact factor: 56.272

6.  Automated Critical Test Findings Identification and Online Notification System Using Artificial Intelligence in Imaging.

Authors:  Luciano M Prevedello; Barbaros S Erdal; John L Ryu; Kevin J Little; Mutlu Demirer; Songyue Qian; Richard D White
Journal:  Radiology       Date:  2017-07-03       Impact factor: 11.105

7.  Artificial intelligence in fracture detection: transfer learning from deep convolutional neural networks.

Authors:  D H Kim; T MacKinnon
Journal:  Clin Radiol       Date:  2017-12-18       Impact factor: 2.350

8.  Performance of a Deep-Learning Neural Network Model in Assessing Skeletal Maturity on Pediatric Hand Radiographs.

Authors:  David B Larson; Matthew C Chen; Matthew P Lungren; Safwan S Halabi; Nicholas V Stence; Curtis P Langlotz
Journal:  Radiology       Date:  2017-11-02       Impact factor: 11.105

9.  Plain-radiographic image labeling: a process to improve clinical outcomes.

Authors:  Kenneth T Aakre; C Daniel Johnson
Journal:  J Am Coll Radiol       Date:  2006-12       Impact factor: 5.532

10.  High-Throughput Classification of Radiographs Using Deep Convolutional Neural Networks.

Authors:  Alvin Rajkomar; Sneha Lingam; Andrew G Taylor; Michael Blum; John Mongan
Journal:  J Digit Imaging       Date:  2017-02       Impact factor: 4.056

View more
  8 in total

1.  Refining dataset curation methods for deep learning-based automated tuberculosis screening.

Authors:  Tae Kyung Kim; Paul H Yi; Gregory D Hager; Cheng Ting Lin
Journal:  J Thorac Dis       Date:  2020-09       Impact factor: 2.895

2.  DIY AI, deep learning network development for automated image classification in a point-of-care ultrasound quality assurance program.

Authors:  Michael Blaivas; Robert Arntfield; Matthew White
Journal:  J Am Coll Emerg Physicians Open       Date:  2020-03-01

Review 3.  Artificial intelligence in paediatric radiology: Future opportunities.

Authors:  Natasha Davendralingam; Neil J Sebire; Owen J Arthurs; Susan C Shelmerdine
Journal:  Br J Radiol       Date:  2020-09-17       Impact factor: 3.039

4.  Diagnosis of osteoarthritic changes, loss of cervical lordosis, and disc space narrowing on cervical radiographs with deep learning methods.

Authors:  Yüksel Maraş; Gül Tokdemir; Kemal Üreten; Ebru Atalar; Semra Duran; Hakan Maraş
Journal:  Jt Dis Relat Surg       Date:  2022-03-28

5.  Performance of deep learning-based algorithm for detection of ileocolic intussusception on abdominal radiographs of young children.

Authors:  Sungwon Kim; Haesung Yoon; Mi-Jung Lee; Myung-Joon Kim; Kyunghwa Han; Ja Kyung Yoon; Hyung Cheol Kim; Jaeseung Shin; Hyun Joo Shin
Journal:  Sci Rep       Date:  2019-12-19       Impact factor: 4.379

Review 6.  Pediatric chest radiograph interpretation: how far has artificial intelligence come? A systematic literature review.

Authors:  Sirwa Padash; Mohammad Reza Mohebbian; Scott J Adams; Robert D E Henderson; Paul Babyn
Journal:  Pediatr Radiol       Date:  2022-04-23

7.  Detection and diagnosis of COVID-19 infection in lungs images using deep learning techniques.

Authors:  Arun Kumar; Rajendra Prasad Mahapatra
Journal:  Int J Imaging Syst Technol       Date:  2022-01-17       Impact factor: 2.177

Review 8.  Advances in Deep Learning for Tuberculosis Screening using Chest X-rays: The Last 5 Years Review.

Authors:  K C Santosh; Siva Allu; Sivaramakrishnan Rajaraman; Sameer Antani
Journal:  J Med Syst       Date:  2022-10-15       Impact factor: 4.920

  8 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.