Literature DB >> 27922974

Training and Validating a Deep Convolutional Neural Network for Computer-Aided Detection and Classification of Abnormalities on Frontal Chest Radiographs.

Mark Cicero1, Alexander Bilbily, Errol Colak, Tim Dowdell, Bruce Gray, Kuhan Perampaladas, Joseph Barfett.   

Abstract

OBJECTIVES: Convolutional neural networks (CNNs) are a subtype of artificial neural network that have shown strong performance in computer vision tasks including image classification. To date, there has been limited application of CNNs to chest radiographs, the most frequently performed medical imaging study. We hypothesize CNNs can learn to classify frontal chest radiographs according to common findings from a sufficiently large data set.
MATERIALS AND METHODS: Our institution's research ethics board approved a single-center retrospective review of 35,038 adult posterior-anterior chest radiographs and final reports performed between 2005 and 2015 (56% men, average age of 56, patient type: 24% inpatient, 39% outpatient, 37% emergency department) with a waiver for informed consent. The GoogLeNet CNN was trained using 3 graphics processing units to automatically classify radiographs as normal (n = 11,702) or into 1 or more of cardiomegaly (n = 9240), consolidation (n = 6788), pleural effusion (n = 7786), pulmonary edema (n = 1286), or pneumothorax (n = 1299). The network's performance was evaluated using receiver operating curve analysis on a test set of 2443 radiographs with the criterion standard being board-certified radiologist interpretation.
RESULTS: Using 256 × 256-pixel images as input, the network achieved an overall sensitivity and specificity of 91% with an area under the curve of 0.964 for classifying a study as normal (n = 1203). For the abnormal categories, the sensitivity, specificity, and area under the curve, respectively, were 91%, 91%, and 0.962 for pleural effusion (n = 782), 82%, 82%, and 0.868 for pulmonary edema (n = 356), 74%, 75%, and 0.850 for consolidation (n = 214), 81%, 80%, and 0.875 for cardiomegaly (n = 482), and 78%, 78%, and 0.861 for pneumothorax (n = 167).
CONCLUSIONS: Current deep CNN architectures can be trained with modest-sized medical data sets to achieve clinically useful performance at detecting and excluding common pathology on chest radiographs.

Entities:  

Mesh:

Year:  2017        PMID: 27922974     DOI: 10.1097/RLI.0000000000000341

Source DB:  PubMed          Journal:  Invest Radiol        ISSN: 0020-9996            Impact factor:   6.016


  55 in total

1.  Deep learning for World Health Organization grades of pancreatic neuroendocrine tumors on contrast-enhanced magnetic resonance images: a preliminary study.

Authors:  Xuan Gao; Xiaolin Wang
Journal:  Int J Comput Assist Radiol Surg       Date:  2019-09-26       Impact factor: 2.924

Review 2.  Technical and clinical overview of deep learning in radiology.

Authors:  Daiju Ueda; Akitoshi Shimazaki; Yukio Miki
Journal:  Jpn J Radiol       Date:  2018-12-01       Impact factor: 2.374

3.  Automated Triaging of Adult Chest Radiographs with Deep Artificial Neural Networks.

Authors:  Mauro Annarumma; Samuel J Withey; Robert J Bakewell; Emanuele Pesce; Vicky Goh; Giovanni Montana
Journal:  Radiology       Date:  2019-01-22       Impact factor: 11.105

4.  Generalizable Inter-Institutional Classification of Abnormal Chest Radiographs Using Efficient Convolutional Neural Networks.

Authors:  Ian Pan; Saurabh Agarwal; Derek Merck
Journal:  J Digit Imaging       Date:  2019-10       Impact factor: 4.056

5.  A Deep-Learning System for Fully-Automated Peripherally Inserted Central Catheter (PICC) Tip Detection.

Authors:  Hyunkwang Lee; Mohammad Mansouri; Shahein Tajmir; Michael H Lev; Synho Do
Journal:  J Digit Imaging       Date:  2018-08       Impact factor: 4.056

Review 6.  Deep learning with convolutional neural network in radiology.

Authors:  Koichiro Yasaka; Hiroyuki Akai; Akira Kunimatsu; Shigeru Kiryu; Osamu Abe
Journal:  Jpn J Radiol       Date:  2018-03-01       Impact factor: 2.374

7.  Deep learning-based detection system for multiclass lesions on chest radiographs: comparison with observer readings.

Authors:  Sohee Park; Sang Min Lee; Kyung Hee Lee; Kyu-Hwan Jung; Woong Bae; Jooae Choe; Joon Beom Seo
Journal:  Eur Radiol       Date:  2019-11-20       Impact factor: 5.315

8.  Application of deep learning-based computer-aided detection system: detecting pneumothorax on chest radiograph after biopsy.

Authors:  Sohee Park; Sang Min Lee; Namkug Kim; Jooae Choe; Yongwon Cho; Kyung-Hyun Do; Joon Beom Seo
Journal:  Eur Radiol       Date:  2019-03-26       Impact factor: 5.315

Review 9.  The utilisation of convolutional neural networks in detecting pulmonary nodules: a review.

Authors:  Andrew Murphy; Matthew Skalski; Frank Gaillard
Journal:  Br J Radiol       Date:  2018-06-19       Impact factor: 3.039

10.  Cone Beam Computed Tomography Image Quality Improvement Using a Deep Convolutional Neural Network.

Authors:  Satoshi Kida; Takahiro Nakamoto; Masahiro Nakano; Kanabu Nawa; Akihiro Haga; Jun'ichi Kotoku; Hideomi Yamashita; Keiichi Nakagawa
Journal:  Cureus       Date:  2018-04-29
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