Literature DB >> 28436741

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

Paras Lakhani1, Baskaran Sundaram1.   

Abstract

Purpose To evaluate the efficacy of deep convolutional neural networks (DCNNs) for detecting tuberculosis (TB) on chest radiographs. Materials and Methods Four deidentified HIPAA-compliant datasets were used in this study that were exempted from review by the institutional review board, which consisted of 1007 posteroanterior chest radiographs. The datasets were split into training (68.0%), validation (17.1%), and test (14.9%). Two different DCNNs, AlexNet and GoogLeNet, were used to classify the images as having manifestations of pulmonary TB or as healthy. Both untrained and pretrained networks on ImageNet were used, and augmentation with multiple preprocessing techniques. Ensembles were performed on the best-performing algorithms. For cases where the classifiers were in disagreement, an independent board-certified cardiothoracic radiologist blindly interpreted the images to evaluate a potential radiologist-augmented workflow. Receiver operating characteristic curves and areas under the curve (AUCs) were used to assess model performance by using the DeLong method for statistical comparison of receiver operating characteristic curves. Results The best-performing classifier had an AUC of 0.99, which was an ensemble of the AlexNet and GoogLeNet DCNNs. The AUCs of the pretrained models were greater than that of the untrained models (P < .001). Augmenting the dataset further increased accuracy (P values for AlexNet and GoogLeNet were .03 and .02, respectively). The DCNNs had disagreement in 13 of the 150 test cases, which were blindly reviewed by a cardiothoracic radiologist, who correctly interpreted all 13 cases (100%). This radiologist-augmented approach resulted in a sensitivity of 97.3% and specificity 100%. Conclusion Deep learning with DCNNs can accurately classify TB at chest radiography with an AUC of 0.99. A radiologist-augmented approach for cases where there was disagreement among the classifiers further improved accuracy. © RSNA, 2017.

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Year:  2017        PMID: 28436741     DOI: 10.1148/radiol.2017162326

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


  292 in total

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2.  Comparing Artificial Intelligence Platforms for Histopathologic Cancer Diagnosis.

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Review 6.  Machine learning concepts, concerns and opportunities for a pediatric radiologist.

Authors:  Michael M Moore; Einat Slonimsky; Aaron D Long; Raymond W Sze; Ramesh S Iyer
Journal:  Pediatr Radiol       Date:  2019-03-29

7.  Automated semantic labeling of pediatric musculoskeletal radiographs using deep learning.

Authors:  Paul H Yi; Tae Kyung Kim; Jinchi Wei; Jiwon Shin; Ferdinand K Hui; Haris I Sair; Gregory D Hager; Jan Fritz
Journal:  Pediatr Radiol       Date:  2019-04-30

8.  Deep-learning classification using convolutional neural network for evaluation of maxillary sinusitis on panoramic radiography.

Authors:  Makoto Murata; Yoshiko Ariji; Yasufumi Ohashi; Taisuke Kawai; Motoki Fukuda; Takuma Funakoshi; Yoshitaka Kise; Michihito Nozawa; Akitoshi Katsumata; Hiroshi Fujita; Eiichiro Ariji
Journal:  Oral Radiol       Date:  2018-12-11       Impact factor: 1.852

Review 9.  Artificial Intelligence for Mammography and Digital Breast Tomosynthesis: Current Concepts and Future Perspectives.

Authors:  Krzysztof J Geras; Ritse M Mann; Linda Moy
Journal:  Radiology       Date:  2019-09-24       Impact factor: 11.105

10.  Detection of gastritis by a deep convolutional neural network from double-contrast upper gastrointestinal barium X-ray radiography.

Authors:  Ren Togo; Nobutake Yamamichi; Katsuhiro Mabe; Yu Takahashi; Chihiro Takeuchi; Mototsugu Kato; Naoya Sakamoto; Kenta Ishihara; Takahiro Ogawa; Miki Haseyama
Journal:  J Gastroenterol       Date:  2018-10-03       Impact factor: 7.527

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