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Use data augmentation for a deep learning classification model with chest X-ray clinical imaging featuring coal workers' pneumoconiosis.
Dong, Hantian; Zhu, Biaokai; Zhang, Xinri; Kong, Xiaomei.
Affiliation
  • Dong H; The First College for Clinical Medicine, Shanxi Medical University, No. 56 Xinjian South Road, Taiyuan, 030001, Shanxi, People's Republic of China.
  • Zhu B; Network Security Department, Shanxi Police College, No. 799 Qingdong Road, Qingxu Country, Taiyuan, 030021, Shanxi, People's Republic of China.
  • Zhang X; National Health Commission Key Laboratory of Pneumoconiosis, Shanxi Key Laboratory of Respiratory Diseases, Department of Respiratory and Critical Care Medicine, First Hospital of Shanxi Medical University, No. 85 Jiefang South Road, Taiyuan, 030001, Shanxi, People's Republic of China. XinriZhang@ou
  • Kong X; National Health Commission Key Laboratory of Pneumoconiosis, Shanxi Key Laboratory of Respiratory Diseases, Department of Respiratory and Critical Care Medicine, First Hospital of Shanxi Medical University, No. 85 Jiefang South Road, Taiyuan, 030001, Shanxi, People's Republic of China.
BMC Pulm Med ; 22(1): 271, 2022 Jul 15.
Article de En | MEDLINE | ID: mdl-35840945
ABSTRACT

PURPOSE:

This paper aims to develop a successful deep learning model with data augmentation technique to discover the clinical uniqueness of chest X-ray imaging features of coal workers' pneumoconiosis (CWP). PATIENTS AND

METHODS:

We enrolled 149 CWP patients and 68 dust-exposure workers for a prospective cohort observational study between August 2021 and December 2021 at First Hospital of Shanxi Medical University. Two hundred seventeen chest X-ray images were collected for this study, obtaining reliable diagnostic results through the radiologists' team, and confirming clinical imaging features. We segmented regions of interest with diagnosis reports, then classified them into three categories. To identify these clinical features, we developed a deep learning model (ShuffleNet V2-ECA Net) with data augmentation through performances of different deep learning models by assessment with Receiver Operation Characteristics (ROC) curve and area under the curve (AUC), accuracy (ACC), and Loss curves.

RESULTS:

We selected the ShuffleNet V2-ECA Net as the optimal model. The average AUC of this model was 0.98, and all classifications of clinical imaging features had an AUC above 0.95.

CONCLUSION:

We performed a study on a small dataset to classify the chest X-ray clinical imaging features of pneumoconiosis using a deep learning technique. A deep learning model of ShuffleNet V2 and ECA-Net was successfully constructed using data augmentation, which achieved an average accuracy of 98%. This method uncovered the uniqueness of the chest X-ray imaging features of CWP, thus supplying additional reference material for clinical application.
Sujet(s)
Mots clés

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Pneumoconiose / Industrie minière charbon / Anthracose / Apprentissage profond Type d'étude: Observational_studies / Prognostic_studies Limites: Humans Langue: En Journal: BMC Pulm Med Année: 2022 Type de document: Article

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Pneumoconiose / Industrie minière charbon / Anthracose / Apprentissage profond Type d'étude: Observational_studies / Prognostic_studies Limites: Humans Langue: En Journal: BMC Pulm Med Année: 2022 Type de document: Article
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