Literature DB >> 34350406

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

Leilei Zhou1, Xindao Yin1, Tao Zhang1, Yuan Feng1, Ying Zhao1, Mingxu Jin1, Mingyang Peng1, Chunhua Xing1, Fengfang Li1, Ziteng Wang1, Guoliang Wei1, Xiao Jia1, Yujun Liu1, Xinying Wu1, Lingquan Lu1.   

Abstract

PURPOSE: To develop and evaluate deep learning models for the detection and semiquantitative analysis of cardiomegaly, pneumothorax, and pleural effusion on chest radiographs.
MATERIALS AND METHODS: In this retrospective study, models were trained for lesion detection or for lung segmentation. The first dataset for lesion detection consisted of 2838 chest radiographs from 2638 patients (obtained between November 2018 and January 2020) containing findings positive for cardiomegaly, pneumothorax, and pleural effusion that were used in developing Mask region-based convolutional neural networks plus Point-based Rendering models. Separate detection models were trained for each disease. The second dataset was from two public datasets, which included 704 chest radiographs for training and testing a U-Net for lung segmentation. Based on accurate detection and segmentation, semiquantitative indexes were calculated for cardiomegaly (cardiothoracic ratio), pneumothorax (lung compression degree), and pleural effusion (grade of pleural effusion). Detection performance was evaluated by average precision (AP) and free-response receiver operating characteristic (FROC) curve score with the intersection over union greater than 75% (AP75; FROC score75). Segmentation performance was evaluated by Dice similarity coefficient.
RESULTS: The detection models achieved high accuracy for detecting cardiomegaly (AP75, 98.0%; FROC score75, 0.985), pneumothorax (AP75, 71.2%; FROC score75, 0.728), and pleural effusion (AP75, 78.2%; FROC score75, 0.802), and they also weakened boundary aliasing. The segmentation effect of the lung field (Dice, 0.960), cardiomegaly (Dice, 0.935), pneumothorax (Dice, 0.827), and pleural effusion (Dice, 0.826) was good, which provided important support for semiquantitative analysis.
CONCLUSION: The developed models could detect cardiomegaly, pneumothorax, and pleural effusion, and semiquantitative indexes could be calculated from segmentations.Keywords: Computer-Aided Diagnosis (CAD), Thorax, CardiacSupplemental material is available for this article.© RSNA, 2021. 2021 by the Radiological Society of North America, Inc.

Entities:  

Keywords:  Cardiac; Computer-Aided Diagnosis (CAD); Thorax

Year:  2021        PMID: 34350406      PMCID: PMC8328111          DOI: 10.1148/ryai.2021200172

Source DB:  PubMed          Journal:  Radiol Artif Intell        ISSN: 2638-6100


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Authors:  M K Razavi; M D Dake; C P Semba; U R Nyman; R P Liddell
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