Jiangbo Cheng's research while affiliated with Chinese PLA General Hospital (301 Hospital) and other places

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Publications (1)


The algorithm flow chart
The ROC curve of training set, validation set and test set
ROC curve for diagnosing of different types of pneumonia
The pneumonia detection result by the CAM method(Green: GT; Red: Predicted)
Diagnosis and detection of pneumonia using weak-label based on X-ray images: a multi-center study
  • Article
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December 2023

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42 Reads

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2 Citations

BMC Medical Imaging

Kairou Guo

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Jiangbo Cheng

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Kaiyuan Li

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[...]

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Desen Cao

Purpose Development and assessment the deep learning weakly supervised algorithm for the classification and detection pneumonia via X-ray. Methods This retrospective study analyzed two publicly available dataset that contain X-ray images of pneumonia cases and normal cases. The first dataset from Guangzhou Women and Children’s Medical Center. It contains a total of 5,856 X-ray images, which are divided into training, validation, and test sets with 8:1:1 ratio for algorithm training and testing. The deep learning algorithm ResNet34 was employed to build diagnostic model. And the second public dataset were collated by researchers from Qatar University and the University of Dhaka along with collaborators from Pakistan and Malaysia and some medical doctors. A total of 1,300 images of COVID-19 positive cases, 1,300 normal images and 1,300 images of viral pneumonia for external validation. Class activation map (CAM) were used to location the pneumonia lesions. Results The ResNet34 model for pneumonia detection achieved an AUC of 0.9949 [0.9910–0.9981] (with an accuracy of 98.29% a sensitivity of 99.29% and a specificity of 95.57%) in the test dataset. And for external validation dataset, the model obtained an AUC of 0.9835[0.9806–0.9864] (with an accuracy of 94.62%, a sensitivity of 92.35% and a specificity of 99.15%). Moreover, the CAM can accurately locate the pneumonia area. Conclusion The deep learning algorithm can accurately detect pneumonia and locate the pneumonia area based on weak supervision information, which can provide potential value for helping radiologists to improve their accuracy of detection pneumonia patients through X-ray images.

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Citations (1)


... Studies (11,(16)(17)(18) highlighted the limitations imposed by the scarcity of datasets. A weakly supervised method was used in (19) to identify pneumonia cases, and lightweight DenseNet-121 was utilized in (20) to extract features. With limited datasets, Xception and DenseNet121 achieved the highest accuracy for pneumonia diagnosis (13,21) . ...

Reference:

An Efficient Hypertuned DNN Based Approach for Pneumonia Detection
Diagnosis and detection of pneumonia using weak-label based on X-ray images: a multi-center study

BMC Medical Imaging