| Literature DB >> 34988656 |
Hengrui Liang1,2, Yuchen Guo3,4, Xiangru Chen5, Keng-Leong Ang2,6, Yuwei He4,7, Na Jiang8, Qiang Du5, Qingsi Zeng1,9, Ligong Lu10, Zebin Gao5, Linduo Li11, Quanzheng Li12, Fangxing Nie5, Guiguang Ding3,4,7, Gao Huang5,7, Ailan Chen1,13, Yimin Li1,14, Weijie Guan1, Ling Sang1,14, Yuanda Xu1,14, Huai Chen1,9, Zisheng Chen1, Shiyue Li1, Nuofu Zhang1, Ying Chen1, Danxia Huang1, Run Li1, Jianfu Li1,2, Bo Cheng1,2, Yi Zhao1,2, Caichen Li1,2, Shan Xiong1,2, Runchen Wang1,2, Jun Liu1,2, Wei Wang1,2, Jun Huang1,2, Fei Cui1,2, Tao Xu15, Fleming Y M Lure16, Meixiao Zhan10, Yuanyi Huang17, Qiang Yang18, Qionghai Dai19,20, Wenhua Liang21,22, Jianxing He23,24,25, Nanshan Zhong1.
Abstract
BACKGROUND: Main challenges for COVID-19 include the lack of a rapid diagnostic test, a suitable tool to monitor and predict a patient's clinical course and an efficient way for data sharing among multicenters. We thus developed a novel artificial intelligence system based on deep learning (DL) and federated learning (FL) for the diagnosis, monitoring, and prediction of a patient's clinical course.Entities:
Keywords: AI (artificial intelligence); Computer-assisted diagnosis; Coronavirus disease 2019
Mesh:
Year: 2022 PMID: 34988656 PMCID: PMC8731211 DOI: 10.1007/s00330-021-08334-6
Source DB: PubMed Journal: Eur Radiol ISSN: 0938-7994 Impact factor: 7.034
Fig. 1Flow chart for the development and testing of the CoviDet system
Fig. 2Performance of the CoviDet system for diagnosing different conditions. a The ROC curve of DL #1 on the test set between viral pneumonia (COVID-19 and other types of viral pneumonia) and controls (pulmonary nodule, pulmonary tuberculosis, and normal lung) based on chest CT. b The ROC curve of DL #2 on the test set between COVID-19 and other types of viral pneumonia based on chest CT. c The comparison of the diagnostic performance between DL #2 and radiologists with different experience. d The ROC curve of DL #3 on the test set between COVID-19 and other types of viral pneumonia based on CT and clinical features from EMR (“CoviDet only” is the deep learning model CoviDet with only CT input; SVM uses clinical features as input; “poly,” “linear,” and “rbf” are polynomial, linear, and RBF kernels for SVM, respectively; “X svm only” (X for poly, linear, or RBF) is the model with only clinical features; “CoviDet + X svm” is the model combining outputs of both CoviDet and SVM). e The ROC curve of the stepwise diagnosis system (stepwise DL #1 and DL #2) for COVID-19 from board population (all samples in the test group). f The ROC curve of the stepwise diagnosis system (stepwise DL #1 and DL #2) for COVID-19 of independent validation in cohort 5 and 6. ROC, receiver operating characteristic curve; AUC, area under curve; DL, deep learning; FL, federated learning; EMR, electronic medical record
Fig. 3The performance of the CoviDet system on segmentation. A The performance of DL #4 on a lesion segmentation task shown in examples at different stages; the upper pictures were two-dimensional segmentation display, and the lower pictures were three-dimensional segmentation display. B The performance of DL #4 on a lesion segmentation task is shown in the upper row of pictures, and the corresponding segmentation by radiologists is shown in the lower row of pictures. C The consistency of CT segmentation between DL #4 and radiologists. D Dice on the validation data set changing with training epochs. E Bland–Altman plot of the predicted and actual time interval of the 3rd to 4th time point (spot indicates sample; dotted line indicates average difference; red line indicates upper and lower limits of agreement). F Bland–Altman plot of predicted and actual time intervals of the 3rd to 5th time point
Fig. 4The Gaussian process curve of dynamic lesion prediction based on repeated CT in a single patient. a Disease showing peak and recovery. b Disease showing recovery but relapsing. c Disease showing a plateau. d Disease showing deterioration
Systematic review of current work on AI COVID-19 diagnosis
| Author | Region | Sample size | Additional function | Control group | AUC (95% Cl) | Accuracy | Sensitivity | Specificity | Model | Original algorithm |
|---|---|---|---|---|---|---|---|---|---|---|
| Liang et al (this study) | China | 4804 | Dynamic monitoring, FL | Other types of viral pneumonia; controls | DL: 0.98 (0.97–0.99) | DL: 95.00% | DL: 93.00% | DL: 95.00% | 2D CNN + RNN | Yes |
| FL: 0.98 (0.98–0.99) | FL: 97.00% | FL: 95.00% | FL: 96.00% | |||||||
| Wang et al | China | 5372 | Prognosis | CAP | 0.88 (0.86–0.90) | 80.12% | 79.35% | 81.16% | 3D CNN | Yes |
| Li et al | China | 3322 | N/A | CAP | 0.96 (0.94–0.99) | N/A | 90.00% | 96.00% | 2D CNN + MLP | Yes |
| Zhang et al | China | 4154 | Prognosis | CAP/normal | 0.97 (0.95–0.99) | 90.70% | 92.51% | 85.92% | 3D CNN | Yes |
| Mei et al | China | 905 | N/A | Non-COVID-19 | 0.92 (0.89–0.95) | N/A | 84.30% | 82.80% | 2D CNN | Not |
| Ko et al | Korea/Italy | 3993 | N/A | CAP/normal | 0.99 | 98.67% | 97.39% | 99.64% | 2D CNN (4 models combined) | Yes |
| Ardakani et al | Iran | 194 | N/A | Non-COVID-19 | 0.99 | 99.51% | 100.00% | 99.02% | 2D CNN (10 models) | Not |
| Wu et al | China | 495 | N/A | Non-COVID-19 | 0.82 (0.67–0.97) | 76.00% | 81.00% | 61.50% | 2D CNN (3 Angles) | Yes |
| Yang et al | China | 295 | N/A | Normal | 0.98 (0.97–1.00) | 92.00% | 97.00% | 87.00% | 2D CNN (DenseNet) | Not |
| Song et al | China | 201 | N/A | Non-COVID-19 | 0.85 | N/A | 80.00% | 75.00% | 2D CNN (BigBiGAN) | Not |
| Bai et al | China/USA | 1186 | N/A | Non-COVID-19 | 0.90 | 87.00% | 89.00% | 86.00% | 2D CNN (EfficientNet) + MLP | Yes |
| Jaiswal et al | India | 2492 | N/A | Non-COVID-19 | 0.97 | 96.25% | N/A | 96.21% | 2D CNN (DenseNet) + ConvLSTM (DADLM) | Yes |
| Han et al | China | 329 | N/A | Non-COVID-19 | 0.99 | 97.90% | N/A | N/A | 2D CNN | Yes |
| Ouyang et al | China | 1588 | N/A | CAP | 0.94 | 87.50% | 86.9% | 90.10% | 3D CNN (ResNet) | Not |
| Jun Wang et al | China | 4657 | N/A | ILD/normal | 0.97 (0.96–0.98) | 93.30% | 87.6% | 95.50% | 3D CNN (ResNet) | Not |
| Sun et al | China | 2522 | N/A | CAP | 0.96 | 91.79% | 93.05% | 89.95% | 2D CNN | Yes |
| Harmon et al | China/Japan/Italy/USA | 2617 | N/A | Non-COVID-19 | 0.95 | 90.80% | 84.00% | 95.10% | 3D CNN (DenseNet) | Not |
DL deep learning, FL federated learning model, N/A no information, CAP community-acquired pneumonia, CNN convolutional neural network, MLP multi-layer perceptron, AUC area under curve of receiver operating characteristic curve (ROC), ILD interstitial lung diseases