| Literature DB >> 33001832 |
Ping-Yen Liu1,2,3, Yi-Shan Tsai4, Po-Lin Chen5, Huey-Pin Tsai6,7, Ling-Wei Hsu1,8, Chi-Shiang Wang9, Nan-Yao Lee5, Mu-Shiang Huang2,9, Yun-Chiao Wu3, Wen-Chien Ko5, Yi-Ching Yang10, Jung-Hsien Chiang9, Meng-Ru Shen11,12.
Abstract
BACKGROUND: As the COVID-19 epidemic increases in severity, the burden of quarantine stations outside emergency departments (EDs) at hospitals is increasing daily. To address the high screening workload at quarantine stations, all staff members with medical licenses are required to work shifts in these stations. Therefore, it is necessary to simplify the workflow and decision-making process for physicians and surgeons from all subspecialties.Entities:
Keywords: COVID-19; SARS-CoV-2; artificial intelligence; quarantine station; smart device assisted decision making
Mesh:
Year: 2020 PMID: 33001832 PMCID: PMC7593855 DOI: 10.2196/19878
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1The quarantine station at National Cheng Kung University Hospital. ED: emergency department.
Figure 2The pneumonia segmentation model based on U-Net. ResNet-50 was used as the encoder backbone model. The squeeze-and-excitation block was added to each ResConv block to enhance feature extraction from feature maps. The skip connection was used to concatenate the encoder feature map with the decoder feature map after upsampling. Conv: convolutional; ResConv: residual convolutional.
Figure 3Model of the addition of the SE block to the residual convolutional block. Conv: convolutional; SE: squeeze-and-excitation.
Figure 4Synergetic combination of quarantine station establishment, smart patient processing, and AI to improve the efficiency and safety of patient processing during the COVID-19 pandemic. ED: emergency department; TOCC: travel, occupation, contact, and cluster.
Figure 5Ex vivo study to determine the efficiency of disinfection of the tablet computer surface. Samples were collected from the tablet surface before disinfection (V0) and after the first and second disinfection processes using 75% alcohol (V1 and V2, respectively). The percentages indicate the positive rate (CP value <45 as positive) of the real time–polymerase chain reaction (RT-PCR, N=4 for each experiment). CP: crossing point. RdRp: RNA-dependent RNA polymerase gene. E: Envelope gene.
Figure 6The artificial intelligence (AI) model for pneumonia detection incorporated into the smart clinical assisting system. (A) An original chest x-ray is automatically retrieved from the picture archiving and communication system and then interpreted by the AI model. (B) A consolidative lung is detected, and the diseased site is illustrated using a heat map. (C) A light consolidation GGO is identified by the AI model. CXR: chest x-ray; GGO: ground-glass opacity.
Figure 7AUC of the AI chest x-ray interpretation system for recognizing pulmonary infiltrates on chest x-rays. AUC: area under the ROC curve; ROC: receiver operating characteristic.
Comparison of clinical data of patients seeking treatment in the traditional ED and at the smart quarantine station during the COVID-19 epidemic from January 31 to March 17, 2020 (N=643).
| Characteristic | EDa (n=281) | Smart quarantine station (n=362) | ||
| Age (years), mean (SD) | 34.7 (12.3) | 35.6 (13.1) | .41 | |
| Sex (male), n (%) | 144 (51.2) | 165 (45.6) | .11 | |
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| Traveling | 10 (62.4) | 308 (49.0) | .32 |
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| Occupational | 2 (12.5) | 33 (5.3) | .21 |
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| Clustering | 1 (6.3) | 30 (4.8) | .55 |
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| Contact | 4 (25.0) | 129 (20.5) | .75 |
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| CADc | 2 (0.5) | 3 (0.9) | .99 |
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| Diabetes | 3 (0.9) | 11 (2.5) | .24 |
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| Hypertension | 9 (3.3) | 19 (4.4) | .67 |
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| COPDd | 0 (0.0) | 3 (0.7) | .56 |
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| Malignancy | 8 (2.8) | 7 (1.8) | .39 |
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| CKDe/ESRDf | 8 (2.8) | 5 (1.5) | .37 |
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| Dyspnea, n (%) | 53 (18.8) | 60 (16.4) | .74 |
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| Cough, n (%) | 140 (49.8) | 226 (62.4) | .31 |
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| Stuffed nose, n (%) | 88 (31.3) | 166 (45.8) | .31 |
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| Fever, n (%) | 78 (27.7) | 134 (37.0) | .37 |
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| Body temperature (°C), mean (SD) | 36.9 (0.9) | 37.1 (1.7) | .69 |
aED: emergency department.
bTOCC: travel, occupation, contact and cluster.
cCAD: coronary artery disease.
dCOPD: chronic obstructive pulmonary disease.
eCKD: chronic kidney disease.
fESRD: end-stage renal disease.
Figure 8(A) Comparison of survey processing times over the study period between the traditional ED and quarantine station groups with or without AI applications. (B) Box plots of the survey processing times for the traditional ED group, the quarantine station group without AI, and the quarantine station group with AI. AI: artificial intelligence; ED: emergency department; min: minutes.