| Literature DB >> 33545517 |
Narjes Benameur1, Ramzi Mahmoudi2, Soraya Zaid3, Younes Arous4, Badii Hmida5, Mohamed Hedi Bedoui6.
Abstract
OBJECTIVE: SARS-CoV-2 is a worldwide health emergency with unrecognized clinical features. This paper aims to review the most recent medical imaging techniques used for the diagnosis of SARS-CoV-2 and their potential contributions to attenuate the pandemic. Recent researches, including artificial intelligence tools, will be described.Entities:
Keywords: Artificial intelligence; Chest CT; Clinical findings; Medical imaging techniques; SARS-CoV-2
Mesh:
Year: 2021 PMID: 33545517 PMCID: PMC7840409 DOI: 10.1016/j.clinimag.2021.01.019
Source DB: PubMed Journal: Clin Imaging ISSN: 0899-7071 Impact factor: 1.605
Fig. 1A 71-year-old female, with SARS-CoV-2, CXR shows extensive parenchymal peripheral opacities in all pulmonary lobes.
Fig. 2A 73-year-old female, with SARS-CoV-2, presenting fever and worsening cough. Axial non-enhanced CT scan shows GGO and initial fine linear reticulations in the left and right lobes.
Fig. 3A 57 year-old male with SARS-CoV-2: (a) CT scan demonstrated an initial consolidation in the superior left lobe and a reticular pattern superimposed on the GGO, which the sign of crazy paving pattern, (b) Sagittal view non-enhanced CT scan reveals peripheral focal ground glass opacity in the left upper lobe; (c) 3 days after admission, a follow-up CT scan shows worsening multifocal GGO with extensive interlobular thickening.
Fig. 4A 63-year-old male with SARS-CoV-2: (a) CT scan shows mosaic distribution of GGO in all pulmonary lobes (b) after three weeks of intubation, a follow-up CT scan shows extensive peripheral fibrosis linear pattern.
A summary of clinical SARS-CoV-2 features of chest CXR, chest CT and ultrasound techniques with main advantages and disadvantages.
| Medical imaging techniques for the diagnosis of SARS-CoV-2 | Main clinical SARS-CoV-2 features | Advantages | Disadvantages |
|---|---|---|---|
| Chest CXR | GGO pulmonary nodules Interstitial changes Consolidation Bilateral pneumonia Post-inflammatory focal atelectasis | Easy to perform at the bed of the patient for follow up. Availability | Insufficient sensitivity to identify low density GGO Unable to detect pulmonary embolism and crazy paving |
| Chest CT | GGO Consolidation Bilateral pneumonia Reticular pattern Crazy-paving pattern pleural effusion Lung fibrosis Airway changes | Good reproducibility to follow evolution of pneumonia High sensibility to identify pulmonary embolism. Early detection of SARS-CoV-2 imaging manifestations. | Less available Dose exposure may become significant for young patients if several scans are needed. |
| Chest Ultrasound | B lines artifacts Pleural line irregularities | Available Low cost Noninvasive technique | The technique is affected by several artifacts such as ring-down artifacts, mirroring and acoustic shadowing. Unable to examine the deep field of the lung. Operator dependent. |
A summary of existing deep learning approaches applied for the detection of SARS-CoV-2 infection using CT and CXR images.
| Selected works | Algorithm name | Type of data | Number of images (N) | Data source | Data distribution | Application | Performances |
|---|---|---|---|---|---|---|---|
| Li et al. | ResNet-50 | CT | N = 4352 | Six hospitals in China | Training. = 90% | Prediction of the presence or not of the virus infection | AUC: 0.96 |
| Chen et al. | UNet++ | CT | N = 35,355 | Renmin Hospital of Wuhan University, China | Training. = 80% | Detection of SARS-CoV-2 infection | Specificity: 99.16% |
| Jin et al. | 2D CNN | CT | N = 10,250 | Three centers from Wuhan Three publicly database (LIDC-IDRI, CC-CCII, Trianchi Alibaba) | Random distribution | Detection of SARS-CoV-2 | AUC: 0.97 |
| Zheng et al. | 3D DNN | CT | N = 630 | Three hospitals from Wuhan, China | Training = 80% | Prediction of the probability of SARS-CoV-2 infection | AUC: 0.95 |
| Xu et al. | 3D CNN | CT | N = 618 | Three hospitals from Zhejiang, China | Training+ validation =85% | Classification of the lung into three categories: Normal SARS-CoV-2 Influenza viral pneumonia | AUC: 0.86 |
| Ying et al. | Details Relation Extraction neural network (DRE-Net) | CT | N = 1990 | Renmin Hospital of Wuhan and two affiliated hospitals of Sun Yat-sen University, China | Training. = 60% | Discrimination between SARS-CoV-2 patients and bacteria pneumonia infected patients | AUC: 0.95 |
| Gozes et al. | UNet architecture and ResNet-50 | CT | N = 1865 | Zhejiang hospitals, china El Camino hospital, USA Hospital of Geneva. | Random distribution | Classification of the lung as normal or abnormal (SARS-CoV-2) | AUC: 0.94 |
| Javaheri et al. | UNet architecture | CT | N = 89,145 | Five hospitals from Iran | Training. = 90% | Classification of the lung into three categories: SARS-CoV-2 CAP Other infections | AUC: 0.96 |
| Wang et al. | Transfer learning neural network based on the inception network | CT | N = 1065 | Three hospitals from China | Random distribution | Identification of viral pneumonia images | AUC: 0.93 |
| Abbas et al. | CNN | CXR | N = 1764 | Japanese Society of Radiological Technology (JSRT) Publicly available database | Training. = 70% | Detection of SARS-CoV-2 infection | AUC: 0.93 |
| Ozturk et al. | Modified CNN model called “Darknet” | CXR | 1125 | Two publicly database | Training + validation. = 80% | Classification of CXR images in two categories: SARS-CoV-2 No finding | Specificity: 95.3% |
| Classification of CXR images into three categories: SARS-CoV-2 No finding Pneumonia | Specificity: 92.15% | ||||||
| Wang et al. | DNN | CXR | 13,800 | Five publicly database | Training. = 80% | Classification of the lung into three categories: No infection SARS-CoV-2 Viral/bacterial infection | Sensitivity: 91% |
| Zhang et al. | CNN | CXR | 43,637 | Two publicly database | Random distribution | Identification of SARS-CoV-2 | AUC: 0.951 |