| Literature DB >> 34082281 |
Mustafa Alhasan1, Mohamed Hasaneen2.
Abstract
The advancement of technology remained an immersive interest for humankind throughout the past decades. Tech enterprises offered a stream of innovation to address the universal healthcare concerns. The novel coronavirus holds a substantial foothold of planet earth which is combatted by digital interventions across afflicted geographical boundaries and territories. This study aims to explore the trends of modern healthcare technologies and Artificial Intelligence (AI) during COVID-19 crisis, define the concepts and clinical role of AI in the mitigation of COVID-19, investigate and correlate the efficacy of AI-enabled technology in medical imaging during COVID-19 and determine advantages, drawbacks, and challenges of artificial intelligence during COVID-19 pandemic. The paper applied systematic review approach using a deliberated research protocol and Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) flow chart. Digital technologies can coordinate COVID-19 responses in a cascade fashion that extends from the clinical care facility to the exterior of the pending viral epicenter. With cases of healthcare robotics, aerial drones, and the internet of things as evidentiary examples. PCR tests and medical imaging are the frontier diagnostics of COVID-19. Computed tomography helped to correct the accuracy variation of PCR tests at a clinical sensitivity of 98 %. Artificial intelligence can enable autonomous COVID-19 responses using techniques like machine learning. Technology could be an endless system of innovation and opportunities when sourced effectively. Scientists can utilize technology to resolve global concerns challenging the history of tangible possibility. Digital interventions have enhanced the responses to COVID-19, magnified the role of medical imaging amid the COVID-19 crisis and have exposed healthcare professionals to the opportunity of contactless care.Entities:
Keywords: Artificial intelligence; COVID-19; Digital technologies; Healthcare; Machine learning; Medical imaging
Year: 2021 PMID: 34082281 PMCID: PMC8123377 DOI: 10.1016/j.compmedimag.2021.101933
Source DB: PubMed Journal: Comput Med Imaging Graph ISSN: 0895-6111 Impact factor: 4.790
Systematic research data and accumulated results.
| Search date | Selected database | Extracted results | Applied search terms |
|---|---|---|---|
| 3/9/2020 | Google Scholar | 53 | "modern technologies" COVID- 19 |
| 4/9/2020 | 40 | Artificial intelligence in healthcare during COVID-19 | |
| 5/9/2020 | PubMed | 12 | "artificial intelligence" COVID-19 |
| IEEE Xplore | 3 | (((("All Metadata”: artificial intelligence) AND "All Metadata":COVID-19) AND "All Metadata": COVID-19) AND "All Metadata”: AI) | |
| 6/9/2020 | FCHS learning database (EBSCOhost) | 2 | (((("All Metadata”: artificial intelligence) AND "All Metadata":COVID-19) AND "All Metadata”: technologies) AND "All Metadata": AI) |
| Total | 110 |
Fig. 1Systematic Search Process extrapolated using the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) flow chart.
Provisions and limitations of technological interventions related to COVID-19.
| Provisions/ limitations | Description / illustrative example | References |
|---|---|---|
| Internet accessibility | Digital technologies rely on the availability of internet access which allows digital frameworks to reach full potential in terms of generalization and connectivity within the established server coverage. | ( |
| Capital expenditure | Technological interventions require significant amounts of capital to invest in the development, maintenance, and adaptation of digital technologies in response to COVID-19. Such technologies encompass digital assistants like SIRI and ALEXA. | ( |
| Digital divide | The disparity in accessibility to digital technologies can limit the coverage of technological interventions in some population groups that lack access to digital technologies. | ( |
Glossary of common artificial intelligence terminology.
| Terminology | Definition | References |
|---|---|---|
| Deep learning | The computation of the human independent critical thinking, interpretation, and resolution through the categorization of random data. | ( |
| Machine learning | The recognition of data through identified patterns. | ( |
| Convolutional neural network (CNN) | A deep learning algorithm that targets AI systems designated in the segregation of multimedia information (i.e. video, audio, and images) | ( |
| Supervised learning | Data comprehension through the use of cataloged data. | ( |
| Unsupervised learning | Data comprehension through the use of uncatalogued data. | |
| Natural language processing (NLP) | The encoding of accumulated data obtained through natural linguistics and dialogue. | |
| Natural inspired computing (NICC) | The development of novel algorithms and hardware through the multidisciplinary integration of mathematics, computer science, theoretical physics, etc. | ( |
| Convolutional layers | A set of predetermined parameters that shape the AI learning process. | ( |
| Pooling | The learning blocks of CNN. | |
| Fully connected layers | Interlinked sets of CNN neurons that transfer learning data. | |
| Reinforcement learning | The training of an AI platform through a specified set of rewards and penalties established by the human programmer. | ( |
| Big data | The total volume of heterogeneous computed data in the present databases. | ( |
Challenges and tradeoffs of artificial intelligence in terms of COVID-19.
| Challenge | Description / illustrative example | References |
|---|---|---|
| Logistical maintenance | Compulsory public health lockdowns can impede communication between machine learning data specialists, engineers, and healthcare personnel to ensure proper usage and maintenance of the AI algorithm. | ( |
| Existing AI technique limitations | The performance of deep learning is restricted by the provided human data, inherent computation of all case-related probabilities, and the volume of training data. | ( |
| Invasion of individual privacy | Public health COVID-19 responses and guidelines mandated the use of private user data (i.e. contact tracing) | ( |
| Training data shortage | Scarce training data can compromise the performance and efficiency of COVID-19 centered AI models. | |
| Heterogeneous data cohorts | The disparity in COVID-19 variables can influence the results of predictive AI models. Such variables include the incubation period, levels of dyspnea, and oxygen saturation. | ( |
| Chatbots | Chatbots are conversation simulators created to offer an alternative platform of human-AI communication. These systems require long term training and maintenance to minimize the incidence of deficient clinical diagnosis and false response inputs. | ( |
Experimental conditions of the included medical imaging experiments of artificial intelligence and COVID-19.
| Experimental study | Setting | Duration | Imaging modality | Study population |
|---|---|---|---|---|
| ( | Huoshenshan Hospital in Wuhan | 35 days [February 11th - March 16th, 2020] | Chest CT | 2460 COVID-19 patients [1250 males and 1210 females in the age bracket of 11−93 years of age] |
| ( | Not disclosed | Not disclosed | Digital CXR | 3487 digital CXR collected from relevant COVID-19 literature [1485 viral pneumonia, 1579 normal CXRs, and 423 COVID-19 CXRs) |
| ( | Not disclosed | Not disclosed | Mobile CXR | 131 bedside CXRs collected from 84 COVID-19 patients [51males, 29 females, and 4 anonymous patients] |
| ( | Not disclosed | Not disclosed | Raw CXR | 127 CXRs acquired from two separate databases (1) GitHub: ( |
| ( | Seoul National University Hospital. | 40 days[January 31st -March 10th, 2020] | CXR | 332 COVID-19 patients [173 males and 159 females] |
| (Bai HX, et al., 2020) | 10 hospitals from China and the United States | 3 months [January 2020-April 2020] | Chest CT | 1186 patients [521 patients with positive PCR tests and 665 patients with pneumonia] |
| ( | Not disclosed | Not disclosed | CXR | 3905 CXRs attributable to various pulmonary disorders. The images were retrieved from several medical imaging databases (i.e. Radiopedia and the Radiological Society of North America (RSNA). |
| ( | Not disclosed | April 11th, 2020 | CXR | The study encompassed 572 CXRs retrieved from (1) QUIBIM imagingcovid19 platform and (2) GitHub: ( |
| ( | Wonkwang University Hospital, Chonnam National University Hospital in South Korea, and the Italian Society of Medical and Interventional Radiology [SIRM] public repository | Not disclosed | 2D Chest CT | 3993 Chest CTs of COVID-19 patients compiled from the participating institutions |
| ( | The Lu’an affiliated hospital of Anhui Medical University and the First Affiliated Hospital of University of Science and Technology of China | 35 days [January 18th - February 23rd, 2020] | Chest CT | 201 COVID-19 patients. [118 males and 83 females] |
| ( | Seven hospitals in China. | Not disclosed | Chest CT | 14,435 patients [2154 COVID-19 patients and 5874 patients presenting other respiratory pneumonia] |
| (Ran et al., 2020) | Henry Ford Health system [5 hospitals and 30 clinics] | Not disclosed | CXR | 5805 CXRs with RT-PCR confirmed COVID-19 pneumonia from 2060 patients and 5300 CXRs with non-COVID-19 pneumonia from 3148 patients. |
Objectives, results, advantages and disadvantages of the included novel COVID-19-AI imaging studies.
| Experimental study | Research direction & AI technology | Results | Advantages | Disadvantages |
|---|---|---|---|---|
| ( | Triage of COVID-19 pneumonia using the deep learning software uAI. | The uAI Intelligent Assistant Analysis System detected COVID-19 Pneumonia in addition to COVID-19 CT findings (i.e. GGOs and lobular lesions) | Useful for localization and quantification of lung lesions | Requires manual human modification to rollout negative lesions |
| Useful for treatment planning based on the affected lung regions | ||||
| Not applicable for critical cases (CT) | ||||
| ( | Autonomous detection of COVID-19 pneumonia using transfer learning. | The transfer learning system managed to train CNNs to achieve readings of 99.7 %, 99.7 %, 99.7 %, 99.55 %,97.9 %, 97.95 %, 97.9 %, and 98.8 % in taxonomical accuracy, pathological sensitivity, and specificity to COVID-19. | Useful for normal and abnormal classification Image augmentation can slightly enhance the overall performance | Large data set is required to improve the accuracy |
| ( | Classification of COVID-19 severity on portable CXRs using deep learning CNNs and an expert radiologist panel. | The deep learning CNNs accomplished a comparable staging accuracy to the three-member radiologist panel at a mean absolute error of 8.5 %. | Incorporating AI with portable X-ray images provide more accessible diagnosis than CT scan | Small data set was used |
| No Correlation with radiographic score system | ||||
| No correlation with clinical non imaging information | ||||
| Useful for disease severity identification | ||||
| Transfer learning is superior to traditional learning techniques in terms of shorter training time | ||||
| ( | Autonomous detection of COVID-19 using deep learning CNNs and an expert radiologist panel to compare normal Vs. COVID-19 and COVID-19 Vs. pneumonia. | The proposed obtained an accuracy of 98.08 % in binary classification and 87.02 % in multi-class classification. | No manual extraction is needed | Small data set was used |
| Incorporating AI with X-ray images provide more accessible diagnosis than CT scan | ||||
| ( | Evaluation of deep learning CAD (computer-aided detection) system performance in image interpretation of suspected COVID-19 CXRs. | AI CAD system generated a 68.8% sensitivity and 66.7% specificity to COVID-19. COVID-19 pneumonia was also detected at a 72.3% specificity and 81.5% sensitivity. | CAD technique provides shorter diagnostic time than PCR result | Lack of trained data on COVID-19 images |
| ( | Evaluation of AI integrated image interpretation workflow in the differentiation of COVID-19 and other pulmonary findings on chest CTs. | Deep learning apparatus assisted radiologists in improving the diagnostic performance in terms of COVID-19 at a 90% accuracy, 91% specificity, and 88% sensitivity. | AI augmentation is useful for differentiating COVID-19 from other pneumonia on CT images | Small data set was used |
| Lack of homogenous pneumonia cases | ||||
| ( | Autonomous detection of COVID-19 using transfer learning, deep learning, and CNNs. | The proposed study method delivered 99.42 % specificity, 99.18 % accuracy, and 97.36 % sensitivity in the identification of biological markers of COVID-19. | Useful to identify new pulmonary abnormalities as new biomarkers | Small data set was used |
| Lack of suspected COVID-19 patients data | ||||
| ( | Development of a feasible AI model in terms of image interpretation of COVID-19 CXRs using transfer learning techniques and the evaluation of an expert radiologist panel. | The transfer learning model was capable of undertaking binary, ternary, and quaternary at the area under curve of 1 during the management of a 5 stage dataset. | Attention maps can improve the final clinical decision | limited data set |
| ( | Rapid triage, investigation, and differentiation of the pulmonology of COVID-19, pneumonia, and non-pneumonia disorders of the lungs using transfer learning. | The ResNet-50 model outperformed the transfer learning models at a 99.87 % accuracy, 100 % specificity, and a 99.58 % sensitivity. Hence, providing a reliable diagnostic detection of COVID-19 pneumonia. | Useful for differentiating COVID-19 from other pneumonia on CT images | Small data set was used |
| ( | Autonomous differentiation of viral pneumonia from COVID-19 computed tomography findings using bi-directional generative adversarial network data architecture to enhance unsupervised learning of the presented data. | The novel AI platform generated a maximum specificity of 91 % and a sensitivity of 92 % during the training, testing, and validation stages of the study. | Useful for differentiating COVID-19 from other pneumonia on CT images | Small data set was used |
| ( | Autonomous recognition of CXR COVID-19 findings using deep learning. | The deep learning platform maintained a consistent diagnostic performance in comparison to the expert radiologists at a maximum accuracy of 0.85 Vs. 0.93 of expert medical imaging residents. | Useful for quantitative detection of abnormalities | Small data set was used |
| Lack of specificity in comparison to radiologists | ||||
| (Ran et al., 2020) | Autonomous differentiation of COVID-19 pneumonia from other causes of CXR abnormalities and test the system performance against thoracic radiologists using deep neural networks. | CV19-Net was able to differentiate COVID-19 related pneumonia from other types of pneumonia with performance paralleling that of experienced thoracic radiologists at a confidence interval of 95%. The combination of chest radiography with the proposed CV19-Net deep learning algorithm has the potential as an accurate method to improve the accuracy and the estimated times of the radiological interpretation process of COVID-19 pneumonia. | Useful for differentiating COVID-19 from other pneumonia on CT images | Lack of pneumonia types classification |
| Lack of COVID-19 representative data |
| Article # | Article title | Publication URL |
|---|---|---|
| 1. | Digital technologies in the public-health response to COVID-19 | |
| 2. | Covid-19 and Health Care’s Digital Revolution | |
| 3. | Applications of digital technology in COVID-19 pandemic planning and response | |
| 4. | COVID-19: What Can Healthcare Learn? | |
| 5. | Rapid implementation of mobile technology for real-time epidemiology of COVID-19 | |
| 6. | Digital healthcare: The only solution for better healthcare during COVID-19 pandemic? | |
| 7. | Digital Health Strategies to Fight COVID-19 Worldwide: Challenges, Recommendations, and a Call for Papers | |
| 8. | A review of modern technologies for tackling COVID-19 pandemic | |
| 9. | Restructured society and environment: A review on potential technological strategies to control the COVID-19 pandemic | |
| 10. | Integrating emerging technologies into COVID-19 contact tracing: Opportunities, challenges and pitfalls | |
| 11. | Digital technology applications for contact tracing: the new promise for COVID-19 and beyond? | |
| 12. | Technology and its Solutions in the Era of COVID-19 Crisis: A Review of Literature | |
| 13. | A Study on Fight Against COVID-19 from Latest Technological Intervention | |
| 14. | Emerging Technologies for Use in the Study, Diagnosis, and Treatment of Patients with COVID-19 | |
| 15. | Advanced Digital Health Technologies for COVID-19 and Future Emergencies | |
| 16. | Will COVID-19 be the tipping point for the Intelligent Automation of work? A review of the debate and implications for research | |
| 17. | Digital Response During the COVID-19 Pandemic in Saudi Arabia | |
| 18. | Impact of the digital divide in the age of COVID-19 |
| Article # | Article title | Publication URL |
|---|---|---|
| 1. | AI Techniques for COVID-19 | |
| 2. | The Rise of Machine Intelligence in the COVID-19 Pandemic and Its Impact on Health Policy | |
| 3. | Review of Big Data Analytics, Artificial Intelligence and Nature-Inspired Computing Models towards Accurate Detection of COVID-19 Pandemic Cases and Contact Tracing | |
| 4. | Approaches Based on Artificial Intelligence and the Internet of Intelligent Things to Prevent the Spread of COVID-19: Scoping Review | |
| 5. | A Review for Artificial Intelligence Proving to Fight against COVID-19 Pandemic and Prefatory Health Policy | |
| 6. | A Deep Learning System to Screen Novel Coronavirus Disease 2019 Pneumonia | |
| 7. | Artificial intelligence vs COVID-19: limitations, constraints and pitfalls | |
| 8. | COVID-19 Detection using Artificial Intelligence | |
| 9. | How Big Data and Artificial Intelligence Can Help Better Manage the COVID-19 Pandemic | |
| 10. | Combat COVID-19 with artificial intelligence and big data | |
| 11. | Machine learning to assist clinical decision-making during the COVID-19 pandemic | |
| 12. | Utility of Artificial Intelligence Amidst the COVID 19 Pandemic: A Review | |
| 13. | Applications of machine learning and artificial intelligence for Covid-19 (SARS-CoV-2) pandemic: A review | |
| 14. | How artificial intelligence and machine learning can help healthcare systems respond to COVID-19 | |
| 15. | Artificial Intelligence-Powered Search Tools and Resources in the Fight Against COVID-19 |
| Article # | Article title | Publication URL |
|---|---|---|
| 1. | Can AI Help in Screening Viral and COVID-19 Pneumonia? | |
| 2. | Deep transfer learning artificial intelligence accurately stages COVID-19 lung disease severity on portable chest radiographs | |
| 3. | Imaging of COVID-19 pneumonia: Patterns, pathogenesis, and advances | |
| 4. | Implementation of a Deep Learning-Based Computer-Aided Detection System for the Interpretation of Chest Radiographs in Patients Suspected for COVID-19 | |
| 5. | Automated detection of COVID-19 cases using deep neural networks with X-ray images | |
| 6. | AI Augmentation of Radiologist Performance in Distinguishing COVID-19 from Pneumonia of Other Etiology on Chest CT | |
| 7. | Extracting Possibly Representative COVID-19 Biomarkers from X-ray Images with Deep Learning Approach and Image Data Related to Pulmonary Diseases | |
| 8. | Systematic review of artificial intelligence techniques in the detection and classification of COVID-19 medical images in terms of evaluation and benchmarking: Taxonomy analysis, challenges, future solutions and methodological aspects | |
| 9. | Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software | |
| 10. | End-to-end automatic differentiation of the coronavirus disease 2019 (COVID-19) from viral pneumonia based on chest CT | |
| 11. | Review of Artificial Intelligence Techniques in Imaging Data Acquisition, Segmentation and Diagnosis for COVID-19 | |
| 12. | A deep learning approach to characterize 2019 coronavirus disease (COVID-19) pneumonia in chest CT images | |
| 13. | Coronavirus Disease 2019 (COVID-19) diagnostic technologies: A country-based retrospective analysis of screening and containment procedures during the first wave of the pandemic | |
| 14. | Position paper on COVID-19 imaging and AI: From the clinical needs and technological challenges to initial AI solutions at the lab and national level towards a new era for AI in healthcare | |
| 15. | Interpretable artificial intelligence framework for COVID-19 screening on chest X-rays/ | |
| 16. | Current Landscape of Imaging and the Potential Role for Artificial Intelligence in the Management of COVID-19 | |
| 17. | COVID-19 Pneumonia Diagnosis Using a Simple 2D Deep Learning Framework with a Single Chest CT Image: Model Development and Validation | |
| 18. | On the Interpretability of Artificial Intelligence in Radiology: Challenges and Opportunities | |
| 19. | COVID-19: A Multimodality Review of Radiologic Techniques, Clinical Utility, and Imaging Features | |
| 20. | How Might AI and Chest Imaging Help Unravel COVID-19’s Mysteries? | |
| 21. | Diagnosis of COVID-19 Pneumonia Using Chest Radiography: Value of Artificial Intelligence |
| Title | Aims | Strengths | Limitations | Conclusion |
|---|---|---|---|---|
| Approaches Based on artificial intelligence and the internet of intelligent things to prevent the spread of COVID-19: Scoping review | To analyze the current literature, discuss the applicability of reported ideas for using AI to prevent and control COVID-19, and build a comprehensive view of how current systems may be useful in particular areas (i.e. health care administrators, computer scientists, and policy makers worldwide) | The article describes the multidisciplinary applications of AI and real time efficacy in the mitigation of COVID-19. | Lacks other studies that might provide some additional perspective in the scope of AI and COVID-19. | The field of medical AI applications remains at early stages which was evident in the lack of literature pertaining to medical AI applications (i.e. resource allocation and experimental therapeutics). |
| Review of big data analytics, artificial intelligence and nature-inspired computing models towards accurate detection of COVID-19 pandemic cases and contact tracing | To compare the characteristics of big data, AI, nature-inspired computing models in terms of accuracy of COVID-19 contact tracing. | The article describes the role of technologies in the mitigation of COVID-19, clearly illustrates the addressed concepts in a simple and applicable language. | Lacks graphic representations through charts and figures that could display the efficacy of the proposed techniques in the mitigation of COVID-19. | AI models can help to address the gap in COVID-19 diagnostics but with a limited capacity that requires further programming and subject compliance. |
| Systematic review of artificial intelligence techniques in the detection and classification of COVID-19 medical images in terms of evaluation and benchmarking: Taxonomy analysis, challenges, future solutions and methodological aspects | To present AI techniques used in COVID-19 diagnostics with the notions of medical imaging benchmarking and evaluation. | Highlights a clear scope and compares other relevant studies that discuss the addressed topic, provides a proposed solution to address the lack in AI literature, and demonstrates the findings in an assortment of summarization tables that highlight the points of interest. | Lacks the input of experienced radiologists’ and real-world applications of the proposed solution being MCDA to ascertain the platform’s efficacy in addressing the shortcomings of AI. | The diversity of AI technologies can pose a challenge in terms of usage rationale during the suitable situation. |
| The Rise of Machine Intelligence in the COVID-19 Pandemic and Its Impact on Health Policy. In Surveying the Covid-19 Pandemic and its Implications | To emphasize the need of targeted use of technology to address future pandemics. | Provides clear details regarding the role of AI in the mitigation of COVID-19, highlights the chain of events related to the emergence and spread of COVID-19, and explains the background of AI and digital technologies to help curb COVID-19. | Lacks definitions of AI related concepts and real-time evaluation of the AI techniques. | Successful use of technology can mitigate the risks of future pandemics following COVID-19. |
| Extracting Possibly Representative COVID-19 Biomarkers from X-ray Images with Deep Learning Approach and Image Data Related to Pulmonary Diseases | Autonomous detection of COVID-19 using transfer learning, deep learning, and CNNs. | The article is critically organized with a detailed purpose, methods and results. | The pneumonia incidence samples are older recorded samples and do not represent pneumonia images from patients with suspected Coronavirus symptoms. | The proposed study method delivered 99.42 % specificity, 99.18 % accuracy, and 97.36 % sensitivity identifying biological markers of COVID-19. |
| A Study on Fight Against COVID-19 from Latest Technological Intervention | To study the efficacy of technological interventions against COVID-19 in aspects of home quarantine and AI-assisted diagnostics. | Provides a clear overview of the article with a detailed description of the diagnosis and therapeutics. | Lack of clear definition of AI and background or details about COVID-19. | AI offers the prospect of the full functional capability to mitigate COVID-19. |
| Utility of Artificial Intelligence Amidst the COVID 19 Pandemic: A Review | To describe the history and utility of machine learning in mitigating infectious pandemics and in retrospect to COVID-19. | Employs a consistent progression of ideas starting from the definition of machine learning and ending with machine learning’s clinical utility against COVID-19. | Lacks images and real-time incident involving the application of ML in a COVID-19 related setting. | Machine learning is a flexible AI technology manipulated in various medical circumstances, namely, mitigation of infectious pandemics. |
| How Big Data and Artificial Intelligence Can Help Against COVID-19 | To highlight and summarize the applications of AI and big data in the global efforts against COVID-19. | Explains the potential of AI and big data in the mitigation of COVID-19 using a hierarchal approach that includes short, mid, and long term application. | Lacks real-time applications that might provide additional illustration and understanding of AI and big data implementation in the COVID-19 response. | Big data and artificial intelligence can provide short, mid, and long term applications that may influence COVID-19 and future development concepts. |
| Digital technologies in the public-health response to COVID-19 | To capture the breadth of digital innovations for the public-health response to COVID-19 worldwide and their limitations, and barriers to their implementation, including legal, ethical and privacy barriers, as well as organizational and workforce barriers. | Offers a comprehensive background on COVID-19 and a wide explanation of the epidemiological aspects of COVID-19 using graphs and tables. | No notable limitations were mentioned. | COVID-19 inherently promoted digital technologies and allowed the exploration of the possibility of digitized healthcare. |
| Can AI Help in Screening Viral and COVID-19 Pneumonia? | Autonomous detection of COVID-19 pneumonia using transfer learning. | The publication displayed an organized outline, abstract, sampling method, and research methodology. | The publication fails to mention the participants’ awareness about the nature of the research. | The transfer learning system managed to train CNNs to achieve readings of 99.7 %, 99.7 %, 99.7 %, 99.55 %,97.9 %, 97.95 %, 97.9 %, and 98.8 % in taxonomical accuracy, pathological sensitivity, and specificity to COVID-19. |
| Will COVID-19 be the tipping point for the Intelligent Automation of work? A review of the debate and implications for research | To review the arguments in favor and opposition of increasing the level of AI adoption stimulated by COVID-19 with reflection on the influence of this argument in healthcare research. | Clearly explained the key arguments in favor of increased AI adoption include consumer preferences, increasing familiarity with AI technologies, and increased business confidence in AI. | Short conclusion and evident lack of in-text citations. | Information systems and management will become a topic of interest following the recovery after COVID-19. |
| Machine learning to assist clinical decision-making during the COVID-19 pandemic | To depict the importance and incidence of the emergency ML phenomena to help aid healthcare professional exercises evidence based practice and clinical decision making. | Portrays the multifaceted role of ML/AI in the mitigation of COVID-19 through many clinical scenarios and ethical-legal issues from healthcare professionals and patients alike. | Lacks statistical information on ML/AI’s actual implementation during COVID-19 including healthcare professionals and the perspective of healthcare professionals on ML/AI modals. | Medical machine learning is a prospect raised by COVID-19 and can offer a vast utility of applications to help facilitate the workflow undertaken in clinical healthcare facilities worldwide. |
| Rapid implementation of mobile technology for real-time epidemiology of COVID-19 | The goal was to establish the Coronavirus Pandemic Epidemiology (COPE) group to invite international scientists with expertise in big data research and epidemiology to develop a COVID-19 Symptom Tracker mobile application. | The publication offered full disclosure of the study participants being the Welsh Government, NHS Wales, the Scottish Government, and NHS Scotland. The approach has the benefit of allowing rapid deployment across a large cross-section of the population during an unprecedented health crisis. | Smartphone application does not represent a random sampling of the population. | The proposed approach offers early stages regarding the discussed concepts and novel consortium. The app was first launched in the UK on March 24th 2020, as opposed to March 29th in the USA, in which the app managed to garner more than 2.8 million users as of May 2, 2020. |
| Coronavirus Disease 2019 (COVID-19) diagnostic technologies: A country-based retrospective analysis of screening and containment procedures during the first wave of the pandemic | To illustrate country-based retrospective analysis of screening and containment procedures during the first wave of the pandemic. | Well organized article with clear details of the presented information. | Screening protocols must consider subspecialist expertise and time to diagnosis, in addition to diagnostic accuracy. National and institutional protocols must consider local availability of resources. | Diagnosis of COVID-19 is challenging due to a prolonged asymptomatic phase. RT-PCR has been considered the gold standard. However, suboptimal sensitivity in early disease and regional shortages of testing kits have limited its use. |
| Digital Response During the COVID-19 Pandemic in Saudi Arabia | The aim is to highlight how Saudi Arabia has used digital technology during the COVID-19 pandemic in the domains of public health, health care services, education, telecommunication, commerce, and risk communication. | All digital solutions and tools used to encompass during the COVID-19 outbreak in Saudi Arabia up to manuscript revision. | This paper lists apps but does not evaluate them or check for user experiences. Moreover, the criteria for inclusion in this paper were subjective. The authors attempted to decrease the effect of this subjectivity using discussion and consensus. | The Saudi Vision 2030 framework, released in 2017, has paved the path for digital transformation. COVID-19 enabled the promotion and testing of this transition. In Saudi Arabia, artificial intelligence in integrating different data sources during future outbreaks could be further explored. Also, decreasing the number of mobile apps and merging their functions could increase and facilitate their use. |
| COVID-19: What Can Healthcare Learn? | To demonstrate facts related to COVID-19 and to highlight on the role of healthcare workers during this pandemic. | The article has valuable recommendations related to COVID-19. | Lack of abstract, background, and conclusion. | The safety and protection of healthcare workers should be a top priority. Protective gear should be provided to healthcare workers immediately because, in the end, these are the people who will play an essential role in minimizing the level of illness and the number of deaths. |
| AI Techniques for COVID-19 | The aim of this study is to summarize the current state of AI applications in clinical administrations while battling COVID-19 and also to highlight various intelligence techniques and methods that can be applied to various types of medical information-based pandemic. | There was an attempt to benefit medical practitioners and medical researchers in overpowering their difficulties while handling COVID-19 big data. This survey study has also ended up with a detailed discussion about how AI implementation can be a massive advantage in combating various similar viruses. | Lacks some background information regarding AI (i.e. Definition and history of development). | The artificial intelligence tool is arriving at the clinical field in present times. AI techniques help in speeding up researches and assisting in the current COVID-19 crisis. Computer-based intelligence is not just useful in treating COVID-19 contaminated patients yet also for their proper medical check-ups. It can follow the emergency of COVID-19 at various scales, for example, clinical and epidemiological applications. |
| Implementation of a deep learning-based computer aided detection system for the interpretation of chest radiographs in patients suspected for covid-19 | The aim of this study is ‘to describe the experience of implementing a deep learning-based computer-aided detection (CAD) system for the interpretation of chest X-ray radiographs (CXR) of suspected coronavirus disease (COVID-19) patients and investigate the diagnostic performance of CXR interpretation with CAD assistance. | The results were clear and well explained in details | Small sample size | Radiologists with CAD assistance could identify patients with PCR-positive COVID-19 or pneumonia on CXR with an acceptable performance. In patients suspected of COVID-19, CXR had much faster TATs than PCRs. |
| Digital healthcare: The only solution for better healthcare during COVID-19 pandemic? | The paper focuses on ‘how digital solutions can impact healthcare during this pandemic’. | The information is clear and well organized. | Brief abstract and lack of detailed introduction. | Digital health systems are well suited to provide novel solutions to the public health emergency. These include the development of robust surveillance systems, telehealth, novel diagnostic and clinical decision-making tools. |
| Covid-19 and health care’s digital revolution | To demonstrate the importance of digital technology during COVID-19 and to show some important services that should be considered during this pandemic. | Information is clear and well organized. | Lack of clear abstract and conclusion. | Digital and technological revolution have transformed the world over the past century. As health care systems nationwide brace for a surge of COVID-19 cases, urgent action is required to transform health care delivery and scale up our systems by unleashing digital technologies power. |
| A Review for Artificial Intelligence Proving to Fight Against COVID-19 Pandemic and Prefatory Health Policy | The aim of the study is to discuss the various aspects of modern technology used to fight against COVID-19 outbreak crisis at different scales, including medical image processing, disease tracking, prediction, outcomes, computational biology and medicines. | The study uses various data sources, including MEDLINE, Global Health, PsycINFO, and Scopus databases. | No notable limitations were mentioned. | Emerging technologies are set to play an essential role in our response to the COVID-19 pandemic. There is an interest for future work on building up a benchmark framework to assess and look at the current techniques. The present models acquired extraordinary accuracy in recognizing COVID-19 symptoms with different kinds of viral pneumonia utilizing radiology imaging. |
| COVID-19 pneumonia diagnosis using a simple 2d deep learning framework with a single chest CT image: Model development and validation | The study aimed to rapidly develop an AI technique to diagnose COVID-19 pneumonia in CT images and differentiate it from non–COVID-19 pneumonia and non-pneumonia diseases. | The study specifics a precise research method as well as a validation process. | Lack of a COVID-19 CT database that allows additional training of the platform | FCONet, a simple 2D deep learning framework based on a single chest CT image, provides excellent diagnostic performance in detecting COVID-19 pneumonia. |
| The paper clearly describes the implications and testing parameters of each measured category under uniform scientific testing conditions. | Small sample size was used | |||
| The findings were illustrated through several means including tables and graphic heat signatures which provided additional convenience and understanding of the paper. | ||||
| Artificial intelligence-powered search tools and resources in the fight against covid-19 | This paper explores three prominent initiatives: COVID-19 focused datasets (e.g., CORD-19); Artificial intelligence-powered search tools (e.g., WellAI, SciSight); and contact tracing based on mobile communication technology. | The article was organized critically including the tables and diagrams. | No notable limitations were mentioned. | The new AI-powered search tools will accelerate research and development in COVID-19 as the world strives to develop efficient and timely testing and effective therapies to combat this pandemic. |
| How Might AI and Chest Imaging Help Unravel COVID-19′s Mysteries? | The study aims to explore the role of AI-chest image in detecting COVID-19. | Information was well organized in details. | The Summary and abstract were short and not specific. | Artificial intelligence (AI) can expand the role of chest imaging in COVID-19 beyond diagnosis to enable risk stratification, treatment monitoring, and the discovery of novel therapeutic targets. |
| Applications of machine learning and artificial intelligence for Covid-19 (SARS-CoV-2) pandemic: A review | The article aims to comprehensively review the role of AI and ML as one significant method in the arena of screening, predicting, forecasting, contact tracing, and drug development for SARS-CoV-2 and its related epidemic. | The publication employs summarization tables enabling full comprehension and illustration of the presented information. | The study lacks information about the integration of AI in COVID-19 related medical imaging. | The ongoing development in AI and ML has significantly improved treatment, medication, screening, prediction, forecasting, contact tracing, and the drug/vaccine development process for COVID-19. |
| Combat COVID-19 with artificial intelligence and big data. | To demonstrate the role of AI and big data in the mitigation of COVID-19 in Asian countries. | Information was well organized in details. | Minimal information on additional healthcare applications of AI during COVID-19 and lack of definitions of technology associated terminologies. | Researchers and technology companies are exploring ways to improve contact-tracing systems without mass surveillance to achieve the benefits of location-tracking while protecting individual privacy. |
| Restructured society and environment: A review on potential technological strategies to control the COVID-19 pandemic | The intention of this study is to uncover the hidden roles of technologies that ultimately help for controlling the pandemic. | Information was well organized in details. | No notable limitations were mentioned. | The strategies utilizing potential technologies would yield better benefits during the pandemic which in turn aids in controlling the spreading of infection. |
| COVID-19: A Multimodality Review of Radiologic Techniques, Clinical Utility, and Imaging Features | To review the radiological utility of COVID-19 being CT, CXR, US, NM, and echocardiography. | The article provides a clear and detailed investigation of each radiographic modality’s associated characteristics implemented in the screening process of COVID-19. | The study discusses AI with minimal details and lacks definition associated with the discipline of AI. | CXR and CT observations have been concluded to be the most effective diagnostic modalities. US works well with CT. |
| Technology and its Solutions in the Era of COVID-19 Crisis: A Review of Literature. | The study aims to investigate the technologies that have been applied to solve the COVID-19 crisis. | The review is logically organized and offers a balanced critical analysis of the literature. | Short conclusion | Technologies with the ability to reduce human contacts through teleservices and those that quickly enable decision-making via in-depth analysis received more attention among the health authorities and organizations. |
| Integrating emerging technologies into COVID-19 contact tracing: Opportunities, challenges and pitfalls. | The paper focuses on contact tracing apps by using GPS, Wi-Fi, Bluetooth, Social graph and Card transaction data to track users as well as AI. | Information was well organized in details. | Technical limitation | Integrating emerging technologies into COVID-19 contact tracing is seen as a viable option in mitigating coronavirus spread. |
| Imaging of COVID-19 pneumonia: Patterns, pathogenesis, and advances | To highlight common imaging findings using illustrative examples, describe the evolution of disease over time, discuss differences in imaging appearance of adult and pediatric patients and review the available literature on quantitative CT for COVID-19. | The article is critically organized. | Lack of a clear definition of artificial intelligence. | Medical imaging is an integral tool in the fight against COVID-19 using a collection of modalities (i.e. CXR, CT, MRI, and US) |
| Artificial intelligence vs COVID-19: limitations, constraints and pitfalls | Aims to tackle the topic of AI, namely, its shortages and limitation in terms of COVID-19 response. | Provides comparisons of relevant studies | Lack of visual data analysis to provide additional comprehension and illustration of the proposed findings. | AI measures are at early stages to be applicable. |
| A deep learning approach to characterize 2019 coronavirus disease (COVID-19) pneumonia in chest CT images | Study focuses on utilizing a deep learning model for automatic detection of abnormalities in chest CT images from COVID-19 patients. | Information was well organized in details. | Short study duration which may affect the results and the proposed model efficacy | The algorithm showed excellent performance in detecting COVID-19 pneumonia on chest CT images compared with resident radiologists. |
| Digital technology applications for contact tracing: the new promise for COVID-19 and beyond? | Discusses the digital technology applications that are used for the rapid tracing and notification of potentially infected people. | Included a table that illustrates the worldwide implementation of digital health technology for COVID-19 contact tracing. | There was no clear definition of Artificial intelligence (AI). | Digital technology can complement or in some cases amplify the traditional approach to global health program implementation. |
| Automated detection of COVID-19 cases using deep neural networks with X-ray images | Aims to explore a new model for automatic COVID-19 detection using raw chest X-ray images. | Images and graphs provided extra clarification to the reader. | Small sample size of X-ray images | This system can be used from remote places in COVID-19 affected countries to overcome a shortage of radiologists. |
| Impact of the digital divide in the age of COVID-19 | Show the impact of Digital Divide. | Information was well organized in details. | Insufficient references to support the conclusion. | The diminished accessibility to technology based on various social factors, sometimes referred to as the digital gap or digital divide, was being exposed at a critical time in a public health crisis. |
| Diagnosis of COVID-19 Pneumonia Using Chest Radiography: Value of Artificial Intelligence | To develop an artificial intelligence algorithm to differentiate COVID-19 pneumonia from other causes of CXR abnormalities. | The use of flowcharts, diagrams, tables, X-ray images clearly demonstrated the data. | The collected data may not reflect the true prevalence of the disease. | An artificial intelligence algorithm differentiated between COVID-19 pneumonia and non-COVID-19 pneumonia in chest x-ray radiographs with high sensitivity and specificity. |
| On the Interpretability of Artificial Intelligence in Radiology: Challenges and Opportunities | This review discusses radiologists’ opinions and suggestion trends and challenges that need to be addressed to effectively streamline interpretability methods in clinical practice. | Provides clear insights on each discussed modal including illustrative examples, charts, definitions, and operational work scenarios. | The study fails to discuss the implementation of presented methods in COVID-19. | Interpretability methods can improve understanding, trust, and verification of radiology artificial intelligence systems. |
| COVID-19 Detection using Artificial Intelligence | To develop a novel AI screening platform for usage and dissemination of COVID-19 x-rays. | The findings are confirmed with adjunct charts and tables and defines common AI concepts including deep learning, CNN, pooling, and convolutional layers. | The sample size is relatively small to promote generalization and validation of the proposed framework | The proposed model achieved sensitivity of 100 %, specificity of 100 %, accuracy of 100 %, PPV of 100%, and NPV of 100% in the dataset. |
| Advanced Digital Health Technologies for COVID-19 and Future Emergencies. | This article describes how digital health technologies are being or could be used for COVID-19 mitigation. | The article is well structured and critically organized | Lack of detailed discussion of the proposed technologies. | Digital technologies are capable of mitigating COVID-19 using a diverse range of applications to address the virus novelty. |
| Current Landscape of Imaging and the Potential Role for Artificial Intelligence in the Management of COVID-19 | To review the current landscape of imaging modalities and artificial intelligence approaches as applied in COVID-19 management. | Clearly states significant information of the current imaging paradigm on COVID-19 in addition to AI modals. | Lack of some additional radiographic modalities (i.e. MRI and US). | Artificial intelligence can enhance the predictive power and the utilization of these imaging approaches. |
| Review of Artificial Intelligence Techniques in Imaging Data Acquisition, Segmentation and Diagnosis for COVID-19 | To cover the scope of AI-assisted diagnostics and relevant clinical tests aimed to screen, study, detect, and diagnose in terms of COVID-19. | The review article provides a simplified outline of AI associated data inclusive of applications and future research prospects. | The paper lacks an explanation of the methodology applied in article selection and inclusion in the study findings. | This paper talks about how AI gives protected, exact and productive imaging arrangements in COVID-19 applications. Two modalities X-ray and CT are utilized to shows the adequacy of AI engaged clinical imaging for COVID-19. |
| End-to-end automatic differentiation of the coronavirus disease 2019 (COVID-19) from viral pneumonia based on chest CT | Autonomous differentiation of viral pneumonia from COVID-19 computed tomography findings. | The usage of figures and tables clarify the scope of the paper | The sampling population is relatively small which may impede the generalization of the proposed modal. | The novel AI platform generated a maximum specificity of 91 % and a sensitivity of 92% during the study’s training, testing, and validation stages. |
| Emerging Technologies for Use in the Study, Diagnosis, and Treatment of Patients with COVID-19 | The purpose of this review is to summarize emerging technologies being implemented in the study, diagnosis, and treatment of COVID-19’. | Clear explanation of emerging technologies including artificial Intelligence | Lack of detailed discussion of the proposed technologies’ limitations. | The advent of COVID-19 helped motivate researchers to investigate the scope and evidence related to technology’s efficacy against COVID-19. |
| Interpretable artificial intelligence framework for COVID‑19 screening on chest X‑rays | Development of a feasible AI model in terms of image interpretation of COVID-19 CXRs using transfer learning techniques and the evaluation of an expert radiologist panel. | The study utilized several quantitative metrics including sensitivity, specificity, accuracy, and area under curve. | Lack of training the AI module using larger sample size and additional input from experienced radiologists. | The transfer learning model was capable of undertaking binary, ternary, and quaternary at the area under curve of 1 during the management of a 5 stage dataset. |
| Applications of digital technology in COVID-19 pandemic planning and response | To provide a framework for the application of digital technologies in pandemic management and response. | Well summarized table of digital technology initiatives used in pandemic preparedness and response identifying every country that used that type of initiative. | No notable limitations were mentioned. | Successful repurposing of technology allowed several countries to flatten the curve of COVID-19 in their respective localities. |
| A Deep Learning System to Screen Novel Coronavirus Disease 2019 Pneumonia | This study aimed to establish an early screening model to distinguish COVID-19 from healthy cases through pulmonary CT images using deep learning techniques. | Information was well organized in details. | The study is limited to only one district in in China. | The proposed model achieved an overall accuracy rate of 86.7%, and would be a promising supplementary diagnostic method for frontline clinical doctors. |
| Automated detection and quantification of COVID-19 pneumonia: CT imaging analysis by a deep learning-based software | Triage of COVID-19 pneumonia using the deep learning software uAI. | A well-organized study was conducted using CT and uAI. | The sampling population is relatively small which may impede the proposed modal generalization. | The uAI Intelligent Assistant Analysis System detected COVID-19 pneumonia in addition to COVID-19 CT findings (i.e. GGOs and lobular lesions) |
| AI Augmentation of Radiologist Performance in Distinguishing COVID-19 from Pneumonia of Other Etiology on Chest CT | Evaluation of AI integrated image interpretation workflow in the differentiation of COVID-19 and other pulmonary findings on chest CTs. | The study is relevant and novel for demonstrating the effect of AI augmentation on radiologist performance in distinguishing COVID-19 from pneumonia of other etiology on chest CT. | There was a significant difference in baseline characteristics between COVID-19 and non-COVID-19 pneumonia patients which could have introduced bias. | Deep learning apparatus helped radiologists to improve the diagnostic performance in terms of COVID-19 at a 90% accuracy, 91% specificity, and 88% sensitivity. |
| Deep transfer learning artificial intelligence accurately stages COVID-19 lung disease severity on portable chest radiographs | Classification of COVID-19 severity on portable CXRs using deep learning CNNs and an expert radiologist panel. | Information was well organized in details. | Lack of detailed discussion of the proposed approach’s limitations. | The deep learning CNNs accomplished a comparable staging accuracy to the three-member radiologist panel at a mean absolute error of 8.5%. |
| How Might AI and Chest Imaging Help Unravel COVID-19′s Mysteries? | This article describes how AI has the potential to expand the role of chest imaging beyond the debatable realm of diagnosis to risk stratification, treatment monitoring, and potential discovery of novel therapeutic targets. | Information was well organized in details. | Summary/abstract was very short and not specific. | AI technologies can help to address multiple aspects of medical imaging during COVID-19 and beyond. |
| Applications of machine learning and artificial intelligence for Covid-19 (SARS-CoV-2) pandemic: A review | To discusses the application of machine learning and AI during COVID-19 using multiple encounters reported worldwide. | Employs summarization tables enabling complete comprehension and illustration of the presented information. | Lack of information about the integration of AI in COVID-19 related medical imaging. | COVID-19 allowed machine learning to surface in the medical community. Thus, exposing healthcare professional to contactless care. |
| Combat COVID-19 with artificial intelligence and big data. | To discuss the role of AI and big data in the mitigation of COVID 19, namely, Asian countries. | The article includes a summarization table that ensures additional comprehension of the presented information and offers background information on COVID-19 and the history of contact tracing apps in global epidemiological responses to infectious pandemics. | minimal information on the additional healthcare applications of AI during COVID-19. No other global contact tracing apps used in the mitigation of COVID-19 were discussed. | Effective COVID-19 responses are governed by the successful use of technology and public compliance to the digital interventions. |