Selected article for: "China initial outbreak and initial outbreak"

Author: Chiroma, H.; Ezugwu, A. E.; Jauro, F.; Al-Garadi, M. A.; Abdullahi, I. N.; Shuib, L.
Title: Early survey with bibliometric analysis on machine learning approaches in controlling coronavirus
  • Cord-id: 0qqg10y4
  • Document date: 2020_11_5
  • ID: 0qqg10y4
    Snippet: Background and Objective: The COVID-19 pandemic has caused severe mortality across the globe with the USA as the current epicenter, although the initial outbreak was in Wuhan, China. Many studies successfully applied machine learning to fight the COVID-19 pandemic from a different perspective. To the best of the authors knowledge, no comprehensive survey with bibliometric analysis has been conducted on the adoption of machine learning for fighting COVID-19. Therefore, the main goal of this study
    Document: Background and Objective: The COVID-19 pandemic has caused severe mortality across the globe with the USA as the current epicenter, although the initial outbreak was in Wuhan, China. Many studies successfully applied machine learning to fight the COVID-19 pandemic from a different perspective. To the best of the authors knowledge, no comprehensive survey with bibliometric analysis has been conducted on the adoption of machine learning for fighting COVID-19. Therefore, the main goal of this study is to bridge this gap by carrying out an in-depth survey with bibliometric analysis on the adoption of machine-learning-based technologies to fight the COVID-19 pandemic from a different perspective, including an extensive systematic literature review and a bibliometric analysis. Methods: A literature survey methodology is applied to retrieve data from academic databases, and a bibliometric technique is subsequently employed to analyze the accessed records. Moreover, the concise summary, sources of COVID-19 datasets, taxonomy, synthesis, and analysis are presented. The convolutional neural network (CNN) is found mainly utilized in developing COVID-19 diagnosis and prognosis tools, mostly from chest X-ray and chest computed tomography (CT) scan images. Similarly, a bibliometric analysis of machine-learning-based COVID-19-related publications in Scopus and Web of Science citation indexes is performed. Finally, a new perspective is proposed to solve the challenges identified as directions for future research. We believe that the survey with bibliometric analysis can help researchers easily detect areas that require further development and identify potential collaborators. Results: The findings in this study reveal that machine-learning-based COVID-19 diagnostic tools received the most considerable attention from researchers. Specifically, the analyses of the results show that energy and resources are more dispensed toward COVID-19 automated diagnostic tools, while COVID-19 drugs and vaccine development remain grossly underexploited. Moreover, the machine-learning-based algorithm predominantly utilized by researchers in developing the diagnostic tool is CNN mainly from X-rays and CT scan images. Conclusions: The challenges hindering practical work on the application of machine-learning-based technologies to fight COVID-19 and a new perspective to solve the identified problems are presented in this study. We believe that the presented survey with bibliometric analysis can help researchers determine areas that need further development and identify potential collaborators at author, country, and institutional levels to advance research in the focused area of machine learning application for disease control.

    Search related documents:
    Co phrase search for related documents
    • abnormal chest and acid detection: 1, 2, 3, 4, 5
    • abnormal chest and acute cardiac injury: 1, 2, 3, 4, 5
    • abnormal chest ct and accurate diagnosis: 1, 2
    • abnormal chest ct and acid detection: 1, 2, 3, 4, 5
    • abnormal chest ct and acute cardiac injury: 1, 2
    • abnormality presence and accurate diagnosis: 1
    • abstract title and accurate model: 1
    • abstract title and active learning: 1
    • academic emergency medicine and accurate diagnosis: 1
    • accuracy rate and acid detection: 1
    • accurate diagnosis and acid assay: 1, 2, 3, 4, 5, 6, 7
    • accurate diagnosis and acid detection: 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25
    • accurate model and acid detection: 1, 2
    • accurately predict and active learning: 1
    • accurately quantify and acid assay: 1