Enabling Healthcare 4.0 for Pandemics. Группа авторов
Чтение книги онлайн.
Читать онлайн книгу Enabling Healthcare 4.0 for Pandemics - Группа авторов страница 13
References
1. Allam, Z., Dey, G., Jones, D.S., Artificial Intelligence (AI) Provided Early Detection of the Coronavirus (COVID-19) in China and Will Influence Future Urban Health Policy Internationally. AI, 1, 2, 156–165, 2020.
2. Mohanty, S., Harun Ai Rashid, M., Mridul, M., Mohanty, C., Swayamsiddha, S., Application of Artificial Intelligence in COVID-19 drug repurposing. Diabetes Metab. Syndr., 14, 5, 1027–1031, 2020.
3. Alimadadi, A., Aryal, S., Manandhar, I., Munroe, P.B., Joe, B., Cheng, X., Artificial intelligence and machine learning to fight COVID-19. Physiol. Genomics, 52, 4, 200–202, 2020..
4. Binti Hamzah, F.A. et al., CoronaTracker: World-wide COVID-19 outbreak data analysis and prediction. Bull. World Health Organ., Submitted, March 2020.
5. Mei, X. et al., Artificial intelligence-enabled rapid diagnosis of patients with COVID-19. Nat. Med., 2020, https://pubmed.ncbi.nlm.nih.gov/32427924.
6. Shinde, G.R., Kalamkar, A.B., Mahalle, P.N., Dey, N., Chaki, J., Hassanien, A.E., Forecasting Models for Coronavirus Disease (COVID-19): A Survey of the State-of-the-Art. SN Comput. Sci., 1, 4, 1–15, 2020.
7. Ashraf Uddin, M., Shafiur Rahman, M., Anwar Hussen Wadud, M., Akhter, A., Akter, O., I. Commerce Security Lab, A Study on Epidemiological Characteristics and ML-Based Detection of novel COVID-19 Efficient Data Mining Approach View project Ensure Patient Privacy Given Internet of Things Data Transmitted from Wearable Sensors View project A Study on Epidemiological, March, 2020.
8. Elaziz, M.A., Hosny, K.M., Salah, A., Darwish, M.M., Lu, S., Sahlol, A.T., New machine learning method for image-based diagnosis of COVID-19. PLoS One, 15, 6, e0235187, 2020.
9. Luengo-Oroz, M. et al., Artificial intelligence cooperation to support the global response to COVID-19. Nat. Mach. Intell., 2, 6, 295–297, 2020.
10. Abaker, I. et al., A Machine Learning Solution Framework for Combatting COVID-19 in Smart Cities from Multiple Dimensions. Medrxiv, 2020, https://doi.org/10.1101/2020.05.18.20105577.
11. Scott, I.A., The Medical Journal of Australia—Pre-print—19 June 2020 Can AI help in the fight against COVID-19? Med. J. Aust.—Pre-print, June, 19 2020.
12. Iwendi, C., Bashir, A.K., Peshkar, A., Sujatha, R., COVID-19 Patient Health Prediction Using Boosted Random Forest Algorithm. 8, July, 1–9, 2020.
13. Alom, Z., Rahman, M.M.S., Nasrin, M.S., Taha, T.M., Asari, V.K., 2020.
14. Naudé, W., Artificial Intelligence against COVID-19: An Early Review, pp. 2019–2020, Towar. Data Sci., March 2020, [Online]. Available: https://towardsdatascience.com/artificial-intelligence-against-covid-19-an-early-review-92a8360edaba.
15. Whitelaw, S., Mamas, M.A., Topol, E., Van Spall, H.G.C., Applications of digital technology in COVID-19 pandemic planning and response. Lancet Digit. Health, 2, 8, e435–e440, 2020.
16. Ahmed, S. and Khan, R.H., Blockchain and Industry 4.0. Blockchain Data Anal., 28, January, 1–22, 2020.
17. Kumar, A., Gupta, P.K., Srivastava, A., A review of modern technologies for tackling COVID-19 pandemic. Diabetes Metab. Syndr. Clin. Res. Rev., 14, 4, 569–573, 2020.
18. Javaid, M., Haleem, A., Vaishya, R., Bahl, S., Suman, R., Vaish, A., Industry 4.0 technologies and their applications in fighting COVID-19 pandemic. Diabetes Metab. Syndr. Clin. Res. Rev., 14, 4, 419–422, 2020.
19. Zuo, S., Khosa, K., Ahmad, Z., Almaspoor, Z., Comparison of COVID-19 Pandemic Dynamics in Asian Countries with Statistical Modeling. Comput. Math. Methods Med., 2020, 4296806, 2020.
20. Zhu, G. et al., Learning from Large-Scale Wearable Device Data for Predicting Epidemics Trend of COVID-19. Discrete Dyn. Nat. Soc, 2020, Cdc, 2020.
21. Dahiwade, D., Patle, G., Meshram, E., Designing disease prediction model using machine learning approach. Proc. 3rd Int. Conf. Comput. Methodol. Commun. ICCMC 2019, Iccmc, pp. 1211–1215, 2019.
22. Vaishya, R., Javaid, M., Khan, I.H., Haleem, A., Artificial Intelligence (AI) applications for COVID-19 pandemic. Diabetes Metab. Syndr. Clin. Res. Rev., 14, 4, 337–339, 2020.
23. Donthu, N. and Gustafsson, A., Effects of COVID-19 on business and research. J. Bus. Res., 117, June, 284–289, 2020.
24. Punn, N.S., Sonbhadra, S.K., Agarwal, S., Monitoring COVID-19 social distancing with person detection and tracking via fine-tuned YOLO v3 and Deepsort techniques, pp. 1–10, 1927.
25. Shirai, Y., Artificial Intelligence for Industrial Application in Japan. IFAC Proc. Vol., 16, 20, 15–24, 1983.
26. Uchmeister, B., Alcic, P., Jstersek, O., Artificial Intelligence in Manufacturing Companies and Broader: An Overview. 81–98, 2019.
27. Ćosić, K., Popović, S., Šarlija, M., Kesedžić, I., Impact of human disasters and COVID-19 pandemic on mental health: Potential of digital psychiatry. Psychiatr. Danub., 32, 1, 25–31, 2020.
28. Rajkumar, R.P., COVID-19 and mental health: A review of the existing literature. Asian J. Psychiatr., 52, 102066, March 2020.
29. Mahase, E., COVID-19: Mental health consequences of pandemic need urgent research, paper advises. BMJ, 369, April, m1515, 2020.
30. Hamouche, S., COVID-19 and employees’ mental health: Stressors, moderators and agenda for organizational actions. Emerald Open Res., 2, 15, 2020.
31. McCall, B., COVID-19 and artificial intelligence: Protecting healthcare workers and curbing the spread. Lancet Digit. Health, 2, 4, e166–e167, 2020.
32. Bøgehøj, L., Artificial Intelligence vs. Human Intelligence Man vs. Machine Lucas Kromann Bøgehøj Nielsen, pp. 1–20, December 2016.
33. Signorelli, C.M., Can computers become conscious and overcome humans? Front. Robot. AI, 5, OCT, 2018.
34. Chawla, P., Juneja, A., Juneja, S., Anand, R., Artificial intelligent systems in smart medical healthcare: Current trends. Int. J. Adv. Sci. Technol., 29, 10 Special Issue, 1476–1484, 2020.
35. Juneja, S., Juneja, A., Anand, R., Role of big data as a tool for improving sustainability for the betterment of quality of life in metro cities. Int. J. Control Autom., 12, 5, 553–557, 2019.
36. Peng, Y. and Nagata, M.H., An empirical overview of nonlinearity and overfitting in machine learning using COVID-19 data. Chaos Solitons Fractals, 139, 2020.
37. Mortimer, E.F., Construtivismo, mudança conceitual e ensino de Ciências: para onde