Alsuliman, T., Humaidan, D., & Sliman, L. (2020). Machine learning and artificial intelligence in the service of medicine: Necessity or potentiality?. Current research in translational medicine, 68 (4), 245-251.
Catania, L. J. (2021). AI applications in the business and administration of health care. Foundations of Artificial Intelligence in Healthcare and Bioscience. 79-123.
Davenport, T., & Kalakota, R. (2019). The potential for artificial intelligence in healthcare. Future Healthcare Journal, 6(2), 94-98.
Deo, R. C. (2015). Machine learning in medicine. Circulation, 132(20), 1920-1930.
Desai, P., & Shah, S. (2019). Future of Artificial Intelligence in the Healthcare Industry. International Journal of Research in Engineering, Science and Management, 2, 239-241.
Ellahham, S., Ellahham, N., & Can Emre Simsekler, M. (2020). Application of artificial intelligence in the health care safety context: opportunities and challenges. American Journal of Medical Quality, 35 (4), 341-348.
Garbuio, M., & Lin, N. (2019). Artificial intelligence as a growth engine for health care startups: Emerging business models. California Management Review, 61 (2), 59-83.
Geisel, A. (2018). The Current and Future Impact of Artificial Intelligence on Business. International Journal of Scientific & Technology Research, 7 (5), 116-122.
Haenssle, H. A., Fink, C., Schneiderbauer, R., Toberer, F., Buhl, T., Blum, A., & Zalaudek, I. (2018). Man against machine: diagnostic performance of a deep learning convolutional neural network for dermoscopic melanoma recognition in comparison to 58 dermatologists. Annals of oncology, 29(8), 1836-1842.
Hamet, P., & Tremblay, J. (2017). Artificial intelligence in medicine. Metabolism, 69, S36-S40.
Hazarika, I. (2020). Artificial intelligence: opportunities and implications for the health workforce. International health, 12 (4), 241-245.
Iliashenko, O., Bikkulova, Z., & Dubgorn, A. (2019). Opportunities and challenges of artificial intelligence in healthcare. E3S Web of Conferences, 110, 20-28.
Jha, S., & Topol, E. J. (2016). Adapting to artificial intelligence: radiologists and pathologists as information specialists. Jama, 316(22), 2353-2354.
Jiang, F., Jiang, Y., Zhi, H., Dong, Y., Li, H., Ma, S., Wang, Y., Dong, Q., Shen, H., & Wang, Y. (2017). Artificial intelligence in healthcare: past, present and future. Stroke and vascular neurology, 2 (4), 230-243.
Kalis, B., Collier, M., & Fu, R. (2018). 10 promising AI applications in health care. Harvard Business Review, 1-5.
Kim, D., You, S., So, S., Lee, J., Yook, S., Jang, D. P., & Park, H. K. (2018). A data-driven artificial intelligence model for remote triage in the prehospital environment. PloS one, 13(10), 206-220.
Langlotz, Curtis P. (2019). Will artificial intelligence replace radiologists?. Radiology: Artificial Intelligence, 1 (3), 1-3.
Lebedev, G., Fartushnyi, E., Fartushnyi, I., Shaderkin, I., Klimenko, H., Kozhin, P., Koshechkin, K., Ryabkov, I., Tarasov, V., Morozov, E., & Fomina, I. (2020). Technology of Supporting Medical Decision-Making Using Evidence-Based Medicine and Artificial Intelligence. Procedia Computer Science, 176. 1703-1712.
Levin, S., Toerper, M., Hamrock, E., Hinson, J. S., Barnes, S., Gardner, H., & Kelen, G. (2018). Machine-learning-based electronic triage more accurately differentiates patients with respect to clinical outcomes compared with the emergency severity index. Annals of emergency medicine, 71(5), 565-574.
Lin, R. Y., & Alvarez, J. B. (2021). Industry perspectives and commercial opportunities of artificial intelligence in medicine. Artificial Intelligence in Medicine, 479-502.
Mak, K., & Rao Pichika, M. (2010). Artificial intelligence in drug development: present status and future prospects. Drug discovery toda. 24 (3), 773-780.
Maria Correia Loureiro, S., Guerreiro, J., & Tussyadiah, I. (2020). Artificial intelligence in business: State of the art and future research agenda. Journal of business research, 129, 911-926.
Mathur, P., Srivastava, S., Xu, X., & Mehta, J. L. (2020). Artificial intelligence, machine learning, and cardiovascular disease. Clinical Medicine Insights: Cardiology, 14, 1-9.
Mazurowski, M. A. (2019). Artificial intelligence may cause a significant disruption to the radiology workforce. Journal of the American College of Radiolog, 16 (8), 1077-1082.
Morgan, M. B., & Mates, J. L. (2021). Applications of artificial intelligence in breast imaging. Radiologic Clinics, 59(1), 139-148.
Muthukrishnan, N., Maleki, F., Ovens, K., Reinhold, C., Forghani, B., & Forghani, R. (2020). Brief History of Artificial Intelligence. Neuroimaging clinics of North America, 30(4), 393-399.
Pakdemirli, E. (2019). Artificial intelligence in radiology: friend or foe? Where are we now and where are we heading?. Acta radiologica open, 8(2), 1-5.
Research and Markets. Artificial intelligence in healthcare market by offering (hardware, software, services), technology (machine learning, NLP, context-aware computing, computer vision), end-use application, end user, and geography—global forecast to 2025.
https://www.researchandmarkets.com/research/t3np23/artificial?w=12 [accessed 29 March 2020].
Sahu, A., Mishra, J., & Kushwaha, N. (2021). Artificial Intelligence (AI) in Drugs and Pharmaceuticals. Combinatorial Chemistry & High Throughput Screening.
Sana, M. K., Hussain, Z. M., Shah, P. A., & Maqsood, M. H. (2020). Artificial intelligence in celiac disease. Computers in Biology and Medicine, 125, 1-8.
Van Hartskamp, M., Consoli, S., Verhaegh, W., Petkovic, M., & Van de Stolpe, A. (2019). Artificial intelligence in clinical health care applications. Interactive journal of medical research. 8 (2). 1-8.
Varshney, K. R. (2016). Engineering safety in machine learning. In 2016 Information Theory and Applications Workshop (ITA) (pp. 1-5). IEEE.
Young, K., Gupta, A., & Palacios, R. (2019). Impact of telemedicine in pediatric postoperative care. Telemedicine and e-Health, 25(11), 1083-1089.