Journal Screenshot

International Journal of Academic Research in Business and Social Sciences

Open Access Journal

ISSN: 2222-6990

Applications of Artificial Intelligence and Voice Assistant in Healthcare

Elaheh Ahanin, Abu Bakar Sade, Huam Hon Tat

http://dx.doi.org/10.6007/IJARBSS/v12-i12/16048

Open access

The modern smart technology such as Artificial Intelligence (AI) is merging with humans’ physical lives and is going to change the way we live, work, and interact. AI in the healthcare sector is gaining attention from researchers, health professionals, and life sciences companies. The new technology advancement has brought various opportunities in electronic health (e-health) that allows healthcare to be accessible regardless of distance using information and communication technologies (ICTs) such as use of blood pressure telemonitoring service and voice assistants. Voice Assistant (VA) as an emerging technology in healthcare helps to reduce expenses, build loyalty, drive revenue, and it is especially beneficial amidst COVID-19 outbreak as healthcare will need to move towards more touch-free technologies post-pandemic. In this paper, we summarize the latest developments of applications of AI and VA in healthcare, and some basic knowledge regarding the techniques, the current state of this technology in healthcare, and possible developments in future, which potentially can transform many aspects of patient care.

Al-Doulat, A., Obaidat, I., & Lee, M. (2019). Unstructured medical text classification using linguistic analysis: A supervised deep learning approach. 2019 IEEE/ACS 16th International Conference on Computer Systems and Applications (AICCSA), 2019-November, 1–7.
Alpaydin, E. (2008). Introduction to Machine Learning (Adaptive Computation and Machine Learning Series). In Natural Language Engineering. The MIT Press.
Aziz, M., Kaufmann, E., & Riviere, M. K. (2021). On Multi-Armed Bandit Designs for Dose-Finding Clinical Trials. Journal of Machine Learning Research, 22, 1–38.
Badlani, S., Aditya, T., Dave, M., & Chaudhari, S. (2021, May 21). Multilingual healthcare chatbot using machine learning. 2021 2nd International Conference for Emerging Technology, INCET.
Chang, Y., Park, H., Yang, H. J., Lee, S., Lee, K. Y., Kim, T. S., Jung, J., & Shin, J. M. (2018). Cancer Drug Response Profile scan (CDRscan): A Deep Learning Model That Predicts Drug Effectiveness from Cancer Genomic Signature. Scientific Reports, 8(1), 1–11.
Cheung, M. L., Leung, W. K. S., & Chan, H. (2020). Driving healthcare wearable technology adoption for Generation Z consumers in Hong Kong. Young Consumers, 22(1), 10–27.
Dogra, P., & Kaushal, A. (2021). An Investigation of Indian Generation Z Adoption of the Voice-Based Assistants (VBA). Journal of Promotion Management, 27(5), 673–696.
Fanta, G. B., & Pretorius, L. (2018). A conceptual framework for sustainable eHealth implementation in resource-constrained settings. South African Journal of Industrial Engineering, 29(3), 132–147.
Fitzpatrick, K. K., Darcy, A., & Vierhile, M. (2017). Delivering Cognitive Behavior Therapy to Young Adults With Symptoms of Depression and Anxiety Using a Fully Automated Conversational Agent (Woebot): A Randomized Controlled Trial. JMIR Mental Health, 4(2), e7785.
Health Policy Institute. (2021). Prescription Drugs . Health Policy Institute.
https://hpi.georgetown.edu/rxdrugs/
Hsu, I. C., & Yu, J. de. (2022). A medical Chatbot using machine learning and natural language understanding. Multimedia Tools and Applications, 81, 23777–23799.
Koon, L. M., McGlynn, S. A., Blocker, K. A., & Rogers, W. A. (2020). Perceptions of Digital Assistants From Early Adopters Aged 55+: Ergonomics in Design: The Quarterly of Human Factors Applications, 28(1), 16–23.
lo Presti, L., Testa, M., Marino, V., & Singer, P. (2019). Engagement in Healthcare Systems: Adopting Digital Tools for a Sustainable Approach. Sustainability, 11(1), 220.
Marketsandmarkets. (2020). Voice Assistant Application Market Size, Share and Global Market Forecast to 2026. Markets and Markets.
https://www.marketsandmarkets.com/Market-Reports/voice-assistant-application-market-141810993.html#utm_source=PRnewswire&utm_medium=refferal&utm_campaign=paidPR
McRoy, S., Jones, S., & Kurmally, A. (2016). Toward automated classification of consumers’ cancer-related questions with a new taxonomy of expected answer types. Health Informatics Journal, 22(3), 523–535.
Mehta, N., Pandit, A., & Shukla, S. (2019). Transforming healthcare with big data analytics and artificial intelligence: A systematic mapping study. Journal of Biomedical Informatics, 100, 103311.
Mohr, C. N. (2019). Dr. A.I. - An Alexa Skill to Help Diagnose Illness. The Wonder of Tech. https://wonderoftech.com/dr-ai-alexa-skill/
Olmstead, K. (2017). Nearly half of Americans use digital voice assistants, mostly on their smartphones. Pew Research Center. https://www.pewresearch.org/fact-tank/2017/12/12/nearly-half-of-americans-use-digital-voice-assistants-mostly-on-their-smartphones/?msclkid=e6d99bd3abeb11ec8da8a1677a5fc8a1
Reda, C., Kaufmann, E., & Delahaye-Duriez, A. (2020). Machine learning applications in drug development. Computational and Structural Biotechnology Journal, 18, 241–252.
Ross, C., & Swetlitz, I. (2018). IBM’s Watson supercomputer recommended “unsafe and incorrect” cancer treatments, internal documents show. STAT+.
https://www.statnews.com/wp-content/uploads/2018/09/IBMs-Watson-recommended-unsafe-and-incorrect-cancer-treatments-STAT.pdf
Rubin, B. F. (2018). Apple, Siri fall further behind Google, Amazon in the smart home. CNET. https://www.cnet.com
Tari, L. B., & Patel, J. H. (2014). Systematic Drug Repurposing Through Text Mining. Methods in Molecular Biology, 1159, 253–267.
Terzopoulos, G., & Satratzemi, M. (2019). Voice assistants and artificial intelligence in education. ACM International Conference Proceeding Series.
The Star Online. (2020). Covid-19: Pandemic gives fresh momentum to digital voice technology. The Star. https://www.thestar.com.my/tech/tech-news/2020/05/11/covid-19-pandemic-gives-fresh-momentum-to-digital-voice-technology
Toh, C., & Brody, J. P. (2021). Applications of Machine Learning in Healthcare. In T. Y. Kheng (Ed.), Smart Manufacturing: When Artificial Intelligence Meets the Internet of Things (p. 65). IntechOpen.
Dahlke, V. D., & Ory, M. G. (2017). Emerging Opportunities and Challenges in Optimal Aging with Virtual Personal Assistants. Public Policy & Aging Report, 27(2), 68–73.
Wang, Y., Sohn, S., Liu, S., Shen, F., Wang, L., Atkinson, E. J., Amin, S., & Liu, H. (2019). A clinical text classification paradigm using weak supervision and deep representation. BMC Medical Informatics and Decision Making, 19(1), 1–13.
Wyllie, J., Carlson, J., Heinsch, M., Kay-Lambkin, F., & McCoy, A. (2022). eHealth Services and SDG3: Increasing the Capacity of Care. Australasian Marketing Journal, 30(2), 131–141.

In-Text Citation: (Ahanin et al., 2022)
To Cite this Article: Ahanin, E., Sade, A. B., & Tat, H. H. (2022). Applications of Artificial Intelligence and Voice Assistant in Healthcare. International Journal of Academic Research in Business and Social Sciences, 12(12), 2545 – 2554.