Access the full text.
Sign up today, get DeepDyve free for 14 days.
Puneeta Ajmera, V. Jain (2019)
Modeling the factors affecting the quality of life in diabetic patients in India using total interpretive structural modelingBenchmarking: An International Journal
Sushil (2017)
Modified ISM/TISM Process with Simultaneous Transitivity Checks for Reducing Direct Pair ComparisonsGlobal Journal of Flexible Systems Management, 18
S. Wartman, C. Combs (2017)
Medical Education Must Move From the Information Age to the Age of Artificial IntelligenceAcademic Medicine, 93
S. Jha, E. Topol (2016)
Adapting to Artificial Intelligence: Radiologists and Pathologists as Information Specialists.JAMA, 316 22
B. Marr (2018)
How is AI used in healthcare – 5 powerful real-World examples that show the latest advances
(2017)
Cardiovascular diseases (CVDs)
Sushil (2018)
How to check correctness of total interpretive structural models?Annals of Operations Research, 270
B. Marr (2016)
Surprisingly, these 10 professional jobs are under threat from big data
(2010)
Monitoring the building blocks of health systems: a handbook of indicators and their measurement strategies
S. Baum, W. Mitchell (2011)
Using a multi-level framework to understand individual fortunes: an illustration for individual labour market outcomesInternational Journal of Foresight and Innovation Policy, 7
(2019)
Global strategy on digital health 2020-2024 draft, WHO
S. Wartman, C. Combs (2019)
Reimagining Medical Education in the Age of AI.AMA journal of ethics, 21 2
Verma Prikshat, Sanjeev Kumar, A. Nankervis (2019)
Work-readiness integrated competence modelEducation + Training
H. Koh, Gerald Tan (2005)
Data mining applications in healthcare.Journal of healthcare information management : JHIM, 19 2
S. Billett, Melissa Cain, A. Le (2018)
Augmenting higher education students’ work experiences: preferred purposes and processesStudies in Higher Education, 43
Brian Arndt, J. Beasley, M. Watkinson, J. Temte, Wen-Jan Tuan, C. Sinsky, V. Gilchrist (2017)
Tethered to the EHR: Primary Care Physician Workload Assessment Using EHR Event Log Data and Time-Motion ObservationsThe Annals of Family Medicine, 15
W. Halal (2013)
Through the megacrisis: the passage to global maturityForesight, 15
O. Saritas, Y. Dranev, A. Chulok (2017)
A dynamic and adaptive scenario approach for formulating science & technology policyForesight, 19
Johann Walters, J. Vorster (2021)
The Fourth Industrial RevolutionTeaching and Learning in the 21st Century
F. Jiang, Yong Jiang, Hui Zhi, Yi Dong, Hao Li, Sufeng Ma, Yilong Wang, Q. Dong, Haipeng Shen, Yongjun Wang (2017)
Artificial intelligence in healthcare: past, present and futureStroke and Vascular Neurology, 2
Yashasvi Agarwal, Mahima Jain, Shuchi Sinha, Sanjay Dhir (2019)
Delivering high‐tech, AI‐based health care at Apollo HospitalsGlobal Business and Organizational Excellence, 39
S. Jha (2019)
The Economics of Automation.Academic radiology
C. Frey, Michael Osborne (2017)
The future of employment: How susceptible are jobs to computerisation?Technological Forecasting and Social Change, 114
W. Teng, Chenwei Ma, Saeed Pahlevansharif, J. Turner (2019)
Graduate readiness for the employment market of the 4th industrial revolutionEducation + Training
N. Clarke (2002)
Job/Work Environment Factors Influencing Training Transfer within a Human Service Agency: Some Indicative Support for Baldwin and Ford's Transfer Climate ConstructInternational Journal of Training and Development, 6
J. Calof, Gregory Richards, Jack Smith (2016)
Foresight, Competitive Intelligence and Business Analytics for Developing and Running Better Programmes
A. Ruyter, M. Brown, K. Burgess (2019)
Gig work and the Fourth Industrial Revolution: Conceptual and Regulatory ChallengesJournal of International Affairs, 72
K. Jebari, Joakim Lundborg (2019)
The intelligence explosion revisitedforesight
(2018)
AI and healthcare technology in India: opportunities, challenges, and emerging trends
(2006)
Policy and strategy formulation: an application of flexible systems methodology
Spyros Makridakis (2017)
The Forthcoming Artificial Intelligence (AI) Revolution: Its Impact on Society and FirmsFutures, 90
(2019)
The productivity imperative for healthcare delivery in the United States
V. Patel, E. Shortliffe, M. Stefanelli, Peter Szolovits, M. Berthold, R. Bellazzi, A. Abu-Hanna (2009)
The coming of age of artificial intelligence in medicineArtificial intelligence in medicine, 46 1
(2018)
Artificial intelligence in the healthcare industry in India
World Health Organization (WHO) (2018)
10.1596/978-92-4-151390-6
A. Kainth (2019)
A breakdown of artificial intelligence
P. Verma, A. Nankervis, Soegeng Priyono, N. Saleh, J. Connell, J. Burgess (2018)
Graduate work-readiness challenges in the Asia-Pacific region and the role of HRMEquality, Diversity and Inclusion: An International Journal, 37
C. Sinsky, L. Colligan, Ling Li, M. Prgomet, Samuel Reynolds, Lindsey Goeders, J. Westbrook, Michael Tutty, G. Blike (2016)
Allocation of Physician Time in Ambulatory Practice: A Time and Motion Study in 4 SpecialtiesAnnals of Internal Medicine, 165
Yong-Chen Chen, Duo Xu (2018)
人工智能的就业影�? (The Impact of Artificial Intelligence on Employment)
(2018)
How AI is reshaping jobs in India
Anette Wittekind, S. Raeder, G. Grote (2010)
A longitudinal study of determinants of perceived employability.Journal of Organizational Behavior, 31
S. Katsikas (2000)
Health care management and information systems security: awareness, training or education?International journal of medical informatics, 60 2
C. Farr (2017)
Silicon valley is trumpeting A.I. as the cure for the medical industry, but doctors are skeptical
G. Wisskirchen, B. Von Brauchitsch (2017)
Artificial intelligence and robotics and their impact on the workplace
Mary. (2015)
ARTIFICIAL INTELLIGENCE AND MEDICAL SCIENCE: A SURVEY
Roman Yampolskiy (2019)
Predicting future AI failures from historic examplesforesight
Greg Irving, Ana Neves, H. Dambha-Miller, Ai Oishi, Hiroko Tagashira, Anistasiya Verho, John Holden (2017)
International variations in primary care physician consultation time: a systematic review of 67 countriesBMJ Open, 7
H. Wimmer, V. Yoon, V. Sugumaran (2016)
A multi-agent system to support evidence based medicine and clinical decision making via data sharing and data privacyDecis. Support Syst., 88
Priyanka Pandey, Sangeeta Goyal, V. Sundararaman (2008)
Community Participation in Public Schools: The Impact of Information Campaigns in Three Indian StatesRandomized Social Experiments eJournal
A. Wilkinson, Len Holden (2001)
Long term patterns in strategic Human Resource Management: a case study from Financial ServicesInternational journal of employment studies, 9
S. Reddy (2018)
Use of Artificial Intelligence in Healthcare DeliveryeHealth - Making Health Care Smarter
Pardeep Kumar, Hoon-Jae Lee (2011)
Security Issues in Healthcare Applications Using Wireless Medical Sensor Networks: A SurveySensors (Basel, Switzerland), 12
Journal of International Affairs, 72
C. Kimble, Giannis Milolidakis (2015)
Big Data and Business Intelligence: Debunking the MythsArXiv, abs/1511.03085
G. Mason, Gareth Williams, S. Cranmer (2009)
Employability skills initiatives in higher education: what effects do they have on graduate labour market outcomes?Education Economics, 17
(2018)
The evolution of smart healthcare
Spine – Journal of the Orthopedic Research Society, 2
B. Vandepol, R. Gist, M. Braverman, Lyle Labardee (2006)
Strategic Specialty PartnershipsJournal of Workplace Behavioral Health, 21
A. Pannu, M. Student (2015)
Artificial Intelligence and its Application in Different Areas
Steven Lin, T. Shanafelt, S. Asch (2018)
Reimagining Clinical Documentation With Artificial Intelligence.Mayo Clinic proceedings, 93 5
M. Tai-Seale, Cliff Olson, Jinnan Li, Albert Chan, Criss Morikawa, Meg Durbin, Wei Wang, H. Luft (2017)
Electronic Health Record Logs Indicate That Physicians Split Time Evenly Between Seeing Patients And Desktop Medicine.Health affairs, 36 4
(2016)
Rules & regulations
Serhat Burmaoglu, O. Saritas, L. Kidak, Ipek Berber (2017)
Evolution of connected health: a network perspectiveScientometrics, 112
F. Galbusera, Gloria Casaroli, T. Bassani (2019)
Artificial intelligence and machine learning in spine researchJOR Spine, 2
V. Kolachalama, Priya Garg (2018)
Machine learning and medical educationNPJ Digital Medicine, 1
M. Chow, David Herold, Tat-Ming Choo, Kitty Chan (2012)
Extending the technology acceptance model to explore the intention to use Second Life for enhancing healthcare educationComput. Educ., 59
H. Krumholz (2014)
Big data and new knowledge in medicine: the thinking, training, and tools needed for a learning health system.Health affairs, 33 7
Steven Dilsizian, E. Siegel (2013)
Artificial Intelligence in Medicine and Cardiac Imaging: Harnessing Big Data and Advanced Computing to Provide Personalized Medical Diagnosis and TreatmentCurrent Cardiology Reports, 16
Alan Felstead, D. Gallie, F. Green, Ying Zhou (2010)
Employee involvement, the quality of training and the learning environment: an individual level analysisThe International Journal of Human Resource Management, 21
(2016)
Department of health & family welfare (policy): electronic health record (EHR) standards for India
Kun‐Hsing Yu, Andrew Beam, I. Kohane (2018)
Artificial intelligence in healthcareNature Biomedical Engineering, 2
P. Bakhtin, O. Saritas, A. Chulok, I. Kuzminov, Anton Timofeev (2017)
Trend monitoring for linking science and strategyScientometrics, 111
Sushil (2012)
Interpreting the Interpretive Structural ModelGlobal Journal of Flexible Systems Management, 13
S. Daley (2020)
32 Examples of AI in healthcare that will make you feel better about the future
(2018)
Department of health & family welfare: draft of charters of patient rights
Swati Sisodia, Neetima Agarwal (2017)
Employability Skills Essential for Healthcare Industry
M. Stefanelli (2001)
The socio-organizational age of artificial intelligence in medicineArtificial intelligence in medicine, 23 1
Yoel Raban, A. Hauptman (2018)
Foresight of cyber security threat drivers and affecting technologiesforesight
O. Kalan, A. Alsan (2007)
Integrated foresight for the healthcare sector in TurkeyInternational Journal of Foresight and Innovation Policy, 3
(2019)
The topol review: preparing the healthcare workforce to deliver the digital future
M. Qureshi, Rumaiya Syed (2014)
The Impact of Robotics on Employment and Motivation of Employees in the Service Sector, with Special Reference to Health CareSafety and Health at Work, 5
J. Connell, J. Burgess (2001)
Skill, Training and Workforce Restructuring in Australia: An OverviewInternational journal of employment studies, 9
J. Warfield (1974)
Toward Interpretation of Complex Structural ModelsIEEE Trans. Syst. Man Cybern., 4
(2015)
More than half of the global rural population excluded from health care
Farita Tasnim, Atieh Sadraei, Bianca Datta, M. Khan, Kyung Choi, Atharva Sahasrabudhe, Tomás Gálvez, Irmandy Wicaksono, Oscar Rosello, Carlos Nunez-Lopez, C. Dagdeviren (2018)
Towards personalized medicine: the evolution of imperceptible health-care technologiesforesight
Stephen Lee, G. Ha, Donald Wright, Yinji Ma, E. Sen-Gupta, Natalie Haubrich, P. Branche, Weihua Li, Gil Huppert, Matthew Johnson, Hakan Mutlu, Kan Li, Nirav Sheth, John Wright, Yonggang Huang, M. Mansour, J. Rogers, R. Ghaffari (2018)
Highly flexible, wearable, and disposable cardiac biosensors for remote and ambulatory monitoringNPJ Digital Medicine, 1
Intervention of artificial intelligence (AI) has brought up the issue of future job prospects in terms of the employability of the professionals and their readiness to harness the benefits of the AI. The purpose of this study is to recognize the implications of AI on employability by analyzing the issues in the health-care sector that if not addressed, can dampen the possibilities offered by AI intervention and its pervasiveness (Cornell University, INSEAD, and WIPO, 2019).Design/methodology/approachTo get an insight on these concerns, an approach of total interpretive structural modelling, cross impact matrix multiplication applied to classification and path analysis have been used to understand the role of the critical factors influencing employability in the health-care sector.FindingsThis study primarily explores the driving-dependence power of the critical factors of the employability and displays hierarchical relationships. It also discusses measures which, if adopted, can enhance employability in the health-care sector with the intervention of AI.Research limitations/implicationsEmployability also has an impact on the productivity of the health-care service delivery which may provide a holistic opportunity to the management in health-care organizations to forecast the allocation and training of human resources and technological resources.Originality/valueThe paper attempts to analyze AI intervention and other driving factors (operational changes, customized training intervention, openness to learning, attitude toward technology, job-related skills and AI knowledge) to analyze their impact on employability with the changing needs. It establishes the hierarchical relationship among the critical factors influencing employability in the health-care sector because of the intervention of AI.
foresight – Emerald Publishing
Published: Feb 3, 2021
Keywords: Employability; Artificial intelligence; Health care; MICMAC; Total interpretive structural modeling (TISM)
Read and print from thousands of top scholarly journals.
Already have an account? Log in
Bookmark this article. You can see your Bookmarks on your DeepDyve Library.
To save an article, log in first, or sign up for a DeepDyve account if you don’t already have one.
Copy and paste the desired citation format or use the link below to download a file formatted for EndNote
Access the full text.
Sign up today, get DeepDyve free for 14 days.
All DeepDyve websites use cookies to improve your online experience. They were placed on your computer when you launched this website. You can change your cookie settings through your browser.