打破障碍:揭示影响医疗保健提供者采用人工智能的因素

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data and Cognitive Computing Pub Date : 2023-05-30 DOI:10.3390/bdcc7020105
B. Hameed, Nithesh Naik, Sufyan Ibrahim, Nisha S. Tatkar, M. Shah, D. Prasad, P. Hegde, P. Chłosta, B. Rai, B. Somani
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引用次数: 1

摘要

人工智能(AI)是一种新兴的技术系统,它提供了一个平台,通过更准确地模拟人类的认知功能来管理和分析数据,从而彻底改变了患者护理并为医疗保健行业引入了范式转变。本研究的目的是确定影响医疗保健提供者在医疗保健中采用人工智能(AIH)的潜在因素,并了解“影响医疗保健提供者在日常实践中采用人工智能的行为意图的因素是什么?”在医疗保健提供者中进行了一项综合调查,包括咨询师、住院医师/学生和护士。调查项目包括绩效预期、努力预期、初始信任、个人创新能力、任务复杂性和技术特征。采用结构方程模型对收集到的数据进行分析。共有392名医护专业人员参与调查,其中72.4%为男性,50.7%为30岁或以下。结果表明,绩效期望、努力期望和初始信任对医疗服务提供者使用AIH的行为意向有正向影响。研究发现,个人创新对努力期望有正向影响,而任务复杂性和技术特征对努力期望有正向影响。该研究的经验验证模型揭示了医疗保健提供者采用AIH的意图,而研究结果可用于制定鼓励采用AIH的策略。然而,需要进一步的调查来了解影响医疗保健提供者采用AIH的个体因素。
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Breaking Barriers: Unveiling Factors Influencing the Adoption of Artificial Intelligence by Healthcare Providers
Artificial intelligence (AI) is an emerging technological system that provides a platform to manage and analyze data by emulating human cognitive functions with greater accuracy, revolutionizing patient care and introducing a paradigm shift to the healthcare industry. The purpose of this study is to identify the underlying factors that affect the adoption of artificial intelligence in healthcare (AIH) by healthcare providers and to understand “What are the factors that influence healthcare providers’ behavioral intentions to adopt AIH in their routine practice?” An integrated survey was conducted among healthcare providers, including consultants, residents/students, and nurses. The survey included items related to performance expectancy, effort expectancy, initial trust, personal innovativeness, task complexity, and technology characteristics. The collected data were analyzed using structural equation modeling. A total of 392 healthcare professionals participated in the survey, with 72.4% being male and 50.7% being 30 years old or younger. The results showed that performance expectancy, effort expectancy, and initial trust have a positive influence on the behavioral intentions of healthcare providers to use AIH. Personal innovativeness was found to have a positive influence on effort expectancy, while task complexity and technology characteristics have a positive influence on effort expectancy for AIH. The study’s empirically validated model sheds light on healthcare providers’ intention to adopt AIH, while the study’s findings can be used to develop strategies to encourage this adoption. However, further investigation is necessary to understand the individual factors affecting the adoption of AIH by healthcare providers.
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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