Bridging the Gap: Assessing the Integration of Artificial Intelligence in Healthcare for Improved Efficiency and Doctor Adaptability.

Mohammad Alrabie
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Abstract

Abstract The premise behind implementing artificial intelligence in healthcare comes from the initiative that aims towards improving the healthcare standards, services, and accessibilities in a time and cost-efficient manner. The conceptual framework is based on the null hypothesis which states that there is no relationship between implementing artificial intelligence in healthcare and doctor’s redundancy. Having used the 2-tailed One-Sample T-Test to test that hypothesis on IBM SPSS, in order to successfully reject the hypothesis, and present an alternatively more accurate hypothesis that is more accurately representative. Additionally, DICE framework has also been presented in order to calculate the success/failure likelihoods of implementing artificial intelligence in healthcare. We conclude that artificial intelligence significantly impacts cost reduction in the long term, as well as only ever displacing behind-the-curve doctors who are unwilling to broaden their knowledge and develop their skills. Finally, we conclude that people’s resistance to change significantly affects the efficient and effective implementation of artificial intelligence in healthcare.
弥合差距:评估人工智能在医疗保健中的整合,以提高效率和医生的适应性。
在医疗保健中实施人工智能背后的前提来自于旨在以时间和成本效益的方式改善医疗保健标准、服务和可访问性的倡议。概念框架基于零假设,即在医疗保健中实施人工智能与医生冗余之间没有关系。使用双尾单样本t检验来检验IBM SPSS上的假设,以便成功地拒绝假设,并提出一个更准确的假设,更准确地代表。此外,还提出了DICE框架,以计算在医疗保健中实施人工智能的成功/失败可能性。我们的结论是,从长远来看,人工智能对降低成本有重大影响,而且只会取代那些不愿扩大知识和发展技能的落后医生。最后,我们得出结论,人们对变革的抗拒显著影响了人工智能在医疗保健领域的高效实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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