An empirical study to accelerate machine learning and artificial intelligence adoption in pharmaceutical manufacturing organizations

A. Pazhayattil, Gyongyi Konyu-Fogel
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引用次数: 1

Abstract

The quantitative study investigated factors that influence the initiation, the convergence prospects, the highest return on investment sector, and the variables that can delay machine learning and artificial intelligence in the pharmaceutical industry. The study population constituted individuals from the US FDA pharmaceutical sites registry, representing all sectors of the industry. The study reports the trends and preferences identified by the industry executives who participated in the survey. The first hypothesis utilized Kruskal Walli confirming a statistically significant difference in the applicability of Rogers’s diffusion of innovation theory in the pharmaceutical industry. The second hypothesis test utilized Kendall’s τ identified that machine learning and artificial intelligence convergence is imminent. Spearman’s rank-order correlation test was used for the third hypothesis, providing insights into the high return-on-investment areas, namely, operations efficiency, product quality, supply chain integrity, market identification, and penetration, and engineering and maintenance sectors of the industry. The fourth hypothesis applied Spearman’s rank-order correlation test that confirmed that the five artificial intelligence (AI) implementation delay factors, namely, lack of strategy, finding talent, functional silos, management commitment, and behavioral change using the output can cause delays in machine learning and AI projects in the pharmaceutical industry.
加速机器学习和人工智能在制药企业应用的实证研究
定量研究调查了影响启动的因素,收敛前景,最高投资回报部门,以及可能延迟机器学习和人工智能在制药行业的变量。研究人群包括来自美国FDA药品注册中心的个人,代表了该行业的所有部门。该研究报告了参与调查的行业高管确定的趋势和偏好。第一个假设利用了Kruskal Walli,证实了罗杰斯的创新扩散理论在制药行业的适用性存在统计学上的显著差异。第二个假设检验利用肯德尔τ确定了机器学习和人工智能的融合迫在眉睫。第三个假设采用Spearman的秩序相关检验,提供了对高投资回报率领域的见解,即运营效率、产品质量、供应链完整性、市场识别和渗透以及行业的工程和维护部门。第四个假设采用了Spearman的秩序相关检验,该检验证实了五个人工智能(AI)实施延迟因素,即缺乏战略、寻找人才、功能孤岛、管理承诺和使用输出的行为改变,可能导致制药行业机器学习和人工智能项目的延迟。
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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