The Effect of Artificial Intelligence Applications on Quick
Decision-Making in Government Hospitals in Al Madinah Al Munawarah
The study aims to identify the effect of artificial intelligence
applications on quick decision-making in government hospitals in Al Madinah Al
Munawarah. The researcher used the descriptive approach with the analytical
method in order to achieve the objectives of the study. The study
population consists of doctors, nursing staff, and technical and administrative
staff in government hospitals in Al Madinah Al Munawarah in Kingdom of Saudi
Arabia, who number (6897) according to the statistics of the year 1445 AH. The
sample size was (364) of doctors, nursing staff, and technical and
administrative staff in government hospitals in Al Madinah Al Munawarah in Kingdom
of Saudi Arabia. As for the research results, it is clear that the total score
for the first dimension, “Application of Fuzzy Logic Systems”, came at an
average of (2.26), with a percentage of (50.5%), which is a low percentage
according to the study tool. As for the second dimension, “Implementing expert
systems”, the average was (2.64), with a percentage of (52.7%). The third dimension,
“Application of neural network systems”, had an average of (2.33) and a
percentage of (46.6%), which is a low percentage according to the study tool. The
fourth dimension, “The role of artificial intelligence on quick decision-making”,
came with an average of (4.31), and a percentage of (86.2%), which is a very
high percentage according to the study tool. As for the challenges dimension,
the total score for the dimension “Challenges of applying artificial
intelligence” was at an average of (3.51), with a percentage of (70.2%), which
is a high percentage according to the study tool. The study recommended
providing training and education, developing technological infrastructure,
investing in cloud-based artificial intelligence solutions, and continuous
evaluation and improvement.
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