Authors :
Sreedhar Reddy Konda
Volume/Issue :
Volume 9 - 2024, Issue 1 - January
Google Scholar :
http://tinyurl.com/h9zy4s48
Scribd :
http://tinyurl.com/35vpmzb5
DOI :
https://doi.org/10.5281/zenodo.10648720
Abstract :
This study focuses on the transformational
nature of medicine through the prism of software
engineering, AI, and ML. The study's overarching
objectives were to determine the level of implementation
and use of artificial intelligence and machine learning
technologies in medical practice and a comprehensive
study of their effectiveness in determining the results of
health and drug production. It collected data from a
mixed research method that used structured surveys to
identify patterns of adoption, quantitative data obtained
from the analysis of datasets, and qualitative data from
semi-structured interviews administered to healthcare
providers and software engineers.
Quantitative analysis showed a clear trend toward
using AI and ML, supported by empirical evidence
indicating better diagnostic accuracy and personalized
treatment recommendations. Qualitative insights helped
to foster a cooperative spirit between health experts and
software engineers, emphasizing the interdisciplinary
nature of a victorious outcome. The study's ramifications
go beyond health care and software engineering. It
discusses the changes caused by artificial intelligence and
machine-learning technologies. Furthermore, the
conducted research points out the future research path,
highlighting areas for improvement in the
implementation process, the development of solid legal
frameworks, and ethical considerations to ensure the
advancement and improvement of artificial intelligence
and machine learning adoption in the healthcare system.
Keywords :
Software Engineering, Artificial Intelligence, Machine Learning, Healthcare Innovation, Drug Discovery.
This study focuses on the transformational
nature of medicine through the prism of software
engineering, AI, and ML. The study's overarching
objectives were to determine the level of implementation
and use of artificial intelligence and machine learning
technologies in medical practice and a comprehensive
study of their effectiveness in determining the results of
health and drug production. It collected data from a
mixed research method that used structured surveys to
identify patterns of adoption, quantitative data obtained
from the analysis of datasets, and qualitative data from
semi-structured interviews administered to healthcare
providers and software engineers.
Quantitative analysis showed a clear trend toward
using AI and ML, supported by empirical evidence
indicating better diagnostic accuracy and personalized
treatment recommendations. Qualitative insights helped
to foster a cooperative spirit between health experts and
software engineers, emphasizing the interdisciplinary
nature of a victorious outcome. The study's ramifications
go beyond health care and software engineering. It
discusses the changes caused by artificial intelligence and
machine-learning technologies. Furthermore, the
conducted research points out the future research path,
highlighting areas for improvement in the
implementation process, the development of solid legal
frameworks, and ethical considerations to ensure the
advancement and improvement of artificial intelligence
and machine learning adoption in the healthcare system.
Keywords :
Software Engineering, Artificial Intelligence, Machine Learning, Healthcare Innovation, Drug Discovery.