P. Singha, Barsha Panda, Syed Benazir Firdaus, D. Ghosh
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引用次数: 0
Abstract
Artificial intelligence (AI) has made its own place in the present world. Almost in every
field, AI is being utilized for betterment and advancement. Machine learning (ML) is a part of AI
and has been applied extensively currently in various fields of science and technology including
healthcare system. ML is the technique that uses AI to analyze, interpret and make decisions.
To summarize the applications of ML in various healthcare systems in order to understand the
strength and loopholes of the use of ML in medical science.
The mechanisms and methods of ML approach in various medical issues have been analyzed and
discussed. ML technique is being used to make decisions in medical cases, for determining the
treatment regime of a particular patient, for designing and developing drugs, in personalized medicine,
in designing and selecting diagnoses for any particular disease, for automated tracking of patient's
recovery. Available clinical data and history are being used by ML techniques to compare,
classify, select and execute results for any task being assigned. In a nutshell, ML uses earlier available
information and data about the disease, the treatment protocols followed, and the results in correspondence
with the clinical symptoms and pathological findings.
Several achievements using ML in the healthcare system, yielded significant novel results that have
been patented. There have been several thousand patents in the field of application of ML in
healthcare systems from the years 2012 to 2023.
Though, ML in healthcare comes with some risks and unknown possibilities yet, restricted and monitored
application of ML in healthcare may hasten the healthcare system, save time, help to make
efficient decisions in non-invasive ways, and may open up new possibilities in the healthcare system.
人工智能(AI)已在当今世界占据一席之地。几乎在每一个领域,人工智能都被用于改善和进步。机器学习(ML)是人工智能的一部分,目前已被广泛应用于包括医疗保健系统在内的各个科技领域。为了了解 ML 在医学科学中应用的优势和漏洞,我们总结了 ML 在各种医疗系统中的应用。ML 技术被用于在医疗案例中做出决策、确定特定病人的治疗方案、设计和开发药物、个性化医疗、设计和选择任何特定疾病的诊断方法、自动跟踪病人的康复情况。现有的临床数据和病史正被 ML 技术用于比较、分类、选择和执行所分配任务的结果。简而言之,ML 使用了有关疾病的早期可用信息和数据、所遵循的治疗方案以及与临床症状和病理结果相对应的结果。从 2012 年到 2023 年,在医疗保健系统中应用 ML 领域的专利已达数千项。尽管 ML 在医疗保健中的应用存在一些风险和未知的可能性,但在医疗保健中限制和监控 ML 的应用可能会加速医疗保健系统的发展,节省时间,有助于以非侵入性的方式做出高效决策,并为医疗保健系统开辟新的可能性。
期刊介绍:
Recent Patents on Engineering publishes review articles by experts on recent patents in the major fields of engineering. A selection of important and recent patents on engineering is also included in the journal. The journal is essential reading for all researchers involved in engineering sciences.