肿瘤学机器学习技术的发展和可靠性

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Hamza Abu Owida, Bashar Al-haj Moh'd, Nidal M. Turab, J. Al-Nabulsi, Suhaila Abuowaida
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引用次数: 0

摘要

众所周知,互联网和其他数字技术的兴起重新激发了人们对基于人工智能的技术的兴趣,尤其是那些属于“机器学习”算法子集的技术。电子技术的这些进步使我们能够理解超越人类认知界限的世界。高维数据集的复杂性。尽管这些技术已被医学科学定期采用,但它们在提高病人护理方面的应用却有些缓慢。用于模型开发的精心策划的各种数据集的可用性是延迟这些努力的实质性障碍的所有例子。未来临床对这些特征的接受程度可能受到许多限制条件的影响,例如用于数据收集和模型开发的时间和资源,相对于用于翻译的时间和资源的整合成本,以及对患者的潜在伤害。为了保持价值和加强医疗保健,本文的目标是根据在癌症中使用ML方法的有效性来评估问题的各个方面,作为进一步研究的模板,并作为肿瘤学子领域的模型,作为该学科其他部分的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Evolution and Reliability of Machine Learning Techniques for Oncology
It is no secret that the rise of the Internet and other digital technologies has sparked renewed interest in AI-based techniques, especially those that fall under the umbrella of the subset of algorithms known as "Machine Learning" (ML). These advancements in electronics have allowed us to comprehend the world beyond the bounds of human cognition. A high-dimensional dataset's complicated nature. Although these techniques have been regularly employed by the medical sciences, their adoption to enhance patient care has been a bit slow. The availability of curated diverse data sets for model development is all examples of the substantial hurdles that have delayed these efforts. The future clinical acceptance of each of these characteristics may be affected by a number of limiting conditions, such as the time and resources spent on data collection and model development, the cost of integration relative to the time and resources spent on translation, and the potential for patient damage. In order to preserve value and enhance medical care, the goal of this article is to evaluate all facets of the issue in light of the validity of using ML methods in cancer, to serve as a template for further research and the subfield of oncology that serves as a model for other parts of the discipline.
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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