Applications and Techniques of Machine Learning in Cancer Classification: A Systematic Review

Abrar Yaqoob, Rabia Musheer Aziz, Navneet Kumar verma
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引用次数: 1

Abstract

Abstract The domain of Machine learning has experienced Substantial advancement and development. Recently, showcasing a Broad spectrum of uses like Computational linguistics, image identification, and autonomous systems. With the increasing demand for intelligent systems, it has become crucial to comprehend the different categories of machine acquiring knowledge systems along with their applications in the present world. This paper presents actual use cases of machine learning, including cancer classification, and how machine learning algorithms have been implemented on medical data to categorize diverse forms of cancer and anticipate their outcomes. The paper also discusses supervised, unsupervised, and reinforcement learning, highlighting the benefits and disadvantages of each category of Computational intelligence system. The conclusions of this systematic study on machine learning methods and applications in cancer classification have numerous implications. The main lesson is that through accurate classification of cancer kinds, patient outcome prediction, and identification of possible therapeutic targets, machine learning holds enormous potential for improving cancer diagnosis and therapy. This review offers readers with a broad understanding as of the present advancements in machine learning applied to cancer classification today, empowering them to decide for themselves whether to use these methods in clinical settings. Lastly, the paper wraps up by engaging in a discussion on the future of machine learning, including the potential for new types of systems to be developed as the field advances. Overall, the information included in this survey article is useful for scholars, practitioners, and individuals interested in gaining knowledge about the fundamentals of machine learning and its various applications in different areas of activities.
机器学习在癌症分类中的应用与技术综述
机器学习领域经历了实质性的进步和发展。最近,展示了广泛的应用,如计算语言学、图像识别和自主系统。随着人们对智能系统的需求日益增长,了解不同类型的机器获取知识系统及其在当今世界的应用已经变得至关重要。本文介绍了机器学习的实际用例,包括癌症分类,以及如何在医疗数据上实现机器学习算法,以对不同形式的癌症进行分类并预测其结果。本文还讨论了监督学习、无监督学习和强化学习,突出了每一类计算智能系统的优缺点。这项关于机器学习方法及其在癌症分类中的应用的系统研究的结论具有许多意义。主要的教训是,通过对癌症类型的准确分类,对患者预后的预测,以及对可能的治疗靶点的识别,机器学习在改善癌症诊断和治疗方面具有巨大的潜力。这篇综述为读者提供了一个广泛的了解目前机器学习应用于癌症分类的进展,使他们能够自己决定是否在临床环境中使用这些方法。最后,论文最后讨论了机器学习的未来,包括随着该领域的发展,开发新型系统的潜力。总的来说,这篇调查文章中包含的信息对于有兴趣获得机器学习基础知识及其在不同活动领域中的各种应用的学者、实践者和个人非常有用。
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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