肝脏肿瘤分类的机器学习方法综述

Jalpaben Kandoriya, S. Degadwala
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引用次数: 0

摘要

这篇综合综述深入探讨了机器学习方法在肝脏肿瘤分类中的应用,对医学成像和诊断领域的现状进行了全面审视。肝脏肿瘤发病率的不断攀升需要精确高效的分类方法,本文系统地探讨了在此背景下应用的各种机器学习技术。从支持向量机和决策树等传统方法到更先进的深度学习算法,综述对现有文献进行了归纳,以全面了解它们的优势、局限性和比较性能。此外,文章还讨论了该领域的关键挑战,如数据稀缺性和可解释性,并提出了未来研究和创新的潜在途径。这篇综述以缩小临床需求与技术进步之间的差距为重点,为不断发展的医学成像领域提供了宝贵的见解,为开发稳健且与临床相关的肝脏肿瘤分类系统提供了路线图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Review on Machine Learning Methods for Categorizing Liver Tumors
This comprehensive review delves into the application of machine learning methods for the categorization of liver tumors, offering a thorough examination of the current landscape in medical imaging and diagnostics. The escalating prevalence of liver tumors necessitates precise and efficient classification methods, and this paper systematically explores the diverse array of machine learning techniques employed in this context. From traditional approaches such as support vector machines and decision trees to more advanced deep learning algorithms, the review synthesizes existing literature to provide a holistic understanding of their strengths, limitations, and comparative performances. Furthermore, the article discusses key challenges in the domain, such as data scarcity and interpretability, proposing potential avenues for future research and innovation. With a focus on bridging the gap between clinical needs and technological advancements, this review contributes valuable insights to the evolving field of medical imaging, offering a roadmap for the development of robust and clinically relevant liver tumor classification systems.
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