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人工智能在泌尿生殖系统癌症管理中的应用。

Application of artificial intelligence to the management of urological cancer.

作者信息

Abbod Maysam F, Catto James W F, Linkens Derek A, Hamdy Freddie C

机构信息

School of Engineering and Design, Brunel University, West London, United Kingdom.

出版信息

J Urol. 2007 Oct;178(4 Pt 1):1150-6. doi: 10.1016/j.juro.2007.05.122. Epub 2007 Aug 14.

Abstract

PURPOSE

Artificial intelligence techniques, such as artificial neural networks, Bayesian belief networks and neuro-fuzzy modeling systems, are complex mathematical models based on the human neuronal structure and thinking. Such tools are capable of generating data driven models of biological systems without making assumptions based on statistical distributions. A large amount of study has been reported of the use of artificial intelligence in urology. We reviewed the basic concepts behind artificial intelligence techniques and explored the applications of this new dynamic technology in various aspects of urological cancer management.

MATERIALS AND METHODS

A detailed and systematic review of the literature was performed using the MEDLINE and Inspec databases to discover reports using artificial intelligence in urological cancer.

RESULTS

The characteristics of machine learning and their implementation were described and reports of artificial intelligence use in urological cancer were reviewed. While most researchers in this field were found to focus on artificial neural networks to improve the diagnosis, staging and prognostic prediction of urological cancers, some groups are exploring other techniques, such as expert systems and neuro-fuzzy modeling systems.

CONCLUSIONS

Compared to traditional regression statistics artificial intelligence methods appear to be accurate and more explorative for analyzing large data cohorts. Furthermore, they allow individualized prediction of disease behavior. Each artificial intelligence method has characteristics that make it suitable for different tasks. The lack of transparency of artificial neural networks hinders global scientific community acceptance of this method but this can be overcome by neuro-fuzzy modeling systems.

摘要

目的

人工智能技术,如人工神经网络、贝叶斯信念网络和神经模糊建模系统,是基于人类神经元结构和思维的复杂数学模型。此类工具能够生成生物系统的数据驱动模型,而无需基于统计分布进行假设。已有大量关于人工智能在泌尿外科应用的研究报道。我们回顾了人工智能技术背后的基本概念,并探讨了这项新的动态技术在泌尿生殖系统癌症管理各个方面的应用。

材料与方法

使用MEDLINE和Inspec数据库对文献进行了详细而系统的综述,以查找使用人工智能进行泌尿生殖系统癌症研究的报告。

结果

描述了机器学习的特点及其应用,并综述了人工智能在泌尿生殖系统癌症中的应用报告。虽然发现该领域的大多数研究人员专注于人工神经网络以改善泌尿生殖系统癌症的诊断、分期和预后预测,但一些团队正在探索其他技术,如专家系统和神经模糊建模系统。

结论

与传统回归统计相比,人工智能方法在分析大数据群组时似乎更准确且更具探索性。此外,它们允许对疾病行为进行个性化预测。每种人工智能方法都有适合不同任务的特点。人工神经网络缺乏透明度阻碍了全球科学界对该方法的接受,但神经模糊建模系统可以克服这一问题。

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