Florio T, Einfeld S, Levy F
School of Psychiatry, University of New South Wales, Sydney.
Aust N Z J Psychiatry. 1994 Dec;28(4):651-66. doi: 10.1080/00048679409080789.
Neural networks comprise a fundamentally new type of computer system inspired by the functioning of neurons in the brain. Such networks are good at solving problems that involve pattern recognition and categorisation. An important difference between a neural network and a traditional computer system is that in developing an application, a neural network is not programmed; instead, it is trained to solve a particular type of problem. This ability to learn to solve a problem makes neural networks adaptable to solving a wide variety of problems, some of which have proved intractable using a traditional computing approach. Neural networks are particularly suited to tasks involving the categorisation of patterns of information, such as is required in diagnosis and clinical decision making. In the last three years reports of applications involving neural networks have begun to appear in the medical literature, and these are described in this paper. However, a comprehensive search of the literature has shown that there have not as yet been reports of any applications in psychiatry. This paper discusses the nature of clinical decision making, outlines the sorts of problems in psychiatry which neural networks applications might be developed to address, and gives examples of candidate applications in clinical decision making.
神经网络是一种全新类型的计算机系统,其灵感来源于大脑中神经元的功能。这类网络擅长解决涉及模式识别和分类的问题。神经网络与传统计算机系统的一个重要区别在于,在开发应用程序时,神经网络不是通过编程来实现的;相反,它是通过训练来解决特定类型的问题。这种学习解决问题的能力使神经网络能够适应解决各种各样的问题,其中一些问题使用传统计算方法已证明难以解决。神经网络特别适合涉及信息模式分类的任务,例如诊断和临床决策中所需要的任务。在过去三年中,涉及神经网络应用的报告已开始出现在医学文献中,本文将对这些报告进行描述。然而,对文献的全面检索表明,目前尚未有关于精神病学领域任何应用的报告。本文讨论了临床决策的本质,概述了神经网络应用可能被开发来解决的精神病学中的各类问题,并给出了临床决策中候选应用的示例。