利用人工神经网络诊断皮肤病

F. S., Kabari L.
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引用次数: 71

摘要

使用人工神经网络作为其知识库的医学专家系统的发展似乎是预测诊断和可能的治疗常规的一种有前途的方法。本文研究了基于患者症状和致病生物的皮肤病诊断人工神经网络的构建和训练。利用前馈建筑设计构建的人工神经网络被证明能够成功诊断尼日利亚等热带地区选定的皮肤病,准确率达到90%。这项工作可能在未来作为专门从事医学诊断、测试评估、治疗评估和治疗效果的专家系统的知识库。这项工作是一个更大系统的第一个组成部分,该系统将帮助医生促进合理的检查和治疗排序,并在降低运营成本的同时最大限度地减少不必要的实验室程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosing skin diseases using an artificial neural network
Development of medical expert systems that use artificial neural networks as their knowledge bases appears to be a promising method for predicting diagnosis and possible treatment routine. This paper deals with the construction and training of an artificial neural network for Skin Disease Diagnosis (SDD) based on patients' symptoms and causative organisms. The artificial neural network constructed using a feed-forward architectural design is shown to be capable of successfully diagnosing selected skin diseases in the tropical areas such as Nigeria with 90 percent accuracy. The work may in the future serve as a knowledge base for an expert system specializing in medical diagnosis, testing evaluation, treatment evaluation, and treatment effectiveness. The work serves as the first component of a much larger system that will assist physicians facilitate the reasonable ordering of tests and treatments and minimize unnecessary laboratory routines while reducing operational costs.
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