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偏最小二乘法+神经网络用于大肠癌组织自体荧光的模式识别
引用本文:张阳德,董可,任力锋. 偏最小二乘法+神经网络用于大肠癌组织自体荧光的模式识别[J]. 中国医学工程, 2004, 12(4): 52-56,59
作者姓名:张阳德  董可  任力锋
作者单位:1. 中南大学湘雅医院卫生部肝胆肠外科研究中心,湖南,长沙,410078
2. 中南大学生物医学工程研究院,湖南,长沙,410078
摘    要:目的大肠癌组织自体荧光的模式识别算法的优化.方法本文将大肠癌自体荧光光谱的判别分析归结为模式识别问题,并首次采用偏最小二乘法 神经网络判别法,即偏最小二乘法进行模式特征分析,完成特征提取后利用主因子作为人工神经网络输入变量,实现类别预测的同时也完成了数学建模与优化分析工作.结果实践证明,该方法可以以较高的灵敏度、特异性和可靠性对组织荧光光谱进行模式分类.结论该方法优于目前该领域同类判别方法.

关 键 词:大肠癌  激光诱导自体荧光  偏最小二乘法  模式识别
文章编号:1672-2019(2004)04-0052-05
修稿时间:2004-06-01

Pattern recognition of laser-induced autofluorescence spectrum from colorectal cancer tissues using Partial-least-square and neural network
ZHANG Yang-de,DONG Ke,REN Li-feng. Pattern recognition of laser-induced autofluorescence spectrum from colorectal cancer tissues using Partial-least-square and neural network[J]. China Medical Engineering, 2004, 12(4): 52-56,59
Authors:ZHANG Yang-de  DONG Ke  REN Li-feng
Affiliation:ZHANG Yang-de1,DONG Ke1,REN Li-feng2
Abstract:Objective: To realize pattern recognition of Laser-induced autofluorescence spectrum from colorectal cancer tissues using Partial-least-square. Methods: The auto-fluorescence spectrum classifying was the pattern recognition problem. By using partial least squares, the spectrum was reduced to some factors, which was taken as the input of artificial neural network. Through the training and prediction, artificial neural network outputs classified spectrum. At the same time, the work of building mathematics model and optimizing the algorithm was completed. Results: The result was very good in sensibility and reliability. Conclusion: This method is better than other classification methods in the same field.
Keywords:colorectal cancer  Partial-least-square  pattern recognition  Laser-induced auto-fluorescence
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