{"title":"神经网络在胰腺导管内增生性病变分类中的应用","authors":"K. Okoń, R. Tomaszewska, K. Nowak, J. Stachura","doi":"10.1155/2001/657268","DOIUrl":null,"url":null,"abstract":"The aim of the study was to test applycability of neural networks to classification of pancreatic intraductal proliferative lesions basing on nuclear features, especially chromatin texture. Material for the study was obtained from patients operated on for pancreatic cancer, chronic pancreatitis and other tumours requiring pancreatic resection. Intraductal lesions were classified as low and high grade as previously described. The image analysis system consisted of a microscope, CCD camera combined with a PC and AnalySIS v. 2.11 software. The following texture characteristics were measured: variance of grey levels, features extracted from the grey levels correlation matrix and mean values, variance and standard deviation of the energy obtained from Laws matrices. Furthermore we used moments derived invariants and basic geometric data such as surface area, the minimum and maximum diameter and shape factor. The sets of data were randomly divided into training and testing groups. The training of the network using the back‐propagation algorithm, and the final classification of data was carried out with a neural network simulator SNNS v. 4.1. We studied the efficacy of networks containing from one to three hidden layers. Using the best network, containing three hidden layers, the rate of correct classification of nuclei was 73%, and the rate of misdiagnosis was 3%; in 24% the network response was ambiguous. The present findings may serve as a starting point in search for methods facilitating early diagnosis of ductal pancreatic carcinoma.","PeriodicalId":76996,"journal":{"name":"Analytical cellular pathology : the journal of the European Society for Analytical Cellular Pathology","volume":"97 1","pages":"129 - 136"},"PeriodicalIF":0.0000,"publicationDate":"2001-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"10","resultStr":"{\"title\":\"Application of Neural Networks to the Classification of Pancreatic Intraductal Proliferative Lesions\",\"authors\":\"K. Okoń, R. Tomaszewska, K. Nowak, J. Stachura\",\"doi\":\"10.1155/2001/657268\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The aim of the study was to test applycability of neural networks to classification of pancreatic intraductal proliferative lesions basing on nuclear features, especially chromatin texture. Material for the study was obtained from patients operated on for pancreatic cancer, chronic pancreatitis and other tumours requiring pancreatic resection. Intraductal lesions were classified as low and high grade as previously described. The image analysis system consisted of a microscope, CCD camera combined with a PC and AnalySIS v. 2.11 software. The following texture characteristics were measured: variance of grey levels, features extracted from the grey levels correlation matrix and mean values, variance and standard deviation of the energy obtained from Laws matrices. Furthermore we used moments derived invariants and basic geometric data such as surface area, the minimum and maximum diameter and shape factor. The sets of data were randomly divided into training and testing groups. The training of the network using the back‐propagation algorithm, and the final classification of data was carried out with a neural network simulator SNNS v. 4.1. 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引用次数: 10
摘要
本研究的目的是测试基于核特征,特别是染色质结构的神经网络在胰腺导管内增生性病变分类中的适用性。该研究的材料来自于胰腺癌、慢性胰腺炎和其他需要胰腺切除术的肿瘤手术患者。如前所述,导管内病变分为低级别和高级别。图像分析系统由一台显微镜、CCD相机和一台PC机以及analysis v. 2.11软件组成。测量纹理特征:灰度方差、灰度相关矩阵提取的特征和均值、Laws矩阵提取的能量方差和标准差。在此基础上,利用矩导不变量和基本几何数据,如表面积、最小和最大直径以及形状因子。这些数据被随机分为训练组和测试组。使用反向传播算法对网络进行训练,并使用神经网络模拟器SNNS v. 4.1对数据进行最终分类。我们研究了包含一到三个隐藏层的网络的有效性。使用包含3个隐藏层的最佳网络,核分类正确率为73%,误诊率为3%;24%的网络反应是模糊的。本研究结果可作为寻找早期诊断导管性胰腺癌方法的起点。
Application of Neural Networks to the Classification of Pancreatic Intraductal Proliferative Lesions
The aim of the study was to test applycability of neural networks to classification of pancreatic intraductal proliferative lesions basing on nuclear features, especially chromatin texture. Material for the study was obtained from patients operated on for pancreatic cancer, chronic pancreatitis and other tumours requiring pancreatic resection. Intraductal lesions were classified as low and high grade as previously described. The image analysis system consisted of a microscope, CCD camera combined with a PC and AnalySIS v. 2.11 software. The following texture characteristics were measured: variance of grey levels, features extracted from the grey levels correlation matrix and mean values, variance and standard deviation of the energy obtained from Laws matrices. Furthermore we used moments derived invariants and basic geometric data such as surface area, the minimum and maximum diameter and shape factor. The sets of data were randomly divided into training and testing groups. The training of the network using the back‐propagation algorithm, and the final classification of data was carried out with a neural network simulator SNNS v. 4.1. We studied the efficacy of networks containing from one to three hidden layers. Using the best network, containing three hidden layers, the rate of correct classification of nuclei was 73%, and the rate of misdiagnosis was 3%; in 24% the network response was ambiguous. The present findings may serve as a starting point in search for methods facilitating early diagnosis of ductal pancreatic carcinoma.