Yeaton P, Sears R J, Ledent T, Salmon I, Kiss R, Decaestecker C
Division of Gastroenterology and Hepatology, University of Virginia Health Sciences Center, Charlottesville, USA.
Cytometry. 1998 Aug 1;32(4):309-16. doi: 10.1002/(sici)1097-0320(19980801)32:4<309::aid-cyto8>3.0.co;2-c.
The incidence of pancreatic adenocarcinomas (PA) is increased in the setting of chronic pancreatitis. Distinguishing chronic pancreatitis from pancreatic adenocarcinomas is often difficult, and is based on routine brush cytological specimens provided during endoscopic retrograde cholangiopancreatography (ERCP). Reactive epithelial changes in chronic pancreatitis may appear similar to those of a well-differentiated cancer. Brush cytology specimens were obtained during ERCP from 49 patients with diseases for which the differential diagnosis included chronic pancreatitis and/or pancreatic adenocarcinoma Image cytometry was performed involving the assessment of between 200-400 Feulgen-stained nuclei per case; for each case, 40 quantitative cytometric variables were generated. Data analysis was performed using artificial intelligence methods of data classification that produced decision trees and production rule systems. Different classification models were produced for a subset of 34 patients. The best models were identified by the use of a sampling technique (leave-one-out), and were tested on the remaining 15 patients. These models were based on 5 of the 40 variables associated with a significant discriminatory function. Pancreatic adenocarcinoma was diagnosed in the training data set of 34 patients during a leave-one-out process with an estimated sensitivity of 91% and specificity of 87%. Both sensitivity and specificity were 80% in the independent test set of 15 patients. We conclude that inflammatory and malignant pancreatic epithelia exhibit distinct morphological features that can be distinguished by decision tree-based classifiers employing image-cytometric numerical data.
在慢性胰腺炎背景下,胰腺腺癌(PA)的发病率会升高。区分慢性胰腺炎和胰腺腺癌通常很困难,这基于内镜逆行胰胆管造影术(ERCP)期间提供的常规刷检细胞学标本。慢性胰腺炎中的反应性上皮改变可能与高分化癌的改变相似。在ERCP期间从49例疾病诊断包括慢性胰腺炎和/或胰腺腺癌的患者中获取刷检细胞学标本。进行图像细胞术,对每个病例评估200 - 400个Feulgen染色的细胞核;每个病例生成40个定量细胞术变量。使用产生决策树和生产规则系统的数据分类人工智能方法进行数据分析。为34例患者的一个子集生成了不同的分类模型。通过使用一种抽样技术(留一法)确定最佳模型,并在其余15例患者上进行测试。这些模型基于40个具有显著判别功能的变量中的5个。在留一法过程中,34例患者的训练数据集中诊断出胰腺腺癌,估计敏感性为91%,特异性为87%。在15例患者的独立测试集中,敏感性和特异性均为80%。我们得出结论,炎症性和恶性胰腺上皮表现出不同的形态特征,可通过采用图像细胞术数值数据的基于决策树的分类器进行区分。