Săftoiu Adrian, Vilmann Peter, Gorunescu Florin, Gheonea Dan Ionuţ, Gorunescu Marina, Ciurea Tudorel, Popescu Gabriel Lucian, Iordache Alexandru, Hassan Hazem, Iordache Sevastiţa
Department of Gastroenterology, University of Medicine and Pharmacy Craiova, Craiova, Dolj, Romania.
Gastrointest Endosc. 2008 Dec;68(6):1086-94. doi: 10.1016/j.gie.2008.04.031. Epub 2008 Jul 24.
EUS elastography is a newly developed imaging procedure that characterizes the differences of hardness and strain between diseased and normal tissue.
To assess the accuracy of real-time EUS elastography in pancreatic lesions.
Cross-sectional feasibility study.
The study group included, in total, 68 patients with normal pancreas (N = 22), chronic pancreatitis (N = 11), pancreatic adenocarcinoma (N = 32), and pancreatic neuroendocrine tumors (N = 3). A subgroup analysis of 43 cases with focal pancreatic masses was also performed.
A postprocessing software analysis was used to examine the EUS elastography movies by calculating hue histograms of each individual image, data that were further subjected to an extended neural network analysis to differentiate benign from malignant patterns.
To differentiate normal pancreas, chronic pancreatitis, pancreatic cancer, and neuroendocrine tumors.
Based on a cutoff of 175 for the mean hue histogram values recorded on the region of interest, the sensitivity, specificity, and accuracy of differentiation of benign and malignant masses were 91.4%, 87.9%, and 89.7%, respectively. The positive and negative predictive values were 88.9% and 90.6%, respectively. Multilayer perceptron neural networks with both one and two hidden layers of neurons (3-layer perceptron and 4-layer perceptron) were trained to learn how to classify cases as benign or malignant, and yielded an excellent testing performance of 95% on average, together with a high training performance that equaled 97% on average.
A lack of the surgical standard in all cases.
EUS elastography is a promising method that allows characterization and differentiation of normal pancreas, chronic pancreatitis, and pancreatic cancer. The currently developed methodology, based on artificial neural network processing of EUS elastography digitalized movies, enabled an optimal prediction of the types of pancreatic lesions. Future multicentric, randomized studies with adequate power will have to establish the clinical impact of this procedure for the differential diagnosis of focal pancreatic masses.
超声内镜弹性成像(EUS)是一种新开发的成像技术,可显示病变组织与正常组织之间硬度和应变的差异。
评估实时EUS弹性成像对胰腺病变的诊断准确性。
横断面可行性研究。
研究组共纳入68例患者,包括正常胰腺患者(n = 22)、慢性胰腺炎患者(n = 11)、胰腺腺癌患者(n = 32)和胰腺神经内分泌肿瘤患者(n = 3)。还对43例胰腺局灶性肿块患者进行了亚组分析。
使用后处理软件分析EUS弹性成像视频,通过计算每个图像的色调直方图进行分析,这些数据进一步经过扩展神经网络分析,以区分良性和恶性模式。
区分正常胰腺、慢性胰腺炎、胰腺癌和神经内分泌肿瘤。
以感兴趣区域记录的平均色调直方图值175为临界值,良性和恶性肿块鉴别的灵敏度、特异度和准确度分别为91.4%、87.9%和89.7%。阳性和阴性预测值分别为88.9%和90.6%。对具有一层和两层神经元隐藏层的多层感知器神经网络(3层感知器和4层感知器)进行训练,以学习如何将病例分类为良性或恶性,平均测试性能优异,达到95%,平均训练性能也较高,达到97%。
所有病例均缺乏手术标准。
EUS弹性成像是一种有前景的方法,可对正常胰腺、慢性胰腺炎和胰腺癌进行特征描述和鉴别。目前基于EUS弹性成像数字化视频人工神经网络处理开发的方法,能够对胰腺病变类型进行最佳预测。未来需要开展有足够样本量的多中心随机研究,以确定该检查方法在胰腺局灶性肿块鉴别诊断中的临床意义。