Das Ananya, Nguyen Cuong C, Li Feng, Li Baoxin
Division of Gastroenterology and Hepatology, Department of Internal Medicine, Mayo Clinic Arizona, Scottsdale, Arizona 85259, USA.
Gastrointest Endosc. 2008 May;67(6):861-7. doi: 10.1016/j.gie.2007.08.036. Epub 2008 Jan 7.
Concomitant changes of chronic pancreatitis markedly degrade the performance of EUS in diagnosing pancreatic adenocarcinoma (PC). Digital image analysis (DIA) of the spatial distribution of pixels in a US image has been used as an effective approach to tissue characterization.
We applied the techniques of DIA to EUS images of the pancreas to develop a classification model capable of differentiating pancreatic adenocarcinoma from non-neoplastic tissue.
Representative regions of interest were digitally selected in EUS images of 3 groups of patients with normal pancreas (group I), chronic pancreatitis (group II), and pancreatic adenocarcinoma (group III). Texture analyses were then performed by using image analysis software. Principal component analysis (PCA) was used for data reduction, and, later, a neural-network-based predictive model was built, trained, and validated.
Tertiary academic medical center.
Patients undergoing EUS of the pancreas.
A total of 110, 99, and 110 regions of interest in groups I, II, III, respectively, were available for analysis. For each region, a total of 256 statistical parameters were extracted. Eleven parameters were subsequently retained by PCA. A neural network model was built, trained by using these parameters as input variables for prediction of PC, and then validated in the remainder of the data set. This model was very accurate in classifying PC with an area under the receiver operating characteristic curve of 0.93.
Exploratory study with a small number of patients.
DIA of EUS images is accurate in differentiating PC from chronic inflammation and normal tissue. With the potential availability of real-time application, DIA can develop into a useful clinical diagnostic tool in pancreatic diseases and in certain situations may obviate EUS-guided FNA.
慢性胰腺炎的伴随变化显著降低了超声内镜(EUS)诊断胰腺腺癌(PC)的性能。超声图像中像素空间分布的数字图像分析(DIA)已被用作组织特征分析的有效方法。
我们将DIA技术应用于胰腺的EUS图像,以建立一个能够区分胰腺腺癌与非肿瘤组织的分类模型。
在3组患者的胰腺EUS图像中数字选择代表性感兴趣区域,这3组患者分别为胰腺正常(I组)、慢性胰腺炎(II组)和胰腺腺癌(III组)。然后使用图像分析软件进行纹理分析。主成分分析(PCA)用于数据降维,随后建立、训练并验证基于神经网络的预测模型。
三级学术医学中心。
接受胰腺EUS检查的患者。
I组、II组、III组分别有110个、99个和110个感兴趣区域可供分析。对于每个区域,共提取256个统计参数。PCA随后保留了11个参数。建立了一个神经网络模型,使用这些参数作为预测PC的输入变量进行训练,然后在数据集的其余部分进行验证。该模型在对PC进行分类时非常准确,受试者操作特征曲线下面积为0.93。
对少量患者的探索性研究。
EUS图像的DIA在区分PC与慢性炎症和正常组织方面是准确的。随着实时应用的潜在可能性,DIA可发展成为胰腺疾病中一种有用的临床诊断工具,在某些情况下可能无需进行EUS引导的细针穿刺抽吸活检(FNA)。