Constantinescu Adriana Florentina, Ionescu Mihaela, Iovănescu Vlad Florin, Ciurea Marius Eugen, Ionescu Alin Gabriel, Streba Costin Teodor, Bunescu Marius Gabriel, Rogoveanu Ion, Vere Cristin Constantin
Department of Bioinformatics and Biostatistics, University of Medicine and Pharmacy of Craiova, Romania;
Rom J Morphol Embryol. 2016;57(3):979-984.
Small bowel polyps present in images acquired by wireless capsule endoscopy are more difficult to detect using computer-aided diagnostic (CAD) systems. We aimed to identify the optimum morphological characteristics that best describe a polyp and convert them into feature vectors used for automatic detection of polyps present in images acquired by wireless capsule endoscopy (WCE). We prospectively included 54 patients with clinical indications for WCE. Initially, physicians analyzed all images acquired, identifying the frames that contained small bowel polyps. Subsequently, all images were analyzed using an automated computer-aided diagnostic system designed and implemented to convert physical characteristics into vectors of numeric values. The data set was completed with texture and color information, and then analyzed by a feed forward back propagation artificial neural network (ANN) trained to identify the presence of polyps in WCE frames. Overall, the neural network had 93.75% sensitivity, 91.38% specificity, 85.71% positive predictive value (PPV) and 96.36% negative predictive value (NPV). In comparison, physicians' diagnosis indicated 94.79% sensitivity, 93.68% specificity, 89.22% PPV and 97.02% NPV, thus showing that ANN diagnosis was similar to that of human interpretation. Computer-aided diagnostic of small bowel polyps, based on morphological features detection methods, emulation and neural networks classification, seems efficient, fast and reliable for physicians.
无线胶囊内镜采集的图像中出现的小肠息肉,使用计算机辅助诊断(CAD)系统更难检测。我们旨在确定最能描述息肉的最佳形态特征,并将其转换为用于自动检测无线胶囊内镜(WCE)采集图像中息肉的特征向量。我们前瞻性纳入了54例有WCE临床指征的患者。最初,医生分析了采集的所有图像,识别出包含小肠息肉的帧。随后,使用设计并实施的自动化计算机辅助诊断系统分析所有图像,以将物理特征转换为数值向量。数据集补充了纹理和颜色信息,然后由经过训练以识别WCE帧中息肉存在情况的前馈反向传播人工神经网络(ANN)进行分析。总体而言,神经网络的灵敏度为93.75%,特异度为91.38%,阳性预测值(PPV)为85.71%,阴性预测值(NPV)为96.36%。相比之下,医生的诊断显示灵敏度为94.79%,特异度为93.68%,PPV为89.22%,NPV为97.02%,因此表明ANN诊断与人类解读相似。基于形态特征检测方法、仿真和神经网络分类的小肠息肉计算机辅助诊断,对医生来说似乎高效、快速且可靠。