Sugimoto Katsutoshi, Shiraishi Junji, Moriyasu Fuminori, Doi Kunio
Kurt Rossmann Laboratories for Radiologic Imaging Research, Department of Radiology, The University of Chicago, 5841 S. Maryland Ave., MC 2026, Chicago, IL 60637, USA.
Acad Radiol. 2009 Apr;16(4):401-11. doi: 10.1016/j.acra.2008.09.018.
To develop a computer-aided diagnostic (CAD) scheme for classifying focal liver lesions (FLLs) by use of physicians' subjective classification of echogenic patterns of FLLs on baseline and contrast-enhanced ultrasonography (US).
A total of 137 hepatic lesions in 137 patients were evaluated with B-mode and NC100100 (Sonazoid)-enhanced pulse-inversion US; lesions included 74 hepatocellular carcinomas (HCCs) (23: well-differentiated, 36: moderately differentiated, 15: poorly differentiated HCCs), 33 liver metastases, and 30 liver hemangiomas. Three physicians evaluated single images at B-mode and arterial phases with a cine mode. Physicians were asked to classify each lesion into one of eight B-mode and one of eight enhancement patterns, but did not make a diagnosis. To classify five types of FLLs, we employed a decision tree model with four decision nodes and four artificial neural networks (ANNs). The results of the physicians' pattern classifications were used successively for four different ANNs in making decisions at each of the decision nodes in the decision tree model.
The classification accuracies for the 137 FLLs were 84.8% for metastasis, 93.3% for hemangioma, and 98.6% for all HCCs. In addition, the classification accuracies for histological differentiation types of HCCs were 65.2% for well-differentiated HCC, 41.7% for moderately differentiated HCC, and 80.0% for poorly differentiated HCC.
This CAD scheme has the potential to improve the diagnostic accuracy of liver lesions. However, the accuracy in the histologic differential diagnosis of HCC based on baseline and contrast-enhanced US is still limited.
通过利用医生对基线和对比增强超声(US)上局灶性肝病变(FLL)回声模式的主观分类,开发一种用于分类FLL的计算机辅助诊断(CAD)方案。
对137例患者的137个肝脏病变进行B模式和NC100100(Sonazoid)增强脉冲反转US评估;病变包括74例肝细胞癌(HCC)(23例:高分化,36例:中分化,15例:低分化HCC)、33例肝转移瘤和30例肝血管瘤。三名医生使用电影模式在B模式和动脉期评估单幅图像。要求医生将每个病变分类为八种B模式之一和八种增强模式之一,但不做出诊断。为了对五种类型的FLL进行分类,我们采用了具有四个决策节点和四个人工神经网络(ANN)的决策树模型。医生模式分类的结果在决策树模型的每个决策节点的决策中依次用于四个不同的ANN。
137个FLL的分类准确率分别为:转移瘤84.8%,血管瘤93.3%,所有HCC为98.6%。此外,HCC组织学分化类型的分类准确率分别为:高分化HCC 65.2%,中分化HCC 41.7%,低分化HCC 80.0%。
该CAD方案有可能提高肝脏病变的诊断准确性。然而,基于基线和对比增强US的HCC组织学鉴别诊断的准确性仍然有限。