Uchiyama Yoshikazu, Abe Akiko, Muramatsu Chisako, Hara Takeshi, Shiraishi Junji, Fujita Hiroshi
Department of Medical Physics, Faculty of Life Science, Kumamoto University, 4-24-1 Kuhonji, Kumamoto, Kumamoto, 862-0976, Japan,
J Digit Imaging. 2015 Feb;28(1):116-22. doi: 10.1007/s10278-014-9711-2.
Detection of lacunar infarcts is important because their presence indicates an increased risk of severe cerebral infarction. However, accurate identification is often hindered by the difficulty in distinguishing between lacunar infarcts and enlarged Virchow-Robin spaces. Therefore, we developed a computer-aided detection (CAD) scheme for the detection of lacunar infarcts. Although our previous CAD method indicated a sensitivity of 96.8% with 0.71 false positives (FPs) per slice, further reduction of FPs remained an issue for the clinical application. Thus, the purpose of this study is to improve our CAD scheme by using template matching in the eigenspace. Conventional template matching is useful for the reduction of FPs, but it has the following two pitfalls: (1) It needs to maintain a large number of templates to improve the detection performance, and (2) calculation of the cross-correlation coefficient with these templates is time consuming. To solve these problems, we used template matching in the lower dimension space made by a principal component analysis. Our database comprised 1,143 T1- and T2-weighted images obtained from 132 patients. The proposed method was evaluated by using twofold cross-validation. By using this method, 34.1% of FPs was eliminated compared with our previous method. The final performance indicated that the sensitivity of the detection of lacunar infarcts was 96.8% with 0.47 FPs per slice. Therefore, the modified CAD scheme could improve FP rate without a significant reduction in the true positive rate.
腔隙性脑梗死的检测很重要,因为其存在表明发生严重脑梗死的风险增加。然而,由于难以区分腔隙性脑梗死和扩大的血管周围间隙,准确识别常常受到阻碍。因此,我们开发了一种用于检测腔隙性脑梗死的计算机辅助检测(CAD)方案。尽管我们之前的CAD方法显示灵敏度为96.8%,每切片假阳性(FP)为0.71个,但进一步降低FP仍然是临床应用中的一个问题。因此,本研究的目的是通过在特征空间中使用模板匹配来改进我们的CAD方案。传统的模板匹配有助于减少FP,但存在以下两个缺陷:(1)需要维护大量模板以提高检测性能,(2)与这些模板计算互相关系数很耗时。为了解决这些问题,我们在主成分分析生成的低维空间中使用模板匹配。我们的数据库包含从132例患者获得的1143张T1加权和T2加权图像。通过使用二倍交叉验证对所提出的方法进行评估。与我们之前的方法相比,使用该方法可消除34.1%的FP。最终性能表明,腔隙性脑梗死检测的灵敏度为96.8%,每切片FP为0.47个。因此,改进后的CAD方案可以提高FP率,而不会显著降低真阳性率。