Lee Youngjoo, Kim Namkug, Cho Kyoung-Sik, Kang Suk-Ho, Kim Dae Yoon, Jung Yoon Young, Kim Jeong Kon
Department of Industrial Engineering, Seoul National University, Seoul, Republic of Korea.
AJR Am J Roentgenol. 2009 Aug;193(2):W106-11. doi: 10.2214/AJR.08.1858.
The objective of our study was to evaluate the feasibility and usefulness of the Bayesian classifier for predicting malignant renal cysts on MDCT.
Ninety-three complicated cysts with pathologic confirmation were enrolled. Patient age and sex and seven morphologic features of the cysts including the maximum diameter, wall features, wall thickness, septa features, measurable enhancement of the wall and septa, presence of calcification, and presence of an enhancing soft-tissue component were used to train the Bayesian classifier. Four radiologists independently reviewed the MDCT images, and the probability of malignancy in each cyst was rated by the radiologists and the Bayesian classifier. The diagnostic performances of the radiologists' visual decisions and the Bayesian classifier were then compared using receiver operating characteristic (ROC) curve analysis. The sensitivity and specificity were also compared between the visual decisions and the Bayesian classifier.
The area under the ROC curve for predicting malignant renal cysts by the Bayesian classifier was greater than the visual decisions of three readers (reader 1, p = 0.02; reader 2, p < 0.01; reader 4, p = 0.02) and was similar to the visual decision of one reader (reader 3, p = 0.51). The specificity for predicting malignant renal cysts was greater by the Bayesian classifier than by the visual decisions in readers 2 (p = 0.04) and 4 (p = 0.02) and was similar in readers 1 (p = 0.68) and 3 (p = 1.00). In terms of sensitivity, there was no significant difference between the Bayesian classifier and the visual decisions in all four readers (p > 0.05).
For predicting malignant renal cysts on MDCT, the Bayesian classifier is feasible and may improve diagnostic performance.
本研究的目的是评估贝叶斯分类器在MDCT上预测恶性肾囊肿的可行性和实用性。
纳入93例经病理证实的复杂性囊肿。患者的年龄、性别以及囊肿的七个形态学特征,包括最大直径、壁特征、壁厚、分隔特征、壁和分隔的可测量强化、钙化的存在以及强化软组织成分的存在,用于训练贝叶斯分类器。四名放射科医生独立回顾MDCT图像,放射科医生和贝叶斯分类器对每个囊肿的恶性概率进行评分。然后使用受试者操作特征(ROC)曲线分析比较放射科医生的视觉判断和贝叶斯分类器的诊断性能。还比较了视觉判断和贝叶斯分类器之间的敏感性和特异性。
贝叶斯分类器预测恶性肾囊肿的ROC曲线下面积大于三位读者的视觉判断(读者1,p = 0.02;读者2,p < 0.01;读者4,p = 0.02)且与一位读者(读者3,p = 0.51)的视觉判断相似。贝叶斯分类器预测恶性肾囊肿的特异性高于读者2(p = 0.04)和读者4(p = 0.02)的视觉判断,且与读者1(p = 0.68)和读者3(p = 1.00)的视觉判断相似。在敏感性方面,贝叶斯分类器与所有四位读者的视觉判断之间无显著差异(p > 0.05)。
对于在MDCT上预测恶性肾囊肿,贝叶斯分类器是可行的,并且可能提高诊断性能。