Preoperative diagnosis of ovarian tumors using Bayesian kernel-based methods

被引:35
|
作者
Van Calster, B.
Timmerman, D.
Lu, C.
Suykens, J. A. K.
Valentine, L.
Van Holsbeke, C.
Amant, F.
Vergote, I.
Van Huffel, S.
机构
[1] Katholieke Univ Leuven, Dept Elect Engn, B-3001 Heverlee, Belgium
[2] Katholieke Univ Leuven Hosp, Dept Obstet & Gynecol, B-3000 Louvain, Belgium
[3] Univ Wales, Dept Comp Sci, Aberystwyth, Dyfed, Wales
[4] Lund Univ, Malmo Univ Hosp, Dept Obstet & Gynecol, Malmo, Sweden
关键词
bayesian evidence framework; least squares support vector machines; logistic regression; ovarian tumor classification; relevance vector machines; ultrasound;
D O I
10.1002/uog.3996
中图分类号
O42 [声学];
学科分类号
070206 ; 082403 ;
摘要
Objectives To develop flexible classifiers that predict malignancy in adnexal masses using a large database from nine centers. Methods The database consisted of 1066 patients with at least one persistent adnexal mass for which a large amount of clinical and ultrasound data were recorded. The outcome of interest was the histological classification of the adnexal mass as benign or malignant. The outcome was predicted using Bayesian least squares support vector machines in comparison with relevance vector machines. The models were developed on a training set (n = 754) and tested on a test set (n = 312). Results Twenty-five percent of the patients (n = 266) bad a malignant tumor. Variable selection resulted in a set of 12 variables for the models: age, maximal diameter of the ovary, maximal diameter of the solid component, personal history of ovarian cancer, hormonal therapy, very strong intratumoral blood flow (i.e. color score 4), ascites, presumed ovarian origin of tumor, multilocular-solid tumor, blood flow within papillary projections, irregular internal cyst wall and acoustic shadows. Test set area under the receiver-operating characteristics curve (AUC) for all models exceeded 0.940, with a sensitivity above 90% and a specificity above 80% for all models. The least squares support vector machine model with linear kernel performed very well, with an AUC of 0.946, 91% sensitivity and 84% specificity. The models performed well in the test sets of all the centers. Conclusions Bayesian kernel-based methods can accurately separate malignant from benign masses. The robustness of the models will be investigated in future studies. Copyright (c) 2007 ISUOG. Published by John Wiley & Sons, Ltd.
引用
收藏
页码:496 / 504
页数:9
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