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Published in: Tumor Biology 2/2016

01-02-2016

Development of a multi-marker model combining HE4, CA125, progesterone, and estradiol for distinguishing benign from malignant pelvic masses in postmenopausal women

Authors: Pengjun Zhang, Chuanxin Wang, Liming Cheng, Peng Zhang, Lin Guo, Wanli Liu, Zhongying Zhang, Yanchun Huang, Qishui Ou, Xinyu Wen, Yaping Tian

Published in: Tumor Biology | Issue 2/2016

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Abstract

The purpose of this study was to evaluate HE4, CA125, progesterone (Prog), and estradiol (E2) for differentiating pelvic masses in postmenopausal women and aimed to build a multi-marker model which may improve the diagnostic value. HE4, CA125, Prog, and E2 were detected in 57 benign pelvic masses (BPM) and 92 epithelial ovarian cancer (EOC) patients. A total of 66.66 % of the BPM and EOC serum samples were used for building the differentiation model, and the remaining 33.33 % of the BPM and EOC serum samples were used for validation of the differentiation model. After comparing by Z score statistics, HE4 + CA125 + E2 model was chosen as the best multi-marker model. In the training group, the area under curve of the HE4 + CA125 + E2 model was 0.97 (0.93, 1.00), sensitivities of the model for distinguishing BPM from EOC, from early EOC, and from advanced EOC were 90.16, 86.21, and 95.65 %; specificities were 92.11, 92.11, and 92.11 %. In the validation group, sensitivities of HE4 + CA125 + E2 model for distinguishing BPM from EOC, from early EOC, and from advanced EOC were 96.77, 100.00, and 87.50 %, specificities were 84.21, 100.00, and 84.21 %. The multi-marker model showed significant improvement when compared to CA125 or HE4, and it might be an effective pelvic mass differentiation method.
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Metadata
Title
Development of a multi-marker model combining HE4, CA125, progesterone, and estradiol for distinguishing benign from malignant pelvic masses in postmenopausal women
Authors
Pengjun Zhang
Chuanxin Wang
Liming Cheng
Peng Zhang
Lin Guo
Wanli Liu
Zhongying Zhang
Yanchun Huang
Qishui Ou
Xinyu Wen
Yaping Tian
Publication date
01-02-2016
Publisher
Springer Netherlands
Published in
Tumor Biology / Issue 2/2016
Print ISSN: 1010-4283
Electronic ISSN: 1423-0380
DOI
https://doi.org/10.1007/s13277-015-4037-3

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