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Best serum biomarker combination for ovarian cancer classification
Authors:Hye-Jeong Song  Eun-Suk Yang  Jong-Dae Kim  Chan-Young Park  Min-Sun Kyung  Yu-Seop Kim
Institution:1.Department of Convergence Software,Hallym University,Chuncheon,South Korea;2.Bio-IT Research Center,Hallym University,Chuncheon,South Korea;3.Department of Obstetrics and Hynecology,Hallym University Medical Center,Hwaseong,South Korea
Abstract:

Background

Screening test using CA-125 is the most common test for detecting ovarian cancer. However, the level of CA-125 is diverse by variable condition other than ovarian cancer. It has led to misdiagnosis of ovarian cancer.

Methods

In this paper, we explore the 16 serum biomarker for finding alternative biomarker combination to reduce misdiagnosis. For experiment, we use the serum samples that contain 101 cancer and 92 healthy samples. We perform two major tasks: Marker selection and Classification. For optimal marker selection, we use genetic algorithm, random forest, T-test and logistic regression. For classification, we compare linear discriminative analysis, K-nearest neighbor and logistic regression.

Results

The final results show that the logistic regression gives high performance for both tasks, and HE4-ELISA, PDGF-AA, Prolactin, TTR is the best biomarker combination for detecting ovarian cancer.

Conclusions

We find the combination which contains TTR and Prolactin gives high performance for cancer detection. Early detection of ovarian cancer can reduce high mortality rates. Finding a combination of multiple biomarkers for diagnostic tests with high sensitivity and specificity is very important.
Keywords:
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