Park Jee Soo, Choi Soo Beom, Kim Hee Jung, Cho Nam Hoon, Kim Sang Wun, Kim Young Tae, Nam Eun Ji, Chung Jai Won, Kim Deok Won
*Department of Medical Engineering, Yonsei University College of Medicine; †Department of Medicine, Yonsei University College of Medicine, Seoul, Korea; ‡Graduate Program in Biomedical Engineering, Yonsei University, Seoul, Korea; and Department of §Obstetrics and Gynecology and ∥Pathology, Yonsei University College of Medicine, Seoul, Korea.
Int J Gynecol Cancer. 2016 Jan;26(1):104-13. doi: 10.1097/IGC.0000000000000566.
Serous borderline ovarian tumors (SBOTs) are a subtype of serous ovarian carcinoma with atypical proliferation. Frozen-section diagnosis has been used as an intraoperative diagnosis tool in supporting the fertility-sparing surgery by diagnosing SBOTs with accuracy of 48% to 79%. Using DNA microarray technology, we designed multicategory classification models to support frozen-section diagnosis within 30 minutes.
We systematically evaluated 6 machine learning algorithms and 3 feature selection methods using 5-fold cross-validation and a grid search on microarray data obtained from the National Center for Biotechnology Information. To validate the models and selected biomarkers, expression profiles were analyzed in tissue samples obtained from the Yonsei University College of Medicine.
The best accuracy of the optimal machine learning model was 97.3%. In addition, 5 features, including the expression of the putative biomarkers SNTN and AOX1, were selected to differentiate between normal, SBOT, and serous ovarian carcinoma groups. Different expression levels of SNTN and AOX1 were validated by real-time quantitative reverse-transcription polymerase chain reaction, Western blotting, and immunohistochemistry. A multinomial logistic regression model using SNTN and AOX1 alone was used to construct a simple-to-use equation that gave a diagnostic test accuracy of 91.9%.
We identified 2 biomarkers, SNTN and AOX1, that are likely involved in the pathogenesis and progression of ovarian tumors. An accurate diagnosis of ovarian tumor subclasses by application of the equation in conjunction with expression analysis of SNTN and AOX1 would offer a new accurate diagnosis tool in conjunction with frozen-section diagnosis within 30 minutes.
浆液性交界性卵巢肿瘤(SBOTs)是浆液性卵巢癌的一种具有非典型增生的亚型。冰冻切片诊断已被用作术中诊断工具,通过诊断SBOTs来支持保留生育功能的手术,其诊断准确率为48%至79%。我们利用DNA微阵列技术设计了多类别分类模型,以在30分钟内支持冰冻切片诊断。
我们使用5折交叉验证和网格搜索,对从美国国立生物技术信息中心获得的微阵列数据,系统评估了6种机器学习算法和3种特征选择方法。为了验证模型和选定的生物标志物,我们对从延世大学医学院获得的组织样本进行了表达谱分析。
最佳机器学习模型的最高准确率为97.3%。此外,选择了5个特征,包括假定生物标志物SNTN和AOX1的表达,以区分正常、SBOT和浆液性卵巢癌组。通过实时定量逆转录聚合酶链反应、蛋白质免疫印迹和免疫组织化学验证了SNTN和AOX1的不同表达水平。仅使用SNTN和AOX1的多项逻辑回归模型被用于构建一个易于使用的方程,该方程的诊断测试准确率为91.9%。
我们鉴定出2种生物标志物SNTN和AOX1,它们可能参与卵巢肿瘤的发病机制和进展。通过应用该方程并结合SNTN和AOX1的表达分析来准确诊断卵巢肿瘤亚类,将在30分钟内结合冰冻切片诊断提供一种新的准确诊断工具。