Application of Nonlinear Models Combined with Conventional Laboratory Indicators for the Diagnosis and Differential Diagnosis of Ovarian Cancer

Author:

Zhang Tongshuo1ORCID,Pang Aibo2ORCID,Lyu Jungang3ORCID,Ren Hefei4ORCID,Song Jiangnan5ORCID,Zhu Feng1ORCID,Liu Jinlong6ORCID,Cui Yuntao7,Ling Cunbao2ORCID,Tian Yaping2

Affiliation:

1. Department of Laboratory Medicine and Pathology, Jiangsu Provincial Corps Hospital of Chinese People’s Armed Police Force (PAP), Yangzhou 225003, China

2. Center for Birth Defects Prevention and Control Technology Research, Chinese PLA General Hospital, Beijing 100853, China

3. Third Department of Internal Medicine, Beijing Corps Hospital of PAP, Beijing 100027, China

4. Department of Laboratory Medicine, The Second Affiliated Hospital, Naval Medical University, Shanghai 200003, China

5. Department of Obstetrics and Gynecology, The First Medical Centre, Chinese PLA General Hospital, Beijing 100853, China

6. Department of Obstetrics and Gynecology, The 79th Group Army Hospital of PLA, Liaoyang 111000, China

7. Department of Laboratory Medicine, Characteristic Medical Center of PAP, Tianjin 300162, China

Abstract

Existing biomarkers for ovarian cancer lack sensitivity and specificity. We compared the diagnostic efficacy of nonlinear machine learning and linear statistical models for diagnosing ovarian cancer using a combination of conventional laboratory indicators. We divided 901 retrospective samples into an ovarian cancer group and a control group, comprising non-ovarian malignant gynecological tumor (NOMGT), benign gynecological disease (BGD), and healthy control subgroups. Cases were randomly assigned to training and internal validation sets. Two linear (logistic regression (LR) and Fisher’s linear discriminant (FLD)) and three nonlinear models (support vector machine (SVM), random forest (RF), and artificial neural network (ANN)) were constructed using 22 conventional laboratory indicators and three demographic characteristics. Model performance was compared. In an independent prospectively recruited validation set, the order of diagnostic efficiency was RF, SVM, ANN, FLD, LR, and carbohydrate antigen 125 (CA125)-only (AUC, accuracy: 0.989, 95.6%; 0.985, 94.4%; 0.974, 93.4%; 0.915, 82.1%; 0.859, 80.1%; and 0.732, 73.0%, respectively). RF maintained satisfactory classification performance for identifying different ovarian cancer stages and for discriminating it from NOMGT-, BGD-, or CA125-positive control. Nonlinear models outperformed linear models, indicating that nonlinear machine learning models can efficiently use conventional laboratory indicators for ovarian cancer diagnosis.

Funder

Key Project “Proactive health and aging technology responses” of the National Key Research and Development Project of China

Publisher

MDPI AG

Subject

General Medicine

Reference30 articles.

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