4.6 Article

Predicting Seminal Quality via Imbalanced Learning with Evolutionary Safe-Level Synthetic Minority Over-Sampling Technique

Journal

COGNITIVE COMPUTATION
Volume 13, Issue 4, Pages 833-844

Publisher

SPRINGER
DOI: 10.1007/s12559-019-09657-9

Keywords

Seminal quality; Imbalanced learning; Safe level; Synthetic minority over-sampling technique; Evolutionary algorithms

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The seminal quality has significantly declined in the past two decades, with research pointing to environmental factors, health status, and lifestyle habits as potential causes. Prediction of seminal quality is crucial for early diagnosis of infertility, and the use of artificial intelligence has shown promise in this area. A new synthetic minority over-sampling technique has been proposed to address class imbalance issues in seminal quality prediction, resulting in improved accuracy and performance compared to existing methods.
Seminal quality has fallen dramatically over the past two decades. Research indicates that environmental factors, health status, and life habits might lead to the decline. Prediction of seminal quality is very useful in the early diagnosis of infertile patients. Recently, artificial intelligence (AI) technologies have been applied to the study of the male fertility potential. As it is common in many real applications about cognitive computation, seminal quality prediction faces the problem of class imbalance, and conventional algorithms are often biased towards the majority class. In this paper, an evolutionary safe-level synthetic minority over-sampling technique (ESLSMOTE) is proposed to synthesize the minority instances along the same line with different weight degree, called safe level. The profile of seminal of an individual from the fertility dataset is predicted via three classification methods with ESLSMOTE. Important indicators, such as accuracy, precision, recall, receiver operating characteristic (ROC) curve, and F1-score, are used to evaluate the performance of the classifiers with ESLSMOTE based on a tenfold cross-validation scheme. The experimental results show that the proposed ESLSMOTE can significantly improve the accuracy of back-propagation neural network, adaptive boosting, and support vector machine. The highest area under the ROC curve (97.2%) is given by the ESLSMOTE-AdaBoost model. Experimental results indicate that the ESLSMOTE-based classifiers outperform current state-of-the-art methods on predicting the seminal quality in terms of the accuracy and the area under the ROC curve. As such, the ESLSMOTE-based classifiers have the capability of predicting the seminal quality with high accuracy.

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