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IJFS-International Journal of Fertility and Sterility. 2017; 11 (3): 184-190
in English | IMEMR | ID: emr-192315

ABSTRACT

Background: In vitro fertilization [IVF] and intracytoplasmic sperm injection [ICSI] are two important subsets of the assisted reproductive techniques, used for the treatment of infertility. Predicting implantation outcome of IVF/ICSI or the chance of pregnancy is essential for infertile couples, since these treatments are complex and expensive with a low probability of conception


Materials and Methods: In this cross-sectional study, the data of 486 patients were collected using census method. The IVF/ICSI dataset contains 29 variables along with an identifier for each patient that is either negative or positive. Mean accuracy and mean area under the receiver operating characteristic [ROC] curve are calculated for the classifiers. Sensitivity, specificity, positive and negative predictive values, and likelihood ratios of classifiers are employed as indicators of performance. The state-of-art classifiers which are candidates for this study include support vector machines, recursive partitioning [RPART], random forest [RF], adaptive boosting, and one-nearest neighbor


Results: RF and RPART outperform the other comparable methods. The results revealed the areas under the ROC curve [AUC] as 84.23 and 82.05%, respectively


The importance of IVF/ICSI features was extracted from the output of RPART. Our findings demonstrate that the probability of pregnancy is low for women aged above 38


Conclusion: Classifiers RF and RPART are better at predicting IVF/ICSI cases compared to other decision makers that were tested in our study. Elicited decision rules of RPART determine useful predictive features of IVF/ICSI. Out of 20 factors, the age of woman, number of developed embryos, and serum estradiol level on the day of human chorionic gonadotropin administration are the three best features for such prediction

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