Prediction of Infertility Treatment Outcomes Using Classification Trees
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23. Jan. 2017
Über diesen Artikel
Online veröffentlicht: 23. Jan. 2017
Seitenbereich: 7 - 19
DOI: https://doi.org/10.1515/slgr-2016-0043
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© 2016 Studies in Logic, Grammar and Rhetoric
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.
Infertility is currently a common problem with causes that are often unexplained, which complicates treatment. In many cases, the use of ART methods provides the only possibility of getting pregnant. Analysis of this type of data is very complex. More and more often, data mining methods or artificial intelligence techniques are appropriate for solving such problems. In this study, classification trees were used for analysis. This resulted in obtaining a group of patients characterized most likely to get pregnant while using in vitro fertilization.