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  1. The Use of Principal Component Analysis and Logistic Regression in Prediction of Infertility Treatment Outcome.Anna Justyna Milewska, Dorota Jankowska, Dorota Citko, Teresa Więsak, Brian Acacio & Robert Milewski - 2014 - Studies in Logic, Grammar and Rhetoric 39 (1):7-23.
    Principal Component Analysis is one of the data mining methods that can be used to analyze multidimensional datasets. The main objective of this method is a reduction of the number of studied variables with the mainte- nance of as much information as possible, uncovering the structure of the data, its visualization as well as classification of the objects within the space defined by the newly created components. PCA is very often used as a preliminary step in data preparation through the (...)
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  • Significance of Discriminant Analysis in Prediction of Pregnancy in IVF Treatment.Anna Justyna Milewska, Dorota Jankowska, Urszula Cwalina, Dorota Citko, Teresa Więsak, Brian Acacio & Robert Milewski - 2015 - Studies in Logic, Grammar and Rhetoric 43 (1):7-20.
    Many factors play an important role in prediction of infertility treatment outcome. The purpose of this study was to identify a set of variables that could fulfill criteria for prediction of pregnancy in IVF patients through the application of data mining – using the discriminant analysis method. The principle of this method is to establish a set of rules that allows one to place multi-dimensional objects into one of two analyzed groups. Six hundred and ten IVF cycles were included in (...)
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  • Prediction of Infertility Treatment Outcomes Using Classification Trees.Anna Justyna Milewska, Dorota Jankowska, Urszula Cwalina, Dorota Citko, Teresa Więsak, Brian Acacio & Robert Milewski - 2016 - Studies in Logic, Grammar and Rhetoric 47 (1):7-19.
    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 (...)
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  • Application of Artificial Neural Networks and Principal Component Analysis to Predict Results of Infertility Treatment Using the IVF Method.Robert Milewski, Dorota Jankowska, Urszula Cwalina, Anna Justyna Milewska, Dorota Citko, Teresa Więsak, Allen Morgan & Sławomir Wołczyński - 2016 - Studies in Logic, Grammar and Rhetoric 47 (1):33-46.
    There are high hopes for using the artificial neural networks technique to predict results of infertility treatment using the in vitro fertilization method. Some reports show superiority of the ANN approach over conventional methods. However, fully satisfactory results have not yet been achieved. Hence, there is a need to continue searching for new data describing the treatment process, as well as for new methods of extracting information from these data. There are also some reports that the use of principal component (...)
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  • Classification of Patients Treated for Infertility Using the IVF Method.Paweł Malinowski, Robert Milewski, Piotr Ziniewicz, Anna Justyna Milewska, Jan Czerniecki, Teresa Więsak, Allen Morgan, Dariusz Surowik & Sławomir Wołczyński - 2015 - Studies in Logic, Grammar and Rhetoric 43 (1):49-59.
    One of the most effective methods of infertility treatment is in vitro fertilization. Effectiveness of the treatment, as well as classification of the data obtained from it, is still an ongoing issue. Classifiers obtained so far are powerful, but even the best ones do not exhibit equal quality concerning possible treatment outcome predictions. Usually, lack of pregnancy is predicted far too often. This creates a constant need for further exploration of this issue. Careful use of different classification methods can, however, (...)
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