Literature DB >> 20120934

[Prognosis of the IVF ICSI/ET procedure efficiency with the use of artificial neural networks among patients of the Department of Reproduction and Gynecological Endocrinology].

Robert Milewski1, Jacek Jamiołkowski, Justyna Milewska Anna, Jan Domitrz, Jacek Szamatowicz, Sławomir Wołczyński.   

Abstract

OBJECTIVES: Prognosis of pregnancy for patients treated with IVF ICSI/ET methods, using artificial neural networks.
MATERIAL AND METHODS: Retrospective study of 1007 cycles of infertility treatment of 899 patients of Department of Reproduction and Gynecological Endocrinology in Bialystok. The subjects were treated with IVF ICSI/ET method from August 2005 to September 2008.
RESULTS: Classifying artificial neural network is described in the paper Architecture of the network is three-layered perceptron consisting of 45 neurons in the input layer 14 neurons in the hidden layer and a single output neuron. The source data for the network are 36 variables. 24 of them are nominal variables and the rest are quantitative variables. Among non-pregnancy cases only 59 prognosis of the network were incorrect. The results of treatment were correctly forecast in 68.5% of cases. The pregnancy was accurately confirmed in 49.1% of cases and lack of pregnancy in 86.5% of cases.
CONCLUSIONS: Treatment of infertility with the use of in vitro fertilization methods continues to have too low efficiency per one treatment cycle. To improve this indicator it is necessary to find dependencies, which describe the model of IVF treatment. The application of advanced methods of bioinformatics allows to predict the result of the treatment more effectively With the help of artificial neural networks, we are able to forecast the failure of the treatment using IFV ICSI/ET procedure with almost 90% probability of certainty These possibilities can be used to predict negative cases.

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Year:  2009        PMID: 20120934

Source DB:  PubMed          Journal:  Ginekol Pol        ISSN: 0017-0011            Impact factor:   1.232


  4 in total

1.  Can novel early non-invasive biomarkers of embryo quality be identified with time-lapse imaging to predict live birth?

Authors:  J Barberet; C Bruno; E Valot; C Antunes-Nunes; L Jonval; J Chammas; C Choux; P Ginod; P Sagot; A Soudry-Faure; P Fauque
Journal:  Hum Reprod       Date:  2019-08-01       Impact factor: 6.918

Review 2.  Artificial intelligence in reproductive medicine.

Authors:  Renjie Wang; Wei Pan; Lei Jin; Yuehan Li; Yudi Geng; Chun Gao; Gang Chen; Hui Wang; Ding Ma; Shujie Liao
Journal:  Reproduction       Date:  2019-10       Impact factor: 3.906

3.  Use of Artificial Neural Networks and PCA to Predict Results of Infertility Treatment in the ICSI Method.

Authors:  A Mostaar; M R Sattari; S Hosseini; M R Deevband
Journal:  J Biomed Phys Eng       Date:  2019-12-01

Review 4.  Reporting on the Value of Artificial Intelligence in Predicting the Optimal Embryo for Transfer: A Systematic Review including Data Synthesis.

Authors:  Konstantinos Sfakianoudis; Evangelos Maziotis; Sokratis Grigoriadis; Agni Pantou; Georgia Kokkini; Anna Trypidi; Polina Giannelou; Athanasios Zikopoulos; Irene Angeli; Terpsithea Vaxevanoglou; Konstantinos Pantos; Mara Simopoulou
Journal:  Biomedicines       Date:  2022-03-17
  4 in total

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