Methodology for Designing Models Predicting Success of Infertility Treatment

Abstract Background: The prediction models for infertility treatment success have presented since 25 years ago. There are scientific principles for designing and applying the prediction models that is also used to predict the success rate of infertility treatment. The purpose of this study is to pr...

Full description

Bibliographic Details
Main Authors: Alireza Zarinara, Mohammad Mahdi Akhondi, Hojjat Zeraati, Koorsh Kamali, Kazem Mohammad
Format: Article
Language:fas
Published: Arak Medical University 2016-09-01
Series:Majallah-i dānishgāh-i ̒ulūm-i pizishkī-i Arāk
Subjects:
Online Access:http://amuj.arakmu.ac.ir/article-1-4209-en.pdf
id doaj-be05a4042d784b5bbf9006624bd8a5c7
record_format Article
spelling doaj-be05a4042d784b5bbf9006624bd8a5c72020-11-24T23:28:13ZfasArak Medical UniversityMajallah-i dānishgāh-i ̒ulūm-i pizishkī-i Arāk1735-53382008-644X2016-09-011964656Methodology for Designing Models Predicting Success of Infertility TreatmentAlireza Zarinara0Mohammad Mahdi Akhondi1Hojjat Zeraati2Koorsh Kamali3Kazem Mohammad4Ph.D Student, Reproductive Biotechnology, Research Center, Jahad Daneshgahi Modern Technologies Institute of Medical Sciences, Avicenna, Tehran, Iran.Professor, Reproductive Biotechnology Research Center, Jahad Daneshgahi Modern Technologies Institute of Medical Sciences, Avicenna, Tehran. Iran.Professor, Tehran University of Medical Sciences, Tehran, Iran.Assistant professor, Reproductive Biotechnology Research Center, Jahad Daneshgahi Modern Technologies Institute of Medical Sciences, Avicenna, Tehran. Iran. Professor, Tehran University of Medical Sciences, Tehran, Iran.Abstract Background: The prediction models for infertility treatment success have presented since 25 years ago. There are scientific principles for designing and applying the prediction models that is also used to predict the success rate of infertility treatment. The purpose of this study is to provide basic principles for designing the model to predic infertility treatment success. Materials and Methods: In this paper, the principles for developing predictive models are explained and then the design of such models in infertility treatments is described in more details by explaining one sample. Results: The important principles for models that firstly are described are: identifying and defining the purpose, expected function of model, input data that will be used to develop a model: type of intervention or diagnostic procedures that can lead to changes in the samples and output definition or expected result of model function. Further, characteristics of predictive factors in final model, drawing the information flowchart, internal and external validation and attention to the analysis programme of results are the important subjects that have been described. Conclusion: If predictive models are used properly, can help treatment team and patients to achive best treatment in ART. http://amuj.arakmu.ac.ir/article-1-4209-en.pdfPredictive modelInfertility treatmentTreatment success.
collection DOAJ
language fas
format Article
sources DOAJ
author Alireza Zarinara
Mohammad Mahdi Akhondi
Hojjat Zeraati
Koorsh Kamali
Kazem Mohammad
spellingShingle Alireza Zarinara
Mohammad Mahdi Akhondi
Hojjat Zeraati
Koorsh Kamali
Kazem Mohammad
Methodology for Designing Models Predicting Success of Infertility Treatment
Majallah-i dānishgāh-i ̒ulūm-i pizishkī-i Arāk
Predictive model
Infertility treatment
Treatment success.
author_facet Alireza Zarinara
Mohammad Mahdi Akhondi
Hojjat Zeraati
Koorsh Kamali
Kazem Mohammad
author_sort Alireza Zarinara
title Methodology for Designing Models Predicting Success of Infertility Treatment
title_short Methodology for Designing Models Predicting Success of Infertility Treatment
title_full Methodology for Designing Models Predicting Success of Infertility Treatment
title_fullStr Methodology for Designing Models Predicting Success of Infertility Treatment
title_full_unstemmed Methodology for Designing Models Predicting Success of Infertility Treatment
title_sort methodology for designing models predicting success of infertility treatment
publisher Arak Medical University
series Majallah-i dānishgāh-i ̒ulūm-i pizishkī-i Arāk
issn 1735-5338
2008-644X
publishDate 2016-09-01
description Abstract Background: The prediction models for infertility treatment success have presented since 25 years ago. There are scientific principles for designing and applying the prediction models that is also used to predict the success rate of infertility treatment. The purpose of this study is to provide basic principles for designing the model to predic infertility treatment success. Materials and Methods: In this paper, the principles for developing predictive models are explained and then the design of such models in infertility treatments is described in more details by explaining one sample. Results: The important principles for models that firstly are described are: identifying and defining the purpose, expected function of model, input data that will be used to develop a model: type of intervention or diagnostic procedures that can lead to changes in the samples and output definition or expected result of model function. Further, characteristics of predictive factors in final model, drawing the information flowchart, internal and external validation and attention to the analysis programme of results are the important subjects that have been described. Conclusion: If predictive models are used properly, can help treatment team and patients to achive best treatment in ART.
topic Predictive model
Infertility treatment
Treatment success.
url http://amuj.arakmu.ac.ir/article-1-4209-en.pdf
work_keys_str_mv AT alirezazarinara methodologyfordesigningmodelspredictingsuccessofinfertilitytreatment
AT mohammadmahdiakhondi methodologyfordesigningmodelspredictingsuccessofinfertilitytreatment
AT hojjatzeraati methodologyfordesigningmodelspredictingsuccessofinfertilitytreatment
AT koorshkamali methodologyfordesigningmodelspredictingsuccessofinfertilitytreatment
AT kazemmohammad methodologyfordesigningmodelspredictingsuccessofinfertilitytreatment
_version_ 1725550206739546112