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      Using an innovative stacked ensemble algorithm for the accurate prediction of preterm birth

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          Abstract

          Objective:

          A birth before the normal term of 38 weeks of gestation is called a preterm birth (PTB). It is one of the major reasons for neonatal death. The objective of this article was to predict PTB well in advance so that it was converted to a term birth.

          Material and Methods:

          This study uses the historical data of expectant mothers and an innovative stacked ensemble (SE) algorithm to predict PTB. The proposed algorithm stacks classifiers in multiple tiers. The accuracy of the classiffication is improved in every tier.

          Results:

          The experimental results from this study show that PTB can be predicted with more than 96% accuracy using innovative SE learning.

          Conclusion:

          The proposed approach helps physicians in Gynecology and Obstetrics departments to decide whether the expectant mother needs treatment. Treatment can be given to delay the birth only in patients for whom PTB is predicted, or in many cases to convert the PTB to a normal birth. This, in turn, can reduce the mortality of babies due to PTB.

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          Most cited references29

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          Stacked generalization

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            A study of cross-validation and bootstrap for accuracy estimation and model selection in

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              Diversity creation methods: a survey and categorisation

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                Author and article information

                Journal
                J Turk Ger Gynecol Assoc
                J Turk Ger Gynecol Assoc
                JTGGA
                Journal of the Turkish German Gynecological Association
                Galenos Publishing
                1309-0399
                1309-0380
                June 2019
                28 May 2019
                : 20
                : 2
                : 70-78
                Affiliations
                [1 ]Department of Computer Science and Engineering, B. S. Abdur Rahman Crescent Institute of Science and Technology, Chennai, India
                Author notes
                * Address for Correspondence: E-mail: pari_ramalingam@ 123456yahoo.com
                Author information
                https://orcid.org/
                https://orcid.org/
                https://orcid.org/
                Article
                20065
                10.4274/jtgga.galenos.2018.2018.0105
                6558358
                30501143
                fca81ed6-5e8b-40c9-905c-678d923688be
                © Copyright 2019 by the Turkish-German Gynecological Education and Research Foundation

                Journal of the Turkish-German Gynecological Association published by Galenos Publishing House.

                History
                : 1 August 2018
                : 30 November 2018
                Categories
                Original Investigation

                preterm birth,neonatal death,risk factors of preterm birth,stacked ensemble,stacked generalization,meta-learning

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