PREDICTION OF DISEASE STAGE IN PATIENTS WITH ADENOMYOSIS USING CLASSIFICATION TREE

Aim. This study was designed to develop the mathematical prediction model of adenomyosis spread stages according to the results of clinical examination using the classification tree statistical method.Materials and methods. During this study we conducted the sampling of 84 patients with adenomyosis....

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Main Authors: L. Yu. KARAKHALIS, N. S. PAPOVA, A. A. KHALAFYAN, V. A. AKINSHINA
Format: Article
Language:Russian
Published: Ministry of Healthcare of the Russian Federation. “Kuban State Medical University” 2018-10-01
Series:Кубанский научный медицинский вестник
Subjects:
Online Access:https://ksma.elpub.ru/jour/article/view/1296
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author L. Yu. KARAKHALIS
N. S. PAPOVA
A. A. KHALAFYAN
V. A. AKINSHINA
author_facet L. Yu. KARAKHALIS
N. S. PAPOVA
A. A. KHALAFYAN
V. A. AKINSHINA
author_sort L. Yu. KARAKHALIS
collection DOAJ
description Aim. This study was designed to develop the mathematical prediction model of adenomyosis spread stages according to the results of clinical examination using the classification tree statistical method.Materials and methods. During this study we conducted the sampling of 84 patients with adenomyosis. By means of nonparametric correlation analysis we identified the indicators  which were interconnected with the disease stage and prediction  according to the results of clinical examination of the patients by  means of the classification tree statistical method.Results. We managed to build a suitable classification tree that helped to reach the compromise between the tree complexity and  the amount of false classifications. This method allows us to define  to role (significance) of the predictors in the classification model.Conclusion. The creation of software applications automatizes the classification procedure and makes it possible for medical staff who don’t have specialized training in data analysis sphere to use it.
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institution Matheson Library
issn 1608-6228
2541-9544
language Russian
publishDate 2018-10-01
publisher Ministry of Healthcare of the Russian Federation. “Kuban State Medical University”
record_format Article
series Кубанский научный медицинский вестник
spelling doaj-art-04146ad20bca49d0a85736a6434e68f02025-08-04T13:05:13ZrusMinistry of Healthcare of the Russian Federation. “Kuban State Medical University”Кубанский научный медицинский вестник1608-62282541-95442018-10-01254374210.25207/1608-6228-2018-25-4-37-42980PREDICTION OF DISEASE STAGE IN PATIENTS WITH ADENOMYOSIS USING CLASSIFICATION TREEL. Yu. KARAKHALIS0N. S. PAPOVA1A. A. KHALAFYAN2V. A. AKINSHINA3Federal State Budgetary Educational Institution of Higher Education Kuban State Medical University of the Ministry of Healthcare of the Russian FederationFederal State Budgetary Educational Institution of Higher Education Kuban State Medical University of the Ministry of Healthcare of the Russian FederationKuban State UniversityKuban State UniversityAim. This study was designed to develop the mathematical prediction model of adenomyosis spread stages according to the results of clinical examination using the classification tree statistical method.Materials and methods. During this study we conducted the sampling of 84 patients with adenomyosis. By means of nonparametric correlation analysis we identified the indicators  which were interconnected with the disease stage and prediction  according to the results of clinical examination of the patients by  means of the classification tree statistical method.Results. We managed to build a suitable classification tree that helped to reach the compromise between the tree complexity and  the amount of false classifications. This method allows us to define  to role (significance) of the predictors in the classification model.Conclusion. The creation of software applications automatizes the classification procedure and makes it possible for medical staff who don’t have specialized training in data analysis sphere to use it.https://ksma.elpub.ru/jour/article/view/1296adenomyosispredictionmathematical model
spellingShingle L. Yu. KARAKHALIS
N. S. PAPOVA
A. A. KHALAFYAN
V. A. AKINSHINA
PREDICTION OF DISEASE STAGE IN PATIENTS WITH ADENOMYOSIS USING CLASSIFICATION TREE
Кубанский научный медицинский вестник
adenomyosis
prediction
mathematical model
title PREDICTION OF DISEASE STAGE IN PATIENTS WITH ADENOMYOSIS USING CLASSIFICATION TREE
title_full PREDICTION OF DISEASE STAGE IN PATIENTS WITH ADENOMYOSIS USING CLASSIFICATION TREE
title_fullStr PREDICTION OF DISEASE STAGE IN PATIENTS WITH ADENOMYOSIS USING CLASSIFICATION TREE
title_full_unstemmed PREDICTION OF DISEASE STAGE IN PATIENTS WITH ADENOMYOSIS USING CLASSIFICATION TREE
title_short PREDICTION OF DISEASE STAGE IN PATIENTS WITH ADENOMYOSIS USING CLASSIFICATION TREE
title_sort prediction of disease stage in patients with adenomyosis using classification tree
topic adenomyosis
prediction
mathematical model
url https://ksma.elpub.ru/jour/article/view/1296
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AT aakhalafyan predictionofdiseasestageinpatientswithadenomyosisusingclassificationtree
AT vaakinshina predictionofdiseasestageinpatientswithadenomyosisusingclassificationtree