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Age Classification in Forensic Medicine Using Machine Learning Techniques

The aim of the study was to assess the capabilities of age determination (age group) at death using classification techniques by histomorphometric characteristics of osseous and cartilaginous tissue aging. MATERIALS AND METHODS: The study material was a database containing the findings of morphometr...

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Autores principales: Zolotenkova, G.V., Rogachev, A.I., Pigolkin, Y.I., Edelev, I.S., Borshchevskaya, V.N., Cameriere, R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Privolzhsky Research Medical University 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9376755/
https://www.ncbi.nlm.nih.gov/pubmed/35992998
http://dx.doi.org/10.17691/stm2022.14.1.02
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author Zolotenkova, G.V.
Rogachev, A.I.
Pigolkin, Y.I.
Edelev, I.S.
Borshchevskaya, V.N.
Cameriere, R.
author_facet Zolotenkova, G.V.
Rogachev, A.I.
Pigolkin, Y.I.
Edelev, I.S.
Borshchevskaya, V.N.
Cameriere, R.
author_sort Zolotenkova, G.V.
collection PubMed
description The aim of the study was to assess the capabilities of age determination (age group) at death using classification techniques by histomorphometric characteristics of osseous and cartilaginous tissue aging. MATERIALS AND METHODS: The study material was a database containing the findings of morphometric researches of osseous and cartilaginous tissue histologic specimens from 294 categorized male corpses aged 10–93 years. For data analysis and classification we used modern machine learning methods: k-NN, SVM, logistic regression, CatBoost, SGD, naive Bayes, random forest, nonlinear dimensionality reduction methods (t-SNE and uMAP), and recursive feature elimination for feature selection. RESULTS: The used techniques (algorithms) provided effective representation of a complex data set (76 histomorphometric features), allowing to reveal the cluster structure inside the low dimensional feature space, thus fitting the classifier becomes even more reasonable. During feature selection, we estimated their importance for age group classification and studied the relationship between classification quality and the number of features inside the feature space. Data pre-processing made it possible to get rid of noise and keep most informative features, thereby accelerating a learning process and improving the classification quality. Data projection showed more well-defined cluster structure in the space of selected features. The accuracy of establishing certain groups was equal to 90%. It proves high efficiency of machine learning techniques used for forensic age diagnostics based on histomorphometric findings.
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spelling pubmed-93767552022-08-19 Age Classification in Forensic Medicine Using Machine Learning Techniques Zolotenkova, G.V. Rogachev, A.I. Pigolkin, Y.I. Edelev, I.S. Borshchevskaya, V.N. Cameriere, R. Sovrem Tekhnologii Med Advanced Researches The aim of the study was to assess the capabilities of age determination (age group) at death using classification techniques by histomorphometric characteristics of osseous and cartilaginous tissue aging. MATERIALS AND METHODS: The study material was a database containing the findings of morphometric researches of osseous and cartilaginous tissue histologic specimens from 294 categorized male corpses aged 10–93 years. For data analysis and classification we used modern machine learning methods: k-NN, SVM, logistic regression, CatBoost, SGD, naive Bayes, random forest, nonlinear dimensionality reduction methods (t-SNE and uMAP), and recursive feature elimination for feature selection. RESULTS: The used techniques (algorithms) provided effective representation of a complex data set (76 histomorphometric features), allowing to reveal the cluster structure inside the low dimensional feature space, thus fitting the classifier becomes even more reasonable. During feature selection, we estimated their importance for age group classification and studied the relationship between classification quality and the number of features inside the feature space. Data pre-processing made it possible to get rid of noise and keep most informative features, thereby accelerating a learning process and improving the classification quality. Data projection showed more well-defined cluster structure in the space of selected features. The accuracy of establishing certain groups was equal to 90%. It proves high efficiency of machine learning techniques used for forensic age diagnostics based on histomorphometric findings. Privolzhsky Research Medical University 2022 2022-01-28 /pmc/articles/PMC9376755/ /pubmed/35992998 http://dx.doi.org/10.17691/stm2022.14.1.02 Text en https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY 4.0 license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Advanced Researches
Zolotenkova, G.V.
Rogachev, A.I.
Pigolkin, Y.I.
Edelev, I.S.
Borshchevskaya, V.N.
Cameriere, R.
Age Classification in Forensic Medicine Using Machine Learning Techniques
title Age Classification in Forensic Medicine Using Machine Learning Techniques
title_full Age Classification in Forensic Medicine Using Machine Learning Techniques
title_fullStr Age Classification in Forensic Medicine Using Machine Learning Techniques
title_full_unstemmed Age Classification in Forensic Medicine Using Machine Learning Techniques
title_short Age Classification in Forensic Medicine Using Machine Learning Techniques
title_sort age classification in forensic medicine using machine learning techniques
topic Advanced Researches
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9376755/
https://www.ncbi.nlm.nih.gov/pubmed/35992998
http://dx.doi.org/10.17691/stm2022.14.1.02
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