MACHINE LEARNING-BASED CLASSIFICATION OF HBV AND HCV-RELATED

Objective: It is crucial to know the underlying causes of hepa-tocellular carcinoma (HCC) for optimal management. This study aims to classify open access gene expression data of HCC pa-tients who have an HBV or HCV infection using the XGboost method.Material and Methods: This case-control study cons...

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Main Authors: Akbulut, S, kucukakcal, Z, Colak, C
Language:unknown
Published: 2023
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Online Access:http://hdl.handle.net/11616/86086
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spelling ftinonuuniv:oai:abakus.inonu.edu.tr:11616/86086 2023-05-15T18:11:30+02:00 MACHINE LEARNING-BASED CLASSIFICATION OF HBV AND HCV-RELATED Akbulut, S kucukakcal, Z Colak, C 2023-01-02T08:10:45Z http://hdl.handle.net/11616/86086 unknown http://hdl.handle.net/11616/86086 JOURNAL OF ISTANBUL FACULTY OF MEDICINE-ISTANBUL TIP FAKULTESI DERGISI 2023 ftinonuuniv 2023-01-05T18:01:38Z Objective: It is crucial to know the underlying causes of hepa-tocellular carcinoma (HCC) for optimal management. This study aims to classify open access gene expression data of HCC pa-tients who have an HBV or HCV infection using the XGboost method.Material and Methods: This case-control study considered the open-access gene expression data of patients with HBV-related HCC and HCV-related HCC. For this purpose, data from 17 patients with HBV+HCC and 17 patients with HCV+HCC were included. XGboost was constructed for the classification via ten-fold cross-validation. Accuracy, balanced accuracy, sensitivity, specificity, the positive predictive value, the negative predictive value, and F1 score performance metrics were evaluated for a model performance. Results: With the feature selection approach, 17 genes were chosen, and modeling was done using these input variables. Accuracy, balanced accuracy, sensitivity, specificity, positive predictive value, negative predictive value, and the F1 score obtained from the XGboost model were 97.1%, 97.1%, 94.1%, 100%, 100%, 94.4%, and 97%, respectively. Based on the variable importance findings from the XGboost, the ALDOC, GLUD2, TRAPPC10, FLJ12998, RPL39, KDELR2, and KIAA0446 genes can be employed as potential biomarkers for HBV-related HCC.Conclusion: As a result of the study, two different etiological factors (HBV and HCV) causing HCC were classified using a ma-chine learning-based prediction approach, and genes that could be biomarkers for HBV-related HCC were identified. After the resulting genes have been clinically validated in subsequent research, therapeutic procedures based on these genes can be established and their utility in clinical practice documented. C1 [Akbulut, Sami] Inonu Univ, Fac Med, Dept Gen Surg, Malatya, Turkey. [Akbulut, Sami; kucukakcal, Zeynep; Colak, Cemil] Inonu Univ, Fac Med, Dept Biostat & Med Informat, Malatya, Turkey. [Akbulut, Sami] Inonu Univ, Fac Med, Dept Publ Hlth, Malatya, Turkey. C3 Inonu University; Inonu University; ... Other/Unknown Material sami Unknown
institution Open Polar
collection Unknown
op_collection_id ftinonuuniv
language unknown
description Objective: It is crucial to know the underlying causes of hepa-tocellular carcinoma (HCC) for optimal management. This study aims to classify open access gene expression data of HCC pa-tients who have an HBV or HCV infection using the XGboost method.Material and Methods: This case-control study considered the open-access gene expression data of patients with HBV-related HCC and HCV-related HCC. For this purpose, data from 17 patients with HBV+HCC and 17 patients with HCV+HCC were included. XGboost was constructed for the classification via ten-fold cross-validation. Accuracy, balanced accuracy, sensitivity, specificity, the positive predictive value, the negative predictive value, and F1 score performance metrics were evaluated for a model performance. Results: With the feature selection approach, 17 genes were chosen, and modeling was done using these input variables. Accuracy, balanced accuracy, sensitivity, specificity, positive predictive value, negative predictive value, and the F1 score obtained from the XGboost model were 97.1%, 97.1%, 94.1%, 100%, 100%, 94.4%, and 97%, respectively. Based on the variable importance findings from the XGboost, the ALDOC, GLUD2, TRAPPC10, FLJ12998, RPL39, KDELR2, and KIAA0446 genes can be employed as potential biomarkers for HBV-related HCC.Conclusion: As a result of the study, two different etiological factors (HBV and HCV) causing HCC were classified using a ma-chine learning-based prediction approach, and genes that could be biomarkers for HBV-related HCC were identified. After the resulting genes have been clinically validated in subsequent research, therapeutic procedures based on these genes can be established and their utility in clinical practice documented. C1 [Akbulut, Sami] Inonu Univ, Fac Med, Dept Gen Surg, Malatya, Turkey. [Akbulut, Sami; kucukakcal, Zeynep; Colak, Cemil] Inonu Univ, Fac Med, Dept Biostat & Med Informat, Malatya, Turkey. [Akbulut, Sami] Inonu Univ, Fac Med, Dept Publ Hlth, Malatya, Turkey. C3 Inonu University; Inonu University; ...
author Akbulut, S
kucukakcal, Z
Colak, C
spellingShingle Akbulut, S
kucukakcal, Z
Colak, C
MACHINE LEARNING-BASED CLASSIFICATION OF HBV AND HCV-RELATED
author_facet Akbulut, S
kucukakcal, Z
Colak, C
author_sort Akbulut, S
title MACHINE LEARNING-BASED CLASSIFICATION OF HBV AND HCV-RELATED
title_short MACHINE LEARNING-BASED CLASSIFICATION OF HBV AND HCV-RELATED
title_full MACHINE LEARNING-BASED CLASSIFICATION OF HBV AND HCV-RELATED
title_fullStr MACHINE LEARNING-BASED CLASSIFICATION OF HBV AND HCV-RELATED
title_full_unstemmed MACHINE LEARNING-BASED CLASSIFICATION OF HBV AND HCV-RELATED
title_sort machine learning-based classification of hbv and hcv-related
publishDate 2023
url http://hdl.handle.net/11616/86086
genre sami
genre_facet sami
op_source JOURNAL OF ISTANBUL FACULTY OF MEDICINE-ISTANBUL TIP FAKULTESI DERGISI
op_relation http://hdl.handle.net/11616/86086
_version_ 1766184150699606016