Cargando…

A Machine Learning Model Based on Unsupervised Clustering Multihabitat to Predict the Pathological Grading of Meningiomas

PURPOSE: We aim to develop and validate a machine learning model by enhanced MRI to determine the pathological grading of meningiomas with unsupervised clustering image analysis method, which are multihabitat to reflect the inherent heterogeneity of tumors. MATERIALS AND METHODS: A total of 120 pati...

Descripción completa

Detalles Bibliográficos
Autores principales: Wang, Xinghao, Li, Jia, Sun, Jing, Liu, Wenjuan, Cai, Linkun, Zhao, Pengfei, Yang, Zhenghan, Lv, Han, Wang, Zhenchang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9484898/
https://www.ncbi.nlm.nih.gov/pubmed/36132071
http://dx.doi.org/10.1155/2022/8955227
_version_ 1784791973872271360
author Wang, Xinghao
Li, Jia
Sun, Jing
Liu, Wenjuan
Cai, Linkun
Zhao, Pengfei
Yang, Zhenghan
Lv, Han
Wang, Zhenchang
author_facet Wang, Xinghao
Li, Jia
Sun, Jing
Liu, Wenjuan
Cai, Linkun
Zhao, Pengfei
Yang, Zhenghan
Lv, Han
Wang, Zhenchang
author_sort Wang, Xinghao
collection PubMed
description PURPOSE: We aim to develop and validate a machine learning model by enhanced MRI to determine the pathological grading of meningiomas with unsupervised clustering image analysis method, which are multihabitat to reflect the inherent heterogeneity of tumors. MATERIALS AND METHODS: A total of 120 patients with meningiomas confirmed by postoperative pathology were included in the study, including 60 patients with low-grade meningiomas (WHO grade I) and 60 patients with high-grade meningiomas (WHO grade II and WHO grade III). All patients underwent complete head enhanced magnetic resonance scans before surgery or any anti-tumor treatment. Enrolled patients in the group received surgical resection and obtained postoperative pathological data. The patients in the training group (84 people) and the test group (36 people) were randomly divided into two groups according to the ratio of 7 to 3. Multi-habitat features were extracted from MRI images based on enhanced T1. Machine learning method was used to model, which was used to distinguish high-grade meningioma from low-grade meningioma. At the same time, the obtained machine learning model was calibrated and evaluated. RESULTS: In patients with low-grade meningioma and high-grade meningioma, we found significant differences in Silhouette coefficient (P<0.05). In the machine learning model, the area under the curve was 0.838 in the training group (sensitivity, 67.65%; specificity, 88.82%) and 0.73 in the test group (sensitivity, 69.05%; specificity, 71.43%). After the analysis of calibration curve and decision curve analysis, the model had shown the potential of great application value. CONCLUSIONS: Multi-habitat analysis based on enhanced MRI (T1) could accurately predict the pathological grading of meningiomas. This unsupervised image-based method could reflect the direct heterogeneity between high-grade meningiomas and low-grade meningiomas, which is of great significance for patients' treatment and prevention of recurrence.
format Online
Article
Text
id pubmed-9484898
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Hindawi
record_format MEDLINE/PubMed
spelling pubmed-94848982022-09-20 A Machine Learning Model Based on Unsupervised Clustering Multihabitat to Predict the Pathological Grading of Meningiomas Wang, Xinghao Li, Jia Sun, Jing Liu, Wenjuan Cai, Linkun Zhao, Pengfei Yang, Zhenghan Lv, Han Wang, Zhenchang Biomed Res Int Research Article PURPOSE: We aim to develop and validate a machine learning model by enhanced MRI to determine the pathological grading of meningiomas with unsupervised clustering image analysis method, which are multihabitat to reflect the inherent heterogeneity of tumors. MATERIALS AND METHODS: A total of 120 patients with meningiomas confirmed by postoperative pathology were included in the study, including 60 patients with low-grade meningiomas (WHO grade I) and 60 patients with high-grade meningiomas (WHO grade II and WHO grade III). All patients underwent complete head enhanced magnetic resonance scans before surgery or any anti-tumor treatment. Enrolled patients in the group received surgical resection and obtained postoperative pathological data. The patients in the training group (84 people) and the test group (36 people) were randomly divided into two groups according to the ratio of 7 to 3. Multi-habitat features were extracted from MRI images based on enhanced T1. Machine learning method was used to model, which was used to distinguish high-grade meningioma from low-grade meningioma. At the same time, the obtained machine learning model was calibrated and evaluated. RESULTS: In patients with low-grade meningioma and high-grade meningioma, we found significant differences in Silhouette coefficient (P<0.05). In the machine learning model, the area under the curve was 0.838 in the training group (sensitivity, 67.65%; specificity, 88.82%) and 0.73 in the test group (sensitivity, 69.05%; specificity, 71.43%). After the analysis of calibration curve and decision curve analysis, the model had shown the potential of great application value. CONCLUSIONS: Multi-habitat analysis based on enhanced MRI (T1) could accurately predict the pathological grading of meningiomas. This unsupervised image-based method could reflect the direct heterogeneity between high-grade meningiomas and low-grade meningiomas, which is of great significance for patients' treatment and prevention of recurrence. Hindawi 2022-09-12 /pmc/articles/PMC9484898/ /pubmed/36132071 http://dx.doi.org/10.1155/2022/8955227 Text en Copyright © 2022 Xinghao Wang et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Wang, Xinghao
Li, Jia
Sun, Jing
Liu, Wenjuan
Cai, Linkun
Zhao, Pengfei
Yang, Zhenghan
Lv, Han
Wang, Zhenchang
A Machine Learning Model Based on Unsupervised Clustering Multihabitat to Predict the Pathological Grading of Meningiomas
title A Machine Learning Model Based on Unsupervised Clustering Multihabitat to Predict the Pathological Grading of Meningiomas
title_full A Machine Learning Model Based on Unsupervised Clustering Multihabitat to Predict the Pathological Grading of Meningiomas
title_fullStr A Machine Learning Model Based on Unsupervised Clustering Multihabitat to Predict the Pathological Grading of Meningiomas
title_full_unstemmed A Machine Learning Model Based on Unsupervised Clustering Multihabitat to Predict the Pathological Grading of Meningiomas
title_short A Machine Learning Model Based on Unsupervised Clustering Multihabitat to Predict the Pathological Grading of Meningiomas
title_sort machine learning model based on unsupervised clustering multihabitat to predict the pathological grading of meningiomas
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9484898/
https://www.ncbi.nlm.nih.gov/pubmed/36132071
http://dx.doi.org/10.1155/2022/8955227
work_keys_str_mv AT wangxinghao amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT lijia amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT sunjing amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT liuwenjuan amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT cailinkun amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT zhaopengfei amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT yangzhenghan amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT lvhan amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT wangzhenchang amachinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT wangxinghao machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT lijia machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT sunjing machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT liuwenjuan machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT cailinkun machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT zhaopengfei machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT yangzhenghan machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT lvhan machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas
AT wangzhenchang machinelearningmodelbasedonunsupervisedclusteringmultihabitattopredictthepathologicalgradingofmeningiomas