Cargando…

Value of Rehabilitation Training for Children with Cerebral Palsy Diagnosed and Analyzed by Computed Tomography Imaging Information Features under Deep Learning

To analyze the brain CT imaging data of children with cerebral palsy (CP), deep learning-based electronic computed tomography (CT) imaging information characteristics were used, thereby providing help for the rehabilitation analysis of children with CP and comorbid epilepsy. The brain CT imaging dat...

Descripción completa

Detalles Bibliográficos
Autores principales: Zhang, Xi, Wang, Zhenfang, Liu, Jun, Bi, Lulin, Yan, Weilan, Yan, Yueyue
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8318752/
https://www.ncbi.nlm.nih.gov/pubmed/34336162
http://dx.doi.org/10.1155/2021/6472440
_version_ 1783730308494917632
author Zhang, Xi
Wang, Zhenfang
Liu, Jun
Bi, Lulin
Yan, Weilan
Yan, Yueyue
author_facet Zhang, Xi
Wang, Zhenfang
Liu, Jun
Bi, Lulin
Yan, Weilan
Yan, Yueyue
author_sort Zhang, Xi
collection PubMed
description To analyze the brain CT imaging data of children with cerebral palsy (CP), deep learning-based electronic computed tomography (CT) imaging information characteristics were used, thereby providing help for the rehabilitation analysis of children with CP and comorbid epilepsy. The brain CT imaging data of 73 children with CP were collected, who were outpatients or inpatients in our hospital. The images were randomly divided into two groups. One group was the artificial intelligence image group, and hybrid segmentation network (HSN) model was employed to analyze brain images to help the treatment. The other group was the control group, and original images were used to help diagnosis and treatment. The deep learning-based HSN was used to segment the CT image of the head of patients and was compared with other CNN methods. It was found that HSN had the highest Dice score (DSC) among all models. After treatment, six cases in the artificial intelligence image group returned to normal (20.7%), and the artificial intelligence image group was significantly higher than the control group (X(2) = 335191, P < 0.001). The cerebral hemodynamic changes were obviously different in the two groups of children before and after treatment. The VP of the cerebral artery in the child was (139.68 ± 15.66) cm/s after treatment, which was significantly faster than (131.84 ± 15.93) cm/s before treatment, P < 0.05. To sum up, the deep learning model can effectively segment the CP area, which can measure and assist the diagnosis of future clinical cases of children with CP. It can also improve medical efficiency and accurately identify the patient's focus area, which had great application potential in helping to identify the rehabilitation training results of children with CP.
format Online
Article
Text
id pubmed-8318752
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Hindawi
record_format MEDLINE/PubMed
spelling pubmed-83187522021-07-31 Value of Rehabilitation Training for Children with Cerebral Palsy Diagnosed and Analyzed by Computed Tomography Imaging Information Features under Deep Learning Zhang, Xi Wang, Zhenfang Liu, Jun Bi, Lulin Yan, Weilan Yan, Yueyue J Healthc Eng Research Article To analyze the brain CT imaging data of children with cerebral palsy (CP), deep learning-based electronic computed tomography (CT) imaging information characteristics were used, thereby providing help for the rehabilitation analysis of children with CP and comorbid epilepsy. The brain CT imaging data of 73 children with CP were collected, who were outpatients or inpatients in our hospital. The images were randomly divided into two groups. One group was the artificial intelligence image group, and hybrid segmentation network (HSN) model was employed to analyze brain images to help the treatment. The other group was the control group, and original images were used to help diagnosis and treatment. The deep learning-based HSN was used to segment the CT image of the head of patients and was compared with other CNN methods. It was found that HSN had the highest Dice score (DSC) among all models. After treatment, six cases in the artificial intelligence image group returned to normal (20.7%), and the artificial intelligence image group was significantly higher than the control group (X(2) = 335191, P < 0.001). The cerebral hemodynamic changes were obviously different in the two groups of children before and after treatment. The VP of the cerebral artery in the child was (139.68 ± 15.66) cm/s after treatment, which was significantly faster than (131.84 ± 15.93) cm/s before treatment, P < 0.05. To sum up, the deep learning model can effectively segment the CP area, which can measure and assist the diagnosis of future clinical cases of children with CP. It can also improve medical efficiency and accurately identify the patient's focus area, which had great application potential in helping to identify the rehabilitation training results of children with CP. Hindawi 2021-07-20 /pmc/articles/PMC8318752/ /pubmed/34336162 http://dx.doi.org/10.1155/2021/6472440 Text en Copyright © 2021 Xi Zhang 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
Zhang, Xi
Wang, Zhenfang
Liu, Jun
Bi, Lulin
Yan, Weilan
Yan, Yueyue
Value of Rehabilitation Training for Children with Cerebral Palsy Diagnosed and Analyzed by Computed Tomography Imaging Information Features under Deep Learning
title Value of Rehabilitation Training for Children with Cerebral Palsy Diagnosed and Analyzed by Computed Tomography Imaging Information Features under Deep Learning
title_full Value of Rehabilitation Training for Children with Cerebral Palsy Diagnosed and Analyzed by Computed Tomography Imaging Information Features under Deep Learning
title_fullStr Value of Rehabilitation Training for Children with Cerebral Palsy Diagnosed and Analyzed by Computed Tomography Imaging Information Features under Deep Learning
title_full_unstemmed Value of Rehabilitation Training for Children with Cerebral Palsy Diagnosed and Analyzed by Computed Tomography Imaging Information Features under Deep Learning
title_short Value of Rehabilitation Training for Children with Cerebral Palsy Diagnosed and Analyzed by Computed Tomography Imaging Information Features under Deep Learning
title_sort value of rehabilitation training for children with cerebral palsy diagnosed and analyzed by computed tomography imaging information features under deep learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8318752/
https://www.ncbi.nlm.nih.gov/pubmed/34336162
http://dx.doi.org/10.1155/2021/6472440
work_keys_str_mv AT zhangxi valueofrehabilitationtrainingforchildrenwithcerebralpalsydiagnosedandanalyzedbycomputedtomographyimaginginformationfeaturesunderdeeplearning
AT wangzhenfang valueofrehabilitationtrainingforchildrenwithcerebralpalsydiagnosedandanalyzedbycomputedtomographyimaginginformationfeaturesunderdeeplearning
AT liujun valueofrehabilitationtrainingforchildrenwithcerebralpalsydiagnosedandanalyzedbycomputedtomographyimaginginformationfeaturesunderdeeplearning
AT bilulin valueofrehabilitationtrainingforchildrenwithcerebralpalsydiagnosedandanalyzedbycomputedtomographyimaginginformationfeaturesunderdeeplearning
AT yanweilan valueofrehabilitationtrainingforchildrenwithcerebralpalsydiagnosedandanalyzedbycomputedtomographyimaginginformationfeaturesunderdeeplearning
AT yanyueyue valueofrehabilitationtrainingforchildrenwithcerebralpalsydiagnosedandanalyzedbycomputedtomographyimaginginformationfeaturesunderdeeplearning