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Computer-aided classification framework of Parkinsonian disorders using 11C-CFT PET imaging

Computer-aided classification framework of Parkinsonian disorders using 11C-CFT PET imaging
Computer-aided classification framework of Parkinsonian disorders using 11C-CFT PET imaging

Purpose: To investigate the usefulness of a novel computer-aided classification framework for the differential diagnosis of parkinsonian disorders (PDs) based on 11C-methyl-N-2β-carbomethoxy-3β-(4-fluorophenyl)-tropanel (11C-CFT) positron emission tomography (PET) imaging. Methods: Patients with different forms of PDs—including Parkinson's disease (PD), multiple system atrophy (MSA) and progressive supranuclear palsy (PSP)—underwent dopamine transporter (DAT) imaging with 11C-CFT PET. A novel multistep computer-aided classification framework—consisting of magnetic resonance imaging (MRI)-assisted PET segmentation, feature extraction and prediction, and automatic subject classification—was developed. A random forest method was used to assess the diagnostic relevance of different regions to the classification process. Finally, the performance of the computer-aided classification system was tested using various training strategies involving patients with early and advanced disease stages. Results: Accuracy values for identifying PD, MSA, and PSP were 85.0, 82.2, and 89.7%, respectively—with an overall accuracy of 80.4%. The caudate and putamen provided the highest diagnostic relevance to the proposed classification framework, whereas the contribution of midbrain was negligible. With the exception of sensitivity for diagnosing PSP, the strategy comprising both early and advanced disease stages performed better in terms of sensitivity, specificity, positive predictive value, and negative predictive value within each PDs subtype. Conclusions: The proposed computer-aided classification framework based on 11C-CFT PET imaging holds promise for improving the differential diagnosis of PDs.

C-CFT PET imaging, computer-aided diagnosis, multiple system atrophy, Parkinson's disease, progressive supranuclear palsy
1663-4365
Xu, Jiahang
c4afcbf6-c448-44b6-b69d-65532a6769a9
Xu, Qian
c14c91f5-4c68-40d6-a2fc-4b30dfbd3389
Liu, Shihong
29ffffcb-4d84-4574-8686-2f97420b533f
Li, Ling
dc9c8c11-ae75-4933-a332-0271030dbb26
Li, Lei
2da88502-0bd8-4e6b-8f7d-0c01a48b399e
Yen, Tzu Chen
e244a47c-003f-432c-b5d0-6bc1c20e377c
Wu, Jianjun
b5d3072d-431a-4650-9d04-9ce11d7c3a93
Wang, Jian
1083500f-0704-49e6-8f8b-54ab2df6df9c
Zuo, Chuantao
a805c58d-34e0-4480-ae0d-dbfc79ec68ed
Wu, Ping
bb7ce9c2-d7a0-4e52-b28a-5699391e9bc2
Zhuang, Xiahai
c58e977b-e70e-4b37-9acd-b7f8070d98a8
Xu, Jiahang
c4afcbf6-c448-44b6-b69d-65532a6769a9
Xu, Qian
c14c91f5-4c68-40d6-a2fc-4b30dfbd3389
Liu, Shihong
29ffffcb-4d84-4574-8686-2f97420b533f
Li, Ling
dc9c8c11-ae75-4933-a332-0271030dbb26
Li, Lei
2da88502-0bd8-4e6b-8f7d-0c01a48b399e
Yen, Tzu Chen
e244a47c-003f-432c-b5d0-6bc1c20e377c
Wu, Jianjun
b5d3072d-431a-4650-9d04-9ce11d7c3a93
Wang, Jian
1083500f-0704-49e6-8f8b-54ab2df6df9c
Zuo, Chuantao
a805c58d-34e0-4480-ae0d-dbfc79ec68ed
Wu, Ping
bb7ce9c2-d7a0-4e52-b28a-5699391e9bc2
Zhuang, Xiahai
c58e977b-e70e-4b37-9acd-b7f8070d98a8

Xu, Jiahang, Xu, Qian, Liu, Shihong, Li, Ling, Li, Lei, Yen, Tzu Chen, Wu, Jianjun, Wang, Jian, Zuo, Chuantao, Wu, Ping and Zhuang, Xiahai (2022) Computer-aided classification framework of Parkinsonian disorders using 11C-CFT PET imaging. Frontiers in Aging Neuroscience, 13, [792951]. (doi:10.3389/fnagi.2021.792951).

Record type: Article

Abstract

Purpose: To investigate the usefulness of a novel computer-aided classification framework for the differential diagnosis of parkinsonian disorders (PDs) based on 11C-methyl-N-2β-carbomethoxy-3β-(4-fluorophenyl)-tropanel (11C-CFT) positron emission tomography (PET) imaging. Methods: Patients with different forms of PDs—including Parkinson's disease (PD), multiple system atrophy (MSA) and progressive supranuclear palsy (PSP)—underwent dopamine transporter (DAT) imaging with 11C-CFT PET. A novel multistep computer-aided classification framework—consisting of magnetic resonance imaging (MRI)-assisted PET segmentation, feature extraction and prediction, and automatic subject classification—was developed. A random forest method was used to assess the diagnostic relevance of different regions to the classification process. Finally, the performance of the computer-aided classification system was tested using various training strategies involving patients with early and advanced disease stages. Results: Accuracy values for identifying PD, MSA, and PSP were 85.0, 82.2, and 89.7%, respectively—with an overall accuracy of 80.4%. The caudate and putamen provided the highest diagnostic relevance to the proposed classification framework, whereas the contribution of midbrain was negligible. With the exception of sensitivity for diagnosing PSP, the strategy comprising both early and advanced disease stages performed better in terms of sensitivity, specificity, positive predictive value, and negative predictive value within each PDs subtype. Conclusions: The proposed computer-aided classification framework based on 11C-CFT PET imaging holds promise for improving the differential diagnosis of PDs.

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More information

Published date: 1 February 2022
Additional Information: Publisher Copyright: Copyright © 2022 Xu, Xu, Liu, Li, Li, Yen, Wu, Wang, Zuo, Wu and Zhuang.
Keywords: C-CFT PET imaging, computer-aided diagnosis, multiple system atrophy, Parkinson's disease, progressive supranuclear palsy

Identifiers

Local EPrints ID: 488937
URI: http://eprints.soton.ac.uk/id/eprint/488937
ISSN: 1663-4365
PURE UUID: 7f750953-2296-496b-9bc6-af6585298998
ORCID for Lei Li: ORCID iD orcid.org/0000-0003-1281-6472

Catalogue record

Date deposited: 09 Apr 2024 17:07
Last modified: 10 Apr 2024 02:14

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Contributors

Author: Jiahang Xu
Author: Qian Xu
Author: Shihong Liu
Author: Ling Li
Author: Lei Li ORCID iD
Author: Tzu Chen Yen
Author: Jianjun Wu
Author: Jian Wang
Author: Chuantao Zuo
Author: Ping Wu
Author: Xiahai Zhuang

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