Cargando…

Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of (123)I-FP-CIT Brain SPECT Data: Implications of Putaminal Findings and Age

Brain single-photon-emission-computerized tomography (SPECT) with (123)I-ioflupane ((123)I-FP-CIT) is useful to diagnose Parkinson disease (PD). To investigate the diagnostic performance of (123)I-FP-CIT brain SPECT with semiquantitative analysis by Basal Ganglia V2 software (BasGan), we evaluated s...

Descripción completa

Detalles Bibliográficos
Autores principales: Palumbo, Barbara, Fravolini, Mario Luca, Buresta, Tommaso, Pompili, Filippo, Forini, Nevio, Nigro, Pasquale, Calabresi, Paolo, Tambasco, Nicola
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer Health 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4602813/
https://www.ncbi.nlm.nih.gov/pubmed/25501084
http://dx.doi.org/10.1097/MD.0000000000000228
_version_ 1782394797796884480
author Palumbo, Barbara
Fravolini, Mario Luca
Buresta, Tommaso
Pompili, Filippo
Forini, Nevio
Nigro, Pasquale
Calabresi, Paolo
Tambasco, Nicola
author_facet Palumbo, Barbara
Fravolini, Mario Luca
Buresta, Tommaso
Pompili, Filippo
Forini, Nevio
Nigro, Pasquale
Calabresi, Paolo
Tambasco, Nicola
author_sort Palumbo, Barbara
collection PubMed
description Brain single-photon-emission-computerized tomography (SPECT) with (123)I-ioflupane ((123)I-FP-CIT) is useful to diagnose Parkinson disease (PD). To investigate the diagnostic performance of (123)I-FP-CIT brain SPECT with semiquantitative analysis by Basal Ganglia V2 software (BasGan), we evaluated semiquantitative data of patients with suspect of PD by a support vector machine classifier (SVM), a powerful supervised classification algorithm. (123)I-FP-CIT SPECT with BasGan analysis was performed in 90 patients with suspect of PD showing mild symptoms (bradykinesia-rigidity and mild tremor). PD was confirmed in 56 patients, 34 resulted non-PD (essential tremor and drug-induced Parkinsonism). A clinical follow-up of at least 6 months confirmed diagnosis. To investigate BasGan diagnostic performance we trained SVM classification models featuring different descriptors using both a “leave-one-out” and a “five-fold” method. In the first study we used as class descriptors the semiquantitative radiopharmaceutical uptake values in the left (L) and right (R) putamen (P) and in the L and R caudate nucleus (C) for a total of 4 descriptors (CL, CR, PL, PR). In the second study each patient was described only by CL and CR, while in the third by PL and PR descriptors. Age was added as a further descriptor to evaluate its influence in the classification performance. (123)I-FP-CIT SPECT with BasGan analysis reached a classification performance higher than 73.9% in all the models. Considering the “Leave-one-out” method, PL and PR were better predictors (accuracy of 91% for all patients) than CL and CR descriptors; using PL, PR, CL, and CR diagnostic accuracy was similar to that of PL and PR descriptors in the different groups. Adding age as a further descriptor accuracy improved in all the models. The best results were obtained by using all the 5 descriptors both in PD and non-PD subjects (CR and CL + PR and PL + age = 96.4% and 94.1%, respectively). Similar results were observed for the “five-fold” method. (123)I-FP-CIT SPECT with BasGan analysis using SVM classifier was able to diagnose PD. Putamen was the most discriminative descriptor for PD and the patient age influenced the classification accuracy.
format Online
Article
Text
id pubmed-4602813
institution National Center for Biotechnology Information
language English
publishDate 2014
publisher Wolters Kluwer Health
record_format MEDLINE/PubMed
spelling pubmed-46028132015-10-27 Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of (123)I-FP-CIT Brain SPECT Data: Implications of Putaminal Findings and Age Palumbo, Barbara Fravolini, Mario Luca Buresta, Tommaso Pompili, Filippo Forini, Nevio Nigro, Pasquale Calabresi, Paolo Tambasco, Nicola Medicine (Baltimore) 6800 Brain single-photon-emission-computerized tomography (SPECT) with (123)I-ioflupane ((123)I-FP-CIT) is useful to diagnose Parkinson disease (PD). To investigate the diagnostic performance of (123)I-FP-CIT brain SPECT with semiquantitative analysis by Basal Ganglia V2 software (BasGan), we evaluated semiquantitative data of patients with suspect of PD by a support vector machine classifier (SVM), a powerful supervised classification algorithm. (123)I-FP-CIT SPECT with BasGan analysis was performed in 90 patients with suspect of PD showing mild symptoms (bradykinesia-rigidity and mild tremor). PD was confirmed in 56 patients, 34 resulted non-PD (essential tremor and drug-induced Parkinsonism). A clinical follow-up of at least 6 months confirmed diagnosis. To investigate BasGan diagnostic performance we trained SVM classification models featuring different descriptors using both a “leave-one-out” and a “five-fold” method. In the first study we used as class descriptors the semiquantitative radiopharmaceutical uptake values in the left (L) and right (R) putamen (P) and in the L and R caudate nucleus (C) for a total of 4 descriptors (CL, CR, PL, PR). In the second study each patient was described only by CL and CR, while in the third by PL and PR descriptors. Age was added as a further descriptor to evaluate its influence in the classification performance. (123)I-FP-CIT SPECT with BasGan analysis reached a classification performance higher than 73.9% in all the models. Considering the “Leave-one-out” method, PL and PR were better predictors (accuracy of 91% for all patients) than CL and CR descriptors; using PL, PR, CL, and CR diagnostic accuracy was similar to that of PL and PR descriptors in the different groups. Adding age as a further descriptor accuracy improved in all the models. The best results were obtained by using all the 5 descriptors both in PD and non-PD subjects (CR and CL + PR and PL + age = 96.4% and 94.1%, respectively). Similar results were observed for the “five-fold” method. (123)I-FP-CIT SPECT with BasGan analysis using SVM classifier was able to diagnose PD. Putamen was the most discriminative descriptor for PD and the patient age influenced the classification accuracy. Wolters Kluwer Health 2014-12-12 /pmc/articles/PMC4602813/ /pubmed/25501084 http://dx.doi.org/10.1097/MD.0000000000000228 Text en Copyright © 2014 Wolters Kluwer Health | Lippincott Williams & Wilkins http://creativecommons.org/licenses/by/4.0 This is an open access article distributed under the Creative Commons Attribution License 4.0, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. http://creativecommons.org/licenses/by/4.0
spellingShingle 6800
Palumbo, Barbara
Fravolini, Mario Luca
Buresta, Tommaso
Pompili, Filippo
Forini, Nevio
Nigro, Pasquale
Calabresi, Paolo
Tambasco, Nicola
Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of (123)I-FP-CIT Brain SPECT Data: Implications of Putaminal Findings and Age
title Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of (123)I-FP-CIT Brain SPECT Data: Implications of Putaminal Findings and Age
title_full Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of (123)I-FP-CIT Brain SPECT Data: Implications of Putaminal Findings and Age
title_fullStr Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of (123)I-FP-CIT Brain SPECT Data: Implications of Putaminal Findings and Age
title_full_unstemmed Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of (123)I-FP-CIT Brain SPECT Data: Implications of Putaminal Findings and Age
title_short Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of (123)I-FP-CIT Brain SPECT Data: Implications of Putaminal Findings and Age
title_sort diagnostic accuracy of parkinson disease by support vector machine (svm) analysis of (123)i-fp-cit brain spect data: implications of putaminal findings and age
topic 6800
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4602813/
https://www.ncbi.nlm.nih.gov/pubmed/25501084
http://dx.doi.org/10.1097/MD.0000000000000228
work_keys_str_mv AT palumbobarbara diagnosticaccuracyofparkinsondiseasebysupportvectormachinesvmanalysisof123ifpcitbrainspectdataimplicationsofputaminalfindingsandage
AT fravolinimarioluca diagnosticaccuracyofparkinsondiseasebysupportvectormachinesvmanalysisof123ifpcitbrainspectdataimplicationsofputaminalfindingsandage
AT burestatommaso diagnosticaccuracyofparkinsondiseasebysupportvectormachinesvmanalysisof123ifpcitbrainspectdataimplicationsofputaminalfindingsandage
AT pompilifilippo diagnosticaccuracyofparkinsondiseasebysupportvectormachinesvmanalysisof123ifpcitbrainspectdataimplicationsofputaminalfindingsandage
AT forininevio diagnosticaccuracyofparkinsondiseasebysupportvectormachinesvmanalysisof123ifpcitbrainspectdataimplicationsofputaminalfindingsandage
AT nigropasquale diagnosticaccuracyofparkinsondiseasebysupportvectormachinesvmanalysisof123ifpcitbrainspectdataimplicationsofputaminalfindingsandage
AT calabresipaolo diagnosticaccuracyofparkinsondiseasebysupportvectormachinesvmanalysisof123ifpcitbrainspectdataimplicationsofputaminalfindingsandage
AT tambasconicola diagnosticaccuracyofparkinsondiseasebysupportvectormachinesvmanalysisof123ifpcitbrainspectdataimplicationsofputaminalfindingsandage