Individual Detection of Patients with Parkinson Disease using Support Vector Machine Analysis of Diffusion Tensor Imaging Data: Initial Results

@article{Haller2012IndividualDO,
  title={Individual Detection of Patients with Parkinson Disease using Support Vector Machine Analysis of Diffusion Tensor Imaging Data: Initial Results},
  author={Sven Haller and Simon Badoud and D Nguyen and Valentina Garibotto and K Lovblad and Pr. Burkhard},
  journal={American Journal of Neuroradiology},
  year={2012},
  volume={33},
  pages={2123 - 2128}
}
BACKGROUND AND PURPOSE: Brain MR imaging is routinely performed in the work-up of suspected PD, yet its role is essentially limited to the exclusion of other pathologies. We performed a pattern-recognition analysis based on DTI data to detect subjects with PD at the individual level. MATERIALS AND METHODS: We included 40 consecutive patients with Parkinsonism suggestive of PD who had DTI at 3T, brain 123I ioflupane SPECT (DaTSCAN), and extensive neurologic testing including follow-up (17 PD… 
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The diagnostic accuracy of brain MRI to identifyAP as a group was not improved by the current analysis approach to DTI, though DTI measures could be of added value to identify AP subgroups.
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The classification of PD and PSP patients based on ADC features obtained from diffusion MRI datasets is a promising new approach for the differentiation of Parkinsonian syndromes in the broader context of decision support systems.
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Brain structural volumetric analysis with multiple logistic regression modeling can be a complementary tool for diagnosing Parkinson’s disease.
Diagnostic Accuracy of Parkinson Disease by Support Vector Machine (SVM) Analysis of 123I-FP-CIT Brain SPECT Data
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Putamen was the most discriminative descriptor for PD and the patient age influenced the classification accuracy, and SVM classifier was able to diagnose PD.
Utility of Multi-Modal MRI for Differentiating of Parkinson's Disease and Progressive Supranuclear Palsy Using Machine Learning
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It appears that morphology and brain iron metabolism markers may not provide additional value for classification compared to using DTI metrics alone, however, machine learnig models using regional brain microstructural integrity metrics computed from DTI datasets perform similar to the optimal multi-modal machine learning model.
Classification of degenerative parkinsonism subtypes by support-vector-machine analysis and striatal 123I-FP-CIT indices
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Semiquantitative 123I-FP-CIT SPECT striatal evaluation combined with SVM represents a promising approach to disentangle PD from non-degenerative conditions and from atypical PS at the early stage.
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