Dopamine Transporter SPECT Image Classification for Neurodegenerative Parkinsonism via Diffusion Maps and Machine Learning Classifiers
Jun-En Ding, Chi-Hsiang Chu, Mong-Na Lo Huang, Chien-Ching Hsu

TL;DR
This study introduces an automatic classification method for DaT-SPECT images using diffusion maps and machine learning, achieving high accuracy in distinguishing normal from abnormal cases in Parkinsonism diagnosis.
Contribution
The paper presents a novel combination of diffusion maps, Nyström extension, and ensemble classifiers for robust, accurate SPECT image classification in Parkinsonism, outperforming other manifold methods and CNNs.
Findings
Diffusion maps achieved 98% accuracy on PPMI dataset.
The method outperformed LLE, Isomap, and Kernel PCA in accuracy and robustness.
High classification accuracy demonstrated on clinical datasets.
Abstract
Neurodegenerative parkinsonism can be assessed by dopamine transporter single photon emission computed tomography (DaT-SPECT). Although generating images is time consuming, these images can show interobserver variability and they have been visually interpreted by nuclear medicine physicians to date. Accordingly, this study aims to provide an automatic and robust method based on Diffusion Maps and machine learning classifiers to classify the SPECT images into two types, namely Normal and Abnormal DaT-SPECT image groups. In the proposed method, the 3D images of N patients are mapped to an N by N pairwise distance matrix and are visualized in Diffusion Maps coordinates. The images of the training set are embedded into a low-dimensional space by using diffusion maps. Moreover, we use Nystr\"om's out-of-sample extension, which embeds new sample points as the testing set in the reduced space.…
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Taxonomy
TopicsParkinson's Disease Mechanisms and Treatments · Advanced Neuroimaging Techniques and Applications · Neurological disorders and treatments
Methods3 Dimensional Convolutional Neural Network · Diffusion
