Publication | Open Access
Longitudinal clustering analysis and prediction of Parkinson’s disease progression using radiomics and hybrid machine learning
46
Citations
79
References
2021
Year
This study moves beyond cross-sectional PD subtyping to clustering of longitudinal disease trajectories. We conclude that combining medical information with SPECT-based radiomics features, and optimal utilization of HMLSs, can identify distinct disease trajectories in PD patients, and enable effective prediction of disease trajectories from early year data.
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