A versatile computational algorithm for time-series data analysis and machine-learning models

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Abstract

Here we introduce Local Topological Recurrence Analysis (LoTRA), a simple computational approach for analyzing time-series data. Its versatility is elucidated using simulated data, Parkinsonian gait, and in vivo brain dynamics. We also show that this algorithm can be used to build a remarkably simple machine-learning model capable of outperforming deep-learning models in detecting Parkinson’s disease from a single digital handwriting test.

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Chomiak, T., Rasiah, N. P., Molina, L. A., Hu, B., Bains, J. S., & Füzesi, T. (2021). A versatile computational algorithm for time-series data analysis and machine-learning models. Npj Parkinson’s Disease, 7(1). https://doi.org/10.1038/s41531-021-00240-4

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