DOAJ Open Access 2025

Bottom-up iterative anomalous diffusion detector (BI-ADD)

Junwoo Park Nataliya Sokolovska Clément Cabriel Ignacio Izeddin Judith Miné-Hattab

Abstrak

In recent years, the segmentation of short molecular trajectories with varying diffusive properties has drawn particular attention of researchers, since it allows studying the dynamics of a particle. In the past decade, machine learning methods have shown highly promising results, also in changepoint detection and segmentation tasks. Here, we introduce a novel iterative method to identify the changepoints in a molecular trajectory, i.e. frames, where the diffusive behavior of a particle changes. A trajectory in our case follows a fractional Brownian motion and we estimate the diffusive properties of the trajectories. The proposed Bottom-up iterative anomalous diffusion detector (BI-ADD) combines unsupervised and supervised learning methods to detect the changepoints. Our approach can be used for the analysis of molecular trajectories at the individual level and also be extended to multiple particle tracking, which is an important challenge in fundamental biology. We validated BI-ADD in various scenarios within the framework of the 2nd anomalous diffusion challenge 2024 dedicated to single particle tracking. Our method is implemented in Python and is publicly available for research purposes.

Penulis (5)

J

Junwoo Park

N

Nataliya Sokolovska

C

Clément Cabriel

I

Ignacio Izeddin

J

Judith Miné-Hattab

Format Sitasi

Park, J., Sokolovska, N., Cabriel, C., Izeddin, I., Miné-Hattab, J. (2025). Bottom-up iterative anomalous diffusion detector (BI-ADD). https://doi.org/10.1088/2515-7647/adfc19

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Informasi Jurnal
Tahun Terbit
2025
Sumber Database
DOAJ
DOI
10.1088/2515-7647/adfc19
Akses
Open Access ✓