Reliable deep learning in anomalous diffusion against out-of-distribution dynamics

Deep Learning models poses a signifcant challenge for real-world applications, where unknown diffusionmodels are common. We present a general framework for evaluating deep-learning-based out-of-distribution (OOD) dynamics-detection methods.

Reliable deep learning in anomalous diffusion against out-of-distribution dynamics

Abstract

Anomalous diffusion plays a crucial rule in understanding molecular-level dynamics by offering valuable insights into molecular interactions, mobility states and the physical properties of systems across both biological and materials sciences. Deep-learning techniques have recently outperformed conventional statistical methods in anomalous diffusion recognition. However, deep-learning networks are typically trained by data with limited distribution, which inevitably fail to recognize unknown diffusion models and misinterpret dynamics when confronted with out-of-distribution (OOD) scenarios. In this work, we present a general framework for evaluating deep-learning-based OOD dynamics-detection methods. We further develop a baseline approach that achieves robust OOD dynamics detection as well as accurate recognition of in-distribution anomalous diffusion. We demonstrate that this method enables a reliable characterization of complex behaviors across a wide range of experimentally diverse systems, including nicotinic acetylcholine receptors in membranes, fluorescent beads in dextran solutions and silver nanoparticles undergoing active endocytosis.

OOD dynamics detection for anomalous diffusion recognition

Introduction