Litcius/Paper detail

Single-Nanoparticle Orientation Sensing by Deep Learning

Jingtian Hu, Tingting Liu, Priscilla Choo, Shengjie Wang, Thaddeus Reese, Alexander D. Sample, Teri W. Odom

2020ACS Central Science23 citationsDOIOpen Access PDF

Abstract

This paper describes a computational imaging platform to determine the orientation of anisotropic optical probes under differential interference contrast (DIC) microscopy. We established a deep-learning model based on data sets of DIC images collected from metal nanoparticle optical probes at different orientations. This model predicted the in-plane angle of gold nanorods with an error below 20°, the inherent limit of the DIC method. Using low-symmetry gold nanostars as optical probes, we demonstrated the detection of in-plane particle orientation in the full 0-360° range. We also showed that orientation predictions of the same particle were consistent even with variations in the imaging background. Finally, the deep-learning model was extended to enable simultaneous prediction of in-plane and out-of-plane rotation angles for a multibranched nanostar by concurrent analysis of DIC images measured at multiple wavelengths.

Topics & Concepts

Orientation (vector space)Differential interference contrast microscopyMaterials scienceNanorodAnisotropyParticle (ecology)OpticsNanoparticleRotation (mathematics)Plane (geometry)Artificial intelligenceMicroscopyBiological systemComputer scienceNanotechnologyPhysicsGeometryMathematicsGeologyOceanographyBiologyGold and Silver Nanoparticles Synthesis and ApplicationsPlasmonic and Surface Plasmon ResearchAdvanced Fluorescence Microscopy Techniques