4.6 Article

Efficient and accurate intensity diffraction tomography of multiple-scattering samples

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OPTICS EXPRESS
卷 31, 期 11, 页码 18274-18289

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Optica Publishing Group
DOI: 10.1364/OE.486296

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Optical Diffraction Tomography (ODT) is a label-free method to quantitatively estimate the 3D refractive index (RI) distributions of microscopic samples. A new and robust multi-slice model is proposed to efficiently model the tomographic image formation for strongly scattering objects illuminated over a wide range of angles, resulting in reconstructions of higher fidelity compared to conventional methods. Rigorous solutions to Maxwell's equations are used as ground truth for testing.
Optical Diffraction Tomography (ODT) is a label-free method to quantitatively estimate the 3D refractive index (RI) distributions of microscopic samples. Recently, significant efforts were directed towards methods to model multiple-scattering objects. The fidelity of reconstructions rely on accurately modelling light-matter interactions, but the efficient simulation of light propagation through high-RI structures over a large range of illumination angles is still challenging. Here we present a solution dealing with these problems, proposing a method that allows one to efficiently model the tomographic image formation for strongly scattering objects illuminated over a wide range of angles. Instead of propagating tilted plane waves we apply rotations on the illuminated object and optical field and formulate a new and robust multi-slice model suitable for high-RI contrast structures. We test reconstructions made by our approach against simulations and experiments, using rigorous solutions to Maxwell's equations as ground truth. We find the proposed method to produce reconstructions of higher fidelity compared to conventional multi-slice methods, especially for the challenging case of strongly scattering samples where conventional reconstruction methods fail.

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