Medical imaging is nowadays a pillar in diagnostics and therapeutic follow-up. Current research tries to integrate established—but ionizing—tomographic techniques with technologies offering reduced radiation exposure. Diffuse Optical Tomography (DOT) uses non-ionizing light in the Near-Infrared (NIR) window to reconstruct optical coefficients in living beings, providing functional indications about the composition of the investigated organ/tissue. Due to predominant light scattering at NIR wavelengths, DOT reconstruction is, however, a severely ill-conditioned inverse problem. Conventional reconstruction approaches based on variational methods show severe weaknesses when dealing also with mildly complex cases and/or are computationally very intensive. In this work we explore deep learning techniques for DOT inversion. Namely, we propose a fully data-driven approach based on a modularity concept: first data and originating signal are separately processed via autoencoders, then the corresponding low-dimensional latent spaces are connected via a bridging network which acts at the same time as regularizer.
A Modular Deep Learning-based Approach for Diffuse Optical Tomography Reconstruction / A. Benfenati, P. Causin, M. Quinteri. - In: NUMERICAL FUNCTIONAL ANALYSIS AND OPTIMIZATION. - ISSN 0163-0563. - (2025), pp. 1-33. [Epub ahead of print] [10.1080/01630563.2025.2523483]
A Modular Deep Learning-based Approach for Diffuse Optical Tomography Reconstruction
A. BenfenatiPrimo
;P. Causin
Penultimo
;
2025
Abstract
Medical imaging is nowadays a pillar in diagnostics and therapeutic follow-up. Current research tries to integrate established—but ionizing—tomographic techniques with technologies offering reduced radiation exposure. Diffuse Optical Tomography (DOT) uses non-ionizing light in the Near-Infrared (NIR) window to reconstruct optical coefficients in living beings, providing functional indications about the composition of the investigated organ/tissue. Due to predominant light scattering at NIR wavelengths, DOT reconstruction is, however, a severely ill-conditioned inverse problem. Conventional reconstruction approaches based on variational methods show severe weaknesses when dealing also with mildly complex cases and/or are computationally very intensive. In this work we explore deep learning techniques for DOT inversion. Namely, we propose a fully data-driven approach based on a modularity concept: first data and originating signal are separately processed via autoencoders, then the corresponding low-dimensional latent spaces are connected via a bridging network which acts at the same time as regularizer.| File | Dimensione | Formato | |
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