Litcius/Paper detail

Attention mechanism-based locally connected network for accurate and stable reconstruction in Cerenkov luminescence tomography

Xiaoning Zhang, Meishan Cai, Lishuang Guo, Zeyu Zhang, Biluo Shen, Xiaojun Zhang, Zhenhua Hu, Jie Tian

2021Biomedical Optics Express14 citationsDOIOpen Access PDF

Abstract

Cerenkov luminescence tomography (CLT) is a novel and highly sensitive imaging technique, which could obtain the three-dimensional distribution of radioactive probes to achieve accurate tumor detection. However, the simplified radiative transfer equation and ill-conditioned inverse problem cause a reconstruction error. In this study, a novel attention mechanism based locally connected (AMLC) network was proposed to reduce barycenter error and improve morphological restorability. The proposed AMLC network consisted of two main parts: a fully connected sub-network for providing a coarse reconstruction result, and a locally connected sub-network based on an attention matrix for refinement. Both numerical simulations and in vivo experiments were conducted to show the superiority of the AMLC network in accuracy and stability over existing methods (MFCNN, KNN-LC network). This method improved CLT reconstruction performance and promoted the application of machine learning in optical imaging research.

Topics & Concepts

Diffuse optical imagingInverse problemIterative reconstructionComputer scienceOpticsTomographyStability (learning theory)Radiative transferLuminescencePhysicsComputer visionAlgorithmNetwork tomographyInverseOptical tomographyReconstruction algorithmArtificial intelligenceMatrix (chemical analysis)Data transmissionImage processingOptical imagingTransmission (telecommunications)Conjugate gradient methodDistribution (mathematics)Computed tomographyOptical Imaging and Spectroscopy TechniquesRandom lasers and scattering mediaAdvanced Optical Sensing Technologies