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FARCI: Fast and Robust Connectome Inference

Saber Meamardoost, Mahasweta Bhattacharya, Eun Jung Hwang, Takaki Komiyama, Claudia Mewes, Linbing Wang, Ying Zhang, Rudiyanto Gunawan

2021Brain Sciences10 citationsDOIOpen Access PDF

Abstract

The inference of neuronal connectome from large-scale neuronal activity recordings, such as two-photon Calcium imaging, represents an active area of research in computational neuroscience. In this work, we developed FARCI (Fast and Robust Connectome Inference), a MATLAB package for neuronal connectome inference from high-dimensional two-photon Calcium fluorescence data. We employed partial correlations as a measure of the functional association strength between pairs of neurons to reconstruct a neuronal connectome. We demonstrated using in silico datasets from the Neural Connectomics Challenge (NCC) and those generated using the state-of-the-art simulator of Neural Anatomy and Optimal Microscopy (NAOMi) that FARCI provides an accurate connectome and its performance is robust to network sizes, missing neurons, and noise levels. Moreover, FARCI is computationally efficient and highly scalable to large networks. In comparison with the best performing connectome inference algorithm in the NCC, Generalized Transfer Entropy (GTE), and Fluorescence Single Neuron and Network Analysis Package (FluoroSNNAP), FARCI produces more accurate networks over different network sizes, while providing significantly better computational speed and scaling.

Topics & Concepts

ConnectomeConnectomicsInferenceComputer scienceBiological neural networkScalabilityHuman Connectome ProjectCalcium imagingArtificial intelligenceArtificial neural networkNeuroscienceMachine learningFunctional connectivityBiologyChemistryDatabaseCalciumOrganic chemistryNeural dynamics and brain functionAdvanced Fluorescence Microscopy TechniquesCell Image Analysis Techniques