AUTHOR=Egger Robert , Dercksen Vincent J. , Udvary Daniel , Hege Hans-Christian , Oberlaender Marcel TITLE=Generation of dense statistical connectomes from sparse morphological data JOURNAL=Frontiers in Neuroanatomy VOLUME=8 YEAR=2014 URL=https://www.frontiersin.org/journals/neuroanatomy/articles/10.3389/fnana.2014.00129 DOI=10.3389/fnana.2014.00129 ISSN=1662-5129 ABSTRACT=
Sensory-evoked signal flow, at cellular and network levels, is primarily determined by the synaptic wiring of the underlying neuronal circuitry. Measurements of synaptic innervation, connection probabilities and subcellular organization of synaptic inputs are thus among the most active fields of research in contemporary neuroscience. Methods to measure these quantities range from electrophysiological recordings over reconstructions of dendrite-axon overlap at light-microscopic levels to dense circuit reconstructions of small volumes at electron-microscopic resolution. However, quantitative and complete measurements at subcellular resolution and mesoscopic scales to obtain all local and long-range synaptic in/outputs for any neuron within an entire brain region are beyond present methodological limits. Here, we present a novel concept, implemented within an interactive software environment called