Ensemble learning and ground-truth validation of synaptic connectivity inferred from spike trains

PLoS Comput Biol. 2024 Apr 29;20(4):e1011964. doi: 10.1371/journal.pcbi.1011964. eCollection 2024 Apr.

Abstract

Probing the architecture of neuronal circuits and the principles that underlie their functional organization remains an important challenge of modern neurosciences. This holds true, in particular, for the inference of neuronal connectivity from large-scale extracellular recordings. Despite the popularity of this approach and a number of elaborate methods to reconstruct networks, the degree to which synaptic connections can be reconstructed from spike-train recordings alone remains controversial. Here, we provide a framework to probe and compare connectivity inference algorithms, using a combination of synthetic ground-truth and in vitro data sets, where the connectivity labels were obtained from simultaneous high-density microelectrode array (HD-MEA) and patch-clamp recordings. We find that reconstruction performance critically depends on the regularity of the recorded spontaneous activity, i.e., their dynamical regime, the type of connectivity, and the amount of available spike-train data. We therefore introduce an ensemble artificial neural network (eANN) to improve connectivity inference. We train the eANN on the validated outputs of six established inference algorithms and show how it improves network reconstruction accuracy and robustness. Overall, the eANN demonstrated strong performance across different dynamical regimes, worked well on smaller datasets, and improved the detection of synaptic connectivity, especially inhibitory connections. Results indicated that the eANN also improved the topological characterization of neuronal networks. The presented methodology contributes to advancing the performance of inference algorithms and facilitates our understanding of how neuronal activity relates to synaptic connectivity.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Action Potentials* / physiology
  • Algorithms*
  • Animals
  • Computational Biology
  • Machine Learning
  • Microelectrodes
  • Models, Neurological*
  • Nerve Net / physiology
  • Neural Networks, Computer*
  • Neurons* / physiology
  • Patch-Clamp Techniques
  • Rats
  • Synapses* / physiology

Grants and funding

MS was funded by a Swiss Data Science Center project grant (C18-10, https://www.datascience.ch/), by the two Cantons of Basel through a Personalized Medicine project (PMB-01-18) granted by ETH Zurich (https://ethz.ch/), and AH was supported by the European Research Council Advanced Grant 694829 ‘neuroXscales’ (https://erc.europa.eu/). The funders were not involved in the study design, data collection and analysis, decision to publish, or preparation of the manuscript.