Prediction of a Cell-Class-Specific Mouse Mesoconnectome Using Gene Expression Data
-
Published:2020-05-24
Issue:4
Volume:18
Page:611-626
-
ISSN:1539-2791
-
Container-title:Neuroinformatics
-
language:en
-
Short-container-title:Neuroinform
Author:
Timonidis NestorORCID, Bakker Rembrandt, Tiesinga Paul
Abstract
AbstractReconstructing brain connectivity at sufficient resolution for computational models designed to study the biophysical mechanisms underlying cognitive processes is extremely challenging. For such a purpose, a mesoconnectome that includes laminar and cell-class specificity would be a major step forward. We analyzed the ability of gene expression patterns to predict cell-class and layer-specific projection patterns and assessed the functional annotations of the most predictive groups of genes. To achieve our goal we used publicly available volumetric gene expression and connectivity data and we trained computational models to learn and predict cell-class and layer-specific axonal projections using gene expression data. Predictions were done in two ways, namely predicting projection strengths using the expression of individual genes and using the co-expression of genes organized in spatial modules, as well as predicting binary forms of projection. For predicting the strength of projections, we found that ridge (L2-regularized) regression had the highest cross-validated accuracy with a median r2 score of 0.54 which corresponded for binarized predictions to a median area under the ROC value of 0.89. Next, we identified 200 spatial gene modules using a dictionary learning and sparse coding approach. We found that these modules yielded predictions of comparable accuracy, with a median r2 score of 0.51. Finally, a gene ontology enrichment analysis of the most predictive gene groups resulted in significant annotations related to postsynaptic function. Taken together, we have demonstrated a prediction workflow that can be used to perform multimodal data integration to improve the accuracy of the predicted mesoconnectome and support other neuroscience use cases.
Funder
H2020 Future and Emerging Technologies
Publisher
Springer Science and Business Media LLC
Subject
Information Systems,General Neuroscience,Software
Reference68 articles.
1. Amann, R., & Fuchs, B.M. (2008). Single-cell identification in microbial communities by improved fluorescence in situ hybridization techniques. Nature Reviews Microbiology, 6, 339–348. 2. Ambrosen, K.S., Herlau, T., Dyrby, T., Schmidt, M.N., & Mørup, M. (2013). Comparing structural brain connectivity by the infinite relational model. In Proceedings of the 3rd International Workshop on Pattern Recognition in Neuroimaging (PRNI), (Vol. 2013 pp. 50–53). 3. Anton-Sanchez, L., Bielza, C., Merchán-Pérez, A., Rodríguez, J.R., De Felipe, J., & Larrañaga, P. (2014). Three-dimensional distribution of cortical synapses: a replicated point pattern-based analysis. Frontiers in Neuroanatomy, 8, 85. 4. Baruch, L., Itzkovitz, S., Golan Mashiach, M., Shapiro, E., & Segal, E. (2008). Using expression profiles of caenorhabditis elegans neurons to identify genes that mediate synaptic connectivity. PLoS Computational Biology, 4, e1000120. 5. Betzel, R.F., Avena-Koenigsberger, A., Goñi, J., He, Y., de Reus, M.A., Griffa, A., Vértes, P.E., Mišic, B., Thirane, J.P., Hagmann, P., van den Heuvel, M., Zuo, X.N., Bullmore, E.T., & Sporns, O. (2015a). Generative models of the human connectome. NeuroImage, 124(A), 1054–1064.
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|