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Studying BDNF/TrkB Signaling: Transcriptome Analysis from a Limited Number of Purified Adult or Aged Murine Brain Neurons

  • Chinnavuth Vatanashevanopakorn
  • Amit Grover
  • Arup R. Nath
  • Kevin Clark
  • Paul Sopp
  • Claus Nerlov
  • Liliana MinichielloEmail author
Protocol
Part of the Neuromethods book series (NM, volume 143)

Abstract

It is recognized by now that the basal ganglia contain some of the circuits most vulnerable to age-related effects. However, it is still unknown how these changes are regulated during aging. We have recently shown that loss of TrkB signaling in striatopallidal enkephalinergic (ENK+) neurons lead to age-dependent spontaneous hyperlocomotion, associated with reduced striatopallidal activation, demonstrating that BDNF-TrkB signaling in striatal ENK+ neurons contributes to the inhibitory control of locomotor behavior exerted by the indirect pathway. Hence, we have established a unique mouse model that provides a rare example of an age-dependent locomotor defect. Identification of the genes and associated molecular pathways relevant to the maintenance of locomotor control requires systematic, unbiased gene expression profiling of the aging striatal circuit from young adult and aged mouse brain, both in normal and TrkB-deficient conditions. For this purpose, we have chosen whole transcriptome analysis by RNA sequencing (RNA-Seq) that offers higher resolution than other methods. To achieve this we have established a protocol that allows for the isolation of fluorescently labeled neurons from adult (3 months) or aged (8 months) mouse brain for whole transcriptome analysis by RNA-Seq using a limited number (<200) of neurons. Neuronal subsets were genetically labeled in vivo with a fluorescent marker and isolated using a sucrose artificial cerebrospinal fluid (aCSF) solution and differential centrifugation before fluorescent activated cell sorting (FACS)-based purification. This was followed by direct cDNA synthesis using an optimized Smart-Seq method, resulting in the generation of robust libraries for Illumina sequencing. In contrast to previous methods used for neuronal gene profiling, this protocol can be used for high-throughput gene expression profiling from limited numbers of adult or aged brain neurons at moderate costs. The whole protocol described here takes 3–4 days from neuronal purification to preparation of cDNA libraries ready for Illumina sequencing.

Keywords:

Neuronal purification Adult and aged murine brain FACS-based purification Transcriptome analysis RNA-Seq 

Notes

Acknowledgments

We would like to thank members of the Minichiello and the Nerlov laboratories for the support they provided, Dr. JH Horn, for handling the mouse colony; Dr. SA Clark and Dr. C Waugh, for helping with FACS-sorting. C.V. was supported in part by the Faculty of Medicine Siriraj Hospital, Mahidol University. A.R.N. was supported by a Clarendon Scholarship. This work was supported by a BBSRC grant (BB/L021382/1) to L.M.

Author Contribution

C.V. developed the protocol, performed sample preparation for sorting, helped with the sample prep for Illumina Sequencing. A.R.N. helped to develop the protocol, A.G. processed the samples for Illumina Sequencing. C.V., A.G., and A.R.N. provided conceptual input. L.M. performed dissection of specific brain areas prior tissue dissociation. P.S. and K.C. operated the cell sorter. L.M. designed the study and together with C.N. provided theoretical input, contributed to the experimental plans, and supervised the project. L.M. wrote the manuscript with comments and contributions from all authors.

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Copyright information

© Springer Science+Business Media New York 2017

Authors and Affiliations

  • Chinnavuth Vatanashevanopakorn
    • 1
    • 2
    • 3
  • Amit Grover
    • 2
  • Arup R. Nath
    • 1
  • Kevin Clark
    • 2
  • Paul Sopp
    • 2
  • Claus Nerlov
    • 2
  • Liliana Minichiello
    • 1
    Email author
  1. 1.Department of PharmacologyUniversity of OxfordOxfordUK
  2. 2.MRC Molecular Haematology Unit, Weatherall Institute of Molecular MedicineUniversity of OxfordOxfordUK
  3. 3.Department of Biochemistry, Faculty of Medicine Siriraj HospitalMahidol UniversityBangkokThailand

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