Vladimir Rancic

Vladimir Rancic

University of Alberta

H-index: 11

North America-Canada

About Vladimir Rancic

Vladimir Rancic, With an exceptional h-index of 11 and a recent h-index of 10 (since 2020), a distinguished researcher at University of Alberta, specializes in the field of Neuroscience, locomotor activity, Ca-imaging, computational analysis.

His recent articles reflect a diverse array of research interests and contributions to the field:

A sensitive and specific genetically-encoded potassium ion biosensor for in vivo applications across the tree of life

NMDA enhances and glutamate attenuates synchrony of spontaneous phase-locked locus coeruleus network rhythm in newborn rat brain slices

A sensitive and specific genetically encodable biosensor for potassium ions

Recent insights into the rhythmogenic core of the locomotor CPG

Mapping the dynamic recruitment of spinal neurons during fictive locomotion

Vladimir Rancic Information

University

Position

___

Citations(all)

1107

Citations(since 2020)

644

Cited By

723

hIndex(all)

11

hIndex(since 2020)

10

i10Index(all)

12

i10Index(since 2020)

12

Email

University Profile Page

Google Scholar

Vladimir Rancic Skills & Research Interests

Neuroscience

locomotor activity

Ca-imaging

computational analysis

Top articles of Vladimir Rancic

A sensitive and specific genetically-encoded potassium ion biosensor for in vivo applications across the tree of life

PLoS biology

2022/9/6

NMDA enhances and glutamate attenuates synchrony of spontaneous phase-locked locus coeruleus network rhythm in newborn rat brain slices

Brain Sciences

2022/5/16

Recent insights into the rhythmogenic core of the locomotor CPG

2021/1/30

Vladimir Rancic
Vladimir Rancic

H-Index: 8

Mapping the dynamic recruitment of spinal neurons during fictive locomotion

Journal of Neuroscience

2020/12/9

Vladimir Rancic
Vladimir Rancic

H-Index: 8

Klaus Ballanyi
Klaus Ballanyi

H-Index: 23

See List of Professors in Vladimir Rancic University(University of Alberta)

Co-Authors

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