Dendritic biophysics and evolution
Thesis: Ph. D. in Neuroscience, Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, February, 2021 === Cataloged from the official PDF version of thesis. "February 2021." === Includes bibliographical references (pages 190-207). === The biophysical features of...
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ndltd-MIT-oai-dspace.mit.edu-1721.1-1308122021-05-28T05:20:00Z Dendritic biophysics and evolution Beaulieu-Laroche, Lou. Mark Harnett. Massachusetts Institute of Technology. Department of Brain and Cognitive Sciences. Massachusetts Institute of Technology. Department of Brain and Cognitive Sciences Brain and Cognitive Sciences. Thesis: Ph. D. in Neuroscience, Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, February, 2021 Cataloged from the official PDF version of thesis. "February 2021." Includes bibliographical references (pages 190-207). The biophysical features of neurons are the building blocks of computation in the brain. Dendrites are the physical site of the vast majority of synaptic connections and can expand the information processing capabilities of neurons. Due to their complex morphological attributes and various ion channels, dendrites shape how thousands of inputs are integrated into behaviorally-relevant outputs at the level of individual neurons. However, several long-standing issues limit our understanding of dendritic biophysics. In addition to distorted electrophysiological measurements, prior studies have largely been limited to ex vivo preparations from rodent animal models, providing little insight for computation in the awake human brain. In this thesis, we overcome these limitations to provide new insights on biophysics at the intersection of dendritic morphology and evolution. In chapter 1, we demonstrate that voltage-clamp analysis, which was employed to derive much of our understanding of synaptic transmission, is incompatible with most synapses because they reside on electrically-compartmentalized spines. We also develop new approaches to provide accurate measurements of synaptic strength. Then, in chapter 2, we directly correlate somatic and distal dendritic activity in the awake mouse visual cortex to show an unexpectedly high degree of coupling in vivo. In chapter 3, we perform dendritic recordings in large human neurons to reveal distinct integrative properties from commonly studied rat neurons. Finally, in chapter 4, we characterize neurons in 10 mammalian species to extract evolutionary rules governing neuronal biophysics and uncover human specializations. Together, these four thesis projects expand our understanding of the influence of dendritic geometry and evolution on neuronal biophysics. by Lou Beaulieu-Laroche. Ph. D. in Neuroscience Ph.D.inNeuroscience Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences 2021-05-25T18:21:04Z 2021-05-25T18:21:04Z 2020 2021 Thesis https://hdl.handle.net/1721.1/130812 1252627400 eng MIT theses may be protected by copyright. Please reuse MIT thesis content according to the MIT Libraries Permissions Policy, which is available through the URL provided. http://dspace.mit.edu/handle/1721.1/7582 207 pages application/pdf Massachusetts Institute of Technology |
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Brain and Cognitive Sciences. Beaulieu-Laroche, Lou. Dendritic biophysics and evolution |
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Thesis: Ph. D. in Neuroscience, Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, February, 2021 === Cataloged from the official PDF version of thesis. "February 2021." === Includes bibliographical references (pages 190-207). === The biophysical features of neurons are the building blocks of computation in the brain. Dendrites are the physical site of the vast majority of synaptic connections and can expand the information processing capabilities of neurons. Due to their complex morphological attributes and various ion channels, dendrites shape how thousands of inputs are integrated into behaviorally-relevant outputs at the level of individual neurons. However, several long-standing issues limit our understanding of dendritic biophysics. In addition to distorted electrophysiological measurements, prior studies have largely been limited to ex vivo preparations from rodent animal models, providing little insight for computation in the awake human brain. In this thesis, we overcome these limitations to provide new insights on biophysics at the intersection of dendritic morphology and evolution. In chapter 1, we demonstrate that voltage-clamp analysis, which was employed to derive much of our understanding of synaptic transmission, is incompatible with most synapses because they reside on electrically-compartmentalized spines. We also develop new approaches to provide accurate measurements of synaptic strength. Then, in chapter 2, we directly correlate somatic and distal dendritic activity in the awake mouse visual cortex to show an unexpectedly high degree of coupling in vivo. In chapter 3, we perform dendritic recordings in large human neurons to reveal distinct integrative properties from commonly studied rat neurons. Finally, in chapter 4, we characterize neurons in 10 mammalian species to extract evolutionary rules governing neuronal biophysics and uncover human specializations. Together, these four thesis projects expand our understanding of the influence of dendritic geometry and evolution on neuronal biophysics. === by Lou Beaulieu-Laroche. === Ph. D. in Neuroscience === Ph.D.inNeuroscience Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences |
author2 |
Mark Harnett. |
author_facet |
Mark Harnett. Beaulieu-Laroche, Lou. |
author |
Beaulieu-Laroche, Lou. |
author_sort |
Beaulieu-Laroche, Lou. |
title |
Dendritic biophysics and evolution |
title_short |
Dendritic biophysics and evolution |
title_full |
Dendritic biophysics and evolution |
title_fullStr |
Dendritic biophysics and evolution |
title_full_unstemmed |
Dendritic biophysics and evolution |
title_sort |
dendritic biophysics and evolution |
publisher |
Massachusetts Institute of Technology |
publishDate |
2021 |
url |
https://hdl.handle.net/1721.1/130812 |
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AT beaulieularochelou dendriticbiophysicsandevolution |
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