Jasmine Jade Butler, Chloé Aman, Marion Rivalan, Aurélie Fitoussi, Sandrine Parrot, Françoise Dellu-Hagedorn, Philippe De Deurwaerdère
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引用次数: 0
Abstract
The post-mortem measurement of tissue neurotransmitters is an interesting technique to address the gross biochemical activity. Its primary limitation is a lack of temporal resolution, although this is mitigated by enhanced spatial resolution, compared to in vivo methods. This neurochemical data is quantitative and requires no complex transformation, making it ideal to analyze neurochemical connectivity via the correlation of the biochemical signals between brain regions. These correlative approaches to quantitative measurements are fundamentally based on the variability of the data, an underdeveloped area of analysis in neurochemistry. One of the main reasons, as discussed in this Viewpoint, is that neurochemists recognize that variability in quantitative data stems not only from the biological variability, such as interindividual differences, but also from factors such as analytical devices. There are several ways to reduce variability caused by analytical and experimental biases through well-designed, precise protocols, allowing for the study of meaningful biological variability, such as interindividual differences between subjects.
期刊介绍:
ACS Chemical Neuroscience publishes high-quality research articles and reviews that showcase chemical, quantitative biological, biophysical and bioengineering approaches to the understanding of the nervous system and to the development of new treatments for neurological disorders. Research in the journal focuses on aspects of chemical neurobiology and bio-neurochemistry such as the following:
Neurotransmitters and receptors
Neuropharmaceuticals and therapeutics
Neural development—Plasticity, and degeneration
Chemical, physical, and computational methods in neuroscience
Neuronal diseases—basis, detection, and treatment
Mechanism of aging, learning, memory and behavior
Pain and sensory processing
Neurotoxins
Neuroscience-inspired bioengineering
Development of methods in chemical neurobiology
Neuroimaging agents and technologies
Animal models for central nervous system diseases
Behavioral research