Developing A Quantitative, Multiscale Imaging Approach to Identify Peripheral Mechanisms of Noxious and Innocuous Force Encoding in Mouse Models

NIH RePORTER · NIH · R21 · $244,764 · view on reporter.nih.gov ↗

Abstract

Populations of touch-sensitive afferents in the skin transduce mechanical stimuli into neural responses that inform the brain about our natural environment. There is a need to mechanistically understand how superficial and deep tissues, as well as mechanosensitive and nociceptive neurons, are engaged during touch. We currently have little quantitative understanding of how innocuous stimuli elicit pain after tissue injury, how touch-based manipulations relieve pain, or their exact impact, in terms of change in tissue stiffness or extensibility. The overarching goal of this exploratory project is to develop a new, multiscale in vivo imaging platform for monitoring the spatiotemporal dynamics of skin deformation and mechanosensory neuron activity. If successful, the project will break technical barriers and enable mechanistic studies of persistent pain and its relief by manual therapies in mouse models amenable to genetic manipulations. Recent studies that combine transgenic mouse models with calcium imaging or electrophysiology have identified genetically distinct populations of sensory neurons that respond preferentially to innocuous (e.g., brush, vibration) or noxious mechanical stimuli (e.g., hair pull). Currently, however, single point measurements of stimulus force or displacement are typical. To understand sensory encoding, we must instead ask – how does the skin move during touch, and how does these skin deformations lead to activation of sensory neurons? Such mechanical quantities ultimately recruit a population of sensory afferents to encode different qualities of touch. To address this technological gap, these studies will develop 3D computer vision and digital image correlation to directly quantify the distribution of stresses and strains over the entire surface of the skin, simultaneously with stimulus movement, and while recording from populations of sensory neurons in vivo. Aim 1 focuses on a non-invasive, imaging approach in mice to evaluate localized skin surface deformation, strain fields, and lateral stretch and motion, at high spatial (5 µm) and temporal resolution (1,000 frames/s), and computational modeling to estimate mechanical stress in four dimensions (x/y/z/time). Aim 2 will demonstrate the utility of these newly validated methods in contexts relevant for mechanistic studies of 1) mechanical pain and 2) manual therapies. To do so, the methods for estimating skin mechanics will be used during in vivo calcium imaging of DRG neurons and well-validated mouse models in two biological contexts, a well-established model of inflammatory pain in glabrous paw skin, as well as hair-bearing skin areas. The latter is an essential step in creating relevant mouse models for mechanistic studies of touch-based manual therapies such as massage. This project is innovative because it will reveal how dynamic changes in the stress and strain in skin drive the recruitment of distinct neural complements. Understanding their coupling is relevant...

Key facts

NIH application ID
10467144
Project number
1R21AT011980-01
Recipient
UNIVERSITY OF VIRGINIA
Principal Investigator
Gregory John Gerling
Activity code
R21
Funding institute
NIH
Fiscal year
2022
Award amount
$244,764
Award type
1
Project period
2022-04-15 → 2024-03-31