
Automated preclinical detection of mechanical pain hypersensitivity and analgesia
Author(s) -
Zihe Zhang,
David P. Roberson,
Masakazu Kotoda,
Bruno Boivin,
James P Bohnslav,
Rafael GonzálezCano,
David A. Yarmolinsky,
Runa Lenfers Turnes,
Nivanthika K Wimalasena,
Shay Q Neufeld,
Lee Barrett,
Nara Lins Meira Quintão,
Victor Fattori,
Daniel G. Taub,
Alexander B Wiltschko,
Nick Andrews,
Christopher D. Harvey,
Sandeep Robert Datta,
Clifford J. Woolf
Publication year - 2022
Publication title -
pain
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.524
H-Index - 258
eISSN - 1872-6623
pISSN - 0304-3959
DOI - 10.1097/j.pain.0000000000002680
Subject(s) - computer science , analgesic , sedation , artificial intelligence , medicine , physical medicine and rehabilitation , machine learning , anesthesia
The lack of sensitive and robust behavioral assessments of pain in preclinical models has been a major limitation for both pain research and the development of novel analgesics. Here, we demonstrate a novel data acquisition and analysis platform that provides automated, quantitative, and objective measures of naturalistic rodent behavior in an observer-independent and unbiased fashion. The technology records freely behaving mice, in the dark, over extended periods for continuous acquisition of 2 parallel video data streams: (1) near-infrared frustrated total internal reflection for detecting the degree, force, and timing of surface contact and (2) simultaneous ongoing video graphing of whole-body pose. Using machine vision and machine learning, we automatically extract and quantify behavioral features from these data to reveal moment-by-moment changes that capture the internal pain state of rodents in multiple pain models. We show that these voluntary pain-related behaviors are reversible by analgesics and that analgesia can be automatically and objectively differentiated from sedation. Finally, we used this approach to generate a paw luminance ratio measure that is sensitive in capturing dynamic mechanical hypersensitivity over a period and scalable for high-throughput preclinical analgesic efficacy assessment.