Equine Facial Action Coding System for determination of pain-related facial responses in videos of horses

Author:

Rashid MaheenORCID,Silventoinen Alina,Gleerup Karina B.,Andersen Pia H.

Abstract

1AbstractDuring the last decade, pain scales including facial expressions as indicators of pain have been developed for horses, mostly relying on direct observations or inspection of images. Despite differences in the research conditions and methodology the different scales focus on the same regions of the face, corresponding to moveable facial muscles related to the ears, eyes, nostrils, lips and chin. However, a detailed comparison of the facial activities occurring during pain is not possible. We used a Facial Action Coding System modified for horses to code and analyse video recordings from an earlier study of acute short-term experimental pain and from clinical cases with and without pain. We demonstrated for the first time EquiFACS based changes to pain in video of horses, using traditional statistical methods based on frequency, and novel analyses based on sliding observation windows and co-occurrence of facial actions. The most prominent differences of the experimental horses were related to the lower face actions chin raiser and nostril dilator, while less prominent, but significantly more frequent actions were related to the eye region, inner brow raiser (AU101), increased eye white (AD1), half blink (AU47), and ear rotator (EAD104). Ears forward (EAD101) and eye blink (AU145) were not associated to pain. Based on this we selected the two lower face actions for analysis of the clinical videos, and found that their co-occurrence within a window of 10 to 15 second gave 100% positive predictive values, as compared to the rating from three expert pain raters. Using our developed co-occurrence analyses we were surprised to detect that the chance of identifying three or more of the facial actions related to pain in 0.04 second sequence, corresponding to one frame, was below 3%, indicating that use of randomly selected images for pain scoring may be a very insensitive method.

Publisher

Cold Spring Harbor Laboratory

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