| Literature DB >> 30267138 |
Sebastian D McBride1, A Jennifer Morton2.
Abstract
Understanding the cognitive capacities of animals is important, because (a) several animal models of human neurodegenerative disease are considered poor representatives of the human equivalent and (b) cognitive capacities may provide insight into alternative animal models. We used a three-stage process of cognitive and neuroanatomical comparison (using sheep as an example) to assess the appropriateness of a species to model human brain function. First, a cognitive task was defined via a reinforcement-learning algorithm where values/constants in the algorithm were taken as indirect measures of neurophysiological attributes. Second, cognitive data (values/constants) were generated for the example species (sheep) and compared to other species. Third, cognitive data were compared with neuroanatomical metrics for each species (endocranial volume, gyrification index, encephalisation quotient, and number of cortical neurons). Four breeds of sheep (n = 15/sheep) were tested using the two-choice discrimination-reversal task. The 'reversal index' was used as a measure of constants within the learning algorithm. Reversal index data ranked sheep as third in a table of species that included primates, dogs, and pigs. Across all species, number of cortical neurons correlated strongest against the reversal index (r2 = 0.66, p = 0.0075) followed by encephalization quotient (r2 = 0.42, p = 0.03), endocranial volume (r2 = 0.30, p = 0.08), and gyrification index (r2 = 0.16, p = 0.23). Sheep have a high predicted level of cognitive capacity and are thus a valid alternative model for neurodegenerative research. Using learning algorithms within cognitive tasks increases the resolution of methods of comparative cognition and can help to identify the most relevant species to model human brain function and dysfunction.Entities:
Keywords: Animal model; Brain; Cognition; Sheep
Mesh:
Year: 2018 PMID: 30267138 PMCID: PMC6267686 DOI: 10.1007/s00221-018-5370-8
Source DB: PubMed Journal: Exp Brain Res ISSN: 0014-4819 Impact factor: 1.972
Description of the four breeds of sheep used in the experiment
| Breed | Origin of breed | Morphology | Production traits | Environment |
|---|---|---|---|---|
| Blue-faced Leicester | Lowland breed from Northern England | White, roman nose with long upright ears. 70–105 kg | Meat and wool | Kept on lowland on rye-grass swards and supplemented with cereal-based concentrate during winter months. Often lambed indoors |
| Texel | Island breed from the Netherlands | White, wide-faced with wide placed ears. 85–100 kg | Meat | Predominantly kept on lowland but will also survive on sparse vegetation. Nutrition is often supplemented with cereal-based concentrate during winter months. Often lambed indoors |
| Suffolk | Lowland sheep evolved from the crossing of Norfolk Horn ewes with Southdown rams in the UK | Black-faced and wide-faced with long downward ears. 95–130 kg | Meat | Kept in a lowland environment on rye-grass swards and supplemented with cereal-based concentrate during winter months. The breed is often grazed on salt marshes in certain parts of the UK. Lambed indoors |
| Beulah | Upland breed originating in Wales | Black- and white-speckled face. 52–86 kg | Crossed with lowland sheep to produce lambs for meat | Kept on an upland environment (hill or mountain) with forage supplemented during adverse winter conditions. Lambing typically occurs outside |
Fig. 1Diagram of the mobile operant system. Arrows indicate the normal route that the animal takes during each trial
Fig. 2PRISMA diagram of the search process for ‘two-choice visual discrimination’ studies to be included in the correlation analyses
Comparison of reversal index values across species [data for sheep were obtained within this study (italics), all other values were derived from the literature]
| Rank | Species | No. of animals | No. of trials to criterion | Correction trials | Discriminatory stimuli | Reversal index (RI) | Reference | |
|---|---|---|---|---|---|---|---|---|
| Acquisition (A) | Reversal (R) | |||||||
| 1 | Gorilla | 5 | 16 | 9.5 | No | Random visual objects | 15.05 | Rumbaugh ( |
| 2 | Human | 8 | 18 | 19 | No | Random visual objects | 39.05 | Roberts et al. ( |
|
| Sheep |
|
|
| Yes | Random visual objects |
| This study |
| 4 | Marmoset | 3 | 21 | 53 | No | Random visual objects | 186.76 | Dias et al. ( |
| 5 | Dog | 30 | 85 | 110 | No | Size (2 blocks of different sizes) | 252.35 | Tapp et al. ( |
| 6 | Horse | 17 | 94 | 114 | No | Colour (black and white) | 252.55 | Sappington et al. ( |
| 7 | Jay (Western scrub and Pinyon) | 10 | 98 | 134 | No | Colour (red and green) | 317.22 | Bond et al. ( |
| 8 | Rhesus Monkey | 12 | 298 | 194 | Only for 1–2 older animals | Random visual objects | 320.29 | Voytko ( |
| 9 | Pig | 16 | 110 | 180 | No | Colour (black and white) | 474.54 | Moustgaard et al. ( |
| 10 | Rat | 20 | 52 | 144 | No | Vertical and horizontal stripes | 542.76 | Rajalakshmi and Jeeves ( |
| 11 | Mice | 10 | 150 | 240 | No | Random visual objects | 624.00 | Glynn et al. ( |
Fig. 3Comparison of sheep against other bird and animal species for endocranial volume (ECV), gyrification index (GI), number of cortical neurons, and the encephalization quotient (EQ)
Fig. 4Linear correlations between reversal index and log endocranial volume, gyrification index, log number of cortical neurons, and log encephalization quotient (EQ)