Suppr超能文献

使用犬类行为评估与研究问卷及标准化气质评估的辅助犬训练结果预测模型

Predictive Models of Assistance Dog Training Outcomes Using the Canine Behavioral Assessment and Research Questionnaire and a Standardized Temperament Evaluation.

作者信息

Bray Emily E, Levy Kerinne M, Kennedy Brenda S, Duffy Deborah L, Serpell James A, MacLean Evan L

机构信息

Arizona Canine Cognition Center, School of Anthropology, University of Arizona, Tucson, AZ, United States.

Canine Companions for Independence, National Headquarters, Santa Rosa, CA, United States.

出版信息

Front Vet Sci. 2019 Feb 27;6:49. doi: 10.3389/fvets.2019.00049. eCollection 2019.

Abstract

Assistance dogs can greatly improve the lives of people with disabilities. However, a large proportion of dogs bred and trained for this purpose are deemed unable to successfully fulfill the behavioral demands of this role. Often, this determination is not finalized until weeks or even months into training, when the dog is close to 2 years old. Thus, there is an urgent need to develop objective selection protocols that can identify dogs most and least likely to succeed, from early in the training process. We assessed the predictive validity of two candidate measures employed by Canine Companions for Independence (CCI), a national assistance dog organization headquartered in Santa Rosa, CA. For more than a decade, CCI has collected data on their population using the Canine Behavioral Assessment and Research Questionnaire (C-BARQ) and a standardized temperament assessment known internally as the In-For-Training (IFT) test, which is conducted at the beginning of professional training. Data from both measures were divided into independent training and test datasets, with the training data used for variable selection and cross-validation. We developed three predictive models in which we predicted success or release from the training program using C-BARQ scores ( = 3,569), IFT scores ( = 5,967), and a combination of scores from both instruments ( = 2,990). All three final models performed significantly better than the null expectation when applied to the test data, with overall accuracies ranging from 64 to 68%. Model predictions were most accurate for dogs predicted to have the lowest probability of success (ranging from 85 to 92% accurate for dogs in the lowest 10% of predicted probabilities), and moderately accurate for identifying the dogs most likely to succeed (ranging from 62 to 72% for dogs in the top 10% of predicted probabilities). Combining C-BARQ and IFT predictors into a single model did not improve overall accuracy, although it did improve accuracy for dogs in the lowest 20% of predicted probabilities. Our results suggest that both types of assessments have the potential to be used as powerful screening tools, thereby allowing more efficient allocation of resources in assistance dog selection and training.

摘要

辅助犬能够极大地改善残疾人的生活。然而,很大一部分为此目的繁育和训练的犬只被认为无法成功满足该角色的行为要求。通常,直到训练进行数周甚至数月,当犬接近2岁时,才能最终确定这一判定结果。因此,迫切需要制定客观的筛选方案,以便在训练过程早期就能识别出最有可能和最不可能成功的犬只。我们评估了位于加利福尼亚州圣罗莎的全国性辅助犬组织“独立犬伴”(CCI)所采用的两项候选测量方法的预测效度。十多年来,CCI使用犬类行为评估与研究问卷(C-BARQ)以及一项内部称为“训练中”(IFT)测试的标准化性情评估,对其犬只群体收集数据,该测试在专业训练开始时进行。来自这两项测量的数据被分为独立的训练数据集和测试数据集,训练数据用于变量选择和交叉验证。我们开发了三个预测模型,在这些模型中,我们使用C-BARQ分数(n = 3569)、IFT分数(n = 5967)以及两种工具分数的组合(n = 2990)来预测训练项目的成功或淘汰。当应用于测试数据时,所有三个最终模型的表现均显著优于零假设预期,总体准确率在64%至68%之间。对于预测成功概率最低的犬只,模型预测最为准确(预测概率最低十分位的犬只准确率在85%至92%之间),对于识别最有可能成功的犬只,准确率适中(预测概率最高十分位的犬只准确率在62%至72%之间)。将C-BARQ和IFT预测指标组合成一个单一模型并没有提高总体准确率,尽管它确实提高了预测概率最低20%的犬只的准确率。我们的结果表明,这两种评估类型都有可能用作强大的筛选工具,从而在辅助犬的选择和训练中实现更有效的资源分配。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f9d0/6400848/45d0dc456687/fvets-06-00049-g0001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验