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通过基于逻辑回归和随机森林算法实施统计加权来改进绵羊行为疼痛诊断

Improving Ovine Behavioral Pain Diagnosis by Implementing Statistical Weightings Based on Logistic Regression and Random Forest Algorithms.

作者信息

Trindade Pedro Henrique Esteves, Mello João Fernando Serrajordia Rocha de, Silva Nuno Emanuel Oliveira Figueiredo, Luna Stelio Pacca Loureiro

机构信息

Department of Veterinary Surgery and Animal Reproduction, School of Veterinary Medicine and Animal Science, São Paulo State University, Botucatu 05508-270, SP, Brazil.

Department of Quantitative Analytics, Escola Superior de Propaganda e Marketing (ESPM), São Paulo 04018-010, SP, Brazil.

出版信息

Animals (Basel). 2022 Oct 26;12(21):2940. doi: 10.3390/ani12212940.

Abstract

Recently, the Unesp-Botucatu sheep acute pain scale (USAPS) was created, refined, and psychometrically validated as a tool that offers fast, robust, and simple application. Evidence points to an improvement in pain diagnosis when the importance of the behavioral items of an instrument is statistically weighted; however, this has not yet been investigated in animals. The objective was to investigate whether the implementation of statistical weightings using machine learning algorithms improves the USAPS discriminatory capacity. A behavioral database, previously collected for USAPS validation, of 48 sheep in the perioperative period of laparoscopy was used. A multilevel binomial logistic regression algorithm and a random forest algorithm were used to determine the statistical weights and classify the sheep as to whether they needed analgesia or not. The quality of the classification, estimated by the area under the curve (AUC) and its 95% confidence interval (CI), was compared between the USAPS versions. The USAPS AUCs weighted by multilevel binomial logistic regression (96.59 CI: [95.02-98.15]; = 0.0004) and random forest algorithms (96.28 CI: [94.17-97.85]; = 0.0067) were higher than the original USAPS AUC (94.87 CI: [92.94-96.80]). We conclude that the implementation of statistical weights by the two machine learning algorithms improved the USAPS discriminatory ability.

摘要

最近,圣保罗州立大学-博图卡图绵羊急性疼痛量表(USAPS)被创建、完善,并经过心理测量学验证,是一种应用快速、可靠且简单的工具。有证据表明,当对一种工具的行为项目的重要性进行统计加权时,疼痛诊断会得到改善;然而,这在动物身上尚未得到研究。目的是研究使用机器学习算法实施统计加权是否能提高USAPS的辨别能力。使用了一个先前为USAPS验证而收集的行为数据库,该数据库包含48只绵羊在腹腔镜手术围术期的情况。使用多水平二项逻辑回归算法和随机森林算法来确定统计权重,并将绵羊分类为是否需要镇痛。通过曲线下面积(AUC)及其95%置信区间(CI)估计的分类质量,在不同版本的USAPS之间进行了比较。经多水平二项逻辑回归加权的USAPS的AUC(96.59,CI:[95.02 - 98.15];P = 0.0004)和随机森林算法加权的AUC(96.28,CI:[94.17 - 97.85];P = 0.0067)高于原始USAPS的AUC(94.87,CI:[92.94 - 96.80])。我们得出结论,两种机器学习算法实施统计权重提高了USAPS的辨别能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4c30/9657563/db500a6874c5/animals-12-02940-g001.jpg

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