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用于检测后肢支撑性跛行的人工神经网络的开发:工作犬的一项初步研究

Development of an Artificial Neural Network for the Detection of Supporting Hindlimb Lameness: A Pilot Study in Working Dogs.

作者信息

Figueirinhas Pedro, Sanchez Adrián, Rodríguez Oliver, Vilar José Manuel, Rodríguez-Altónaga José, Gonzalo-Orden José Manuel, Quesada Alexis

机构信息

Departamento de Patología Animal, Universidad de Las Palmas de Gran Canaria, Trasmontaña S/N, 35416 Arucas, Spain.

Department of Computer Science and Institute for Cybernetics, Campus de Tafira, Universidad de Las Palmas de Gran Canaria, 35017 Las Palmas, Spain.

出版信息

Animals (Basel). 2022 Jul 8;12(14):1755. doi: 10.3390/ani12141755.

Abstract

Subjective lameness assessment has been a controversial subject given the lack of agreement between observers; this has prompted the development of kinetic and kinematic devices in order to obtain an objective evaluation of locomotor system in dogs. After proper training, neural networks are potentially capable of making a non-human diagnosis of canine lameness. The purpose of this study was to investigate whether artificial neural networks could be used to determine canine hindlimb lameness by computational means only. The outcome of this study could potentially assess the efficacy of certain treatments against diseases that cause lameness. With this aim, input data were obtained from an inertial sensor positioned on the rump. Data from dogs with unilateral hindlimb lameness and sound dogs were used to obtain differences between both groups at walk. The artificial neural network, after necessary adjustments, was integrated into a web management tool, and the preliminary results discriminating between lame and sound dogs are promising. The analysis of spatial data with artificial neural networks was summarized and developed into a web app that has proven to be a useful tool to discriminate between sound and lame dogs. Additionally, this environment allows veterinary clinicians to adequately follow the treatment of lame canine patients.

摘要

鉴于观察者之间缺乏一致性,主观跛行评估一直是一个有争议的话题;这促使了动力学和运动学设备的发展,以便对犬类运动系统进行客观评估。经过适当训练后,神经网络有潜力对犬类跛行进行非人为诊断。本研究的目的是调查人工神经网络是否仅通过计算手段就能用于确定犬类后肢跛行。这项研究的结果可能会评估某些针对导致跛行疾病的治疗方法的疗效。为此,从位于臀部的惯性传感器获取输入数据。使用单侧后肢跛行犬和健康犬的数据来获取两组在行走时的差异。经过必要调整后,人工神经网络被集成到一个网络管理工具中,区分跛行犬和健康犬的初步结果很有前景。用人工神经网络对空间数据进行的分析被总结并开发成一个网络应用程序,该程序已被证明是区分健康犬和跛行犬的有用工具。此外,这种环境使兽医临床医生能够充分跟踪跛行犬患者的治疗情况。

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