加速计衍生的分类器用于猫退行性关节疾病的早期检测

IF 2.3 2区 农林科学 Q1 VETERINARY SCIENCES
A.X. Montout , E. Maniaki , T. Burghardt , M.J. Hezzell , E. Blackwell , A.W. Dowsey
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引用次数: 0

摘要

活动能力下降是猫关节退行性疾病(DJD)的临床表现,这种疾病的发病率很高,61% 的六岁或六岁以上的猫都有 DJD 的影像学证据。X光片可以显示形态变化并评估关节退化情况,但无法确定猫的疼痛程度。此外,目前还没有针对猫DJD相关疼痛的通用客观评估方法。开发一种精确的评估模型可以使治疗更早进行、减缓疾病进展并改善猫的健康状况。本研究旨在利用加速度计和机器学习技术预测猫DJD的早期症状。研究人员将猫限制在室内或有限的室外活动范围内,包括牵着猫散步或允许猫短时间进入封闭区域。56只猫身上安装了项圈式传感器,可在14天内收集加速度数据,其中51只猫的数据被纳入分析。猫主人对猫咪的活动能力进行评估,并通过临床骨科检查验证后给猫咪的状况打分。研究组包括 24 只健康猫咪(无主人报告的活动能力变化)和 27 只不健康猫咪(有主人报告的活动能力变化,提示早期 DJD)。数据被分割成以高活动峰值为中心的 60 秒窗口。使用支持向量机 (SVM) 算法,该模型的曲线下面积 (AUC) 达到 78%(置信区间:0.65, 0.88),灵敏度为 68%(0.64, 0.77),特异度为 75%(0.68, 0.79)。这些结果证明了加速度计和机器学习在帮助早期DJD诊断和改善管理方面的潜力,为猫科动物的无创诊断技术带来了重大进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerometer-derived classifiers for early detection of degenerative joint disease in cats
Decreased mobility is a clinical sign of degenerative joint disease (DJD) in cats, which is highly prevalent, with 61 % of cats aged six years or older showing radiographic evidence of DJD. Radiographs can reveal morphological changes and assess joint degeneration, but they cannot determine the extent of pain experienced by cats. Additionally, there is no universal objective assessment method for DJD-associated pain in cats. Developing an accurate evaluation model could enable earlier treatment, slow disease progression, and improve cats’ well-being. This study aimed to predict early signs of DJD in cats using accelerometers and machine learning techniques. Cats were restricted to indoors or limited outdoor access, including being walked on a lead or allowed into enclosed areas for short periods. Fifty-six cats were fitted with collar-mounted sensors that collected accelerometry data over 14 days, with data from 51 cats included in the analysis. Cat owners assessed their cats’ mobility and assigned condition scores, validated through clinical orthopaedic examinations. The study group comprised 24 healthy cats (no owner-reported mobility changes) and 27 unhealthy cats (owner-reported mobility changes, suggestive of early DJD). Data were segmented into 60-second windows centred around peaks of high activity. Using a Support Vector Machine (SVM) algorithm, the model achieved 78 % (confidence interval: 0.65, 0.88) area under the curve (AUC), with 68 % sensitivity (0.64, 0.77) at 75 % specificity (0.68, 0.79). These results demonstrate the potential of accelerometry and machine learning to aid early DJD diagnosis and improve management, offering significant advances in non-invasive diagnostic techniques for cats.
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来源期刊
Veterinary journal
Veterinary journal 农林科学-兽医学
CiteScore
4.10
自引率
4.50%
发文量
79
审稿时长
40 days
期刊介绍: The Veterinary Journal (established 1875) publishes worldwide contributions on all aspects of veterinary science and its related subjects. It provides regular book reviews and a short communications section. The journal regularly commissions topical reviews and commentaries on features of major importance. Research areas include infectious diseases, applied biochemistry, parasitology, endocrinology, microbiology, immunology, pathology, pharmacology, physiology, molecular biology, immunogenetics, surgery, ophthalmology, dermatology and oncology.
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