Cardy T J A, De Decker S, Kenny P J, Volk H A
Department of Clinical Science & Services, Royal Veterinary College, Hawkshead Lane, North Mymms, Hatfield, Hertfordshire, AL9 7TA, UK.
Vet Rec. 2015 Aug 15;177(7):171. doi: 10.1136/vr.102988. Epub 2015 Jul 21.
Spinal disease in dogs is commonly encountered in veterinary practice. Numerous diseases may cause similar clinical signs and presenting histories. The study objective was to use statistical models to identify combinations of discrete parameters from the patient signalment, history and neurological examination that could suggest the most likely diagnoses with statistical significance. A retrospective study of 500 dogs referred to the Queen Mother Hospital for Animals before June 2012 for the investigation of spinal disease was performed. Details regarding signalment, history, physical and neurological examinations, neuroanatomical localisation and imaging data were obtained. Univariate analyses of variables (breed, age, weight, onset, deterioration, pain, asymmetry, neuroanatomical localisation) were performed, and variables were retained in a multivariate logistic regression model if P<0.05. Leading diagnoses were intervertebral disc extrusion (IVDE, n=149), intervertebral disc protrusion (n=149), ischaemic myelopathy (IM, n=48) and neoplasms (n=44). Multivariate logistic regression characterised IM and acute non-compressive nucleus pulposus extrusions as the only peracute onset, non-progressive, non-painful and asymmetrical T3-L3 myelopathies. IVDE was most commonly characterised as acute onset, often deteriorating, painful and largely symmetrical T3-L3 myelopathy. This study suggests that most spinal diseases cause distinctive combinations of presenting clinical parameters (signalment, onset, deterioration, pain, asymmetry, neuroanatomical localisation). Taking particular account of these parameters may aid decision making in a clinical setting.
犬类脊柱疾病在兽医临床实践中较为常见。许多疾病可能导致相似的临床症状和病史。本研究的目的是使用统计模型,从患畜的信号、病史和神经学检查中识别离散参数的组合,这些组合能够以统计学意义提示最可能的诊断。对2012年6月前转诊至皇家兽医学院动物医院进行脊柱疾病调查的500只犬进行了回顾性研究。获取了有关信号、病史、体格和神经学检查、神经解剖定位及影像学数据的详细信息。对变量(品种、年龄、体重、发病、病情恶化、疼痛、不对称性、神经解剖定位)进行单变量分析,若P<0.05,则将变量纳入多变量逻辑回归模型。主要诊断包括椎间盘突出(IVDE,n = 149)、椎间盘膨出(n = 149)、缺血性脊髓病(IM,n = 48)和肿瘤(n = 44)。多变量逻辑回归将IM和急性非压迫性髓核突出特征化为仅有的急性发病、非进行性、无疼痛且不对称的T3 - L3脊髓病。IVDE最常被特征化为急性发病、常病情恶化、疼痛且基本对称的T3 - L3脊髓病。本研究表明,大多数脊柱疾病会导致呈现出独特的临床参数组合(信号、发病、病情恶化、疼痛、不对称性、神经解剖定位)。特别考虑这些参数可能有助于临床环境中的决策制定。