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Initial derivation of diagnostic clusters combining history elements and physical examination tests for symptomatic knee osteoarthritis

机译:诊断簇的初始推导结合历史元素和物理检查试验对症状膝关系骨关节炎

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摘要

Abstract Introduction The aim of the present study was to assess the validity of clusters combining history elements and physical examination tests to diagnose symptomatic knee osteoarthritis (SOA) compared with other knee disorders. Methods This was a prospective diagnostic accuracy study, in which 279 consecutive patients consulting for a knee complaint were assessed. History elements and standardized physical examination tests were obtained independently by a physiotherapist and compared with an expert physician's composite diagnosis, including clinical examination and imaging. Recursive partitioning was used to develop diagnostic clusters for SOA. Diagnostic accuracy measures were calculated, including sensitivity, specificity, and positive and negative likelihood ratios (LR+/?), with associated 95% confidence intervals (CIs). Results A total of 129 patients had a diagnosis of SOA (46.2%). Most cases (76%) had combined tibiofemoral and patellofemoral knee OA and 63% had radiological Kellgren–Lawrence grades of 2 or 3. Different combinations of history elements and physical examination tests were used in clusters accurately to discriminate SOA from other knee disorders. These included age of patients, body mass index, presence of valgus/varus knee misalignment, palpable knee crepitus and limited passive knee extension. Two clusters to rule in SOA reached an LR+ of 13.6 (95% CI 6.5 to 28.4) and three clusters to rule out SOA reached an LR– of 0.11 (95% CI 0.06 to 0.20). Discussion Diagnostic clusters combining history elements and physical examination tests were able to support the differential diagnosis of SOA compared with various knee disorders without relying systematically on imaging. This could support primary care clinicians' role in the efficient management of these patients.
机译:摘要引言本研究的目的是评估群集结合历史要素和体检试验的群体,以诊断与其他膝关节障碍相比诊断症状膝关节骨关节炎(SOA)。方法这是一项前瞻性诊断准确性研究,其中评估了279名连续患者咨询膝关节投诉。历史元素和标准化体检测试由物理治疗师独立获得,并与专家医师的综合诊断相比,包括临床检查和成像。递归分区用于开发SOA的诊断群集。计算诊断准确度措施,包括敏感性,特异性和正面和负似然比(LR + /α),具有相关的95%置信区间(CIS)。结果共有129名患者诊断SOA(46.2%)。大多数病例(76%)组合胫甲素和髌果耳织机和Patelloforal膝关节OA和63%的放射性kellgren-Lawrence等级为2或3级。历史元素的不同组合和物理检查测试被准确地用于鉴别其他膝关节障碍的群体。这些包括患者的年龄,体重指数,Valgus / Varus膝关节不对准,可触及的膝盖绉和有限的被动膝盖延伸。在SOA中统治的两个簇达到13.6(95%CI 6.5至28.4)的LR +(95%CI 6.5至28.4),排除SOA的三簇为0.11(95%CI 0.06至0.20)。讨论诊断集群结合历史元素和物理检查测试能够支持与各种膝关节障碍相比SOA的差异诊断,而不依赖于成像。这可以支持初级保健临床医生在这些患者的有效管理中的作用。

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  • 来源
    《Musculoskeletal care.》 |2018年第3期|共10页
  • 作者单位

    School of Rehabilitation Faculty of MedicineUniversity of MontrealMontreal QC Canada;

    School of Rehabilitation Faculty of MedicineUniversity of MontrealMontreal QC Canada;

    Department of Rehabilitation Faculty of MedicineLaval UniversityQuebec City QC Canada;

    Osteoarthritis Research UnitUniversity of Montreal Hospital Research Center (CRCHUM)Montreal QC;

    Osteoarthritis Research UnitUniversity of Montreal Hospital Research Center (CRCHUM)Montreal QC;

    Department of Surgery Maisonneuve‐Rosemont HospitalUniversity of MontrealMontreal Quebec Canada;

    Department of Surgery Maisonneuve‐Rosemont HospitalUniversity of MontrealMontreal Quebec Canada;

    Department of SurgeryLaval University Hospital Center (CHUL) Laval UniversityQC Quebec Canada;

    Department of Social Preventive Medicine School of Public HealthUniversity of Montreal Hospital;

    Orthopaedic Clinical Research Unit Maisonneuve‐Rosemont Hospital Research CenterCentre intégr;

    School of Rehabilitation Faculty of MedicineUniversity of MontrealMontreal QC Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 内科学;
  • 关键词

    diagnosis; knee; osteoarthritis;

    机译:诊断;膝关节;骨关节炎;
  • 入库时间 2022-08-20 04:15:56

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