Ramteke Alankar A, Ramteke Ketaki A, Meshram Aviral C, Gadegone Wasudeo M, Raje Dhananjay V
Arthritis and Joint Replacement Clinic, C 21, Fourth Floor, Yugadharm Complex, Ramdaspeth, Nagpur, 440010 India.
Alexis Hospital, Nagpur, India.
Indian J Orthop. 2020 Jul 2;54(Suppl 1):52-59. doi: 10.1007/s43465-020-00186-4. eCollection 2020 Sep.
We investigated whether the severity of Osteoarthritis (OA) knees can be predicted based on a set of predefined clinical questions (PCQs) about activities of daily living (ADL). We studied the association of demographic factors and advanced radiographic OA (KL 3 and 4) and the relationship between various physical activities and radiographic involvement of knee joint compartments based on PCQs.
Demographic data, radiographic grading of knee OA and PCQs score, were obtained prospectively. Patients' responses to PCQs were marked as scores-that were predefined and graded according to the severity of knee pain. Radiographic knee OA grades were dichotomized and patients were classified as either negative (KL grade 1, 2) or positive (KL grade 3, 4). Multivariate logistic regression was performed to obtain the adjusted odds for total PCQs score in relation with positive radiographic OA considering confounders like age, gender and BMI in the model. Log odds score (LOS) were obtained and ROC analysis was performed on scores to obtain the cut-off value for the screening of knee OA in patients of knee pain.
Age and BMI were significantly negatively correlated with PCQs score ( = - 0.473; < 0.0001 and = - 0.136; = 0.046). PCQs scores were significantly lower in females ( = 0.031). Total PCQs score had corresponding OR of 0.901 ( = 0.002) towards knee OA after adjusting for age, gender and BMI. Multivariate model-based LOS resulted in a cut-off of 1.315, which had a sensitivity of 85.5%, specificity of 66.7% and PPV of 92.7%.
Severity of knee OA can be predicted based on PCQs. PCQs can predict severity of knee OA and patellofemoral or medial tibiofemoral compartment without radiographs. LOS based on demographics and total PCQs score can be developed as a screening tool for advanced knee OA.
我们研究了是否可以基于一组关于日常生活活动(ADL)的预定义临床问题(PCQ)来预测膝骨关节炎(OA)的严重程度。我们基于PCQ研究了人口统计学因素与晚期放射学OA(KL 3和4级)的关联,以及各种身体活动与膝关节腔放射学累及之间的关系。
前瞻性地获取人口统计学数据、膝OA的放射学分级和PCQ评分。患者对PCQ的回答被标记为分数——这些分数是预先定义的,并根据膝关节疼痛的严重程度进行分级。将膝部放射学OA分级进行二分法划分,患者被分为阴性(KL 1、2级)或阳性(KL 3、4级)。进行多变量逻辑回归,以获得在模型中考虑年龄、性别和BMI等混杂因素的情况下,总PCQ评分与阳性放射学OA相关的调整后比值比。获得对数比值评分(LOS),并对评分进行ROC分析,以获得在膝关节疼痛患者中筛查膝OA的临界值。
年龄和BMI与PCQ评分显著负相关(r = - 0.473;P < 0.0001和r = - 0.136;P = 0.046)。女性的PCQ评分显著较低(P = 0.031)。在调整年龄、性别和BMI后,总PCQ评分对膝OA的相应比值比为0.901(P = 0.002)。基于多变量模型的LOS得出的临界值为1.315,其灵敏度为85.5%,特异性为66.7%,阳性预测值为92.7%。
可以基于PCQ预测膝OA的严重程度。PCQ可以在无放射照片的情况下预测膝OA以及髌股或胫股内侧关节腔的严重程度。基于人口统计学和总PCQ评分的LOS可开发为晚期膝OA的筛查工具。