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Seeing the Future: Predicting a Patient’s Need for Shoulder Surgery before the First Encounter

机译:展望未来:在首次相遇之前预测患者对肩部手术的需求

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Objectives: The aim of this study was to determine the likelihood of shoulder surgery based on a pre-visit branching questionnaire implemented prospectively at the time of initial visit scheduling. Methods: Patients calling a large regional sports health institution with shoulder complaints between Jan 2015 and June 2016 were asked a series of questions according to a branching logic algorithm at the time of initial appointment scheduling (Fig. 1). All patients had appointments scheduled regardless of their responses. In July 2016, a retrospective chart review was conducted to determine which patients were recommended for shoulder surgery. Multivariate regression models were constructed to determine the combination of questions that were asked, or could be asked, that would lead to the highest and most accurate predictive value of recommended surgery. Patient records were excluded if the patients were younger than 13 or over 75, if the appointment was cancelled or scheduled after April 2015, and if the treatment was not yet determined at the time of chart review. Results: After chart review of included patients, 760 records were available for analysis. The multivariate regression model that best matched the data and produced the highest predictive value for surgery had a concordance index of 0.688, representing the rate at which the model correctly assigned a higher surgical risk to patients that were ultimately recommended for surgery against those who were not. Significant variables in this model were if a previous provider ordered an MRI for the patient, injury status, and patient sex. The odds ratios for a patient requiring surgery based on their status in those areas are shown in Table 1. Having an MRI ordered by a previous provider (OR=4.45) and male sex (OR=1.6) were both positive predictors of needing surgery. Indication of injury with a primary complaint of weakness or instability carried the strongest predictive effect of surgery. (OR=1, reference) The odds of surgery decreased if the patient’s primary complaint was pain or if the patient followed the answer pathway: Pain—Not Crushing Pain—Injury—No ER Visit—No Pain Raising Arm. The model can predict between a 7.5% and 95% chance of needing surgery (20% of the population required surgery). A nomogram was constructed from the model such that a patient’s response to each question correlated to a point value, and the total of those points correlated to a probability of needing surgery. Conclusion: Based on patient’s response to the questionnaire, we have constructed a model that can both quickly and easily estimate the probability that the patient will require surgery. Our model can predict up to a 95% likelihood of needing surgery and down to a 7.5% likelihood of needing surgery. We believe that this information can guide and improve future scheduling practices and will help patients see the appropriate provider sooner, reduce cost, and improve patient and physician satisfaction. Table 1. Odds Ratios, ModelPoints, and SurgicalRiskfor Predictive Model including Sex, MRI status, and Injury status Factor/Variable Odds Ratio 95% CI on Odds Ratio p -value Points from affirmative response Surgical Risk Intercept – – 0.733 N/A MRI ordered by other provider 4.45 (2.79, 7.10) <0.001 53 Male (vs. Female) 1.6 (1.05, 2.49) 0.031 17 Indicated Injury Indicated Injury on Weakness or Instability Branch 1 Ref Ref 100 Indicated injury on AP: Pain—Not Crushing Pain—Injury (excluding the AP below) 0.167 (0.033, 0.659) 0.016 36 Did not encounter an injury question 0.129 (0.0243, 0.544) 0.008 27 Indicated no injury 0.0797 (0.0161, 0.308) <0.001 10 Indicated injury on AP: Pain—Not Crushing Pain—Injury—No ER Visit—No Pain Raising Aim 0.0603 (0.011, 0.264) <0.001 0 TotalPoints 2 0.075 42 0.2 91 0.5 141 0.8 196 0.95.
机译:目的:本研究的目的是基于在就诊日程安排中预先实施的预先分支调查表,确定肩部手术的可能性。方法:在2015年1月至2016年6月之间,呼叫一家大型区域性运动健康机构并肩部不适的患者,在初次预约时根据分支逻辑算法询问了一系列问题(图1)。不管他们的反应如何,所有患者都安排了预约。 2016年7月,进行了回顾性图表审查,以确定推荐哪些患者进行肩部手术。构建多变量回归模型来确定所提出或可能提出的问题的组合,这些组合将导致推荐手术的最高和最准确的预测价值。如果患者年龄小于13岁或75岁以上,约会被取消或计划在2015年4月之后取消以及在图表审查时尚未确定治疗方案,则排除患者记录。结果:在对入选患者进行图表审查后,有760条记录可供分析。与数据最匹配且产生最高手术预测价值的多元回归模型的一致性指数为0.688,代表该模型正确地将较高的手术风险分配给最终被推荐用于手术的患者,而不是那些未接受手术的患者。 。该模型中的重要变量是先前的提供者是否为患者,受伤状态和患者性别订购了MRI。表1中显示了根据他们在这些地区的状况而需要手术的患者的优势比。接受先前提供者订购的MRI(OR = 4.45)和男性(OR = 1.6)都是需要手术的阳性预测指标。主要表现为虚弱或不稳定的损伤指征对手术具有最强的预测作用。 (OR = 1,参考)如果患者的主诉是疼痛或患者遵循了回答途径,则手术的几率会降低:疼痛-不压痛-受伤-没有ER诊治-没有抬臂。该模型可以预测需要手术的概率在7.5%至95%之间(需要手术的人群中有20%)。从该模型构造了一个诺模图,使患者对每个问题的回答与一个点值相关,而这些点的总数与需要手术的可能性相关。结论:根据患者对问卷的回答,我们构建了一个模型,可以快速,轻松地估计患者需要手术的可能性。我们的模型可以预测需要手术的可能性高达95%,而需要手术的可能性则可以低至7.5%。我们相信,这些信息可以指导和改善未来的调度实践,并有助于患者早日找到合适的医疗服务提供者,降低成本并提高患者和医生的满意度。表1.包括性别,MRI状况和伤害状况在内的预测模型的赔率,模型点和手术风险因子/可变赔率赔率的95%CI肯定反应的p值点手术风险拦截– – 0.733不适用MRI其他提供者的伤害4.45(2.79,7.10)<0.001 53男性(vs.女性)1.6(1.05,2.49)0.031 17表示伤害表示无力或不稳定的伤害分支Ref Ref 100表示​​对AP的伤害:疼痛—不压痛—伤害(不包括下面的AP)0.167(0.033,0.659)0.016 36没有遇到伤害问题0.129(0.0243,0.544)0.008 27表示无伤害0.0797(0.0161,0.308)<0.001 10 AP上的表示伤害:疼痛-未压伤疼痛-损伤-无急诊就诊-无疼痛提高目标0.0603(0.011,0.264)<0.001 0 TotalPoints 2 0.075 42 0.2 91 0.5 141 0.8 196 0.95。

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