Alfieri Keith A, Potter Benjamin K, Davis Thomas A, Wagner Matthew B, Elster Eric A, Forsberg Jonathan A
Department of Orthopaedics, Walter Reed National Military Medical Center, Bethesda, MD, USA.
Clin Orthop Relat Res. 2015 Sep;473(9):2807-13. doi: 10.1007/s11999-015-4302-1.
To prevent symptomatic heterotopic ossification (HO) and guide primary prophylaxis in patients with combat wounds, physicians require risk stratification methods that can be used early in the postinjury period. There are no validated models to help guide clinicians in the treatment for this common and potentially disabling condition.
QUESTIONS/PURPOSES: We developed three prognostic models designed to estimate the likelihood of wound-specific HO formation and compared them using receiver operating characteristic (ROC) curve analysis and decision curve analysis (DCA) to determine (1) which model is most accurate; and (2) which technique is best suited for clinical use.
We obtained muscle biopsies from 87 combat wounds during the first débridement in the United States, all of which were evaluated radiographically for development of HO at a minimum of 2 months postinjury. The criterion for determining the presence of HO was the ability to see radiographic evidence of ectopic bone formation within the zone of injury. We then quantified relative gene expression from 190 wound healing, osteogenic, and vascular genes. Using these data, we developed an Artificial Neural Network, Random Forest, and a Least Absolute Shrinkage and Selection Operator (LASSO) Logistic Regression model designed to estimate the likelihood of eventual wound-specific HO formation. HO was defined as any HO visible on the plain film within the zone of injury. We compared the models accuracy using area under the ROC curve (area under the curve [AUC]) as well as DCA to determine which model, if any, was better suited for clinical use. In general, the AUC compares models based solely on accuracy, whereas DCA compares their clinical utility after weighing the consequences of under- or overtreatment of a particular disorder.
Both the Artificial Neural Network and the LASSO logistic regression models were relatively accurate with AUCs of 0.78 (95% confidence interval [CI], 0.72-0.83) and 0.75 (95% CI, 0.71-0.78), respectively. The Random Forest model returned an AUC of only 0.53 (95% CI, 0.48-0.59), marginally better than chance alone. Using DCA, the Artificial Neural Network model demonstrated the highest net benefit over the broadest range of threshold probabilities, indicating that it is perhaps better suited for clinical use than the LASSO logistic regression model. Specifically, if only patients with greater than 25% risk of developing HO received prophylaxis, for every 100 patients, use of the Artificial Network Model would result in six fewer patients who unnecessarily receive prophylaxis compared with using the LASSO regression model while not missing any patients who might benefit from it.
Our findings suggest that it is possible to risk-stratify combat wounds with regard to eventual HO formation early in the débridement process. Using these data, the Artificial Neural Network model may lead to better patient selection when compared with the LASSO logistic regression approach. Future prospective studies are necessary to validate these findings while focusing on symptomatic HO as the endpoint of interest.
Level III, prognostic study.
为预防有症状的异位骨化(HO)并指导战伤患者的一级预防,医生需要能够在伤后早期使用的风险分层方法。目前尚无经过验证的模型来帮助临床医生治疗这种常见且可能导致残疾的病症。
问题/目的:我们开发了三种预后模型,旨在估计伤口特异性HO形成的可能性,并使用受试者操作特征(ROC)曲线分析和决策曲线分析(DCA)对它们进行比较,以确定(1)哪种模型最准确;(2)哪种技术最适合临床应用。
我们在美国首次清创时从87处战伤中获取了肌肉活检样本,所有样本在伤后至少2个月时都进行了HO发展的影像学评估。确定HO存在的标准是能够在损伤区域内看到异位骨形成的影像学证据。然后,我们对190个伤口愈合、成骨和血管生成基因的相对基因表达进行了量化。利用这些数据,我们开发了一个人工神经网络、随机森林和一个最小绝对收缩和选择算子(LASSO)逻辑回归模型,旨在估计最终伤口特异性HO形成的可能性。HO被定义为损伤区域内平片上可见的任何HO。我们使用ROC曲线下面积(曲线下面积[AUC])以及DCA比较模型的准确性,以确定哪种模型(如果有的话)更适合临床应用。一般来说,AUC仅基于准确性比较模型,而DCA在权衡特定疾病治疗不足或过度治疗的后果后比较它们的临床效用。
人工神经网络和LASSO逻辑回归模型都相对准确,AUC分别为0.78(95%置信区间[CI],0.72 - 0.83)和0.75(95%CI,0.71 - 0.78)。随机森林模型的AUC仅为0.53(95%CI,0.48 - 0.59),略高于随机水平。使用DCA,人工神经网络模型在最广泛的阈值概率范围内显示出最高的净效益,表明它可能比LASSO逻辑回归模型更适合临床应用。具体而言,如果仅对HO发生风险大于25%的患者进行预防,每100名患者中,与使用LASSO回归模型相比,使用人工网络模型将使不必要接受预防的患者减少6名,同时不会遗漏任何可能从中受益的患者。
我们的研究结果表明,在清创过程早期就有可能对战伤最终形成HO进行风险分层。利用这些数据,与LASSO逻辑回归方法相比,人工神经网络模型可能会导致更好的患者选择。未来需要进行前瞻性研究来验证这些发现,同时将有症状的HO作为感兴趣的终点。
III级,预后研究。