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制定并验证预测脊髓损伤后异位骨化的列线图。

Development and validation of a nomogram for predicting heterotopic ossification following spinal cord injury.

机构信息

School of Rehabilitation, Capital Medical University, Beijing, China.

School of Rehabilitation, Capital Medical University, Beijing, China; Spine and Spinal Cord Surgery, Beijing Boai Hospital, China Rehabilitation Research Center, Beijing, China; Department of Orthopedics Surgery, Capital Medical University, Beijing, China.

出版信息

Clin Neurol Neurosurg. 2024 Aug;243:108348. doi: 10.1016/j.clineuro.2024.108348. Epub 2024 May 23.

Abstract

OBJECTIVE

Heterotopic ossification (HO) following spinal cord injury (SCI) can severely compromise patient mobility and quality of life. Precise identification of SCI patients at an elevated risk for HO is crucial for implementing early clinical interventions. While the literature presents diverse correlations between HO onset and purported risk factors, the development of a predictive model to quantify these risks is likely to bolster preventive approaches. This study is designed to develop and validate a nomogram-based predictive model that estimates the likelihood of HO in SCI patients, utilizing recognized risk factors to expedite clinical decision-making processes.

METHODS

We recruited a total of 145 patients with SCI and presenting with HO who were hospitalized at the China Rehabilitation Research Center, Beijing Boai Hospital, from June 2016 to December 2022. Additionally, 337 patients with SCI without HO were included as controls. Comprehensive data were collected for all study participants, and subsequently, the dataset was randomly partitioned into training and validation groups. Using Least Absolute Shrinkage and Selection Operator regression, variables were meticulously screened during the pretreatment phase to formulate the predictive model. The efficacy of the model was then assessed using metrics including receiver-operating characteristic (ROC) analysis, calibration assessment, and decision curve analysis.

RESULTS

The final prediction model incorporated age, sex, complete spinal cord injury status, spasm occurrence, and presence of deep vein thrombosis (DVT). Notably, the model exhibited commendable performance in both the training and validation groups, as evidenced by areas under the ROC curve (AUCs) of 0.756 and 0.738, respectively. These values surpassed the AUCs obtained for single variables, namely age (0.636), sex (0.589), complete spinal cord injury (0.681), spasm occurrence (0.563), and DVT presence (0.590). Furthermore, the calibration curve illustrated a congruence between the predicted and actual outcomes, indicating the high accuracy of the model. The decision curve analysis indicated substantial net benefits associated with the application of the model, thereby underscoring its practical utility.

CONCLUSIONS

HO following SCI correlates with several identifiable risk factors, including male gender, youthful age, complete SCI, spasm occurrence and DVT. Our predictive model effectively estimates the likelihood of HO development by leveraging these factors, assisting physicians in identifying patients at high risk. Subsequently, correct positioning to prevent spasm-related deformities and educating healthcare providers on safe lower limb mobilization techniques are crucial to minimize muscle injury risks from rapid iliopsoas muscle extension. Additionally, the importance of early DVT prevention through routine screening and anticoagulation is emphasized to further reduce the incidence of HO.

摘要

目的

脊髓损伤(SCI)后异位骨化(HO)可严重影响患者的活动能力和生活质量。准确识别发生 HO 风险较高的 SCI 患者对于实施早期临床干预至关重要。尽管文献中提出了 HO 发病与所谓的危险因素之间存在多种相关性,但开发一种量化这些风险的预测模型可能会增强预防措施。本研究旨在开发和验证一种基于列线图的预测模型,该模型利用公认的危险因素来估计 SCI 患者发生 HO 的可能性,以加速临床决策过程。

方法

我们招募了 145 名在中国康复研究中心北京博爱医院住院的 SCI 合并 HO 患者(HO 组),并纳入了 337 名无 HO 的 SCI 患者作为对照(非 HO 组)。对所有研究参与者进行了全面的数据收集,随后将数据集随机分为训练组和验证组。使用最小绝对收缩和选择算子(LASSO)回归在预处理阶段仔细筛选变量,以构建预测模型。然后使用受试者工作特征(ROC)分析、校准评估和决策曲线分析评估模型的效能。

结果

最终的预测模型纳入了年龄、性别、完全性脊髓损伤状态、痉挛发生和深静脉血栓形成(DVT)。值得注意的是,该模型在训练组和验证组中的表现均令人满意,ROC 曲线下面积(AUC)分别为 0.756 和 0.738。这些值均优于单个变量的 AUC,分别为年龄(0.636)、性别(0.589)、完全性脊髓损伤(0.681)、痉挛发生(0.563)和 DVT 存在(0.590)。此外,校准曲线表明预测结果与实际结果之间具有一致性,表明模型具有较高的准确性。决策曲线分析表明,应用该模型可带来显著的净获益,从而突出了其实际应用价值。

结论

SCI 后 HO 与几个可识别的危险因素相关,包括男性、年轻、完全性 SCI、痉挛发生和 DVT。我们的预测模型通过利用这些因素有效估计 HO 发生的可能性,有助于医生识别高风险患者。随后,通过正确的体位预防与痉挛相关的畸形,并教育医疗保健提供者安全地进行下肢活动,以最小化快速髂腰肌伸展引起的肌肉损伤风险。此外,通过常规筛查和抗凝预防 DVT 以进一步降低 HO 的发生率也很重要。

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