开发并验证用于预测开放式脊柱手术后手术部位并发症相关再住院情况的护理点临床风险评分。

Q1 Medicine Journal of spine surgery Pub Date : 2024-03-20 Epub Date: 2024-01-04 DOI:10.21037/jss-23-89
Kyle B Mueller, Yuefeng Hou, Karen Beach, Leah P Griffin
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引用次数: 0

摘要

背景:手术部位并发症(SSC)导致医疗成本增加。预测分析有助于识别高风险患者并实施优化策略。本研究旨在开发并验证开放式脊柱手术患者 SSC 相关再入院(SSC-ARs)的风险评估评分:采用Premier Healthcare数据库(PHD)对2019年1月至2020年9月期间的成年患者(n=157,664;3,182例SSC-AR)进行回顾性数据分析,利用混合效应逻辑回归模型创建SSC风险评分。使用患者、设施或手术相关的预测因子建立了完整模型和简化模型。完整模型使用了 37 个预测因子,简化模型使用了 19 个预测因子:与完整模型(C-统计量=74.56%;Pearson秩方/自由度(DF)=0.92)相比,简化模型表现出较好的判别能力(C-统计量=74.12%)和模型拟合度[Pearson秩方/自由度(DF)=0.93]。基于简化模型的风险评分系统由以下因素组成:女性(1 分)、血液病[2]、充血性心力衰竭[2]、痴呆[3]、慢性肺病[2]、风湿病[3]、高血压[2]、肥胖[2]、严重合并症[2]、尼古丁依赖[1]、肝病[2]、截瘫和偏瘫[3]、外周血管疾病[2]、肾病[2]、癌症[1]、糖尿病[2]、翻修手术[2]、手术时间≥5 小时[4]、急诊/紧急手术[2]。最终的风险评分(每项手术的分数总和;范围 0-40)通过 1,000 例手术随机保留样本进行了验证(C 统计量 =85.16%):由此得出的 SSC-AR 风险评分由易于获得的临床信息组成,可作为开放式脊柱手术术前伤口并发症相关意外再入院的可靠预测工具。
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Development and validation of a point-of-care clinical risk score to predict surgical site complication-associated readmissions following open spine surgery.

Background: Surgical site complications (SSCs) contribute to increased healthcare costs. Predictive analytics can aid in identifying high-risk patients and implementing optimization strategies. This study aimed to develop and validate a risk-assessment score for SSC-associated readmissions (SSC-ARs) in patients undergoing open spine surgery.

Methods: The Premier Healthcare Database (PHD) of adult patients (n=157,664; 3,182 SSC-ARs) between January 2019 and September 2020 was used for retrospective data analysis to create an SSC risk score using mixed effects logistic regression modeling. Full and reduced models were developed using patient-, facility-, or procedure-related predictors. The full model used 37 predictors and the reduced used 19.

Results: The reduced model exhibited fair discriminatory capability (C-statistic =74.12%) and demonstrated better model fit [Pearson chi-square/degrees of freedom (DF) =0.93] compared to the full model (C-statistic =74.56%; Pearson chi-square/DF =0.92). The risk scoring system, based on the reduced model, comprised the following factors: female (1 point), blood disorder [2], congestive heart failure [2], dementia [3], chronic pulmonary disease [2], rheumatic disease [3], hypertension [2], obesity [2], severe comorbidity [2], nicotine dependence [1], liver disease [2], paraplegia and hemiplegia [3], peripheral vascular disease [2], renal disease [2], cancer [1], diabetes [2], revision surgery [2], operative hours ≥5 [4], emergency/urgent surgery [2]. A final risk score (sum of the points for each surgery; range, 0-40) was validated using a 1,000-surgery random hold-out sample (C-statistic =85.16%).

Conclusions: The resulting SSC-AR risk score, composed of readily obtainable clinical information, could serve as a robust predictive tool for unplanned readmissions related to wound complications in the preoperative setting of open spine surgery.

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来源期刊
Journal of spine surgery
Journal of spine surgery Medicine-Surgery
CiteScore
5.60
自引率
0.00%
发文量
24
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