手术质量现代化:改进退伍军人手术部位感染检测的新方法。

IF 1.4 4区 医学 Q4 INFECTIOUS DISEASES Surgical infections Pub Date : 2024-09-01 Epub Date: 2024-07-08 DOI:10.1089/sur.2024.013
Louis Perkins, Thomas O'Keefe, William Ardill, Bruce Potenza
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引用次数: 0

摘要

导言:手术部位感染(SSI)是一项重要的质量衡量指标。识别 SSI 通常需要对常见手术病例样本进行耗时的人工检查。在本研究中,我们试图利用从电子病历(EMR)中提取的抗生素药房数据建立一个 SSI 识别预测模型。研究方法我们对退伍军人医疗中心 2020 年 1 月 9 日至 2022 年 1 月 9 日期间的所有手术进行了回顾性分析。确定了在手术后 30 天内接受门诊抗生素治疗的患者,并进行了病历审查,以检测退伍军人事务部手术质量改进计划标准所定义的 SSI 感染情况。采用二项逻辑回归法来选择纳入模型的变量,并通过 k 倍交叉验证对模型进行训练。结果:在研究期间进行的 8253 例手术中,有 793 例(9.6%)患者在手术后 30 天内接受了门诊抗生素治疗;128 例(1.6%)患者被诊断为 SSI。逻辑回归发现,从手术到开具抗生素处方的时间、处方的开具地点、处方时间、抗生素类型和手术服务是模型中的重要变量。经检验,最终模型具有良好的预测价值,c 统计量为 0.81(置信区间:0.71-0.90)。Hosmer-Lemeshow 检验表明模型拟合度良好,P 值为 0.97。结论我们提出了一个模型,利用 EMR 中易于获取的数据来识别 SSI 的发生。结合当地的个案报告,该工具可提高 SSI 识别的准确性和效率。
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Modernizing Surgical Quality: A Novel Approach to Improving Detection of Surgical Site Infections in the Veteran Population.

Introduction: Surgical site infections (SSIs) are an important quality measure. Identifying SSIs often relies upon a time-intensive manual review of a sample of common surgical cases. In this study, we sought to develop a predictive model for SSI identification using antibiotic pharmacy data extracted from the electronic medical record (EMR). Methods: A retrospective analysis was performed on all surgeries at a Veteran Affair's Medical Center between January 9, 2020 and January 9, 2022. Patients receiving outpatient antibiotics within 30 days of their surgery were identified, and chart review was performed to detect instances of SSI as defined by VA Surgery Quality Improvement Program criteria. Binomial logistic regression was used to select variables to include in the model, which was trained using k-fold cross validation. Results: Of the 8,253 surgeries performed during the study period, patients in 793 (9.6%) cases were prescribed outpatient antibiotics within 30 days of their procedure; SSI was diagnosed in 128 (1.6%) patients. Logistic regression identified time from surgery to antibiotic prescription, ordering location of the prescription, length of prescription, type of antibiotic, and operating service as important variables to include in the model. On testing, the final model demonstrated good predictive value with c-statistic of 0.81 (confidence interval: 0.71-0.90). Hosmer-Lemeshow testing demonstrated good fit of the model with p value of 0.97. Conclusion: We propose a model that uses readily attainable data from the EMR to identify SSI occurrences. In conjunction with local case-by-case reporting, this tool can improve the accuracy and efficiency of SSI identification.

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来源期刊
Surgical infections
Surgical infections INFECTIOUS DISEASES-SURGERY
CiteScore
3.80
自引率
5.00%
发文量
127
审稿时长
6-12 weeks
期刊介绍: Surgical Infections provides comprehensive and authoritative information on the biology, prevention, and management of post-operative infections. Original articles cover the latest advancements, new therapeutic management strategies, and translational research that is being applied to improve clinical outcomes and successfully treat post-operative infections. Surgical Infections coverage includes: -Peritonitis and intra-abdominal infections- Surgical site infections- Pneumonia and other nosocomial infections- Cellular and humoral immunity- Biology of the host response- Organ dysfunction syndromes- Antibiotic use- Resistant and opportunistic pathogens- Epidemiology and prevention- The operating room environment- Diagnostic studies
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