精准预防:通过基于人工智能的手术部位并发症风险和成本建模,调整一次性负压伤口疗法的使用。

IF 1.4 4区 医学 Q4 INFECTIOUS DISEASES
Surgical infections Pub Date : 2024-05-01 Epub Date: 2024-05-02 DOI:10.1089/sur.2023.274
Barrett J Larson, Ashley Roakes, Steve Yurick, Nathan A Netravali
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引用次数: 0

摘要

背景:手术部位并发症(SSCs)是一种常见但可预防的医院获得性疾病。一次性负压伤口疗法(sNPWT)已被证明能有效降低这些并发症的发生率。在以价值为基础的医疗时代,需要对一次性负压伤口疗法进行战略性分配,以优化临床和财务结果。材料与方法:我们利用卓越医疗数据库(Premier Healthcare Database)(2017-2021 年)中的数据对骨科、腹部、心血管、剖宫产和乳腺手术中 10 种具有代表性的开放手术进行了回顾性分析。将数据分为训练集和验证集后,我们使用各种机器学习算法开发了术前 SSC 风险预测模型。使用标准指标评估模型性能,并通过特征重要性评估确定 SSC 的预测因子。性能最高的模型被用于模拟 sNPWT 在患者和人群层面的成本效益。结果:预测模型表现良好,平均曲线下面积为 76%。各亚专科的主要预测因素包括年龄、肥胖和手术紧急程度。通过预测模型进行模拟分析,可以评估 sNPWT 在人群中的成本效益,其中包括患者和手术的特定因素,以及 sNPWT 对每种手术的既定疗效。模拟模型揭示了不同手术类别中 sNPWT 成本效益的显著差异。结论:这项研究表明,机器学习模型可以有效预测患者的 SSC 风险,并指导 sNPWT 的战略性使用。这种数据驱动的方法可以根据个性化的风险评估,战略性地分配 sNPWT,从而优化临床和财务结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Precision in Prevention: Tailoring Single-Use Negative Pressure Wound Therapy Utilization Through Artificial Intelligence-Based Surgical Site Complications Risk and Cost Modeling.

Background: Surgical site complications (SSCs) are common, yet preventable hospital-acquired conditions. Single-use negative pressure wound therapy (sNPWT) has been shown to be effective in reducing rates of these complications. In the era of value-based care, strategic allocation of sNPWT is needed to optimize both clinical and financial outcomes. Materials and Methods: We conducted a retrospective analysis using data from the Premier Healthcare Database (2017-2021) for 10 representative open procedures in orthopedic, abdominal, cardiovascular, cesarean delivery, and breast surgery. After separating data into training and validation sets, various machine learning algorithms were used to develop pre-operative SSC risk prediction models. Model performance was assessed using standard metrics and predictors of SSCs were identified through feature importance evaluation. Highest-performing models were used to simulate the cost-effectiveness of sNPWT at both the patient and population level. Results: The prediction models demonstrated good performance, with an average area under the curve of 76%. Prominent predictors across subspecialities included age, obesity, and the level of procedure urgency. Prediction models enabled a simulation analysis to assess the population-level cost-effectiveness of sNPWT, incorporating patient and surgery-specific factors, along with the established efficacy of sNPWT for each surgical procedure. The simulation models uncovered significant variability in sNPWT's cost-effectiveness across different procedural categories. Conclusions: This study demonstrates that machine learning models can effectively predict a patient's risk of SSC and guide strategic utilization of sNPWT. This data-driven approach allows for optimization of clinical and financial outcomes by strategically allocating sNPWT based on personalized risk assessments.

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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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