Dynamic prediction of time to wound healing at routine wound care visits.

IF 5.8 3区 医学 Q1 DERMATOLOGY Advances in wound care Pub Date : 2024-06-04 DOI:10.1089/wound.2024.0069
Doranne Thomassen, Stella Felicia Amesz, Niels Philip Stol, Saskia le Cessie, Ewout Steyerberg
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Abstract

Objective Having a wound decreases patients' quality of life and brings uncertainty, especially if the wound does not show a healing tendency. The objective of this study was to develop and validate a model to dynamically predict time to wound healing at subsequent routine wound care visits. Approach A dynamic prediction model was developed in a cohort of wounds treated by nurse practitioners between 2017-2022. Potential predictors were selected based on literature, expert opinion, and availability in the routine care setting. To assess performance for future wound care visits, the model was validated in a new cohort of wounds visited in early 2023. Reporting followed TRIPOD guidelines. Results We analyzed data from 92,098 visits, corresponding to 14,248 wounds and 7,221 patients. At external validation, discriminative performance of our developed model was comparable to internal validation (c-statistic = 0.70 [95% CI 0.69, 0.71]) and the model remained well-calibrated. Strong predictors were wound-level characteristics and indicators of the healing process so far (e.g., wound surface area). Innovation Going beyond previous prediction studies in the field, the developed model dynamically predicts the remaining time to wound healing for many wound types at subsequent wound care visits, in line with the dynamic nature of wound care. In addition, the model was externally validated and showed stable performance. Conclusion: The developed model can potentially contribute to patient satisfaction and reduce uncertainty around wound healing times when implemented in practice. When the predicted time of wound healing remains high, practitioners can consider adapting their wound management.

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动态预测常规伤口护理就诊的伤口愈合时间。
目的 有伤口会降低患者的生活质量并带来不确定性,尤其是在伤口没有愈合趋势的情况下。本研究旨在开发并验证一个模型,用于动态预测后续常规伤口护理就诊时伤口愈合的时间。方法 在 2017-2022 年间由执业护士治疗的一组伤口中开发了一个动态预测模型。根据文献、专家意见和常规护理环境中的可用性选择潜在预测因子。为了评估未来伤口护理访问的性能,该模型在 2023 年初访问的新一批伤口中进行了验证。报告遵循 TRIPOD 指南。结果 我们分析了 92,098 次就诊的数据,涉及 14,248 处伤口和 7,221 名患者。在外部验证中,我们开发的模型的判别性能与内部验证相当(c-统计量 = 0.70 [95% CI 0.69, 0.71]),模型仍然校准良好。伤口水平特征和迄今为止的愈合过程指标(如伤口表面积)是强有力的预测因素。创新之处 所开发的模型超越了以往的预测研究,可动态预测多种类型伤口在后续伤口护理就诊时的剩余愈合时间,符合伤口护理的动态性质。此外,该模型经过外部验证,性能稳定。结论在实际应用中,所开发的模型有可能提高患者满意度,减少伤口愈合时间的不确定性。当预测的伤口愈合时间居高不下时,医生可以考虑调整其伤口管理。
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来源期刊
Advances in wound care
Advances in wound care Medicine-Emergency Medicine
CiteScore
12.10
自引率
4.10%
发文量
62
期刊介绍: Advances in Wound Care rapidly shares research from bench to bedside, with wound care applications for burns, major trauma, blast injuries, surgery, and diabetic ulcers. The Journal provides a critical, peer-reviewed forum for the field of tissue injury and repair, with an emphasis on acute and chronic wounds. Advances in Wound Care explores novel research approaches and practices to deliver the latest scientific discoveries and developments. Advances in Wound Care coverage includes: Skin bioengineering, Skin and tissue regeneration, Acute, chronic, and complex wounds, Dressings, Anti-scar strategies, Inflammation, Burns and healing, Biofilm, Oxygen and angiogenesis, Critical limb ischemia, Military wound care, New devices and technologies.
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