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利用热成像扫描预测烧伤创面治疗方式的算法的开发和验证:前瞻性队列研究。

Development and validation of an algorithm to predict the treatment modality of burn wounds using thermographic scans: Prospective cohort study.

机构信息

Department of Surgery, Faculty of Medicine, Universidad Autónoma de San Luis Potosí, San Luis Potosí, SLP, Mexico.

Burn Unit, Hospital Central Dr. Ignacio Morones Prieto, San Luis Potosí, SLP, Mexico.

出版信息

PLoS One. 2018 Nov 14;13(11):e0206477. doi: 10.1371/journal.pone.0206477. eCollection 2018.

Abstract

BACKGROUND

The clinical evaluation of a burn wound alone may not be adequate to predict the severity of the injury nor to guide clinical decision making. Infrared thermography provides information about soft tissue viability and has previously been used to assess burn depth. The objective of this study was to determine if temperature differences in burns assessed by infrared thermography could be used predict the treatment modality of either healing by re-epithelization, requiring skin grafts, or requiring amputations, and to validate the clinical predication algorithm in an independent cohort.

METHODS AND FINDINGS

Temperature difference (ΔT) between injured and healthy skin were recorded within the first three days after injury in previously healthy burn patients. After discharge, the treatment modality was categorized as re-epithelization, skin graft or amputation. Potential confounding factors were assessed through multiple linear regression models, and a prediction algorithm based on the ΔT was developed using a predictive model using a recursive partitioning Random Forest machine learning algorithm. Finally, the prediction accuracy of the algorithm was compared in the development cohort and an independent validation cohort. Significant differences were found in the ΔT between treatment modality groups. The developed algorithm correctly predicts into which treatment category the patient will fall with 85.35% accuracy. Agreement between predicted and actual treatment for both cohorts was weighted kappa 90%.

CONCLUSION

Infrared thermograms obtained at first contact with a wounded patient can be used to accurately predict the definitive treatment modality for burn patients. This method can be used to rationalize treatment and streamline early wound closure.

摘要

背景

仅对烧伤创面进行临床评估可能不足以预测损伤的严重程度,也无法指导临床决策。红外热成像提供了有关软组织活力的信息,以前曾用于评估烧伤深度。本研究的目的是确定通过红外热成像评估的烧伤温差是否可用于预测通过再上皮化、需要植皮或需要截肢来治疗的方式,并在独立队列中验证临床预测算法。

方法和发现

在以前健康的烧伤患者受伤后的头三天内记录受伤和健康皮肤之间的温差 (ΔT)。出院后,将治疗方式分为再上皮化、植皮或截肢。通过多元线性回归模型评估潜在的混杂因素,并使用基于递归分区随机森林机器学习算法的预测模型开发基于 ΔT 的预测算法。最后,在开发队列和独立验证队列中比较算法的预测准确性。在治疗方式组之间发现了 ΔT 的显著差异。开发的算法以 85.35%的准确率正确预测患者将归入哪个治疗类别。两个队列的预测与实际治疗之间的一致性加权 kappa 为 90%。

结论

在首次接触受伤患者时获得的红外热图可用于准确预测烧伤患者的明确治疗方式。这种方法可用于合理治疗并简化早期伤口闭合。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a14b/6235294/b14767710f89/pone.0206477.g001.jpg

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