Department of Biostatistics, Epidemiology, and Informatics, University of Pennsylvania Perelman School of Medicine, Philadelphia, Pennsylvania, USA.
Department of Emergency Medicine, University of Maryland School of Medicine, Baltimore, Maryland, USA.
Adv Wound Care (New Rochelle). 2024 Jun;13(6):281-290. doi: 10.1089/wound.2023.0194. Epub 2024 Mar 5.
The goal of this investigation was to use comprehensive prediction modeling tools and available genetic information to try to improve upon the performance of simple clinical models in predicting whether a diabetic foot ulcer (DFU) will heal. We utilized a cohort study ( = 206) that included clinical factors, measurements of circulating endothelial precursor cells (CEPCs), and fine sequencing of the gene. We derived and selected relevant predictive features from this patient-level information using statistical and machine learning techniques. We then developed prognostic models using machine learning approaches and assessed predictive performance. The presentation is consistent with TRIPOD requirements. Models using baseline clinical and CEPC data had an area under the receiver operating characteristic curve (AUC) of 0.73 (0.66-0.80). Models using only single nucleotide polymorphisms (SNPs) of the gene had an AUC of 0.67 (95% confidence interval, CI: [0.59-0.75]). However, models incorporating baseline and SNP information resulted in improved AUC (0.80, 95% CI [0.73-0.87]). We provide a rigorous analysis demonstrating the predictive potential of genetic information in DFU healing. In this process, we present a framework for using advanced statistical and bioinformatics techniques for creating superior prognostic models and identify potentially predictive SNPs for future research. We have developed a new benchmark for which future predictive models can be compared against. Such models will enable wound care experts to more accurately predict whether a patient will heal and aid clinical trialists in designing studies to evaluate therapies for subjects likely or unlikely to heal.
本研究旨在利用综合预测建模工具和现有遗传信息,尝试改进简单临床模型在预测糖尿病足溃疡(DFU)是否愈合方面的性能。我们利用了一项队列研究( = 206),其中包括临床因素、循环内皮前体细胞(CEPC)测量值和基因的精细测序。我们使用统计和机器学习技术从患者水平信息中推导出并选择了相关的预测特征。然后,我们使用机器学习方法开发了预后模型,并评估了预测性能。该报告符合 TRIPOD 要求。使用基线临床和 CEPC 数据的模型的受试者工作特征曲线下面积(AUC)为 0.73(0.66-0.80)。仅使用基因的单核苷酸多态性(SNP)的模型的 AUC 为 0.67(95%置信区间,CI:[0.59-0.75])。然而,整合基线和 SNP 信息的模型导致 AUC 提高(0.80,95%CI [0.73-0.87])。我们提供了严格的分析,证明了遗传信息在 DFU 愈合中的预测潜力。在这个过程中,我们提出了一种使用先进的统计和生物信息学技术来创建更好的预后模型的框架,并确定了未来研究中潜在的预测 SNP。我们已经开发了一个新的基准,未来的预测模型可以与之进行比较。这些模型将使伤口护理专家能够更准确地预测患者是否会愈合,并帮助临床试验人员设计研究,以评估对可能或不可能愈合的受试者的治疗方法。