Ounajim Amine, Billot Maxime, Goudman Lisa, Louis Pierre-Yves, Slaoui Yousri, Roulaud Manuel, Bouche Bénédicte, Page Philippe, Lorgeoux Bertille, Baron Sandrine, Adjali Nihel, Nivole Kevin, Naiditch Nicolas, Wood Chantal, Rigoard Raphaël, David Romain, Moens Maarten, Rigoard Philippe
PRISMATICS Lab (Predictive Research in Spine/Neuromodulation Management and Thoracic Innovation/Cardiac Surgery), Poitiers University Hospital, 86021 Poitiers, France.
Laboratoire de Mathématiques et Applications, UMR 7348, Poitiers University and CNRS, 86000 Poitiers, France.
J Clin Med. 2021 Oct 18;10(20):4764. doi: 10.3390/jcm10204764.
Persistent pain after spinal surgery can be successfully addressed by spinal cord stimulation (SCS). International guidelines strongly recommend that a lead trial be performed before any permanent implantation. Recent clinical data highlight some major limitations of this approach. First, it appears that patient outco mes, with or without lead trial, are similar. In contrast, during trialing, infection rate drops drastically within time and can compromise the therapy. Using composite pain assessment experience and previous research, we hypothesized that machine learning models could be robust screening tools and reliable predictors of long-term SCS efficacy. We developed several algorithms including logistic regression, regularized logistic regression (RLR), naive Bayes classifier, artificial neural networks, random forest and gradient-boosted trees to test this hypothesis and to perform internal and external validations, the objective being to confront model predictions with lead trial results using a 1-year composite outcome from 103 patients. While almost all models have demonstrated superiority on lead trialing, the RLR model appears to represent the best compromise between complexity and interpretability in the prediction of SCS efficacy. These results underscore the need to use AI-based predictive medicine, as a synergistic mathematical approach, aimed at helping implanters to optimize their clinical choices on daily practice.
脊髓刺激(SCS)可成功解决脊柱手术后的持续性疼痛。国际指南强烈建议在进行任何永久性植入之前先进行导联试验。最近的临床数据突出了这种方法的一些主要局限性。首先,无论是否进行导联试验,患者的结局似乎相似。相比之下,在试验期间,感染率会随着时间的推移急剧下降,这可能会影响治疗效果。利用综合疼痛评估经验和先前的研究,我们假设机器学习模型可以成为强大的筛选工具和长期SCS疗效的可靠预测指标。我们开发了几种算法,包括逻辑回归、正则化逻辑回归(RLR)、朴素贝叶斯分类器、人工神经网络、随机森林和梯度提升树,以检验这一假设并进行内部和外部验证,目的是使用103例患者的1年综合结局,将模型预测结果与导联试验结果进行对比。虽然几乎所有模型在导联试验方面都显示出优越性,但RLR模型在预测SCS疗效方面似乎代表了复杂性和可解释性之间的最佳折衷。这些结果强调了使用基于人工智能的预测医学作为一种协同数学方法的必要性,旨在帮助植入者在日常实践中优化临床选择。