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基于机器学习的模型预测脊髓刺激治疗反应的研究进展。

Development of Machine Learning-Based Models to Predict Treatment Response to Spinal Cord Stimulation.

机构信息

Department of Neurosurgery, Albany Medical College, Albany, New York, USA.

Department of Neuroscience and Experimental Therapeutics, Albany Medical College, Albany, New York, USA.

出版信息

Neurosurgery. 2022 May 1;90(5):523-532. doi: 10.1227/neu.0000000000001855.

Abstract

BACKGROUND

Despite spinal cord stimulation's (SCS) proven efficacy, failure rates are high with no clear understanding of which patients benefit long term. Currently, patient selection for SCS is based on the subjective experience of the implanting physician.

OBJECTIVE

To develop machine learning (ML)-based predictive models of long-term SCS response.

METHODS

A combined unsupervised (clustering) and supervised (classification) ML technique was applied on a prospectively collected cohort of 151 patients, which included 31 features. Clusters identified using unsupervised K-means clustering were fitted with individualized predictive models of logistic regression, random forest, and XGBoost.

RESULTS

Two distinct clusters were found, and patients in the cohorts significantly differed in age, duration of chronic pain, preoperative numeric rating scale, and preoperative pain catastrophizing scale scores. Using the 10 most influential features, logistic regression predictive models with a nested cross-validation demonstrated the highest overall performance with the area under the curve of 0.757 and 0.708 for each respective cluster.

CONCLUSION

This combined unsupervised-supervised learning approach yielded high predictive performance, suggesting that advanced ML-derived approaches have potential to be used as a functional clinical tool to improve long-term SCS outcomes. Further studies are needed for optimization and external validation of these models.

摘要

背景

尽管脊髓刺激 (SCS) 的疗效已得到证实,但失败率仍然很高,而且对于哪些患者能长期受益,目前还没有明确的认识。目前,SCS 的患者选择是基于植入医生的主观经验。

目的

开发基于机器学习 (ML) 的 SCS 长期反应预测模型。

方法

将一种联合的无监督 (聚类) 和有监督 (分类) ML 技术应用于前瞻性收集的 151 名患者队列中,其中包括 31 个特征。使用无监督 K-means 聚类识别出的聚类使用逻辑回归、随机森林和 XGBoost 的个性化预测模型进行拟合。

结果

发现了两个不同的聚类,队列中的患者在年龄、慢性疼痛持续时间、术前数字评分量表和术前疼痛灾难化量表评分方面存在显著差异。使用 10 个最具影响力的特征,具有嵌套交叉验证的逻辑回归预测模型表现出最高的整体性能,曲线下面积分别为 0.757 和 0.708。

结论

这种联合无监督-监督学习方法具有较高的预测性能,表明先进的 ML 衍生方法具有作为一种功能性临床工具的潜力,可用于改善 SCS 的长期效果。需要进一步的研究来优化和验证这些模型。

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