Quinones Christian, Kumbhare Deepak, Guthikonda Bharat, Hoang Stanley
Department of Neurosurgery, Louisiana State University Health Shreveport, Shreveport, LA 71103, USA.
Bioengineering (Basel). 2025 Jan 29;12(2):125. doi: 10.3390/bioengineering12020125.
Machine learning is an evolving branch of artificial intelligence that is being applied in neurosurgical research. In spine surgery, machine learning has been used for radiographic characterization of cranial and spinal pathology and in predicting postoperative outcomes such as complications, functional recovery, and pain relief. A relevant application is the investigation of patient-reported outcome measures (PROMs) after spine surgery. Although a multitude of PROMs have been described and validated, there is currently no consensus regarding which questionnaires should be utilized. Additionally, studies have reported varying degrees of accuracy in predicting patient outcomes based on questionnaire responses. PROMs currently lack standardization, which renders them difficult to compare across studies. The purpose of this manuscript is to identify applications of machine learning to predict PROMs after spine surgery.
机器学习是人工智能不断发展的一个分支,正被应用于神经外科研究。在脊柱外科手术中,机器学习已被用于颅骨和脊柱病变的影像学特征分析,以及预测术后结果,如并发症、功能恢复和疼痛缓解。一个相关的应用是对脊柱手术后患者报告的结局指标(PROMs)进行研究。尽管已经描述并验证了大量的PROMs,但目前对于应使用哪些问卷尚无共识。此外,研究报告称,基于问卷回答预测患者预后的准确性程度各不相同。PROMs目前缺乏标准化,这使得它们难以在不同研究之间进行比较。本手稿的目的是确定机器学习在预测脊柱手术后PROMs方面的应用。