Hajikarimloo Bardia, Mohammadzadeh Ibrahim, Nazari Mohammad Ali, Habibi Mohammad Amin, Taghipour Pourya, Alaei Seyyed-Ali, Khalaji Amirreza, Hashemi Rana, Tos Salem M
Department of Neurological Surgery, University of Virginia, Charlottesville, VA, USA.
Skull Base Research Center, Loghman-Hakim Hospital, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Neurosurg Rev. 2025 Jan 24;48(1):79. doi: 10.1007/s10143-025-03230-9.
Postoperative facial nerve (FN) dysfunction is associated with a significant impact on the quality of life of patients and can result in psychological stress and disorders such as depression and social isolation. Preoperative prediction of FN outcomes can play a critical role in vestibular schwannomas (VSs) patient care. Several studies have developed machine learning (ML)-based models in predicting FN outcomes following resection of VS. This systematic review and meta-analysis aimed to evaluate the diagnostic accuracy of ML-based models in predicting FN outcomes following resection in the setting of VS. On December 12, 2024, the four electronic databases, Pubmed, Embase, Scopus, and Web of Science, were systematically searched. Studies that evaluated the performance outcomes of the ML-based predictive models were included. The pooled sensitivity, specificity, area under the curve (AUC), and diagnostic odds ratio (DOR) were calculated through the R program. Five studies with 807 individuals with VS, encompassing 35 models, were included. The meta-analysis showed a pooled sensitivity of 82% (95%CI: 76-87%), specificity of 79% (95%CI: 74-84%), and DOR of 12.94 (95%CI: 8.65-19.34) with an AUC of 0.841. The meta-analysis of the best performance model demonstrated a pooled sensitivity of 91% (95%CI: 80-96%), specificity of 87% (95%CI: 82-91%), and DOR of 46.84 (95%CI: 19.8-110.8). Additionally, the analysis demonstrated an AUC of 0.92, a sensitivity of 0.884, and a false positive rate of 0.136 for the best performance models. ML-based models possess promising diagnostic accuracy in predicting FN outcomes following resection.
术后面神经(FN)功能障碍对患者的生活质量有重大影响,并可能导致心理压力以及抑郁和社交隔离等障碍。术前预测FN结果在前庭神经鞘瘤(VS)患者护理中起着关键作用。多项研究已开发出基于机器学习(ML)的模型来预测VS切除术后的FN结果。本系统评价和荟萃分析旨在评估基于ML的模型在VS切除术后预测FN结果的诊断准确性。2024年12月12日,对四个电子数据库(PubMed、Embase、Scopus和Web of Science)进行了系统检索。纳入评估基于ML的预测模型性能结果的研究。通过R程序计算合并敏感性、特异性、曲线下面积(AUC)和诊断比值比(DOR)。纳入了五项研究,共807例VS患者,涵盖35个模型。荟萃分析显示,合并敏感性为82%(95%CI:76-87%),特异性为79%(95%CI:74-84%),DOR为12.94(95%CI:8.65-19.34),AUC为0.841。最佳性能模型的荟萃分析显示,合并敏感性为91%(95%CI:80-96%),特异性为87%(95%CI:82-91%),DOR为46.84(95%CI:19.8-110.8)。此外,分析显示最佳性能模型的AUC为0.92,敏感性为0.884,假阳性率为0.136。基于ML的模型在预测切除术后的FN结果方面具有良好的诊断准确性。