Department of Otolaryngology-Head & Neck Surgery, Brigham and Women's Hospital, Boston, Massachusetts, U.S.A.
Department of Otolaryngology-Head & Neck Surgery, Massachusetts Eye & Ear, Boston, Massachusetts, U.S.A.
Laryngoscope. 2023 Dec;133(12):3534-3539. doi: 10.1002/lary.30708. Epub 2023 Apr 24.
In an era of vestibular schwannoma (VS) surgery where functional preservation is increasingly emphasized, persistent postoperative dizziness is a relatively understudied functional outcome. The primary objective was to develop a predictive model to identify patients at risk for developing persistent postoperative dizziness after VS resection.
Retrospective review of patients who underwent VS surgery at our institution with a minimum of 12 months of postoperative follow-up. Demographic, tumor-specific, preoperative, and immediate postoperative features were collected as predictors. The primary outcome was self-reported dizziness at 3-, 6-, and 12-month follow-up. Binary and multiclass machine learning classification models were developed using these features.
A total of 1,137 cases were used for modeling. The median age was 67 years, and 54% were female. Median tumor size was 2 cm, and the most common approach was suboccipital (85%). Overall, 63% of patients did not report postoperative dizziness at any timepoint; 11% at 3-month follow-up; 9% at 6-months; and 17% at 12-months. Both binary and multiclass models achieved high performance with AUCs of 0.89 and 0.86 respectively. Features important to model predictions were preoperative headache, need for physical therapy on discharge, vitamin D deficiency, and systemic comorbidities.
We demonstrate the feasibility of a machine learning approach to predict persistent dizziness following vestibular schwannoma surgery with high accuracy. These models could be used to provide quantitative estimates of risk, helping counsel patients on what to expect after surgery and manage patients proactively in the postoperative setting.
4 Laryngoscope, 133:3534-3539, 2023.
在强调保留神经功能的听神经瘤(VS)手术时代,持续性术后头晕是一个相对研究不足的功能结果。主要目的是建立一个预测模型,以识别接受 VS 切除术后发生持续性术后头晕的患者。
回顾性分析了在我院接受 VS 手术的患者,术后随访时间至少为 12 个月。收集了人口统计学、肿瘤特异性、术前和即刻术后的特征作为预测指标。主要结局是在术后 3、6 和 12 个月时的自我报告头晕。使用这些特征开发了二进制和多类机器学习分类模型。
共纳入 1137 例患者进行建模。患者的中位年龄为 67 岁,54%为女性。肿瘤中位大小为 2cm,最常见的手术入路为枕下入路(85%)。总体而言,63%的患者在任何时间点均无术后头晕;3 个月时为 11%;6 个月时为 9%;12 个月时为 17%。二进制和多类模型均具有较高的性能,AUC 分别为 0.89 和 0.86。对模型预测重要的特征是术前头痛、出院时需要物理治疗、维生素 D 缺乏和全身合并症。
我们证明了机器学习方法预测听神经瘤手术后持续性头晕的可行性,具有较高的准确性。这些模型可以用于提供风险的定量估计,帮助患者了解术后的预期情况,并在术后积极管理患者。
4 Laryngoscope, 133:3534-3539, 2023.