Department of Clinical Neurosciences, Cumming School of Medicine, University of Calgary, Calgary, Alberta, Canada.
Department of Community Health Sciences, Cumming School of Medicine, University of Calgary, Calgary, Alberta, Canada.
Epilepsia. 2021 Sep;62(9):2103-2112. doi: 10.1111/epi.16992. Epub 2021 Jul 9.
The 19-item Epilepsy Surgery Satisfaction Questionnaire (ESSQ-19) is a validated and reliable post hoc means of assessing patient satisfaction with epilepsy surgery. Prediction models building on these data can be used to counsel patients.
The ESSQ-19 was derived and validated on 229 patients recruited from Canada and Sweden. We isolated 201 (88%) patients with complete clinical data for this analysis. These patients were adults (≥18 years old) who underwent epilepsy surgery 1 year or more prior to answering the questionnaire. We extracted each patient's ESSQ-19 score (scale is 0-100; 100 represents complete satisfaction) and relevant clinical variables that were standardized prior to the analysis. We used machine learning (linear kernel support vector regression [SVR]) to predict satisfaction and assessed performance using the R calculated following threefold cross-validation. Model parameters were ranked to infer the importance of each clinical variable to overall satisfaction with epilepsy surgery.
Median age was 41 years (interquartile range [IQR] = 32-53), and 116 (57%) were female. Median ESSQ-19 global score was 68 (IQR = 59-75), and median time from surgery was 5.4 years (IQR = 2.0-8.9). Linear kernel SVR performed well following threefold cross-validation, with an R of .44 (95% confidence interval = .36-.52). Increasing satisfaction was associated with postoperative self-perceived quality of life, seizure freedom, and reductions in antiseizure medications. Self-perceived epilepsy disability, age, and increasing frequency of seizures that impair awareness were associated with reduced satisfaction.
Machine learning applied postoperatively to the ESSQ-19 can be used to predict surgical satisfaction. This algorithm, once externally validated, can be used in clinical settings by fixing immutable clinical characteristics and adjusting hypothesized postoperative variables, to counsel patients at an individual level on how satisfied they will be with differing surgical outcomes.
19 项癫痫手术满意度问卷(ESSQ-19)是一种经过验证和可靠的事后评估方法,用于评估患者对癫痫手术的满意度。基于这些数据建立预测模型可以用于为患者提供咨询。
ESSQ-19 是在加拿大和瑞典招募的 229 名患者中推导和验证的。我们从这些分析中分离出 201 名(88%)具有完整临床数据的患者。这些患者为成年人(≥18 岁),在回答问卷前 1 年或以上接受了癫痫手术。我们提取每位患者的 ESSQ-19 评分(量表为 0-100;100 表示完全满意)和在分析前标准化的相关临床变量。我们使用机器学习(线性核支持向量回归 [SVR])来预测满意度,并使用 R 计算进行了三次交叉验证评估。模型参数进行了排名,以推断每个临床变量对癫痫手术整体满意度的重要性。
中位年龄为 41 岁(四分位距 [IQR] = 32-53),116 名(57%)为女性。中位 ESSQ-19 总体得分为 68(IQR = 59-75),中位手术时间为 5.4 年(IQR = 2.0-8.9)。线性核 SVR 在三次交叉验证后表现良好,R 为.44(95%置信区间 =.36-.52)。满意度增加与术后自我感知生活质量、无癫痫发作和抗癫痫药物减少有关。自我感知的癫痫残疾、年龄和意识障碍性发作频率增加与满意度降低有关。
术后应用机器学习对 ESSQ-19 进行分析可以用于预测手术满意度。一旦经过外部验证,该算法可在临床环境中使用,通过固定不可变的临床特征和调整假设的术后变量,为患者提供个性化的咨询,了解他们对不同手术结果的满意度。