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构建和验证中老年突发性聋患者预后预测模型。

The construction and validation of prognostic prediction model for sudden sensorineural hearing loss in middle-aged and elderly people.

机构信息

Department of Otolaryngology, Head and Neck Surgery, Affiliated Hospital of Yanbian University, Yanji, China.

Department of Otolaryngology, Head and Neck Surgery, Affiliated Hospital of Yanbian University, Yanji, China.

出版信息

Auris Nasus Larynx. 2024 Apr;51(2):276-285. doi: 10.1016/j.anl.2023.10.001. Epub 2023 Oct 21.

Abstract

OBJECTIVE

Idiopathic sudden sensorineural hearing loss (ISSNHL), as an otologic emergency, is commonly encountered and its prevalence has been climbing every year recently. To our knowledge, the prognosis of middle-aged and elderly patients is worse than that of young patients. Previous researches mainly focused on the adult population, which was considered as prognostic models who performed hearing recovery in ISSNHL. However, few studies regarding the middle-aged and elderly population who are regarded as prognostic models have been reported. Therefore, we aim to construct and validate a nomogram-based prognostic prediction model, which can provide a reference for the prognostic assessment in the middle-aged and elderly patients with ISSNHL.

METHOD

A total of 371 middle-aged and elderly ISSNHL patients who were admitted to the Department of Otolaryngology-Head and Neck Surgery, Yanbian Hospital, Yanbian University, from April 2018 to April 2023 were enrolled in the study. All subjects were randomly divided into two groups including training group (n = 263) and validation group (n = 108). Lasso regression and multi-factor logistic regression were jointly utilized to screen out prognosis-related independent risk factors and establish a nomogram-based risk prediction model. The accuracy and clinical application value of the model were evaluated by combining the Bootstrapping method and k-fold cross-validation, plotting the receiver operating characteristic  (ROC)  curve, calculating the area under the ROC curve (AUC), plotting the decision curve analysis (DCA), and the calibrating curve.

RESULT

We used the method of lasso regression combined with multivariate logistic regression and finally screened out eight predictors (including age, number of affected ears, degree of hearing loss, type of hearing curve, duration of disease, presence of vertigo, diabetes, and lacunar cerebral infarction) that were included into the nomogram. The C-index were 0.823 [95% CI (0.725, 0.921)] and 0.851 [95% CI (0.701, 1.000)], and the AUC values were 0.812 and 0.823 for the training and validation groups, respectively. The calibration curve for the validation group was approximately conformed to that for the modeling group, indicating favorable model calibration. The DCA results revealed the modeling group (3%-86%) and the validation group (2%-92%) showed significant net clinical benefit under the majority of thresholds.

CONCLUSION

This study developed and validated a nomogram-based prognostic prediction model which based on the eight independent risk factors mentioned above. The predictors are conveniently accessible and may assist clinicians in formulating individualized treatment strategies.

摘要

目的

特发性突发性聋(ISSNHL)作为一种耳科急症,较为常见,且近年来其发病率呈上升趋势。据我们所知,中年和老年患者的预后较年轻患者差。既往研究主要集中在成年人群,他们被认为是 ISSNHL 听力恢复的预后模型。然而,关于被认为是预后模型的中年和老年人群的研究较少。因此,我们旨在构建并验证基于列线图的预后预测模型,为中年和老年 ISSNHL 患者的预后评估提供参考。

方法

收集 2018 年 4 月至 2023 年 4 月在延边大学附属医院耳鼻咽喉头颈外科就诊的 371 例中年和老年 ISSNHL 患者,所有患者被随机分为训练组(n=263)和验证组(n=108)。采用 Lasso 回归和多因素 Logistic 回归联合筛选预后相关的独立危险因素,并建立基于列线图的风险预测模型。采用 Bootstrap 方法和 k 折交叉验证结合绘制受试者工作特征曲线(ROC 曲线)、计算 ROC 曲线下面积(AUC)、绘制决策曲线分析(DCA)和校准曲线来评估模型的准确性和临床应用价值。

结果

采用 Lasso 回归结合多因素 Logistic 回归方法,最终筛选出 8 个预测因素(年龄、患耳数、听力损失程度、听力曲线类型、发病时间、眩晕、糖尿病、腔隙性脑梗死)纳入列线图。训练组和验证组的 C 指数分别为 0.823[95%CI(0.725,0.921)]和 0.851[95%CI(0.701,1.000)],AUC 值分别为 0.812 和 0.823。验证组的校准曲线与建模组基本吻合,表明模型校准良好。DCA 结果显示,建模组(3%-86%)和验证组(2%-92%)在大多数阈值下均具有显著的净临床获益。

结论

本研究建立并验证了基于上述 8 个独立危险因素的基于列线图的预后预测模型。这些预测因素易于获得,可帮助临床医生制定个体化治疗策略。

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