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基于肝脏硬度和腹部内脏脂肪组织定量的肥胖患者重度阻塞性睡眠呼吸暂停预测列线图

A Prediction Nomogram of Severe Obstructive Sleep Apnea in Patients with Obesity Based on the Liver Stiffness and Abdominal Visceral Adipose Tissue Quantification.

作者信息

Zhao Anbang, Hao Bin, Liu Simin, Qiu Xiaoyu, Ming Xiaoping, Yang Xiuping, Cai Jie, Li Zhen, Chen Xiong

机构信息

Department of Otorhinolaryngology, Head and Neck Surgery, Zhongnan Hospital of Wuhan University, Wuhan, People's Republic of China.

Sleep Medicine Center, Zhongnan Hospital of Wuhan University, Wuhan, People's Republic of China.

出版信息

Nat Sci Sleep. 2024 Sep 27;16:1515-1527. doi: 10.2147/NSS.S475534. eCollection 2024.

Abstract

PURPOSE

The diagnosis of severe OSA still relies on polysomnography, which causes a strong sense of restraint in patients with obesity. However, better prediction tools for severe OSA applicable to patients with obesity have not been developed.

PATIENTS AND METHODS

Relevant clinical data of 1008 patients with OSA who underwent bariatric surgery in our hospital were collected retrospectively. Patients were divided into training and test cohorts by machine learning. Univariate and multivariate logistic regression analysis was used to screen associations, including liver stiff measurement (LSM) and abdominal visceral tissue (aVAT), and to construct a severe OSA risk prediction nomogram. Then, we evaluated the effectiveness of our model and compared our model with the traditional Epworth Sleepiness Scale (ESS) model. Finally, our associations were used to explore the correlation with other indicators of OSA severity.

RESULTS

Our study revealed that age, biological sex, BMI, LSM, aVAT, and LDL were independent risk factors for severe OSA in patients with obesity. A severe OSA risk prediction nomogram constructed by six indicators possessed high AUC (0.845), accuracy (77.6%), and relatively balanced specificity and sensitivity (72.4%, 82.8%). The Hosmer-Lemeshow test (=0.296, 0.785), calibration curves, and DCA of the training and test cohorts suggested better calibration and more net clinical benefit. Compared with the traditional ESS model, our model had higher AUC (0.829 vs 0.545), sensitivity (78.9% vs 12.2%), PPV (77.9% vs 53.3%), and accuracy (75.4% vs 55.2%). In addition, the associations in our model were independently correlated with other indicators reflecting OSA severity.

CONCLUSION

We provided a simple, cheap, and non-invasive nomogram of severe OSA risk prediction for patients with obesity, which would be helpful for preventing further complications associated with severe OSA.

摘要

目的

重度阻塞性睡眠呼吸暂停(OSA)的诊断仍依赖于多导睡眠图,这给肥胖患者带来强烈的束缚感。然而,尚未开发出适用于肥胖患者的更好的重度OSA预测工具。

患者与方法

回顾性收集我院1008例接受减肥手术的OSA患者的相关临床资料。通过机器学习将患者分为训练队列和测试队列。采用单因素和多因素逻辑回归分析筛选关联因素,包括肝脏硬度测量(LSM)和腹部内脏组织(aVAT),并构建重度OSA风险预测列线图。然后,我们评估了模型的有效性,并将我们的模型与传统的爱泼华嗜睡量表(ESS)模型进行比较。最后,利用我们的关联因素探索与OSA严重程度其他指标的相关性。

结果

我们的研究表明,年龄、生物性别、体重指数(BMI)、LSM、aVAT和低密度脂蛋白(LDL)是肥胖患者重度OSA的独立危险因素。由六个指标构建的重度OSA风险预测列线图具有较高的曲线下面积(AUC)(0.845)、准确率(77.6%)以及相对平衡的特异性和敏感性(72.4%,82.8%)。训练队列和测试队列的Hosmer-Lemeshow检验(=0.296,0.785)、校准曲线和决策曲线分析(DCA)表明校准效果更好且临床净效益更高。与传统的ESS模型相比,我们的模型具有更高的AUC(0.829对0.545)、敏感性(78.9%对12.2%)、阳性预测值(PPV)(77.9%对53.3%)和准确率(75.4%对55.2%)。此外,我们模型中的关联因素与反映OSA严重程度的其他指标独立相关。

结论

我们为肥胖患者提供了一种简单、廉价且无创的重度OSA风险预测列线图,这将有助于预防与重度OSA相关的进一步并发症。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6aa4/11448031/17b06e2d3144/NSS-16-1515-g0001.jpg

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