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一种用于系统性硬化症中肺动脉高压诊断的多模态预测模型。

A Multimodal Prediction Model for Diagnosing Pulmonary Hypertension in Systemic Sclerosis.

机构信息

Boston University Chobanian & Avedisian School of Medicine and Boston University School of Public Health, Boston, Massachusetts.

Boston University Chobanian & Avedisian School of Medicine, Boston, Massachusetts.

出版信息

Arthritis Care Res (Hoboken). 2023 Jul;75(7):1462-1468. doi: 10.1002/acr.24969. Epub 2023 Jan 18.

Abstract

OBJECTIVE

Diagnosis of pulmonary hypertension (PH) in systemic sclerosis (SSc) requires an invasive right heart catheterization (RHC), often based on an elevated estimated pulmonary artery systolic pressure on screening echocardiography. However, because of the poor specificity of echocardiography, a greater number of patients undergo RHC than necessary, exposing patients to potentially avoidable complication risks. The development of improved prediction models for PH in SSc may inform decision-making for RHC in these patients.

METHODS

We conducted a retrospective study of 130 patients with SSc; 66 (50.8%) were diagnosed with PH by RHC. We used data from pulmonary function testing, electrocardiography, echocardiography, and computed tomography to identify and compare the performance characteristics of 3 models predicting the presence of PH: 1) random forest, 2) classification and regression tree, and 3) logistic regression. For each model, we generated receiver operating curves and calculated sensitivity and specificity. We internally validated models using a train-test split of the data.

RESULTS

The random forest model performed best with an area under the curve of 0.92 (95% confidence interval [95% CI] 0.83-1.00), sensitivity of 0.95 (95% CI 0.75-1.00), and specificity of 0.80 (95% CI 0.56-0.94). The 2 most important variables in our random forest model were pulmonary artery diameter on chest computed tomography and diffusing capacity for carbon monoxide on pulmonary function testing.

CONCLUSIONS

In patients with SSc, a random forest model can aid in the detection of PH with high sensitivity and specificity and may allow for better patient selection for RHC, thereby minimizing patient risk.

摘要

目的

系统性硬化症(SSc)患者肺动脉高压(PH)的诊断需要进行有创性右心导管检查(RHC),通常基于筛查超声心动图上估测的肺动脉收缩压升高。然而,由于超声心动图的特异性较差,更多的患者需要进行 RHC,使患者面临潜在可避免的并发症风险。改进的 SSc 患者 PH 预测模型的发展可能为这些患者的 RHC 决策提供信息。

方法

我们对 130 例 SSc 患者进行了回顾性研究;66 例(50.8%)通过 RHC 诊断为 PH。我们使用肺功能测试、心电图、超声心动图和计算机断层扫描的数据来识别和比较预测 PH 存在的 3 种模型的性能特征:1)随机森林,2)分类回归树,和 3)逻辑回归。对于每个模型,我们生成了接收器工作曲线,并计算了敏感性和特异性。我们使用数据的训练-测试分割对内模型进行了验证。

结果

随机森林模型表现最佳,曲线下面积为 0.92(95%置信区间 [95%CI] 0.83-1.00),敏感性为 0.95(95%CI 0.75-1.00),特异性为 0.80(95%CI 0.56-0.94)。我们的随机森林模型中最重要的两个变量是胸部计算机断层扫描上的肺动脉直径和肺功能测试上的一氧化碳弥散量。

结论

在 SSc 患者中,随机森林模型可以以高敏感性和特异性辅助检测 PH,并且可能允许更好地选择 RHC 患者,从而最大限度地降低患者风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2950/9732142/1a94f4e54429/nihms-1814768-f0001.jpg

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