Kim Jung Bin, Kim Hayom, Sung Joo Hye, Baek Seol Hee, Kim Byung Jo
Department of Neurology, Korea University Anam Hospital, Korea University College of Medicine, Seoul, Korea.
J Clin Neurol. 2020 Jul;16(3):448-454. doi: 10.3988/jcn.2020.16.3.448.
Many elderly patients are unable to actively stand up by themselves and have contraindications to performing the head-up tilt test (HUTT). We aimed to develop screening algorithms for diagnosing orthostatic hypotension (OH) before performing the HUTT.
This study recruited 663 patients with orthostatic intolerance (78 with and 585 without OH, as confirmed by the HUTT) and compared their clinical characteristics. Univariate and multivariate analyses were performed to investigate potential predictors of an OH diagnosis. Machine-learning algorithms were applied to determine whether the accuracy of OH prediction could be used for screening OH without performing the HUTT.
Differences between expiration and inspiration (E-I differences), expiration:inspiration ratios (E:I ratios), and Valsalva ratios were smaller in patients with OH than in those without OH. The univariate analysis showed that increased age and baseline systolic blood pressure (BP) as well as decreased E-I difference, E:I ratio, and Valsalva ratio were correlated with OH. In the multivariate analysis, increased baseline systolic BP and decreased Valsalva ratio were found to be independent predictors of OH. Using those variables as input features, the classification accuracies of the support vector machine, -nearest neighbors, and random forest methods were 84.4%, 84.4%, and 90.6%, respectively.
We have identified clinical parameters that are strongly associated with OH. Machine-learning analysis using those parameters was highly accurate in differentiating OH from non-OH patients. These parameters could be useful screening factors for OH in patients who are unable to perform the HUTT.
许多老年患者无法自行主动站立,且存在进行头高位倾斜试验(HUTT)的禁忌证。我们旨在开发在进行HUTT之前诊断体位性低血压(OH)的筛查算法。
本研究招募了663例体位性不耐受患者(经HUTT证实,78例患有OH,585例未患OH),并比较了他们的临床特征。进行单因素和多因素分析以研究OH诊断的潜在预测因素。应用机器学习算法来确定OH预测的准确性是否可用于在不进行HUTT的情况下筛查OH。
OH患者的呼气与吸气差异(E-I差异)、呼气:吸气比(E:I比)和瓦尔萨尔瓦比值比未患OH的患者小。单因素分析显示,年龄增加、基线收缩压(BP)升高以及E-I差异、E:I比和瓦尔萨尔瓦比值降低与OH相关。多因素分析发现,基线收缩压升高和瓦尔萨尔瓦比值降低是OH的独立预测因素。将这些变量作为输入特征,支持向量机、最近邻和随机森林方法的分类准确率分别为84.4%、84.4%和90.6%。
我们确定了与OH密切相关的临床参数。使用这些参数进行的机器学习分析在区分OH患者和非OH患者方面具有很高的准确性。这些参数可能是无法进行HUTT的患者中OH的有用筛查因素。