Serviço de Cardiologia e Cirurgia Cardiovascular e Centro de Telessaúde do Hospital das Clínicas da UFMG, Belo Horizonte, Brazil.
Departamento de Clínica Médica, Faculdade de Medicina da Universidade Federal de Minas Gerais, Belo Horizonte, Brazil.
Int J Clin Pract. 2021 Mar;75(3):e13686. doi: 10.1111/ijcp.13686. Epub 2020 Oct 5.
Access to public subspecialty healthcare is limited in underserved areas of Brazil, including echocardiography (echo). Long waiting lines and lack of a prioritisation system lead to diagnostic lag and may contribute to poor outcomes. We developed a prioritisation tool for use in primary care, aimed at improving resource utilisation, by predicting those at highest risk of having an abnormal echo, and thus in highest need of referral.
All patients in the existing primary care waiting list for echo were invited for participation and underwent a clinical questionnaire, simplified 7-view echo screening by non-physicians with handheld devices, and standard echo by experts. Two derivation models were developed, one including only clinical variables and a second including clinical variables and findings of major heart disease (HD) on echo screening (cut point for high/low-risk). For validation, patients were risk-classified according to the clinical score. High-risk patients and a sample of low-risk underwent standard echo. Intermediate-risk patients first had screening echo, with a standard echo if HD was suspected. Discrimination and calibration of the two models were assessed to predict HD in standard echo.
In derivation (N = 603), clinical variables associated with HD were female gender, body mass index, Chagas disease, prior cardiac surgery, coronary disease, valve disease, hypertension and heart failure, and this model was well calibrated with C-statistic = 0.781. Performance was improved with the addition of echo screening, with C-statistic = 0.871 after cross-validation. For validation (N = 1526), 227 (14.9%) patients were classified as low risk, 1082 (70.9%) as intermediate risk and 217 (14.2%) as high risk by the clinical model. The final model with two categories had high sensitivity (99%) and negative predictive value (97%) for HD in standard echo. Model performance was good with C-statistic = 0.720.
The addition of screening echo to clinical variables significantly improves the performance of a score to predict major HD.
在巴西服务不足的地区,公共亚专科医疗资源有限,包括超声心动图(echo)。由于排队时间长且缺乏优先排序系统,导致诊断滞后,可能导致预后不良。我们开发了一种在初级保健中使用的优先排序工具,旨在通过预测那些患有异常超声心动图风险最高的患者,从而改善资源利用,这些患者最需要转诊。
邀请所有现有的初级保健超声心动图等候名单中的患者参加,并进行临床问卷、非医生使用手持设备进行简化的 7 视图超声心动图筛查以及专家进行标准超声心动图检查。建立了两个推导模型,一个仅包含临床变量,另一个包含临床变量和超声心动图筛查中主要心脏病(HD)的发现(高/低风险的切点)。为了验证,根据临床评分对患者进行风险分类。高危患者和部分低危患者进行标准超声心动图检查。中危患者首先进行筛查超声心动图,如果怀疑有 HD,则进行标准超声心动图检查。评估两种模型预测标准超声心动图中 HD 的区分度和校准度。
在推导组(N=603)中,与 HD 相关的临床变量为女性、体重指数、恰加斯病、既往心脏手术、冠状动脉疾病、瓣膜疾病、高血压和心力衰竭,该模型校准良好,C 统计量为 0.781。通过添加超声心动图筛查,性能得到改善,交叉验证后的 C 统计量为 0.871。在验证组(N=1526)中,根据临床模型,227(14.9%)例患者被分类为低危,1082(70.9%)例患者被分类为中危,217(14.2%)例患者被分类为高危。最终的两分类模型对标准超声心动图中的 HD 具有高灵敏度(99%)和阴性预测值(97%)。C 统计量为 0.720,表明模型性能良好。
将筛查超声心动图与临床变量相结合,可显著提高预测主要 HD 的评分的性能。