为多种族/加勒比族裔人群建立一个识别心血管疾病(CVD)状况不明者的分类系统。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
ACS Applied Bio Materials Pub Date : 2024-10-22 eCollection Date: 2024-01-01 DOI:10.7717/peerj.17948
Amalia Hosein, Valerie Stoute, Natasha Singh
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引用次数: 0

摘要

背景:心血管疾病(CVD)需要针对特定人群的分类系统,这对于了解与该疾病相关的临床疾病和诊断非常重要。本文介绍了该分类系统的形式和验证结果:所使用的调查数据来自 778 名参与者,其中 526 人未患心血管疾病,252 人报告曾患心血管疾病。利用二项逻辑回归和判别分析建立了分类模型。该分类系统利用根据 13 项常规生理测量结果开发的两种算法估算出的分数,以及年龄、种族等人口统计学信息和以往的健康状况,提供了疾病严重程度的一般衡量标准:结果:对于每个模型,都确定了特定的分数范围,这些分数范围能为之前发生过心血管疾病的人群(较高分数)和其他被标记为非心血管疾病的人群(较低分数)提供最佳分类。所开发的两个分类模型(逻辑回归模型和判别分析模型)具有较高的接受者操作特征下面积(AUROC)值(98% 和 99%)和灵敏度(86% 和 90%),从而提高了非心血管疾病和心血管疾病参与者之间的区分度,更重要的是,正确分类了更大比例的心血管疾病参与者。此类研究的新特点是对一系列分数进行估算和详细评估,这些分数被标记为无差别分数,处于光谱的中间位置,其中包括非心血管疾病患者的高端分数和心血管疾病患者的低端分数,根据他们的既往病史,所有这些人都被错误地归类了:结论:该评分分类系统能够区分个人的心血管疾病状况,具有良好的可预测性,可帮助医生推荐不同的治疗方案。该分类系统中的两个模型在对有无既往心血管疾病病史的个人进行正确分类的力度方面均优于三个已建立的模型。更重要的是,这两个模型的无差别范围小于三个已知模型,而且在这一范围内,两个新模型的心血管疾病/非心血管疾病比率较低,这表明与心血管疾病患者相比,它们更有可能对非心血管疾病患者进行错误分类,而这是一种更良性的错误分类。此外,当这两个模型结合使用时,在对不同种族的人进行分类时,其灵敏度的提高超过了任何一个单独使用的模型或三个标准欧洲/北美模型中的任何一个。这些努力将有助于推进个性化心血管疾病管理策略,改善不同人群的健康状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A classification system for identifying persons with an unknown cardiovascular disease (CVD) status for a multiracial/ ethnic Caribbean population.

Background: The need for classification systems for cardiovascular disease (CVD) that is population-specific is important towards understanding the clinical disease and diagnostics associated with the disease. This paper presents the form and validation results of this classification system.

Method: The survey data used was captured from 778 participants, 526 persons with no prior CVD, and 252 who reported prior CVD. Binomial logistic regression and Discriminant analysis were utilised to develop classification models. This classification system provided a general measure of severity of disease by utilising scores estimated from two algorithms developed from 13 routine physiologic measurements, along with demographic information of age and ethnicity, inter alia, and previous health status.

Results: For each model, specific score ranges were identified, which gave the best classification for those with a prior CVD incident (higher scores) and for others labelled as non-CVD (lower scores). The two classification models (Logistic Regression Model and Discriminant Analysis Model) developed had high area under the receiver-operating characteristic (AUROC) values (98% & 99%) and sensitivity (86 and 90%), which improved discrimination between Non-CVD and CVD participants and, more importantly, correctly classified a greater proportion of CVD participants. New to this type of research was the estimation and detailed evaluation of a range of scores, labelled non-differentiating, which fell in the middle of the spectrum and which contained the higher-end scores for the non-CVD individuals and the lower-end scores for CVD patients, all of whom were incorrectly classified, based on their prior history.

Conclusion: The classification system of scores is able to differentiate the CVD status of individuals, with good predictability, and could assist physicians with recommending different treatment plans. The two models in this classification system each individually outperformed the three established models in terms of the strength of their correct classifications of individuals with or without prior reported CVD incidents. More importantly, they have smaller non-differentiating ranges than the three known models and, in that range, the two new models have lower CVD/non-CVD ratios suggesting they are more likely to misclassify non-CVD individuals compared to CVD patients, which is a more benign misclassification. Further, when used in combination, the two models increased the sensitivity, in classifying individuals of different ethnicities, beyond that of either one used independently or of any of the three standard European/North American models. These efforts will be instrumental in advancing personalised CVD management strategies and improving health outcomes across diverse populations.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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