Nakayama Atsuko, Iwata Tomoharu, Sakuma Hiroki, Kashino Kunio, Tomoike Hitonobu
Department of Cardiovascular Medicine, Sakakibara Heart Institute, Tokyo 183-0003, Japan.
Department of Cardiovascular Medicine, University of Tokyo, Tokyo 113-8654, Japan.
J Clin Med. 2024 Dec 24;14(1):21. doi: 10.3390/jcm14010021.
For effective exercise prescription for patients with cardiovascular disease, it is important to determine the target heart rate at the level of the anaerobic threshold (AT-HR). The AT-HR is mainly determined by cardiopulmonary exercise testing (CPET). The aim of this study is to develop a machine learning (ML) model to predict the AT-HR solely from non-exercise clinical features. From consecutive 21,482 cases of CPET between 2 February 2008 and 1 December 2021, an appropriate subset was selected to train our ML model. Data consisted of 78 features, including age, sex, anthropometry, clinical diagnosis, cardiovascular risk factors, vital signs, blood tests, and echocardiography. We predicted the AT-HR using a ML method called gradient boosting, along with a rank of each feature in terms of its contribution to AT-HR prediction. The accuracy was evaluated by comparing the predicted AT-HR with the target HRs from guideline-recommended equations in terms of the mean absolute error (MAE). A total of 8228 participants included healthy individuals and patients with cardiovascular disease and were 62 ± 15 years in mean age (69% male). The MAE of the AT-HR by the ML-based model was 7.7 ± 0.2 bpm, which was significantly smaller than those of the guideline-recommended equations; the results using Karvonen formulas with the coefficients 0.7 and 0.4 were 34.5 ± 0.3 bpm and 11.9 ± 0.2 bpm, respectively, and the results using simpler formulas, rest HR + 10 and +20 bpm, were 15.9 ± 0.3 and 9.7 ± 0.2 bpm, respectively. The feature ranking method revealed that the features that make a significant contribution to AT-HR prediction include the resting heart rate, age, N-terminal pro-brain natriuretic peptide (NT-proBNP), resting systolic blood pressure, highly sensitive C-reactive protein (hsCRP), cardiovascular disease diagnosis, and β-blockers, in that order. Prediction accuracy with the top 10 to 20 features was comparable to that with all features. An accurate prediction model of the AT-HR from non-exercise clinical features was proposed. We expect that it will facilitate performing cardiac rehabilitation. The feature selection technique newly unveiled some major determinants of AT-HR, such as NT-proBNP and hsCRP.
对于心血管疾病患者的有效运动处方而言,确定无氧阈值水平的目标心率(AT-HR)非常重要。AT-HR主要通过心肺运动试验(CPET)来确定。本研究的目的是开发一种机器学习(ML)模型,仅根据非运动临床特征来预测AT-HR。从2008年2月2日至2021年12月1日连续的21482例CPET病例中,选择了一个合适的子集来训练我们的ML模型。数据包括78个特征,包括年龄、性别、人体测量学、临床诊断、心血管危险因素、生命体征、血液检查和超声心动图。我们使用一种名为梯度提升的ML方法预测AT-HR,并根据每个特征对AT-HR预测的贡献对其进行排序。通过将预测的AT-HR与指南推荐方程中的目标心率在平均绝对误差(MAE)方面进行比较来评估准确性。共有8228名参与者,包括健康个体和心血管疾病患者,平均年龄为62±15岁(69%为男性)。基于ML的模型预测AT-HR的MAE为7.7±0.2次/分钟,显著小于指南推荐方程的MAE;使用系数为0.7和0.4的卡尔森公式的结果分别为34.5±0.3次/分钟和11.9±0.2次/分钟,使用更简单公式(静息心率+10和+20次/分钟)的结果分别为15.9±0.3次/分钟和9.7±0.2次/分钟。特征排序方法显示,对AT-HR预测有显著贡献的特征依次为静息心率、年龄、N末端脑钠肽前体(NT-proBNP)、静息收缩压、高敏C反应蛋白(hsCRP)、心血管疾病诊断和β受体阻滞剂。前10至20个特征的预测准确性与所有特征的相当。提出了一种基于非运动临床特征的AT-HR准确预测模型。我们期望它将有助于进行心脏康复。特征选择技术新揭示了一些AT-HR的主要决定因素,如NT-proBNP和hsCRP。