Department of Medical Sciences, Cardiology, Uppsala University, Uppsala, Sweden.
Uppsala Clinical Research Center, Uppsala, Sweden.
J Am Heart Assoc. 2018 Jun 29;7(13):e008970. doi: 10.1161/JAHA.118.008970.
Heart failure constitutes a high burden on patients and society, but although lifetime risk is high, it is difficult to predict without costly or invasive testing. We aimed to establish new risk factors of heart failure, which potentially could enable early diagnosis and preemptive treatment.
We applied machine learning in the UK Biobank in an agnostic search of risk factors for heart failure in 500 451 individuals, excluding individuals with prior heart failure. Novel factors were then subjected to several in-depth analyses, including multivariable Cox models of incident heart failure, and assessment of discrimination and calibration. Machine learning confirmed many known and putative risk factors for heart failure and identified several novel candidates. Mean reticulocyte volume appeared as one novel factor and leg bioimpedance another, the latter appearing as the most important new marker. Leg bioimpedance was lower in those who developed heart failure during an up to 9.8-year follow-up. When adjusting for known heart failure risk factors, leg bioimpedance was inversely related to heart failure (hazard ratio [95% confidence interval], 0.60 [0.48-0.73] and 0.75 [0.59-0.94], in age- and sex-adjusted and fully adjusted models, respectively, comparing the upper versus lower quartile). A model including leg bioimpedance, age, sex, and self-reported history of myocardial infarction showed good discrimination for future heart failure hospitalization (Concordance index [C-index]=0.82) and good calibration.
Leg bioimpedance is inversely associated with heart failure incidence in the general population. A simple model of exclusively noninvasive measures, combining leg bioimpedance with history of myocardial infarction, age, and sex provides accurate predictive capacity.
心力衰竭给患者和社会带来了沉重负担,但尽管终生风险较高,但若不进行昂贵或有创的检测,就很难预测。我们旨在确定心力衰竭的新危险因素,以便能够早期诊断和预防性治疗。
我们在 UK Biobank 中应用机器学习,在不包括先前有心力衰竭的 500451 名个体中寻找心力衰竭的危险因素,进行了盲法搜索。然后对新发现的因素进行了多项深入分析,包括心力衰竭新发的多变量 Cox 模型,以及对区分度和校准度的评估。机器学习证实了许多已知和推测的心力衰竭危险因素,并确定了一些新的候选因素。平均网织红细胞体积似乎是一个新的因素,腿部生物阻抗又是另一个,后者似乎是最重要的新标志物。在长达 9.8 年的随访期间,那些发生心力衰竭的人的平均网织红细胞体积较低。在调整已知心力衰竭危险因素后,腿部生物阻抗与心力衰竭呈负相关(风险比[95%置信区间],年龄和性别调整模型中为 0.60[0.48-0.73],完全调整模型中为 0.75[0.59-0.94],分别比较上下四分位数)。包括腿部生物阻抗、年龄、性别和自述心肌梗死史的模型对未来心力衰竭住院具有良好的预测区分度(一致性指数[C 指数]=0.82)和良好的校准度。
在一般人群中,腿部生物阻抗与心力衰竭的发生率呈负相关。一个仅由非侵入性措施组成的简单模型,将腿部生物阻抗与心肌梗死史、年龄和性别相结合,可提供准确的预测能力。