EchoAGE:基于超声心动图的神经网络模型预测心脏生物学年龄。

IF 7 2区 医学 Q1 GERIATRICS & GERONTOLOGY
Anastasia A Kobelyatskaya, Zulfiya G Guvatova, Olga N Tkacheva, Fedor I Isaev, Anastasiia L Kungurtseva, Alisa V Vitebskaya, Anna V Kudryavtseva, Ekaterina V Plokhova, Lubov V Machekhina, Irina D Strazhesko, Alexey A Moskalev
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引用次数: 0

摘要

生物年龄是衡量生物体、器官或系统健康状况的个性化指标,而不是简单地计算时间年龄。迄今为止,人们已经尝试根据各种生物医学数据创建生物年龄估算器。在这项工作中,我们重点开发了一种利用超声心动图数据评估心脏生物年龄的方法。目前的研究包括来自 5000 多个不同病例的超声心动图数据。因此,我们创建了 EchoAGE - 神经网络模型来确定心脏的生理年龄,并在老年相关疾病患者、多病症患者、早衰综合征儿童的超声心动图数据和非同步数据系列中进行了测试。该模型估算的生物年龄平均绝对误差约为 3.5 岁,R 方值约为 0.88,男性和女性的斯皮尔曼等级相关系数均大于 0.9。EchoAGE 使用的指标包括第一和第二阶段最大流速的 E/A 比值、室间隔和左心室后壁的厚度、心输出量和相对室壁厚度。此外,我们还应用了人工智能解释算法,以加深对模型如何进行评估的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EchoAGE: Echocardiography-based Neural Network Model Forecasting Heart Biological Age.

Biological age is a personalized measure of the health status of an organism, organ, or system, as opposed to simply accounting for chronological age. To date, there have been known attempts to create estimators of biological age based on various biomedical data. In this work, we focused on developing an approach for assessing heart biological age using echocardiographic data. The current study included echocardiographic data from more than 5,000 different cases. As a result, we created EchoAGE - neural network model to determine heart biological age, that was tested on echocardiographic data from patients with age-related diseases, patients with multimorbidity, children with progeria syndrome, and diachronic data series. The model estimates biological age with a Mean Absolute Error of approximately 3.5 years, an R-squared value of around 0.88, and a Spearman's rank correlation coefficient greater than 0.9 in men and women. EchoAGE uses indicators such as E/A ratio of maximum flow rates in the first and second phases, thicknesses of the interventricular septum and the posterior left ventricular wall, cardiac output, and relative wall thickness. In addition, we have applied an AI explanation algorithm to improve understanding of how the model performs an assessment.

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来源期刊
Aging and Disease
Aging and Disease GERIATRICS & GERONTOLOGY-
CiteScore
14.60
自引率
2.70%
发文量
138
审稿时长
10 weeks
期刊介绍: Aging & Disease (A&D) is an open-access online journal dedicated to publishing groundbreaking research on the biology of aging, the pathophysiology of age-related diseases, and innovative therapies for conditions affecting the elderly. The scope encompasses various diseases such as Stroke, Alzheimer's disease, Parkinson’s disease, Epilepsy, Dementia, Depression, Cardiovascular Disease, Cancer, Arthritis, Cataract, Osteoporosis, Diabetes, and Hypertension. The journal welcomes studies involving animal models as well as human tissues or cells.
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