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人工智能评估经胸超声心动图的生物学年龄:与实际年龄的差异可预测显著的超额死亡率。

Artificial Intelligence Assessment of Biological Age From Transthoracic Echocardiography: Discrepancies with Chronologic Age Predict Significant Excess Mortality.

机构信息

Leviev Cardiovascular Institute, Sheba Medical Center, Ramat Gan, Israel; Faculty of Medical and Health Sciences, Tel Aviv University, Tel Aviv, Israel.

Aisap.ai, Ramat Gan, Israel.

出版信息

J Am Soc Echocardiogr. 2024 Aug;37(8):725-735. doi: 10.1016/j.echo.2024.04.017. Epub 2024 May 11.

Abstract

BACKGROUND

Age and sex can be estimated using artificial intelligence on the basis of various sources. The aims of this study were to test whether convolutional neural networks could be trained to estimate age and predict sex using standard transthoracic echocardiography and to evaluate the prognostic implications.

METHODS

The algorithm was trained on 76,342 patients, validated in 22,825 patients, and tested in 20,960 patients. It was then externally validated using data from a different hospital (n = 556). Finally, a prospective cohort of handheld point-of-care ultrasound devices (n = 319; ClinicalTrials.gov identifier NCT05455541) was used to confirm the findings. A multivariate Cox regression model was used to investigate the association between age estimation and chronologic age with overall survival.

RESULTS

The mean absolute error in age estimation was 4.9 years, with a Pearson correlation coefficient of 0.922. The probabilistic value of sex had an overall accuracy of 96.1% and an area under the curve of 0.993. External validation and prospective study cohorts yielded consistent results. Finally, survival analysis demonstrated that age prediction ≥5 years vs chronologic age was associated with an independent 34% increased risk for death during follow-up (P < .001).

CONCLUSIONS

Applying artificial intelligence to standard transthoracic echocardiography allows the prediction of sex and the estimation of age. Machine-based estimation is an independent predictor of overall survival and, with further evaluation, can be used for risk stratification and estimation of biological age.

摘要

背景

基于各种来源,人工智能可用于估计年龄和性别。本研究旨在测试卷积神经网络是否可以通过标准经胸超声心动图进行训练,以估计年龄和预测性别,并评估其预后意义。

方法

该算法在 76342 名患者中进行了训练,在 22825 名患者中进行了验证,并在 20960 名患者中进行了测试。然后,使用来自另一家医院的数据(n=556)对其进行了外部验证。最后,使用手持即时超声设备的前瞻性队列(n=319;ClinicalTrials.gov 标识符 NCT05455541)来确认研究结果。使用多变量 Cox 回归模型研究年龄估计与实际年龄之间与总生存的相关性。

结果

年龄估计的平均绝对误差为 4.9 岁,Pearson 相关系数为 0.922。性别概率值的总体准确率为 96.1%,曲线下面积为 0.993。外部验证和前瞻性研究队列的结果一致。最后,生存分析表明,年龄预测≥5 岁与实际年龄相比,与随访期间死亡风险增加 34%独立相关(P<0.001)。

结论

将人工智能应用于标准经胸超声心动图可预测性别和估计年龄。基于机器的估计是总生存的独立预测因子,并且随着进一步评估,可以用于风险分层和估计生物年龄。

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