先天性心脏病患者的人工智能:我们站在哪里?

Marinka D. Oudkerk Poo, D. Kauw, H. Bleijendaal, B. Mulder, Y. Pinto, B. Bouma, M. Winter
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引用次数: 1

摘要

近几十年来,先天性心脏病(CHD)患者的预期寿命有所增加;然而,晚期并发症仍然频繁且难以预测。数据科学的进步促进了决策支持系统的发展,可以帮助医生预测临床恶化和冠心病患者的管理。新开发的人工智能(AI)算法在使用统计和计算算法的临床诊断中显示出与人类相当的性能,预计在不久的将来部分超越人类智能。虽然人工智能在获得性心脏病患者中的研究很多,但在冠心病患者中的研究数据很少。冠心病患者的学习算法在心电图、心脏成像和手术结果预测方面显示出很大的前景。然而,目前的学习算法还不够精确,无法应用到日常临床实践中。关于冠心病患者人工智能可能性的数据仍然很少,有必要对大数据集进行研究,以提高这些算法的敏感性、特异性、准确性和临床相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence in Patients with Congenital Heart Disease: Where Do We Stand?
Life expectancy of patients with congenital heart disease (CHD) has increased in recent decades; however, late complications remain frequent and difficult to predict. Progress in data science has spurred the development of decision support systems and could aid physicians in predicting clinical deterioration and in the management of CHD patients. Newly developed artificial intelligence (AI) algorithms have shown performances comparable to humans in clinical diagnostics using statistical and computational algorithms and are expected to partly surpass human intelligence in the near future. Although much research on AI has been performed in patients with acquired heart disease, little data is available with respect to research on AI in patients with CHD. Learning algorithms in patients with CHD have shown to be promising in the interpretation of ECG, cardiac imaging, and the prediction of surgical outcome. However, current learning algorithms are not accurate enough to be implemented into daily clinical practice. Data on AI possibilities remain scarce in patients with CHD, and studies on large data sets are warranted to increase sensitivity, specificity, accuracy, and clinical relevance of these algorithms.
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