Artificial Intelligence versus Doctors' Intelligence: A Glance on Machine Learning Benefaction in Electrocardiography.

Victor Ponomariov, Liviu Chirila, Florentina-Mihaela Apipie, Raffaele Abate, Mihaela Rusu, Zhuojun Wu, Elisa A Liehn, Ilie Bucur
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引用次数: 5

Abstract

Computational machine learning, especially self-enhancing algorithms, prove remarkable effectiveness in applications, including cardiovascular medicine. This review summarizes and cross-compares the current machine learning algorithms applied to electrocardiogram interpretation. In practice, continuous real-time monitoring of electrocardiograms is still difficult to realize. Furthermore, automated ECG interpretation by implementing specific artificial intelligence algorithms is even more challenging. By collecting large datasets from one individual, computational approaches can assure an efficient personalized treatment strategy, such as a correct prediction on patient-specific disease progression, therapeutic success rate and limitations of certain interventions, thus reducing the hospitalization costs and physicians' workload. Clearly such aims can be achieved by a perfect symbiosis of a multidisciplinary team involving clinicians, researchers and computer scientists. Summarizing, continuous cross-examination between machine intelligence and human intelligence is a combination of precision, rationale and high-throughput scientific engine integrated into a challenging framework of big data science.

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人工智能与医生的智能:透视机器学习在心电图中的益处。
计算机器学习,尤其是自我增强算法,在包括心血管医学在内的应用中证明了显著的有效性。这篇综述总结和交叉比较了目前应用于心电图解释的机器学习算法。在实际应用中,对心电图的连续实时监测仍然难以实现。此外,通过实施特定的人工智能算法实现自动ECG解释更具挑战性。通过收集来自个体的大型数据集,计算方法可以确保有效的个性化治疗策略,例如对患者特定疾病进展,治疗成功率和某些干预措施的局限性的正确预测,从而减少住院费用和医生的工作量。显然,这样的目标可以通过一个包括临床医生、研究人员和计算机科学家在内的多学科团队的完美共生来实现。综上所述,机器智能和人类智能之间的持续交叉检验是将精度、理论基础和高通量科学引擎集成到具有挑战性的大数据科学框架中的组合。
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