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Emerging Concepts and Applied Machine Learning Research in Patients with Drug-Induced Repolarization Disorders

机译:患有药物诱导的复极性疾病患者的新兴概念和应用机器学习研究

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The paper presents a review of current research to develop predictive models for automated detection of drug-induced repolarization disorders and shows a feasibility study for developing machine learning tools trained on massive multimodal datasets of narrative, textual and electrocardiographic records. The goal is to reduce drug-induced long QT and associated complications (Torsades-de-Pointes, sudden cardiac death), by identifying prescription patterns with pro-arrhythmic propensity using a validated electronic application for the detection of adverse drug events with data mining and natural language processing; and to compute individual-based predictive scores in order to further identify clinical conditions, concomitant diseases, or other variables that correlate with higher risk of pro-arrhythmic situations.
机译:本文提出了对当前研究的综述,开发用于自动检测药物诱导的较稳定性障碍的预测模型,并显示了用于在叙事,文本和心电图记录的大规模多模式数据集上培训的机器学习工具的可行性研究。 目标是通过使用经过验证的电子应用来检测数据挖掘的不良药物和数据挖掘,通过识别药物诱导的长QT和相关的并发症(扭转偏见,突然的心脏死亡),以便检测数据挖掘和数据挖掘 自然语言处理; 并计算基于个体的预测成绩,以进一步鉴定与较高风险相关的临床病症,伴随疾病或其他与前心律失常情况的风险相关的其他变量。

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