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Phonocardiographic Classification of Mechanical Heart Valves Using Artificial Neural Networks

机译:使用人工神经网络进行机械心阀的音乐会分类

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Nowadays mechanical heart valves (MHVs) maintain a primary role for the surgical treatment of valvulopaties. MHVs are suitable for those patients who can be treated with anticoagulant therapy and whose life expectancy is longer than 10-15 years, that is the estimated durability of a valvular bioprosthesis. Though, the implanted mechanical valves and the anticoagulation level have to be regularly monitored to avoid thromboembolitic complications. This study presents an innovative approach for the early detection of MHVs dysfunctions. Closure sounds of 5 different bileaflet valves, both normofunctioning and thrombotic, were recorded during in vitro simulations under different working conditions using the Sheffield Pulse Duplicator; their power spectra were then used to train artificial neural networks of specific topology. The resulting high classification performance of the networks and the ongoing in vivo application to St. Jude Regent valves, confirm the possibility to use these classifiers, after an appropriate clinical validation, to identify bileaflet valves requiring further medical examinations.
机译:如今机械心脏瓣膜(MHV)对valvulopaties的手术治疗保持主要作用。 MHVs适用于可以用抗凝血治疗治疗的患者,其寿命超过10-15岁,这是瓣膜生物制剂的估计耐久性。虽然,必须定期监测植入的机械阀和抗凝水平以避免血栓栓塞并发症。本研究提出了一种创新方法,用于早期检测MHVS功能障碍。在使用Sheffield脉冲复制器的不同工作条件下在不同的工作条件下在体外模拟期间记录5种不同双方瓣膜的闭合声音;然后使用它们的功率光谱来培训特定拓扑的人工神经网络。由此产生了高分类的网络和持续的体内应用于圣裘德摄政阀,确认在适当的临床验证之后使用这些分类器以识别需要进一步的体检的双叶阀。

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