首页> 外文期刊>The international journal of artificial organs >Development of artificial neural network-based algorithms for the classification of bileaflet mechanical heart valve sounds.
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Development of artificial neural network-based algorithms for the classification of bileaflet mechanical heart valve sounds.

机译:基于人工神经网络的基于人工神经网络的算法的开发,用于平等机械心阀声音分类。

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Objectives: As is true for all mechanical prostheses, bileaflet heart valves are prone to thrombus formation; reduced hemodynamic performance and embolic events can occur as a result. Prosthetic valve thrombosis affects the power spectra calculated from the phonocardiographic signals corresponding to prosthetic closing events. Artificial neural network-based classifiers are proposed for automatically and noninvasively assessing valve functionality and detecting thrombotic formations. Further studies will be directed toward an enlarging data set, extending the investigated frequency range, and applying the presented approach to other bileaflet mechanical valves. Methods: Data were acquired for the normofunctioning St. Jude Regent valve mounted in the aortic position of a Sheffield Pulse Duplicator. Different pulsatile flow conditions were reproduced, changing heart rate and stroke volume. The case of a thrombus completely blocking 1 leaflet was also investigated. Power spectra were calculated from the phonocardiographic signals and used to train artificial neural networks of different topologies; neural networks were then tested with the spectra acquired in vivo from 33 patients, all recipients of the St. Jude Regent valve in the aortic position. Results: The proposed classifier showed 100% correct classification in vitro and 97% when applied to in vivo data: 31 spectra were assigned to the right class, 1 received a false positive classification, and 1 was "not classifiable." Conclusion: Early malfunction detection is necessary to prevent thrombotic events in bileaflet mechanical heart valves. Following further clinical validation with an extended patient database, artificial neural network-based classifiers could be embedded in a portable device able to detect valvular thrombosis at early stages of formation: this would help clinicians make valvular dysfunction diagnoses before the appearance of critical symptoms.
机译:目的:对于所有机械假体都是如此,双方心脏瓣膜容易发生血栓形成;结果可能发生降低的血流动力学性能和栓塞事件。假肢瓣膜血栓形成影响由对应于假肢闭合事件的音盲信号计算的功率谱。提出了人工神经网络的分类器,用于自动和非侵入性地评估阀功能和检测血栓形成。进一步的研究将朝向扩大数据集,延伸调查的频率范围,并将所提出的方法应用于其他双方机械阀。方法:获取数据的正常功能,用于安装在Sheffield脉冲复制器的主动脉位置的St. Jude Regent阀。再现不同的脉腭流动条件,改变心率和行程体积。还研究了完全阻断1个宣传叶的血栓的情况。功率光谱由心发达儿信号计算,并用于培训不同拓扑的人工神经网络;然后用33例患者在体内获得的谱进行了神经网络,所有在主动脉位置的圣裘德摄政阀的接受者。结果:拟议的分类器在体外显示100%正确分类,97%应用于体内数据时:将31个光谱分配给右类,1个获得错误的阳性分类,1是“不可分类”。结论:早期故障检测是必要的,以防止BileAfle机械心脏瓣膜中的血栓形成事件。随着延长患者数据库的进一步临床验证,可以嵌入一种能够在形成的早期阶段检测瓣膜血栓形成的便携式设备中的基于人工神经网络的分类器:这将有助于临床医生在关键症状外观之前诊断瓣膜功能障碍。

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