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An Intelligent Method for Discrimination between Aortic and Pulmonary Stenosis using Phonocardiogram

机译:一种智能化方法,用于使用脑动脉造影的主动脉和肺狭窄的歧视

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This study presents an artificial intelligent-based method for processing phonocardiographic (PCG) signal of the patients with ejection murmur to assess the underlying pathology initiating the murmur. The method is based on our unique method for finding disease-related frequency bands in conjunction with a sophisticated statistical classifier. Children with aortic stenosis (AS), and pulmonary stenosis (PS) were the two patient groups subjected to the study, taking the healthy ones (no murmur) as the control group. PCG signals were acquired from 45 referrals to the children University hospital, comprised of IS individuals of each group; all were diagnosed by the expert pediatric cardiologists according to the echocardiographic measurements together with the complementary tests. The accuracy of the method is evaluated to be 90% and 93.3% using the 5-fold and leave-one-out validation method, respectively. The accuracy is slightly degraded to 86.7% and 93.3% when a Gaussian noise with signal to noise ratio of 20 dB is added to the PCG signals, exhibiting an acceptable immunity against the noise. The method offered promising results to be used as a decision support system in the primary healthcare centers or clinics.
机译:本研究提出了一种用于捕获杂音患者的语音心动图(PCG)信号的基于人工智能的方法,以评估引发杂音的潜在病理学。该方法基于我们结合复杂的统计分类器查找疾病相关频带的独特方法。具有主动脉狭窄(AS)和肺狭窄(PS)的儿童是两种患者的患者,服用健康的患者(无杂音)作为对照组。 PCG信号从45张推荐给儿童大学医院,由每个群体的个人组成;所有者根据超声心动图测量的专家小儿心理学家诊断出与互补测试一起诊断。使用5倍和休留一次验证方法,评估该方法的准确性为90%和93.3%。当向PCG信号中加入具有20dB的信噪比的高斯噪声时,精度略微降低到86.7%和93.3%,对噪声具有可接受的免疫力。该方法提供了希望在主要医疗中心或诊所中的决策支持系统用作决策支持。

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