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Automated screening of congestive heart failure using variational mode decomposition and texture features extracted from ultrasound images

机译:使用变分模式分解和从超声图像提取的纹理特征自动筛选充血性心力衰竭和纹理特征

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摘要

Heart is an important and hardest working muscular organ of the human body. Inability of the heart to restore normal perfusion to the entire body refers to cardiac failure, which then with symptoms results in manifestation of congestive heart failure (CHF). Impairment in systolic function associated with chronic dilation of left ventricle is referred as dilated cardiomyopathy (DCM). The clinical examination, surface electrocardiogram (ECG), chest X-ray, blood markers and echocardiography play major role in the diagnosis of CHF. Though the ECG manifests chamber enlargement changes, it does not possess sensitive marker for the diagnosis of DCM, whereas echocardiographic assessment can effectively reveal the presence of asymptomatic DCM. This work proposes an automated screening method for classifying normal and CHF echocardiographic images affected due to DCM using variational mode decomposition technique. The texture features are extracted from variational mode decomposed image. These features are selected using particle swarm optimization and classified using support vector machine classifier with different kernel functions. We have validated our experiment using 300 four-chamber echocardiography images (150: normal, 150: CHF) obtained from 50 normal and 50 CHF patients. Our proposed approach yielded maximum average accuracy, sensitivity and specificity of 99.33%, 98.66% and 100%, respectively, using ten features. Thus, the developed diagnosis system can effectively detect CHF in its early stage using ultrasound images and aid the clinicians in their diagnosis.
机译:心脏是人体的重要和最难的工作肌肉器官。无能为力地将正常灌注恢复到整个身体是指心脏衰竭,然后具有症状导致充血性心力衰竭(CHF)的表现。与左心室慢性扩张相关的收缩功能损伤称为扩张心肌病(DCM)。临床检查,表面心电图(ECG),胸X射线,血迹和超声心动图在CHF的诊断中起主要作用。虽然ECG表现出腔室扩大变化,但对于DCM的诊断,它并不具有敏感标记,而超声心动图评估可以有效地揭示了无症状DCM的存在。该工作提出了一种自动筛选方法,用于使用变分模式分解技术对由于DCM影响的正常和CHF超声心动图图像。从变分模式分解图像中提取纹理特征。使用粒子群优化选择这些功能,并使用具有不同内核功能的支持向量机分类器进行分类。我们使用50例正常和50烯烃患者获得的300个四室超声心动图(150:正常,150:CHF)验证了我们的实验。我们所提出的方法可以分别产生最高的平均精度,灵敏度和特异性,分别使用十个特征,98.3%,98.66%和100%。因此,发达的诊断系统可以使用超声图像有效地检测其早期阶段的CHF,并在其诊断中辅助临床医生。

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