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Parallel Multiclass Support Vector Interpretation of Haemodynamic Parameters for Manifestation of Aortic and Arterial Occlusive Diseases

机译:平行多种子支持血管动力学参数对主动脉和动脉闭塞性疾病的表现的解释

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Aortic and arterial occlusive diseases are congenital conditions manifested in impedance plethysmography and are difficult to interpret. A parallel multiclass support vector classification of haemodynamic parameters computed from plethysmographic observations is proposed for diagnosis of aortoarteritis, atherosclerotic narrowing and coarctation of aorta. The proposed support vector algorithm was able to detect more precisely the presence of thrombotic occlusions at proximal and distal arteries. The proposed method provided better accuracy and sensitivity of 97.46% and 98.3% compared to principal component analysis (PCA) based backpropagation and non-weighted support vector architectures respectively. The results of the genotype were ably supported by receiver operating characteristics (ROC) curves which depict a ratio of true positive rate and false positive rate of over 0.9 for all classes as compared with ratios varying from 0.7 to 0.9 for majority of classes as observed in case of non weighted architecture. A reduction of over 60% in negative likelihood ratio with a 5% increase in negative predictive value was observed as compared to Elman and PCA based backpropagation architectures. The results were validated from angiographic findings at Grant Medical College, J.J. Hospital, and Bhabha Atomic Research Centre (BARC) all in Mumbai. The proposed method also distinguished cases with nephritic syndrome, lymphangitis, and venous disorders against those with arterial occlusive diseases. Application of the proposed method has potential to enhance performance of impedance plethysmography.
机译:主动脉和动脉闭塞性疾病是阻抗体积描绘的先天性条件,难以解释。提出了一种平行的多标量支持从体力学观察中计算的血流动力学参数的分类,用于诊断主动脉炎,动脉粥样硬化狭窄和Aorta的缩窄。所提出的支持载体算法能够更精确地检测近端和远端动脉处的血栓咬伤的存在。与主要成分分析(PCA)的基于BackProjagation和未加权支持向量架构相比,该方法提供了97.46%和98.3%的更好的精度和灵敏度。通过接收器操作特性(ROC)曲线得到基因型的结果,其描绘了所有课程的真正阳性率和假阳性率为超过0.9的比率,与在大多数课程中的0.7至0.9的比例相比变化的比率相比非加权架构的情况。与Elman和PCA基于BackProjagation架构相比,观察到负似然比的减少超过60%的负似然比。结果验证了Grant Medical College,J.J.的血管造影结果。医院和Bhabha原子研究中心(Barc)都在孟买。该方法还涉及肾病综合征,淋巴结炎和静脉紊乱的病例,对具有动脉闭塞性疾病的患者。所提出的方法的应用具有增强阻抗体积描绘的性能的潜力。

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