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Toward automated classification of pathological transcranial Doppler waveform morphology via spectral clustering

机译:通过光谱聚类自动分类病理经颅多普勒波形形态的自动分类

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Cerebral Blood Flow Velocity waveforms acquired via Transcranial Doppler (TCD) can provide evidence for cerebrovascular occlusion and stenosis. Thrombolysis in Brain Ischemia (TIBI) flow grades are widely used for this purpose, but require subjective assessment by expert evaluators to be reliable. In this work we seek to determine whether TCD morphology can be objectively assessed using an unsupervised machine learning approach to waveform categorization. TCD beat waveforms were recorded at multiple depths from the Middle Cerebral Arteries of 106 subjects; 33 with Large Vessel Occlusion (LVO). From each waveform, three morphological features were extracted, quantifying onset of maximal velocity, systolic canopy length, and the number/prominence of peaks/troughs. Spectral clustering identified groups implicit in the resultant three-dimensional feature space, with gap statistic criteria establishing the optimal cluster number. We found that gap statistic disparity was maximized at four clusters, referred to as flow types I, II, III, and IV. Types I and II were primarily composed of control subject waveforms, whereas types III and IV derived mainly from LVO patients. Cluster morphologies for types I and IV aligned clearly with Normal and Blunted TIBI flows, respectively. Types II and III represented commonly observed flow-types not delineated by TIBI, which nonetheless deviate from normal and blunted flows. We conclude that important morphological variability exists beyond that currently quantified by TIBI in populations experiencing or at-risk for acute ischemic stroke, and posit that the observed flow-types provide the foundation for objective methods of real-time automated flow type classification.
机译:通过经颅多普勒(TCD)获得的脑血流速度波形可以提供脑血管闭塞和狭窄的证据。脑缺血(TIBI)流量等级的溶栓被广泛用于此目的,但需要专家评估员的主观评估以可靠。在这项工作中,我们寻求使用无监督的机器学习方法来确定TCD形态是否可以客观地评估波形分类。 TCD击败波形以106个科目的中脑动脉的多个深度记录; 33带大血管闭塞(LVO)。从每个波形中,提取三种形态特征,量化最大速度,收缩冠层长度的发作,以及峰/槽的数量/突出。谱聚类所识别的组在所得到的三维特征空间中隐含的组,具有建立最佳簇数的间隙统计标准。我们发现间隙统计差距在四个集群中最大化,称为流量类型I,II,III和IV。 I和II类型主要由控制主体波形组成,而III型和IV类型主要来自LVO患者。用于类型和IV的簇形态分别用正常和钝的TIBI流动对齐。 II型和III型表示通常观察到的胫脂划分的流动类型,仍然偏离正常和钝化的流动。我们得出结论,超出了目前由急性缺血性卒中的人口或风险危险的初级定量的重要形态变异性,并且观察到的流量为实时自动化流式分类的客观方法提供基础。

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