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Learning Vector Quantization Neural Networks Improve Accuracy of Transcranial Color-coded Duplex Sonography in Detection of Middle Cerebral Artery Spasm—Preliminary Report

机译:学习矢量量化神经网络提高中颅动脉痉挛检测的经颅彩色编码双工超声的准确性—初步报告

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摘要

To determine the performance of an artificial neural network in transcranial color-coded duplex sonography (TCCS) diagnosis of middle cerebral artery (MCA) spasm. TCCS was prospectively acquired within 2 h prior to routine cerebral angiography in 100 consecutive patients (54M:46F, median age 50 years). Angiographic MCA vasospasm was classified as mild (<25% of vessel caliber reduction), moderate (25–50%), or severe (>50%). A Learning Vector Quantization neural network classified MCA spasm based on TCCS peak-systolic, mean, and end-diastolic velocity data. During a four-class discrimination task, accurate classification by the network ranged from 64.9% to 72.3%, depending on the number of neurons in the Kohonen layer. Accurate classification of vasospasm ranged from 79.6% to 87.6%, with an accuracy of 84.7% to 92.1% for the detection of moderate-to-severe vasospasm. An artificial neural network may increase the accuracy of TCCS in diagnosis of MCA spasm.
机译:为了确定人工神经网络在经颅彩色编码双工超声(TCCS)诊断中脑动脉(MCA)痉挛中的性能。前瞻性在常规脑血管造影之前2小时内连续100例患者(54M:46F,中位年龄50岁)中获得了TCCS。血管造影MCA血管痉挛分为轻度(<25%的血管口径减少),中度(25–50%)或重度(> 50%)。一个学习矢量量化神经网络根据TCCS峰值收缩,平均和舒张末期速度数据对MCA痉挛进行分类。在四类歧视任务中,根据Kohonen层中神经元的数量,网络的准确分类范围为64.9%至72.3%。血管痉挛的准确分类范围从79.6%到87.6%,对于中度至重度血管痉挛的检测准确性为84.7%到92.1%。人工神经网络可以提高TCCS诊断MCA痉挛的准确性。

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