On Detection of Stenosis-Type Sections in Fallopian Tubal Models Using Support Vector Machines

N. Kamiura, T. Isokawa, T. Yumoto
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Abstract

In this paper, a support-vector-machine(SVM)- based method of detecting stenosis is presented for fallopian tubal models. It copes with stenosis detection as classification of data prepared from results of ultrasonic measurements conducted for tubal models. Under assumption that waves reflected at the second and third boundary surfaces of the models potentially include characteristics associated with blocked sections (i.e., stenosis), the method determines the time range having the reflected waves, by referring to maximal values on envelope curves of them The determined range is divided into regular short intervals, and the difference between maximum value and minimum value on envelope curves is calculated for each interval. The ten-dimensional data used to SVM learning and stenosis detection is prepared from the frequency distribution of the number of the short intervals versus difference values. Experimental results establish that the method can achieves favorable accuracies in checking occurrence of stenosis and in identifying tubal model types.
基于支持向量机的输卵管模型狭窄型切片检测
本文提出了一种基于支持向量机(SVM)的输卵管狭窄检测方法。它处理狭窄的检测作为从对管模型进行超声测量的结果中准备的数据的分类。该方法假设在模型的第二和第三边界面上反射的波可能包含与阻塞段(即狭窄)相关的特征,通过参考其包络曲线上的最大值来确定反射波存在的时间范围,并将确定的范围划分为规则的短间隔,计算每个间隔包络曲线上最大值与最小值的差值。用于SVM学习和狭窄检测的十维数据是由短间隔数相对于差值的频率分布得到的。实验结果表明,该方法在检查管腔狭窄情况和识别管腔模型类型方面具有较好的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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