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Detection of dermis and fascia on skin layers for liposuction surgery robot using texture and geometric information

机译:使用纹理和几何信息检测抽脂手术机器人皮肤层上的真皮和筋膜

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Despite the fact that liposuction is one of the most common types of cosmetic surgery, it causes skin surface irregularity as a side effect because of the procedure's lack of systemicity and objectivity in measuring the process of regional suction. To determine a more systematic and quantitative liposuction process, the surgeon requires access to a surgical robotic system for liposuction. The first consideration in such a system, is navigation of subcutaneous fat, especially detection of the dermis and fascia skin layers. Therefore, this paper presents a method for detecting the dermis and fascia in the skin structure using an ultrasound image that could assist the surgeon's procedure during liposuction. The method proposed in this paper includes the following three steps. 1) Using the Gabor filter bank, extract the texture feature from the ultrasound image. 2) Using a k-means clustering algorithm, extract cluster areas from the texture feature, such that cluster areas contain similar texture features. 3) Detect the dermis and fascia from each cluster's geometric information as the feature after training a multi-class SVM. Using the proposed algorithm, the performance results for precision and recall for dermis are 96% and 100%, respectively. In the case of fascia, the precision is 71.11% and recall is 86.49%. The proposed algorithm would be useful as the navigation system in the development of a surgical robot for liposuction in the near future.
机译:尽管抽脂术是整容手术中最常见的类型之一,但由于该程序在测量局部吸力过程中缺乏系统性和客观性,因此会引起皮肤表面不规则性作为副作用。为了确定更系统和定量的抽脂过程,外科医生需要使用外科手术机器人系统进行抽脂。在这种系统中,首先要考虑的是皮下脂肪的导航,尤其是真皮和筋膜皮肤层的检测。因此,本文提出了一种使用超声图像检测皮肤结构中真皮和筋膜的方法,该方法可以在吸脂过程中帮助外科医生进行手术。本文提出的方法包括以下三个步骤。 1)使用Gabor滤波器组,从超声图像中提取纹理特征。 2)使用k均值聚类算法,从纹理特征中提取聚类区域,以使聚类区域包含相似的纹理特征。 3)在训练了多类SVM之后,从每个群集的几何信息中检测出真皮和筋膜作为特征。使用所提出的算法,真皮的精确度和召回率的性能结果分别为96%和100%。对于面板,精度为71.11%,召回率为86.49%。所提出的算法将在不久的将来用作外科手术吸脂机器人的开发中用作导航系统。

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