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Multi-class biological tissue classification based on a multi-classifier: Preliminary study of an automatic output power control for ultrasonic surgical units

机译:基于多分类器的多分类生物组织分类:超声外科单元自动输出功率控制的初步研究

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摘要

Ultrasonic surgical units (USUs) have the advantage of minimizing tissue damage during surgeries that require tissue dissection by reducing problems such as coagulation and unwanted carbonization, but the disadvantage of requiring manual adjustment of power output according to the target tissue. In order to overcome this limitation, it is necessary to determine the properties of in vivo tissues automatically. We propose a multi-classifier that can accurately classify tissues based on the unique impedance of each tissue. For this purpose, a multi-classifier was built based on single classifiers with high classification rates, and the classification accuracy of the proposed model was compared with that of single classifiers for various electrode types (Type-I: 6 mm invasive; Type-II: 3 mm invasive; Type-III: surface). The sensitivity and positive predictive value (PPV) of the multi-classifier by cross checks were determined. According to the 10-fold cross validation results, the classification accuracy of the proposed model was significantly higher (p < 0.05 or <0.01) than that of existing single classifiers for all electrode types. In particular, the classification accuracy of the proposed model was highest when the 3 mm invasive electrode (Type-II) was used (sensitivity=97.33-100.00%; PPV=96.71-100.00%). The results of this study-are an important contribution to achieving automatic optimal output power adjustment of USUs according to the properties of individual tissues. (C) 2015 Elsevier Ltd. All rights reserved.
机译:超声外科单元(USU)的优点是,通过减少诸如凝结和不希望的碳化之类的问题,可将需要解剖的外科手术期间的组织损伤降至最低,但缺点是需要根据目标组织手动调节功率输出。为了克服该限制,有必要自动确定体内组织的特性。我们提出了一种多分类器,该分类器可以根据每个组织的独特阻抗对组织进行准确分类。为此,在具有高分类率的单分类器的基础上构建了一个多分类器,并将该模型的分类精度与各种电极类型(I型:6 mm侵入性; II型)的单分类器进行了比较。 :3毫米侵入性; III型:表面)。通过交叉检查确定了多分类器的敏感性和阳性预测值(PPV)。根据10倍交叉验证结果,对于所有类型的电极,该模型的分类精度均明显高于现有的单个分类器(p <0.05或<0.01)。尤其是,当使用3毫米有创电极(II型)时,所提出模型的分类准确性最高(灵敏度= 97.33-100.00%; PPV = 96.71-100.00%)。这项研究的结果对根据单个组织的特性实现USU的自动最佳输出功率调节做出了重要贡献。 (C)2015 Elsevier Ltd.保留所有权利。

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