Youn Su Hyun, Sim Taeyong, Choi Ahnryul, Song Jinsung, Shin Ki Young, Lee Il Kwon, Heo Hyun Mu, Lee Daeweon, Mun Joung Hwan
Department of Bio-Mechatronic Engineering, College of Biotechnology and Bioengineering, Sungkyunkwan University, 2066, Seobu-ro, Jangan-gu, Suwon-si, Gyeonggi-do, Republic of Korea.
Department of Health Science and Technology, Samsung Advanced Institute for Health Science and Technology, Sungkyunkwan University, 2066, Seobu-ro, Jangan-gu, Suwon-si, Gyeonggi-do, Republic of Korea.
Comput Biol Med. 2015 Jun;61:92-100. doi: 10.1016/j.compbiomed.2015.03.021. Epub 2015 Mar 27.
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 3mm 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.
超声手术设备(USUs)在需要进行组织解剖的手术中具有优势,即通过减少诸如凝血和不必要的碳化等问题来使组织损伤最小化,但缺点是需要根据目标组织手动调整功率输出。为了克服这一局限性,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,它可以根据每种组织独特的阻抗准确地对组织进行分类。为此,基于具有高分类率的单分类器构建了一个多分类器,并将所提出模型的分类准确率与针对各种电极类型(I型:6毫米侵入性;II型:3毫米侵入性;III型:表面型)的单分类器的分类准确率进行了比较。通过交叉检验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,对于所有电极类型,所提出模型的分类准确率均显著高于现有单分类器(p<0.05或<0.01)。特别是,当使用3毫米侵入性电极(II型)时,所提出模型的分类准确率最高(敏感性=97.33 - 100.00%;PPV=96.71 - 100.00%)。本研究结果对于根据个体组织特性实现超声手术设备的自动最佳输出功率调整具有重要贡献。