山东大学学报 (医学版) ›› 2023, Vol. 61 ›› Issue (3): 57-62.doi: 10.6040/j.issn.1671-7554.0.2022.1299
• 基础医学 • 上一篇
陈炳荣1,施勇旺2,李嘉浩1,翟吉良1,刘梁3,刘文勇4,胡磊5,赵宇1
CHEN Bingrong1, SHI Yongwang2, LI Jiahao1, ZHAI Jiliang1, LIU Liang3, LIU Wenyong4, HU Lei5, ZHAO Yu1
摘要: 目的 测量不同脊柱组织的电阻抗,基于支持向量机建立电阻抗数据的组织分类算法并验证算法的准确性,寻找不同组织电阻抗分类阈值。 方法 取离体脊柱组织,应用电化学分析仪采集10~100 kHz频率范围内皮质骨、松质骨、脊髓、肌肉、髓核的电阻抗。将两只猪采集的数据集分别作为训练集和测试集,应用主成分分析降维至二维数据,训练和验证基于支持向量机(SVM)建立的分类算法,应用集成学习的方法计算不同组织分类的电阻抗阈值。 结果 5种组织在10~100 kHz的测量频率内,电阻抗值差异有统计学意义(P<0.001)。应用主成分分析降维的数据集建立的支持向量机分类算法识别不同组织的准确率为100%。应用集成学习建立的多个分类器计算出了不同组织的电阻抗分类阈值。 结论 基于支持向量机可以实现脊柱术区组织电阻抗的准确识别,有望应用于临床协助医生提升组织识别准确率。
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