...
首页> 外文期刊>Asian spine journal. >Pullout Strength Predictor: A Machine Learning Approach
【24h】

Pullout Strength Predictor: A Machine Learning Approach

机译:拉伸强度预测指标:机器学习方法

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Study Design A biomechanical study. Purpose To develop a predictive model for pullout strength. Overview of Literature Spine fusion surgeries are performed to correct joint deformities by restricting motion between two or more unstable vertebrae. The pedicle screw provides a corrective force to the unstable spinal segment and arrests motions at the unit that are being fused. To determine the hold of a screw, surgeons depend on a subjective perioperative feeling of insertion torque. The objective of the paper was to develop a machine learning based model using density of foam, insertion angle, insertion depth, and reinsertion to predict the pullout strength of pedicle screw. Methods To predict the pullout strength of pedicle screw, an experimental dataset of 48 data points was used as training data to construct a model based on different machine learning algorithms. A total of five algorithms were tested in the Weka environment and the performance was evaluated based on correlation coefficient and error matrix. A sensitive study of various parameters for obtaining the best combination of parameters for predicting the pullout strength was also preformed using the L9 orthogonal array of Taguchi Design of Experiments. Results Random forest performed the best with a correlation coefficient of 0.96, relative absolute error of 0.28, and root relative squared error of 0.29. The difference between the experimental and predicted value for the six test cases was not significant ( p 0.05). Conclusions This model can be used clinically for understanding the failure of pedicle screw pullout and pre-surgical planning for spine surgeon.
机译:研究设计生物力学研究。目的是制定拉出力量的预测模型。文学脊柱融合手术概述通过限制两个或多个不稳定椎骨之间的运动来进行纠正关节畸形。椎弓根螺钉为不稳定的脊椎段提供矫正力并在融合的单元处停止运动。为了确定螺钉的保持,外科医生取决于插入扭矩的主观围手术期感。本文的目的是使用泡沫,插入角度,插入深度和重新插入的密度开发基于机器学习的模型,以预测椎弓根螺钉的拉出强度。方法预测椎弓根螺钉拉出强度,48个数据点的实验数据集用作构建基于不同机器学习算法的模型的训练数据。在Weka环境中测试了总共五种算法,并且基于相关系数和错误矩阵评估性能。使用TAGUCHI设计的L9正交阵列,还预先成形了对预测拉出强度的最佳参数的各种参数的敏感性研究。结果随机森林表现为最佳,相关系数为0.96,相对绝对误差为0.28,根相对平方误差为0.29。六种测试病例的实验和预测值之间的差异不显着(p> 0.05)。结论该模型可在临床上使用,以了解椎弓根螺杆拔出的故障和脊柱外科医生的前手术规划。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号