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Evaluating Pedicle-Screw Instrumentation Using Decision-Tree Analysis Based on Pullout Strength

机译:基于抗拔强度的决策树分析评估椎弓根螺钉器械

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Study Design A biomechanical study of pedicle-screw pullout strength. Purpose To develop a decision tree based on pullout strength for evaluating pedicle-screw instrumentation. Overview of Literature Clinically, a surgeon’s understanding of the holding power of a pedicle screw is based on perioperative intuition (which is like insertion torque) while inserting the screw. This is a subjective feeling that depends on the skill and experience of the surgeon. With the advent of robotic surgery, there is an urgent need for the creation of a patient-specific surgical planning system. A learning-based predictive model is needed to understand the sensitivity of pedicle-screw holding power to various factors. Methods Pullout studies were carried out on rigid polyurethane foam, representing extremely osteoporotic to normal bone for different insertion depths and angles of a pedicle screw. The results of these experimental studies were used to build a pullout-strength predictor and a decision tree using a machine-learning approach. Results Based on analysis of variance, it was found that all the factors under study had a significant effect ( p 0.05) on the holding power of a pedicle screw. Of the various machine-learning techniques, the random forest regression model performed well in predicting the pullout strength and in creating a decision tree. Performance was evaluated, and a correlation coefficient of 0.99 was obtained between the observed and predicted values. The mean and standard deviation of the normalized predicted pullout strength for the confirmation experiment using the current model was 1.01±0.04. Conclusions The random forest regression model was used to build a pullout-strength predictor and decision tree. The model was able to predict the holding power of a pedicle screw for any combination of density, insertion depth, and insertion angle for the chosen range. The decision-tree model can be applied in patient-specific surgical planning and a decision-support system for spine-fusion surgery.
机译:研究设计椎弓根螺钉拉出强度的生物力学研究。目的建立基于拔出力的决策树,以评估椎弓根螺钉器械。文献综述临床上,外科医生对椎弓根螺钉的夹持力的理解是基于围手术期的直觉(就像插入扭矩一样)。这是一种主观感觉,取决于外科医生的技能和经验。随着机器人手术的出现,迫切需要创建针对患者的手术计划系统。需要基于学习的预测模型来了解椎弓根螺钉握持力对各种因素的敏感性。方法在硬质聚氨酯泡沫塑料上进行拔出研究,对于不同深度和角度的椎弓根螺钉,骨质疏松症对正常骨骼具有极高的骨质疏松性。这些实验研究的结果被用来使用机器学习方法来构建抗拔强度预测器和决策树。结果基于方差分析,发现所有研究的因素均对椎弓根螺钉的夹持力具有显着影响(p <0.05)。在各种机器学习技术中,随机森林回归模型在预测抽取强度和创建决策树方面表现良好。评估了性能,观察值和预测值之间的相关系数为0.99。使用当前模型进行的确认实验的标准化预测拔出强度的平均值和标准偏差为1.01±0.04。结论采用随机森林回归模型建立了抗拔强度预测因子和决策树。该模型能够针对所选范围的密度,插入深度和插入角度的任意组合预测椎弓根螺钉的保持力。决策树模型可以应用于针对特定患者的手术计划和脊柱融合手术的决策支持系统。

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