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首页> 外文期刊>Journal of the Brazilian Society of Mechanical Sciences and Engineering >An intelligent approach to predict thermal injuries during orthopaedic bone drilling using machine learning
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An intelligent approach to predict thermal injuries during orthopaedic bone drilling using machine learning

机译:一种使用机器学习预测骨科骨钻过程中热损伤的智能方法

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The thermal injuries increase with temperature elevation during bone drilling that can cause irreversible, permanent death of regenerative bony cells resulting in thermal osteonecrosis. The ascent in temperature during the drilling procedure is a significant concern for every orthopaedic surgeon. Since it is difficult to monitor and predict temperature elevation during real-time in vivo medical surgery, a robust predictive machine-learning (ML) model has been proposed in the present work. Successively, the efficiency of rotary ultrasonic-assisted bone drilling (RUABD) is experimentally verified to reduce thermal injuries during bone drilling. Several rigorous in vitro experiments were performed on pig femur bone with changing independent variables like rotational speed, feedrate, abrasive grit size, and vibrational ultrasonic power during the study. The assumptions for the implementation of machine learning models have been successfully corroborated and validated. The multi-linear regression was compared with a multilayer perceptron, lasso regression, and ridge regression to provide the most accurate predictive models. The accuracy of ML models was observed with different error metrics such as mean absolute error (MAE), root mean square error (RMSE), and mean square error (MSE). The error metrics of ridge regression were comparatively lower with MAE 1.702 +/- 0.229, RMSE 2.015 +/- 0.398 and MSE 5.214 +/- 1.840 than other ML models. The Ridge regression model was able to predict temperature rise during bone drilling with an adequacy of +/- 1.7 degrees C. The prediction of thermal injuries using machine learning models is the key contribution and a proof-of-concept of the present in vitro study.
机译:在骨钻过程中,热损伤会随着温度升高而增加,这可能导致再生骨细胞不可逆的永久性死亡,从而导致热性骨坏死。钻孔过程中温度的升高是每个整形外科医生都关心的重要问题。由于在体内医疗手术中难以监测和预测实时体温升高,因此提出了一种鲁棒的预测机器学习(ML)模型。先后通过实验验证了旋转超声辅助骨钻(RUABD)的效率,以减少骨钻过程中的热损伤。在研究过程中,对猪股骨进行了几项严格的体外实验,其自变量(如转速、进给速度、磨料粒度和振动超声功率)不断变化。机器学习模型实现的假设已经得到成功证实和验证。将多线性回归与多层感知器、套索回归和岭回归进行比较,以提供最准确的预测模型。使用平均绝对误差 (MAE)、均方根误差 (RMSE) 和均方误差 (MSE) 等不同误差指标观察 ML 模型的准确性。与其他ML模型相比,岭回归的误差指标相对较低,MAE 1.702 +/- 0.229,RMSE 2.015 +/- 0.398,MSE 5.214 +/- 1.840。Ridge 回归模型能够预测骨钻过程中的温度上升,充分性为 +/- 1.7 摄氏度。使用机器学习模型预测热损伤是当前体外研究的关键贡献和概念验证。

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