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  5. Supervised machine learning to predict drilling temperature of bone
 
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Supervised machine learning to predict drilling temperature of bone

Journal
Applied Sciences
ISSN
2076-3417
Date Issued
2024
Author(s)
Md Ashequl Islam
Universiti Malaysia Perlis
Nur Saifullah Bin Kamarrudin
Universiti Malaysia Perlis
Muhammad Farzik Ijaz
King Saud University, Saudi Arabia
Ruslizam Daud
Universiti Malaysia Perlis
Abdulnasser Nabil Abdullah
Universiti Malaysia Perlis
Khairul Salleh Basaruddin
Universiti Malaysia Perlis
Hiroshi Takemura
Tokyo University of Science, Japan
DOI
10.3390/app14178001
Handle (URI)
https://www.mdpi.com/2076-3417/14/17/8001
https://www.mdpi.com
https://hdl.handle.net/20.500.14170/16228
Abstract
Surgeons face a significant challenge due to the heat generated during drilling, as excessive temperatures at the bone–tool interface can lead to irreversible damage to the regenerative soft tissue and result in thermal osteonecrosis. While previous studies have explored the use of machine learning to predict the temperature rise during bone drilling, this in vitro study introduces a comprehensive approach by combining the Response Surface Methodology (RSM) with advanced machine learning techniques. The main objective lies in the comprehensive evaluation and comparison of support vector machine (SVM) and random forest (RF) models specifically for the optimization of the bone drilling parameters to prevent thermal bone necrosis. A total of 27 experiments were conducted using a multi-level factorial method, with analysis performed via the Minitab software version 19.1. Performance metrics such as the mean squared error (MSE), mean absolute percentage error (MAPE), and coefficient of determination (R2) were used to assess model accuracy. The RF model emerged as the most effective, with R2 values of 94.2% for testing and 97.3% for training data, significantly outperforming other models in predicting temperature fluctuations. This study demonstrates the superior predictive capabilities of the RF model and offers a robust framework for the optimization of surgical procedures to mitigate the risk of thermal damage.
Subjects
  • Bone drilling

  • machine learning

  • Random forest regress...

  • Support vector

  • Temperature predictio...

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Supervised machine learning to predict drilling temperature of bone.pdf (4.27 MB)
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