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Robust Versus Non-Robust Radiomic Features: Machine Learning Based Models for Nsclc Lymphovascular Invasion Publisher



Hosseini SA1 ; Hajianfar G2 ; Hosseini E3 ; Servaes S4 ; Rosaneto P4, 5, 6 ; Shiri I7 ; Zaidi H7
Authors
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Authors Affiliations
  1. 1. Tehran University of Medical Sciences, Department of Medical Physics and Biomedical Engineering, Tehran, Iran
  2. 2. Iran University of Medical Sciences, Rajaie Cardiovascular Medical and Research Center, Tehran, Iran
  3. 3. Kharazmi University, Department of Electrical and Computer Engineering, Tehran, Iran
  4. 4. The McGill University Research Centre for Studies in Aging, Douglas Hospital, McGill University, Translational Neuroimaging Laboratory, Montreal, QC, Canada
  5. 5. McGill University, Department of Neurology and Neurosurgery, Montreal, QC, Canada
  6. 6. Montreal Neurological Institute, Montreal, QC, Canada
  7. 7. Geneva University Hospital, Division of Nuclear Medicine and Molecular Imaging, Geneva, 1211, Switzerland

Source: 2022 IEEE NSS/MIC RTSD - IEEE Nuclear Science Symposium# Medical Imaging Conference and Room Temperature Semiconductor Detector Conference Published:2022


Abstract

The application of radiomic features for predicting and diagnosing lung cancer has been established in previous studies. However, radiomic features might be weak in terms of reproducibility. This study aimed to determine robust features against lung motion in a multicenter study, followed by choosing bold features using various feature selection methods and comparing them with the standard method results without considering the robustness of features. To this end, an in-house developed lung phantom was used. A specific motor was manufactured to simulate motion in 2 orthogonal directions. Lesions and tumors were delineated using a semi-automatic segmentation. In total, 105 radiomic features were extracted. Three different feature selections and five machine learning classifiers were implanted in this study. First, the Intraclass Correlation Coefficient (ICC) was calculated to show the variability of radiomic features and select robust features with an ICC of more than 90%. Next, the selected robust features went through various feature selection methods. Finally, the results of this method were compared with outcomes of regular feature selection without considering the robust features in multiple machine learning classifiers of an imbalanced clinical data set. Our result demonstrated that although considering the robustness of radiomic features has a minor negative impact on prediction accuracy, it has a significant productive impact on sensitivity. © 2022 IEEE.
1. Machine Learning-Based Overall Survival Prediction in Gbm Patients Using Mri Radiomics, 2022 IEEE NSS/MIC RTSD - IEEE Nuclear Science Symposium# Medical Imaging Conference and Room Temperature Semiconductor Detector Conference (2022)
2. Mri Radiomic Features Harmonization: A Multi-Center Phantom Study, 2022 IEEE NSS/MIC RTSD - IEEE Nuclear Science Symposium# Medical Imaging Conference and Room Temperature Semiconductor Detector Conference (2022)
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