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A novel deep learning approach for predicting stone-free rates post-ESWL on uncontrasted CT
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Extracorporeal shock wave lithotripsy (ESWL) is one of the most often employed therapy methods for managing kidney stones. In our work, we sought to assess the efficacy of the artificial intelligence model developed using non-contrast computed tomography (CT) images in predicting stone-free rates for ESWL. The main difference between this study and other studies is that it proposes an artificial intelligence-based model that predicts the success of ESWL treatment using artificial intelligence methods. Data from 910 patients who underwent ESWL between January 2016 and June 2021 were analyzed retrospectively. Since the local binary pattern (LBP) and histogram of oriented gradients (HOG) feature extraction methods gave more successful results than other methods, a new feature map was obtained using the neighborhood component analysis (NCA) dimension reduction method after combining the features obtained using these methods. Then, the reduced feature map was classified into classifiers. In conclusion, we analyzed the effect of ESWL treatment using different artificial intelligence methods and found that the prediction accuracy was 94% on average. Results were obtained from seven different convolutional neural networks (CNNs) and two textural-based models in the study. Since textural-based models achieved the highest success among these models, these models were used as the base in the proposed model. The proposed model achieved better results than nine different models used in the study. When the results obtained from the proposed hybrid model for ESWL prediction are examined, this model will guide experts in the treatment of the disease.
Title: A novel deep learning approach for predicting stone-free rates post-ESWL on uncontrasted CT
Description:
Extracorporeal shock wave lithotripsy (ESWL) is one of the most often employed therapy methods for managing kidney stones.
In our work, we sought to assess the efficacy of the artificial intelligence model developed using non-contrast computed tomography (CT) images in predicting stone-free rates for ESWL.
The main difference between this study and other studies is that it proposes an artificial intelligence-based model that predicts the success of ESWL treatment using artificial intelligence methods.
Data from 910 patients who underwent ESWL between January 2016 and June 2021 were analyzed retrospectively.
Since the local binary pattern (LBP) and histogram of oriented gradients (HOG) feature extraction methods gave more successful results than other methods, a new feature map was obtained using the neighborhood component analysis (NCA) dimension reduction method after combining the features obtained using these methods.
Then, the reduced feature map was classified into classifiers.
In conclusion, we analyzed the effect of ESWL treatment using different artificial intelligence methods and found that the prediction accuracy was 94% on average.
Results were obtained from seven different convolutional neural networks (CNNs) and two textural-based models in the study.
Since textural-based models achieved the highest success among these models, these models were used as the base in the proposed model.
The proposed model achieved better results than nine different models used in the study.
When the results obtained from the proposed hybrid model for ESWL prediction are examined, this model will guide experts in the treatment of the disease.
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STONE FREE RATES OF KIDNEY STONE WAS LOWER THAN THE ONE OF URETER STONE PATIENTS MANAGED BY ESWL AND THE ONE OF URETER STONE MANAGED BY URETEROLITHOTRIPSY
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