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Enhancing Renal Tumor Detection: Leveraging Artificial Neural Networks in Computed Tomography Analysis

BACKGROUND: Renal cell carcinoma is one of the most common cancers in Europe, with a total incidence rate of 18.4 cases per 100 000 population. There is currently significant overdiagnosis (11% to 30.9%) at times of planned surgery based on radiological studies. The purpose of this study was to crea...

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Autores principales: Glembin, Mateusz, Obuchowski, Aleksander, Klaudel, Barbara, Rydzinski, Bartosz, Karski, Roman, Syty, Paweł, Jasik, Patryk, Narożański, Wojciech Józef
Formato: Online Artículo Texto
Lenguaje:English
Publicado: International Scientific Literature, Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10257355/
https://www.ncbi.nlm.nih.gov/pubmed/37279185
http://dx.doi.org/10.12659/MSM.939462
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author Glembin, Mateusz
Obuchowski, Aleksander
Klaudel, Barbara
Rydzinski, Bartosz
Karski, Roman
Syty, Paweł
Jasik, Patryk
Narożański, Wojciech Józef
author_facet Glembin, Mateusz
Obuchowski, Aleksander
Klaudel, Barbara
Rydzinski, Bartosz
Karski, Roman
Syty, Paweł
Jasik, Patryk
Narożański, Wojciech Józef
author_sort Glembin, Mateusz
collection PubMed
description BACKGROUND: Renal cell carcinoma is one of the most common cancers in Europe, with a total incidence rate of 18.4 cases per 100 000 population. There is currently significant overdiagnosis (11% to 30.9%) at times of planned surgery based on radiological studies. The purpose of this study was to create an artificial neural network (ANN) solution based on computed tomography (CT) images as an additional tool to improve the differentiation of malignant and benign renal tumors and to aid active surveillance. MATERIAL/METHODS: A retrospective study based on CT images was conducted. Axial CT images of 357 renal tumor cases were collected. There were 265 (74.2%) cases histologically proven to be malignant, while 34 (9.5%) cases were benign. Radiologists diagnosed 58 (16.3%) cases as angiomyolipoma (AML), based on characteristic appearance, not confirmed histopathologically. For ANN training, the arterial CT phase images were used. A total of 7207 arterial-phase images were collected, then cropped and added to the database with the associated diagnosis. For the test dataset (ANN validation), 38 cases (10 benign, 28 malignant) were chosen by subgroup randomization to correspond to statistical tumor type distribution. The VGG-16 ANN architecture was used in this study. RESULTS: Trained ANN correctly classified 23 out of 28 malignant tumors and 8 out of 10 benign tumors. Accuracy was 81.6% (95% confidence interval, 65.7–92.3%), sensitivity was 82.1% (63.1–93.9%), specificity was 80.0% (44.4–97.5%), and F1 score was 86.8% (74.7–94.5%). CONCLUSIONS: The created ANN achieved promising accuracy in differentiating benign vs malignant renal tumors.
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spelling pubmed-102573552023-06-11 Enhancing Renal Tumor Detection: Leveraging Artificial Neural Networks in Computed Tomography Analysis Glembin, Mateusz Obuchowski, Aleksander Klaudel, Barbara Rydzinski, Bartosz Karski, Roman Syty, Paweł Jasik, Patryk Narożański, Wojciech Józef Med Sci Monit Database Analysis BACKGROUND: Renal cell carcinoma is one of the most common cancers in Europe, with a total incidence rate of 18.4 cases per 100 000 population. There is currently significant overdiagnosis (11% to 30.9%) at times of planned surgery based on radiological studies. The purpose of this study was to create an artificial neural network (ANN) solution based on computed tomography (CT) images as an additional tool to improve the differentiation of malignant and benign renal tumors and to aid active surveillance. MATERIAL/METHODS: A retrospective study based on CT images was conducted. Axial CT images of 357 renal tumor cases were collected. There were 265 (74.2%) cases histologically proven to be malignant, while 34 (9.5%) cases were benign. Radiologists diagnosed 58 (16.3%) cases as angiomyolipoma (AML), based on characteristic appearance, not confirmed histopathologically. For ANN training, the arterial CT phase images were used. A total of 7207 arterial-phase images were collected, then cropped and added to the database with the associated diagnosis. For the test dataset (ANN validation), 38 cases (10 benign, 28 malignant) were chosen by subgroup randomization to correspond to statistical tumor type distribution. The VGG-16 ANN architecture was used in this study. RESULTS: Trained ANN correctly classified 23 out of 28 malignant tumors and 8 out of 10 benign tumors. Accuracy was 81.6% (95% confidence interval, 65.7–92.3%), sensitivity was 82.1% (63.1–93.9%), specificity was 80.0% (44.4–97.5%), and F1 score was 86.8% (74.7–94.5%). CONCLUSIONS: The created ANN achieved promising accuracy in differentiating benign vs malignant renal tumors. International Scientific Literature, Inc. 2023-06-06 /pmc/articles/PMC10257355/ /pubmed/37279185 http://dx.doi.org/10.12659/MSM.939462 Text en © Med Sci Monit, 2023 https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under Creative Common Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) )
spellingShingle Database Analysis
Glembin, Mateusz
Obuchowski, Aleksander
Klaudel, Barbara
Rydzinski, Bartosz
Karski, Roman
Syty, Paweł
Jasik, Patryk
Narożański, Wojciech Józef
Enhancing Renal Tumor Detection: Leveraging Artificial Neural Networks in Computed Tomography Analysis
title Enhancing Renal Tumor Detection: Leveraging Artificial Neural Networks in Computed Tomography Analysis
title_full Enhancing Renal Tumor Detection: Leveraging Artificial Neural Networks in Computed Tomography Analysis
title_fullStr Enhancing Renal Tumor Detection: Leveraging Artificial Neural Networks in Computed Tomography Analysis
title_full_unstemmed Enhancing Renal Tumor Detection: Leveraging Artificial Neural Networks in Computed Tomography Analysis
title_short Enhancing Renal Tumor Detection: Leveraging Artificial Neural Networks in Computed Tomography Analysis
title_sort enhancing renal tumor detection: leveraging artificial neural networks in computed tomography analysis
topic Database Analysis
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10257355/
https://www.ncbi.nlm.nih.gov/pubmed/37279185
http://dx.doi.org/10.12659/MSM.939462
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