Harnessing Artificial Intelligence for Enhanced Renal Analysis: Automated Detection of Hydronephrosis and Precise Kidney Segmentation.

Artificial intelligence Hydronephrosis Neuronal networks Segmentation

Journal

European urology open science
ISSN: 2666-1683
Titre abrégé: Eur Urol Open Sci
Pays: Netherlands
ID NLM: 101771568

Informations de publication

Date de publication:
Apr 2024
Historique:
accepted: 31 01 2024
medline: 8 4 2024
pubmed: 8 4 2024
entrez: 8 4 2024
Statut: epublish

Résumé

Hydronephrosis is essential in the diagnosis of renal colic. We automated the detection of hydronephrosis from ultrasound images to standardize the therapy and reduce the misdiagnosis of renal colic. Anonymously collected ultrasound images of human kidneys, both normal and hydronephrotic, were preprocessed for neural networks. Six "state of the art" models were trained and cross-validated for the detection of hydronephrosis, and two convolutional networks were used for kidney segmentation. In the testing phase, performance metrics included true positives, true negatives, false positives, false negatives, accuracy, and F1 score, while the evaluation of the segmentation task involved accuracy, precision, dice, jaccard, recall, and ASSD. A total of 523 sonographic kidney images (423 nonhydronephrotic and 100 hydronephrotic) were collected from three different ultrasound devices. After training on this dataset, all models were used to evaluate 200 new ultrasound kidney images (142 nonhydronephrotic and 58 hydronephrotic kidneys). The highest validation accuracy (98.5%) was achieved by the AlexNet model (GoogLeNet 97%, AlexNet_v2 96%, ResNet50 96%, ResNet101 97.5%, and ResNet152 95%). The deeplabv3_resnet50 and deeplabv3_resnet101 reached a dice coefficient of 94.74% and 94.48%, respectively, on the task of automated kidney segmentation. The study is limited by analyzing only hydronephrosis, but this specific focus enabled high detection accuracy. We show that our automated ultrasound deep learning model can be trained and used to interpret and segmentate ultrasound images from different sources with high accuracy. This method will serve as an automated tool in the diagnostic algorithm of acute renal failure in the future. Hydronephrosis is crucial in the diagnosis of renal colic. Recent advances in artificial intelligence allow automated detection of hydronephrosis in ultrasound images with high accuracy. These methods will help standardize the diagnosis and treatment renal colic.

Sections du résumé

Background and objective UNASSIGNED
Hydronephrosis is essential in the diagnosis of renal colic. We automated the detection of hydronephrosis from ultrasound images to standardize the therapy and reduce the misdiagnosis of renal colic.
Methods UNASSIGNED
Anonymously collected ultrasound images of human kidneys, both normal and hydronephrotic, were preprocessed for neural networks. Six "state of the art" models were trained and cross-validated for the detection of hydronephrosis, and two convolutional networks were used for kidney segmentation. In the testing phase, performance metrics included true positives, true negatives, false positives, false negatives, accuracy, and F1 score, while the evaluation of the segmentation task involved accuracy, precision, dice, jaccard, recall, and ASSD.
Key findings and limitations UNASSIGNED
A total of 523 sonographic kidney images (423 nonhydronephrotic and 100 hydronephrotic) were collected from three different ultrasound devices. After training on this dataset, all models were used to evaluate 200 new ultrasound kidney images (142 nonhydronephrotic and 58 hydronephrotic kidneys). The highest validation accuracy (98.5%) was achieved by the AlexNet model (GoogLeNet 97%, AlexNet_v2 96%, ResNet50 96%, ResNet101 97.5%, and ResNet152 95%). The deeplabv3_resnet50 and deeplabv3_resnet101 reached a dice coefficient of 94.74% and 94.48%, respectively, on the task of automated kidney segmentation. The study is limited by analyzing only hydronephrosis, but this specific focus enabled high detection accuracy.
Conclusions and clinical implications UNASSIGNED
We show that our automated ultrasound deep learning model can be trained and used to interpret and segmentate ultrasound images from different sources with high accuracy. This method will serve as an automated tool in the diagnostic algorithm of acute renal failure in the future.
Patient summary UNASSIGNED
Hydronephrosis is crucial in the diagnosis of renal colic. Recent advances in artificial intelligence allow automated detection of hydronephrosis in ultrasound images with high accuracy. These methods will help standardize the diagnosis and treatment renal colic.

Identifiants

pubmed: 38585207
doi: 10.1016/j.euros.2024.01.017
pii: S2666-1683(24)00250-7
pmc: PMC10998270
doi:

Types de publication

Journal Article

Langues

eng

Pagination

19-25

Informations de copyright

© 2024 The Author(s).

Auteurs

Radu Alexa (R)

Department of Urology and Pediatric Urology, University Hospital, RWTH Aachen University, Aachen, Germany.

Jennifer Kranz (J)

Department of Urology and Pediatric Urology, University Hospital, RWTH Aachen University, Aachen, Germany.
Department of Urology and Kidney Transplantation, Martin Luther University, Halle (Saale), Germany.

Rafael Kramann (R)

Department of Nephrology, Rheumatology, Clinical Immunology and Hypertension, RWTH Aachen, Aachen, Germany.

Christoph Kuppe (C)

Department of Nephrology, Rheumatology, Clinical Immunology and Hypertension, RWTH Aachen, Aachen, Germany.

Ritabrata Sanyal (R)

Department of Nephrology, Rheumatology, Clinical Immunology and Hypertension, RWTH Aachen, Aachen, Germany.

Sikander Hayat (S)

Department of Nephrology, Rheumatology, Clinical Immunology and Hypertension, RWTH Aachen, Aachen, Germany.

Luis Felipe Casas Murillo (LF)

Computer Science, University of Texas at Dallas, USA.
Robotic Systems Engineering, RWTH Aachen University, Aachen, Germany.

Turkan Hajili (T)

Department of Urology and Pediatric Urology, University Hospital, RWTH Aachen University, Aachen, Germany.

Marco Hoffmann (M)

Department of Urology and Pediatric Urology, University Hospital, RWTH Aachen University, Aachen, Germany.

Matthias Saar (M)

Department of Urology and Pediatric Urology, University Hospital, RWTH Aachen University, Aachen, Germany.

Classifications MeSH