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Automated Analysis of Split Kidney Function from CT Scans Using Deep Learning and Delta Radiomics.
Correa-Medero, Ramon Luis; Jeong, Jiwoong; Patel, Bhavik; Banerjee, Imon; Abdul-Muhsin, Haidar.
Afiliação
  • Correa-Medero RL; School of Computing and Augmented Intelligence, Arizona State University, Arizona, USA.
  • Jeong J; School of Computing and Augmented Intelligence, Arizona State University, Arizona, USA.
  • Patel B; School of Computing and Augmented Intelligence, Arizona State University, Arizona, USA.
  • Banerjee I; Department of Radiology, Mayo Clinic Hospital, Phoenix, Arizona, USA.
  • Abdul-Muhsin H; School of Computing and Augmented Intelligence, Arizona State University, Arizona, USA.
J Endourol ; 2024 May 16.
Article em En | MEDLINE | ID: mdl-38695176
ABSTRACT

Background:

Differential kidney function assessment is an important part of preoperative evaluation of various urological interventions. It is obtained through dedicated nuclear medical imaging and is not yet implemented through conventional Imaging.

Objective:

We assess if differential kidney function can be obtained through evaluation of contrast-enhanced computed tomography(CT) using a combination of deep learning and (2D and 3D) radiomic features.

Methods:

All patients who underwent kidney nuclear scanning at Mayo Clinic sites between 2018-2022 were collected. CT scans of the kidneys were obtained within a 3-month interval before or after the nuclear scans were extracted. Patients who underwent a urological or radiological intervention within this time frame were excluded. A segmentation model was used to segment both kidneys. 2D and 3D radiomics features were extracted and compared between the two kidneys to compute delta radiomics and assess its ability to predict differential kidney function. Performance was reported using receiver operating characteristics, sensitivity, and specificity.

Results:

Studies from Arizona & Rochester formed our internal dataset (n = 1,159). Studies from Florida were separately processed as an external test set to validate generalizability. We obtained 323 studies from our internal sites and 39 studies from external sites. The best results were obtained by a random forest model trained on 3D delta radiomics features. This model achieved an area under curve (AUC) of 0.85 and 0.81 on internal and external test sets, while specificity and sensitivity were 0.84,0.68 on the internal set, 0.70, and 0.65 on the external set.

Conclusion:

This proposed automated pipeline can derive important differential kidney function information from contrast-enhanced CT and reduce the need for dedicated nuclear scans for early-stage differential kidney functional assessment. Clinical Impact We establish a machine learning methodology for assessing differential kidney function from routine CT without the need for expensive and radioactive nuclear medicine scans.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article