TY - JOUR
T1 - Automated Segmentation of Kidney Cortex and Medulla in CT Images
T2 - A Multisite Evaluation Study
AU - Korfiatis, Panagiotis
AU - Denic, Aleksandar
AU - Edwards, Marie E.
AU - Gregory, Adriana V.
AU - Wright, Darryl E.
AU - Mullan, Aidan
AU - Augustine, Joshua
AU - Rule, Andrew D.
AU - Kline, Timothy L.
N1 - Funding Information:
This work was supported by the National Institute of Diabetes and Digestive and Kidney Diseases of the National Institutes of Health under awards K01DK110136, R03DK125632, and R01DK090358.
Publisher Copyright:
ß 2022 by the American Society of Nephrology
PY - 2022/2
Y1 - 2022/2
N2 - Background In kidney transplantation, a contrast CT scan is obtained in the donor candidate to detect subclinical pathology in the kidney. Recent work from the Aging Kidney Anatomy study has characterized kidney, cortex, and medulla volumes using a manual image-processing tool. However, this technique is time consuming and impractical for clinical care, and thus, these measurements are not obtained during donor evaluations. This study proposes a fully automated segmentation approach for measuring kidney, cortex, and medulla volumes. Methods A total of 1930 contrast-enhanced CT exams with reference standard manual segmentations from one institution were used to develop the algorithm. A convolutional neural network model was trained (n51238) and validated (n5306), and then evaluated in a hold-out test set of reference standard segmentations (n5386). After the initial evaluation, the algorithm was further tested on datasets originating from two external sites (n51226). Results The automated model was found to perform on par with manual segmentation, with errors similar to interobserver variability with manual segmentation. Compared with the reference standard, the automated approach achieved a Dice similarity metric of 0.94 (right cortex), 0.90 (right medulla), 0.94 (left cortex), and 0.90 (left medulla) in the test set. Similar performance was observed when the algorithm was applied on the two external datasets. Conclusions A fully automated approach for measuring cortex and medullary volumes in CT images of the kidneys has been established. This method may prove useful for a wide range of clinical applications.
AB - Background In kidney transplantation, a contrast CT scan is obtained in the donor candidate to detect subclinical pathology in the kidney. Recent work from the Aging Kidney Anatomy study has characterized kidney, cortex, and medulla volumes using a manual image-processing tool. However, this technique is time consuming and impractical for clinical care, and thus, these measurements are not obtained during donor evaluations. This study proposes a fully automated segmentation approach for measuring kidney, cortex, and medulla volumes. Methods A total of 1930 contrast-enhanced CT exams with reference standard manual segmentations from one institution were used to develop the algorithm. A convolutional neural network model was trained (n51238) and validated (n5306), and then evaluated in a hold-out test set of reference standard segmentations (n5386). After the initial evaluation, the algorithm was further tested on datasets originating from two external sites (n51226). Results The automated model was found to perform on par with manual segmentation, with errors similar to interobserver variability with manual segmentation. Compared with the reference standard, the automated approach achieved a Dice similarity metric of 0.94 (right cortex), 0.90 (right medulla), 0.94 (left cortex), and 0.90 (left medulla) in the test set. Similar performance was observed when the algorithm was applied on the two external datasets. Conclusions A fully automated approach for measuring cortex and medullary volumes in CT images of the kidneys has been established. This method may prove useful for a wide range of clinical applications.
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U2 - 10.1681/ASN.2021030404
DO - 10.1681/ASN.2021030404
M3 - Article
C2 - 34876489
AN - SCOPUS:85123968663
SN - 1046-6673
VL - 33
SP - 420
EP - 430
JO - Journal of the American Society of Nephrology : JASN
JF - Journal of the American Society of Nephrology : JASN
IS - 2
ER -