dc.contributor.author
Taylor, Jonathan
dc.contributor.author
Thomas, Richard
dc.contributor.author
Metherall, Peter
dc.contributor.author
van Gastel, Marieke
dc.contributor.author
Cornec-Le Gall, Emilie
dc.contributor.author
Caroli, Anna
dc.contributor.author
Furlano, Monica
dc.contributor.author
Demoulin, Nathalie
dc.contributor.author
Devuyst, Olivier
dc.contributor.author
Winterbottom, Jean
dc.contributor.author
Torra Balcells, Roser
dc.contributor.author
Perico, Norberto
dc.contributor.author
Le Meur, Yannick
dc.contributor.author
Schoenherr, Sebastian
dc.contributor.author
Forer, Lukas
dc.contributor.author
Gansevoort, Ron T.
dc.contributor.author
Simms, Roslyn J.
dc.contributor.author
Ong, Albert C. M.
dc.contributor.author
Universitat Autònoma de Barcelona
dc.identifier
https://ddd.uab.cat/record/291421
dc.identifier
urn:10.1016/j.ekir.2023.10.029
dc.identifier
urn:oai:ddd.uab.cat:291421
dc.identifier
urn:pmcid:PMC10851006
dc.identifier
urn:pmc-uid:10851006
dc.identifier
urn:pmid:38344736
dc.identifier
urn:oai:pubmedcentral.nih.gov:10851006
dc.identifier
urn:articleid:24680249v9p249
dc.identifier
urn:oai:egreta.uab.cat:publications/174679cf-1f2e-4193-b3f0-7f6291dcb5aa
dc.description.abstract
Accurate tools to inform individual prognosis in patients with autosomal dominant polycystic kidney disease (ADPKD) are lacking. Here, we report an artificial intelligence (AI)-generated method for routinely measuring total kidney volume (TKV). An ensemble U-net algorithm was created using the nnUNet approach. The training and internal cross-validation cohort consisted of all 1.5T magnetic resonance imaging (MRI) data acquired using 5 different MRI scanners (454 kidneys, 227 scans) in the CYSTic consortium, which was first manually segmented by a single human operator. As an independent validation cohort, we utilized 48 sequential clinical MRI scans with reference results of manual segmentation acquired by 6 individual analysts at a single center. The tool was then implemented for clinical use and its performance analyzed. The training or internal validation cohort was younger (mean age 44.0 vs. 51.5 years) and the female-to-male ratio higher (1.2 vs. 0.94) compared to the clinical validation cohort. The majority of CYSTic patients had PKD1 mutations (79%) and typical disease (Mayo Imaging class 1, 86%). The median DICE score on the clinical validation data set between the algorithm and human analysts was 0.96 for left and right kidneys with a median TKV error of -1.8%. The time taken to manually segment kidneys in the CYSTic data set was 56 (±28) minutes, whereas manual corrections of the algorithm output took 8.5 (±9.2) minutes per scan. Our AI-based algorithm demonstrates performance comparable to manual segmentation. Its rapidity and precision in real-world clinical cases demonstrate its suitability for clinical application.
dc.format
application/pdf
dc.relation
Kidney International Reports ; Vol. 9 (november 2023), p. 249-256
dc.rights
Aquest document està subjecte a una llicència d'ús Creative Commons. Es permet la reproducció total o parcial, la distribució, i la comunicació pública de l'obra, sempre que no sigui amb finalitats comercials, i sempre que es reconegui l'autoria de l'obra original. No es permet la creació d'obres derivades.
dc.rights
https://creativecommons.org/licenses/by-nc-nd/4.0/
dc.subject
Artificial intelligence
dc.subject
Machine learning
dc.subject
Magnetic resonance imaging
dc.subject
Total kidney volume
dc.title
An Artificial Intelligence Generated Automated Algorithm to Measure Total Kidney Volume in ADPKD