A Machine Learning-Driven Virtual Biopsy System For Kidney Transplant Patients.
Daniel YooGillian DivardMarc RaynaudAaron CohenTom D MoneJohn Thomas RosenthalAndrew John BentallMark D StegallMaarten NaesensHuanxi ZhangChangxi WangJuliette GueguenNassim KamarAntoine BouquegneauIbrahim BatalShana M ColeyJohn S GillFederico OppenheimerErika De Sousa-AmorimDirk R J KuypersAntoine DurrbachDaniel SeronMarion RabantJean-Paul Duong Van HuyenPatricia CampbellSoroush ShojaiMichael MengelOriol BestardNikolina Basic-JukicIvana JurićPeter BoorLynn D CornellMariam P AlexanderPatrick Toby CoatesChristophe LegendrePeter P ReeseCarmen LefaucheurOlivier AubertAlexandre LoupyPublished in: Nature communications (2024)
In kidney transplantation, day-zero biopsies are used to assess organ quality and discriminate between donor-inherited lesions and those acquired post-transplantation. However, many centers do not perform such biopsies since they are invasive, costly and may delay the transplant procedure. We aim to generate a non-invasive virtual biopsy system using routinely collected donor parameters. Using 14,032 day-zero kidney biopsies from 17 international centers, we develop a virtual biopsy system. 11 basic donor parameters are used to predict four Banff kidney lesions: arteriosclerosis, arteriolar hyalinosis, interstitial fibrosis and tubular atrophy, and the percentage of renal sclerotic glomeruli. Six machine learning models are aggregated into an ensemble model. The virtual biopsy system shows good performance in the internal and external validation sets. We confirm the generalizability of the system in various scenarios. This system could assist physicians in assessing organ quality, optimizing allograft allocation together with discriminating between donor derived and acquired lesions post-transplantation.
Keyphrases
- ultrasound guided
- kidney transplantation
- machine learning
- fine needle aspiration
- end stage renal disease
- newly diagnosed
- ejection fraction
- primary care
- artificial intelligence
- chronic kidney disease
- big data
- prognostic factors
- peritoneal dialysis
- quality improvement
- cell therapy
- minimally invasive
- stem cells
- bone marrow
- endothelial cells
- neural network
- high glucose