An automated histological classification system for precision diagnostics of kidney allografts.
Daniel YooValentin GoutaudierGillian DivardJuliette GueguenBrad C AstorOlivier AubertMarc RaynaudZeynep DemirJulien HoganPatricia WengJodi SmithRouba GarroBradley A WaradyRima S ZahrMarta SablikKatherine E TwombleyLionel CouziThierry BerneyOlivia BoyerJean-Paul Duong-Van-HuyenMagali GiralAlaa AlsadiPierre A GourraudEmmanuel MorelonMoglie Le QuintrecSophie BrouardChristophe LegendreDany AnglicheauJean VillardWeixiong ZhongNassim KamarOriol BestardArjang DjamaliKlemens BuddeMark HaasCarmen LefaucheurMarion RabantAlexandre LoupyPublished in: Nature medicine (2023)
For three decades, the international Banff classification has been the gold standard for kidney allograft rejection diagnosis, but this system has become complex over time with the integration of multimodal data and rules, leading to misclassifications that can have deleterious therapeutic consequences for patients. To improve diagnosis, we developed a decision-support system, based on an algorithm covering all classification rules and diagnostic scenarios, that automatically assigns kidney allograft diagnoses. We then tested its ability to reclassify rejection diagnoses for adult and pediatric kidney transplant recipients in three international multicentric cohorts and two large prospective clinical trials, including 4,409 biopsies from 3,054 patients (62.05% male and 37.95% female) followed in 20 transplant referral centers in Europe and North America. In the adult kidney transplant population, the Banff Automation System reclassified 83 out of 279 (29.75%) antibody-mediated rejection cases and 57 out of 105 (54.29%) T cell-mediated rejection cases, whereas 237 out of 3,239 (7.32%) biopsies diagnosed as non-rejection by pathologists were reclassified as rejection. In the pediatric population, the reclassification rates were 8 out of 26 (30.77%) for antibody-mediated rejection and 12 out of 39 (30.77%) for T cell-mediated rejection. Finally, we found that reclassification of the initial diagnoses by the Banff Automation System was associated with an improved risk stratification of long-term allograft outcomes. This study demonstrates the potential of an automated histological classification to improve transplant patient care by correcting diagnostic errors and standardizing allograft rejection diagnoses.ClinicalTrials.gov registration: NCT05306795 .
Keyphrases
- electronic health record
- end stage renal disease
- machine learning
- clinical trial
- chronic kidney disease
- deep learning
- newly diagnosed
- ejection fraction
- randomized controlled trial
- prognostic factors
- artificial intelligence
- type diabetes
- kidney transplantation
- open label
- pain management
- metabolic syndrome
- patient reported outcomes
- data analysis