Banff scoring of kidney allograft biopsies: “Manual” application vs software-assisted sign-out

Author:

Demetris Anthony J1,Lesniak Andrew J1,Popp Benjamin A1,Frencho Ronald J2,Minervini Marta I1,Nalesnik Michael A1,El Hag Mohamed I1,Hariharan Sundaram3,Randhawa Parmjeet S1

Affiliation:

1. Department of Pathology, Division of Transplantation, University of Pittsburgh , Pittsburgh, PA , US

2. Scalable Solutions , Ingomar, PA , US

3. Division of Transplant Nephrology, University of Pittsburgh Medical Center , Pittsburgh, PA , US

Abstract

Abstract Objectives Pathologists interpreting kidney allograft biopsies using the Banff system usually start by recording component scores (eg, i, t, cg) using histopathologic criteria committed to memory. Component scores are then melded into diagnoses using the same manual/mental processes. This approach to complex Banff rules during routine sign-out produces a lack of fidelity and needs improvement. Methods We constructed a web-based “smart template” (software-assisted sign-out) system that uniquely starts with upstream Banff-defined additional diagnostic parameters (eg, infection) and histopathologic criteria (eg, percent interstitial inflammation) collectively referred to as feeder data that is then translated into component scores and integrated into final diagnoses using software-encoded decision trees. Results Software-assisted sign-out enables pathologists to (1) accurately and uniformly apply Banff rules, thereby eliminating human inconsistencies (present in 25% of the cohort); (2) document areas of improvement; (3) show improved correlation with function; (4) examine t-Distributed Stochastic Neighbor Embedding clustering for diagnosis stratification; and (5) ready upstream incorporation of artificial intelligence–assisted scoring of biopsies. Conclusions Compared with the legacy approach, software-assisted sign-out improves Banff accuracy and fidelity, more closely correlates with kidney function, is practical for routine clinical work and translational research studies, facilitates downstream integration with nonpathology data, and readies biopsy scoring for artificial intelligence algorithms.

Funder

Thomas E. Starzl Professor of Pathology Endowment

University of Pittsburgh

Publisher

Oxford University Press (OUP)

Reference20 articles.

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2. Banff survey on antibody-mediated rejection clinical practices in kidney transplantation: diagnostic misinterpretation has potential therapeutic implications;Schinstock,2019

3. A 2018 reference guide to the Banff Classification of Renal Allograft Pathology;Roufosse,2018

4. The Banff 2019 Kidney Meeting Report (I): updates;Loupy,2020

5. Visualizing data using t-SNE;van der Maaten;J Mach Learn Res.,2008

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