伽利略--评估植入前肾活检的人工智能工具。

IF 2.7 4区 医学 Q2 UROLOGY & NEPHROLOGY
Albino Eccher, Vincenzo L'Imperio, Liron Pantanowitz, Giorgio Cazzaniga, Fabio Del Carro, Stefano Marletta, Giovanni Gambaro, Antonella Barreca, Jan Ulrich Becker, Stefano Gobbo, Vincenzo Della Mea, Federico Alberici, Fabio Pagni, Angelo Paolo Dei Tos
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引用次数: 0

摘要

背景:由于肾脏病理专家人数较少,肾移植前活检的解释工作具有挑战性。人工智能(AI)可以帮助病理学家进行肾脏捐献者活检评估。我们在此介绍 "伽利略 "人工智能工具,该工具专为协助值班病理学家解读移植前肾脏活检而设计:方法:我们收集了从肾脏核芯针和楔形活检中获取的多中心整张切片图像。对深度学习算法进行了训练,以检测移植前环境中评估的主要结果(正常肾小球、全局性硬化肾小球、缺血性肾小球、动脉和动脉)。三位独立病理学家在外部数据集上验证了在 Aiforia Create 平台上获得的模型,以评估算法的性能:Galileo在训练集和验证集上的精确度、灵敏度、F1得分和总面积误差分别为81.96%、94.39%、87.74%、2.81%和74.05%、71.03%、72.5%、2%。伽利略的速度明显快于病理学家,在验证阶段总共只需要 2 分钟(3 位不同的人类阅读者分别需要 25 分钟、22 分钟和 31 分钟,p 结论):伽利略人工智能辅助工具有望加快移植前肾活检的判读速度,并减少观察者之间的差异。该工具可能是基于移植物存活率等硬终点进一步改进的起点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Galileo-an Artificial Intelligence tool for evaluating pre-implantation kidney biopsies.

Background: Pre-transplant procurement biopsy interpretation is challenging, also because of the low number of renal pathology experts. Artificial intelligence (AI) can assist by aiding pathologists with kidney donor biopsy assessment. Herein we present the "Galileo" AI tool, designed specifically to assist the on-call pathologist with interpreting pre-implantation kidney biopsies.

Methods: A multicenter cohort of whole slide images acquired from core-needle and wedge biopsies of the kidney was collected. A deep learning algorithm was trained to detect the main findings evaluated in the pre-implantation setting (normal glomeruli, globally sclerosed glomeruli, ischemic glomeruli, arterioles and arteries). The model obtained on the Aiforia Create platform was validated on an external dataset by three independent pathologists to evaluate the performance of the algorithm.

Results: Galileo demonstrated a precision, sensitivity, F1 score and total area error of 81.96%, 94.39%, 87.74%, 2.81% and 74.05%, 71.03%, 72.5%, 2% in the training and validation sets, respectively. Galileo was significantly faster than pathologists, requiring 2 min overall in the validation phase (vs 25, 22 and 31 min by 3 separate human readers, p < 0.001). Galileo-assisted detection of renal structures and quantitative information was directly integrated in the final report.

Conclusions: The Galileo AI-assisted tool shows promise in speeding up pre-implantation kidney biopsy interpretation, as well as in reducing inter-observer variability. This tool may represent a starting point for further improvements based on hard endpoints such as graft survival.

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来源期刊
Journal of Nephrology
Journal of Nephrology 医学-泌尿学与肾脏学
CiteScore
5.60
自引率
5.90%
发文量
289
审稿时长
3-8 weeks
期刊介绍: Journal of Nephrology is a bimonthly journal that considers publication of peer reviewed original manuscripts dealing with both clinical and laboratory investigations of relevance to the broad fields of Nephrology, Dialysis and Transplantation. It is the Official Journal of the Italian Society of Nephrology (SIN).
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