[Advances in computational quantitative nephropathology].

Pathologie (Heidelberg, Germany) Pub Date : 2024-03-01 Epub Date: 2024-02-02 DOI:10.1007/s00292-024-01300-1
Roman D Bülow, Patrick Droste, Peter Boor
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Abstract

Background: Semiquantitative histological scoring systems are frequently used in nephropathology. In computational nephropathology, the focus is on generating quantitative data from histology (so-called pathomics). Several recent studies have collected such data using next-generation morphometry (NGM) based on segmentations by artificial neural networks and investigated their usability for various clinical or diagnostic purposes.

Aim: To present an overview of the current state of studies regarding renal pathomics and to identify current challenges and potential solutions.

Materials and methods: Due to the literature restriction (maximum of 30 references), studies were selected based on a database search that processed as much data as possible, used innovative methodologies, and/or were ideally multicentric in design.

Results and discussion: Pathomics studies in the kidney have impressively demonstrated that morphometric data are useful clinically (for example, for prognosis assessment) and translationally. Further development of NGM requires overcoming some challenges, including better standardization and generation of prospective evidence.

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[计算定量肾病理学的进展]。
背景:半定量组织学评分系统经常用于肾脏病理学。在计算肾病理学中,重点是从组织学中生成定量数据(即所谓的病理组学)。最近的几项研究利用基于人工神经网络分割的下一代形态计量学(NGM)收集了此类数据,并研究了它们在各种临床或诊断目的中的可用性。目的:概述肾脏病理组学的研究现状,确定当前的挑战和潜在的解决方案:由于文献限制(最多 30 篇参考文献),因此根据数据库搜索结果选择了尽可能多的数据处理、使用创新方法和/或理想的多中心设计的研究:肾脏病理组学研究令人印象深刻地表明,形态计量数据在临床(如预后评估)和转化方面都很有用。进一步发展 NGM 需要克服一些挑战,包括更好地标准化和生成前瞻性证据。
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