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实现小儿脑肿瘤测量的一致性:挑战、解决方案和基于人工智能的分割的作用。

Towards consistency in pediatric brain tumor measurements: Challenges, solutions, and the role of artificial intelligence-based segmentation.

机构信息

Center for Data-Driven Discovery in Biomedicine (D3b), Children's Hospital of Philadelphia, Philadelphia, Pennsylvania, USA.

Department of Neurosurgery, Children's Hospital of Philadelphia, Philadelphia, Pennsylvania, USA.

出版信息

Neuro Oncol. 2024 Sep 5;26(9):1557-1571. doi: 10.1093/neuonc/noae093.

Abstract

MR imaging is central to the assessment of tumor burden and changes over time in neuro-oncology. Several response assessment guidelines have been set forth by the Response Assessment in Pediatric Neuro-Oncology (RAPNO) working groups in different tumor histologies; however, the visual delineation of tumor components using MRIs is not always straightforward, and complexities not currently addressed by these criteria can introduce inter- and intra-observer variability in manual assessments. Differentiation of non-enhancing tumors from peritumoral edema, mild enhancement from absence of enhancement, and various cystic components can be challenging; particularly given a lack of sufficient and uniform imaging protocols in clinical practice. Automated tumor segmentation with artificial intelligence (AI) may be able to provide more objective delineations, but rely on accurate and consistent training data created manually (ground truth). Herein, this paper reviews existing challenges and potential solutions to identifying and defining subregions of pediatric brain tumors (PBTs) that are not explicitly addressed by current guidelines. The goal is to assert the importance of defining and adopting criteria for addressing these challenges, as it will be critical to achieving standardized tumor measurements and reproducible response assessment in PBTs, ultimately leading to more precise outcome metrics and accurate comparisons among clinical studies.

摘要

磁共振成像(MRI)在神经肿瘤学中对评估肿瘤负担和随时间变化具有重要作用。不同肿瘤组织类型的儿科神经肿瘤反应评估(RAPNO)工作组已经制定了若干反应评估指南;然而,使用 MRI 对肿瘤成分进行视觉描绘并不总是简单的,并且这些标准目前尚未涉及的复杂性可能会导致手动评估中的观察者间和观察者内变异性。区分非增强性肿瘤与肿瘤周围水肿、轻度增强与无增强、以及各种囊性成分可能具有挑战性;特别是在临床实践中缺乏充分和统一的成像方案的情况下。人工智能(AI)的自动肿瘤分割可能能够提供更客观的描绘,但依赖于手动创建的准确和一致的训练数据(真实情况)。本文综述了当前指南未明确涉及的识别和定义小儿脑肿瘤(PBT)亚区的现有挑战和潜在解决方案。其目的是强调定义和采用解决这些挑战的标准的重要性,因为这对于实现 PBT 中标准化肿瘤测量和可重复的反应评估至关重要,最终将导致更精确的结果指标和更准确的临床研究比较。

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