Department of Medical Imaging, University of Toronto, Toronto, ON, Canada.
Department of Diagnostic Imaging, Research Institute, The Hospital for Sick Children, Toronto, ON, Canada.
Jpn J Radiol. 2023 Oct;41(10):1127-1147. doi: 10.1007/s11604-023-01437-8. Epub 2023 Jul 3.
To review the uses of AI for magnetic resonance (MR) imaging assessment of primary pediatric cancer and identify common literature topics and knowledge gaps. To assess the adherence of the existing literature to the Checklist for Artificial Intelligence in Medical Imaging (CLAIM) guidelines.
A scoping literature search using MEDLINE, EMBASE and Cochrane databases was performed, including studies of > 10 subjects with a mean age of < 21 years. Relevant data were summarized into three categories based on AI application: detection, characterization, treatment and monitoring. Readers independently scored each study using CLAIM guidelines, and inter-rater reproducibility was assessed using intraclass correlation coefficients.
Twenty-one studies were included. The most common AI application for pediatric cancer MR imaging was pediatric tumor diagnosis and detection (13/21 [62%] studies). The most commonly studied tumor was posterior fossa tumors (14 [67%] studies). Knowledge gaps included a lack of research in AI-driven tumor staging (0/21 [0%] studies), imaging genomics (1/21 [5%] studies), and tumor segmentation (2/21 [10%] studies). Adherence to CLAIM guidelines was moderate in primary studies, with an average (range) of 55% (34%-73%) CLAIM items reported. Adherence has improved over time based on publication year.
The literature surrounding AI applications of MR imaging in pediatric cancers is limited. The existing literature shows moderate adherence to CLAIM guidelines, suggesting that better adherence is required for future studies.
回顾人工智能在儿童期原发性癌症磁共振成像(MR)评估中的应用,并确定常见的文献主题和知识空白。评估现有文献对医学影像人工智能清单(CLAIM)指南的遵循情况。
使用 MEDLINE、EMBASE 和 Cochrane 数据库进行了范围广泛的文献检索,包括对年龄均<21 岁的>10 名受试者的研究。根据 AI 应用将相关数据分为三类:检测、特征描述、治疗和监测。读者独立使用 CLAIM 指南对每项研究进行评分,并使用组内相关系数评估组内评分的再现性。
共纳入 21 项研究。儿科癌症 MR 成像中最常见的 AI 应用是儿科肿瘤诊断和检测(13/21 [62%]项研究)。最常研究的肿瘤是后颅窝肿瘤(14 [67%]项研究)。知识空白包括缺乏 AI 驱动的肿瘤分期(0/21 [0%]项研究)、影像基因组学(1/21 [5%]项研究)和肿瘤分割(2/21 [10%]项研究)方面的研究。原始研究对 CLAIM 指南的遵循程度为中等,报告的 CLAIM 项目平均(范围)为 55%(34%-73%)。根据发表年份,遵循情况有所提高。
关于人工智能在儿科癌症磁共振成像中的应用的文献有限。现有文献对 CLAIM 指南的遵循程度为中等,表明未来的研究需要更好地遵循这些指南。