Applications of Artificial Intelligence for Pediatric Cancer Imaging.

IF 4.7 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
American Journal of Roentgenology Pub Date : 2024-08-01 Epub Date: 2024-05-23 DOI:10.2214/AJR.24.31076
Shashi B Singh, Amir H Sarrami, Sergios Gatidis, Zahra S Varniab, Akshay Chaudhari, Heike E Daldrup-Link
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引用次数: 0

Abstract

Artificial intelligence (AI) is transforming the medical imaging of adult patients. However, its utilization in pediatric oncology imaging remains constrained, in part due to the inherent scarcity of data associated with childhood cancers. Pediatric cancers are rare, and imaging technologies are evolving rapidly, leading to insufficient data of a particular type to effectively train these algorithms. The small market size of pediatric patients compared with adult patients could also contribute to this challenge, as market size is a driver of commercialization. This review provides an overview of the current state of AI applications for pediatric cancer imaging, including applications for medical image acquisition, processing, reconstruction, segmentation, diagnosis, staging, and treatment response monitoring. Although current developments are promising, impediments due to the diverse anatomies of growing children and nonstandardized imaging protocols have led to limited clinical translation thus far. Opportunities include leveraging reconstruction algorithms to achieve accelerated low-dose imaging and automating the generation of metric-based staging and treatment monitoring scores. Transfer learning of adult-based AI models to pediatric cancers, multiinstitutional data sharing, and ethical data privacy practices for pediatric patients with rare cancers will be keys to unlocking the full potential of AI for clinical translation and improving outcomes for these young patients.

人工智能在儿科癌症成像中的应用。
人工智能(AI)正在改变成人患者的医学成像。然而,人工智能在儿科肿瘤成像中的应用仍然受到限制,部分原因是儿童癌症固有的数据稀缺性。儿科癌症罕见,成像技术发展迅速,导致特定类型的数据不足,无法有效训练这些算法。与成人相比,儿科的市场规模较小,这也是造成这一挑战的原因之一,因为市场规模是商业化的驱动力。本文概述了人工智能在儿科癌症成像方面的应用现状,包括医学图像采集、处理、重建、分割、诊断、分期和治疗反应监测等方面的应用。虽然目前的发展前景广阔,但由于成长中儿童的解剖结构各不相同,且成像方案不规范,因此迄今为止的临床转化还很有限。机遇包括利用重建算法实现加速低剂量成像,以及自动生成基于指标的分期和治疗监测评分。将基于成人的人工智能模型转移学习到儿科癌症、多机构数据共享以及针对罕见癌症儿科患者的伦理数据隐私实践,将是释放人工智能在临床转化和改善这些年轻患者预后方面全部潜力的关键。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
12.80
自引率
4.00%
发文量
920
审稿时长
3 months
期刊介绍: Founded in 1907, the monthly American Journal of Roentgenology (AJR) is the world’s longest continuously published general radiology journal. AJR is recognized as among the specialty’s leading peer-reviewed journals and has a worldwide circulation of close to 25,000. The journal publishes clinically-oriented articles across all radiology subspecialties, seeking relevance to radiologists’ daily practice. The journal publishes hundreds of articles annually with a diverse range of formats, including original research, reviews, clinical perspectives, editorials, and other short reports. The journal engages its audience through a spectrum of social media and digital communication activities.
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