脑肿瘤的自动纵向治疗反应评估:系统综述。

IF 13.4 1区 医学 Q1 CLINICAL NEUROLOGY
Tangqi Shi, Aaron Kujawa, Christian Linares, Tom Vercauteren, Thomas C Booth
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引用次数: 0

摘要

背景:利用影像学对肿瘤负荷进行纵向评估有助于确定在试验和现实环境中是否对治疗有反应。从患者和临床试验的角度来看,疾病进展或无进展生存期是一个重要的终点。然而,手工的纵向反应评估是耗时的,并且受制于观察者之间的可变性。基于机器学习(ML)的自动响应评估技术有望提高准确性并减少对人工测量的依赖。本文评估了最近发表的研究的质量和性能准确性。方法:根据PRISMA指南和索赔清单,我们检索PUBMED, EMBASE和Web of Science的文章(2010年1月- 2024年11月)。我们在prospero注册的研究(CRD42024496126)专注于使用ML方法的成人脑肿瘤自动治疗反应评估研究。我们确定了工具的开发和验证程度,并使用QUADAS-2进行研究评估。结果:纳入20项研究(包括17项回顾性研究和3项前瞻性研究)。提取的数据包括关于数据集的信息、自动响应评估(包括管道中的相关步骤(索引测试))和参考标准。考虑到高偏倚风险和适用性问题(特别是关于参考标准和患者选择)以及低水平证据,只有有限的结论是合适的。meta分析的同质性数据不足。结论:本研究强调了ML改善脑肿瘤纵向治疗反应评估的潜力。由于研究偏差和有限的普遍性证据,解释是有限的。现在需要外部数据集验证最新神经肿瘤学标准的前瞻性研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated longitudinal treatment response assessment of brain tumors: A systematic review.

Automated longitudinal treatment response assessment of brain tumors: A systematic review.

Automated longitudinal treatment response assessment of brain tumors: A systematic review.

Background: Longitudinal assessment of tumor burden using imaging helps to determine whether there has been a response to treatment both in trial and real-world settings. From a patient and clinical trial perspective alike, the time to develop disease progression, or progression-free survival, is an important endpoint. However, manual longitudinal response assessment is time-consuming and subject to interobserver variability. Automated response assessment techniques based on machine learning (ML) promise to enhance accuracy and reduce reliance on manual measurement. This paper evaluates the quality and performance accuracy of recently published studies.

Methods: Following PRISMA guidelines and the CLAIM checklist, we searched PUBMED, EMBASE, and Web of Science for articles (January 2010-November 2024). Our PROSPERO-registered study (CRD42024496126) focused on adult brain tumor automated treatment response assessment studies using ML methodologies. We determined the extent of development and validation of the tools and employed QUADAS-2 for study appraisal.

Results: Twenty (including 17 retrospective and 3 prospective) studies were included. Data extracted included information on the dataset, automated response assessment including pertinent steps within the pipeline (index tests), and reference standards. Only limited conclusions are appropriate given the high bias risk and applicability concerns (particularly regarding reference standards and patient selection), and the low-level evidence. There was insufficient homogenous data for meta-analysis.

Conclusions: The study highlights the potential of ML to improve brain tumor longitudinal treatment response assessment. Interpretation is limited due to study bias and limited evidence of generalizability. Prospective studies with external datasets validating the latest neuro-oncology criteria are now required.

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来源期刊
Neuro-oncology
Neuro-oncology 医学-临床神经学
CiteScore
27.20
自引率
6.30%
发文量
1434
审稿时长
3-8 weeks
期刊介绍: Neuro-Oncology, the official journal of the Society for Neuro-Oncology, has been published monthly since January 2010. Affiliated with the Japan Society for Neuro-Oncology and the European Association of Neuro-Oncology, it is a global leader in the field. The journal is committed to swiftly disseminating high-quality information across all areas of neuro-oncology. It features peer-reviewed articles, reviews, symposia on various topics, abstracts from annual meetings, and updates from neuro-oncology societies worldwide.
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