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利用人工智能优化头颈癌放疗流程:一项系统综述

Enhancing Radiotherapy Workflow for Head and Neck Cancer with Artificial Intelligence: A Systematic Review.

作者信息

Franzese Ciro, Dei Damiano, Lambri Nicola, Teriaca Maria Ausilia, Badalamenti Marco, Crespi Leonardo, Tomatis Stefano, Loiacono Daniele, Mancosu Pietro, Scorsetti Marta

机构信息

Department of Biomedical Sciences, Humanitas University, via Rita Levi Montalcini 4, Pieve Emanuele, 20072 Milan, Italy.

IRCCS Humanitas Research Hospital, Radiotherapy and Radiosurgery Department, via Manzoni 56, Rozzano, 20089 Milan, Italy.

出版信息

J Pers Med. 2023 Jun 2;13(6):946. doi: 10.3390/jpm13060946.

Abstract

BACKGROUND

Head and neck cancer (HNC) is characterized by complex-shaped tumors and numerous organs at risk (OARs), inducing challenging radiotherapy (RT) planning, optimization, and delivery. In this review, we provided a thorough description of the applications of artificial intelligence (AI) tools in the HNC RT process.

METHODS

The PubMed database was queried, and a total of 168 articles (2016-2022) were screened by a group of experts in radiation oncology. The group selected 62 articles, which were subdivided into three categories, representing the whole RT workflow: (i) target and OAR contouring, (ii) planning, and (iii) delivery.

RESULTS

The majority of the selected studies focused on the OARs segmentation process. Overall, the performance of AI models was evaluated using standard metrics, while limited research was found on how the introduction of AI could impact clinical outcomes. Additionally, papers usually lacked information about the confidence level associated with the predictions made by the AI models.

CONCLUSIONS

AI represents a promising tool to automate the RT workflow for the complex field of HNC treatment. To ensure that the development of AI technologies in RT is effectively aligned with clinical needs, we suggest conducting future studies within interdisciplinary groups, including clinicians and computer scientists.

摘要

背景

头颈癌(HNC)的肿瘤形状复杂,且有众多危及器官(OARs),这使得放射治疗(RT)计划制定、优化和实施具有挑战性。在本综述中,我们全面描述了人工智能(AI)工具在头颈癌放射治疗过程中的应用。

方法

检索了PubMed数据库,一组放射肿瘤学专家筛选出了共168篇文章(2016 - 2022年)。该小组选取了62篇文章,将其细分为三类,代表整个放射治疗工作流程:(i)靶区和危及器官轮廓勾画,(ii)计划制定,以及(iii)实施。

结果

大多数所选研究集中在危及器官分割过程。总体而言,使用标准指标评估了人工智能模型的性能,而关于人工智能的引入如何影响临床结果的研究有限。此外,论文通常缺乏与人工智能模型所做预测相关的置信水平信息。

结论

人工智能是一种很有前景的工具,可使复杂的头颈癌治疗领域的放射治疗工作流程自动化。为确保放射治疗中人工智能技术的发展与临床需求有效契合,我们建议在跨学科团队(包括临床医生和计算机科学家)中开展未来研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/52f6/10301548/f3b18741bc28/jpm-13-00946-g001.jpg

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