Artificial intelligence-based radiomics in bone tumors: Technical advances and clinical application

IF 12.1 1区 医学 Q1 ONCOLOGY Seminars in cancer biology Pub Date : 2023-10-01 DOI:10.1016/j.semcancer.2023.07.003
Yichen Meng , Yue Yang , Miao Hu, Zheng Zhang, Xuhui Zhou
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Abstract

Radiomics is the extraction of predefined mathematic features from medical images for predicting variables of clinical interest. Recent research has demonstrated that radiomics can be processed by artificial intelligence algorithms to reveal complex patterns and trends for diagnosis, and prediction of prognosis and response to treatment modalities in various types of cancer. Artificial intelligence tools can utilize radiological images to solve next-generation issues in clinical decision making. Bone tumors can be classified as primary and secondary (metastatic) tumors. Osteosarcoma, Ewing sarcoma, and chondrosarcoma are the dominating primary tumors of bone. The development of bone tumor model systems and relevant research, and the assessment of novel treatment methods are ongoing to improve clinical outcomes, notably for patients with metastases. Artificial intelligence and radiomics have been utilized in almost full spectrum of clinical care of bone tumors. Radiomics models have achieved excellent performance in the diagnosis and grading of bone tumors. Furthermore, the models enable to predict overall survival, metastases, and recurrence. Radiomics features have exhibited promise in assisting therapeutic planning and evaluation, especially neoadjuvant chemotherapy. This review provides an overview of the evolution and opportunities for artificial intelligence in imaging, with a focus on hand-crafted features and deep learning-based radiomics approaches. We summarize the current application of artificial intelligence-based radiomics both in primary and metastatic bone tumors, and discuss the limitations and future opportunities of artificial intelligence-based radiomics in this field. In the era of personalized medicine, our in-depth understanding of emerging artificial intelligence-based radiomics approaches will bring innovative solutions to bone tumors and achieve clinical application.

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基于人工智能的骨肿瘤放射组学:技术进展与临床应用
放射组学是从医学图像中提取预定义的数学特征,用于预测临床感兴趣的变量。最近的研究表明,放射组学可以通过人工智能算法进行处理,以揭示各种类型癌症的诊断、预后预测和治疗模式反应的复杂模式和趋势。人工智能工具可以利用放射学图像来解决临床决策中的下一代问题。骨肿瘤可分为原发性和继发性(转移性)肿瘤。骨肉瘤、尤因肉瘤和软骨肉瘤是骨的主要原发肿瘤。骨肿瘤模型系统的开发和相关研究以及新治疗方法的评估正在进行中,以改善临床结果,尤其是对转移患者。人工智能和放射组学已被用于骨肿瘤的几乎全谱临床护理。放射组学模型在骨肿瘤的诊断和分级方面取得了优异的性能。此外,这些模型能够预测总生存率、转移和复发。放射组学特征在辅助治疗计划和评估,特别是新辅助化疗方面显示出了前景。这篇综述概述了人工智能在成像中的发展和机遇,重点介绍了手工制作的特征和基于深度学习的放射组学方法。我们总结了目前基于人工智能的放射组学在原发性和转移性骨肿瘤中的应用,并讨论了基于人工智能放射组学在此领域的局限性和未来机遇。在个性化医学时代,我们对新兴的基于人工智能的放射组学方法的深入理解将为骨肿瘤带来创新的解决方案并实现临床应用。
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
Seminars in cancer biology
Seminars in cancer biology 医学-肿瘤学
CiteScore
26.80
自引率
4.10%
发文量
347
审稿时长
15.1 weeks
期刊介绍: Seminars in Cancer Biology (YSCBI) is a specialized review journal that focuses on the field of molecular oncology. Its primary objective is to keep scientists up-to-date with the latest developments in this field. The journal adopts a thematic approach, dedicating each issue to an important topic of interest to cancer biologists. These topics cover a range of research areas, including the underlying genetic and molecular causes of cellular transformation and cancer, as well as the molecular basis of potential therapies. To ensure the highest quality and expertise, every issue is supervised by a guest editor or editors who are internationally recognized experts in the respective field. Each issue features approximately eight to twelve authoritative invited reviews that cover various aspects of the chosen subject area. The ultimate goal of each issue of YSCBI is to offer a cohesive, easily comprehensible, and engaging overview of the selected topic. The journal strives to provide scientists with a coordinated and lively examination of the latest developments in the field of molecular oncology.
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