肿瘤成像中的栖息地分析:通过放射组学亚区域分割推进精准医学。

IF 2.5 4区 医学 Q3 ONCOLOGY
Cancer Management and Research Pub Date : 2025-04-01 eCollection Date: 2025-01-01 DOI:10.2147/CMAR.S511796
Ling Xiao Wu, Ning Ding, Yi Ding Ji, Yi Chi Zhang, Meng Juan Li, Jia Cheng Shen, Hai Tao Hu, Long Jin, Sheng Nan Yin
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引用次数: 0

摘要

放射组学受到了广泛的关注,因为它具有以非侵入性方式提供个性化医疗的潜力,通常侧重于整个病变的分析。一种称为生境的新方法可以识别病变内的分区域表型变化,从而提高区分异质性的能力。聚类方法可以应用于多个测量参数,通过分割分离出不同的肿瘤栖息地。一种数据驱动的可重复体素聚类方法来识别反映活肿瘤的亚区,将对临床诊断和进一步治疗有价值。本文就目前广泛应用的聚类分析算法在亚区域分割中的应用以及生境分析在肿瘤成像中的应用作一综述。通过对大量文献的分析,总结了常用的K-means算法以及层次聚类和共识聚类等算法。通过识别肿瘤内异质性,描述了肿瘤生境分析的关键发现,如肿瘤分化、分级和基因表达状态。综述了利用生境分析预测肿瘤疗效和预后的最新进展和创新,包括多模态成像数据融合、与人工智能技术的融合以及非侵入性诊断方法。本文还讨论了生境分析在肿瘤成像中的局限性和挑战,如对图像质量和成像技术的依赖、自动化和标准化程度不足、生物学解释困难以及缺乏临床验证。最后,提出了提高生境分析自动化和标准化水平的未来发展方向,以提高生境分析的准确性和效率,减少对专家干预的依赖。栖息地分析代表了放射组学的重大进步,提供了对肿瘤异质性的细微理解。通过利用复杂的聚类算法和集成多模态成像数据,栖息地分析有可能改变临床决策,实现更精确的诊断和个性化的治疗策略,最终推动精准医学领域的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Habitat Analysis in Tumor Imaging: Advancing Precision Medicine Through Radiomic Subregion Segmentation.

Radiomics received a lot of attention because of its potential to provide personalized medicine in a non-invasive manner, usually focusing on the analysis of the entire lesion. A new method called habitat can identify subregional phenotypic changes within the lesion, thereby improving the ability to distinguish heterogeneity. The clustering method can be applied to multiple measurement parameters to separate different tumor habitats by segmentation. A data-driven repeatable voxel clustering method to identify subregions reflecting live tumors will be valuable for clinical diagnosis and further treatment. In this review, we aim to briefly summarize the widely used cluster analysis algorithms in subregion segmentation and the application of habitat analysis in tumor imaging. By analyzing many literatures, the commonly used K-means algorithm and other algorithms such as hierarchical clustering and consensus clustering are summarized. By identifying intratumoral heterogeneity, the key findings of habitat analysis in oncology are described, such as tumor differentiation, grading, and gene expression status. The latest progress and innovations in predicting tumor therapeutic effects and prognosis using habitat analysis are reviewed, including multimodal imaging data fusion, integration with artificial intelligence technologies, and non-invasive diagnostic methods. The limitations and challenges of habitat analysis in tumor imaging are also discussed, such as dependence on image quality and imaging techniques, insufficient automation and standardization, difficulties in biological interpretation, and lack of clinical validation. Finally, future directions for increasing the level of automation and standardization of habitat analysis to improve its accuracy and efficiency and reduce reliance on expert intervention are proposed. Habitat analysis represents a significant advancement in radiomics, offering a nuanced understanding of tumor heterogeneity. By leveraging sophisticated clustering algorithms and integrating multimodal imaging data, habitat analysis has the potential to transform clinical decision-making, enabling more precise diagnostics and personalized treatment strategies, ultimately advancing the field of precision medicine.

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来源期刊
Cancer Management and Research
Cancer Management and Research Medicine-Oncology
CiteScore
7.40
自引率
0.00%
发文量
448
审稿时长
16 weeks
期刊介绍: Cancer Management and Research is an international, peer reviewed, open access journal focusing on cancer research and the optimal use of preventative and integrated treatment interventions to achieve improved outcomes, enhanced survival, and quality of life for cancer patients. Specific topics covered in the journal include: ◦Epidemiology, detection and screening ◦Cellular research and biomarkers ◦Identification of biotargets and agents with novel mechanisms of action ◦Optimal clinical use of existing anticancer agents, including combination therapies ◦Radiation and surgery ◦Palliative care ◦Patient adherence, quality of life, satisfaction The journal welcomes submitted papers covering original research, basic science, clinical & epidemiological studies, reviews & evaluations, guidelines, expert opinion and commentary, and case series that shed novel insights on a disease or disease subtype.
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