人工智能在脑胶质瘤诊断和治疗中的应用。

IF 3.9 3区 工程技术 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Kyriacos Evangelou, Ioannis Kotsantis, Aristotelis Kalyvas, Anastasios Kyriazoglou, Panagiota Economopoulou, Georgios Velonakis, Maria Gavra, Amanda Psyrri, Efstathios J Boviatsis, Lampis C Stavrinou
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引用次数: 0

摘要

脑胶质瘤是一种高度浸润性和异质性的肿瘤,其早期准确的检测和治疗管理具有挑战性。人工智能(AI)有可能重新定义神经肿瘤学领域的格局,并且可以通过深度学习驱动的放射组学和放射基因组学,比传统诊断方式更好地增强胶质瘤检测、成像分割和非侵入性分子表征。人工智能算法已被证明可以非常准确地预测神经胶质瘤的基因型和表型特征,并有助于为患者量身定制治疗决策。这些算法可以纳入手术计划,通过术前影像融合和术中增强现实辅助导航来优化切除范围,同时保留完好的皮质结构。除切除外,人工智能可协助优化放疗剂量分布,从而最大限度地控制肿瘤,同时最大限度地减少周围组织的附带损伤。人工智能引导的分子分析和治疗反应预测模型可以促进个性化的化疗方案定制,特别是对于MGMT启动子甲基化的胶质母细胞瘤。免疫治疗的应用正在兴起,研究的重点是人工智能来识别预测免疫检查点抑制反应的肿瘤微环境特征。结合放射组学、组织病理学和临床变量的ai集成预后模型还可以显著改善生存分层和复发风险预测,以完善高危患者的随访策略。然而,数据异质性、算法透明度问题和监管挑战阻碍了人工智能在神经肿瘤学中的应用,尽管它具有变革潜力。因此,临床翻译必须开发可解释的人工智能框架,整合多模态数据集,并在外部进行稳健验证。未来的研究应优先考虑创建可推广的人工智能模型,结合更大、更多样化的数据集,并整合多模态成像和分子数据,以克服这些障碍,并彻底改变人工智能辅助的患者特异性胶质瘤管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial Intelligence in the Diagnosis and Treatment of Brain Gliomas.

Artificial Intelligence in the Diagnosis and Treatment of Brain Gliomas.

Artificial Intelligence in the Diagnosis and Treatment of Brain Gliomas.

Artificial Intelligence in the Diagnosis and Treatment of Brain Gliomas.

Brain gliomas are highly infiltrative and heterogenous tumors, whose early and accurate detection as well as therapeutic management are challenging. Artificial intelligence (AI) has the potential to redefine the landscape in neuro-oncology and can enhance glioma detection, imaging segmentation, and non-invasive molecular characterization better than conventional diagnostic modalities through deep learning-driven radiomics and radiogenomics. AI algorithms have been shown to predict genotypic and phenotypic glioma traits with remarkable accuracy and facilitate patient-tailored therapeutic decision-making. Such algorithms can be incorporated into surgical planning to optimize resection extent while preserving eloquent cortical structures through preoperative imaging fusion and intraoperative augmented reality-assisted navigation. Beyond resection, AI may assist in radiotherapy dose distribution optimization, thus ensuring maximal tumor control while minimizing surrounding tissue collateral damage. AI-guided molecular profiling and treatment response prediction models can facilitate individualized chemotherapy regimen tailoring, especially for glioblastomas with MGMT promoter methylation. Applications in immunotherapy are emerging, and research is focusing on AI to identify tumor microenvironment signatures predictive of immune checkpoint inhibition responsiveness. AI-integrated prognostic models incorporating radiomic, histopathologic, and clinical variables can additionally improve survival stratification and recurrence risk prediction remarkably, to refine follow-up strategies in high-risk patients. However, data heterogeneity, algorithmic transparency concerns, and regulatory challenges hamstring AI implementation in neuro-oncology despite its transformative potential. It is therefore imperative for clinical translation to develop interpretable AI frameworks, integrate multimodal datasets, and robustly validate externally. Future research should prioritize the creation of generalizable AI models, combine larger and more diverse datasets, and integrate multimodal imaging and molecular data to overcome these obstacles and revolutionize AI-assisted patient-specific glioma management.

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来源期刊
Biomedicines
Biomedicines Biochemistry, Genetics and Molecular Biology-General Biochemistry,Genetics and Molecular Biology
CiteScore
5.20
自引率
8.50%
发文量
2823
审稿时长
8 weeks
期刊介绍: Biomedicines (ISSN 2227-9059; CODEN: BIOMID) is an international, scientific, open access journal on biomedicines published quarterly online by MDPI.
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