揭示分子肿瘤板的数字进化。

IF 4.4 3区 医学 Q2 ONCOLOGY Targeted Oncology Pub Date : 2025-01-01 Epub Date: 2024-11-28 DOI:10.1007/s11523-024-01109-1
Sebastian Lutz, Alicia D'Angelo, Sonja Hammerl, Maximilian Schmutz, Rainer Claus, Nina M Fischer, Frank Kramer, Zaynab Hammoud
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引用次数: 0

摘要

分子肿瘤委员会(MTB)是跨学科的会议,由不同的专家讨论晚期肿瘤患者,根据分子变异得出个性化的治疗建议。这些讨论涉及使用异构的内部数据,如患者临床数据,以及外部资源,如用于注释和搜索相关临床研究的知识数据库。这带来了一定程度的复杂性,需要付出巨大的努力来均匀化数据,并以快速的方式使用它来达到所需的处理。为此,大多数涉及MTB的机构都在朝着流程自动化和数字化的方向发展,从而减少了需要人工干预的手工工作,从而减少了获得个性化治疗建议的时间。这些工具还用于更好地可视化患者的数据,从而为董事会成员提供了一个精细的概述。在本文中,我们展示了关于MTBs、其过程、最常见的知识基础和用于支持该决策过程的工具的全面文献研究的结果。
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Unveiling the Digital Evolution of Molecular Tumor Boards.

Molecular tumor boards (MTB) are interdisciplinary conferences involving various experts discussing patients with advanced tumors, to derive individualized treatment suggestions based on molecular variants. These discussions involve using heterogeneous internal data, such as patient clinical data, but also external resources such as knowledge databases for annotations and search for relevant clinical studies. This imposes a certain level of complexity that requires huge effort to homogenize the data and use it in a speedy manner to reach the needed treatment. For this purpose, most institutions involving an MTB are heading toward automation and digitalization of the process, hence reducing manual work requiring human intervention and subsequently time in deriving personalized treatment suggestions. The tools are also used to better visualize the patient's data, which allows a refined overview for the board members. In this paper, we present the results of our thorough literature research about MTBs, their process, the most common knowledge bases, and tools used to support this decision-making process.

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来源期刊
Targeted Oncology
Targeted Oncology 医学-肿瘤学
CiteScore
8.40
自引率
3.70%
发文量
64
审稿时长
>12 weeks
期刊介绍: Targeted Oncology addresses physicians and scientists committed to oncology and cancer research by providing a programme of articles on molecularly targeted pharmacotherapy in oncology. The journal includes: Original Research Articles on all aspects of molecularly targeted agents for the treatment of cancer, including immune checkpoint inhibitors and related approaches. Comprehensive narrative Review Articles and shorter Leading Articles discussing relevant clinically established as well as emerging agents and pathways. Current Opinion articles that place interesting areas in perspective. Therapy in Practice articles that provide a guide to the optimum management of a condition and highlight practical, clinically relevant considerations and recommendations. Systematic Reviews that use explicit, systematic methods as outlined by the PRISMA statement. Adis Drug Reviews of the properties and place in therapy of both newer and established targeted drugs in oncology.
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