Sarculator: how to improve further prognostication of all sarcomas.

IF 2.8 4区 医学 Q2 ONCOLOGY
Current Opinion in Oncology Pub Date : 2024-07-01 Epub Date: 2024-04-30 DOI:10.1097/CCO.0000000000001051
Alessandra Borghi, Alessandro Gronchi
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引用次数: 0

Abstract

Purpose of review: Prognostication of soft tissue sarcomas is challenging due to the diversity of prognostic factors, compounded by the rarity of these tumors. Nomograms are useful predictive tools that assess multiple variables simultaneously, providing estimates of individual likelihoods of specific outcomes at defined time points. Although these models show promising predictive ability, their use underscores the need for further methodological refinement to address gaps in prognosis accuracy.

Recent findings: Ongoing efforts focus on improving prognostic tools by either enhancing existing models based on established parameters or integrating novel prognostic markers, such as radiomics, genomic, proteomic, and immunologic factors. Artificial intelligence is a new field that is starting to be explored, as it has the capacity to combine and analyze vast and intricate amounts of relevant data, ranging from multiomics information to real-time patient outcomes.

Summary: The integration of these innovative markers and methods could enhance the prognostic ability of nomograms such as Sarculator and ultimately enable more accurate and individualized healthcare. Currently, clinical variables continue to be the most significant and effective factors in terms of predicting outcomes in patients with STS. This review firstly introduces the rationale for developing and employing nomograms such as Sarculator, secondly, reflects on some of the latest and ongoing methodological refinements, and provides future perspectives in the field of prognostication of sarcomas.

Sarculator: 如何进一步改善所有肉瘤的预后。
综述的目的:由于软组织肉瘤的预后因素多种多样,再加上这些肿瘤的罕见性,因此软组织肉瘤的预后诊断极具挑战性。提名图是一种有用的预测工具,可同时评估多个变量,在确定的时间点提供特定结果的个体可能性估计值。虽然这些模型显示出良好的预测能力,但它们的使用突出表明,需要进一步完善方法,以弥补预后准确性方面的差距:目前的工作重点是改进预后工具,方法是根据既定参数增强现有模型或整合新型预后标记物,如放射组学、基因组学、蛋白质组学和免疫学因素。人工智能是一个正在开始探索的新领域,因为它有能力组合和分析大量错综复杂的相关数据,从多组学信息到实时患者预后。小结:这些创新标记物和方法的整合可以增强 Sarculator 等提名图的预后能力,最终实现更准确和个性化的医疗保健。目前,临床变量仍然是预测 STS 患者预后的最重要、最有效的因素。这篇综述首先介绍了开发和使用 Sarculator 等提名图的原理,其次对一些最新和正在进行的方法改进进行了反思,并对肉瘤预后领域的未来进行了展望。
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来源期刊
Current Opinion in Oncology
Current Opinion in Oncology 医学-肿瘤学
CiteScore
6.10
自引率
2.90%
发文量
130
审稿时长
4-8 weeks
期刊介绍: With its easy-to-digest reviews on important advances in world literature, Current Opinion in Oncology offers expert evaluation on a wide range of topics from sixteen key disciplines including sarcomas, cancer biology, melanoma and endocrine tumors. Published bimonthly, each issue covers in detail the most pertinent advances in these fields from the previous year. This is supplemented by annotated references detailing the merits of the most important papers.
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