转移性尿路上皮癌预后的决定因素:文献综述

IF 1.4 Q4 ONCOLOGY
Gavin Hui, A. Khaki, P. Grivas
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引用次数: 1

摘要

自2016年以来,转移性尿路上皮癌(mUC)的治疗取得了实质性进展。预后工具已被用于临床试验设计和治疗决策。从历史上看,预后工具是基于较早的涉及细胞毒性化疗的临床试验开发的。随着新疗法的出现,有研究在免疫检查点抑制剂(ICI)、抗体-药物偶联物和靶向治疗时代调查预后因素。这篇综述旨在强调mUC的预后因素及其在临床决策和研究中的潜力。在化疗的背景下,患者的表现状态、转移负担的部位和特定的实验室结果被发现对mUC具有预后价值。在ICI时代,较新的模型确定了中性粒细胞与淋巴细胞比率、血小板计数和乳酸脱氢酶等变量也具有潜在的预后价值。除了临床生物标志物外,分子生物标志物,如PD-L1测定和成纤维细胞生长因子受体2和3基因组检测,可能具有良好的预后和预测意义。目前识别临床和分子预后因素的方法涉及临床医生的洞察力。随着大型复杂数据集的出现,机器学习和人工智能可能有助于数据分析和检测重要的预后特征。经过仔细验证,这种基于机器学习的策略可能有助于在未来创建更强大的预测和/或预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determinants of prognosis in metastatic urothelial carcinoma: a review of the literature
The treatments for metastatic urothelial carcinoma (mUC) have advanced substantially since 2016. Prognostic tools have been used to inform clinical trial designs and treatment decisions. Historically, prognostic tools were developed for mUC based on older clinical trials involving cytotoxic chemotherapy. As novel therapies emerged, there are studies investigating prognostic factors in the era of immune checkpoint inhibitors (ICI), antibody-drug conjugates, and targeted therapies. This review aims to highlight prognostic factors in mUC and their potential in clinical decision-making and research. In the setting of chemotherapy, patient performance status, site of metastatic burden, and specific laboratory findings were found to have prognostic value in mUC. In the era of ICI, newer models identified variables such as neutrophil to lymphocyte ratio, platelet count, and lactate dehydrogenase to also have potential prognostic value. In addition to clinical biomarkers, molecular biomarkers, such as PD-L1 assay and fibroblast growth factor receptor 2 and 3 genomic testings, may have promising prognostic and predictive implications. Current methods of identifying clinical and molecular prognostic factors involve clinician insight. As large complex datasets emerge, machine learning and artificial intelligence may help data analysis and detect important prognostic features. With careful validation, such machine learning-based strategies may help create more robust prognostic and/or predictive models in the future.
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来源期刊
CiteScore
3.20
自引率
5.30%
发文量
460
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