慢性髓性白血病治疗失败的新预测模型

IF 6.1 2区 医学 Q1 ONCOLOGY Cancer Pub Date : 2024-10-09 DOI:10.1002/cncr.35578
Mary Beth Nierengarten
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引用次数: 0

摘要

一种新模型能准确预测哪些慢性髓性白血病(CML)患者的初始酪氨酸激酶抑制剂(TKI)治疗会失败。这包括伊马替尼和第二代 TKIs。根据发表在《血液》(Blood)上的一项研究,该模型还为医生提供了一种新工具,可使CML的治疗方法更加个性化1。该模型由中国研究人员开发,结合了与TKI治疗失败相关的临床协变量,将患者分为低、中、高风险亚组,其治疗失败的累积发生率有显著差异。临床协变量包括性别、年龄、血红蛋白浓度、血细胞百分比、脾脏大小以及费城染色体阳性细胞中额外的高风险染色体异常。该模型首先是利用来自单中心测试队列的数据开发的,测试队列中有1955名慢性期CML患者,这些患者在初始治疗中接受了第一代TKI(伊马替尼)或第二代TKI(尼洛替尼、达沙替尼或氟马替尼),随后该模型在来自其他76个中心的3454名患者中得到了验证。具体来说,该模型显示出良好的预测灵敏度和特异性,1 年、3 年和 5 年 AUROC 分别为 0.83、0.84 和 0.84(训练集),以及 0.77、0.79 和 0.80(验证集)。这些AUROC值表明,与Sokal和EUTOS长期生存(ELTS)评分相比,他们的预测辨别能力更强,而Sokal和ELTS评分是目前最广泛使用的指导慢性期CML患者初始TKI治疗和预测CML相关生存率的评分。作者说,他们认为他们的模型可以与Sokal和ELTS评分结合使用,而不是取代它们,以进一步对患者进行分层,使风险评估更加精确。"这项研究的资深作者、中国北京大学人民医院血液科副主任、教授、医学博士钱江说:"利用这个模型,医生可以更好地预测哪些患者面临治疗失败的高风险,并就选择合适的初始 TKI 作出更明智的决定。蒋博士说,该模型已可用于临床,而且可以很容易地应用于临床环境,因为在诊断 CML 时很容易收集到该模型所依据的协变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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New predictive model for treatment failure in chronic myeloid leukemia

A new model accurately predicts for which patients with chronic myeloid leukemia (CML) initial tyrosine kinase inhibitor (TKI) therapy will fail. This includes imatinib and second-generation TKIs. The model also offers physicians a new tool that may enable more personalized treatment approaches to CML according to a study published in Blood.1

Developed by researchers in China, the model incorporates clinical covariates associated with TKI therapy failure to stratify patients into low-, intermediate-, and high-risk subgroups with significantly different cumulative incidences of treatment failure. The clinical covariates include sex, age, hemoglobin concentration, blood blast percentage, spleen size, and additional high-risk chromosomal abnormalities in Philadelphia chromosome–positive cells. The model was first developed using data from a single-center test cohort of 1955 patients with chronic-phase CML who were receiving as their initial treatment either a first-generation TKI (imatinib) or a second-generation TKI (nilotinib, dasatinib, or flumatinib), and it was then validated in 3454 patients from 76 other centers.

The model showed good predictive accuracy, as demonstrated by a high time-dependent area under the receiver operating characteristic curve (AUROC). Specifically, the model showed good prediction sensitivity and specificity with 1-, 3-, and 5-year AUROC scores of 0.83, 0.84, and 0.84, respectively (training set), and 0.77, 0.79, and 0.80, respectively (validation set). The AUROC scores range from 0 to 1, with 1 indicating a perfect performance and 0.5 indicating random guessing.

These AUROC values indicate better prediction discrimination than those offered by the Sokal and EUTOS long-term survival (ELTS) scores, the most widely used scores for guiding initial TKI therapy in patients with chronic-phase CML and predicting CML-related survival.

The authors say that they see their model as being used in conjunction with the Sokal and ELTS scores, not as a replacement, to further stratify patients to make risk assessment more precise.

“Using this model, physicians can better predict which patients are at high risk of therapy failure and make a more informed decision regarding the choice of the appropriate initial TKI,” says the senior author of the study, Qian Jiang, MD, professor and deputy chair of the Department of Hematology at Peking University People’s Hospital in Beijing, China.

Dr Jiang says that the model is ready for clinical use and that it can be readily applied in the clinical setting because the covariates on which the model is based are easily collected at the time of CML diagnosis.

Although the model is robust, he underscores that further validation is needed in Western populations to ensure its broad applicability and effectiveness across different demographic groups.

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来源期刊
Cancer
Cancer 医学-肿瘤学
CiteScore
13.10
自引率
3.20%
发文量
480
审稿时长
2-3 weeks
期刊介绍: The CANCER site is a full-text, electronic implementation of CANCER, an Interdisciplinary International Journal of the American Cancer Society, and CANCER CYTOPATHOLOGY, a Journal of the American Cancer Society. CANCER publishes interdisciplinary oncologic information according to, but not limited to, the following disease sites and disciplines: blood/bone marrow; breast disease; endocrine disorders; epidemiology; gastrointestinal tract; genitourinary disease; gynecologic oncology; head and neck disease; hepatobiliary tract; integrated medicine; lung disease; medical oncology; neuro-oncology; pathology radiation oncology; translational research
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