Weronika E Borek,Luis Nobre,S Federico Pedicona,Amy E Campbell,Josie A Christopher,Nazrath Nawaz,David N Perkins,Pedro Moreno-Cardoso,Janet Kelsall,Harriet R Ferguson,Bela Patel,Paolo Gallipoli,Andrea Arruda,Alex J Ambinder,Andrew Thompson,Andrew Williamson,Gabriel Ghiaur,Mark D Minden,John G Gribben,David J Britton,Pedro R Cutillas,Arran D Dokal
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引用次数: 0
Abstract
BACKGROUND
Acute myeloid leukaemia (AML) is a bone marrow malignancy with poor prognosis. One of several treatments for AML is midostaurin combined with intensive chemotherapy (MIC), currently approved for FLT3 mutation-positive (FLT3-MP) AML. However, many patients carrying FLT3 mutations are refractory or experience an early relapse following MIC treatment, and might benefit more from receiving a different treatment. Development of a stratification method that outperforms FLT3 mutational status in predicting MIC response would thus benefit a large number of patients.
METHODS
We employed mass spectrometry phosphoproteomics to analyse 71 diagnosis samples of 47 patients with FLT3-MP AML who subsequently received MIC. We then used machine learning to identify biomarkers of response to MIC, and validated the resulting predictive model in two independent validation cohorts (n = 20).
FINDINGS
We identified three distinct phosphoproteomic AML subtypes amongst long-term survivors. The subtypes showed similar duration of MIC response, but different modulation of AML-implicated pathways, and exhibited distinct, highly-predictive biomarkers of MIC response. Using these biomarkers, we built a phosphoproteomics-based predictive model of MIC response, which we called MPhos. When applied to two retrospective real-world patient test cohorts (n = 20), MPhos predicted MIC response with 83% sensitivity and 100% specificity (log-rank p < 7∗10-5, HR = 0.005 [95% CI: 0-0.31]).
INTERPRETATION
In validation, MPhos outperformed the currently-used FLT3-based stratification method. Our findings have the potential to transform clinical decision-making, and highlight the important role that phosphoproteomics is destined to play in precision oncology.
FUNDING
This work was funded by Innovate UK grants (application numbers: 22217 and 10054602) and by Kinomica Ltd.
背景急性髓性白血病(AML)是一种预后不良的骨髓恶性肿瘤。米哚妥林联合强化化疗(MIC)是治疗急性髓性白血病的多种疗法之一,目前已被批准用于治疗 FLT3 突变阳性(FLT3-MP)急性髓性白血病。然而,许多携带FLT3突变的患者在接受MIC治疗后会出现难治性或早期复发,接受不同的治疗可能会使他们获益更多。因此,开发一种在预测 MIC 反应方面优于 FLT3 突变状态的分层方法将使大量患者受益。方法:我们采用质谱磷蛋白组学分析了 47 名接受 MIC 治疗的 FLT3-MP AML 患者的 71 份诊断样本。然后,我们利用机器学习识别了对 MIC 反应的生物标志物,并在两个独立的验证队列(n = 20)中验证了由此产生的预测模型。这些亚型表现出相似的 MIC 反应持续时间,但对急性髓细胞性白血病相关通路的调节不同,并表现出不同的、对 MIC 反应具有高度预测性的生物标志物。利用这些生物标志物,我们建立了一个基于磷酸化蛋白质组学的 MIC 反应预测模型,我们称之为 MPhos。当应用于两个回顾性真实世界患者试验队列(n = 20)时,MPhos 预测 MIC 反应的灵敏度为 83%,特异性为 100%(对数秩 p < 7∗10-5,HR = 0.005 [95% CI: 0-0.31])。我们的研究结果有可能改变临床决策,并凸显了磷酸化蛋白质组学注定要在精准肿瘤学中发挥的重要作用。
EBioMedicineBiochemistry, Genetics and Molecular Biology-General Biochemistry,Genetics and Molecular Biology
CiteScore
17.70
自引率
0.90%
发文量
579
审稿时长
5 weeks
期刊介绍:
eBioMedicine is a comprehensive biomedical research journal that covers a wide range of studies that are relevant to human health. Our focus is on original research that explores the fundamental factors influencing human health and disease, including the discovery of new therapeutic targets and treatments, the identification of biomarkers and diagnostic tools, and the investigation and modification of disease pathways and mechanisms. We welcome studies from any biomedical discipline that contribute to our understanding of disease and aim to improve human health.