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首页> 外文期刊>Journal of Laboratory Automation >Optimizing Combination Therapy for Acute Lymphoblastic Leukemia Using a Phenotypic Personalized Medicine Digital Health Platform: Retrospective Optimization Individualizes Patient Regimens to Maximize Efficacy and Safety:
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Optimizing Combination Therapy for Acute Lymphoblastic Leukemia Using a Phenotypic Personalized Medicine Digital Health Platform: Retrospective Optimization Individualizes Patient Regimens to Maximize Efficacy and Safety:

机译:使用表型个性化药物数字医疗平台优化急性淋巴细胞白血病的联合治疗:回顾性优化可个性化患者方案,以最大化疗效和安全性:

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摘要

Acute lymphoblastic leukemia (ALL) is a blood cancer that is characterized by the overproduction of lymphoblasts in the bone marrow. Treatment for pediatric ALL typically uses combination chemotherapy in phases, including a prolonged maintenance phase with oral methotrexate and 6-mercaptopurine, which often requires dose adjustment to balance side effects and efficacy. However, a major challenge confronting combination therapy for virtually every disease indication is the inability to pinpoint drug doses that are optimized for each patient, and the ability to adaptively and continuously optimize these doses to address comorbidities and other patient-specific physiological changes. To address this challenge, we developed a powerful digital health technology platform based on phenotypic personalized medicine (PPM). PPM identifies patient-specific maps that parabolically correlate drug inputs with phenotypic outputs. In a disease mechanism–independent fashion, we individualized drug ratios/dosages for two pediatric patients with standard-risk ALL in this study via PPM-mediated retrospective optimization. PPM optimization demonstrated that dynamically adjusted dosing of combination chemotherapy could enhance treatment outcomes while also substantially reducing the amount of chemotherapy administered. This may lead to more effective maintenance therapy, with the potential for shortening duration and reducing the risk of serious side effects.
机译:急性淋巴细胞白血病(ALL)是一种血液癌症,其特征是骨髓中淋巴母细胞的过量产生。小儿ALL的治疗通常分阶段进行联合化疗,包括延长口服甲氨蝶呤和6-巯基嘌呤的维持期,这通常需要调整剂量以平衡副作用和疗效。然而,实际上对于每种疾病适应症,联合疗法面临的主要挑战是无法确定针对每个患者优化的药物剂量,以及适应性和连续优化这些剂量以应对合并症和其他患者特异性生理变化的能力。为了应对这一挑战,我们开发了基于表型个性化医学(PPM)的强大的数字健康技术平台。 PPM可识别患者特定的图谱,该图将药物输入与表型输出进行抛物线相关。以独立于疾病机制的方式,通过PPM介导的回顾性优化,在本研究中,我们对两名患标准风险ALL的儿科患者的药物比率/剂量进行了个体化。 PPM优化表明,动态调整联合化疗的剂量可以提高治疗效果,同时还可以大幅度减少化学疗法的使用量。这可能会导致更有效的维持治疗,并有可能缩短疗程并降低严重副作用的风险。

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