| Literature DB >> 27920397 |
Dong-Keun Lee1, Vivian Y Chang2,3, Theodore Kee4, Chih-Ming Ho3,4,5, Dean Ho1,3,4,6,7.
Abstract
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.Entities:
Keywords: combination therapy; digital health; drug cocktails; drug development; oncology; personalized medicine; precision medicine
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Year: 2016 PMID: 27920397 DOI: 10.1177/2211068216681979
Source DB: PubMed Journal: SLAS Technol ISSN: 2472-6303 Impact factor: 3.047