A model-based approach for the optimization of radioimmunotherapy through antibody design and radionuclide selection

被引:6
|
作者
Flynn, AA [1 ]
Green, AJ [1 ]
Pedley, RB [1 ]
Boxer, GM [1 ]
Dearling, J [1 ]
Watson, R [1 ]
Boden, R [1 ]
Begent, RHJ [1 ]
机构
[1] UCL, Royal Free & Univ Coll Med Sch, CRC Targeting & Imaging Grp, Dept Oncol, London NW3 2PF, England
关键词
D O I
10.1002/cncr.10293
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
BACKGROUND. The effectiveness of radio immunotherapy (RIT) is known to depend on at least six factors: total absorbed dose and pattern of delivery, radio sensitivity, rate of repair of sublethal damage, ongoing proliferation during treatment, tumor heterogeneity, and tumor size. The purpose of this study was to develop a mathematic model that would relate the absorbed dose and its pattern of delivery to tumor response by incorporating information on each factor. This model was used to optimize therapeutic efficacy in mice by matching the antibody and radionuclide characteristics while ensuring recoverable marrow toxicity. METHODS. Pharmacokinetic data were acquired in mice for a range of antibodies that varied in molecular weight, specificity, affinity, and avidity, and for a range of tumor sizes. This information was combined with the properties of iodine-131, rhenium-86, and yttrium-90 to determine the pattern of dose delivery. Tumor response was characterized in terms of radio sensitivity, rate of repair, and proliferation. Values for these parameters were obtained from in vitro assays and were incorporated into a response model based on the linear-quadratic model. Storage phosphor plate technology was used to acquire images of antibody distribution in tumor sections. These were registered with corresponding images showing tumor morphology, which were subsequently used to delineate regions that were distinct in terms of their response to radiation: oxygenated, radiosensitive areas that contained viable cells and hypoxic areas containing resistant viable cells and necrotic cells. Beta point dose kernels were then used to estimate the absorbed dose distribution in these regions. RESULTS. Therapy in normoxic areas was more effective than in hypoxic areas. The multivalent, tumor-specific antibodies, with intermediate clearance rates, delivered the highest absorbed dose to viable tumor cells. Antibody affinity and avidity facilitated the prolonged retention in radiosensitive areas of tumor, where most of the dose was deposited. The effectiveness of therapy could be enhanced further by matching the radionuclide with the antibody and tumor size. CONCLUSIONS. The model presented in this article allows the interaction between important radiobiologic parameters to be assessed and provides a tool for optimizing therapy in animal models and in patients. Cancer 2002;94:1249-57. (C) 2002 American Cancer Society.
引用
收藏
页码:1249 / 1257
页数:9
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