MIRD 小册子第 31 号:MIRDcell V4--用于配制优化放射性药物治疗药剂的人工智能工具

Sumudu Katugampola, Jianchao Wang, Roger W. Howell
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摘要

多年来,人们开发出了治疗癌症的放射性药物鸡尾酒。鸡尾酒疗法之所以吸引人,是因为靶细胞对一种放射性药物的摄取不均匀,不可能达到预期的治疗效果。因此,有必要使用多种针对细胞上不同受体的放射性药物。然而,由于缺乏优化策略,过去在体内实施的结果并不令人信服。在此,我们介绍了新版软件平台 MIRDcell V4 中的人工智能(AI)工具,该工具通过最大限度地减少肿瘤细胞达到给定存活率(SF)所需的总崩解度来优化放射性药物鸡尾酒。方法:在 MIRDcell V4 中使用基于顺序最小二乘编程算法的优化器开发了人工智能工具。该算法可确定鸡尾酒中每种药物的摩尔活性,使达到指定 SF 所需的总崩解度最小。该工具适用于不发生交叉照射的细胞群(如循环或扩散的肿瘤细胞)和多细胞群(如微转移灶)。这些工具使用模型数据、用荧光标记抗体标记的单细胞悬浮液的流式细胞仪数据,以及含荧光色素脂质体在球体内的三维时空动力学数据进行了测试。结果:在处理 MDA-MB-231 人类乳腺癌细胞悬浮液时,考虑了 4 种 211At 抗体的实验结合分布。与最佳的单一抗体相比,2 种药物的组合可将所需的 211At 衰变次数减少 1.6 倍。在另一项研究中,195mPt放射性标记的两种放射性药物分别在一个假定的多细胞群中呈对数形式分布。在这项研究中,2 种药物组合所需的衰变次数是单独使用其中一种药物的 1.7 倍。最后,2 种 225Ac 标记的药物在球体内的径向分布不同,所需的崩解量约为最佳单药的一半。结论MIRDcell 人工智能工具可确定优化的药物组合以及实现给定 SF 所需的相应摩尔活性。这种方法可用于分析从细胞培养、动物或病人体内获得的细胞样本,以预测最佳药物组合,从而以最少的崩解总量获得最大的治疗效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MIRD Pamphlet No. 31: MIRDcell V4—Artificial Intelligence Tools to Formulate Optimized Radiopharmaceutical Cocktails for Therapy

Radiopharmaceutical cocktails have been developed over the years to treat cancer. Cocktails of agents are attractive because 1 radiopharmaceutical is unlikely to have the desired therapeutic effect because of nonuniform uptake by the targeted cells. Therefore, multiple radiopharmaceuticals targeting different receptors on a cell is warranted. However, past implementations in vivo have not met with convincing results because of the absence of optimization strategies. Here we present artificial intelligence (AI) tools housed in a new version of our software platform, MIRDcell V4, that optimize a cocktail of radiopharmaceuticals by minimizing the total disintegrations needed to achieve a given surviving fraction (SF) of tumor cells. Methods: AI tools are developed within MIRDcell V4 using an optimizer based on the sequential least-squares programming algorithm. The algorithm determines the molar activities for each drug in the cocktail that minimize the total disintegrations required to achieve a specified SF. Tools are provided for populations of cells that do not cross-irradiate (e.g., circulating or disseminated tumor cells) and for multicellular clusters (e.g., micrometastases). The tools were tested using model data, flow cytometry data for suspensions of single cells labeled with fluorochrome-labeled antibodies, and 3-dimensional spatiotemporal kinetics in spheroids for fluorochrome-loaded liposomes. Results: Experimental binding distributions of 4 211At-antibodies were considered for treating suspensions of MDA-MB-231 human breast cancer cells. A 2-drug combination reduced the number of 211At decays required by a factor of 1.6 relative to the best single antibody. In another study, 2 radiopharmaceuticals radiolabeled with 195mPt were each distributed lognormally in a hypothetical multicellular cluster. Here, the 2-drug combination required 1.7-fold fewer decays than did either drug alone. Finally, 2 225Ac-labeled drugs that provide different radial distributions within a spheroid require about one half of the disintegrations required by the best single agent. Conclusion: The MIRDcell AI tools determine optimized drug combinations and corresponding molar activities needed to achieve a given SF. This approach could be used to analyze a sample of cells obtained from cell culture, animal, or patient to predict the best combination of drugs for maximum therapeutic effect with the least total disintegrations.

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