The Center for Applied Bioinformatics, St. Jude Children's Research Hospital, Memphis, TN, USA.
Department of Bone Marrow Transplantation and Cell Therapy, St. Jude Children's Research Hospital, Memphis, TN, USA.
Oncoimmunology. 2021 Nov 14;10(1):2000109. doi: 10.1080/2162402X.2021.2000109. eCollection 2021.
Chimeric antigen receptor (CAR) T-cell therapy combines antigen-specific properties of monoclonal antibodies with the lytic capacity of T cells. An effective and safe CAR-T cell therapy strategy relies on identifying an antigen that has high expression and is tumor specific. This strategy has been successfully used to treat patients with B-cell acute lymphoblastic leukemia (B-ALL). Finding a suitable target antigen for other cancers such as acute myeloid leukemia (AML) has proven challenging, as the majority of currently targeted AML antigens are also expressed on hematopoietic progenitor cells (HPCs) or mature myeloid cells. Herein, we developed a computational method to perform a data transformation to enable the comparison of publicly available gene expression data across different datasets or assay platforms. The resulting transformed expression values (TEVs) were used in our antigen prediction algorithm to assess suitable tumor-associated antigens (TAAs) that could be targeted with CAR-T cells. We validated this method by identifying B-ALL antigens with known clinical effectiveness, such as and . Our algorithm predicted TAAs being currently explored preclinically and in clinical CAR-T AML therapy trials, as well as novel TAAs in pediatric megakaryoblastic AML. Thus, this analytical approach presents a promising new strategy to mine diverse datasets for identifying TAAs suitable for immunotherapy.
嵌合抗原受体 (CAR) T 细胞疗法结合了单克隆抗体的抗原特异性和 T 细胞的溶解能力。有效的、安全的 CAR-T 细胞治疗策略依赖于识别高表达且具有肿瘤特异性的抗原。该策略已成功用于治疗 B 细胞急性淋巴细胞白血病 (B-ALL) 患者。然而,为其他癌症(如急性髓细胞白血病 (AML))寻找合适的靶抗原证明具有挑战性,因为目前靶向的 AML 抗原大多数也在造血祖细胞 (HPC) 或成熟髓细胞上表达。在此,我们开发了一种计算方法来进行数据转换,以实现跨不同数据集或检测平台的公共基因表达数据的比较。转换后的表达值 (TEV) 用于我们的抗原预测算法中,以评估可与 CAR-T 细胞靶向的合适肿瘤相关抗原 (TAA)。我们通过识别具有已知临床疗效的 B-ALL 抗原(如 和 )验证了该方法。我们的算法预测了目前正在进行临床前和临床 CAR-T AML 治疗试验的 TAA,以及儿科巨核细胞性 AML 中的新型 TAA。因此,这种分析方法为挖掘不同数据集以识别适合免疫治疗的 TAA 提供了一种有前途的新策略。