Allen Greg M, Lim Wendell A
Department of Medicine, University of California San Francisco, San Francisco, CA, USA.
Cell Design Institute, University of California San Francisco, San Francisco, CA, USA.
Nat Rev Cancer. 2022 Dec;22(12):693-702. doi: 10.1038/s41568-022-00505-x. Epub 2022 Sep 29.
In the past several decades, the development of cancer therapeutics has largely focused on precision targeting of single cancer-associated molecules. Despite great advances, such targeted therapies still show incomplete precision and the eventual development of resistance due to target heterogeneity or mutation. However, the recent development of cell-based therapies such as chimeric antigen receptor (CAR) T cells presents a revolutionary opportunity to reframe strategies for targeting cancers. Immune cells equipped with synthetic circuits are essentially living computers that can be programmed to recognize tumours based on multiple signals, including both tumour cell-intrinsic and microenvironmental. Moreover, cells can be programmed to launch broad but highly localized therapeutic responses that can limit the potential for escape while still maintaining high precision. Although these emerging smart cell engineering capabilities have yet to be fully implemented in the clinic, we argue here that they will become much more powerful when combined with machine learning analysis of genomic data, which can guide the design of therapeutic recognition programs that are the most discriminatory and actionable. The merging of cancer analytics and synthetic biology could lead to nuanced paradigms of tumour recognition, more akin to facial recognition, that have the ability to more effectively address the complex challenges of treating cancer.
在过去几十年中,癌症治疗学的发展主要集中在对单个癌症相关分子的精准靶向。尽管取得了巨大进展,但这种靶向疗法仍显示出精准度不足,并且由于靶点异质性或突变最终会产生耐药性。然而,嵌合抗原受体(CAR)T细胞等基于细胞的疗法的最新发展为重新构建癌症靶向策略带来了革命性机遇。配备合成电路的免疫细胞本质上是活计算机,可被编程为基于多种信号(包括肿瘤细胞内在信号和微环境信号)识别肿瘤。此外,细胞可被编程以引发广泛但高度局部化的治疗反应,既能限制逃逸可能性,又能保持高精度。尽管这些新兴的智能细胞工程能力尚未在临床上完全实现,但我们在此认为,当它们与基因组数据的机器学习分析相结合时,将变得更加强大,基因组数据的机器学习分析可指导设计最具区分性和可操作性的治疗识别程序。癌症分析与合成生物学的融合可能会产生更细致入微的肿瘤识别模式,更类似于面部识别,有能力更有效地应对治疗癌症的复杂挑战。