4.6 Review

Harnessing the power of artificial intelligence to advance cell therapy

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IMMUNOLOGICAL REVIEWS
卷 -, 期 -, 页码 -

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WILEY
DOI: 10.1111/imr.13236

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cell signaling; cell therapy; machine learning; signaling motifs; synthetic biology

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Cell therapies are powerful technologies that rely on reprogramming human cells for therapeutic purposes. The complexity of these technologies makes rational engineering of cell therapies more challenging. By combining experimental library screens and artificial intelligence (AI), predictive models for the development of modular cell therapy technologies can be built to enhance the speed and efficiency of cell therapy development.
Cell therapies are powerful technologies in which human cells are reprogrammed for therapeutic applications such as killing cancer cells or replacing defective cells. The technologies underlying cell therapies are increasing in effectiveness and complexity, making rational engineering of cell therapies more difficult. Creating the next generation of cell therapies will require improved experimental approaches and predictive models. Artificial intelligence (AI) and machine learning (ML) methods have revolutionized several fields in biology including genome annotation, protein structure prediction, and enzyme design. In this review, we discuss the potential of combining experimental library screens and AI to build predictive models for the development of modular cell therapy technologies. Advances in DNA synthesis and high-throughput screening techniques enable the construction and screening of libraries of modular cell therapy constructs. AI and ML models trained on this screening data can accelerate the development of cell therapies by generating predictive models, design rules, and improved designs.

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