Publication: Immune-evasive beta cells in Type 1 diabetes: innovations in genetic engineering, biomaterials, and computational modeling
Program
KU Authors
Co-Authors
Rashid MM
Publication Date
Language
Type
Embargo Status
No
Journal Title
Journal ISSN
Volume Title
Alternative Title
Abstract
Type 1 diabetes (T1D) is characterized by the autoimmune destruction of
pancreatic beta cells, resulting in lifelong insulin therapy that falls short of a
true cure. Beta cell replacement therapies hold immense potential to restore
natural insulin production, but they face significant hurdles such as immune
rejection, limited donor availability, and long-term graft survival. In this review,
we explore cutting-edge advances in genetic engineering, biomaterials, and
machine learning approaches designed to overcome these barriers and enhance
the clinical applicability of beta cell therapies. We highlight recent innovations in
genetic editing techniques, particularly CRISPR/Cas9-based strategies, aimed at
generating hypoimmune beta cells capable of evading immune detection.
Additionally, we discuss novel biomaterial encapsulation systems, engineered
at nano-, micro-, and macro-scales, which provide physical and biochemical
protection, promote graft integration, and survival. We mention that recent
advances in machine learning and computational modeling also play a crucial
role in optimizing therapeutic outcomes, predicting clinical responses, and
facilitating personalized treatment approaches. We also critically evaluate
ongoing clinical trials, providing insights into the current translational
landscape and highlighting both successes and remaining challenges. Finally,
we propose future directions, emphasizing integrated approaches that combine
genetic, biomaterial, and computational innovations to achieve durable, scalable,
and immunologically tolerant beta cell replacement therapies for T1D.
Source
Publisher
Frontiers Media SA
Subject
Medicine
Citation
Has Part
Source
Front in Immunology
Book Series Title
Edition
DOI
10.3389/fimmu.2025.1618086
item.page.datauri
Link
Rights
CC BY (Attribution)
Copyrights Note
Creative Commons license
Except where otherwised noted, this item's license is described as CC BY (Attribution)

