TY - JOUR
T1 - A visually-induced optogenetically-engineered system enables autonomous glucose homeostasis in mice
AU - Li, Shurui
AU - Zhou, Yang
AU - Kong, Deqiang
AU - Miao, Yangyang
AU - Guan, Ningzi
AU - Gao, Ganglong
AU - Jin, Jing
AU - Ye, Haifeng
N1 - Publisher Copyright:
© 2024 Elsevier B.V.
PY - 2025/2/10
Y1 - 2025/2/10
N2 - With the global population increasing and the demographic shifting toward an aging society, the number of patients diagnosed with conditions such as peripheral neuropathies resulting from diabetes is expected to rise significantly. This growing health burden has emphasized the need for innovative solutions, such as brain–computer interfaces. brain–computer interfaces, a multidisciplinary field that integrates neuroscience, engineering, and computer science, enable direct communication between the human brain and external devices. In this study, we developed an autonomous diabetes therapeutic system that employs visually-induced electroencephalography devices to capture and decode event-related potentials using machine learning techniques. We present the visually-induced optogenetically-engineered system for therapeutic expression regulation (VISITER), which generates diverse output commands to control illumination durations. This system regulates insulin expression through optogenetically-engineered cells, achieving blood glucose homeostasis in mice. Our results demonstrate that VISITER effectively and precisely modulates therapeutic protein expression in mammalian cells, facilitating the rapid restoration of blood glucose homeostasis in diabetic mice. These findings underscore the potential for diabetic patients to manage insulin levels autonomously by focusing on target images, paving the way for a more self-directed approach to blood glucose control.
AB - With the global population increasing and the demographic shifting toward an aging society, the number of patients diagnosed with conditions such as peripheral neuropathies resulting from diabetes is expected to rise significantly. This growing health burden has emphasized the need for innovative solutions, such as brain–computer interfaces. brain–computer interfaces, a multidisciplinary field that integrates neuroscience, engineering, and computer science, enable direct communication between the human brain and external devices. In this study, we developed an autonomous diabetes therapeutic system that employs visually-induced electroencephalography devices to capture and decode event-related potentials using machine learning techniques. We present the visually-induced optogenetically-engineered system for therapeutic expression regulation (VISITER), which generates diverse output commands to control illumination durations. This system regulates insulin expression through optogenetically-engineered cells, achieving blood glucose homeostasis in mice. Our results demonstrate that VISITER effectively and precisely modulates therapeutic protein expression in mammalian cells, facilitating the rapid restoration of blood glucose homeostasis in diabetic mice. These findings underscore the potential for diabetic patients to manage insulin levels autonomously by focusing on target images, paving the way for a more self-directed approach to blood glucose control.
KW - Blood glucose homeostasis
KW - Brain–computer interface
KW - Diabetic mice
KW - Optogenetics
KW - Synthetic designer cells
KW - Visual EEG
UR - https://www.scopus.com/pages/publications/85211211944
U2 - 10.1016/j.jconrel.2024.12.006
DO - 10.1016/j.jconrel.2024.12.006
M3 - 文章
C2 - 39645086
AN - SCOPUS:85211211944
SN - 0168-3659
VL - 378
SP - 27
EP - 37
JO - Journal of Controlled Release
JF - Journal of Controlled Release
ER -