| Literature DB >> 32947879 |
Mihyeon Bae1, Hee-Gyeong Yi2, Jinah Jang1,3,4, Dong-Woo Cho1,4.
Abstract
Neurodegenerative diseases are among the most severe problems in aging societies. Various conventional experimental models, including 2D and animal models, have been used to investigate the pathogenesis of (and therapeutic mechanisms for) neurodegenerative diseases. However, the physiological gap between humans and the current models remains a hurdle to determining the complexity of an irreversible dysfunction in a neurodegenerative disease. Therefore, preclinical research requires advanced experimental models, i.e., those more physiologically relevant to the native nervous system, to bridge the gap between preclinical stages and patients. The neural microphysiological system (neural MPS) has emerged as an approach to summarizing the anatomical, biochemical, and pathological physiology of the nervous system for investigation of neurodegenerative diseases. This review introduces the components (such as cells and materials) and fabrication methods for designing a neural MPS. Moreover, the review discusses future perspectives for improving the physiological relevance to native neural systems.Entities:
Keywords: 3D cell-printing; extracellular matrix; neural cell; neural microphysiological system; neurodegenerative disease; organ-on-a-chip
Year: 2020 PMID: 32947879 PMCID: PMC7570039 DOI: 10.3390/mi11090855
Source DB: PubMed Journal: Micromachines (Basel) ISSN: 2072-666X Impact factor: 2.891
Figure 1Schematic of the essential components for creating neural microphysiological system (MPS).
Figure 2(A) Neurodegenerative disease modeling with various neuron cell sources; (B) Human induced pluripotent stem cell (iPSc)-derived neuron based neurodegenerative disease models. Reproduced with permission from Creative Commons Attribution [34].
Figure 3Behavior of glial cells upon activation (A) Gliosis of astrocytes; referred to [48] (B) Microglia activation; excessive pro-inflammatory response induces neuroinflammation in aged brains referred to [60].
Figure 4Application of conducting material to neural MPS; Graphene scaffold for neurite outgrowth. Reproduced with permission from [86].
Natural source derived matrix for neural MPS.
| Materials | Source | Advantages | Limitation |
|---|---|---|---|
| Hyaluronic acid (HA) | Rooster combs, bovine eyes, streptococcus qui [ | High accessibility to isolate the material | Low cell attachment on the HA [ |
| Matrigel | Engel-Holm-Swarm mouse sarcoma cells [ | Various ECM proteins which are abundant in the CNS | Batch-to-batch variation |
| Collagen | Pig, rat, fish | High controllability for mechanical properties [ | Lack of other critical proteins of CNS |
| Decelluarized extracellular matrix(dECM) | Pig, human, mouse, etc. | Favorable to reproduce physiolological environment of the CNS (protein composition, physical properties) | Batch-to-batch variation |
Figure 5Soft lithography based neural MPS (A) Schematic of the soft-lithography progress for organ-on-a-chip (B) Neural diode on microfluid controlled model. Reproduced with permission from [110] (C) Microfluidic-based blood-brain barrier(BBB) model. Reproduced with permission from [124].
Figure 63D bioprinting based neural MPSs (A) Schematic of 3D bioprinting process for neural MPSs. (B) 3D cell-printed axon network model. Reproduced with permission from [131].