Multielectrode Arrays for Functional Phenotyping of Neurons from Induced Pluripotent Stem Cell Models of Neurodevelopmental Disorders
Fraser P. McCready,Sara Gordillo-Sampedro,Kartik Pradeepan,Julio M. Martinez-Trujillo,James Ellis +4 more
TL;DR: The strengths of in vitro MEA technology are highlighted by reviewing the history of its development and the original scientific questions MEAs were intended to answer, and novel computational methods used to better interpret network phenotyping data are presented.
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Abstract: Simple Summary Multielectrode array technology allows researchers to record the spontaneous firing activity of cultured neurons over a period of multiple weeks or months. These data can be valuable for understanding how the functional relationships between neurons evolve as they begin to form connections and wire into a functional network. This technology has been adopted by researchers using stem cells to produce human neurons in culture to study neurodevelopmental disorders. However, the dizzying complexity and scale of the data generated have posed some challenges with the analysis and interpretation of experimental results. Here, we first provide historical context as to why multielectrode array platforms were originally developed, and use this perspective to explore some of the challenges currently facing the field. We then highlight new analysis methods, provide some guidance for improving the analysis of multielectrode array data, and discuss standardizing how these findings are communicated in scientific publications. Abstract In vitro multielectrode array (MEA) systems are increasingly used as higher-throughput platforms for functional phenotyping studies of neurons in induced pluripotent stem cell (iPSC) disease models. While MEA systems generate large amounts of spatiotemporal activity data from networks of iPSC-derived neurons, the downstream analysis and interpretation of such high-dimensional data often pose a significant challenge to researchers. In this review, we examine how MEA technology is currently deployed in iPSC modeling studies of neurodevelopmental disorders. We first highlight the strengths of in vitro MEA technology by reviewing the history of its development and the original scientific questions MEAs were intended to answer. Methods of generating patient iPSC-derived neurons and astrocytes for MEA co-cultures are summarized. We then discuss challenges associated with MEA data analysis in a disease modeling context, and present novel computational methods used to better interpret network phenotyping data. We end by suggesting best practices for presenting MEA data in research publications, and propose that the creation of a public MEA data repository to enable collaborative data sharing would be of great benefit to the iPSC disease modeling community.
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Citations
Large-area electrical imaging having single neuron resolution using 236,880 electrodes CMOS-MEA technology
Stephen C. Neff
- 10 Nov 2022
TL;DR: In this paper , the authors used a complementary metaloxide semiconductor (CMOS)-microelectrode array (MEA) that uses 236,880 electrodes each with an electrode size of 11.22 × 11.6 µm and a wide area of 5.5 × 5.7 µm.
Human-derived cortical neurospheroids coupled to passive, high-density and 3D MEAs: a valid platform for functional tests
Monica Frega
- 18 Jan 2023
TL;DR: In this paper , a method to rapid generate neurospheroids of human origin with control over cell composition that can be used for functional investigations is proposed. But the method is not suitable for in-vitro disease modeling.
MEA-NAP compares microscale functional connectivity, topology, and network dynamics in organoid or monolayer neuronal cultures
T. Sit,Rachael C. Feord,Alexander W. E. Dunn,Jeremi Chabros,David Oluigbo,Hugo Smith,Lance Burn,Elise Chang,Alessio Boschi,Yin Yuan,George M. Gibbons,Mahsa Khayat-Khoei,Francesco De Angelis,Erik Hemberg,M. Hemberg,Madeline A. Lancaster,Andras Lakatos,Stephen J. Eglen,Ole Paulsen,Susanna B. Mierau +19 more
TL;DR: A MATLAB MEA network analysis pipeline (MEA-NAP) for raw voltage time-series acquired from single- or multi-well MEAs, which can identify network-level effects of pharmacologic perturbation and/or disease-causing mutations and can provide a translational platform for revealing mechanistic insights and screening new therapeutic approaches.
autoMEA: Machine learning-based burst detection for multi-electrode array datasets
Vinicius Hernandes,A.M.F. Heuvelmans,Valentina Gualtieri,Dimphna H. Meijer,Geeske M. van Woerden,Eliska Greplova +5 more
TL;DR: AutoMEA is software for machine learning-based burst detection in multi-electrode array datasets that accurately detects network characteristics and burst dynamics in neuronal networks.
Polyethyleneimine facilitates the growth and electrophysiological characterization of iPSC-derived motor neurons
Meimei Yang,Daofeng You,Gang Liu,Yin Lu,Guangming Yang,Timothy O’Brien,David C. Henshall,Orla Hardiman,Cai Li,Min Liu,Sanbing Shen +10 more
TL;DR: This study investigates the effect of five coating conditions on the growth and electrophysiological characterization of iPSC-derived motor neurons, finding that Polyethyleneimine (PEI) and Poly-L-ornithine/Matrigel (POM) promote attachment and maturation, with PEI reducing variability in electrophysiological signals.
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