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76 Publications:

2013..

14

7

..2025

443 Citations*:

2015..

135

68

..2025

h = 12 / i10 = 16

96 Co-Authors:

Alibart F. (35)
Coffinier Y. (26)
Guérin D. (19)
>> Ghazal M. (18)
Lmimouni K. (16)
Janzakova K. (15)
Scholaert C. (13)
Vuillaume D. (13)
Kumar A. (12)
Halliez S. (11)
Schmid G. (11)
Dargent T. (8)
Buée L. (7)
Colin M. (7)
Susloparova A. (7)
Hafsi B. (6)
Bourguiga R. (6)
Ferchichi K. (6)
Maltenberger A. (6)
Baron A. (5)
Boubaker A. (5)
Boujnah A. (5)
Kalboussi A. (5)
Daher Mansour M. (5)
Routier L. (4)
Lefebvre C. (4)
Barois N. (4)
Janel S. (4)
Kessler F. (4)
Cerveaux A. (3)
Foulon P. (3)
Horlac'h T. (3)
Louis G. (3)
Westrelin A. (3)
Yger P. (3)
Crljen Ž. (3)
Lončarić I. (3)
Zlatić V. (3)
Lenfant S. (3)
Regensburger S. (3)
Halik M. (3)
Benfenati V. (3)
Bonetti S. (3)
Borrachero Conejo A. I. (3)
Generali G. (3)
Muccini M. (3)
Toffanin S. (3)
Toledo Nauto M. (2)
Hernández-Balaguera E. (2)
Balafrej I. (2)
Drouin D. (2)
Rouat J. (2)
Garg N. (2)
Haj Ammar W. (2)
Çağatay Tarhan M. (2)
Pentlehner D. (2)
Caprini M. (2)
Grishin I. (2)
Karges S. (2)
Natali M. (2)
Pistone A. (2)
Quiroga S. D. (2)
Wemken J. H. (2)
Gasse C. (1)
Gourdel M.-E. (1)
Kanso H. (1)
Kenne S. (1)
Le Cacher de Bonneville B. (1)
Morchain C. (1)
Rain J.-C. (1)
Reverdy C. (1)
Saadi P.-L. (1)
Vercoutere E. (1)
Moustiez P. (1)
Dumortier C. (1)
Ghodhbane N. (1)
Melot A. (1)
de Maistre A. (1)
Oumekloul Z. (1)
Pernod P. (1)
Talbi A. (1)
Arscott S. (1)
Begard S. (1)
Pallecchi E. (1)
Thomy V. (1)
Athanasiou V. (1)
Konkoli Z. (1)
Przyczyna D. (1)
Szaciłowski K. (1)
Blanchard P. (1)
Mastropasqua Talamo M. (1)
Roncali J. (1)
Jaeger A. (1)
Petrukhina M. A. (1)
Mercuri F. (1)
Kanitz A. (1)

6 Years [Ghazal M.]:

2025
2024 (1)
2023 (2)
2022 (5)
2021 (5)
2020 (4)
2019 (1)
2018
2017
2016
2015
2014
2013

A' B' O' P' T'
18 w/ Mahdi Ghazal
 id g RG
[A25] Neuromorphic Signal Classification using Organic Electrochemical Transistor Array and Spiking Neural Simulations | IEEE Sens. J. 24(6), 9104━9114 (2024) [IF = 4.300; 4 cit.] bib hal

Abstract: Neuromorphic computing is an exciting and rapidly growing field that aims to create computing systems that can replicate the complex and dynamic behavior of the human brain. Organic electrochemical transistors (OECTs) have emerged as a promising tool for developing such systems due to their unique bioelectronic properties. In this paper, we present a novel approach for signal classification using an OECT array, which exhibits multifunctional bioelectronic functionality similar to neurons and synapses li nked through a global medium. Our approach takes advantage of the intrinsic device variabilities of OECTs to create a reservoir network with variable neuron-time constants and synaptic strengths. We demonstrate the effectiveness of our approach by classi fying surface-electromyogram (sEMG) signals into three hand gesture categories. The OECT array performs efficient signal acquisition by feeding signals through multiple gates and measuring the response to a group of OECTs with a global liquid medium. We compare the performance of our approach with and without projecting the input on OECTs and observe a significant increase in classification accuracy from 40% to 68%. We also examined how the classification performance is affected by different selection s trategies and numbers of OECTs used. Finally, we developed a spiking neural network-based simulation that mimics the OECTs array and found that OECT-based classification is comparable to the spiking neural network-based approach. Our work paves the way f or the next generation of low-power, real-time, and intelligent biomedical sensing systems.

2025 | 2024

Ghazal M., Kumar A.*, Garg N., Pecqueur S., Alibart F.*

[A22] Electropolymerization Processing of Side-Chain Engineered EDOT for High Performance Microelectrode Arrays | Biosens. Bioelectron. 237, 115538 (2023) [IF2023 = 10.700; 3 cit.] bib hal

Abstract: Microelectrode Arrays (MEAs) are popular tools for in vitro extracellular recording. They are often optimized by surface engineering to improve affinity with neurons and guarantee higher recording quality and stability. Recently, PEDOT:PSS has been used to coat microelectrodes due to its good biocompatibility and low impedance, which enhances neural coupling. Herein, we investigate on electro-co-polymerization of EDOT with its triglymated derivative to control valence between monomer units and hydrophil ic functions on a conducting polymer. Molecular packing, cation complexation, dopant stoichiometry are governed by the glycolation degree of the electro-active coating of the microelectrodes. Optimal monomer ratio allows fine-tuning the material hydrophi licity and biocompatibility without compromising the electrochemical impedance of microelectrodes nor their stability while interfaced with a neural cell culture. After incubation, sensing readout on the modified electrodes shows higher performances with respect to unmodified electropolymerized PEDOT, with higher signal-to-noise ratio (SNR) and higher spike counts on the same neural culture. Reported SNR values are superior to that of state-of-theart PEDOT microelectrodes and close to that of state-of-t he-art 3D microelectrodes, with a reduced fabrication complexity. Thanks to this versatile technique and its impact on the surface chemistry of the microelectrode, we show that electro-co-polymerization trades with manycompound properties to easily gathe r them into single macromolecular structures. Applied on sensor arrays, it holds great potential for the customization of neurosensors to adapt to environmental boundaries and to optimize extracted sensing features.

2025 | 2024 | 2023

Ghazal M., Susloparova A., Lefebvre C., Daher Mansour M., Ghodhbane N., Melot A., Scholaert C., Guérin D., Janel S., Barois N., Colin M., Buée L., Yger P., Halliez S., Coffinier Y.*, Pecqueur S.*, Alibart F.

[A20] Precision of neuronal localization in 2D cell cultures by using high-performance electropolymerized microelectrode arrays correlated with optical imaging | Biomed. Phys. Eng. Express 9, 035013 (2023) [IF2023 = 1.300; 4 cit.] bib hal

Abstract: Recently, the development of electronic devices to extracellularly record the simultaneous electrical activities of numerous neurons has been blooming, opening new possibilities to interface and decode neuronal activity. In this work, we tested how the u se of EDOT electropolymerization to tune post-fabrication materials could optimize the cell/electrode interface of such devices. Our results showed an improved signal-to-noise ratio, better biocompatibility, and a higher number of neurons detected in com parison with gold electrodes. Then, using such enhanced recordings with 2D neuronal cultures combined with fluorescent optical imaging, we checked the extent to which the positions of the recorded neurons could be estimated solely via their extracellular signatures. Our results showed that assuming neurons behave as monopoles, positions could be estimated with a precision of approximately tens of micrometers.

2025 | 2024 | 2023

Ghazal M., Scholaert C., Dumortier C., Lefebvre C., Barois N., Janel S., Çağatay Tarhan M., Colin M., Buée L., Halliez S., Pecqueur S., Coffinier Y., Alibart F.*, Yger P.*

[O18] Development of 3D organic polymer dendrites as neuromorphic device | 15th International Symposium on Flexible Organic Electronics (ISFOE22), Thessaloniki/Greece - July 7, 2022 ( program) bib

Abstract: During recent years, neuromorphic engineering has gained significant attraction due to its endeavor to reproduce attractive brain features such as high computational efficiency, low power consumption, functional and structural adaptability onto hardware devices for competitive computing development. Currently, most of these implementations are achieved with either standard silicon-based technologies (complementary metal-oxide-semiconductor) or more emerging material and devices (iono-electronic material s and memristor devices). Mainly, these technologies are produced by means of top-down approaches. In contrast, brain computing largely relies on self-assembling processes to interconnect cells and form pathways for neural networks communication. Thus, t o benefit more from neuromorphic features, there is a strong need to explore such devices that can rely on the same bottom-up approach as in the brain. Promising solutions for this question are gathered in organic electronic materials, more precisely in organic mixed ionic electronic conductors. This study is focused on the development of bottom-up fashioned 3D organic devices that are able to mimic biological neural network branching. By employing Alternating-Current (AC) bipolar electropolymerization, we show how one can synthesize polymer dendritic structures and tune its morphologies depending on various applied AC signals . Additionally, we show how dendritic devices may exhibit synaptic plasticity properties (short-term and long-term memory effec t). Finally, we demonstrate implementation of structural plasticity through spike-event activation AC-electropolymerization and the possibility to modify the weight of obtained dendritic connections with respect to spike rate intensity of the applied sig nals.

Janzakova K., Ghazal M., Kumar A., Coffinier Y., Pecqueur S., Alibart F.

[P9] Dendritic-like PEDOT:PSS electrodes for 2D in-vitro electrophysiology | 2022 MEA Meeting, Tübingen/Germany - July 7, 2022 ( abstract) bib

Abstract: Over the past few years, organic electronics - and especially organic mixed ionic electronic conductors (OMIECs) - has taken bio sensing and neuromorphic applications to a whole new level. However, one of the major limitations of the mainstream technolog ies today is that electronic circuits need to be pre-shaped according to the intended use and the expected outcome. This top-down approach, far from being flexible/adaptive, does not really make the most of the resources at hand, as it is hard to predict precisely where cells will be located. To counter that, we can either choose to increase the density and the number of electrodes, so that the entire area would be mapped, or shift from a top-down to a bottom-up approach which would allow for a more enl ightened decision-making process. Recently, the electrodeposition of PEDOT:PSS has been explored as a novel technique to grow conducting polymer films and fibers on non-conductive substrates. The work of Janzakova and coworkers took that concept a step f urther by using electropolymerization of EDOT as a way to create freestanding dendritic-like conductive fibers in a 3D environment, paving the way for in operando material modification, and in fine bottom-up fabrication routes that would be more adaptive and allow for more flexibility. Moreover, it was lately showed that these objects could work as Organic Electrochemical Transistors (OECTs). Here, we explore the possibility of growing dendritic-like PEDOT fibers on Multielectrode Arrays (MEAs) via elec tropolymerization of EDOT. Electrophysiological measurements are based on the capacitive coupling between cells and the electrode material. In comparison with local electrodes, the dendritic objects present spatially distributed impedance due to the exte nsions of their dendritic branches interacting with the biological environment. We investigate the relation between morphology and impedance in these dendritic-like fibers by using a non-conventional Electrochemical Impedance Spectroscopy (EIS) setup tha t will allow us to apply a potential difference between the two ends of the dendrites, thus studying how biasing them can affect their behavior. Moreover, it appears that dendritic fibers can be considered both as passive electrodes as well as active dev ices. We explore the use of these two strategies in the context of electrophysiological measurements. Finally, the ability to record biological signals results from the interaction between cells and an electrode. Unconventional objects such as dendrites present spatio-temporal filtering properties that could affect the recording of such signals. We investigate how tuning the impedance of a dendrite might be used to record efficiently bio-signals.

Scholaert C., Janzakova K., Ghazal M., Daher Mansour M., Lefebvre C., Halliez S., Coffinier Y., Pecqueur S., Alibart F.

[P8] Accurate neurons localization in 2D cell cultures by using high performance electropolymerized microelectrode arrays correlated with optical imaging | 2022 MEA Meeting, Tübingen/Germany - July 7, 2022 ( abstract) bib

Abstract: The development of electronic devices such as microelectrode arrays (MEAs), used to record extracellularly simultaneous electrical activity of large populations of neurons is blooming. To enhance the quality of the recordings, the use of electrode made o f conducting polymer such as PEDOT has recently emerged for optimizing the performance of microelectrodes due to its mixed ionic electronic conduction, biocompatibility and low impedance. However, the extent to which these new interfaces can help the alg orithmic pipelines of spike sorting, i.e. turning extracellular potentials into individual spike trains remains unexplored. To address this issue, we checked if the physical positions of the neurons could be reliably inferred from extracellular electrica l recordings obtained by MEAs, and thus be exploited by downstreams spike sorting algorithms. To do so, we combine high resolution images of neuronal tissues and dense recordings performed via high performant electropolymerized electrodes based MEAs. Fir stly, we report the use of EDOT electropolymerization to tune post-fabrication material and geometrical parameters of passive microelectrodes. The process optimizes the cell/electrode interface by decreasing its impedance and improving its affinity with neurons: results demonstrate a better biocompatibility and improved signal-to-noise ratio (SNR) (up to 40 dB). Thanks to the higher SNR, we were able to detect more cells in comparison with gold electrodes from the same neural network by using spike sort ing. Hence, the higher number of cells detected will lead into more accurate analysis of the localization of the active neurons on top of MEA. Secondly, by using these high performant MEAs, we investigated the possibility to accurately estimate the posit ions of the neurons solely from extracellular recordings by studying the correlation between electrical activity (obtained via spike sorting), optical imaging (Fluorescent) and Scanning Electron Microscopy (SEM) of neural networks cultured on MEAs. By us ing the SpykingCircus software to spike sort the extracellular recordings, we estimated the positions of the neurons either by using the center of mass of their electrical signatures, or by inferring the positions assuming cells would behave as monopoles . By superposition of the fluorescent and the SEM images, we compared the observed physical positions of the neurons with the ones predicted by the two aforementioned methods. This approach showed the high accuracy of the monopole hypothesis compared to the center of mass. In this work, we showed how the use of a material engineering technique for optimizing state of art MEAs can enhance the quality of the recordings. Hence, the correlation of these high quality recordings with optical imaging paves the way towards new algorithmic possibilities for spike sorting algorithms that could make use of a more reliable estimation of neuronal positions.

Ghazal M., Scholaert C., Lefebvre C., Barois N., Janel S., Çağatay Tarhan M., Colin M., Buée L., Halliez S., Pecqueur S., Coffinier Y., Alibart F., Yger P.

[O17] Neurites Whispering at Adaptive Sensors━High Spike-Signal-to-Noise Ratio Recorded with Electropolymerized Microelectrode Arrays | 2022 Virtual MRS Spring Meeting & Exhibit, talk SB06.15.04, May 24, 2022 ( abstract) bib

Abstract: The development of electronic devices for neurosensing is leading to fundamental discoveries in communication setups for interfacing and computing the brain's electrical activity that is still a demanding task in the 21st century. One of the greatest cha llenges for efficient neurosensing is to ensure that detection/transduction between biochemically rich systems and tools is fully mastered to reliably gather relevant information. In extracellular devices such as microelectrode arrays (MEAs), the discord ance lies at the interface between ions and the electrodes. Engineering chemically/morphologically the electrode's materials by decreasing its impedance, improving its affinity with neurons, and boosting its biocompatibility ensures better cell/electrode interface conditions to find the right materials that detect ionic signals from neurons and transduce them into electronic signals with the lowest information loss. Hence, the use of conducting polymers (PEDOT) has emerged for optimizing the performance of microelectrodes in neurosensing due to its mixed ionic electronic conduction, biocompatibility and low impedance. In parallel to the development of passive microelectrode, organic electrochemical transistors (OECTs) have received lots of attention in the biosensing field since they exhibit high coupling with cells and signal amplification. Notably, the transconductance represents an important parameter that depends on geometrical and material parameters that rules largely OECTs performances in biose nsing. In this direction, we explore the use of EDOT electropolymerization to tune post-fabrication material and geometrical parameters of passive microelectrodes for optimizing the cell/electrode interface by decreasing its impedance and improving its a ffinity with neurons (increasing the resistance "Rseal" that represents the cell/electrode cleft). For electropolymerized PEDOT MEAs, we demonstrate long term and stable extracellular recording of primary cortical neurons with a record signal-to-noise ra tio (SNR) up to 37 dB (with ultra-low noise down to 2.1 μV RMS). Secondly, for active sensing with OECTs, this strategy exploits the concept of adaptive sensing where both transconductance and impedance are tuned simultaneously or independently. This approach shows an improvement of OECTs transconductance by 150-percent, volumetric capacitance by 300-percent, and a reduction in array's variability by 60-percent in comparison with standard spin-coated OECTs. The cytotoxicity of the electropolymerized EDOT was assessed for primary neural cells culture and no detrimental effect of electropolymerized EDOT on cell viability was observed. To extract the impedance and transconductance values for both MEAs and OECTs, we combine DC electrical measurements w ith electrochemical impedance spectroscopy (EIS). To show the cell/electrode morphology and neurite outgrowth to electropolymerized microelectrodes, Scanning Electron Microscopy (SEM) was performed. To correlate the morphological changes of the material with the enhancement of its electrical and electrochemical performances, Atomic Force Microscopy (AFM) in liquid and Raman Spectroscopy were achieved. Finally, in-vitro extracellular recorded signals from entorhinal cortex cultured slices and primary cor tical neurons using both MEAs and OECTs are presented. The key novelty of this technique is to propose a post-fabrication material engineering technique that can be used to optimize both passive (MEAs) and active (OECTs) devices for extracellular recordi ng and promote new exploratory sensing strategies to ensure high quality neurosensing alternatives.

Ghazal M., Scholaert C., Daher Mansour M., Janel S., Barois N., Halliez S., Dargent T., Coffinier Y., Pecqueur S., Alibart F.

[O16] From Bio-Sensing to Neuromorphic Engineering with Electropolymerized PEDOT:PSS Iono-Electronic Materials | 2022 Virtual MRS Spring Meeting & Exhibit, invited talk EQ11.15.02, May 23, 2022 ( abstract) bib

Abstract: Iono-electronic materials and devices are suscitating lots of interest from both bio-electronics and neuromorphic research communities. In the one hand, iono-electronic materials are offering attractive features such as bio-compatibility, water environme nt operation and efficient ionic to electronic signals transduction. In the other hand, functional devices based on such materials (organic electrochemical transistors, for instance) have shown multiple neuromorphic features from synaptic plasticity to d endritic integration. This talk will present how electropolymerization of PEDOT:PSS materials can be used in both a bio-electronic and a neuromorphic perspective. Electropolymerization of OECT sensors can indeed be advantageously used for optimizing / tu ning the iono-electronic responses of organic electrochemical transistors, thus paving the way to plastic electrophysiological sensors. Notably, we will show how transconductance and volumetric capacitance are evolving with potenstiostatic electropolymer ization. Secondly, bipolar AC electropolymerization can be used to engineer dendritic-like fibers of PEDOT:PSS. Such unconventional structures can implement various neuromorphic concept such as structural plasticity and synaptic plasticity. Finally, comp uting task taking advantage of both electropolymerized sensors and neuromorphic computing will present temporal patterns classification with reservoir computing approach.

Alibart F., Ghazal M., Janzakova K., Kumar A., Scholaert C., Coffinier Y., Pecqueur S.

[A16] Analog Programing of Conducting-Polymer Dendritic Interconnections and Control of their Morphology | Nat. Commun. 12, 6898 (2021) [IF2021 = 17.690; 19 cit.] bib arXiv hal (dataset: Fs)

Abstract: Although materials and processes are different from biological cells', brain mimicries led to tremendous achievements in parallel information processing via neuromorphic engineering. Inexistent in electronics, we emulate dendritic morphogenesis by electr opolymerization in water, aiming in operando material modification for hardware learning. Systematic study of applied voltage-pulse parameters details on tuning independently morphological aspects of micrometric dendrites': fractal number, branching degr ee, asymmetry, density or length. Growths time-lapse image processing shows spatial features to be dynamically dependent, and expand distinctively before and after conductive bridging with two electro-generated dendrites. Circuit-element analysis and imp edance spectroscopy confirms their morphological control in temporal windows where growth kinetics is finely perturbed by the input frequency and duty cycle. By the emulation of one's most preponderant mechanisms for brain's long-term memory, its impleme ntation in vicinity of sensing arrays, neural probes or biochips shall greatly optimize computational costs and recognition required to classify high-dimensional patterns from complex environments.

2025 | 2024 | 2023 | 2022 | 2021

Janzakova K., Kumar A., Ghazal M., Susloparova A., Coffinier Y., Alibart F., Pecqueur S.*

[A15] Bio-inspired adaptive sensing through electropolymerization of organic electrochemical transistors | Adv. Electron. Mater. 8(3), 2100891 (2022) [IF2021 = 7.633; 20 cit.] bib arXiv hal

Abstract: Organic electrochemical transistors are considered today as a key technology to interact with a biological medium through their intrinsic ionic-electronic coupling. In this paper, the authors show how this coupling can be finely tuned (in operando) post- microfabrication via the electropolymerization technique. This strategy exploits the concept of adaptive sensing where both transconductance and impedance are tunable and can be modified on-demand to match different sensing requirements. Material investi gation through Raman spectroscopy, atomic force microscopy, and scanning electron microscopy reveals that electropolymerization can lead to a fine control of poly(3,4-ethylenedioxythiophene) (PEDOT) microdomains organization, which directly affects the i ono-electronic properties of organic electrochemical transistors (OECTs). They further highlight how volumetric capacitance and effective mobility of PEDOT:polystyrene sulfonate influence distinctively the transconductance and impedance of OECTs. This ap proach shows to improve the transconductance by 150% while reducing their variability by 60\% in comparison with standard spin-coated OECTs. Finally, they show how the technique can influence voltage spike rate hardware classification with direct interes t in bio-signals sorting applications.

2025 | 2024 | 2023 | 2022 | 2021

Ghazal M., Daher Mansour M., Scholaert C., Dargent T., Coffinier Y., Pecqueur S.*, Alibart F.*

[A14] Dendritic organic electrochemical transistors grown by electropolymerization for 3D neuromorphic engineering | Adv. Sci. 8(24), 2102973 (2021) [IF2021 = 17.521; 36 cit.] bib arXiv hal

Abstract: One of the major limitations of standard top-down technologies used in today's neuromorphic engineering is their inability to map the 3D nature of biological brains. Here, it is shown how bipolar electropolymerization can be used to engineer 3D networks of PEDOT:PSS dendritic fibers. By controlling the growth conditions of the electropolymerized material, it is investigated how dendritic fibers can reproduce structural plasticity by creating structures of controllable shape. Gradual topologies evolution is demonstrated in a multielectrode configuration. A detailed electrical characterization of the PEDOT:PSS dendrites is conducted through DC and impedance spectroscopy measurements and it is shown how organic electrochemical transistors (OECT) can be re alized with these structures. These measurements reveal that quasi-static and transient response of OECTs can be adjusted by controlling dendrites' morphologies. The unique properties of organic dendrites are used to demonstrate short-term, long-term, an d structural plasticity, which are essential features required for future neuromorphic hardware development.},

2025 | 2024 | 2023 | 2022 | 2021

Janzakova K., Ghazal M., Kumar A., Coffinier Y., Pecqueur S.*, Alibart F.*

[O15] Merging Bio-Sensing and Neuromorphic Computing with Organic Electro Chemical Transistors | Spring's European Material Research Society Conf. 2021 (eMRS 2021 Spring), invited talk R.VIII.1, June 3, 2021 ( abstract) bib

Abstract: Most of today's strategies to interface biology with electronic hardware are based on layered architectures where the front-end of sensing is optimized separately from the back-end for processing/computing signals. Alternatively, biological systems are c apitalizing on distributed architecture where both sensing and computing are mix together and co-optimized. In this talk, we will present our strategy to implement bio-sensing of electroactive cells in a neuromorphic perspective. We will present how orga nic electrochemical transistors can be used to record electrical signals from neural cells. We will show various strategies capitalizing on the versatility of organic materials synthesis and organic device fabrication to tune and adapt the functionalitie s of such bio-sensors. We will then present how these strategies can be efficiently used to realize computing functions directly at the interface with biology. Notably, we will illustrate how a network of ionic sensors can implement the reservoir computi ng concept, a powerful neuromorphic computing approach of particular interest for dynamical signal processing.

Alibart F., Ghazal M., Janzakova K., Kumar A., Susloparova A., Halliez S., Colin M., Buée L., Guérin D., Dargent T., Coffinier Y., Pecqueur S.

[P5] Post-fabrication optimization technique of organic electrochemical transistor (OECT) by electropolymerization for electrophysiology | Technologies for Neuroengineering - Nature Conference, Virtual, May 26, 2021 ( program) bib

Abstract:

Ghazal M., Daher Mansour M., Halliez S., Coffinier Y., Dargent T., Pecqueur S., Alibart F.

[O13] Merging Bio-Sensing and Neuromorphic Computing with Organic Electro Chemical Transistors | 2020 Virtual MRS Fall Meeting & Exhibit, invited talk F.SM05.04.02, Nov. 27, 2020 ( abstract) bib

Abstract: Most of today's strategies to interface biology with electronic hardware are based on layered architectures where the front-end of sensing is optimized separately from the back-end for processing/computing signals. Alternatively, biological systems are c apitalizing on distributed architecture where both sensing and computing are mix together and co-optimized. In this talk, we will present our strategy to implement bio-sensing of electroactive cells in a neuromorphic perspective. We will present how orga nic electrochemical transistors can be used to record electrical signals from neural cells. We will show various strategies capitalizing on the versatility of organic materials synthesis and organic device fabrication to tune and adapt the functionalitie s of such bio-sensors. We will then present how these strategies can be efficiently used to realize computing functions directly at the interface with biology. Notably, we will illustrate how a network of ionic sensors can implement the reservoir computi ng concept, a powerful neuromorphic computing approach of particular interest for dynamical signal processing.

Alibart F., Ghazal M., Janzakova K., Kumar A., Susloparova A., Halliez S., Colin M., Buée L., Guérin D., Dargent T., Coffinier Y., Pecqueur S.

[O12] Organic Electrochemical Transistors Based on Electropolymerized Dendritic Structures | 2020 Virtual MRS Fall Meeting & Exhibit, talk F.FL01.06/SM05.05.04, Nov. 27, 2020 ( abstract) bib

Abstract: One of the neuromorphic engineering aims is using nanoelectronics' materials and devices to reproduce key features that are used by the brain for computing. Currently, neuromorphic engineering has explored standard silicon-based technologies (i.e. such a s complementary metal-oxide-semiconductor ) or more emerging material and devices (iono-electronic materials and resistive memory devices, for example). Most of these technologies are still bounded to a top down approach. However, brain computing largely rely on bottom-up processes. For instance, interconnectivity between cells and formation of communication pathway in neural networks result principaly from bottom-up organization. Here, we show how dendritic growth of organic conductive polymers (PEDOT) can be used to mimic structural branching observed in neural network. Conducting-polymer based dendritic structures with different morphology are synthesized in a two-electrode setup by pulsed voltage-driven electropolymerization derived from state-of-t he-art bipolar AC-electrochemical synthetic methods. We show how various AC signals can lead to a large variety of dendritic structures and PEDOT morphologies. In a second part, such dendritic structures are used to implement functionnal OECTs. More impo rtantly, we focus on the transconductance and memory effects that can be obtained in such dendritic OECTs such as short tem plasticity. We report on the relationship between dendrites morphologies and STP time constant. This work paves the way to new app roaches for neuromorphic engineering, such as structural plasticity and neural network topology exploration.

Janzakova K., Ghazal M., Kumar A., Coffinier Y., Guérin D., Pecqueur S., Alibart F.

[O11] Low-Impedance Electropolymerized Coatings on Microelectrodes for Higher Neuro-Transduction | 2020 Virtual MRS Fall Meeting & Exhibit, talk F.FL01.04.03, Nov. 27, 2020 ( abstract) bib

Abstract: Microelectrode arrays (MEAs) are widely used tools for investigating neural activity. To ensure the best sensitivity of the electronic devices to ionic signals and the lowest information loss, their electrochemical interface must be optimized by lowering their surface impedance, with materials that ensure the highest compatibility with the cells at the same time. Here, we show that by the electropolymerization of thiophene-derivatives, functionalized for higher cell biocompatibility and higher electroch emical performances, one can lower the microelectrodes' surface impedance by the control of the polymer morphology. The microelectrode structuring with bottom-up grown conducting polymers was monitored in-situ by voltage-ramped impedance spectroscopy upo n electropolymerization to track its circuit-elements modification. Iterative impedance modeling over the growth confirmed the material's electrochemical dynamic to be controlled by the gradual modifications of specific discrete circuit elements at diffe rent frequency ranges, thanks to the surface electrodes microstructuring. More particularly, we systematically evidenced a monotonic change of the electrode charging from ideal capacitor to constant phase element dominated modes, due to the bulk charging of the conducting polymer. The evolution of the materials morphology screened by atomic force microscopy and electron microscopy has been confronted to the modification of the materials circuit element, and confirmed distinctive charging modes for the e lectrodes that are governed by their different texturing. In addition to the surface morphology, chemical tuning of the electrodeposited polymer has been performed and showed that a fine tuning of the polymer's glycolation promotes the decrease of the el ectrodes' electrochemical impedance down to -15% compared to the unglycolated polymers thanks to a right balance between ionic permeability and electronic performances. Overall, lower impedance values than commercial MEAs have been systematically reached with performances comparable to spin-coated polymer electrodes', and with low performance dispersion over the whole population of electrodes in the MEAs. With the presented preliminary biocompatibility and stability tests, this study aims is to demonstr ate that unusual microfabrication techniques derived from electrochemistry can provide unique features at the material level to match properties of future emerging bioelectronics technologies to the strong requirements of sensing involving biological mat erials with rich material chemistry and morphology. This work paves the way to new approaches for neuromorphic engineering, such as structural plasticity and neural network topology exploration.

Susloparova A., Ghazal M., Guérin D., Halliez S., Coffinier Y., Dargent T., Alibart F., Pecqueur S.

[O10] Post-Fabrication Optimization Technique of Organic Electrochemical Transistor (OECT) for Electrophysiology by Electropolymerization | 2020 Virtual MRS Fall Meeting & Exhibit, talk F.FL01.05.03, Nov. 27, 2020 ( abstract) bib

Abstract: The recent progress in the extracellular microelectrode arrays (MEAs) have greatly improved our ability to probe cellular electrophysiological activities. Nevertheless, passive MEAs are subject to small signal-to-noise ratio and small potential detection . Recently, organic electrochemical transistors (OECTs) have been identified as a promising device architecture to improve extracellular potentials recording in electroactive cells culture both in-vitro and in-vivo. In addition to unique properties of in terest for electrophysiology such as biocompatibility, transparency and flexibility, OECTs operating principle is based on the transduction of ionic currents in the biological medium into electronic currents in the organic semiconductor (e.g. PEDOT:PSS) via electrochemical coupling. The transconductance represents an important figure of merit of OECTs and depends on geometrical and material parameters that rules largely OECTs performances for sensing electrophysiological signals. However, as an organic electronic technology, larger device-property distributions are often encountered with respect to the one of metal- or inorganic-based technologies, inherent to the very nature of the soft organic materials involved in the OECTs transduction process. Her e, we explore the possibility to tune post-fabrication material and geometrical parameters of OECTs with electropolymerization of EDOT. We show that this strategy can be used to simultaneously improve OECT transconductance and its geometrical capacitance . The addressed OECT chips were micro-fabricated on a glass substrates with spin coated PEDOT:PSS. Electropolymerization of EDOT on top of spin-coated PEDOT:PSS was carried on with both fix voltage and ramp voltage techniques. A detail impedance analysis was performed during OECTs functionalization. DC electrical characterizations was used to correlate the transconductance and capacitance tuning due to electropolymerization and to assess device performances improvements. Scanning Electron Microscopy (SE M) was used to correlate morphological changes due to electropolymerization with the enhancement in the transconductance and capacitance of the OECTs. Finally, we performed bio-compatibility assessment between primary neural cells culture and the differe nt possible monomers used for electropolymerization to evaluate the possibility to improve affinity between cultured neurons and electropolymerized materials. The key novelty of this material engineering technique is to propose a promising method for tun able OECTs sensors development. For instance, this back-end-of-line tuning technique can reduce chip variability in terms of performance yield and bring OECTs technology to the next maturity level. Furthermore, such flexibility can enable matching the el ectrochemical impedance of the device to the one of the cells, and in the future promote exploratory sensing missions, merging brain-inspired information processing with neuro-sensing.},

Ghazal M., Susloparova A., Halliez S., Colin M., Buée L., Coffinier Y., Pecqueur S., Dargent T., Alibart F.

[P4] Addressing Organic Electrochemical Transistors for Neurosensing and Neuromorphic Sensing | 2019 IEEE 18th IEEE Conference on Sensors (IEEE-Sensors 2019), Montreal/Canada - Oct. 27, 2019 ( proceeding) bib hal

Abstract: We report on the comparison between two different driving circuits for addressing micro-fabricated organic electrochemical transistors of different channel resistances and transconductance, aiming for neuromorphic sensing. The Wheatstone bridge configura tion shows interesting results by offering more versatility towards higher resistance materials. However, the Current-Voltage converter observed faster transients. Both circuits show different assets very encouraging for further practical application.

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Ghazal M., Dargent T., Pecqueur S., Alibart F.

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