315 research outputs found

    Review and classification of variability analysis techniques with clinical applications

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    Analysis of patterns of variation of time-series, termed variability analysis, represents a rapidly evolving discipline with increasing applications in different fields of science. In medicine and in particular critical care, efforts have focussed on evaluating the clinical utility of variability. However, the growth and complexity of techniques applicable to this field have made interpretation and understanding of variability more challenging. Our objective is to provide an updated review of variability analysis techniques suitable for clinical applications. We review more than 70 variability techniques, providing for each technique a brief description of the underlying theory and assumptions, together with a summary of clinical applications. We propose a revised classification for the domains of variability techniques, which include statistical, geometric, energetic, informational, and invariant. We discuss the process of calculation, often necessitating a mathematical transform of the time-series. Our aims are to summarize a broad literature, promote a shared vocabulary that would improve the exchange of ideas, and the analyses of the results between different studies. We conclude with challenges for the evolving science of variability analysis

    Ultra low power wearable sleep diagnostic systems

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    Sleep disorders are studied using sleep study systems called Polysomnography that records several biophysical parameters during sleep. However, these are bulky and are typically located in a medical facility where patient monitoring is costly and quite inefficient. Home-based portable systems solve these problems to an extent but they record only a minimal number of channels due to limited battery life. To surmount this, wearable sleep system are desired which need to be unobtrusive and have long battery life. In this thesis, a novel sleep system architecture is presented that enables the design of an ultra low power sleep diagnostic system. This architecture is capable of extending the recording time to 120 hours in a wearable system which is an order of magnitude improvement over commercial wearable systems that record for about 12 hours. This architecture has in effect reduced the average power consumption of 5-6 mW per channel to less than 500 uW per channel. This has been achieved by eliminating sampled data architecture, reducing the wireless transmission rate and by moving the sleep scoring to the sensors. Further, ultra low power instrumentation amplifiers have been designed to operate in weak inversion region to support this architecture. A 40 dB chopper-stabilised low power instrumentation amplifiers to process EEG were designed and tested to operate from 1.0 V consuming just 3.1 uW for peak mode operation with DC servo loop. A 50 dB non-EEG amplifier continuous-time bandpass amplifier with a consumption of 400 nW was also fabricated and tested. Both the amplifiers achieved a high CMRR and impedance that are critical for wearable systems. Combining these amplifiers with the novel architecture enables the design of an ultra low power sleep recording system. This reduces the size of the battery required and hence enables a truly wearable system.Open Acces

    Recent Advances in Neural Recording Microsystems

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    The accelerating pace of research in neuroscience has created a considerable demand for neural interfacing microsystems capable of monitoring the activity of large groups of neurons. These emerging tools have revealed a tremendous potential for the advancement of knowledge in brain research and for the development of useful clinical applications. They can extract the relevant control signals directly from the brain enabling individuals with severe disabilities to communicate their intentions to other devices, like computers or various prostheses. Such microsystems are self-contained devices composed of a neural probe attached with an integrated circuit for extracting neural signals from multiple channels, and transferring the data outside the body. The greatest challenge facing development of such emerging devices into viable clinical systems involves addressing their small form factor and low-power consumption constraints, while providing superior resolution. In this paper, we survey the recent progress in the design and the implementation of multi-channel neural recording Microsystems, with particular emphasis on the design of recording and telemetry electronics. An overview of the numerous neural signal modalities is given and the existing microsystem topologies are covered. We present energy-efficient sensory circuits to retrieve weak signals from neural probes and we compare them. We cover data management and smart power scheduling approaches, and we review advances in low-power telemetry. Finally, we conclude by summarizing the remaining challenges and by highlighting the emerging trends in the field

    Local and Widespread Slow Waves in Stable NREM Sleep: Evidence for Distinct Regulation Mechanisms.

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    Previous work showed that two types of slow waves are temporally dissociated during the transition to sleep: widespread, large and steep slow waves predominate early in the falling asleep period ( <i>type I</i> ), while smaller, more circumscribed slow waves become more prevalent later ( <i>type II</i> ). Here, we studied the possible occurrence of these two types of slow waves in stable non-REM (NREM) sleep and explored potential differences in their regulation. A heuristic approach based on slow wave synchronization efficiency was developed and applied to high-density electroencephalographic (EEG) recordings collected during consolidated NREM sleep to identify the potential <i>type I</i> and <i>type II</i> slow waves. Slow waves with characteristics compatible with those previously described for <i>type I</i> and <i>type II</i> were identified in stable NREM sleep. Importantly, these slow waves underwent opposite changes across the night, with only <i>type II</i> slow waves displaying a clear homeostatic regulation. In addition, we showed that the occurrence of <i>type I</i> slow waves was often followed by larger <i>type II slow waves</i> , whereas the occurrence of <i>type II</i> slow waves was usually followed by smaller <i>type I</i> waves. Finally, <i>type II</i> slow waves were associated with a relative increase in spindle activity, while <i>type I</i> slow waves triggered periods of high-frequency activity. Our results provide evidence for the existence of two distinct slow wave synchronization processes that underlie two different types of slow waves. These slow waves may have different functional roles and mark partially distinct "micro-states" of the sleeping brain

    New approaches to the study of periodic leg movements during sleep in restless legs syndrome

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    Study Objectives: To describe a new approach for the analysis of quantity, type, and periodicity of the leg motor activity during sleep in patients with restless legs syndrome (RLS) and periodic leg movements (PLM). Methods: The following parameters were taken into account for LM: duration, amplitude, area under the curve, sleep stage, side, interval, and bilaterality. The analysis of inter-LM intervals was carried out by drawing their distribution graphs. A new index evaluated their periodicity and was validated by means of a Markovian analysis. The differences in inter-LM intervals, LM duration, and area under the curve between normal controls and patients and between the 3 patient subgroups identified on the basis of their periodicity were statistically analyzed. Setting: N/A Participants: Sixty-five patients with RLS and periodic LM and 22 young healthy controls. Measurements and Results: The RLS patients' inter-LM interval distribution graph showed a wide peak with a maximum located at around 15 to 30 seconds and extending from 10 to 90 seconds, not present in controls, and another peak for intervals less than 8 seconds, higher than that of controls. Three patient subgroups were identified with different proportions of these 2 peaks, periodicity, and Markovian parameters. Periodicity was not dependent on the periodic leg movement index. Patients showing the peak mainly at around 15 to 30 seconds tended to show slightly longer and higher area under the curve LM than did the other 2 subgroups. Conclusions: Our new approach seems to be useful in a new qualitative differentiation among patients with PLM, which is not possible by using the simple PLM index

    Implantable Micro-Device for Epilepsy Seizure Detection and Subsequent Treatment

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    RÉSUMÉ L’émergence des micro-dispositifs implantables est une voie prometteuse pour le traitement de troubles neurologiques. Ces systĂšmes biomĂ©dicaux ont Ă©tĂ© exploitĂ©s comme traitements non-conventionnels sur des patients chez qui les remĂšdes habituels sont inefficaces. Les rĂ©cents progrĂšs qui ont Ă©tĂ© faits sur les interfaces neuronales directes ont permis aux chercheurs d’analyser l’activitĂ© EEG intracĂ©rĂ©brale (icEEG) en temps rĂ©el pour des fins de traitements. Cette thĂšse prĂ©sente un dispositif implantable Ă  base de microsystĂšmes pouvant capter efficacement des signaux neuronaux, dĂ©tecter des crises d’épilepsie et y apporter un traitement afin de l’arrĂȘter. Les contributions principales prĂ©sentĂ©es ici ont Ă©tĂ© rapportĂ©es dans cinq articles scientifiques, publiĂ©s ou acceptĂ©s pour publication dans les revues IEEE, et plusieurs autres tels que «Low Power Electronics» et «Emerging Technologies in Computing». Le microsystĂšme proposĂ© inclus un circuit intĂ©grĂ© (CI) Ă  faible consommation Ă©nergĂ©tique permettant la dĂ©tection de crises d’épilepsie en temps rĂ©el. Cet CI comporte une prĂ©-amplification initiale et un dĂ©tecteur de crises d’épilepsie. Le prĂ©-amplificateur est constituĂ© d’une nouvelle topologie de stabilisateur d’hacheur rĂ©duisant le bruit et la puissance dissipĂ©e. Les CI fabriquĂ©s ont Ă©tĂ© testĂ©s sur des enregistrements d’icEEG provenant de sept patients Ă©pileptiques rĂ©fractaires au traitement antiĂ©pileptique. Le dĂ©lai moyen de la dĂ©tection d’une crise est de 13,5 secondes, soit avant le dĂ©but des manifestations cliniques Ă©videntes. La consommation totale d’énergie mesurĂ©e de cette puce est de 51 ÎŒW. Un neurostimulateur Ă  boucle fermĂ©e (NSBF), quant Ă  lui, dĂ©tecte automatiquement les crises en se basant sur les signaux icEEG captĂ©s par des Ă©lectrodes intracrĂąniennes et permet une rĂ©troaction par une stimulation Ă©lectrique au mĂȘme endroit afin d’interrompre ces crises. La puce de dĂ©tection de crises et le stimulateur Ă©lectrique Ă  base sur FPGA ont Ă©tĂ© assemblĂ©s Ă  des Ă©lectrodes afin de complĂ©ter la prothĂšse proposĂ©e. Ce NSBF a Ă©tĂ© validĂ© en utilisant des enregistrements d’icEEG de dix patients souffrant d’épilepsie rĂ©fractaire. Les rĂ©sultats rĂ©vĂšlent une performance excellente pour la dĂ©tection prĂ©coce de crises et pour l’auto-dĂ©clenchement subsĂ©quent d’une stimulation Ă©lectrique. La consommation Ă©nergĂ©tique totale du NSBF est de 16 mW. Une autre alternative Ă  la stimulation Ă©lectrique est l’injection locale de mĂ©dicaments, un traitement prometteur de l’épilepsie. Un systĂšme local de livraison de mĂ©dicament basĂ© sur un nouveau dĂ©tecteur asynchrone des crises est prĂ©sentĂ©.----------ABSTRACT Emerging implantable microdevices hold great promise for the treatment of patients with neurological conditions. These biomedical systems have been exploited as unconventional treatment for the conventionally untreatable patients. Recent progress in brain-machine-interface activities has led the researchers to analyze the intracerebral EEG (icEEG) recording in real-time and deliver subsequent treatments. We present in this thesis a long-term safe and reliable low-power microsystem-based implantable device to perform efficient neural signal recording, seizure detection and subsequent treatment for epilepsy. The main contributions presented in this thesis are reported in five journal manuscripts, published or accepted for publication in IEEE Journals, and many others such as Low Power Electronics, and Emerging Technologies in Computing. The proposed microsystem includes a low-power integrated circuit (IC) intended for real-time epileptic seizure detection. This IC integrates a front-end preamplifier and epileptic seizure detector. The preamplifier is based on a new chopper stabilizer topology that reduces noise and power dissipation. The fabricated IC was tested using icEEG recordings from seven patients with drug-resistant epilepsy. The average seizure detection delay was 13.5 sec, well before the onset of clinical manifestations. The measured total power consumption of this chip is 51 ”W. A closed-loop neurostimulator (CLNS) is next introduced, which is dedicated to automatically detect seizure based on icEEG recordings from intracranial electrode contacts and provide an electrical stimulation feedback to the same contacts in order to disrupt these seizures. The seizure detector chip and a dedicated FPGA-based electrical stimulator were assembled together with common recording electrodes to complete the proposed prosthesis. This CLNS was validated offline using recording from ten patients with refractory epilepsy, and showed excellent performance for early detection of seizures and subsequent self-triggering electrical stimulation. Total power consumption of the CLNS is 16 mW. Alternatively, focal drug injection is the promising treatment for epilepsy. A responsive focal drug delivery system based on a new asynchronous seizure detector is also presented. The later system with data-dependent computation reduces up to 49% power consumption compared to the previous synchronous neurostimulator
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