32 research outputs found

    On the Spectrum of a Class of Distance-transitive Graphs

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    Let Γ=Cay(Zn,Sk)\Gamma=Cay(\mathbb{Z}_n, S_k) be the Cayley graph on the cyclic additive group Zn\mathbb{Z}_n (n4),(n\geq 4), where S1={1,n1}S_1=\{1, n-1\}, \dots , Sk=Sk1{k,nk}S_k=S_ {k-1}\cup\{k, n-k\} are the inverse-closed subsets of Zn{0}\mathbb{Z}_n-\{0\} for any kNk\in \mathbb{N}, 1k[n2]11\leq k\leq [\frac{n}{2}]-1. In this paper, we will show that χ(Γ)=ω(Γ)=k+1\chi(\Gamma) = \omega(\Gamma)=k+1 if and only if k+1nk+1|n. Also, we will show that if nn is an even integer and k=n21k=\frac{n}{2}-1 then Aut(Γ)Z2wrISym(k+1)Aut(\Gamma)\cong\mathbb{Z}_2 wr_{I} {Sym}(k+1) where I={1,,k+1}I=\{1, \dots , k+1\} and in this case, we show that Γ\Gamma is an integral graph

    Automated external cardioversion defibrillation monitoring in cardiac arrest: a randomized trial

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    <p>Abstract</p> <p>Background</p> <p>In-hospital cardiac arrest has a poor prognosis despite active electrocardiography monitoring. The initial rhythm of approximately 25% of in-hospital cardiopulmonary resuscitation (CPR) events is pulseless ventricular tachycardia/ventricular fibrillation (VT/VF). Early defibrillation is an independent predictor of survival in CPR events caused by VT/VF. The automated external cardioverter defibrillator (AECD) is a device attached by pads to the chest wall that monitors, detects, and within seconds, automatically delivers electric countershock to an appropriate tachyarrhythmia.</p> <p>Study Objectives</p> <p>• To evaluate safety of AECD monitoring in hospitalized patients.</p> <p>• To evaluate whether AECDs provide earlier defibrillation than hospital code teams.</p> <p>Methods</p> <p>The study is a prospective trial randomizing patients admitted to the telemetry ward to standard CPR (code team) or standard CPR plus AECD monitoring (PowerHeart CRM). The AECD is programmed to deliver one 150 J biphasic shock to patients in sustained VT/VF. Data is collected using the Utstein criteria for cardiac arrest. The primary endpoint is time-to-defibrillation; secondary outcomes include neurological status and survival to discharge, with 3-year follow-up.</p> <p>Results</p> <p>To date, 192 patients have been recruited in the time period between 10/10/2006 to 7/20/2007. A total of 3,655 hours of telemetry data have been analyzed in the AECD arm. The AECD has monitored ambulatory telemetry patients in sinus rhythm, sinus tachycardia, supraventricular tachycardia, atrial flutter or fibrillation, with premature ventricular complexes and non-sustained VT without delivery of inappropriate shocks. One patient experienced sustained VT during AECD monitoring, who was successfully defibrillated (17 seconds after meeting programmed criteria). There are no events to report in the control arm. The patient survived the event without neurological complications. During the same time period, mean time to shock for VT/VF cardiac arrest occurring outside the telemetry ward was 230 ± 50 seconds.</p> <p>Conclusion</p> <p>AECD monitoring is safe and likely results in earlier defibrillation than standard telemetry monitoring.</p> <p>Trial Registration</p> <p>National Institutes of Health registration ID: NCT00382928</p

    Neural-based Compression Scheme for Solar Image Data

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    Studying the solar system and especially the Sun relies on the data gathered daily from space missions. These missions are data-intensive and compressing this data to make them efficiently transferable to the ground station is a twofold decision to make. Stronger compression methods, by distorting the data, can increase data throughput at the cost of accuracy which could affect scientific analysis of the data. On the other hand, preserving subtle details in the compressed data requires a high amount of data to be transferred, reducing the desired gains from compression. In this work, we propose a neural network-based lossy compression method to be used in NASA's data-intensive imagery missions. We chose NASA's SDO mission which transmits 1.4 terabytes of data each day as a proof of concept for the proposed algorithm. In this work, we propose an adversarially trained neural network, equipped with local and non-local attention modules to capture both the local and global structure of the image resulting in a better trade-off in rate-distortion (RD) compared to conventional hand-engineered codecs. The RD variational autoencoder used in this work is jointly trained with a channel-dependent entropy model as a shared prior between the analysis and synthesis transforms to make the entropy coding of the latent code more effective. Our neural image compression algorithm outperforms currently-in-use and state-of-the-art codecs such as JPEG and JPEG-2000 in terms of the RD performance when compressing extreme-ultraviolet (EUV) data. As a proof of concept for use of this algorithm in SDO data analysis, we have performed coronal hole (CH) detection using our compressed images, and generated consistent segmentations, even at a compression rate of 0.1\sim0.1 bits per pixel (compared to 8 bits per pixel on the original data) using EUV data from SDO.Comment: Accepted for publication in IEEE Transactions on Aerospace and Electronic Systems (TAES). arXiv admin note: text overlap with arXiv:2210.0647
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