249 research outputs found
Effects of different remifentanil doses on the stress reaction and BIS value of video laryngoscope-guided tracheal intubation
Purpose: To explore the affinity of different remifentanil doses for intravenous anesthesia in video laryngoscope-guided tracheal intubation.Methods: Eighty patients who required anesthesia for elective non-ophthalmic surgery were included. They were divided into four groups (A, B, C and D) and received a different dose of either 1, 1.5, or 2 μg/kg remifentanil or a dose of 2 μg/kg fentanyl, respectively. An anesthetic state was achieved and maintained by administration of 3 - 5 mg/kg propofolum and 0.1 - 0.3 mg/kg remifentanil. The mean value of the various indices, including arterial pressure (MAP), bispectral index and heart rate (HR) wererecorded prior to anesthesia induction (T0), prior to intubation (T1), instantly before intubation (T2), and at 1 (T3), 3 (T4) and 5 (T5) after the intubation. Cortisol concentration was measured at T0, T1 and T5.Results: Remifentanil (1 μg/kg) induced a moderate increase in HR and MAP at T3 compared with fentanyl. HR and MAP in the lower dose group were significantly higher than those in groups B and C at T3. Compared to T1, the concentrations of cortisol decreased after anesthesia and then significantly increased during tracheal intubation. Cortisol concentration in group B was the lowest at T5.Conclusion: The most effective concentrations of remifentanil are 1 and 1.5 μg/kg for anesthesia induction and tracheal intubation, respectively.Keywords: Remifentanil, Stress reaction, Bispectral index, Video laryngoscope, Tracheal intubatio
Multidimensional Uncertainty-Aware Evidential Neural Networks
Traditional deep neural networks (NNs) have significantly contributed to the
state-of-the-art performance in the task of classification under various
application domains. However, NNs have not considered inherent uncertainty in
data associated with the class probabilities where misclassification under
uncertainty may easily introduce high risk in decision making in real-world
contexts (e.g., misclassification of objects in roads leads to serious
accidents). Unlike Bayesian NN that indirectly infer uncertainty through weight
uncertainties, evidential NNs (ENNs) have been recently proposed to explicitly
model the uncertainty of class probabilities and use them for classification
tasks. An ENN offers the formulation of the predictions of NNs as subjective
opinions and learns the function by collecting an amount of evidence that can
form the subjective opinions by a deterministic NN from data. However, the ENN
is trained as a black box without explicitly considering inherent uncertainty
in data with their different root causes, such as vacuity (i.e., uncertainty
due to a lack of evidence) or dissonance (i.e., uncertainty due to conflicting
evidence). By considering the multidimensional uncertainty, we proposed a novel
uncertainty-aware evidential NN called WGAN-ENN (WENN) for solving an
out-of-distribution (OOD) detection problem. We took a hybrid approach that
combines Wasserstein Generative Adversarial Network (WGAN) with ENNs to jointly
train a model with prior knowledge of a certain class, which has high vacuity
for OOD samples. Via extensive empirical experiments based on both synthetic
and real-world datasets, we demonstrated that the estimation of uncertainty by
WENN can significantly help distinguish OOD samples from boundary samples. WENN
outperformed in OOD detection when compared with other competitive
counterparts.Comment: AAAI 202
Recent advances in theory and technology of oil and gas geophysics
Oil and gas are important energy resources and industry materials. They are stored in pores and fractures of subsurface rocks over thousands of meters in depth, making the finding and distinguishing them to be a significant challenge. The geophysical methods, especially the seismic and well-logging methods, are the effective ways to identify the oil and gas reservoirs and are widely used in industry. Due to the complexity of near surface and subsurface structures of new exploration targets, the geophysical methods based on advanced computation methods and physical principles are continuously proposed to cope with the emerging challenges. Thus, some new advances in theory and technology of oil and gas geophysics are summarized in this editorial material, especially focusing on the geophysical data processing, numerical simulation technology, rock physics modeling, and reservoir characterization.Document Type: EditorialCited as: Wang, Y., Liu, Y., Zou, Z., Bao, Q., Zhang, F., Zong, Z. Recent advances in theory and technology of oil and gas geophysics. Advances in Geo-Energy Research, 2023, 9(1): 1-4. https://doi.org/10.46690/ager.2023.07.0
A novel prestack sparse azimuthal AVO inversion
In this paper we demonstrate a new algorithm for sparse prestack azimuthal
AVO inversion. A novel Euclidean prior model is developed to at once respect
sparseness in the layered earth and smoothness in the model of reflectivity.
Recognizing that methods of artificial intelligence and Bayesian computation
are finding an every increasing role in augmenting the process of
interpretation and analysis of geophysical data, we derive a generalized
matrix-variate model of reflectivity in terms of orthogonal basis functions,
subject to sparse constraints. This supports a direct application of machine
learning methods, in a way that can be mapped back onto the physical principles
known to govern reflection seismology. As a demonstration we present an
application of these methods to the Marcellus shale. Attributes extracted using
the azimuthal inversion are clustered using an unsupervised learning algorithm.
Interpretation of the clusters is performed in the context of the Ruger model
of azimuthal AVO
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