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1.
J Phys Chem C Nanomater Interfaces ; 123(29): 17976-17986, 2019 Jul 25.
Article in English | MEDLINE | ID: mdl-32489514

ABSTRACT

Porous silicon photoluminescence is characterized by a broad emission band that displays unusually long (tens to hundreds of micro-seconds), wavelength-dependent emissive lifetimes. The photoluminescence is associated with quantum confinement of excitons in silicon nanocrystallites contained within the porous matrix, and the broad emission spectrum derives from the wide distribution of nanocrystallite sizes in the material. The longer emissive lifetimes in the ensemble of quantum-confined emitters correspond to the larger nanocrystallites, with their longer wavelengths of emission. The quenching of this photoluminescence by aromatic, redox-active molecules aminochrome (AMC), dopamine, adrenochrome, sodium anthraquinone-2-sulfonate, benzyl viologen dichloride, methyl viologen dichloride hydrate, and ethyl viologen dibromide is studied, and dynamic and static quenching mechanisms are distinguished by the emission lifetime analysis. Because of the dependence of the emission lifetime on emission wavelength from the silicon nanocrystallite ensemble, a pronounced blue shift is observed in the steady-state emission spectrum upon exposure to dynamic-type quenchers. Conversely, static-type quenching systems show uniform quenching across all emission wavelengths. Thus, the difference between static and dynamic quenching mechanisms is readily distinguished by ratiometric photoluminescence spectroscopy. The application of this concept to imaging of AMC, the oxidized form of the neurotransmitter dopamine that is of interest for its role in neurodegenerative diseases, is demonstrated. It is found that static electron acceptors result in no ratiometric contrast, while AMC shows a strong contrast, allowing ready visualization in a 2-D imaging experiment.

2.
Assist Technol ; 29(1): 28-36, 2017.
Article in English | MEDLINE | ID: mdl-27187665

ABSTRACT

To lay the groundwork for devising, improving, and implementing new technologies to meet the needs of individuals with visual impairments, a systematic literature review was conducted to: a) describe hardware platforms used in assistive devices, b) identify their various applications, and c) summarize practices in user testing conducted with these devices. A search in relevant EBSCO databases for articles published between 1980 and 2014 with terminology related to visual impairment, technology, and tactile sensory adaptation yielded 62 articles that met the inclusion criteria for final review. It was found that while earlier hardware development focused on pin matrices, the emphasis then shifted toward force feedback haptics and accessible touch screens. The inclusion of interactive and multimodal features has become increasingly prevalent. The quantity and consistency of research on navigation, education, and computer accessibility suggest that these are pertinent areas of need for the visually impaired community. Methodologies for usability testing ranged from case studies to larger cross-sectional studies. Many studies used blindfolded sighted users to draw conclusions about design principles and usability. Altogether, the findings presented in this review provide insight on effective design strategies and user testing methodologies for future research on assistive technology for individuals with visual impairments.


Subject(s)
Self-Help Devices , Software , Visually Impaired Persons/rehabilitation , Equipment Design , Humans
3.
J Am Soc Cytopathol ; 4(1): 10-15, 2015.
Article in English | MEDLINE | ID: mdl-31051667

ABSTRACT

INTRODUCTION: One of the major aims of the Next Accreditation System is to move toward an outcomes-based evaluation system where each accredited medical residency program must demonstrate that its residents are competent in performing the essential tasks necessary for clinical practice. Because all pathologists who sign-out or screen Papanicolaou (Pap) tests are required to pass an annual 10-slide gynecologic cytology proficiency test (PT), we developed mock PT modules as a tool for assessing competency. MATERIALS AND METHODS: In 2007, we introduced mock proficiency testing with 3 distinct modules, each consisting of 3 10-slide test sets (10 ThinPrep, 10 SurePath, and 10 conventional Pap slides). Each module was administered at 3 different time points. We evaluated the following parameters: (1) performance differences between Pap preparations; (2) performance over time; (3) performance before and after initiation of one-on-one teaching sessions with cytotechnologists in 2009; and (4) quality of test slides. RESULTS: Residents showed improvement over time, and overall scores did not differ significantly among ThinPrep, SurePath, and conventional slide sets. The average score for the first test set was significantly higher for residents who received formal training by a cytotechnologist than for those who did not. Overall, 16 of 90 slides were misclassified by 40% or more of residents, half of which exhibited glandular abnormalities. CONCLUSIONS: The objective assessment provided by mock PT is a useful tool for both faculty and residents.

4.
Biol Cybern ; 106(3): 155-67, 2012 Mar.
Article in English | MEDLINE | ID: mdl-22526358

ABSTRACT

Hodgkin-Huxley (HH) models of neuronal membrane dynamics consist of a set of nonlinear differential equations that describe the time-varying conductance of various ion channels. Using observations of voltage alone we show how to estimate the unknown parameters and unobserved state variables of an HH model in the expected circumstance that the measurements are noisy, the model has errors, and the state of the neuron is not known when observations commence. The joint probability distribution of the observed membrane voltage and the unobserved state variables and parameters of these models is a path integral through the model state space. The solution to this integral allows estimation of the parameters and thus a characterization of many biological properties of interest, including channel complement and density, that give rise to a neuron's electrophysiological behavior. This paper describes a method for directly evaluating the path integral using a Monte Carlo numerical approach. This provides estimates not only of the expected values of model parameters but also of their posterior uncertainty. Using test data simulated from neuronal models comprising several common channels, we show that short (<50 ms) intracellular recordings from neurons stimulated with a complex time-varying current yield accurate and precise estimates of the model parameters as well as accurate predictions of the future behavior of the neuron. We also show that this method is robust to errors in model specification, supporting model development for biological preparations in which the channel expression and other biophysical properties of the neurons are not fully known.


Subject(s)
Monte Carlo Method , Neurons/physiology
5.
Neural Comput ; 24(7): 1669-94, 2012 Jul.
Article in English | MEDLINE | ID: mdl-22428591

ABSTRACT

Neuroscientists often propose detailed computational models to probe the properties of the neural systems they study. With the advent of neuromorphic engineering, there is an increasing number of hardware electronic analogs of biological neural systems being proposed as well. However, for both biological and hardware systems, it is often difficult to estimate the parameters of the model so that they are meaningful to the experimental system under study, especially when these models involve a large number of states and parameters that cannot be simultaneously measured. We have developed a procedure to solve this problem in the context of interacting neural populations using a recently developed dynamic state and parameter estimation (DSPE) technique. This technique uses synchronization as a tool for dynamically coupling experimentally measured data to its corresponding model to determine its parameters and internal state variables. Typically experimental data are obtained from the biological neural system and the model is simulated in software; here we show that this technique is also efficient in validating proposed network models for neuromorphic spike-based very large-scale integration (VLSI) chips and that it is able to systematically extract network parameters such as synaptic weights, time constants, and other variables that are not accessible by direct observation. Our results suggest that this method can become a very useful tool for model-based identification and configuration of neuromorphic multichip VLSI systems.


Subject(s)
Computer Simulation , Models, Neurological , Neural Networks, Computer , Neurons/physiology , Animals , Humans
6.
Biol Cybern ; 105(3-4): 217-37, 2011 Oct.
Article in English | MEDLINE | ID: mdl-21986979

ABSTRACT

We present a method for using measurements of membrane voltage in individual neurons to estimate the parameters and states of the voltage-gated ion channels underlying the dynamics of the neuron's behavior. Short injections of a complex time-varying current provide sufficient data to determine the reversal potentials, maximal conductances, and kinetic parameters of a diverse range of channels, representing tens of unknown parameters and many gating variables in a model of the neuron's behavior. These estimates are used to predict the response of the model at times beyond the observation window. This method of [Formula: see text] extends to the general problem of determining model parameters and unobserved state variables from a sparse set of observations, and may be applicable to networks of neurons. We describe an exact formulation of the tasks in nonlinear data assimilation when one has noisy data, errors in the models, and incomplete information about the state of the system when observations commence. This is a high dimensional integral along the path of the model state through the observation window. In this article, a stationary path approximation to this integral, using a variational method, is described and tested employing data generated using neuronal models comprising several common channels with Hodgkin-Huxley dynamics. These numerical experiments reveal a number of practical considerations in designing stimulus currents and in determining model consistency. The tools explored here are computationally efficient and have paths to parallelization that should allow large individual neuron and network problems to be addressed.


Subject(s)
Algorithms , Ion Channels/physiology , Models, Neurological , Models, Theoretical , Neurons/physiology , Membrane Potentials/physiology
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