- Surender K. Gupta
- Santosh Tharwani
- D. K. Singh
- Kalpana Agrawal
- K. K. Tripathi
- Dinesh K. Singh
- Ghanshyam Yadav
- S. K. Singh
- Asfa Siddiqui
- Smruti Naik
- B. P. Rathore
- Vaibhav Garg
- Snehmani
- Vinay Kumar
- I. M. Bahuguna
- S. A. Sharma
- Chander Shekhar
- Praveen K. Thakur
- Kavach Mishra
- Pramod Kumar
- T. H. Painter
- J. Dozier
A B C D E F G H I J K L M N O P Q R S T U V W X Y Z All
Jain, Gaurav
- Rare Case of Hyperthermia in Aluminum Phosphide Poisoning
Authors
1 Department of Anesthesia and Intensive Care, IMS, Banaras Hindu University, Varanasi, UP, IN
Source
Indian Journal of Forensic Medicine & Toxicology, Vol 4, No 1 (2010), Pagination: 26-27Abstract
No AbstractReferences
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- Jain SM, Bharani A, Sepha GC. Electrocardiographic changes in aluminium phosphide poisoning. The Journal of the Association of Physicians of India 1985; 33: 406-09.
- Chugh SN. Aluminium phosphide poisoning: present status and management. J. Assoc. Physc. India 1992; 40:401-405.
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- Hassanian MH, Pajoumand A. Two years epidemiological survey of Aluminium Phosphide poisoning in Tehran. Iranian Journal of Toxicology 2007; 1(1):35-39.
- Rosenbaum HK, Miller JD. Malignant hyperthermia and myotonic disorders. Anesthesiol Clin N Am. 2002; 20: 385– 426.
- Bajaj R, Wasir HS, Aggarwal R. Aluminium phosphide poisoning clinical toxicity and outcome in eleven intensively monitored patients. Nat Med. J India 1:270-74.
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- Endosulfan Poisoning Precipitating as Nephrogenic Diabetes Insipidus: A Case Report
Authors
1 Department of Anesthesia and Intensive care, IMS, Banaras Hindu University, Varanasi, UP, IN
Source
Indian Journal of Forensic Medicine & Toxicology, Vol 5, No 1 (2011), Pagination: 32-33Abstract
No abstractKeywords
No keywordsReferences
- Rosenbaum HK, Miller JD. Malignant hyperthermia and myotonic disorders. Anesthesiol Clin N Am. 2002; 20: 385– 426.
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- Reducing Leakage Current and Improving SRAM Cell Stability using Independent-Gate Finfet Technology Over Conventional CMOS Technology
Authors
Source
International Journal of Innovative Research and Development, Vol 1, No 9 (2012), Pagination: 393-400Abstract
In VLSI technology conventional CMOS transistors are continuously scaling down to obtain faster speed of devices and very large scale integrated circuits. But the main drawbacks of CMOS scaling are high leakage current and heavy channel doping. So using CMOS SRAM beyond 45nm cell stability and controlling leakage current are becoming difficult in today's fast low power applications. FinFET may be an alternative of conventional CMOS transistor. In this paper independent double -gate FINFET structure based SRAM 6-Tcell has been proposed to controlling leakage current and improving SRAM cell stability. By adjusting threshold voltage (Vt) without affecting cell ratio we can reduce leakage current so that power during off state of transistor. In conventional CMOS due to heavy channel doping carrier mobilities are reduced which also increases process variations. In independent double gate FINFET technology, two separate gates are used. Threshold voltage of one gate can be altered by varying the voltage at the other gate. In this technology nearly intrinsic channel is used so carrier mobilities will be higher which results in higher speed of devices. Using the thin silicon fin, ratio of ION/IOFF can also be increased. Due to vertical gate, there will no overlapping between source-gate and drain-gate so depletion and junction capacitances will be effectively eliminated. Wiring delay and bitline capacitance of SRAM will also be reduced.Keywords
Conventional CMOS, FinFET, SRAM, Leakage Current, Threshold voltage(Vt)- Performance Characteristics of Cmos Circuits in Sodel (silicon on Depletion Layer) Cmos over Conventional Cmos Technology
Authors
Source
International Journal of Innovative Research and Development, Vol 1, No 9 (2012), Pagination: 524-529Abstract
In this paper, the switching performance of SODEL(silicon on depletion layer) CMOS is investigated with a view to realizing high speed and low power CMOS applications. Due to smaller parasitic capacitance , the propagation delay time in SODEL CMOS has been improved by up to 25% compared to that of conventional CMOS in 5 stacked NFET inverters at the same Vdd . Also, power-delay product is better by 30% in SODEL CMOS. Latch-up immunity for alpha particle irradiation in SODEL is found to be better than conventional CMOS. So SODEL CMOS device's circuit technology is expected to provide a better solution for low power system-on-chip applications.- Malignant Hyperthermia in Endosulfan Poisoning
Authors
Source
Toxicology International (Formerly Indian Journal of Toxicology), Vol 19, No 1 (2012), Pagination: 74-76Abstract
We are reporting a case of endosulfan poisoning, admitted in a state of altered consciousness, vomiting, and seizure. The diagnosis was based on history, physical examination and positive reports from toxicological screening. After 8 hrs of admission, a sudden rise in EtCO2, respiratory rate, heart rate, blood pressure, and body temperature was noted. Masseter spasm was there and patient’s elbow/knees could not be bent upon manipulation. Caffeine halothane contraction test later confirmed it to be malignant hyperthermia (MH). We suggest that if there is a sudden rise in body temperature, stiffness in limbs or massater spasm in a case of endosulfan poisoning, the diagnosis of MH should be considered as one possibility when etiology is not certain.Keywords
Endosulfan, malignant hyperthermia, poisoning, seizure- Characterization and Retrieval of Snow and Urban Land Cover Parameters using Hyperspectral Imaging
Authors
1 Space Applications Centre, Indian Space Research Organisation (ISRO), Ahmedabad 380 015, IN
2 Indian Institute of Remote Sensing, ISRO, Dehradun 248 001, IN
3 Snow and Avalanche Study Establishment, Chandigarh 160 036, IN
4 University of California, Los Angeles, CA, US
5 University of California, Santa Barbara, CA, US
Source
Current Science, Vol 116, No 7 (2019), Pagination: 1182-1195Abstract
Snow and urban land cover are important due to their role in hydrological management and utility, climate response, social aspects and economic viability, along with influencing the Earth’s environment at local, regional and global scale. Hyperspectral data enable identification, characterization and retrieval of these land-cover features based on physical and chemical properties of compositional materials. AVIRISNG hyperspectral airborne data, with synchronous ground observations using field spectroradiometer and collateral instruments, were collected over two widely varied land-cover types, viz. a relatively homogenous area covered by snow in the extreme cold environment of the Himalaya (Bhaga sub-basin, Himachal Pradesh), and a completely heterogeneous urban area of a metropolitan city (Ahmedabad, Gujarat).
AVIRIS-NG airborne data were analysed to understand the effect of terrain parameters such as slope and aspect on snow reflectance. Snow grain index using visible and near-infrared (VNIR) bands and absorption peak in the near-infrared (NIR) were used to retrieve grain size in parts of the Himalayan region. A radiative transfer model was used to understand the grain size variability and its effect on absorption peak in NIR. Continuum removal was performed for snow spectral observations obtained from airborne, modelled and field platforms to estimate band depth at 1030 nm. Grain size was observed to vary with altitude from 100 to 500 μm using AVIRIS-NG image. In the urban area, the data also separated pervious and impervious surface cover using spectral unmixing technique, identified several urban features over multispectral data such as buildings with red tiled roofs, metallic surfaces and tarpaulin sheets using the material spectral profiles. Two single-frame superresolution methods namely sparse regression and natural prior (SRP), and gradient profile prior (GPP) were applied on AVIRIS-NG data for the mixed environment around Kankaria Lake in the city of Ahmedabad, which revealed that SRP method was better than GPP, and affirmed by eight indices. Preliminary analysis of AVIRIS-NG imaging over snow-covered areas and densely populated cities indicated utility of future spaceborne hyperspectral missions, particularly for hydrological and climatological applications in such diverse environments.
Keywords
AVIRIS-NG, Hyperspectral Imaging, Snow Reflectance, Super-Resolution Method, Terrain Parameters, Urban Land Cover.References
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