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Ranjan, Rajesh
- Tourism Development through Indigenous Art of Mithila: A Study of Mithila Painting (Madhubani Arts)
Authors
1 Institute of Tourism and Hotel Management, Bundelkhand University, Jhansi, Uttar Pradesh, IN
2 Bundelkhand University, Jhansi, Uttar Pradesh, IN
Source
International Journal of Tourism and Travel, Vol 7, No 1-2 (2014), Pagination: 1-6Abstract
Tourism enlarge everywhere due to its multi dimensional approaches, In the late 1960 Mithila art spread in this region as an economic resource for all segment of society, and emerge as source of livelihood generation. Now a day's technology forces it for declination, but its diverse logical presentation attract elite segment of tourist and it is in developing situation. Present study tries to find various scopes of tourism development and its benefit to local indigenous artist who engage in Mithila paintings.Keywords
Mithila Paintings, Tourism, Multidimensional, Socio-Cultural, Livelihood.- Vestibular Evoked Myogenic Potential Response in Acquired Sensory Neural Hearing Loss
Authors
Source
International Journal of Innovative Research and Development, Vol 3, No 5 (2014), Pagination:Abstract
Vestibular evoked myogenic potentials (VEMP) are widely used for assessment of vestibular function in individuals with balance disorders. However it is possible that hearing loss, if present, may affect the vestibular response. Hence, there is a need to understand the effect of various degrees of hearing loss on VEMP. Thus the present study was carried out to investigate the effects of degree of sensori-neural hearing loss on VEMP.A total of 31 individuals with hearing loss between 18 and 65 years participated in the study, and they were clustered in to four groups based on degree of hearing loss. VEMP was recorded from all the individuals using click at 95 dB nHL from both the ears. The result showed reduction in the amplitude of p1-n1 among individuals with hearing impairment however the reduction was not statistically significant across the groups. We conclude that degree of hearing loss may not be a significant factor in assessment of vestibular disorders using VEMP.
Keywords
Degree of hearing loss, Hearing impairment, cVEMP- Effect of Type II Diabetes on Speech Perception in Noise
Authors
Source
International Journal of Innovative Research and Development, Vol 3, No 4 (2014), Pagination:Abstract
There is dearth of literature targeting the behavioral correlates to central auditory processing among individuals with Diabetes. As communication being crucial aspect of human existence and losing the skill to effectively communicate adversely affects quality of life (QoL).So the present study was undertaken with the aim to examine the effect of type II Diabetes on speech perception in noise. A total of 80 subjects equally divided in to experimental and control group participated in this research. Experimental group consisted of 40 individuals with Diabetes (TYPE II) diagnosed for minimum five years between the age range of 28 – 60 years, with a mean age of 44years with equal gender representation. The effect of Diabetes on speech perception abilities among individuals with greater than 5 years of diabetic age, results revels a statistically significant difference between both the groups with p value < 0.01 for speech perception task and also there was association between the age of diabetes and the quick SIN scores for individuals with diabetes. We hypothesize that reduced sensory processing ability which could be due to involvement of various structures of central nervous system might have contributed to poor speech understanding abilities in diabetics individuals.
Keywords
Type II diabetics, Speech perception in noise, Hearing loss, Hyperglycemia- Characterization of the Second Wave of COVID-19 in India
Authors
1 Department of Aerospace Engineering, Indian Institute of Technology, Kanpur 208 016, India, IN
2 Department of Physics, Indian Institute of Technology, Kanpur 208 016, India, IN
Source
Current Science, Vol 121, No 1 (2021), Pagination: 85-93Abstract
The second wave of COVID-19, which began in India around 11 February 2021, has hit the country hard with daily cases reaching nearly triple the first peak value as on 19 April 2021. The epidemic evolution in India is complex due to regional inhomogeneities and the spread of several coronavirus mutants. In this study, we characterize the virus spread in the ongoing second wave in India and its states until 19 April 2021, and also examine the dynamic evolution of the epidemic from the beginning of the outbreak. Variations in the effective reproduction number (Rt) are taken as quantifiable measures of virus transmissibility. Rt value for every state, including those with large rural populations, is greater than the self-sustaining threshold of 1. An exponential fit on recent data also shows that the infection rate is much higher than in the first wave. Subsequently, characteristics of COVID-19 spread are analysed region-wise, by estimating test positivity rates (TPRs) and case fatality rates (CFRs). Very high TPR values for several states present an alarming situation. CFR values are lower than those in the first wave, but are recently showing signs of increase as the healthcare system is being over-stretched with the surge in infections. Preliminary estimates with a classical epidemiological model suggest that the peak for the second wave could occur around mid-May 2021, with daily count exceeding 0.4 million. The study strongly suggests that an effective administrative intervention is needed to arrest the rapid growth of the epidemic.Keywords
Coronavirus, COVID-19, Epidemic Evolution, Reproduction Number, Second Wave.References
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