1,838 research outputs found
Entropy and Multifractality in Relativistic Ion-Ion Collisions
Entropy production in multiparticle systems is investigated by analysing the
experimental data on ion-ion collision at AGS and SPS energies and comparing
the findings with those reported earlier for hadron-hadron, hadron-nucleus and
nucleus-nucleus collisions. It is observed that the entropy produced in limited
and full phase space, when normalised to maximum rapidity exhibits a kind of
scaling which is nicely supported by Monte Carlo model \hij. Using the
R\'{e}nyi's order-q information entropy, multifractal characteristics of
particle production are examined in terms of Generalized dimensions, D.
Nearly the same values of multifractal specific heat, observed in
hadronic and ion-ion collisions over a wide range of incident energies suggest
that the quantity may be used as a universal characteristic of
multiparticle production in hadron-hadron, hadron-nucleus and nucleus-nucleus
collisions.Comment: 17 pages, 5 figures, 2 table
The impact of information and communication technologies (ICTs) on academic performance of medical students: an exploratory study
Background: Information and Communication Technology (ICT) has a potential to improve teaching and learning process. There are conflicting reports on the effect of ICT on student`s outcome. Though there is an early indication of positive impact, but the technology has a potential to have a detrimental effect. The present study was taken up to explore the effects of ICT on medical student’s academic performance.Methods: All the second professional students were given the questionnaire. Only 75 students had filled up the questionnaires completely.Results: The study population consisted of 48.00% males and 52.00% females. 97.33% students had smart phones, 44.00% had a laptop too. 10.66% students got less than 50% marks in the second professional examination, 14.66% got 50-59% marks, 62.66% got 60-69% marks and 12.00% got 70% or more marks. A low negative correlation was found between academic performance and possession of a smart phone (r= -0.062), and between academic performance and possession of a laptop (r= -0.029). A moderate negative correlation was found between academic performance and the time spent on a smart phone or laptop (r = -0.309). The correlations between academic performance and gender, and academic performance and the time spent on mobile phones or laptops were found statistically significant (p=0.000 and 0.007 respectively).Conclusions: Though ICT has capabilities of improving student`s academic performance, but it has a potential to have a negative effect if not used rationally. There is a vital need to sensitize the students about the potential academic risks associated with improper use of ICT. Students should be assisted and guided on how to use it judiciously
Personalized drug concentration predictions with machine learning: an exploratory study
Background: The dose individualization by therapeutic drug monitoring (TDM) can be improved if population-based reference ranges are available, as there is large inter- and intrapatient variability. If these ranges are not available, dose individualization may not be optimal. Machine learning can help achieve accurate drug dose settings and predict the resultant levels.Methods: Two random forest models, a multi-class classifier to predict dose and a regression model to predict blood drug level were trained on 320 patients’ data, consisting of their age, sex, dose and blood drug level. The classifier consisted of 1000 estimators (decision trees) and the regression model consisted of 1300 estimators. The model was evaluated on randomly split test set having 10% of the total dataset size. The regression model was compared against k-Nearest neighbor and linear regression models. The classifier was evaluated using accuracy, precision, and F1 Score; the regression model was evaluated using R2, Root mean squared error, and mean absolute error.Results: The classifier had an out-of-sample accuracy of 68.75%, average precision of 0.7567, and an average F1 score of 0.6907. The regression model had an out-of-sample R2 value of 0.2183, root mean squared value of 3.7359, and a mean absolute error of 2.5156. These values signify an average classification performance, and a below-average regression performance due to small dataset.Conclusions: It is possible for machine learning algorithms to be used in therapeutic drug monitoring. With a well-structured, rich, and large dataset, a very accurate model can be built
Assessment of River Shahpur for Flood Risk in Northern Pakistan
During 2010 flood, great losses to human and properties were reported in the study area. In terms of land and property loss, 74.1 hectare agriculture land, 2719 to 3114 houses were fully and partially damaged. This study was carried out with an aim, to explore flood risk assessment of river Shahpur in District Shangla. For the future perspectives ‘River Habitat Survey was used for flood risk assessment and ‘Spot Check Key Models’ are used to derive guidelines. Settlements and agriculture activities on the river banks were some of the major causes of the reported catastrophe in the study area. Most of the damages were reported on the right bank of river Shahpur due to the topography and structure of soil. This study recommends the construction of check dams and river embankment on river Shahpur to mitigate flood destruction in the future, coupled by flood prediction; early warning systems and risk assessment procedures should be integrated in both local and national planning so that both fertile land and precious lives can be saved. Keywords: Flood Risk, Flood Risk Assessment, River Habitat Survey, Spot Check key
Assessment of River Shahpur for Flood Risk in Northern Pakistan
During 2010 flood, great losses to human and properties were reported in the study area. In terms of land and property loss, 74.1 hectare agriculture land, 2719 to 3114 houses were fully and partially damaged. This study was carried out with an aim, to explore flood risk assessment of river Shahpur in District Shangla. For the future perspectives ‘River Habitat Survey was used for flood risk assessment and ‘Spot Check Key Models’ are used to derive guidelines. Settlements and agriculture activities on the river banks were some of the major causes of the reported catastrophe in the study area. Most of the damages were reported on the right bank of river Shahpur due to the topography and structure of soil. This study recommends the construction of check dams and river embankment on river Shahpur to mitigate flood destruction in the future, coupled by flood prediction; early warning systems and risk assessment procedures should be integrated in both local and national planning so that both fertile land and precious lives can be saved. Keywords: Flood Risk, Flood Risk Assessment, River Habitat Survey, Spot Check key
Adsorptive removal ofPb(II) ion from aqueous solution using rice husk-based activated carbon
There are various methods can be used to remove heavy metals from waste
water, such as chemical precipitation, ion exchange, electroplating and membrane
separation. Nevertheless the most effective method would be adsorption using activated
carbon due to its large number of pores. This project will be focusing primarily on rice
husk as potential activated carbon as low cost adsorbent to remove Pb(II) from
wastewater. Preparation of activated carbon involves three steps which are raw rice
husk preparation, activation stage and carbonization stages. Preparation of rice husk
involves grinding to 63 !liD which is then treated with 1.0 M of sodium hydroxide
(NaOH). The treated rice husk is then carbonized at 500°C for 2 hours to remove
volatile organic components. After the activated carbons are produced, extraction study
will be carried out to further study the adsorption capacity. The pores development of
the rice husk was analysed using Field Emission Scanning Electron Microscope
(FESEM). Other analyses for rice husk based activated carbon were conducted using
TGA, XRD, CHN Elemental Analyser and FTIR for characterisation study on the
particles of rice husk. Pb(II) ion extraction from aqueous solution was done using rice
husk based activated carbon which was conducted at different contact time at room
temperature. The adsorption capacity of Pb(II) ion was determined using Atomic
Adsorption Spectroscopy (AAS). Results obtained from adsorption study indicate that
rice has the potential to be used as adsorbent for heavy metals removal
Comparative Study Of Congestion Control Techniques In High Speed Networks
Congestion in network occurs due to exceed in aggregate demand as compared to
the accessible capacity of the resources. Network congestion will increase as
network speed increases and new effective congestion control methods are
needed, especially to handle bursty traffic of todays very high speed networks.
Since late 90s numerous schemes i.e. [1]...[10] etc. have been proposed. This
paper concentrates on comparative study of the different congestion control
schemes based on some key performance metrics. An effort has been made to judge
the performance of Maximum Entropy (ME) based solution for a steady state
GE/GE/1/N censored queues with partial buffer sharing scheme against these key
performance metrics.Comment: 10 pages IEEE format, International Journal of Computer Science and
Information Security, IJCSIS November 2009, ISSN 1947 5500,
http://sites.google.com/site/ijcsis
A survey to assess awareness about fixed dose combinations (FDCs) among pharmacists in two Central Kashmir Districts, Srinagar and Budgam, Kashmir, India
Background: FDCs are highly popular in Indian pharmaceutical market. The FDCs have both advantages as well as disadvantages. To be advantageous WHO guidelines for the manufacture and use of FDCs must be strictly followed. Irrational use of FDCs is a major public health problem and leads to increased risk of adverse drug events, higher treatment costs and antimicrobial resistance. FDCs as well as other single component drugs cannot be used rationally unless everyone involved directly or indirectly in the health care profession is involved. Pharmacist is a coordinator between different members of healthcare team and the patients. Hence, his role in safe use of medicines is important. The present study was undertaken to assess the knowledge of pharmacists about FDCs.Methods: A descriptive questionnaire survey was conducted in various government and private pharmacies of two Central Kashmir Districts, Srinagar and Budgam, aiming to assess the knowledge of pharmacists about FDCs. The questionnaires were distributed randomly among 79 pharmacists, out of which 60 returned the completed questionnaire.Results: 55.00% of the respondents knew the basic facts about FDCs. 96.66% knew that FDCs reduced the cost of therapy and 93.33% were aware that FDCs improve patient compliance. 60% answered incorrectly when asked about effect of FDCs on cumulative toxicity. Almost equal percentage (63.33%) answered incorrectly when asked about rationality and ADR profile of FDCs. 83.33% knew that it is difficult to know the offending agent in case ADRs occur after FDC use.78.33% respondents thought that all FDCs are approved by drug regulatory authorities.Conclusions: The study showed that pharmacists had not the enough knowledge about FDCs. Pharmacy students in their formative years of learning should be taught to promote rational use of FDCs as they are the future custodians of technical information on the products available on their domestic market
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