539 research outputs found

    Mobile Phones and Social Inclusion of Women in Africa: A Nigerian Perspective

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    Information and communication technologies (ICTs) are increasingly being recognised as vital tools with regards to the social inclusion of women. Specifically, we investigate the effect of mobile phone use on the social inclusion of women in Nigeria. Our study focuses on what these women are able to achieve with their mobile phones and the implication of these achievements on their ability to effectively participate in the society. We draw on a qualitative ethnographic study of resettled northern women in the southern city of Lagos to understand how mobile phone use contributes to their social inclusion. From our analysis, we derive valuable capabilities such as to generate income, to be financially included, to maintain social relationships and to seek relevant information, that are enabled for these women through mobile phone use. However, the realisation of these capabilities is dependent upon personal, social and environmental conditions. We illustrate how women exercise their agency to use mobile phones in ways that enhance their wellbeing and overall effective participation in this new society. Our findings contribute to the discourse on the role of ICT in the process of social inclusion for women

    Geometric, electronic properties and the thermodynamics of pure and Al--doped Li clusters

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    The first--principles density functional molecular dynamics simulations have been carried out to investigate the geometric, the electronic, and the finite temperature properties of pure Li clusters (Li10_{10}, Li12_{12}) and Al--doped Li clusters (Li10_{10}Al, Li10_{10}Al2_2). We find that addition of two Al impurities in Li10_{10} results in a substantial structural change, while the addition of one Al impurity causes a rearrangement of atoms. Introduction of Al--impurities in Li10_{10} establishes a polar bond between Li and nearby Al atom(s), leading to a multicentered bonding, which weakens the Li--Li metallic bonds in the system. These weakened Li--Li bonds lead to a premelting feature to occur at lower temperatures in Al--doped clusters. In Li10_{10}Al2_2, Al atoms also form a weak covalent bond, resulting into their dimer like behavior. This causes Al atoms not to `melt' till 800 K, in contrast to the Li atoms which show a complete diffusive behavior above 400 K. Thus, although one Al impurity in Li10_{10} cluster does not change its melting characteristics significantly, two impurities results in `surface melting' of Li atoms whose motions are confined around Al dimer.Comment: 9 pages, 7 figure

    Determinants of learning management systems adoption in Nigeria: A hybrid SEM and artificial neural network approach

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    Research has shown that technology, when used prudently, has the potential to improve instruction and learning both in and out of the classroom. Only a handful of African tertiary institutions have fully deployed learning management systems (LMS) and the literature is devoid of research examining the factors that foster the adoption of LMS. To fill this void, the present research investigates the factors contributing to students’ acceptance of LMS. Survey data were obtained from registered students in four Nigerian universities (n = 1116); the responses were analyzed using artificial neural network (ANN) and structural equation modeling (SEM) techniques. The results show that social influence, facilitating conditions, system quality, perceived ease of use, and perceived usefulness are important predictors for students’ behavioral intention to use LMS. Students’ behavioral intention to use LMS also functions as a predictor for actual usage of LMS. Implications for practice and theory are discussed.No sponso

    Characteristics of pebble- and cobble-sized clasts along the Curiosity rover traverse from Bradbury Landing to Rocknest

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    We have assessed the characteristics of clasts along Curiosity's traverse to shed light on the processes important in the genesis, modification, and transportation of surface materials. Pebble- to cobble-sized clasts at Bradbury Landing, and subsequentl

    Malaysian macroalga Padina australis Hauck attenuates high dose corticosterone-mediated oxidative damage in PC12 cells mimicking the effects of depression

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    Oxidative damage has been associated with the pathophysiology of depression. Macroalgae are equipped with antioxidant defense system to counteract the effects of free radicals. We explored the use of Malaysian Padina australis to attenuate high dose corticosterone-mediated oxidative damage in a cellular model mimicking depression. Fresh specimen of P. australis was freeze-dried and extracted sequentially with hexanes, ethyl acetate and ethanol. The extracts were screened for their phytochemical contents and antioxidant activities. Ethanol extract demonstrated the most potent antioxidant capacity and was selected for subsequent assays against high dose corticosterone of 600 µM-mediated oxidative damage in the rat pheochromocytoma (PC12) cells. The corticosterone reduced the cell viability, glutathione (GSH) level, aconitase activity, and mitochondrial membrane potential (MMP); and increased the lactate dehydrogenase (LDH) release, intracellular reactive oxygen species (ROS) level and apoptosis. However, the extent of oxidative damage was reversed by 0.25–0.5 mg/mL ethanol extract suggesting a possible role of P. australis-based antioxidants in the mitochondrial defense against constant ROS generation and regulation of antioxidant pathway. The effects were similar to that of desipramine, a tricyclic antidepressant. Our findings indicate that P. australis can be developed as a mitochondria-targeted antioxidant to mitigate antidepressant-like effects

    Nonstop mRNAs generate a ground state of mitochondrial gene expression noise

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    Funding Information: This work was supported by the Academy of Finland (307431 and 314706 to B.J.B.), the Sigrid Juselius Foundation Senior Investigator Award to B.J.B., and United Mitochondrial Disease Foundation (PI-16-0598 to B.J.B.) and donations from the Hereditary Neuropathy Foundation, Lindsey Flynt, and Medtronic to B.J.B.; the Orion Research Foundation and the Finnish Cultural Foundation to K.Y.N.; the Academy of Finland (321961 to U.R.); the Sigrid Juselius Foundation, the Academy of Finland (331556), and the Jane and Aatos Erkko Foundation to C.D.D.; Action Medical Research (GN2494 to W.G.N.) and the Manchester NIHR Biomedical Research Centre (IS-BRC-1215-20007 to W.G.N.); the Wellcome Centre for Mitochondrial Research (203105/Z/16/Z to R.W.T.), the Mitochondrial Disease Patient Cohort (UK) (G0800674 to R.W.T.), the Medical Research Council International Centre for Genomic Medicine in Neuromuscular Disease (MR/S005021/1 to R.W.T.), the Lily Foundation, the UK NIHR Biomedical Research Centre for Ageing and Age-related disease award to the Newcastle upon Tyne Foundation Hospitals NHS Trust, the Pathological Society, and the UK NHS Highly Specialised Service for Rare Mitochondrial Disorders of Adults and Children to R.W.T.; Medical Research Council (MR/W019027/1 to W.G.N. and R.W.T.); the Academy of Finland (338836 and 314672 to V.O.P.); and the Sigrid Juselius Foundation and the Jane and Aatos Erkko Foundation. Publisher Copyright: Copyright © 2022 The Authors, some rights reserved;A stop codon within the mRNA facilitates coordinated termination of protein synthesis, releasing the nascent polypeptide from the ribosome. This essential step in gene expression is impeded with transcripts lacking a stop codon, generating nonstop ribosome complexes. Here, we use deep sequencing to investigate sources of nonstop mRNAs generated from the human mitochondrial genome. We identify diverse types of nonstop mRNAs on mitochondrial ribosomes that are resistant to translation termination by canonical release factors. Failure to resolve these aberrations by the mitochondrial release factor in rescue (MTRFR) imparts a negative regulatory effect on protein synthesis that is associated with human disease. Our findings reveal a source of underlying noise in mitochondrial gene expression and the importance of responsive ribosome quality control mechanisms for cell fitness and human health.Peer reviewe

    Artificial Intelligence in Supply Chain Operations Planning: Collaboration and Digital Perspectives

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    [EN] Digital transformation provide supply chains (SCs) with extensive accurate data that should be combined with analytical techniques to improve their management. Among these techniques Artificial Intelligence (AI) has proved their suitability, memory and ability to manage uncertain and constantly changing information. Despite the fact that a number of AI literature reviews exist, no comprehensive review of reviews for the SC operations planning has yet been conducted. This paper aims to provide a comprehensive review of AI literature reviews in a structured manner to gain insights into their evolution in incorporating new ICTs and collaboration. Results show that hybrization man-machine and collaboration and ethical aspects are understudied.This research has been funded by the project entitled NIOTOME (Ref. RTI2018-102020-B-I00) (MCI/AEI/FEDER, UE). 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